• We report likelihood ratios and cutoffs with 100% PPV and NPV of 2 rapid quantitative HIT-immunoassays predicting a positive functional test.

  • The Bayesian approach presented here allows accurate ruling in or out of HIT within 1 hour in >95% of patients with suspected HIT.

Prompt diagnostic evaluation of suspected heparin-induced thrombocytopenia (HIT) is critical for guiding initial patient management. We assessed the performance of 3 immunoassays detecting anti–platelet factor 4 (PF4)/heparin antibodies, derived a diagnostic algorithm with a short analytical turnaround time (TAT), and prospectively validated the algorithm. Plasma samples were analyzed by Zymutest-HIA-IgG, HemosIL-AcuStar-HIT-IgG, and ID-H/PF4-PaGIA in retrospective (n = 221) and prospective (n = 305) derivation cohorts. We calculated likelihood ratios of result intervals and cutoff values with 100% negative (NPV) and positive (PPV) predictive values for a positive gold standard functional assay (heparin-induced platelet activation [HIPA]). A diagnostic algorithm was established based on the Bayesian combination of pretest probability and likelihood ratios of first- and second-line immunoassays. Cutoffs with 100% PPV for positive HIPA were >3.0 U/mL (HemosIL-AcuStar-HIT-IgG) and titer ≥16 (ID-H/PF4-PaGIA); cutoffs with 100% NPV were <0.13 U/mL and ≤1, respectively. During the prospective validation of the derived algorithm (n = 687), HemosIL-AcuStar-HIT-IgG was used as unique testing in 566 (82.4%) of 687 cases (analytical TAT, 30 minutes). In 121 (17.6%) of 687 unresolved cases, ID-H/PF4-PaGIA was used as second-line testing (additional TAT, 30 minutes). The algorithm accurately predicted HIT in 51 (7.4%) of 687 patients and excluded it in 604 (87.9%) of 687 patients, leaving only 20 (2.9%) cases unresolved. We also identified 12 (1.7%) of 687 positive predictions not confirmed by HIPA: 10 patients with probable HIT despite negative HIPA and 2 possible false-positive algorithm predictions. The combination of pretest probability with first- and second-line immunoassays for anti-PF4/heparin antibodies is accurate for ruling in or out HIT in ≥95% of cases within 60 minutes. This diagnostic approach improves initial management of patients with suspected HIT.

Heparin-induced thrombocytopenia (HIT) is an immune-mediated serious adverse effect of heparin treatment, characterized by a severe prothrombotic state and representing a challenging clinical emergency.1  HIT occurs in 0.2% to 3% of patients treated with heparin; the risk varies with the type of drug and clinical setting.2-4  It is mediated by circulating anti– platelet factor 4 (PF4)/heparin-antibody complexes, which cross-link FcγRIIa receptors on the platelet surface and induce their activation, aggregation, and procoagulant activity.1,5  This limb- and life-threatening condition must be rapidly and reliably distinguished from other causes of thrombocytopenia6  to immediately stop all heparin sources and switch to alternative nonheparin anticoagulants (argatroban,7,8  danaparoid,9  fondaparinux,10  or a direct oral anticoagulant11 ).1  Although unrecognized HIT is associated with high morbidity and mortality,12  unnecessary switching of anticoagulant therapy for misdiagnosed HIT is associated with bleeding complications and increased health care costs.13 

When HIT is suspected, clinical probability can be established by use of scoring systems (eg, the validated 4T score).14,15  Diagnosis is biologically confirmed by the detection of circulating heparin-dependent platelet-activating anti-PF4/heparin antibodies.16,17  The functional serotonin-release assay (SRA) and the heparin-induced platelet activation assay (HIPA) are considered gold standard tests for HIT diagnosis.18,19  However, these assays are technically demanding, expensive, and not routinely available.1,18  Immunoassays (IAs) such as enzyme-linked immunosorbent assays (ELISAs) for detection of anti-PF4/heparin antibodies have been developed. Their seroconversion precedes SRA seroconversion by at least 1 day for most HIT cases,20  and their diagnostic performance is characterized by high sensitivity and low specificity.21,22  A negative IA result can reasonably rule out HIT, although confirming the diagnosis remains difficult. HIT-dedicated IAs have significantly evolved during the last decade.18  New techniques such as particle gel,23  chemiluminescence,24  and lateral flow25  facilitate the rapid detection of anti-PF4/heparin antibodies in plasma or serum.26,27  Two systematic reviews compared technical and analytical characteristics, as well as diagnostic performances, of rapid IAs and defined the best-suited options for incorporation into diagnostic algorithms.16,17  Current guidelines for HIT management define the integration of emerging rapid IAs into diagnostic algorithms as a key research priority.28 

We and others29,30  have shown that the comparison of quantitative IAs vs a functional test for heparin-dependent platelet-activating antibodies allows: (1) calculation of likelihood ratios (LRs) for result intervals; and (2) identification of cutoff IA results associated with 100% negative predictive values (NPVs) and positive predictive values (PPVs) for a positive functional assay. This enables a Bayesian diagnostic approach, transforming the clinical pretest probability in a posttest likelihood for ruling in or out HIT diagnosis based on the quantitative IA result.1,19,29-31 

The current study aimed to assess the diagnostic performance of 3 quantitative IAs (Zymutest-HIA-IgG, HemosIL-AcuStar-HIT-IgG, and ID-PaGIA-H/PF4) to derive and prospectively validate a combined clinical and laboratory diagnostic algorithm for guiding prompt clinical management decisions.

Study design

We studied 3 cohorts of consecutive patients investigated for suspected HIT at our institution (Figure 1). The results from the retrospective and prospective derivation cohorts were used to develop a diagnostic algorithm for HIT (Figure 2), which was prospectively assessed in the validation cohort.

Figure 1.

Study design. (A) Patient cohort of the retrospective derivation study, May 2014 to August 2015 (n = 221 [22 HIPA-positive cases]). (B) Patient cohort of the prospective derivation study, September 2015 to December 2016 (n = 305 [26 HIPA-positive cases]). 1CLIA ≥0.13 U/mL. (C) Standards for the Reporting of Diagnostic Accuracy Studies flowchart of the patient cohort of the prospective validation study, January 2017 to November 2019 (n = 687 [53 HIPA-positive cases]).

Figure 1.

Study design. (A) Patient cohort of the retrospective derivation study, May 2014 to August 2015 (n = 221 [22 HIPA-positive cases]). (B) Patient cohort of the prospective derivation study, September 2015 to December 2016 (n = 305 [26 HIPA-positive cases]). 1CLIA ≥0.13 U/mL. (C) Standards for the Reporting of Diagnostic Accuracy Studies flowchart of the patient cohort of the prospective validation study, January 2017 to November 2019 (n = 687 [53 HIPA-positive cases]).

Close modal
Figure 2.

Algorithm for rapid HIT diagnosis developed from retrospective and prospective derivation cohorts. The first step is to assess the pretest probability for HIT with the 4T score. In case of a 4T score ≥2 and/or unexplained heparin resistance, the automated CLIA HIT-IgG is performed as the first-line test, which (using conservative 100% NPV and PPV cutoff values) is expected to solve ∼80% of cases with an analytical TAT of 30 minutes. For the remaining ∼20% of cases with results situated in the CLIA intermediate gray zone, the PaGIA testing is performed as the second-line test. This additional assay takes 30 minutes and is expected to solve at least 50% of cases that were situated in the CLIA intermediate gray zone. Of note, the 95% CI of the posttest probability depends on the pretest probability for HIT and the LR of the quantitative IA result. Finally, for the ≤5% of cases that remain unresolved despite a combination of 4T score, CLIA, and PaGIA (HIT undetermined), individualized clinical judgment will define initial management decisions, while awaiting the results of the functional HIPA assay as the diagnostic gold standard.

Figure 2.

Algorithm for rapid HIT diagnosis developed from retrospective and prospective derivation cohorts. The first step is to assess the pretest probability for HIT with the 4T score. In case of a 4T score ≥2 and/or unexplained heparin resistance, the automated CLIA HIT-IgG is performed as the first-line test, which (using conservative 100% NPV and PPV cutoff values) is expected to solve ∼80% of cases with an analytical TAT of 30 minutes. For the remaining ∼20% of cases with results situated in the CLIA intermediate gray zone, the PaGIA testing is performed as the second-line test. This additional assay takes 30 minutes and is expected to solve at least 50% of cases that were situated in the CLIA intermediate gray zone. Of note, the 95% CI of the posttest probability depends on the pretest probability for HIT and the LR of the quantitative IA result. Finally, for the ≤5% of cases that remain unresolved despite a combination of 4T score, CLIA, and PaGIA (HIT undetermined), individualized clinical judgment will define initial management decisions, while awaiting the results of the functional HIPA assay as the diagnostic gold standard.

Close modal

Retrospective derivation cohort

Between May 2014 and August 2015, a total of 221 consecutive patients with suspected HIT were investigated (Figure 1A). During this period, detection of anti-PF4/heparin antibodies was routinely performed using the Zymutest-HIA-IgG (ELISA). All 46 (20.8%) plasma samples with a positive ELISA were routinely tested by HIPA in the reference laboratory (see the “Assays description” section). In August 2015, ELISA was repeated in stored plasma samples. Passing-Bablok regression analysis showed no statistically significant difference between initial and repeat OD values (slope = 0.968 [95% confidence interval (CI), 0.924 to 1.006]; intercept = 0.009 [95% CI, −0.002 to 0.044]; P = .56), confirming that anti-PF4/heparin antibodies were stable during storage at −80°C.26  This allowed a reliable comparison of the performance of the ELISA with 2 rapid IAs for HIT diagnosis (HemosIL-AcuStar-HIT-IgG, chemiluminescent IA [CLIA] and ID-PaGIA-H/PF4, particle gel IA [PaGIA]) employing stored plasma samples from the retrospective derivation cohort.

