• CMML is a heterogeneous disorder with a highly variable prognosis that clearly requires a specific and widely accepted prognostic scoring system.

  • CPSS is a powerful prognostic score that defines 4 risk groups for survival and AML evolution, developed and validated in the largest CMML series to date.

The natural course of chronic myelomonocytic leukemia (CMML) is highly variable but a widely accepted prognostic scoring system for patients with CMML is not available. The main aim of this study was to develop a new CMML-specific prognostic scoring system (CPSS) in a large series of 558 patients with CMML (training cohort, Spanish Group of Myelodysplastic Syndromes) and to validate it in an independent series of 274 patients (validation cohort, Heinrich Heine University Hospital, Düsseldorf, Germany, and San Matteo Hospital, Pavia, Italy). The most relevant variables for overall survival (OS) and evolution to acute myeloblastic leukemia (AML) were FAB and WHO CMML subtypes, CMML-specific cytogenetic risk classification, and red blood cell (RBC) transfusion dependency. CPSS was able to segregate patients into 4 clearly different risk groups for OS (P < .001) and risk of AML evolution (P < .001) and its predictive capability was confirmed in the validation cohort. An alternative CPSS with hemoglobin instead of RBC transfusion dependency offered almost identical prognostic capability. This study confirms the prognostic impact of FAB and WHO subtypes, recognizes the importance of RBC transfusion dependency and cytogenetics, and offers a simple and powerful CPSS for accurately assessing prognosis and planning therapy in patients with CMML.

Chronic myelomonocytic leukemia (CMML) is a clonal hematologic disorder sharing features of myelodysplastic syndromes (MDS) and chronic myeloproliferative disorders. CMML was included in the original FAB (French-American-British) classification for MDS.1  In 1994, the FAB group distinguished 2 subtypes of CMML, an MDS type (CMML-MD) and a myeloproliferative disorder variant (CMML-MP), depending on the absolute leukocyte count (<13 × 109 /L and ≥13 × 109/L).2  Accordingly, the International Scoring Prognostic System (IPSS) for MDS and its recent revision (IPSS-R) excluded CMML-MP cases.3,4  More recently, the World Health Organization (WHO) panel of experts included CMML into a new category of mixed myeloproliferative/myelodysplastic neoplasms and differentiated 2 subtypes, CMML-1 and CMML-2, depending on the percentage of blasts in bone marrow (BM) and peripheral blood (PB).5,6 

CMML has a highly variable clinical course, with wide differences in overall survival (OS) and risk of transformation to acute myeloblastic leukemia (AML). Different studies have identified important prognostic factors4,6-11  and, in some instances, have built prognostic scoring systems to predict outcome.4,6-11  However, none of them have gained widespread acceptance, partly because they were raised from small series, included patients without CMML by WHO criteria, and were unable to predict the risk of evolution to AML.

The main aims of this study were to identify independent prognostic factors for OS and risk of AML evolution in a large series of patients with CMML, to develop an easily applicable CMML-specific prognostic scoring system (CPSS) for estimating those outcomes, to validate its predictive capacity in a large and independent cohort, and finally to compare the predictive power of the CPSS with that afforded by other prognostic scoring indexes for CMML patients.

Data collection and patient cohorts

We retrospectively collected clinical and hematologic data of patients in whom de novo CMML was diagnosed according to WHO 2008 criteria at the participating institutions in the Spanish MDS cooperative group (GESMD, supplemental Appendix 1) at the Department of Hematology, San Matteo Hospital, Pavia, Italy, and at the Düsseldorf MDS registry, Heinrich Heine University Hospital, Düsseldorf, Germany. Accordingly, those patients with a percentage of blasts in PB or BM ≥20% and those with known PDGFR rearrangements were excluded from the analysis. Most cases were diagnosed at centers with recognized expertise in the diagnosis of MDS and all cases were carefully reviewed locally before inclusion. However, in an attempt to cope as much as possible with the real world, no central morphologic review was carried out. The local ethics committees approved the studies, which followed the 2000 revision of the Declaration of Helsinki.

The patients comprised a training cohort, aimed at defining the variables to be included in the CPSS, and a validation cohort, aimed at confirming the prognostic value of the CPSS in an independent population. The training cohort consisted of 558 patients with de novo CMML identified in the database of the GESMD and diagnosed between 1980 and 2010. The validation cohort consisted of 274 patients in whom de novo CMML was diagnosed at the Heinrich-Heine-University Hospital between 1982 and 2009 (n = 153) and at the San Matteo Hospital between 1992 and 2009 (n = 121). The median follow-up time for surviving patients was 16 months (range, 1-170 months) in the training cohort and 12 months (1-196 months) in the validation cohort.

Prognostic factors

Different patient and disease characteristics, recorded at the time of diagnosis, were examined to establish their possible relationship with OS and evolution to AML. These include basic demographic data (age and sex), hematologic parameters (hemoglobin level, absolute leukocyte count, absolute neutrophil count, absolute platelet count, absolute monocyte count, and presence of blasts in PB), percentage of blasts in BM, serum lactate dehydrogenase (LDH) and ferritin levels, red blood cell (RBC) transfusion dependency, and cytogenetic findings. All characteristics were analyzed as dichotomous variables and the cutoff points selected for each one were those presented in Tables 1 and 2. Hemoglobin level was dichotomized in 2 ways to assess the different cutoff points used respectively by the IPSS3  and the Pavia group in a recent report.12  March 2002 was the date that divided the training cohort in 2 groups with the same number of patients and was selected as cutoff point to evaluate a potential influence in the results of changes in the practical management of CMML patients over time and to exclude its possible association with other relevant prognostic variables. No differences in any outcome by date of diagnosis were evident (data not shown). Karyotypes were classified using the International System for Cytogenetic Nomenclature Criteria 200913  and stratified according to the recently published CMML-specific cytogenetic risk classification: low risk, normal karyotype and isolated loss of Y chromosome; poor risk, trisomy 8, abnormalities of chromosome 7, and complex karyotype (≥3 chromosomal abnormalities); and intermediate risk, all other chromosomal abnormalities.7  RBC transfusion therapy was not administered according to predefined criteria and was based on physician’s criteria that took into account hemoglobin level, presence of symptoms of anemia, and comorbidities. As in the WHO-based prognostic scoring system (WPSS),12  RBC transfusion dependency was defined as having at least 1 RBC transfusion every 8 weeks over a period of 4 months.

Table 1

Main clinical and hematologic characteristics at diagnosis in the training and validation cohorts

