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Class prediction models of thrombocytosis using genetic biomarkers.

Class prediction models of thrombocytosis using genetic biomarkers.

Authors :
Gnatenko DV
Zhu W
Xu X
Samuel ET
Monaghan M
Zarrabi MH
Kim C
Dhundale A
Bahou WF
Source :
Blood [Blood] 2010 Jan 07; Vol. 115 (1), pp. 7-14. Date of Electronic Publication: 2009 Sep 22.
Publication Year :
2010

Abstract

Criteria for distinguishing among etiologies of thrombocytosis are limited in their capacity to delineate clonal (essential thrombocythemia [ET]) from nonclonal (reactive thrombocytosis [RT]) etiologies. We studied platelet transcript profiles of 126 subjects (48 controls, 38 RT, 40 ET [24 contained the JAK2V(617)F mutation]) to identify transcript subsets that segregated phenotypes. Cross-platform consistency was validated using quantitative real-time polymerase chain reaction (RT-PCR). Class prediction algorithms were developed to assign phenotypic class between the thrombocytosis cohorts, and by JAK2 genotype. Sex differences were rare in normal and ET cohorts (< 1% of genes) but were male-skewed for approximately 3% of RT genes. An 11-biomarker gene subset using the microarray data discriminated among the 3 cohorts with 86.3% accuracy, with 93.6% accuracy in 2-way class prediction (ET vs RT). Subsequent quantitative RT-PCR analysis established that these biomarkers were 87.1% accurate in prospective classification of a new cohort. A 4-biomarker gene subset predicted JAK2 wild-type ET in more than 85% patient samples using either microarray or RT-PCR profiling, with lower predictive capacity in JAK2V(617)F mutant ET patients. These results establish that distinct genetic biomarker subsets can predict thrombocytosis class using routine phlebotomy.

Details

Language :
English
ISSN :
1528-0020
Volume :
115
Issue :
1
Database :
MEDLINE
Journal :
Blood
Publication Type :
Academic Journal
Accession number :
19773543
Full Text :
https://doi.org/10.1182/blood-2009-05-224477