Prospective derivation cohort

Fresh plasma samples from all 305 consecutive patients with suspected HIT sent to our laboratory between September 2015 and December 2016 were simultaneously tested at the initial diagnostic evaluation with the 3 IAs (Figure 1B). HIPA was systematically performed in samples from patients with a high pretest probability (4T score ≥6)14,15  and/or for those with at least 1 IA result in the intermediate (CLIA ≥0.13-0.99 U/mL [discussed later]) to positive range (official cutoffs for ELISA, CLIA, and PaGIA).

Prospective validation cohort

Between January 2017 and November 2019, fresh plasma samples of all 687 consecutive patients with suspected HIT sent to our laboratory (Figure 1C) were investigated with the diagnostic algorithm developed on the basis of the derivation cohorts (Figure 2). HIPA was systematically performed in samples from patients with a high pretest probability (4T score ≥6)14,15  and/or with at least 1 intermediate (CLIA ≥0.33-0.99 U/mL) or positive (CLIA ≥1.00 U/mL; PaGIA titer ≥1) result.29,32 

Assessment of pretest clinical probability and diagnosis of HIT

This work was conducted as a systematic quality control study of our diagnostic laboratory and clinical practice. HIT suspicion is usually raised by the physicians caring for an individual patient. The hematologists on duty (a fellow and an attending) subsequently estimate the clinical pretest probability for HIT by calculating the 4T score14,15  and in difficult cases (eg, cardiac surgery, intensive care unit patients) by also evaluating the whole clinico-pathologic picture.33-35  Because, in rare cases, HIT is diagnosed by a positive functional assay even when the 4T score is low,29,35-38  we measure anti-PF4/heparin antibodies in patients with a 4T score ≥2 points (lower only if there is incomplete data). The hematologist on duty may be asked to evaluate a patient with “heparin resistance,”39  defined biologically by the failure to reach the therapeutic target despite administration of >1.5-fold the usually required dose of unfractionated heparin40  (ie, >27 IU/kg body weight per hour) and clinically by the occurrence of venous or arterial thrombosis or extension of thrombosis in a patient receiving unfractionated heparin within therapeutic target range39 ; when this request is made, we assess inflammation, antithrombin deficiency, and anti-PF4/heparin antibodies. A final clinical diagnosis of HIT is reached by 2 experienced hematologists (the attending in charge of the patient and the senior author of the current article) based on the combination of estimated pretest probability, quantitative IA results, outcome of HIPA, and posttesting clinical and laboratory evolution. Specifically, we calculate the clinical score described in Table 1 of our previous publication32  (based on Greinacher at al41  and Fabris et al42 ). We diagnose HIT in the presence of a score ≥4 and a positive HIPA or, in case of a negative HIPA, a score ≥6 points, a positive IA, and decreasing D-dimers under alternative nonheparin anticoagulation.8,43 

Table 1.

Patient demographic and clinical characteristics

CharacteristicRetrospective derivation cohort, n = 221Prospective derivation cohort, n = 305Prospective validation cohort, n = 687
ELISA negative, n = 175ELISA positive, n = 46
HIPA positiveHIPA negativeHIPA positiveHIPA negativeHIPA positiveHIPA negative
No. (%) of patients, 175 (79) 22 (10) 24 (11) 26 (8.5) 279 (91.5) 53 (7.7) 634 (92.3) 
Female sex, % (n/N) 37.2 (65/175) 40.9 (9/22) 37.5 (9/24) 23.1 (6/26) 34.8 (97/279) 50.9 (27/53) 36.4 (231/634) 
Age, y        
 Median 70.2 68.8 65.3 68.8 70.9 72.6 70.0 
 IQR 61.2; 79.0 57.3; 77.3 60.9; 73.3 58.9; 77.0 61.3; 77.6 66.4; 80.4 59.3; 78.9 
 Range (min./max.) 23.0; 95.0 33.5; 89.0 41.6; 84.9 24.7; 84.9 16.0; 94.0 28.9; 96.6 3.6; 113.0 
Clinical setting, % (n)        
 Internal medicine 12.6 (22) 4.5 (1) 7.7 (2) 14 (39) 18.9 (10) 19.9 (126) 
 Cardiology 0.6 (1) 4.5 (1) 1.4 (4) 1.9 (1) 2.4 (15) 
 ICU 8.6 (15) 23 (5) 17 (4) 7.7 (2) 15.4 (43) 13.2 (7) 15.6 (99) 
 General surgery 2.9 (5) 14 (3) 12.5 (3) 11.5 (3) 5 (14) 3.8 (2) 4.9 (31) 
 Cardiovascular surgery 2.9 (5) 4.5 (1) 4.2 (1) 7.7 (2) 5 (14) 13.2 (7) 4.6 (29) 
 Orthopedic surgery 7.7 (2) 0.7 (2) 0 (0) 0.8 (5) 
 External institutions 72.6 (127) 50 (11) 66.7 (16) 57.7 (15) 58.4 (163) 49.1 (26) 51.9 (329) 
4T score        
 Median 
 IQR 4; 5 4; 6 4; 6 4; 6 3; 4 4; 6 3; 4 
 Range (min./max.) 3; 7 3; 7 3; 7 0; 7 0; 7 3; 8 0; 7 
ELISA, OD       
 Median 0.04 1.98 0.63 1.50 0.06 
 IQR 0.02; 0.06 0.98; 2.49 0.41; 1.03 0.69; 2.39 0.04; 0.11 NA 
 Range (min./max.) 0.00; 0.25 0.44; 3.00 0.32; 1.92 0.25; 3.00 0.01; 2.81 
CLIA, U/mL        
 Median  11.53 0.08 4.56 0.03 11.8 0.02 
 IQR NA 1.63; 22.96 0.02; 0.13 1.34; 11.14 0.01; 0.05 3.60; 47.95 0.00; 0.07 
 Range (min./max.)  0.15; 52.49 0.01; 0.79 0.20; >128 0.00; 1.27 0.35; > 128 0.00; 12.11* 
PaGIA, titer        
 Median  32 16 16 1 
 IQR NA 8; 32 0; 1 8; 32 0; 0 8; >16 0; 2 
 Range (min./max.)  4; 64 0; 8 2; 512 0; 8 2; >16 0; >16 
CharacteristicRetrospective derivation cohort, n = 221Prospective derivation cohort, n = 305Prospective validation cohort, n = 687
ELISA negative, n = 175ELISA positive, n = 46
HIPA positiveHIPA negativeHIPA positiveHIPA negativeHIPA positiveHIPA negative
No. (%) of patients, 175 (79) 22 (10) 24 (11) 26 (8.5) 279 (91.5) 53 (7.7) 634 (92.3) 
Female sex, % (n/N) 37.2 (65/175) 40.9 (9/22) 37.5 (9/24) 23.1 (6/26) 34.8 (97/279) 50.9 (27/53) 36.4 (231/634) 
Age, y        
 Median 70.2 68.8 65.3 68.8 70.9 72.6 70.0 
 IQR 61.2; 79.0 57.3; 77.3 60.9; 73.3 58.9; 77.0 61.3; 77.6 66.4; 80.4 59.3; 78.9 
 Range (min./max.) 23.0; 95.0 33.5; 89.0 41.6; 84.9 24.7; 84.9 16.0; 94.0 28.9; 96.6 3.6; 113.0 
Clinical setting, % (n)        
 Internal medicine 12.6 (22) 4.5 (1) 7.7 (2) 14 (39) 18.9 (10) 19.9 (126) 
 Cardiology 0.6 (1) 4.5 (1) 1.4 (4) 1.9 (1) 2.4 (15) 
 ICU 8.6 (15) 23 (5) 17 (4) 7.7 (2) 15.4 (43) 13.2 (7) 15.6 (99) 
 General surgery 2.9 (5) 14 (3) 12.5 (3) 11.5 (3) 5 (14) 3.8 (2) 4.9 (31) 
 Cardiovascular surgery 2.9 (5) 4.5 (1) 4.2 (1) 7.7 (2) 5 (14) 13.2 (7) 4.6 (29) 
 Orthopedic surgery 7.7 (2) 0.7 (2) 0 (0) 0.8 (5) 
 External institutions 72.6 (127) 50 (11) 66.7 (16) 57.7 (15) 58.4 (163) 49.1 (26) 51.9 (329) 
4T score        
 Median 
 IQR 4; 5 4; 6 4; 6 4; 6 3; 4 4; 6 3; 4 
 Range (min./max.) 3; 7 3; 7 3; 7 0; 7 0; 7 3; 8 0; 7 
ELISA, OD       
 Median 0.04 1.98 0.63 1.50 0.06 
 IQR 0.02; 0.06 0.98; 2.49 0.41; 1.03 0.69; 2.39 0.04; 0.11 NA 
 Range (min./max.) 0.00; 0.25 0.44; 3.00 0.32; 1.92 0.25; 3.00 0.01; 2.81 
CLIA, U/mL        
 Median  11.53 0.08 4.56 0.03 11.8 0.02 
 IQR NA 1.63; 22.96 0.02; 0.13 1.34; 11.14 0.01; 0.05 3.60; 47.95 0.00; 0.07 
 Range (min./max.)  0.15; 52.49 0.01; 0.79 0.20; >128 0.00; 1.27 0.35; > 128 0.00; 12.11* 
PaGIA, titer        
 Median  32 16 16 1 
 IQR NA 8; 32 0; 1 8; 32 0; 0 8; >16 0; 2 
 Range (min./max.)  4; 64 0; 8 2; 512 0; 8 2; >16 0; >16 

IQR, interquartile range; NA, not applicable (according to study design, ELISA was not performed in the prospective validation cohort); min./max., minimum/maximum.

*

Three patients had a CLIA result >3.0 U/mL and a negative HIPA: Patient PV-17.199, with CLIA 3.99 U/mL, low 4T score, and negative PaGIA is reported in Table 4; and Patients PV-19.014 and PV-19.232, with CLIA results of 4.36 and 12.11 U/mL, respectively, are described in supplemental Table 5.

n = 119 (PaGIA performed according to the algorithm depicted in Figure 2).