CharacteristicTraining seriesValidation series
Median (range)N (%)Median (range)N (%)P value*
Overall  558 (100)  274 (100)  
Age, y 73 (19-99)  70 (41-98)  <.001 
 ≤60  61 (11)  55 (20) <.001 
 61-70  135 (24)  105 (38) 
 >70  362 (65)  114 (42) 
Gender      
 Male  377 (68)  191 (70) .532§ 
 Female  181 (32)  83 (30) 
WHO subtype      
 CMML-1  478 (86)  218 (80) .025 
 CMML-2  80 (14)  56 (20) 
Hemoglobin level, g/dL 11 (1-19)  11 (2-17)  .224 
 <10 g/dL  190 (34)  101 (37) .479§ 
 ≥10 g/dL  368 (66)  173 (63) 
Leukocyte count, × 109/L 10 (1-156)  13 (1-150)  .143 
 <13 × 109/L (CMML-MD FAB subtype)  338 (61)  138 (50) .005§ 
 ≥13 × 109/L (CMML-MP FAB subtype)  220 (39)  136 (50) 
Platelet count, × 109/L 123 (4-928)  105 (1-979)  .091 
 <100 × 109/L  221 (40)  132 (48) .019§ 
 ≥100 × 109/L  337 (60)  142 (52) 
Neutrophil count, × 109/L 4.2 (0.1-73.9)  6.3 (0.1-75.0)  .018 
 <1.8 × 109/L  103 (18)  41 (15) .218§ 
 ≥1.8 × 109/L  455 (82)  232 (85) 
Monocyte count, × 109/L 2.6 (1.1-40.9)  6.4 (1.1-75.0)  <.001 
 <3.0 × 109/L  236 (57)  128 (47) .010§ 
 ≥3.0 × 109/L  180 (43)  146 (53) 
Blasts in PB      
 Absent  367 (79)  193 (70) .013§ 
 Present  100 (21)  81 (30) 
Blasts in BM, % 3 (0-19)  6 (0-19)  <.001 
 <5  347 (62)  116 (42) <.001 
 5-9  138 (25)  103 (38) 
 10-19  73 (13)  55 (20) 
LDH level, U/L 394 (104-2976)  277 (97-7743)  <.001 
 ≤480 UI/L  242 (68)  94 (46) <.001§ 
 >480 UI/L  115 (32)  109 (54) 
Ferritin level, mg/dL 170 (6-4000)  318 (58-2010)  .001 
 ≤500 mg/dL  173 (80)  73 (63) <.001§ 
 >500 mg/dL  43 (20)  43 (37) 
RBC transfusion dependency||      
 No  441 (79)  205 (75) .156§ 
 Yes  116 (21)  69 (25) 
CMML-specific cytogenetic risk classification      
 Low  429 (81)  146 (63) <.001 
 Intermediate  47 (9)  41 (18) 
 High  56 (10)  45 (19) 
CharacteristicTraining seriesValidation series
Median (range)N (%)Median (range)N (%)P value*
Overall  558 (100)  274 (100)  
Age, y 73 (19-99)  70 (41-98)  <.001 
 ≤60  61 (11)  55 (20) <.001 
 61-70  135 (24)  105 (38) 
 >70  362 (65)  114 (42) 
Gender      
 Male  377 (68)  191 (70) .532§ 
 Female  181 (32)  83 (30) 
WHO subtype      
 CMML-1  478 (86)  218 (80) .025 
 CMML-2  80 (14)  56 (20) 
Hemoglobin level, g/dL 11 (1-19)  11 (2-17)  .224 
 <10 g/dL  190 (34)  101 (37) .479§ 
 ≥10 g/dL  368 (66)  173 (63) 
Leukocyte count, × 109/L 10 (1-156)  13 (1-150)  .143 
 <13 × 109/L (CMML-MD FAB subtype)  338 (61)  138 (50) .005§ 
 ≥13 × 109/L (CMML-MP FAB subtype)  220 (39)  136 (50) 
Platelet count, × 109/L 123 (4-928)  105 (1-979)  .091 
 <100 × 109/L  221 (40)  132 (48) .019§ 
 ≥100 × 109/L  337 (60)  142 (52) 
Neutrophil count, × 109/L 4.2 (0.1-73.9)  6.3 (0.1-75.0)  .018 
 <1.8 × 109/L  103 (18)  41 (15) .218§ 
 ≥1.8 × 109/L  455 (82)  232 (85) 
Monocyte count, × 109/L 2.6 (1.1-40.9)  6.4 (1.1-75.0)  <.001 
 <3.0 × 109/L  236 (57)  128 (47) .010§ 
 ≥3.0 × 109/L  180 (43)  146 (53) 
Blasts in PB      
 Absent  367 (79)  193 (70) .013§ 
 Present  100 (21)  81 (30) 
Blasts in BM, % 3 (0-19)  6 (0-19)  <.001 
 <5  347 (62)  116 (42) <.001 
 5-9  138 (25)  103 (38) 
 10-19  73 (13)  55 (20) 
LDH level, U/L 394 (104-2976)  277 (97-7743)  <.001 
 ≤480 UI/L  242 (68)  94 (46) <.001§ 
 >480 UI/L  115 (32)  109 (54) 
Ferritin level, mg/dL 170 (6-4000)  318 (58-2010)  .001 
 ≤500 mg/dL  173 (80)  73 (63) <.001§ 
 >500 mg/dL  43 (20)  43 (37) 
RBC transfusion dependency||      
 No  441 (79)  205 (75) .156§ 
 Yes  116 (21)  69 (25) 
CMML-specific cytogenetic risk classification      
 Low  429 (81)  146 (63) <.001 
 Intermediate  47 (9)  41 (18) 
 High  56 (10)  45 (19) 
*

P value is the statistical comparison of the different characteristics in training and validation series.

Mann-Whitney U test.

χ2 test.

§

Fisher’s exact test.

||

RBC transfusion dependency was defined as having at least 1 RBC transfusion every 8 weeks over a period of 4 months.

CMML-specific cytogenetic risk classification: low, normal and isolated –Y; intermediate, other abnormalities; and high, trisomy 8, complex karyotype (≥3 abnormalities), and abnormalities of chromosome 7.

Table 2

Survival and risk of AML evolution according to the main clinical and hematologic characteristics at diagnosis in the training cohort

CharacteristicOSAML evolution
No. of patients (%)Median (mo)Proportion alive at 5 y (%)Log-rank (P value)Time to 25% probability (mo)Cumulative probability of AML evolution (%)Log-rank (P value)
2 y5 y
Overall 558 (100) 31 31  38 17 29  
Age, y    .008    .071 
 <70 190 (34) 37 37  28 22 34  
 ≥70 207 (66) 28 27  39 15 25  
Gender    .021    .074 
 Male 377 (68) 29 28  30 17 34  
 Female 181 (32) 42 36  66 17 22  
WHO subtype    <.001    <.001 
 CMML-1 478 (86) 37 34  59 13 25  
 CMML-2 80 (14) 12 12  10 47 54  
Hemoglobin level, g/dL    <.001    <.001 
 <10 190 (34) 18 16  19 29 40  
 ≥10 368 (66) 43 38  60 13 25  
Hemoglobin level, g/dL    <.001    .015 
 <8 in females and <9 in males 91 (16) 13 12  20 30 40  
 ≥8 in females and ≥9 in males 467 (84) 38 35  40 16 28  
Leukocyte count, × 109/L    <.001    <.001 
 <13 (CMML-MD FAB subtype) 338 (61) 44 42  73 14 20  
 ≥13 (CMML-MP FAB subtype) 220 (39) 21 16  25 23 49  
Platelet count, × 109/L    .054    .850 
 <100 221 (40) 30 29  35 21 30  
 ≥100 337 (60) 36 32  57 15 28  
Neutrophil count, × 109/L    .021    .470 
 <1.8 101 (18) 53 42  60 20 24  
 ≥1.8 457 (82) 29 29  38 17 31  
Monocyte count, × 109/L    .001    .068 
 <3 234 (57) 42 40  83 14 20  
 ≥3 182 (43) 26 21  35 17 34  
Blasts in PB    <.001    <.001 
 Absent 367 (77) 39 34  60 12 25  
 Present 100 (21) 15 11  12 39 48  
Blasts in BM, %    <.001    <.001 
 <5 347 (62) 36 34  59 12 26  
 5-9 138 (25) 43 35  60 16 24  
 10-19 73 (13) 11 10  49 58  
LDH level, U/L    <.001    .456 
 ≤480 242 (68) 43 43  65 14 25  
 >480 115 (32) 20 11  26 14 25  
Ferritin level, mg/dL    <.001    <.001 
 ≤500 173 (80) 42 35  83 10 15  
 >500 43 (20) 20 16  13 30 48  
RBC transfusion dependency*    <.001    <.001 
 No 441 (79) 40 38  59 14 25  
 Yes 116 (21) 14  14 32 47  
CMML-specific cytogenetic risk classification    <.001    <.001 
 Low 429 (81) 39 36  60 12 24  
 Intermediate 47 (9) 18 20  12 31 45  
 High 56 (10) 12  11 56 67  
CharacteristicOSAML evolution
No. of patients (%)Median (mo)Proportion alive at 5 y (%)Log-rank (P value)Time to 25% probability (mo)Cumulative probability of AML evolution (%)Log-rank (P value)
2 y5 y
Overall 558 (100) 31 31  38 17 29  
Age, y    .008    .071 
 <70 190 (34) 37 37  28 22 34  
 ≥70 207 (66) 28 27  39 15 25  
Gender    .021    .074 
 Male 377 (68) 29 28  30 17 34  
 Female 181 (32) 42 36  66 17 22  
WHO subtype    <.001    <.001 
 CMML-1 478 (86) 37 34  59 13 25  
 CMML-2 80 (14) 12 12  10 47 54  
Hemoglobin level, g/dL    <.001    <.001 
 <10 190 (34) 18 16  19 29 40  
 ≥10 368 (66) 43 38  60 13 25  
Hemoglobin level, g/dL    <.001    .015 
 <8 in females and <9 in males 91 (16) 13 12  20 30 40  
 ≥8 in females and ≥9 in males 467 (84) 38 35  40 16 28  
Leukocyte count, × 109/L    <.001    <.001 
 <13 (CMML-MD FAB subtype) 338 (61) 44 42  73 14 20  
 ≥13 (CMML-MP FAB subtype) 220 (39) 21 16  25 23 49  
Platelet count, × 109/L    .054    .850 
 <100 221 (40) 30 29  35 21 30  
 ≥100 337 (60) 36 32  57 15 28  
Neutrophil count, × 109/L    .021    .470 
 <1.8 101 (18) 53 42  60 20 24  
 ≥1.8 457 (82) 29 29  38 17 31  
Monocyte count, × 109/L    .001    .068 
 <3 234 (57) 42 40  83 14 20  
 ≥3 182 (43) 26 21  35 17 34  
Blasts in PB    <.001    <.001 
 Absent 367 (77) 39 34  60 12 25  
 Present 100 (21) 15 11  12 39 48  
Blasts in BM, %    <.001    <.001 
 <5 347 (62) 36 34  59 12 26  
 5-9 138 (25) 43 35  60 16 24  
 10-19 73 (13) 11 10  49 58  
LDH level, U/L    <.001    .456 
 ≤480 242 (68) 43 43  65 14 25  
 >480 115 (32) 20 11  26 14 25  
Ferritin level, mg/dL    <.001    <.001 
 ≤500 173 (80) 42 35  83 10 15  
 >500 43 (20) 20 16  13 30 48  
RBC transfusion dependency*    <.001    <.001 
 No 441 (79) 40 38  59 14 25  
 Yes 116 (21) 14  14 32 47  
CMML-specific cytogenetic risk classification    <.001    <.001 
 Low 429 (81) 39 36  60 12 24  
 Intermediate 47 (9) 18 20  12 31 45  
 High 56 (10) 12  11 56 67  
*

