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An integrative machine learning approach to discovering multi-level molecular mechanisms of obesity using data from monozygotic twin pairs

Authors :
Muhammad Ammad-ud-din
Suleiman A. Khan
Jaakko Kaprio
Kirsi H. Pietiläinen
Sailalitha Bollepalli
Miina Ollikainen
Teemu Palviainen
Milla Kibble
Epigenetics of Complex Diseases and Traits
Institute for Molecular Medicine Finland
Genetic Epidemiology
Department of Public Health
University of Helsinki
HUS Abdominal Center
Department of Medicine
Clinicum
Research Programs Unit
Helsinki University Hospital Area
Source :
Royal Society Open Science, Royal Society Open Science, Vol 7, Iss 10 (2020)
Publication Year :
2020

Abstract

We combined clinical, cytokine, genomic, methylation and dietary data from 43 young adult monozygotic twin pairs (aged 22–36 years, 53% female), where 25 of the twin pairs were substantially weight discordant (delta body mass index > 3 kg m −2 ). These measurements were originally taken as part of the TwinFat study, a substudy of The Finnish Twin Cohort study. These five large multivariate datasets (comprising 42, 71, 1587, 1605 and 63 variables, respectively) were jointly analysed using an integrative machine learning method called group factor analysis (GFA) to offer new hypotheses into the multi-molecular-level interactions associated with the development of obesity. New potential links between cytokines and weight gain are identified, as well as associations between dietary, inflammatory and epigenetic factors. This encouraging case study aims to enthuse the research community to boldly attempt new machine learning approaches which have the potential to yield novel and unintuitive hypotheses. The source code of the GFA method is publically available as the R package GFA.

Details

ISSN :
20545703
Volume :
7
Issue :
10
Database :
OpenAIRE
Journal :
Royal Society open science
Accession number :
edsair.doi.dedup.....0233377dbfc01448443612248d179482