Three patients were recorded with a PaGIA titer ≥16 and a negative HIPA (PV-17.099, PV-18.123, and PV-19.111; they are described in supplemental Table 5).

Collection and storage of samples

Blood was drawn into 3 mL plastic syringes (Monovette; Sarstedt, Nümbrecht, Germany) containing 0.3 mL 0.106 mol/L trisodium citrate. Plasma was prepared by double centrifugation at 1500g during 10 minutes at room temperature. Plasma samples were then snap-frozen for storage in polypropylene tubes at −80°C.

Assay descriptions

The Zymutest-HIA-IgG (Hyphen BioMed, Neuville-sur-Oise, France) is a commercially available immunoglobulin G (IgG)-specific ELISA coated with heparin-protamine complexes in which PF4 is provided by a platelet lysate added to the reaction mixture.44  Analytical turnaround time (TAT) is ∼3 hours (performed Monday to Friday, 8:00 am to 4:00 pm). The cutoff recommended by the manufacturer is set at ∼0.3 OD (depending on the daily determination of the control sample).

The HemosIL-AcuStar-HIT-IgG (Instrumentation Laboratory GmbH, Munich, Germany) is an automated CLIA with PF4 bound to polyvinyl sulfonate particles.24,45,46  Anti-PF4/heparin antibodies form a complex with PF4/polyvinyl sulfonate, which is adsorbed on magnetic beads. After separation of the microparticles, an isoluminol-labeled anti-human-IgG-antibody is added. After washing, light emission intensity measured in relative light units is directly proportional to the anti-PF4/heparin-IgG-antibody concentration. TAT is ∼30 minutes (performed round-the-clock). The cutoff recommended by the manufacturer is ≥1.0 U/mL. The reproducibility of results obtained with the HemosIL-AcuStar-HIT-IgG was assessed. The interassay coefficient of variation lay between 3.1% (positive control sample, mean 2.31 U/mL, SD 0.071, n = 14), 4.1% (negative control sample, mean 0.49 U/mL, SD 0.02, n = 14), and 6.2% (clinical plasma sample, mean 1.07 U/mL, SD 0.066, n = 4). The intra-assay coefficient of variation was 3.3% (clinical plasma sample, mean 1.13 U/mL, SD 0.037, n = 11).

The ID-PaGIA-H/PF4 (Bio-Rad, DiaMed SA, Basel, Switzerland) is a PaGIA that detects IgG–, IgM–, and IgA–anti-PF4/heparin antibodies with a TAT of ∼30 minutes23  (performed Monday to Friday 7:00 am to 6:00 pm; on weekends 8:00 am to 12:00 pm). Ten microliters of plasma are added into a reaction chamber of the ID-card test, followed by 50 μL of polymer particles (red high-density polystyrene beads coated with PF4/heparin-complexes). After incubation for 5 minutes at room temperature, the ID-card is centrifuged for 10 minutes with a dedicated ID-centrifuge (DiaMed SA). Anti-PF4/heparin antibodies cross-link the red polymer particles, which remain on the top of the gel chamber. In the absence of a significant level of anti-PF4/heparin antibodies, the particles sink to the bottom of the gel chamber. The result of the card is read by the laboratory operator. In case of indeterminate or positive result with the undiluted sample, the analysis is repeated in serially diluted plasma samples by using specific diluent II (DiaMed SA).26,29,32  The titer of the positive result with the highest dilution, followed by an indeterminate or negative result in the subsequent dilution, is reported after confirmation by dual control. According to the manufacturer, the official cutoff is a positive result in the undiluted probe. Interassay and intra-assay reproducibility has been previously assessed.26,32 

The HIPA47  is recognized as 1 of the 2 gold standard tests (along with the SRA) for the detection of heparin-dependent, platelet-activating antibodies.18,19  Patient plasma is added to washed reactive platelets from selected healthy donors. If functional anti-PF4/heparin antibodies are present, platelet aggregation is observed at low heparin concentration and is suppressed at high concentration. This functional assay (and an ELISA) was performed at the “Thrombozytenlabor,” Institute for Immunology and Transfusion Medicine, University Hospital of Greifswald, Greifswald, Germany.

Statistics

We report median and interquartile range values. MedCalc (version 15.11.0) was used for calculating Passing-Bablok regression, receiver-operating characteristic (ROC) curves, sensitivity and specificity of different cutoff values, 100% NPV and PPV for a positive HIPA, and LR for intermediate results (“gray zone”) of each IA. Concise information on the Passing-Bablok statistical procedure is presented at www.medcalc.org/manual/passing-bablok_regression.php. A detailed description of the Bayesian analytical approach is found in the “Brief tutorial on ROC analysis and clinical application of Bayes’ theorem” published in the Haematologica journal Web site under “Figures & Data” as the Online Supplementary Appendix to our previous publication.29  Briefly, pretest probability of HIT was assessed by using the 4T score.14,15  This value was transformed into a posttest probability by combining it with the LR (95% CI limits) of the quantitative IA result (online calculator at http://www.sample-size.net/post-probability-calculator-test-new). For constructing Figure 2, when using the second IA, the first posttest probability was combined with the LR (95% CI limits) of the PaGIA titer.

Ethics

The study was conducted according to the guidelines of the competent ethical board (Commission cantonale d’éthique de la recherche sur l’être humain). Patient informed consent was waived for this systematic quality control study of a diagnostic laboratory practice (Commission cantonale d’éthique de la recherche sur l’être humain, protocol number 497/15).

The study design is depicted in Figure 1. Overall, we included all 1116 consecutive patients with suspected HIT, whose plasma samples had been sent to our laboratory for diagnostic evaluation. Among the 221 patients from the retrospective derivation cohort, 46 individual plasma samples with a positive ELISA for anti-PF4/heparin antibodies (Zymutest-HIA-IgG) were retrospectively investigated with repeated ELISA, CLIA, and PaGIA. In the prospective derivation cohort, plasma samples from all 305 patients with suspected HIT were simultaneously analyzed with the 3 IAs. Finally, during the prospective validation phase, all 687 patients with suspected HIT were evaluated on the basis of the diagnostic algorithm derived from the analysis of both derivation cohorts (Figure 2).

Demographic characteristics

Patient demographic and clinical characteristics with results of the diagnostic evaluation for suspected HIT are summarized in Table 1. No relevant differences were observed in the 3 cohorts regarding patients’ age, sex, clinical settings, and laboratory results. The prevalence of HIPA-positive cases was 10% (22 of 221) in the retrospective derivation cohort, 8.5% (26 of 305) in the prospective derivation cohort, and 7.7% (53 of 687) in the validation cohort. In the 3 cohorts, the median 4T score was 4 in HIPA-negative patients and 5 in HIPA-positive patients. A low 4T score (0-3 points) was associated with a positive HIPA in 7 (1.7%) of 407 cases in both the derivation and validation cohorts (supplemental Table 3, available on the Blood Web site).

Diagnostic performance of IAs

Results of the retrospective and prospective derivation cohorts are summarized in supplemental Tables 1 and 2 and supplemental Figure 1. According to areas under the ROC curves, CLIA and PaGIA performed similarly (P = .59 in the retrospective derivation cohort; P = 1.0 in the prospective derivation cohort). We observed a trend toward a better performance of CLIA and PaGIA compared with ELISA (areas under the ROC curves of ELISA vs CLIA in the retrospective and prospective derivation cohort, P = .0184 and P = .061, respectively; ELISA vs PaGIA, P = .0094 and P = .0647).

Considering the cutoffs recommended by the manufacturers, PaGIA and ELISA exhibited excellent sensitivity (100% and 96.2%, respectively) in the prospective derivation cohort with a high number of false-positive results (PaGIA, 69 of 95 [72.6%]; ELISA, 12 of 37 [32.5%]). In contrast, and worryingly from a clinical point of view, CLIA had a specificity close to 100% but a high number of false-negative results: 4 (18.2%) of 22 in the retrospective derivation cohort, 5 (19.2%) of 26 in the prospective derivation cohort, and 4 (8.5%) of 47 in the prospective validation cohort (supplemental Table 4).

According to cutoffs with a 100% PPV, CLIA predicted 38 (79.2%) of 48 HIPA-positive samples, PaGIA 31 (64.6%) of 48, and ELISA 11 (22.9%) of 48 in the pooled derivation cohorts. As for 100% NPV, CLIA predicted 276 (91.5%) of 303 HIT-negative samples, PaGIA 272 (89.8%) of 303, and ELISA 263 (86.8%) of 303. The remaining samples had results falling into the respective intermediate gray zone between cutoff values for 100% NPV and PPV (37 of 351 [10.5%] with CLIA; 48 of 351 [13.7%] with PaGIA; and 77 of 351 [21.9%] with ELISA). For these intermediate results, the LR for a positive HIPA with each IA was calculated (Table 2).

Table 2.