RBC transfusion dependency was defined as having at least 1 RBC transfusion every 8 weeks over a period of 4 months.

CMML-specific cytogenetic risk classification: low, normal and isolated –Y; intermediate, other abnormalities; and high, trisomy 8, complex karyotype (≥3 abnormalities), and abnormalities of chromosome 7.

Statistical analysis

Comparisons of proportions and ranks of variables between different groups were performed by χ2, Fisher’s exact, Student t, or Mann-Whitney U test, as appropriate. Unadjusted time-to-event analyses were performed using the Kaplan-Meier estimate and log-rank tests were used for comparisons. Multivariate analysis was performed using Cox’s proportional hazards regression model. Characteristics selected for possible inclusion in the multivariate model were those for which there was some indication of association with OS or AML evolution in univariate analysis (P < .20). The forward stepwise procedure was stopped when the P value for entering an additional variable was above .05. OS was measured from the time of diagnosis to the time of last follow up or death from any cause. Evolution to AML was measured from the time of diagnosis to the date of AML (presence of more than 19% of blasts in BM or PB). Most patients received only supportive care (RBC and platelet transfusions and antibiotics as required). None of the patients had received azacitidine or decitabine. Patients undergoing hematopoietic allogeneic stem cell transplantation or intensive AML-type chemotherapy were considered as censored data at the date of transplant or the date of starting chemotherapy, whichever came first. Therefore, our cohorts, as in the IPSS project, consisted of essentially untreated patients, excluding any potential source of bias as a result of treatment. Patient follow up was updated on May 15, 2010, and all follow-up data were censored at that point. Two-sided P values < .05 were considered statistically significant. In line with the essentially exploratory nature of the study, no adjustment for multiple testing was applied. The strength of the new CPSS and other previously published prognostic scoring indexes for CMML was assessed using the concordance probability estimates (CPE)14  for the Cox proportional hazards model with ties. CPE is a probability that ranges between 0 and 1. A CPE of 0.5 is what you would achieve by pure chance, whereas 1.0 signifies perfect discrimination between the 2 tests. The statistical package SPSS version 17.0 (SPSS Inc., Chicago, IL) was used for all survival analyses. CPE were computed with the R v2.9.0 statistical programming language (R Development Core 2008).

Characteristics of the training cohort

The training cohort included a total of 558 CMML patients. Their main characteristics at diagnosis are shown in Table 1. The median age was 73 years (range, 19-99 years), median OS was 31 months, and the cumulative probability of AML transformation was 29% at 5 years. According to FAB criteria, 338 of the patients (61%) had CMML-MD and 220 (39%) had CMML-MP. By WHO classification, 478 patients (86%) were CMML-1 and 80 patients (14%) were CMML-2. Karyotype was available in 532 patients (abnormal in 131 [24%]), and according to the CMML-specific cytogenetic risk classification,7  429 (81%) belonged to the good-risk category, 47 (9%) to the intermediate-risk category, and 56 (10%) to the poor-risk category. A total of 116 of 557 patients (21%) were RBC transfusion dependent at diagnosis.

Univariate and multivariate analysis of outcomes in the training cohort

Table 2 shows in detail the results of univariate analysis for OS and risk of AML evolution in the training cohort. Variables significantly associated with OS were age (P = .008), gender (P = .021), CMML WHO subtype (P < .001), hemoglobin level (P < .001), CMML FAB subtype (P < .001), neutrophil count (P = .021), monocyte count (P = .001), presence of blasts in PB (P < .001), percentage of blasts in BM (P < .001), serum LDH level (P < .001), ferritin level (P < .001), RBC transfusion dependence (P < .001), and CMML-specific cytogenetic risk classification (P < .001). Characteristics significantly associated with risk of AML evolution were CMML WHO subtype (P < .001), hemoglobin level (P < .001), CMML FAB subtype (P < .001), presence of blasts in PB (P < .001), percentage of blasts in BM (P < .001), ferritin level (P < .001), RBC transfusion dependence (P < .001), and CMML-specific cytogenetic risk classification (P < .001).

Five variables maintained their independent prognostic significance for OS after multivariate analysis: CMML FAB subtype (hazard ratio [HR], 1.73; 95% confidence interval [CI], 1.27-2.36; P < .001), CMML WHO subtype (HR, 2.05; 95% CI, 1.40-3.01; P < .001), CMML-specific cytogenetic risk classification (HR, 1.60; 95% CI 1.26-2.05; P < .001), RBC transfusion dependence (HR, 1.90 95% CI, 1.37-2.65; P < .001), and LDH level (HR, 2.20; 95% CI, 1.58-3.05; P < .001).

The same variables, with the exception of LDH level, were also strong predictors of AML evolution risk in multivariate analysis: CMML FAB subtype (HR, 2.48; 95% CI, 1.41-4.36; P = .001), CMML WHO subtype (HR, 2.52; 95% CI, 1.24-5.11; P < .001); CMML cytogenetic risk categories (HR, 2.16; 95% CI, 1.46-3.19; P < .001), and transfusion dependence (HR, 2.05; 95% CI, 1.10-3.84, P = .025).

Development of a CPSS

We defined a CPSS including those 4 variables showing independent prognostic impact for both OS and AML evolution: CMML FAB and WHO subtypes, CMML-specific cytogenetic risk classification, and transfusion dependence (Tables 3 and 4). We assigned the same weight to each variable based on their similar hazard ratios in the proportional hazards regression models (see above). A score was calculated for each patient by adding together the points corresponding to their risk factors. According to this score, patients were divided into the following 4 risk groups: low (score = 0), intermediate-1 (score = 1), intermediate-2 (score = 2-3), and high (score = 4-5; Tables 3 and 4). The risk groups defined by the CPSS in the training cohort had significantly different probabilities of death (median OS, 72, 31, 13, and 5 months, respectively; P < .001; Table 5 and Figure 1A) and risk of AML evolution (cumulative probability of AML evolution at 5 years, 13%, 29%, 60%, and 73%, respectively; P < .001; Table 5 and Figure 1B). All pairwise comparisons among the 4 risk groups were statistically significant for OS and risk of AML evolution (Table 5).

