Predicting lithium treatment response in bipolar patients using gender-specific gene expression biomarkers and machine learning [version 3; referees: 1 approved, 2 approved with reservations]

Background: We sought to test the hypothesis that transcriptome-level gene signatures are differentially expressed between male and female bipolar patients, prior to lithium treatment, in a patient cohort who later were clinically classified as lithium treatment responders. Methods: Gene expression...

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Main Authors: Andy R. Eugene, Jolanta Masiak, Beata Eugene
Format: Article
Language:English
Published: F1000 Research Ltd 2018-12-01
Series:F1000Research
Online Access:https://f1000research.com/articles/7-474/v3
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spelling doaj-984dc1cb67564a71a23fcbed220883682020-11-25T03:51:58ZengF1000 Research LtdF1000Research2046-14022018-12-01710.12688/f1000research.14451.318909Predicting lithium treatment response in bipolar patients using gender-specific gene expression biomarkers and machine learning [version 3; referees: 1 approved, 2 approved with reservations]Andy R. Eugene0Jolanta Masiak1Beata Eugene2Independent Researcher, Kansas, USAIndependent Neurophysiology Laboratory, Department of Psychiatry, Medical University of Lublin, Lublin, 20-439, PolandMarie-Curie Sklodowska University, Lublin, 20-400, PolandBackground: We sought to test the hypothesis that transcriptome-level gene signatures are differentially expressed between male and female bipolar patients, prior to lithium treatment, in a patient cohort who later were clinically classified as lithium treatment responders. Methods: Gene expression study data was obtained from the Lithium Treatment-Moderate dose Use Study data accessed from the National Center for Biotechnology Information’s Gene Expression Omnibus via accession number GSE4548. Differential gene expression analysis was conducted using the Linear Models for Microarray and RNA-Seq (limma) package and the Decision Tree and Random Forest machine learning algorithms in R. Results: Using quantitative gene expression values reported from patient blood samples, the RBPMS2 and LILRA5 genes classify male lithium responders with an area under the receiver operator characteristic curve (AUROC) of 0.92 and the ABRACL, FHL3, and NBPF14  genes classify female lithium responders AUROC of 1. A Decision Tree rule for establishing male versus female samples, using gene expression values were found to be: if RPS4Y1 ≥ 9.643, patient is a male and if RPS4Y1 < 9.643, patient is female with a probability=100%. Conclusions: We developed a pre-treatment gender- and gene-expression-based predictive model selective for classifying male lithium responders with a sensitivity of 96% using 2-genes and female lithium responders with sensitivity=92% using 3-genes.https://f1000research.com/articles/7-474/v3
collection DOAJ
language English
format Article
sources DOAJ
author Andy R. Eugene
Jolanta Masiak
Beata Eugene
spellingShingle Andy R. Eugene
Jolanta Masiak
Beata Eugene
Predicting lithium treatment response in bipolar patients using gender-specific gene expression biomarkers and machine learning [version 3; referees: 1 approved, 2 approved with reservations]
F1000Research
author_facet Andy R. Eugene
Jolanta Masiak
Beata Eugene
author_sort Andy R. Eugene
title Predicting lithium treatment response in bipolar patients using gender-specific gene expression biomarkers and machine learning [version 3; referees: 1 approved, 2 approved with reservations]
title_short Predicting lithium treatment response in bipolar patients using gender-specific gene expression biomarkers and machine learning [version 3; referees: 1 approved, 2 approved with reservations]
title_full Predicting lithium treatment response in bipolar patients using gender-specific gene expression biomarkers and machine learning [version 3; referees: 1 approved, 2 approved with reservations]
title_fullStr Predicting lithium treatment response in bipolar patients using gender-specific gene expression biomarkers and machine learning [version 3; referees: 1 approved, 2 approved with reservations]
title_full_unstemmed Predicting lithium treatment response in bipolar patients using gender-specific gene expression biomarkers and machine learning [version 3; referees: 1 approved, 2 approved with reservations]
title_sort predicting lithium treatment response in bipolar patients using gender-specific gene expression biomarkers and machine learning [version 3; referees: 1 approved, 2 approved with reservations]
publisher F1000 Research Ltd
series F1000Research
issn 2046-1402
publishDate 2018-12-01
description Background: We sought to test the hypothesis that transcriptome-level gene signatures are differentially expressed between male and female bipolar patients, prior to lithium treatment, in a patient cohort who later were clinically classified as lithium treatment responders. Methods: Gene expression study data was obtained from the Lithium Treatment-Moderate dose Use Study data accessed from the National Center for Biotechnology Information’s Gene Expression Omnibus via accession number GSE4548. Differential gene expression analysis was conducted using the Linear Models for Microarray and RNA-Seq (limma) package and the Decision Tree and Random Forest machine learning algorithms in R. Results: Using quantitative gene expression values reported from patient blood samples, the RBPMS2 and LILRA5 genes classify male lithium responders with an area under the receiver operator characteristic curve (AUROC) of 0.92 and the ABRACL, FHL3, and NBPF14  genes classify female lithium responders AUROC of 1. A Decision Tree rule for establishing male versus female samples, using gene expression values were found to be: if RPS4Y1 ≥ 9.643, patient is a male and if RPS4Y1 < 9.643, patient is female with a probability=100%. Conclusions: We developed a pre-treatment gender- and gene-expression-based predictive model selective for classifying male lithium responders with a sensitivity of 96% using 2-genes and female lithium responders with sensitivity=92% using 3-genes.
url https://f1000research.com/articles/7-474/v3
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