LRs for a positive HIPA in pooled analysis of retrospective and prospective derivation cohorts

Immunoassay (N = 351)Result intervalHIT positiveHIT negativeLR95% CI100% PV95% CI
ELISA, OD 0.00 to 0.24 258 0.00 0.00‐0.19 Negative 98.6-100 
0.24 to 0.30 1.26 1.15‐10.56  
0.30 to 1.00 13 30 2.74 1.54‐4.86 
1.00 to 2.00 13 9.12 4.12‐20.16 
2.00 to 2.81 16 1* 101.00 13.7‐744.24 
2.81 to 3.50 ∞ 3.50‐∞ Positive 36.5-100 
PaGIA, titer 0-1 271 0.00 0.00‐0.18 Negative 98.7-100 
21 0.30 0.04‐2.18  
4.21 1.57‐11.29 
10 31.56 7.13‐139.68 
≥16 31 ∞ 24.34‐∞ Positive 85.0-100 
CLIA, U/mL 0.00 to 0.13 268 0.00 0.00‐0.19 Negative 98.7-100 
0.13 to 0.33 21 0.60 0.15‐2.48  
0.33 to 1.00 13 3.40 1.43‐8.09 
1.00 to 3.00 10 1 63.13 8.27‐482.01  
3.00 to >128 29 ∞ 22.74‐∞ Positive 87.6-100 
Immunoassay (N = 351)Result intervalHIT positiveHIT negativeLR95% CI100% PV95% CI
ELISA, OD 0.00 to 0.24 258 0.00 0.00‐0.19 Negative 98.6-100 
0.24 to 0.30 1.26 1.15‐10.56  
0.30 to 1.00 13 30 2.74 1.54‐4.86 
1.00 to 2.00 13 9.12 4.12‐20.16 
2.00 to 2.81 16 1* 101.00 13.7‐744.24 
2.81 to 3.50 ∞ 3.50‐∞ Positive 36.5-100 
PaGIA, titer 0-1 271 0.00 0.00‐0.18 Negative 98.7-100 
21 0.30 0.04‐2.18  
4.21 1.57‐11.29 
10 31.56 7.13‐139.68 
≥16 31 ∞ 24.34‐∞ Positive 85.0-100 
CLIA, U/mL 0.00 to 0.13 268 0.00 0.00‐0.19 Negative 98.7-100 
0.13 to 0.33 21 0.60 0.15‐2.48  
0.33 to 1.00 13 3.40 1.43‐8.09 
1.00 to 3.00 10 1 63.13 8.27‐482.01  
3.00 to >128 29 ∞ 22.74‐∞ Positive 87.6-100 

N, total number of patients investigated in the retrospective and prospective derivation cohorts; PV, predictive value.

*

Sample with a result of 2.81 OD.

Sample with a result of 1.27 U/mL.

Prospective validation of the derived diagnostic algorithm

Based on the results of the derivation cohorts, a diagnostic algorithm was established (Figure 2). From January 2017 to November 2019, a total of 687 consecutive patients were investigated for suspected HIT (Figure 1C). According to the algorithm, CLIA was used as a unique laboratory test in 566 (82.4%) patients, PaGIA as second-line assay in 121 (17.6%), and HIPA as third-line assay in 146 (21.3%). HIPA was positive in 53 instances (7.7%).

HIT was ruled out in 523 (76.1%) patients based on the combination of a low to intermediate pretest probability and a CLIA <0.13 U/mL (Figure 1C). Eight additional patients (1.2%) had a CLIA <0.13 U/mL but a high pretest probability. In 6 of these patients, the algorithm excluded HIT by a negative PaGIA (the exclusion was confirmed by a negative HIPA). The remaining 2 patients had an “undetermined” algorithm prediction and were resolved by a negative HIPA.

A total of 111 patients (16.2%) with CLIA values falling within the intermediate gray zone of our algorithm (0.13-3.0 U/mL) were further investigated by using PaGIA (Figure 2). Table 3 summarizes the individual diagnostic evaluations. In 74 (10.8%) patients, HIT was ruled out based on the combination of pretest probability and CLIA followed by PaGIA. Fifty of these 74 instances were verified by use of HIPA (as discussed in the Methods) (Figure 1C). Seventeen (2.5%) cases had an “undetermined” algorithm prediction even after PaGIA; 16 were solved by HIPA (negative in 15, positive in 1), and laboratory evaluation remained inconclusive in 1 case because of an atypical aggregation in the HIPA. In 20 patients (2.9%), HIT was predicted by the algorithm, based on the combination of pretest probability, CLIA, and PaGIA. In 10 cases, the prediction was confirmed by a positive HIPA. In 10 cases, HIPA remained negative (supplemental Table 5). However, in 8 patients, clinical courses were compatible with HIT and raise the possibility of false-negative HIPA finding.18-20  In 2 patients, clinical course was compatible with HIT, but results of the ELISA performed in the reference laboratory remained negative. Therefore, no definitive conclusion was possible.

Table 3.

Analysis of the prospective validation cohort (January 2017 to November 2019; n = 687): CLIA HIT-IgG testing with intermediate gray zone results according to Figure 2 (n = 111 of 687 [16.2%])

CLIA HIT-IgGID-PaGIA-H/PF44T scorePosttest probabilityClinical predictionHIPAConclusion (n)
U/mLNTiterNPretest probabilitynP (95% CI)HIT
0.13 to <0.33 62 Negative 30 Low 0% (0-0) Excluded 4 negative, 5 n.d. Accurately excluded (4), excluded by algorithm (5) 
    Intermediate 20 0% (0-2) Excluded 5 negative, 15 n.d. Accurately excluded (5), excluded by algorithm (15) 
    High 0% (0-17) Excluded Negative Accurately excluded (1) 
  19 Low 0% (0-0) Excluded Negative Accurately excluded (6) 
    Intermediate 12 0% (0-2) Excluded 11 negative, 1 n.d. Accurately excluded (11), excluded by algorithm (1) 
    High 0% (0-17) Excluded Negative Accurately excluded (1) 
  Low 0% (0-0) Excluded Negative Accurately excluded (3) 
    Intermediate 3% (0-18) Excluded Negative Accurately excluded (3) 
    High 24% (4-70) Undetermined Negative Solved by HIPA (1) 
  Low 0% (0-1) Excluded Negative Accurately excluded (1) 
    Intermediate 29% (13-53) Undetermined Negative Solved by HIPA (3) 
  Low 4% (1-12) Undetermined Negative Solved by HIPA (1) 
  16 High 100% (96-100) Predicted Negative* Possibly false-positive prediction (1) 
0.33 to <1.00 28 Negative Low 0% (0-0) Excluded 3 negative, 1 n.d. Accurately excluded (3), excluded by algorithm (1) 
    Intermediate 0% (0-9) Excluded 2 negative, 2 n.d. Accurately excluded (2), excluded by algorithm (2) 
  Intermediate 0% (0-9) Excluded Negative Accurately excluded (4) 
  Low 0% (0-0) Excluded Negative Accurately excluded (1) 
    Intermediate 14% (2-55) Undetermined 3 negative, 1 atypical Solved by HIPA (3), not solved by HIPA (1) 
    High 65% (20-93) Undetermined Negative Solved by HIPA (1) 
  Intermediate 70% (46-86) Undetermined Negative Solved by HIPA (2) 
    High 96% (91-99) Predicted Positive Accurately predicted (1) 
  Intermediate 95% (80-99) Predicted 2 positive‡, 2 negative§ Accurately predicted (2), probably accurate prediction (1), possible false-positive prediction (1) 
  16 Intermediate 100% (93-100) Predicted Positive Accurately predicted (1) 
  >16 Intermediate 100% (93-100) Predicted Negativeǁ Probably accurate prediction (1) 
    High 100% (99-100) Predicted Negativeǁ Probably accurate prediction (1) 
1.00 to 3.00 21 Negative Low 0% (0-2) Excluded Negative Accurately excluded (1) 
  Low 0% (0-2) Excluded Negative Accurately excluded (3) 
    Intermediate 0% (0-65) Excluded Negative Accurately excluded (1) 
    High 0% (0-95%) Undetermined Negative Solved by HIPA (1) 
  Low 4% (1-22) Undetermined Negative Solved by HIPA (1) 
    Intermediate 76% (30-96) Predicted Positive Accurately predicted (1) 
  Low 35% (17-59) Undetermined 1 positive, 2 negative Solved by HIPA (3) 
    Intermediate 98% (94-99) Predicted 1 positive, 2 negativeǁ Accurately predicted (1), probably accurate prediction (2) 
    High 100% (99-100%) Predicted Negativeǁ Probably accurate prediction (1) 
  Intermediate 100% (99-100) Predicted Positive Accurately predicted (1) 
    High 100% (100-100) Predicted Negativeǁ Probably accurate prediction (2) 
  16 High 100% (100-100) Predicted Positive Accurately predicted (2) 
  >16 High 100% (100-100) Predicted Positive Accurately predicted (1) 
CLIA HIT-IgGID-PaGIA-H/PF44T scorePosttest probabilityClinical predictionHIPAConclusion (n)
U/mLNTiterNPretest probabilitynP (95% CI)HIT
0.13 to <0.33 62 Negative 30 Low 0% (0-0) Excluded 4 negative, 5 n.d. Accurately excluded (4), excluded by algorithm (5) 
    Intermediate 20 0% (0-2) Excluded 5 negative, 15 n.d. Accurately excluded (5), excluded by algorithm (15) 
    High 0% (0-17) Excluded Negative Accurately excluded (1) 
  19 Low 0% (0-0) Excluded Negative Accurately excluded (6) 
    Intermediate 12 0% (0-2) Excluded 11 negative, 1 n.d. Accurately excluded (11), excluded by algorithm (1) 
    High 0% (0-17) Excluded Negative Accurately excluded (1) 
  Low 0% (0-0) Excluded Negative Accurately excluded (3) 
    Intermediate 3% (0-18) Excluded Negative Accurately excluded (3) 
    High 24% (4-70) Undetermined Negative Solved by HIPA (1) 
  Low 0% (0-1) Excluded Negative Accurately excluded (1) 
    Intermediate 29% (13-53) Undetermined Negative Solved by HIPA (3) 
  Low 4% (1-12) Undetermined Negative Solved by HIPA (1) 
  16 High 100% (96-100) Predicted Negative* Possibly false-positive prediction (1) 
0.33 to <1.00 28 Negative Low 0% (0-0) Excluded 3 negative, 1 n.d. Accurately excluded (3), excluded by algorithm (1) 
    Intermediate 0% (0-9) Excluded 2 negative, 2 n.d. Accurately excluded (2), excluded by algorithm (2) 
  Intermediate 0% (0-9) Excluded Negative Accurately excluded (4) 
  Low 0% (0-0) Excluded Negative Accurately excluded (1) 
    Intermediate 14% (2-55) Undetermined 3 negative, 1 atypical Solved by HIPA (3), not solved by HIPA (1) 
    High 65% (20-93) Undetermined Negative Solved by HIPA (1) 
  Intermediate 70% (46-86) Undetermined Negative Solved by HIPA (2) 
    High 96% (91-99) Predicted Positive Accurately predicted (1) 
  Intermediate 95% (80-99) Predicted 2 positive‡, 2 negative§ Accurately predicted (2), probably accurate prediction (1), possible false-positive prediction (1) 
  16 Intermediate 100% (93-100) Predicted Positive Accurately predicted (1) 
  >16 Intermediate 100% (93-100) Predicted Negativeǁ Probably accurate prediction (1) 
    High 100% (99-100) Predicted Negativeǁ Probably accurate prediction (1) 
1.00 to 3.00 21 Negative Low 0% (0-2) Excluded Negative Accurately excluded (1) 
  Low 0% (0-2) Excluded Negative Accurately excluded (3) 
    Intermediate 0% (0-65) Excluded Negative Accurately excluded (1) 
    High 0% (0-95%) Undetermined Negative Solved by HIPA (1) 
  Low 4% (1-22) Undetermined Negative Solved by HIPA (1) 
    Intermediate 76% (30-96) Predicted Positive Accurately predicted (1) 
  Low 35% (17-59) Undetermined 1 positive, 2 negative Solved by HIPA (3) 
    Intermediate 98% (94-99) Predicted 1 positive, 2 negativeǁ Accurately predicted (1), probably accurate prediction (2) 
    High 100% (99-100%) Predicted Negativeǁ Probably accurate prediction (1) 
  Intermediate 100% (99-100) Predicted Positive Accurately predicted (1) 
    High 100% (100-100) Predicted Negativeǁ Probably accurate prediction (2) 
  16 High 100% (100-100) Predicted Positive Accurately predicted (2) 
  >16 High 100% (100-100) Predicted Positive Accurately predicted (1) 

