Abstract 511

Background:

Pulmonary hypertension (PH) is a serious complication of sickle cell disease (SCD) associated with increased mortality. Gene expression profiles of peripheral blood mononuclear cells (PBMC) and genetic strategies have been studied in pulmonary arterial hypertension and in SCD. We hypothesized that a PBMC-derived gene signature in SCD patients may be utilized as a PH biomarker which may be further validated using integrated genomic and genetic strategies. Methods & Results: Twenty-seven patients with homozygous SCD underwent transthoracic echocardiography and PBMC isolation for genome—wide expression profiling. An independent SCD cohort (n=132) was genotyped using Affymetrix 6.0 SNP array and also underwent TTE. PH was defined as estimated right ventricular systolic pressure (RVSP)>30 mmHg with a peak tricuspid regurgitation velocity (TRV)>2.5m/s. Genome-wide mRNA and miRNA expression profiles were correlated against PH severity using RVSP (correlation coefficient ρR) and TRV (ρT) as surrogates. Utilizing a correlation threshold (ρR2>0.15, ρT2>0.15) for prioritization yielded 631 transcripts and 12 miRNAs. A support vector machine analysis on the transcripts identified a 10 gene signature which discriminated patients with and without echo-defined PH with 100% accuracy. This gene signature was then validated in an independent cohort of SCD patients with PH confirmed by right heart catheterization (n=10) and without PH (n=10) with 90% accuracy. In silico analyses of the top PH-related miRNAs revealed strong binding predictions of miR-301a to polypeptide N-acetylgalactosaminyltransferase 13 (GALNT13), a PH signature gene, which was further validated by microarray data confirming correlation between miR-301a and GALNT13 expression (p=0.024). Genome-wide association study in 132 adult SCD patients comparing echo-defined PH (n=51) versus no PH (n=81) revealed 12 significant SNPs, which were within or upstream to the PH signature genes (Table 1, P<0.01). Seven of the 12 SNPs were associated with GALNT13, further validating this top candidate PH signature gene. Integrating all available genomic and genetic information from a sub-population of 24 patients with SCD revealed significant expression quantitative trait loci (eQTLs) associated with echo-defined PH. Within our PH signature genes, we found four trans-acting eQTLs, based on a FDR<5% with Bonferroni-Holm correction (p=2.1 e-07 for all four) and 1 cis-acting eQTL (p=0.6e-04) upstream of the adenosine A2B receptor gene (ADORA2B) based on a nominal p value 1e–03. Conclusion: These genomic signatures are potential biomarkers to screen at-risk populations in SCD for the presence of PH. Integrative analyses with genomic and genetic analyses highlight ADORA2B and GALNT13, a glycosyltransferase enzyme, as potential candidate genes in SCD-related PH.

Table I.

Top SNPs associated with PH signature genes and echo-defined PH

SNPPH Signature GeneMinor AlleleMinor Allele FrequencyP ValueOdds RatioFrequency- SCD PH casesFrequency- SCD controlsPosition
rs799813 GALNT13 0.2073 0.0009 0.2804 0.102 0.277 Intronic 
rs6701513 PREFLP 0.2652 0.0020 2.374 0.3627 0.2037 Upstream 
rs4664705 GALNT13 0.3664 0.0028 2.238 0.47 0.3025 Upstream 
rs10920634 PREFLP 0.3598 0.0035 2.217 0.451 0.3025 Upstream 
rs16851575 PREFLP 0.375 0.0047 0.4489 0.2941 0.4259 Upstream 
rs2794452 PRELP 0.4615 0.0049 0.4733 0.3431 0.538 Upstream 
rs4664706 GALNT13 0.3674 0.0065 2.071 0.4608 0.3086 Upstream 
rs7603830 GALNT13 0.4237 0.0070 0.4828 0.32 0.4877 Upstream 
rs799761 GALNT13 0.4962 0.0094 1.963 0.598 0.4321 Intronic 
rs16834781 GALNT13 0.2 0.01 0.3713 0.1196 0.25 Intronic 
rs16834331 GALNT13 0.1364 0.01 0.3223 0.06863 0.179 Upstream 
rs3818943 PREFLP 0.4735 0.01 0.5007 0.402 0.5185 Upstream 
SNPPH Signature GeneMinor AlleleMinor Allele FrequencyP ValueOdds RatioFrequency- SCD PH casesFrequency- SCD controlsPosition
rs799813 GALNT13 0.2073 0.0009 0.2804 0.102 0.277 Intronic 
rs6701513 PREFLP 0.2652 0.0020 2.374 0.3627 0.2037 Upstream 
rs4664705 GALNT13 0.3664 0.0028 2.238 0.47 0.3025 Upstream 
rs10920634 PREFLP 0.3598 0.0035 2.217 0.451 0.3025 Upstream 
rs16851575 PREFLP 0.375 0.0047 0.4489 0.2941 0.4259 Upstream 
rs2794452 PRELP 0.4615 0.0049 0.4733 0.3431 0.538 Upstream 
rs4664706 GALNT13 0.3674 0.0065 2.071 0.4608 0.3086 Upstream 
rs7603830 GALNT13 0.4237 0.0070 0.4828 0.32 0.4877 Upstream 
rs799761 GALNT13 0.4962 0.0094 1.963 0.598 0.4321 Intronic 
rs16834781 GALNT13 0.2 0.01 0.3713 0.1196 0.25 Intronic 
rs16834331 GALNT13 0.1364 0.01 0.3223 0.06863 0.179 Upstream 
rs3818943 PREFLP 0.4735 0.01 0.5007 0.402 0.5185 Upstream 
Disclosures:

No relevant conflicts of interest to declare.

Author notes

*

Asterisk with author names denotes non-ASH members.

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