Table 3

CPSS: Variables and scores used for predicting likelihood of survival and leukemic evolution in the individual patient with CMML

VariableVariable scores
012
WHO subtype CMML-1 blasts (including promonocytes) <5% in the PB and <10% in the BM CMML-2 blasts (including promonocytes) from 5% to 19% in the PB and from 10% to 19% in the BM, or when Auer rods are present irrespective of blast count — 
FAB subtype CMML-MD (WBC count <13 × 109/L) CMML-MP (WBC count ≥13 × 109/L) — 
CMML-specific cytogenetic risk classification* Low Intermediate High 
RBC transfusion dependency No Yes — 
VariableVariable scores
012
WHO subtype CMML-1 blasts (including promonocytes) <5% in the PB and <10% in the BM CMML-2 blasts (including promonocytes) from 5% to 19% in the PB and from 10% to 19% in the BM, or when Auer rods are present irrespective of blast count — 
FAB subtype CMML-MD (WBC count <13 × 109/L) CMML-MP (WBC count ≥13 × 109/L) — 
CMML-specific cytogenetic risk classification* Low Intermediate High 
RBC transfusion dependency No Yes — 

WBC, white blood cell.

*

CMML-specific cytogenetic risk classification: low, normal and isolated –Y; intermediate, other abnormalities; and high, trisomy 8, complex karyotype (≥3 abnormalities), and abnormalities of chromosome 7.

RBC transfusion dependency was defined as having at least 1 RBC transfusion every 8 weeks over a period of 4 months.

Table 4

CPSS: Variables and scores used for predicting likelihood of survival and leukemic evolution in the individual patient with CMML

Risk groupOverall score
Low 
Intermediate-1 
Intermediate-2 2-3 
High 4-5 
Risk groupOverall score
Low 
Intermediate-1 
Intermediate-2 2-3 
High 4-5 
Table 5

OS and risk of AML evolution according to the CPSS-defined risk categories in the training and validation cohorts

Risk categoryOSRisk of AML evolution
No. of patients (%)Median (mo)Proportion alive at 5 y (%)Log-rank (P value)Time to 25% probability (mo)Cumulative probability of AML evolution (%)Log-rank (P value)
At 2 yAt 5 y
Training cohort    <.001    <.001 
 Low 217 (41) 72 55  95 13  
 Intermediate-1 155 (29) 31 25  40 14 29  
 Intermediate-2 141 (26) 13 10  11 37 60  
 High 19 (4)  73 73  
 Pairwise comparisons Low vs intermediate-1, P < .001; Low vs intermediate-2, P < .001; Low vs high, P < .001; Intermediate-1 vs intermediate-2, P < .001; Intermediate-1 vs high, P < .001; Intermediate-2 vs high, P < .001 Low vs intermediate-1, P = .023; Low vs intermediate-2, P < .001; Low vs high, P < .001; Intermediate-1 vs intermediate-2, P < .001; Intermediate-1 vs high, P < .001; Intermediate-2 vs high, P = .015 
Validation cohort    <.001    <.001 
 Low 60 (26) 61 51  59 24  
 Intermediate-1 71 (31) 31 29  24 25 41  
 Intermediate-2 90 (39) 15 11  13 49 52  
 High 10 (4)  100 100  
 Pairwise comparisons Low vs intermediate-1, P = .028; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P < .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .007 Low vs intermediate-1, P = .034; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .041; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .021 
Risk categoryOSRisk of AML evolution
No. of patients (%)Median (mo)Proportion alive at 5 y (%)Log-rank (P value)Time to 25% probability (mo)Cumulative probability of AML evolution (%)Log-rank (P value)
At 2 yAt 5 y
Training cohort    <.001    <.001 
 Low 217 (41) 72 55  95 13  
 Intermediate-1 155 (29) 31 25  40 14 29  
 Intermediate-2 141 (26) 13 10  11 37 60  
 High 19 (4)  73 73  
 Pairwise comparisons Low vs intermediate-1, P < .001; Low vs intermediate-2, P < .001; Low vs high, P < .001; Intermediate-1 vs intermediate-2, P < .001; Intermediate-1 vs high, P < .001; Intermediate-2 vs high, P < .001 Low vs intermediate-1, P = .023; Low vs intermediate-2, P < .001; Low vs high, P < .001; Intermediate-1 vs intermediate-2, P < .001; Intermediate-1 vs high, P < .001; Intermediate-2 vs high, P = .015 
Validation cohort    <.001    <.001 
 Low 60 (26) 61 51  59 24  
 Intermediate-1 71 (31) 31 29  24 25 41  
 Intermediate-2 90 (39) 15 11  13 49 52  
 High 10 (4)  100 100  
 Pairwise comparisons Low vs intermediate-1, P = .028; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P < .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .007 Low vs intermediate-1, P = .034; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .041; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .021 
Figure 1

Outcomes according to the CPSS in the training cohort. Unadjusted actuarial probability of (A) OS (P < .001) and (B) risk of AML transformation (P < .001).

Figure 1

Outcomes according to the CPSS in the training cohort. Unadjusted actuarial probability of (A) OS (P < .001) and (B) risk of AML transformation (P < .001).

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Validation of CPSS

The prognostic impact of the CPSS was evaluated in an independent validation cohort of 274 patients. The main characteristics of patients included in the validation series are shown in Table 1. There were statistically significant differences in several clinical and hematologic features between the training and validation cohorts. A significant difference between both cohorts was also noted in the risk of AML transformation (29% in the training vs 45% in the validation cohort at 5 years; P < .001). Median OS in both series was comparable (31 months in the training vs 25 months in the validation cohort; P = .231).

The risk groups defined by the CPSS in the validation cohort had significantly different OS length (median OS, 61, 31, 15, and 9 months, respectively; P < .001; Table 5 and Figure 2A) and risk of AML evolution (cumulative probability of AML evolution at 5 years, 24%, 41%, 55%, and 100%, respectively; P < .001; Table 5 and Figure 2B). Again, all pairwise comparisons among the 4 risk groups in the validation cohort were statistically significant for both OS and risk of AML evolution (Table 5). Additionally, there were no significant differences in OS and risk of AML evolution between the learning and validation cohort within each of the 4 CPSS risk groups, further substantiating the validation of the score (Table 6).

Figure 2

Outcomes according to the CPSS in the validation cohort. Unadjusted actuarial probability of (A) OS (P < .001) and (B) risk of AML transformation (P < .001).

Figure 2

Outcomes according to the CPSS in the validation cohort. Unadjusted actuarial probability of (A) OS (P < .001) and (B) risk of AML transformation (P < .001).

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Table 6

Comparison of OS and risk of AML evolution within each of the 4 risk groups defined by the CPSS in the training and validation cohort

Risk categoryOS*Risk of AML evolution
Training cohortValidation cohortLog-rank (P value)Training cohortValidation cohortLog-rank (P value)
Low 72 61 .724 .775 
Intermediate-1 31 31 .756 14 25 .116 
Intermediate-2 13 15 .445 37 49 .684 
High .578 73 100 .850 
Risk categoryOS*Risk of AML evolution
Training cohortValidation cohortLog-rank (P value)Training cohortValidation cohortLog-rank (P value)
Low 72 61 .724 .775 
Intermediate-1 31 31 .756 14 25 .116 
Intermediate-2 13 15 .445 37 49 .684 
High .578 73 100 .850 
*

Median (months).

Cumulative probability of AML evolution at 2 years (%).

Comparison of CPSS with other prognostic scoring systems for CMML

Finally, we compared the strength of the CPSS and other previously published prognostic indexes for CMML for which there were available data in both the training and validation cohorts.3,8,10,11  All the prognostic scoring systems were capable to separate at least 2 risk groups with statistically significant differences in OS and all showed a CPE >0.5 (Tables 7 and 8). CPSS, IPSS, and IPSS-R had the greater CPE of all scoring systems for OS and risk of evolution to AML both in the training and validation cohorts. However, only CPSS was able to segregate 4 risk groups with significant differences in pairwise comparisons for both outcomes in both series (Tables 7 and 8).