n.d., not done.

*

Negative HIPA and ELISA under ongoing combined therapy with acetylsalicylic acid and clopidogrel might have missed the diagnosis of HIT (PV-17.099; supplemental Table 5).

Heparin-dependent and independent aggregation.

False-negative CLIA HIT-IgG according to the recommended cutoff (supplemental Table 4).

§

One might be a false-negative HIPA test: positive ELISA inhibited by high-dose heparin, clinical course suggestive of HIT (PV-18.053; supplemental Table 5). The other might be a false-positive algorithm prediction: negative ELISA, negative HIPA (PV-19.295; supplemental Table 5).

ǁMight be a false-negative HIPA testing: positive ELISA inhibited by high-dose heparin, clinical course suggestive of HIT (PV-18.098, PV-18.123, PV-19.037, PV-19-111, PV-19.184, PV-19-230, and PV-19.264; supplemental Table 5).

Finally, 45 patients (6.6%) had a CLIA >3.0 U/mL (Table 4). In 2 cases, the pretest probability was low. In 1 case, the combination of the low pretest probability and a negative PaGIA ruled out HIT according to the algorithm (confirmed by a negative HIPA). The other had an “undetermined” algorithm prediction even after PaGIA and a positive HIPA solved the case. In 43 (6.3%) instances, an intermediate to high pretest probability for HIT combined with the CLIA predicted HIT. This was confirmed by a positive HIPA in 41 cases. In 2 cases (0.3%), HIPA remained negative, but clinical course was compatible with HIT (supplemental Table 5). For these samples, PaGIA (not required by the algorithm) was performed post hoc.

Table 4.

Analysis of the prospective validation cohort (January 2017 to November 2019; n = 687): CLIA HIT-IgG testing with positive results according to Figure 2 (n = 45 of 687 [6.6%])

CLIA HIT-IgGID-PaGIA-H/PF44T scorePosttest probabilityClinical predictionHIPAConclusion (n)
U/mLnTiternPretest probabilitynP (95% CI)HIT
Routine evaluation according toFigure 2  
 >3.0 45 Neg Low 0% (0-2)* Excluded Negative Accurately excluded (1) 
  Low 35% (17-59)* Possible Positive Solved by HIPA (1) 
  Not done 43 Intermediate 34 100% (79-100) Predicted 32 positive, 2 negative§ Accurately predicted (32), probably accurate prediction (2) 
    High 100% (98-100) Predicted Positive Accurately predicted (9) 
Post hoc evaluation of the 43 samples with CLIA HIT-IgG > 3.0 U/mL and intermediate to high 4T score 
 43 Intermediate 76% (30-96)* Predicted Negative§ Probably accurate prediction (1) 
  Intermediate 98% (94-99)* Predicted 3 positive, 1 negative§ Accurately predicted (3), probably accurate prediction (1) 
  Intermediate 100% (99-100)* Predicted Positive Accurately predicted (7) 
    High 100% (100-100)* Predicted Positive Accurately predicted (1) 
  16 Intermediate 100% (100-100)* Predicted Positive Accurately predicted (6) 
    High 100% (100-100)* Predicted Positive Accurately predicted (1) 
  >16 23 Intermediate 16 100% (100-100)* Predicted Positive Accurately predicted (16) 
    High 100% (100-100)* Predicted Positive Accurately predicted (7) 
CLIA HIT-IgGID-PaGIA-H/PF44T scorePosttest probabilityClinical predictionHIPAConclusion (n)
U/mLnTiternPretest probabilitynP (95% CI)HIT
Routine evaluation according toFigure 2  
 >3.0 45 Neg Low 0% (0-2)* Excluded Negative Accurately excluded (1) 
  Low 35% (17-59)* Possible Positive Solved by HIPA (1) 
  Not done 43 Intermediate 34 100% (79-100) Predicted 32 positive, 2 negative§ Accurately predicted (32), probably accurate prediction (2) 
    High 100% (98-100) Predicted Positive Accurately predicted (9) 
Post hoc evaluation of the 43 samples with CLIA HIT-IgG > 3.0 U/mL and intermediate to high 4T score 
 43 Intermediate 76% (30-96)* Predicted Negative§ Probably accurate prediction (1) 
  Intermediate 98% (94-99)* Predicted 3 positive, 1 negative§ Accurately predicted (3), probably accurate prediction (1) 
  Intermediate 100% (99-100)* Predicted Positive Accurately predicted (7) 
    High 100% (100-100)* Predicted Positive Accurately predicted (1) 
  16 Intermediate 100% (100-100)* Predicted Positive Accurately predicted (6) 
    High 100% (100-100)* Predicted Positive Accurately predicted (1) 
  >16 23 Intermediate 16 100% (100-100)* Predicted Positive Accurately predicted (16) 
    High 100% (100-100)* Predicted Positive Accurately predicted (7) 
*

Calculated as with CLIA HIT-IgG value 1.0 to 3.0 U/mL (LR, 63.13) (Table 2).

Sample with a high titer of antiphospholipid antibodies leading to a false-positive CLIA HIT-IgG (3.99 U/mL; PV-17.199).

Routine diagnostic evaluation without PaGIA according to Figure 2.

§

Might be false-negative HIPA testing: positive ELISA inhibited by high-dose heparin, clinical course suggestive of HIT (PV-19.014 and PV-19.232; supplemental Table 5).

Performance of the diagnostic algorithm in cardiac surgery and ICU patients

Assessing clinical pretest probability in cardiac surgery33  and ICU34,35  patients is challenging and could affect the application of a diagnostic algorithm based on the 4T score. Following algorithm predictions were observed in our prospective validation cohort. In cardiac surgery (n = 36), there were 24 HIT exclusions, 4 not solved by the algorithm (all HIPA negative), and 8 HIT predictions (6 confirmed by HIPA and 2 not). Second, in the ICU (n = 106), there were 92 HIT exclusions, 3 were not solved (all HIPA negative), and 11 HIT predictions (7 confirmed by HIPA and 4 not). HIT predictions not confirmed by HIPA are reviewed in the Discussion and summarized in supplemental Table 5.

In summary, the diagnostic algorithm (Figure 2) ruled out HIT diagnosis in 604 patients (87.9%) and accurately predicted a positive HIPA in 51 patients (7.4%) with a 30- to 60-minute analytical evaluation. No false-negative HIT prediction was detected. In 12 (1.7%) cases, HIT was predicted by the algorithm but was not corroborated by HIPA. In 10 instances, the further clinical courses strongly suggested HIT, leaving 2 cases (0.3%) of possible false-positive HIT prediction (supplemental Table 5). The algorithm left 20 cases (2.9%) unresolved: in 17, HIPA was negative, in 2 positive, and in 1 inconclusive.

Untreated HIT is associated with high morbidity and mortality, whereas an unnecessary switch to alternative nonheparin anticoagulants increases the risk of bleeding complications and treatment costs.1,12,13  Clinical suspicion of HIT therefore requires rapid and accurate laboratory assessment to guide management.21,48  The current study evaluated the diagnostic accuracy of 3 IAs for detection of clinically relevant anti-PF4/heparin antibodies. Subsequently, we derived and prospectively validated a rapid and accurate diagnostic algorithm for patients with suspected HIT.

Evaluation of the 3 IAs revealed that the sensitivities of the recommended cutoffs differ significantly: 100% for ID-PaGIA-H/PF4, 96.2% for Zymutest-HIA-IgG, and 80.8% for the HemosIL-AcuStar-HIT-IgG (supplemental Table 1). With regard to this last IA, we confirm38,46  that the official cutoff value set at ≥1.0 U/mL is too high, resulting in a not inconsequential number of false-negative results (13 of 101 HIPA-positive samples) (supplemental Table 4). Of note, Althaus et al46  previously observed a sensitivity of 96.2% for the official cutoff of the HemosIL-AcuStar-HIT-IgG, identifying an ideal cutoff according to ROC analysis of 0.57 U/mL, which is similar to our data. Warkentin et al38  reported a sensitivity <100% of the official cutoff of the HemosIL-AcuStar-HIT-IgG.

