Literature DB >> 34202750

Prediction of Probable Major Depressive Disorder in the Taiwan Biobank: An Integrated Machine Learning and Genome-Wide Analysis Approach.

Eugene Lin1,2,3, Po-Hsiu Kuo4, Wan-Yu Lin4, Yu-Li Liu5, Albert C Yang6,7, Shih-Jen Tsai8,9.   

Abstract

In light of recent advancements in machine learning, personalized medicine using predictive algorithms serves as an essential paradigmatic methodology. Our goal was to explore an integrated machine learning and genome-wide analysis approach which targets the prediction of probable major depressive disorder (MDD) using 9828 individuals in the Taiwan Biobank. In our analysis, we reported a genome-wide significant association with probable MDD that has not been previously identified: FBN1 on chromosome 15. Furthermore, we pinpointed 17 single nucleotide polymorphisms (SNPs) which show evidence of both associations with probable MDD and potential roles as expression quantitative trait loci (eQTLs). To predict the status of probable MDD, we established prediction models with random undersampling and synthetic minority oversampling using 17 eQTL SNPs and eight clinical variables. We utilized five state-of-the-art models: logistic ridge regression, support vector machine, C4.5 decision tree, LogitBoost, and random forests. Our data revealed that random forests had the highest performance (area under curve = 0.8905 ± 0.0088; repeated 10-fold cross-validation) among the predictive algorithms to infer complex correlations between biomarkers and probable MDD. Our study suggests that an integrated machine learning and genome-wide analysis approach may offer an advantageous method to establish bioinformatics tools for discriminating MDD patients from healthy controls.

Entities:  

Keywords:  genome-wide association study; machine learning; major depressive disorder; personalized medicine; single nucleotide polymorphisms

Year:  2021        PMID: 34202750     DOI: 10.3390/jpm11070597

Source DB:  PubMed          Journal:  J Pers Med        ISSN: 2075-4426


  56 in total

1.  PLINK: a tool set for whole-genome association and population-based linkage analyses.

Authors:  Shaun Purcell; Benjamin Neale; Kathe Todd-Brown; Lori Thomas; Manuel A R Ferreira; David Bender; Julian Maller; Pamela Sklar; Paul I W de Bakker; Mark J Daly; Pak C Sham
Journal:  Am J Hum Genet       Date:  2007-07-25       Impact factor: 11.025

2.  Age, period, and cohort effects in psychological distress in the United States and Canada.

Authors:  Katherine M Keyes; Ryan Nicholson; Jolene Kinley; Sarah Raposo; Murray B Stein; Elliot M Goldner; Jitender Sareen
Journal:  Am J Epidemiol       Date:  2014-03-31       Impact factor: 4.897

3.  An ultra-brief screening scale for anxiety and depression: the PHQ-4.

Authors:  Kurt Kroenke; Robert L Spitzer; Janet B W Williams; Bernd Löwe
Journal:  Psychosomatics       Date:  2009 Nov-Dec       Impact factor: 2.386

4.  A genome-wide association study of emotion dysregulation: Evidence for interleukin 2 receptor alpha.

Authors:  Abigail Powers; Lynn Almli; Alicia Smith; Adriana Lori; Jen Leveille; Kerry J Ressler; Tanja Jovanovic; Bekh Bradley
Journal:  J Psychiatr Res       Date:  2016-09-09       Impact factor: 4.791

5.  GENOME-WIDE ASSOCIATION STUDY (GWAS) AND GENOME-WIDE BY ENVIRONMENT INTERACTION STUDY (GWEIS) OF DEPRESSIVE SYMPTOMS IN AFRICAN AMERICAN AND HISPANIC/LATINA WOMEN.

Authors:  Erin C Dunn; Anna Wiste; Farid Radmanesh; Lynn M Almli; Stephanie M Gogarten; Tamar Sofer; Jessica D Faul; Sharon L R Kardia; Jennifer A Smith; David R Weir; Wei Zhao; Thomas W Soare; Saira S Mirza; Karin Hek; Henning Tiemeier; Joseph S Goveas; Gloria E Sarto; Beverly M Snively; Marilyn Cornelis; Karestan C Koenen; Peter Kraft; Shaun Purcell; Kerry J Ressler; Jonathan Rosand; Sylvia Wassertheil-Smoller; Jordan W Smoller
Journal:  Depress Anxiety       Date:  2016-04       Impact factor: 6.505

Review 6.  Machine learning, statistical learning and the future of biological research in psychiatry.

Authors:  R Iniesta; D Stahl; P McGuffin
Journal:  Psychol Med       Date:  2016-07-13       Impact factor: 7.723

7.  Association and interaction of APOA5, BUD13, CETP, LIPA and health-related behavior with metabolic syndrome in a Taiwanese population.

Authors:  Eugene Lin; Po-Hsiu Kuo; Yu-Li Liu; Albert C Yang; Chung-Feng Kao; Shih-Jen Tsai
Journal:  Sci Rep       Date:  2016-11-09       Impact factor: 4.379

8.  Testing a machine-learning algorithm to predict the persistence and severity of major depressive disorder from baseline self-reports.

Authors:  R C Kessler; H M van Loo; K J Wardenaar; R M Bossarte; L A Brenner; T Cai; D D Ebert; I Hwang; J Li; P de Jonge; A A Nierenberg; M V Petukhova; A J Rosellini; N A Sampson; R A Schoevers; M A Wilcox; A M Zaslavsky
Journal:  Mol Psychiatry       Date:  2016-01-05       Impact factor: 15.992

9.  Machine Learning Analysis of Blood microRNA Data in Major Depression: A Case-Control Study for Biomarker Discovery.

Authors:  Bill Qi; Laura M Fiori; Gustavo Turecki; Yannis J Trakadis
Journal:  Int J Neuropsychopharmacol       Date:  2020-11-26       Impact factor: 5.176

10.  A deep adversarial variational autoencoder model for dimensionality reduction in single-cell RNA sequencing analysis.

Authors:  Eugene Lin; Sudipto Mukherjee; Sreeram Kannan
Journal:  BMC Bioinformatics       Date:  2020-02-21       Impact factor: 3.169

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