Table 7

Comparative analysis of the predictive capacity of scoring systems for CMML patients by their concordance probability estimate and ability to segregate different risk groups for OS and evolution to AML in the training cohort

Scoring system and risk groupsMedian OS (mo)Predictive capacity for OSAML evolution at 2 y (%)Predictive capacity for AML evolution
CPSS  CPE = 0.658 CPE = 0.694 
 Low 72 Low vs intermediate-1, P < .001; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P < .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P < .001 Low vs intermediate-1, P = .023; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P < .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .015 
 Intermediate-1 31 14 
 Intermediate-2 13 37 
 High 73 
Worsley et al10   CPE = 0.573 CPE = 0.593 
 Low 42 Low vs high, P < .001 10 Low vs high, P < .001 
 High 22 27 
Germing et at8   CPE = 0.563 CPE = 0.595 
 Low 83 Low vs intermediate, P = .162; low vs high, P = .028; intermediate-1 vs high, P < .001 17 Low vs intermediate, P = .386; low vs high, P = .077; intermediate-1 vs high, P = .001 
 Intermediate 38 10 
 High 15 35 
Gonzalez-Medina et al11   CPE = 0.574 CPE = 0.594 
 Low 43 Low vs high, P < .001 11 Low vs high, P < .001 
 High 18 28 
Greenberg et al (IPSS)3   CPE = 0.597 CPE = 0.636 
 Low 41 Low vs intermediate-1, P = .002; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .018 Low vs. intermediate-1, P = .090; low vs. intermediate-2, P < .001; low vs. high, P < .001; intermediate-1 vs. intermediate-2, P = .001; intermediate-1 vs. high, P < .001; intermediate-2 vs. high, P = .142 
 Intermediate-1 31 18 
 Intermediate-2 12 50 
 High 73 
Greenberg et al (IPSS-R)4   CPE = 0.618 CPE = 0.672 
 Very low 59 Very low vs low, P = .026; very low vs intermediate, P < .001; very low vs high, P < .001; very low vs very high, P < .001; low vs intermediate, P < .001; low vs high, P < .001; low vs very high, P < .001; intermediate vs high, P = .038; intermediate vs very high, P < .001; high vs very high, P = .273 Very low vs low, P = .480; very low vs intermediate, P = .006; very low vs high, P < .001; very low vs very high, P < .001; low vs intermediate, P < .012; low vs high, P < .001; low vs very high, P < .001; intermediate vs high, < .001; intermediate vs very high, P < .001; high vs very high, P = .115 
 Low 39 10 
 Intermediate 26 23 
 High 57 
 Very high 86 
Alternative CPSS  CPE = 0.658 CPE = 0.695 
 Low 72 Low vs intermediate-1, P < .001; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P < .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P < .001 Low vs intermediate-1, P = .045; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P < .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P < .001. 
 Intermediate-1 36 13 
 Intermediate-2 15 33 
 High 76 
Scoring system and risk groupsMedian OS (mo)Predictive capacity for OSAML evolution at 2 y (%)Predictive capacity for AML evolution
CPSS  CPE = 0.658 CPE = 0.694 
 Low 72 Low vs intermediate-1, P < .001; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P < .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P < .001 Low vs intermediate-1, P = .023; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P < .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .015 
 Intermediate-1 31 14 
 Intermediate-2 13 37 
 High 73 
Worsley et al10   CPE = 0.573 CPE = 0.593 
 Low 42 Low vs high, P < .001 10 Low vs high, P < .001 
 High 22 27 
Germing et at8   CPE = 0.563 CPE = 0.595 
 Low 83 Low vs intermediate, P = .162; low vs high, P = .028; intermediate-1 vs high, P < .001 17 Low vs intermediate, P = .386; low vs high, P = .077; intermediate-1 vs high, P = .001 
 Intermediate 38 10 
 High 15 35 
Gonzalez-Medina et al11   CPE = 0.574 CPE = 0.594 
 Low 43 Low vs high, P < .001 11 Low vs high, P < .001 
 High 18 28 
Greenberg et al (IPSS)3   CPE = 0.597 CPE = 0.636 
 Low 41 Low vs intermediate-1, P = .002; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .018 Low vs. intermediate-1, P = .090; low vs. intermediate-2, P < .001; low vs. high, P < .001; intermediate-1 vs. intermediate-2, P = .001; intermediate-1 vs. high, P < .001; intermediate-2 vs. high, P = .142 
 Intermediate-1 31 18 
 Intermediate-2 12 50 
 High 73 
Greenberg et al (IPSS-R)4   CPE = 0.618 CPE = 0.672 
 Very low 59 Very low vs low, P = .026; very low vs intermediate, P < .001; very low vs high, P < .001; very low vs very high, P < .001; low vs intermediate, P < .001; low vs high, P < .001; low vs very high, P < .001; intermediate vs high, P = .038; intermediate vs very high, P < .001; high vs very high, P = .273 Very low vs low, P = .480; very low vs intermediate, P = .006; very low vs high, P < .001; very low vs very high, P < .001; low vs intermediate, P < .012; low vs high, P < .001; low vs very high, P < .001; intermediate vs high, < .001; intermediate vs very high, P < .001; high vs very high, P = .115 
 Low 39 10 
 Intermediate 26 23 
 High 57 
 Very high 86 
Alternative CPSS  CPE = 0.658 CPE = 0.695 
 Low 72 Low vs intermediate-1, P < .001; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P < .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P < .001 Low vs intermediate-1, P = .045; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P < .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P < .001. 
 Intermediate-1 36 13 
 Intermediate-2 15 33 
 High 76 

CPE, concordance probability estimate.

Table 8

Comparative analysis of the predictive capacity of scoring systems for CMML patients by their concordance probability estimate and ability to segregate different risk groups for OS and evolution to AML in the validation cohort

Scoring system and risk groupsMedian OS (mo)Predictive capacity for OSAML evolution at 2 y (%)Predictive capacity for AML evolution
CPSS  CPE = 0.653 CPE = 0.668 
 Low 61 Low vs intermediate-1, P = .013; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .009 Low vs intermediate-1, P = .034; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .041; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .021 
 Intermediate-1 31 25 
 Intermediate-2 15 49 
 High 100 
Worsley et al10   CPE = 0.554 CPE = 0. 587 
 Low 35 Low vs high, P = .008 33 Low vs high, P = .003 
 High 20 44 
Germing et at8   CPE = 0.558 CPE = 0.588 
 Low 12 Low vs intermediate, P = .239; low vs high, P = .583; intermediate-1 vs high, P < .001 26 Low vs intermediate, P = .731; low vs high, P = .351; intermediate-1 vs high, P = .002 
 Intermediate 31 27 
 High 15 50 
Gonzalez-Medina et al11   CPE = 0.559 CPE = 0.533 
 Low 31 Low vs high, P = .006. 29 Low vs high, P = .310. 
 High 16 41 
Greenberg et al (IPSS)3   CPE = 0.636 CPE = 0.700 
 Low 40 Low vs intermediate-1, P = .063; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs. intermediate-2, P = .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .052 Low vs intermediate-1, P = .071; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .318 
 Intermediate-1 29 21 
 Intermediate-2 15 68 
 High 67 
Greenberg et al (IPPS-R)4   CPE = 0.643 CPE = 0.698 
 Very low 52 Very low vs low, P = .075; very low vs intermediate, P = .046; very low vs high, P < .001; very low vs very high, P < .001; low vs intermediate, P < .989; low vs high, P = .001; low vs very high, P < .001; intermediate vs high, < .001; intermediate vs very high, P < .001; high vs very high, P = .022 Very low vs low, P = .262; very low vs intermediate, P = .027; very low vs high, P < .001; very low vs very high, P < .001; low vs intermediate, P < .040; low vs high, P < .001; low vs very high, P < .001; intermediate vs high, = .001; intermediate vs very high, P = .001; high vs very high, P = .475 
 Low 40 16 
 Intermediate 30 30 
 High 15 58 
 Very high 80 
Alternative CPSS  CPE = 0.664 CPE = 0.669 
 Low 62 Low vs intermediate-1, P = .023; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .043 Low vs intermediate-1, P = .074; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .010; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .081 
 Intermediate-1 36 23 
 Intermediate-2 15 52 
 High 10 82 
Scoring system and risk groupsMedian OS (mo)Predictive capacity for OSAML evolution at 2 y (%)Predictive capacity for AML evolution
CPSS  CPE = 0.653 CPE = 0.668 
 Low 61 Low vs intermediate-1, P = .013; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .009 Low vs intermediate-1, P = .034; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .041; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .021 
 Intermediate-1 31 25 
 Intermediate-2 15 49 
 High 100 
Worsley et al10   CPE = 0.554 CPE = 0. 587 
 Low 35 Low vs high, P = .008 33 Low vs high, P = .003 
 High 20 44 
Germing et at8   CPE = 0.558 CPE = 0.588 
 Low 12 Low vs intermediate, P = .239; low vs high, P = .583; intermediate-1 vs high, P < .001 26 Low vs intermediate, P = .731; low vs high, P = .351; intermediate-1 vs high, P = .002 
 Intermediate 31 27 
 High 15 50 
Gonzalez-Medina et al11   CPE = 0.559 CPE = 0.533 
 Low 31 Low vs high, P = .006. 29 Low vs high, P = .310. 
 High 16 41 
Greenberg et al (IPSS)3   CPE = 0.636 CPE = 0.700 
 Low 40 Low vs intermediate-1, P = .063; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs. intermediate-2, P = .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .052 Low vs intermediate-1, P = .071; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .318 
 Intermediate-1 29 21 
 Intermediate-2 15 68 
 High 67 
Greenberg et al (IPPS-R)4   CPE = 0.643 CPE = 0.698 
 Very low 52 Very low vs low, P = .075; very low vs intermediate, P = .046; very low vs high, P < .001; very low vs very high, P < .001; low vs intermediate, P < .989; low vs high, P = .001; low vs very high, P < .001; intermediate vs high, < .001; intermediate vs very high, P < .001; high vs very high, P = .022 Very low vs low, P = .262; very low vs intermediate, P = .027; very low vs high, P < .001; very low vs very high, P < .001; low vs intermediate, P < .040; low vs high, P < .001; low vs very high, P < .001; intermediate vs high, = .001; intermediate vs very high, P = .001; high vs very high, P = .475 
 Low 40 16 
 Intermediate 30 30 
 High 15 58 
 Very high 80 
Alternative CPSS  CPE = 0.664 CPE = 0.669 
 Low 62 Low vs intermediate-1, P = .023; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .001; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .043 Low vs intermediate-1, P = .074; low vs intermediate-2, P < .001; low vs high, P < .001; intermediate-1 vs intermediate-2, P = .010; intermediate-1 vs high, P < .001; intermediate-2 vs high, P = .081 
 Intermediate-1 36 23 
 Intermediate-2 15 52 
 High 10 82 