We show that all 3 IAs perform best by using the magnitude of the quantitative values instead of a positive/negative result based on a fixed cutoff value. In particular, we confirm that the PaGIA, which has a high rate of false-positive results when evaluated only in the undiluted probe (supplemental Table 1),36,49  is most useful when a positive result is assessed semi-quantitatively according to the measured titer (Table 2).26,29,32  For CLIA, we confirm that the magnitude of its results is associated with the likelihood for HIT (Table 2; Figure 2), as recently observed by Warkentin et al.38 

In clinical practice, the most relevant diagnostic performance of an IA for anti-PF4/heparin antibodies is its ability to significantly increase or decrease the pretest probability by predicting the outcome of a functional gold standard assay.1,19,21,29-31,36,48  This diagnostic approach is depicted in supplemental Table 2. In addition, we evaluated the performance of cutoff values with 100% NPV or PPV for a positive HIPA (Table 2).29  We found that the 100% predictive values of the CLIA, which has an analytical TAT of 30 minutes, could solve ∼90% (314 of 351) of cases of suspected HIT (supplemental Table 1). We confirmed that PaGIA titers ≤1 and ≥16 were able to rapidly rule out or rule in a positive HIPA, respectively.29,32  Thus, the manual semi-quantitative assessment of the titer in a positive PaGIA could rapidly solve ∼85% (303 of 351) of cases of suspected HIT.26,29,32  In addition, LRs of PaGIA titers are in line with our previous report.29 

Based on these observations, we derived an in-house diagnostic algorithm expected to solve ≥95% of cases of suspected HIT with an analytical TAT of ≤1 hour (Figure 2). The CLIA is used as the first-line test because of its performance in both derivation studies and efficient automated diagnostic laboratory evaluation. To minimize the risk of false-negative and false-positive results, we set conservative cutoffs for the 100% predictive values for a positive HIPA (<0.13 U/L for NPV and >3.0 U/mL for PPV). The probability by which a quantitative result below/above these cutoffs predicts a negative/positive HIPA depends on the individual pretest probability of HIT and the 95% CI of the LR of the corresponding result intervals (Table 2). For results lying in the CLIA gray zone (0.13-3.0 U/mL), owing to its performance,29  we chose to use the PaGIA as the second-line test and sequentially combine the LR of its titer with the previously assessed clinico-pathologic probability of HIT.

The prospective validation of our diagnostic approach shows an excellent clinical performance by accurately solving 96.8% of cases of suspected HIT with an analytical TAT of 30 to 60 minutes (Tables 3 and 4). Of note, no false-negative results were observed (Figure 1C). This is reinforced by the fact that only 2 of the 20 cases unresolved by the diagnostic algorithm had a positive HIPA, underscoring the cautious nature of our criteria for HIT exclusion. In 12 (1.7%) cases, the algorithm-based prediction of HIT was not confirmed by HIPA. In 10 cases, the patients’ clinical courses, including prompt resolution of thrombocytopenia and reduction of fibrin D-dimers after switching to alternative nonheparin anticoagulation, were judged compatible with HIT, suggesting false-negative HIPA results (supplemental Table 5). Of note, in 7 instances, with high titer confirmatory anti-PF4/heparin antibodies by ELISA, the external reference laboratory could not exclude HIT despite the negative HIPA. The laboratory reports advised starting alternative anticoagulation in case of strong suspicion of HIT, thus replicating the clinical management decision issued by our diagnostic algorithm.

Although the HIPA and the SRA are considered gold standard tests for HIT, a “limited” sensitivity of both methods is recognized.18,19  For instance, cases of “SRA-negative HIT” have been recently documented by reference HIT laboratories of the Service d'Hématologie-Hémostase, CHRU Tours (France),50  Bloodcenter of Wisconsin, Milwaukee (United States),51  and McMaster University, Hamilton (Canada).52  These observations are in line with those of Warkentin et al,20,53  who recently observed that anti-PF4/heparin-IgG-antibodies may be detectable by IAs before SRA seroconversion. This raises 2 implications for our study. First, it offers a rationale for false-negative HIPA findings, other than those due to technical issues, such as the presence in patient plasma of substances inhibiting formation of PF4/heparin-complexes (eg, danaparoid54 ) and/or activation of donor platelets (eg, anti-P2Y12 ADP-receptor inhibitors). Second, it highlights the impact of diagnostic timing, allowing HIT to be suspected in the time window between immunologic and functional seroconversion.19,20,53,55 

Because our study was conducted in the context of real-world clinical practice, we did not ask for the functional gold standard in all patients (Figure 1; Table 2). This potential partial verification bias is the major limitation of our work. However, we performed the HIPA more frequently than required by current guidelines (as discussed in the Methods section).1,4,28,30,31,36  Of particular note, our approach allowed us to document that the recommended cutoff of the HemosIL-AcuStar-HIT-IgG (≥1.0 U/mL) generated a high number of false-negative results (supplemental Tables 1 and 4). Our in-house algorithm also allowed us to exclude HIT in the presence of a low or intermediate pretest probability only if CLIA was <0.13 U/mL. This very conservative negative cutoff is in line with a recent publication of Warkentin et al38  showing that a CLIA ≥0.4 U/mL had a sensitivity of 100%. Finally, it has been shown that this type of partial verification bias does not affect the PPV.56  These considerations support the validity of our diagnostic algorithm.

Another potential limitation of our work is the use of the HIPA as the laboratory gold standard instead of the SRA, which is the classical test for detecting platelet-activating antibodies. However, as stated in a recent review,18  both tests are currently accepted as gold standard HIT assays, with high sensitivity and specificity.18,19  Of note, there are few direct comparisons of these assays; although one publication indicated similar diagnostic performance,57  in two other instances the HIPA showed a slightly higher sensitivity for anti-PF4/heparin antibodies compared with the SRA.58,59  This could explain the slight differences between our data and those published by Warkentin et al38  regarding the performance of the CLIA.

Finally, we did not evaluate the impact of our algorithm on clinical outcomes of patients. However, improving diagnostic accuracy is reasonably expected to decrease the rate of complications due to delayed diagnosis or misdiagnosis.12,13  Based on the assumptions used in Table 4 of the 2018 American Society of Hematology (ASH) guideline (1000 patients evaluated for HIT suspicion; 11% prevalence of HIT),28  our approach is expected to rapidly exclude HIT in 863 of 890 patients (during the prospective validation, the algorithm excluded HIT in 604 of 623 negative patients) and correctly identify at least 106 of 110 patients with HIT (the algorithm predicted 51 of 53 HIPA-positive samples) at the expense of 3 of 1000 possibly false-positive HIT predictions (2 in our cohort of 687 patients). In 29 of 1000 instances with undetermined algorithm prediction, an expected maximum of 4 would eventually turn out having HIT. Overall, with a rapid analytical TAT of up to 1 hour, ∼973 of 1000 patients would be treated appropriately, and ∼27 of 1000 would possibly unnecessarily receive non-heparin alternative anticoagulation (until resolved by mandatory functional testing). Of note, without false-negative HIT predictions, our algorithm would prevent thrombosis (estimated individual risk in unrecognized HIT, 30%),28  amputations, and death (each 6%) at the price of increased bleeding risk in <3% of patients unnecessarily treated with non-heparin anticoagulation (estimated individual risk, ∼8%-35% over treatment duration). This scenario compares well with the strategy recommended by the ASH guideline that, assuming a delay of 1 to several days until IA results are available (ELISA), would lead to 40.8% patients who do not have HIT receiving non-heparin anticoagulation unnecessarily for varying periods of time and which, of particular note, would miss HIT diagnosis in 10 of 110 patients.

The excellent performance of our diagnostic algorithm can be explained by the following: (1) we used 2 of the 5 IAs that showed a combination of high sensitivity (>95%) and specificity (>90%) in a recent meta-analysis17 ; (2) both tests are among the 3 rapid IAs found to be particularly well suited for incorporation into diagnostic algorithms by another recent meta-analysis16 ; and (3) by applying “extreme” cutoff values, we maximized sensitivity (low threshold with 100% NPV) and specificity (high threshold with 100% PPV) of both IAs.17  In addition, the combination of the IgG-specific CLIA as first-line automated IA with the polyspecific PaGIA for initially unresolved cases increases the discriminative power of each IA by itself.

Our results are of immediate practical relevance because they: (1) respond to the most recent ASH guidelines on HIT, indicating that one of the key research priorities is the integration of emerging rapid IAs into diagnostic algorithms28 ; (2) provide a guidance for interpreting quantitative results of 2 very valuable rapid IAs for anti-PF4/heparin antibodies, HemosIL-AcuStar-HIT and ID-H/PF4-PaGIA (supplemental Table 2)16,17 ; (3) underscore the utility of quantifying PaGIA according to titer26,29 ; (4) alert personnel who use the HemosIL-AcuStar-HIT-IgG that the recommended cutoff is too high and generates a high number of false-negative results (supplemental Table 4)46 ; (5) support recent observations that diagnostic testing for HIT might be useful in some low pretest probability situations (Figure 2; supplemental Table 3)36,38 ; and (5) raise the hypothesis that a reason for a negative HIPA may be its too-early timing.19,20 

In conclusion, we showed that establishing cutoffs with 100% PPV and NPV and LRs for result intervals substantially improved IA accuracy for diagnosing HIT. The approach combining the estimated pretest probability and the quantitative results of 2 sequential IAs was able to rule in or out the diagnosis within 1 hour in >95% of patients with suspected HIT (Figures 1C and 2; Tables 3 and 4). In the remaining cases, management decisions have to be based on individualized judgment while awaiting HIPA results.1,18  This original multistep strategy combining clinical and laboratory assessment results in rapid and accurate diagnostic evaluation and will improve prompt clinical management of patients with suspected HIT. We intend to verify the potential generalization of this approach and these cutoffs in a multicenter study with the ultimate goal of developing a diagnostic application for smartphones and tablets.60 

Original data may be requested by contacting the corresponding author.

Presented as poster PO6-9 at the 60th Annual meeting of the Society of Thrombosis and Hemostasis Research (GTH), Münster, Germany, 18 February 2016.

Presented as oral communication FM308 at the 1st Annual Spring meeting of the Swiss Society of General Internal Medicine (SSGIM) and of the Swiss Society of Hematology (SSH), Basel, Switzerland, 27 May 2016.

Presented as an oral communication at the 61st Annual Meeting of the Society of Thrombosis and Hemostasis Research (GTH), Basel, Switzerland, 16 February 2017.

Presented as oral communication FM-306 at the 2nd Annual Spring meeting of the Swiss Society of General Internal Medicine (SSGIM) and of the Swiss Society of Hematology (SSH), Lausanne, Switzerland, 5 May 2017.

Presented as an oral communication at the Swiss Oncology & Hematology Congress (SOHC), Zürich, Switzerland, 27 June 2018.

Presented as an oral communication at the XXVII Congress of the International Society on Thrombosis and Haemostasis (ISTH), Melbourne, Australia, 8 July 2019.

The online version of this article contains a data supplement.

The publication costs of this article were defrayed in part by page charge payment. Therefore, and solely to indicate this fact, this article is hereby marked “advertisement” in accordance with 18 USC section 1734.

This study constitutes the medical master thesis of M.M. and has been partially presented at several scientific meetings (noted in the footnotes).

The authors thank the physicians caring for the patients, the laboratory technicians for accurate diagnostic evaluation (Cindy Celeste, Sabrina Jordi, Vicky Menétrey, Raphael Bauer, and Mathieu di Tomaso), Michel Duchosal for support, Thomas Thiele and Andreas Greinacher for supervising the HIPA assay, Pierre-Alexandre Bart for acting as expert of the master thesis of M.M., and Oscar Marchetti for careful reading of the manuscript.

Contribution: M.M. performed research, analyzed data, and wrote the manuscript; S.B. designed research, analyzed data, and revised the manuscript; M.G.Z. analyzed data and wrote the manuscript. F.M.-R., E.M.-G., and N.N. performed research; F.G. and C.G. performed research and managed the database; M.G. helped to collect data and revised the manuscript; and L.A. designed research, analyzed data, and wrote the manuscript. All authors read and approved the final version of the manuscript.

Conflict-of-interest disclosure: The authors declare no competing financial interests.

Correspondence: Lorenzo Alberio, Division of Hematology and Central Haematology Laboratory, Lausanne University Hospital (CHUV), Rue du Bugnon 46, CH–1011 Lausanne, Switzerland; e-mail: lorenzo.alberio@chuv.ch.