CPE, concordance probability estimate.

An alternative CPSS with hemoglobin level instead of RBC transfusion dependency

The inclusion of RBC transfusion dependency in a scoring system has been criticized because it is not does not allow to apply the model until the value for that variable is known. A recent paper in patients with MDS (CMML was excluded) has shown that the prognostic capacity of model including hemoglobin level (cutpoints, 9 g/dL for males and 8 g/dL for females) instead of RBC transfusion dependency is equivalent to the original model (WPSS) that included RBC transfusion dependency.15  Thus, we evaluated whether a similar model would be valuable in CMML.

In the training cohort of this report there was a close negative correlation between RBC transfusion dependency and hemoglobin level (Spearman’s R = −0.478, P value < .001). In all instances, when hemoglobin level with different cutoff points, including the ones used by Malcovati et al,15  and RBC transfusion dependency) were included into the multivariate regression procedures, RBC transfusion dependency was always selected and hemoglobin level left out. The hemoglobin cutoff point level that offered the best performance was 10 g/dL (both for males and females). All the multivariate analyses performed for building the CPSS in the training cohort were repeated using this cutoff point for hemoglobin level and excluding RBC transfusion dependency from the analyses.

The variables independently associated with OS were CMML FAB subtype (HR, 1.75; P = .001), CMML WHO subtype (HR, 2.03; P < .001), CMML-specific cytogenetic risk classification (HR, 1.49; P = .001), hemoglobin level (HR, 1.74; P < .001), and LDH level (HR, 2.15; P < .001). Characteristics with independent impact in the risk of AML evolution were CMML FAB subtype (HR, 2.01; P = .001), CMML WHO subtype (HR, 3.32; P < .001), CMML-specific cytogenetic risk classification (HR, 1.96; P = .001), and hemoglobin level (HR, 1.75; P = .01). Because the variables selected were the same present in the CPSS, with the exception of hemoglobin instead of RBC transfusion dependency, and their hazard ratios were very close to the ones obtained for the CPSS, we built an alternative CPSS, where a hemoglobin level <10 g/dL was scored 1 point, hemoglobin level ≥10 g/dL was scored 0, and the remaining 3 variables (CMML FAB subtype, CMML WHO subtype, and CMML-specific cytogenetic risk classification) were scored as in Tables 3 and 4 for the CPSS. As shown in Tables 7 and 8, the CPE of this alternative CPSS and CPSS were almost identical for all outcomes in both cohorts and this alternative CPSS was able to stratify the patients in 4 statistically different risk groups for OS in the training and validation cohorts and for AML in the training sample. However, in contrast to CPSS, this alternative CPSS did not clearly segregate 4 risk groups for AML evolution in the validation cohort (P value for pairwise comparison of low versus intermediate-1 risk groups = .074).

This study, based on the largest CMML data set collected until now, confirms the previously known prognostic impact of WHO and FAB-defined CMML subtypes and specific chromosomal abnormalities and shows, for the first time, the relevance of RBC transfusion dependency at diagnosis in patients with CMML. By combining these 4 variables, we developed an easily applicable prognostic index (CPSS) that defines 4 different prognostic risk categories for estimating both OS and AML transformation. CPSS was validated in an independent cohort of patients from 2 centers with expertise in MDS and performed better than other previously published prognostic indexes for CMML, including the IPSS.

In 1994, the FAB group distinguished 2 subtypes of CMML based on absolute leukocyte count,2  but the prognostic significance of this distinction is still controversial.16-19  Our study confirms that it provides independent prognostic information: patients with CMML-MP had a shorter survival and higher risk of AML than patients with CMML-MD. Years later, the WHO classification moved CMML to a new category of myeloproliferative/myelodysplastic neoplasms and defined CMML-1 and CMML-2 subtypes according to the percentage of blasts in PB and BM. This categorization has consistently shown a clear impact in most studies.4,7-11  The results of multivariate analysis of our series clearly demonstrate that blasts percentage in PB and BM is one of the most important independent prognostic parameters in patients with CMML, a finding that highlights the usefulness of accounting for the proportion of these cells in PB and BM and the validity of the WHO classification for CMML.

None of the previously developed prognostic scoring systems for CMML have included cytogenetic findings and RBC transfusion dependency at diagnosis. In a previous study from our group, we developed a cytogenetic risk classification for CMML with 3 significantly different risk groups in terms of OS and AML evolution (low risk, including normal karyotype and isolated loss of Y; poor risk, including trisomy 8, abnormalities of chromosome 7, and complex karyotype [≥3 abnormalities]; and intermediate risk, with all other chromosomal abnormalities).7  The current study has confirmed the independent prognostic capacity of this cytogenetic risk stratification both in the training and validation cohorts. RBC transfusion dependency has demonstrated a major prognostic impact in patients with MDS classified according to WHO criteria and was 1 of the 3 variables used to generate the WPSS.12,20  However, the potential prognostic relevance of RBC transfusion dependency in patients with CMML had never been evaluated. Our results clearly demonstrate the strong and independent impact of RBC transfusion dependency on both OS and AML evolution risk, supporting that its inclusion in the prognostic scoring system adds clinically relevant information. RBC transfusion dependency was preferred to hemoglobin level in all multivariate models, likely because the former reflects not only the degree of anemia but also the weight of other variables such as age and comorbidity. However, we were able to show that an alternative CPSS including hemoglobin level instead of RBC transfusion dependency was almost as efficient as CPSS for prognostication. This alternative model could be useful, especially in those patients deserving urgent therapy and in whom RBC transfusion dependence is still not established.

A previous study had shown that patients with an elevated serum LDH level had a clear poorer survival.8  In the training cohort of the current study there was an independent relationship between LDH serum level and OS. However, LDH serum level did not significantly influence OS in the validation series nor was it able to predict the risk of progression to AML in any of the samples. Serum LDH level showed a statistically significant correlation with FAB morphologic subtype but not with WHO classification subtype (data not shown). Because our aim was to develop a prognostic scoring system that was able to predict the clinical outcome both in terms of OS and risk of AML evolution, serum LDH level was not included in the CPSS.

The CPSS is a simple and powerful prognostic index that is able to predict not only OS but also the risk of progression to AML and to segregate 4 risk groups with clearly distinct outcomes for both end points. The predictive capability of the CPSS was reproduced in an external validation cohort and its strength was superior to that offered by other previously published scoring systems.3,8,10,11  Further, none of the other scoring systems tested were able to discriminate 4 risk categories with statistically significant differences among them. The confirmatory prognostic value of the CPSS is particularly relevant given the fact that, as would be expected in a retrospective study, there were statistically significant differences in several patient and disease characteristics and outcomes between the training and validation cohorts.

Unfortunately (and this a potential weakness of this study), we were unable to compare the new CPSS with 2 relevant prognostic scoring systems reported by investigators from the MD Anderson Cancer Center,9,21,22  one specific for patients with CMML9,21  and the other for patients with MDS and CMML (global MD Anderson prognostic score [MDAPS]), because some parameters used in them were not available for analysis in most patients of our series. Nonetheless, a previously published study of a series of 212 patients with CMML—the majority of them included in the validation cohort of the current report—showed that CMML-specific MDAPS was unable to demonstrate the capacity of segregating 4 risk groups with statistically significant differences in survival among them, suggesting that it does not represent a major improvement in predicting the survival of CMML patients.8  The MDAPS has never been specifically validated in CMML. Given that the 4 variables composing the CPSS are present, although with somewhat different cutoff points, among the 8 characteristics required to build the global MDAPS, we anticipate this score will efficiently predict outcomes in CMML. However, whether it is able to significantly discriminate 4 risk groups for both survival and risk of AML evolution remains to be proven.

Recent molecular findings in gene mutations are being detected with increasing frequency that show the enormous underlying molecular heterogeneity of CMML.23  Comprehensive analyses reported an overall mutation frequency higher than 90%.24  Recurrent mutations involve splicing factors (SRSF2), epigenetic regulators (ASLX1, TET2, DNMT3A, IDH1/2, EZH2, and UTX), tyrosine kinases (JAK2, KRAS, NRAS, and CBL), and transcription factors (RUNX1).24-29  Recent series in patients with MDS suggest that mutations in specific genes help explain the clinical heterogeneity of the disease and that the identification of these abnormalities would improve their prognostic stratification.27-31  In CMML, however, the results reported so far on the prognostic impact of these new molecular markers are conflicting. Thus, further studies on the field are critical to clarify their influence on outcomes and to prove the need to incorporate them into daily clinical practice.

In the meantime, the CPSS developed herein is an easily applicable and validated prognostic index that may prove most valuable for assessing prognosis, planning therapy, and designing future clinical trials in patients with CMML.

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.

Studies performed at the GESMD were supported in part by research funding from the Red Temática de Investigación Cooperativa en Cáncer (RD06/0020/0031, RD07/0020/2004). Studies performed at the Department of Hematology Oncology, Fondazione Istituto Di Ricovero e Cura a Carattere Scientifico Policlinico San Matteo and University of Pavia, Pavia, Italy, were supported by Associazione Italiana per la Ricerca sul Cancro (Special Program Molecular Clinical Oncology 5×1000, project 1005), Fondazione Cariplo, Regione Lombardia, and Italian Ministry of Health. Research performed at Department of Hematology, Oncology and Clinical Immunology, Heinrich Heine University, Düsseldorf received support from the Leukemie-Liga, Düsseldorf.

Contribution: E.S., U.G., M.C., and G.S. designed the study. E.S., L.M., A.K., B.N., L.A., E.L., B.X., M.L.A., D.V., M.G.D.P., K.N., B.H., and I.A. collected and assembled data from study patients. E.S., U.G., M.C., J.C., L.M., I.L., and G.S. analyzed and interpreted the data. All authors wrote and approved of the manuscript.

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

Correspondence: Guillermo Sanz, Hospital Universitario La Fe, Bulevar Sur s/n, 46026, Valencia, Spain; e-mail: sanz_gui@gva.es.

Appendix: Study Group

The following institutions and investigators from the GESMD participated in the study: Hospital Universitario La Fe, Valencia (G. Sanz, E. Such, J. Cervera, L. Senent, A. Avaria); Hospital Clinic, Barcelona (X. Calvo, M. Belkaid, M. Nomdedeu, D. Costa); Hospital del Mar, Barcelona (L. Arenillas, L. Florensa, F. Solé, C. Pedro); Hospital Central de Asturias, Oviedo (E. Luño, T. Bernal); Hospital Germans Trias i Pujol, Badalona (B. Xicoy, J. Jiménez, J. Grau); Hospital Morales Meseguer, Murcia (M.L. Amigo, F. Ortuño); Hospital Universitario Vall D’Hebron, Barcelona (D. Valcarcel, T. Vallespí); Hospital General Universitario, Valencia (F. Carbonell, R. Collado); Hospital Univeristario 12 de Octubre, Madrid (J. Martínez, M.T. Cedeña); Hospital Universitario, Salamanca (C. del Cañizo, M. Diez-Campelo); Hospital Txagorritxu, Vitoria (M.T. Ardanaz); Hospital Clínico Universitario, Valencia (M. Tormo); Hospital Virgen Blanca, León (F. Ramos); Hospital de la Ribera, Alcira (S. Bonanad); Hospital Arnau de Vilanova, Lleida (V. Marco); Hospital de La Princesa, Madrid (V. Gómez); Hospital Carlos Haya, Málaga (A. Bailén); Hospital. Clínico San Carlos, Madrid (A. Villegas); Hospital U. Virgen del Rocio, Sevilla (J. Falantes); Hospital de Sagunto, Sagunto (M.J. Arilla); Hospital de Cabueñes, Gijón (A. Fernández-González); Hospital Puerta de Hierro, Madrid (G. Bautista); Hospital Dr Peset, Valencia (R. Andreu); Hospital Severo Ochoa, Madrid (M.J. Requena); Hospital Valle de los Pedroches, Pozoblanco (R. Ríos); Hospital Nuestra Senora de Aránzazu, San Sebastian: (M.A. Etxebeste); Hospital Son Llatzer, Palma de Mallorca (J. Bargay); Fundación Hospital de Alcorcón, Madrid (L. Villalón); Hospital Universitario de Canarias, Santa Cruz de Tenerife (B. González); Hospital de Mataró, Barcelona (A. Soley); Hospital Marques de Valdecilla, Santander (A. Insunza); Hospital de Jerez, Jerez de la Frontera (L. Hermosín); Hospital Duran i Reynals, L’Hospitalet (R. Duarte); Hospital General de Castellón (G. Cañigral); Hospital Universitario Virgen de la Victoria, Málaga (R. García); Hospital Insular de Gran Canaria, Las Palmas de Gran Canaria (M. Caballero); Complexo Hospitalario de Pontevedra, Pontevedra (M.J. Allegue); Hospital Sant Pau, Barcelona (S. Brunet); Universidad de Navarra, Pamplona (M.J. Calasanz); and Centro Nacional de Investigaciones Oncológicas, Madrid (J. Cruz, S. Alvarez).

1
Bennett
 
JM
Catovsky
 
D
Daniel
 
MT
, et al. 
Proposals for the classification of the myelodysplastic syndromes.
Br J Haematol
1982
, vol. 
51
 
2
(pg. 
189
-
199
)
2
Bennett
 
JM
Catovsky
 
D
Daniel
 
MT
, et al. 
The chronic myeloid leukemias: guidelines for distinguishing chronic granulocytic, atypical chronic myeloid, and chronic myelomonocytic leukemia. Proposals by the French-American-British Cooperative leukemia group.
Br J Haematol
1994
, vol. 
87
 (pg. 
746
-
754
)
3
Greenberg
 
P
Cox
 
C
LeBeau
 
MM
, et al. 
International scoring system for evaluating prognosis in myelodysplastic syndromes.
Blood
1997
, vol. 
89
 
6
(pg. 
2079
-
2088
)
4
Greenberg
 
PL
Tuechler
 
H
Schanz
 
J
, et al. 
Revised international prognostic scoring system for myelodysplastic syndromes.
Blood
2012
, vol. 
120
 
12
(pg. 
2454
-
2465
)
5
Vardiman
 
JW
Pierre
 
R
Bain
 
B
, et al. 
 