1.
Arepally
GM
.
Heparin-induced thrombocytopenia
.
Blood
.
2017
;
129
(
21
):
2864
-
2872
.
2.
Warkentin
TE
,
Levine
MN
,
Hirsh
J
, et al
.
Heparin-induced thrombocytopenia in patients treated with low-molecular-weight heparin or unfractionated heparin
.
N Engl J Med
.
1995
;
332
(
20
):
1330
-
1335
.
3.
Warkentin
TE
,
Sheppard
JA
,
Horsewood
P
,
Simpson
PJ
,
Moore
JC
,
Kelton
JG
.
Impact of the patient population on the risk for heparin-induced thrombocytopenia
.
Blood
.
2000
;
96
(
5
):
1703
-
1708
.
4.
Greinacher
A
.
Clinical practice. Heparin-induced thrombocytopenia
.
N Engl J Med
.
2015
;
373
(
3
):
252
-
261
.
5.
Chilver-Stainer
L
,
Lämmle
B
,
Alberio
L
.
Titre of anti-heparin/PF4-antibodies and extent of in vivo activation of the coagulation and fibrinolytic systems
.
Thromb Haemost
.
2004
;
91
(
2
):
276
-
282
.
6.
Alberio
L
.
My patient is thrombocytopenic! Is (s)he? Why? And what shall I do? A practical approach to thrombocytopenia
.
Hamostaseologie
.
2013
;
33
(
2
):
83
-
94
.
7.
Alatri
A
,
Armstrong
AE
,
Greinacher
A
, et al
.
Results of a consensus meeting on the use of argatroban in patients with heparin-induced thrombocytopenia requiring antithrombotic therapy—a European perspective
.
Thromb Res
.
2012
;
129
(
4
):
426
-
433
.
8.
Colucci
G
,
Nagler
M
,
Klaus
N
,
Conte
T
,
Giabbani
E
,
Alberio
L
.
Practical guidelines for argatroban and bivalirudine in patients with heparin-induced thrombocytopenia
.
J Transl Sci
.
2015
;
1
(
2
):
37
-
42
.
9.
Chong
BH
,
Gallus
AS
,
Cade
JF
, et al;
Australian HIT Study Group
.
Prospective randomised open-label comparison of danaparoid with dextran 70 in the treatment of heparin-induced thrombocytopaenia with thrombosis: a clinical outcome study
.
Thromb Haemost
.
2001
;
86
(
5
):
1170
-
1175
.
10.
Schindewolf
M
,
Steindl
J
,
Beyer-Westendorf
J
, et al
.
Frequent off-label use of fondaparinux in patients with suspected acute heparin-induced thrombocytopenia (HIT)—findings from the GerHIT multi-centre registry study
.
Thromb Res
.
2014
;
134
(
1
):
29
-
35
.
11.
Warkentin
TE
,
Pai
M
,
Linkins
LA
.
Direct oral anticoagulants for treatment of HIT: update of Hamilton experience and literature review
.
Blood
.
2017
;
130
(
9
):
1104
-
1113
.
12.
Wallis
DE
,
Workman
DL
,
Lewis
BE
,
Steen
L
,
Pifarre
R
,
Moran
JF
.
Failure of early heparin cessation as treatment for heparin-induced thrombocytopenia
.
Am J Med
.
1999
;
106
(
6
):
629
-
635
.
13.
Caton
S
,
O’Brien
E
,
Pannelay
AJ
,
Cook
RG
.
Assessing the clinical and cost impact of on-demand immunoassay testing for the diagnosis of heparin induced thrombocytopenia
.
Thromb Res
.
2016
;
140
:
155
-
162
.
14.
Warkentin
TE
.
Heparin-induced thrombocytopenia: pathogenesis and management
.
Br J Haematol
.
2003
;
121
(
4
):
535
-
555
.
15.
Cuker
A
,
Gimotty
PA
,
Crowther
MA
,
Warkentin
TE
.
Predictive value of the 4Ts scoring system for heparin-induced thrombocytopenia: a systematic review and meta-analysis
.
Blood
.
2012
;
120
(
20
):
4160
-
4167
.
16.
Sun
L
,
Gimotty
PA
,
Lakshmanan
S
,
Cuker
A
.
Diagnostic accuracy of rapid immunoassays for heparin-induced thrombocytopenia. A systematic review and meta-analysis
.
Thromb Haemost
.
2016
;
115
(
5
):
1044
-
1055
.
17.
Nagler
M
,
Bachmann
LM
,
ten Cate
H
,
ten Cate-Hoek
A
.
Diagnostic value of immunoassays for heparin-induced thrombocytopenia: a systematic review and meta-analysis
.
Blood
.
2016
;
127
(
5
):
546
-
557
.
18.
Favaloro
EJ
.
Laboratory tests for identification or exclusion of heparin induced thrombocytopenia: HIT or miss?
Am J Hematol
.
2018
;
93
(
2
):
308
-
314
.
19.
Warkentin
TE
.
Laboratory diagnosis of heparin-induced thrombocytopenia
.
Int J Lab Hematol
.
2019
;
41
(
suppl 1
):
15
-
25
.
20.
Warkentin
TE
,
Arnold
DM
,
Kelton
JG
,
Sheppard
JI
,
Smith
JW
,
Nazy
I
.
Platelet-activating antibodies are detectable at the earliest onset of heparin-induced thrombocytopenia, with implications for the operating characteristics of the serotonin-release assay
.
Chest
.
2018
;
153
(
6
):
1396
-
1404
.
21.
Alberio
L
.
Heparin-induced thrombocytopenia: some working hypotheses on pathogenesis, diagnostic strategies and treatment
.
Curr Opin Hematol
.
2008
;
15
(
5
):
456
-
464
.
22.
Warkentin
TE
,
Sheppard
JI
,
Moore
JC
,
Sigouin
CS
,
Kelton
JG
.
Quantitative interpretation of optical density measurements using PF4-dependent enzyme-immunoassays
.
J Thromb Haemost
.
2008
;
6
(
8
):
1304
-
1312
.
23.
Meyer
O
,
Salama
A
,
Pittet
N
,
Schwind
P
.
Rapid detection of heparin-induced platelet antibodies with particle gel immunoassay (ID-HPF4)
.
Lancet
.
1999
;
354
(
9189
):
1525
-
1526
.
24.
Legnani
C
,
Cini
M
,
Pili
C
,
Boggian
O
,
Frascaro
M
,
Palareti
G
.
Evaluation of a new automated panel of assays for the detection of anti-PF4/heparin antibodies in patients suspected of having heparin-induced thrombocytopenia
.
Thromb Haemost
.
2010
;
104
(
2
):
402
-
409
.
25.
Sachs
UJ
,
von Hesberg
J
,
Santoso
S
,
Bein
G
,
Bakchoul
T
.
Evaluation of a new nanoparticle-based lateral-flow immunoassay for the exclusion of heparin-induced thrombocytopenia (HIT)
.
Thromb Haemost
.
2011
;
106
(
6
):
1197
-
1202
.
26.
Schneiter
S
,
Colucci
G
,
Sulzer
I
,
Barizzi
G
,
Lämmle
B
,
Alberio
L
.
Variability of anti-PF4/heparin antibody results obtained by the rapid testing system ID-H/PF4-PaGIA
.
J Thromb Haemost
.
2009
;
7
(
10
):
1649
-
1655
.
27.
Leroux
D
,
Hezard
N
,
Lebreton
A
, et al
.
Prospective evaluation of a rapid nanoparticle-based lateral flow immunoassay (STic Expert(®) HIT) for the diagnosis of heparin-induced thrombocytopenia
.
Br J Haematol
.
2014
;
166
(
5
):
774
-
782
.
28.
Cuker
A
,
Arepally
GM
,
Chong
BH
, et al
.
American Society of Hematology 2018 guidelines for management of venous thromboembolism: heparin-induced thrombocytopenia
.
Blood Adv
.
2018
;
2
(
22
):
3360
-
3392
.
29.
Nellen
V
,
Sulzer
I
,
Barizzi
G
,
Lämmle
B
,
Alberio
L
.
Rapid exclusion or confirmation of heparin-induced thrombocytopenia: a single-center experience with 1,291 patients
.
Haematologica
.
2012
;
97
(
1
):
89
-
97
.
30.
Raschke
RA
,
Curry
SC
,
Warkentin
TE
,
Gerkin
RD
.
Improving clinical interpretation of the anti-platelet factor 4/heparin enzyme-linked immunosorbent assay for the diagnosis of heparin-induced thrombocytopenia through the use of receiver operating characteristic analysis, stratum-specific likelihood ratios, and Bayes theorem
.
Chest
.
2013
;
144
(
4
):
1269
-
1275
.
31.
Raschke
RA
,
Gallo
T
,
Curry
SC
, et al
.
Clinical effectiveness of a Bayesian algorithm for the diagnosis and management of heparin-induced thrombocytopenia
.
J Thromb Haemost
.
2017
;
15
(
8
):
1640
-
1645
.
32.
Alberio
L
,
Kimmerle
S
,
Baumann
A
,
Taleghani
BM
,
Biasiutti
FD
,
Lämmle
B
.
Rapid determination of anti-heparin/platelet factor 4 antibody titers in the diagnosis of heparin-induced thrombocytopenia
.
Am J Med
.
2003
;
114
(
7
):
528
-
536
.
33.
Pouplard
C
,
May
MA
,
Regina
S
,
Marchand
M
,
Fusciardi
J
,
Gruel
Y
.
Changes in platelet count after cardiac surgery can effectively predict the development of pathogenic heparin-dependent antibodies
.
Br J Haematol
.
2005
;
128
(
6
):
837
-
841
.
34.
Warkentin
TE
.
Heparin-induced thrombocytopenia in critically ill patients
.
Semin Thromb Hemost
.
2015
;
41
(
1
):
49
-
60
.
35.
Harada
MY
,
Hoang
DM
,
Zaw
AA
, et al
.
Overtreatment of heparin-induced thrombocytopenia in the surgical ICU
.
Crit Care Med
.
2017
;
45
(
1
):
28
-
34
.
36.
Linkins
LA
,
Bates
SM
,
Lee
AY
,
Heddle
NM
,
Wang
G
,
Warkentin
TE
.
Combination of 4Ts score and PF4/H-PaGIA for diagnosis and management of heparin-induced thrombocytopenia: prospective cohort study
.
Blood
.
2015
;
126
(
5
):
597
-
603
.
37.
Crowther
M
,
Cook
D
,
Guyatt
G
, et al
.
Heparin-induced thrombocytopenia in the critically ill: interpreting the 4Ts test in a randomized trial
.
J Crit Care
.
2014
;
29
(
3
):
470.e7
-
e15
.
38.
Warkentin
TE
,
Sheppard
JI
,
Linkins
LA
,
Arnold
DM
,
Nazy
I
.
High sensitivity and specificity of an automated IgG-specific chemiluminescence immunoassay for diagnosis of HIT
.
Blood
.
2018
;
132
(
12
):
1345
-
1349
.
39.
Guermazi
S
,
Znazen
R
.
Resistance to curative treatment by unfractionned heparin [in French]
.
Rev Med Interne
.
2009
;
30
(
4
):
331
-
334
.
40.
Raschke
RA
,
Reilly
BM
,
Guidry
JR
,
Fontana
JR
,
Srinivas
S
.
The weight-based heparin dosing nomogram compared with a “standard care” nomogram. A randomized controlled trial
.
Ann Intern Med
.
1993
;
119
(
9
):
874
-
881
.
41.
Greinacher
A
,
Amiral
J
,
Dummel
V
,
Vissac
A
,
Kiefel
V
,
Mueller-Eckhardt
C
.
Laboratory diagnosis of heparin-associated thrombocytopenia and comparison of platelet aggregation test, heparin-induced platelet activation test, and platelet factor 4/heparin enzyme-linked immunosorbent assay
.
Transfusion
.
1994
;
34
(
5
):
381
-
385
.
42.
Fabris
F
,
Luzzatto
G
,
Stefani
PM
,
Girolami
B
,
Cella
G
,
Girolami
A
.
Heparin-induced thrombocytopenia
.
Haematologica
.
2000
;
85
(
1
):
72
-
81
.
43.
Tschudi
M
,
Lämmle
B
,
Alberio
L
.
Dosing lepirudin in patients with heparin-induced thrombocytopenia and normal or impaired renal function: a single-center experience with 68 patients
.
Blood
.
2009
;
113
(
11
):
2402
-
2409
.
44.
Pouplard
C
,
Leroux
D
,
Regina
S
,
Rollin
J
,
Gruel
Y
.
Effectiveness of a new immunoassay for the diagnosis of heparin-induced thrombocytopenia and improved specificity when detecting IgG antibodies
.
Thromb Haemost
.
2010
;
103
(
1
):
145
-
150
.
45.
Van Hoecke
F
,
Devreese
K
.
Evaluation of two new automated chemiluminescent assays (HemosIL® AcuStar HIT-IgG and HemosIL® AcuStar HIT-Ab) for the detection of heparin-induced antibodies in the diagnosis of heparin-induced thrombocytopenia
.
Int J Lab Hematol
.
2012
;
34
(
4
):
410
-
416
.
46.
Althaus
K
,
Hron
G
,
Strobel
U
, et al
.
Evaluation of automated immunoassays in the diagnosis of heparin induced thrombocytopenia
.
Thromb Res
.
2013
;
131
(
3
):
e85
-
e90
.
47.
Eichler
P
,
Budde
U
,
Haas
S
, et al
.
First workshop for detection of heparin-induced antibodies: validation of the heparin-induced platelet-activation test (HIPA) in comparison with a PF4/heparin ELISA
.
Thromb Haemost
.
1999
;
81
(
4
):
625
-
629
.
48.
Rodgers
GM
.
Improving the laboratory diagnosis of heparin-induced thrombocytopenia
.
Am J Med
.
2003
;
114
(
7
):
609
-
610
.
49.
Pouplard
C
,
Gueret
P
,
Fouassier
M
, et al
.
Prospective evaluation of the “4Ts” score and particle gel immunoassay specific to heparin/PF4 for the diagnosis of heparin-induced thrombocytopenia
.
J Thromb Haemost
.
2007
;
5
(
7
):
1373
-
1379
.
50.
Vayne
C
,
Guery
EA
,
Kizlik-Masson
C
, et al
.
Beneficial effect of exogenous platelet factor 4 for detecting pathogenic heparin-induced thrombocytopenia antibodies
.
Br J Haematol
.
2017
;
179
(
5
):
811
-
819
.
51.
Pandya
KA
,
Johnson
EG
,
Davis
GA
,
Padmanabhan
A
.
Serotonin release assay (SRA)-negative HIT, a newly recognized entity: implications for diagnosis and management
.
Thromb Res
.
2018
;
172
:
169
-
171
.
52.
Warkentin
TE
,
Nazy
I
,
Sheppard
JI
,
Smith
JW
,
Kelton
JG
,
Arnold
DM
.
Serotonin-release assay-negative heparin-induced thrombocytopenia
.
Am J Hematol
.
2020
;
95
(
1
):
38
-
47
.
53.
Warkentin
TE
,
Sheppard
JI
,
Smith
JW
,
Arnold
DM
,
Nazy
I
.
Timeline of heparin-induced thrombocytopenia seroconversion in serial plasma samples tested using an automated latex immunoturbidimetric assay
.
Int J Lab Hematol
.
2019
;
41
(
4
):
493
-
502
.
54.
Krauel
K
,
Fürll
B
,
Warkentin
TE
, et al
.
Heparin-induced thrombocytopenia—therapeutic concentrations of danaparoid, unlike fondaparinux and direct thrombin inhibitors, inhibit formation of platelet factor 4-heparin complexes
.
J Thromb Haemost
.
2008
;
6
(
12
):
2160
-
2167
.
55.
Refaai
MA
,
Van Cott
EM
,
Laposata
M
.
The timing of a positive test result for heparin-induced thrombocytopenia relative to the platelet count and anticoagulant therapy in 43 consecutive cases
.
Am J Clin Pathol
.
2003
;
119
(
4
):
497
-
504
.
56.
de Groot
JA
,
Janssen
KJ
,
Zwinderman
AH
,
Bossuyt
PM
,
Reitsma
JB
,
Moons
KG
.
Correcting for partial verification bias: a comparison of methods
.
Ann Epidemiol
.
2011
;
21
(
2
):
139
-
148
.
57.
Greinacher
A
,
Ittermann
T
,
Bagemühl
J
, et al
.
Heparin-induced thrombocytopenia: towards standardization of platelet factor 4/heparin antigen tests
.
J Thromb Haemost
.
2010
;
8
(
9
):
2025
-
2031
.
58.
Savi
P
,
Chong
BH
,
Greinacher
A
, et al
.
Effect of fondaparinux on platelet activation in the presence of heparin-dependent antibodies: a blinded comparative multicenter study with unfractionated heparin
.
Blood
.
2005
;
105
(
1
):
139
-
144
.
59.
Eekels
JJM
,
Althaus
K
,
Bakchoul
T
, et al
.
An international external quality assessment for laboratory diagnosis of heparin-induced thrombocytopenia
.
J Thromb Haemost
.
2019
;
17
(
3
):
525
-
531
.
60.
Cuker
A
.
Does my patient have HIT? There should be an app for that
.
Blood
.
2016
;
127
(
5
):
522
-
524
.

Supplemental data

Sign in via your Institution