Chronic myelomonocytic leukaemia. In: Jaffe ES, Harris NL, Stein H, Vardiman JW, eds. World Health Organization Classification of Tumours: Pathology and Genetics of Tumours of Haematopoietic and Lymphoid Tissues. Lyon, France: IARC Press; 2001:49-51.
6
Orazi
 
A
Bennett
 
JM
Germing
 
U
, et al. 
Swerdlow
 
S
Campos
 
E
Lee Harris
 
N
, et al. 
Chronic myelomonocytic leukaemia.
WHO Classification of tumours of haematopoietic and lymphoid tissues
2008
Lyon, France
IARC press, World Health Organization
(pg. 
76
-
81
)
7
Such
 
E
Cervera
 
J
Costa
 
D
, et al. 
Cytogenetic risk stratification in chronic myelomonocytic leukemia.
Haematologica
2011
, vol. 
96
 
3
(pg. 
375
-
383
)
8
Germing
 
U
Strupp
 
C
Aivado
 
M
, et al. 
New prognostic parameters for chronic myelomonocytic leukemia.
Blood
2002
, vol. 
100
 
2
(pg. 
731
-
732, author reply 732-733
)
9
Onida
 
F
Kantarjian
 
HM
Smith
 
TL
, et al. 
Prognostic factors and scoring systems in chronic myelomonocytic leukemia: a retrospective analysis of 213 patients.
Blood
2002
, vol. 
99
 
3
(pg. 
840
-
849
)
10
Worsley
 
A
Oscier
 
DG
Stevens
 
J
, et al. 
Prognostic features of chronic myelomonocytic leukaemia: a modified Bournemouth score gives the best prediction of survival.
Br J Haematol
1988
, vol. 
68
 
1
(pg. 
17
-
21
)
11
González-Medina
 
I
Bueno
 
J
Torrequebrada
 
A
, et al. 
Two groups of chronic myelomonocytic leukaemia: myelodysplastic and myeloproliferative. Prognostic implications in a series of a single center.
Leuk Res
2002
, vol. 
26
 
9
(pg. 
821
-
824
)
12
Malcovati
 
L
Germing
 
U
Kuendgen
 
A
, et al. 
Time-dependent prognostic scoring system for predicting survival and leukemic evolution in myelodysplastic syndromes.
J Clin Oncol
2007
, vol. 
25
 
23
(pg. 
3503
-
3510
)
13.
Shaffer
 
LG
Slovak
 
ML
Campbell
 
LJ
 
An International System for Human Cytogenetic Nomenclature (2009): Recommendations of the International Standing Committee on Human Cytogenetic Nomenclature. Basel, Switzerland: Karger; 2009.
14
Gonen
 
M
Heller
 
G
Concordance probability and discriminatory power in proportional hazards regression.
Biometrika
2005
, vol. 
92
 (pg. 
965
-
970
)
15
Malcovati
 
L
Della Porta
 
MG
Strupp
 
C
, et al. 
Impact of the degree of anemia on the outcome of patients with myelodysplastic syndrome and its integration into the WHO classification-based Prognostic Scoring System (WPSS).
Haematologica
2011
, vol. 
96
 
10
(pg. 
1433
-
1440
)
16
Germing
 
U
Gattermann
 
N
Minning
 
H
, et al. 
Problems in the classification of CMML—dysplastic versus proliferative type.
Leuk Res
1998
, vol. 
22
 
10
(pg. 
871
-
878
)
17
Orazi
 
A
Germing
 
U
The myelodysplastic/myeloproliferative neoplasms: myeloproliferative diseases with dysplastic features.
Leukemia
2008
, vol. 
22
 
7
(pg. 
1308
-
1319
)
18
Voglová
 
J
Chrobák
 
L
Neuwirtová
 
R
, et al. 
Myelodysplastic and myeloproliferative type of chronic myelomonocytic leukemia—distinct subgroups or two stages of the same disease?
Leuk Res
2001
, vol. 
25
 
6
(pg. 
493
-
499
)
19
Nösslinger
 
T
Reisner
 
R
Koller
 
E
, et al. 
Myelodysplastic syndromes, from French-American-British to World Health Organization: comparison of classifications on 431 unselected patients from a single institution.
Blood
2001
, vol. 
98
 
10
(pg. 
2935
-
2941
)
20
Malcovati
 
L
Porta
 
MG
Pascutto
 
C
, et al. 
Prognostic factors and life expectancy in myelodysplastic syndromes classified according to WHO criteria: a basis for clinical decision making.
J Clin Oncol
2005
, vol. 
23
 
30
(pg. 
7594
-
7603
)
21
Beran
 
M
Wen
 
S
Shen
 
Y
, et al. 
Prognostic factors and risk assessment in chronic myelomonocytic leukemia: validation study of the M.D. Anderson Prognostic Scoring System.
Leuk Lymphoma
2007
, vol. 
48
 
6
(pg. 
1150
-
1160
)
22
Kantarjian
 
H
O’Brien
 
S
Ravandi
 
F
, et al. 
Proposal for a new risk model in myelodysplastic syndrome that accounts for events not considered in the original International Prognostic Scoring System.
Cancer
2008
, vol. 
113
 
6
(pg. 
1351
-
1361
)
23
Cazzola
 
M
Malcovati
 
L
Invernizzi
 
R
 
Myelodysplastic/Myeloproliferative neoplasms. Hematology Am Soc Hematol Educ Program. 2011;2011:264-272.
24
Meggendorfer
 
M
Roller
 
A
Haferlach
 
T
, et al. 
SRSF2 mutations in 275 cases with chronic myelomonocytic leukemia (CMML).
Blood
2012
, vol. 
120
 
15
(pg. 
3080
-
3088
)
25
Kohlmann
 
A
Grossmann
 
V
Klein
 
HU
, et al. 
Next-generation sequencing technology reveals a characteristic pattern of molecular mutations in 72.8% of chronic myelomonocytic leukemia by detecting frequent alterations in TET2, CBL, RAS, and RUNX1.
J Clin Oncol
2010
, vol. 
28
 
24
(pg. 
3858
-
3865
)
26
Jankowska
 
AM
Makishima
 
H
Tiu
 
RV
, et al. 
Mutational spectrum analysis of chronic myelomonocytic leukemia includes genes associated with epigenetic regulation: UTX, EZH2, and DNMT3A.
Blood
2011
, vol. 
118
 
14
(pg. 
3932
-
3941
)
27
Yoshida
 
K
Sanada
 
M
Shiraishi
 
Y
, et al. 
Frequent pathway mutations of splicing machinery in myelodysplasia.
Nature
2011
, vol. 
478
 
7367
(pg. 
64
-
69
)
28
Smith
 
AE
Mohamedali
 
AM
Kulasekararaj
 
A
, et al. 
Next-generation sequencing of the TET2 gene in 355 MDS and CMML patients reveals low-abundance mutant clones with early origins, but indicates no definite prognostic value.
Blood
2010
, vol. 
116
 
19
(pg. 
3923
-
3932
)
29
Makishima
 
H
Visconte
 
V
Sakaguchi
 
H
, et al. 
Mutations in the spliceosome machinery, a novel and ubiquitous pathway in leukemogenesis.
Blood
2012
, vol. 
119
 
14
(pg. 
3203
-
3210
)
30
Malcovati
 
L
Papaemmanuil
 
E
Bowen
 
DT
, et al. 
Chronic Myeloid Disorders Working Group of the International Cancer Genome Consortium and of the Associazione Italiana per la Ricerca sul Cancro Gruppo Italiano Malattie Mieloproliferative
Clinical significance of SF3B1 mutations in myelodysplastic syndromes and myelodysplastic/myeloproliferative neoplasms.
Blood
2011
, vol. 
118
 
24
(pg. 
6239
-
6246
)
31
Kar
 
SA
Jankowska
 
A
Makishima
 
H
, et al. 
Spliceosomal gene mutations are frequent events in the diverse mutational spectrum of chronic myelomonocytic leukemia but largely absent in juvenile myelomonocytic leukemia.
Haematologica
2013
, vol. 
98
 
1
(pg. 
107
-
113
)

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