Literature DB >> 33719335

Interpretable Machine Learning Reveals Dissimilarities Between Subtypes of Autism Spectrum Disorder.

Mateusz Garbulowski1, Karolina Smolinska1, Klev Diamanti2, Gang Pan2, Khurram Maqbool2, Lars Feuk2, Jan Komorowski1,3,4,5.   

Abstract

Autism spectrum disorder (ASD) is a heterogeneous neuropsychiatric disorder with a complex genetic background. Analysis of altered molecular processes in ASD patients requires linear and nonlinear methods that provide interpretable solutions. Interpretable machine learning provides legible models that allow explaining biological mechanisms and support analysis of clinical subgroups. In this work, we investigated several case-control studies of gene expression measurements of ASD individuals. We constructed a rule-based learning model from three independent datasets that we further visualized as a nonlinear gene-gene co-predictive network. To find dissimilarities between ASD subtypes, we scrutinized a topological structure of the network and estimated a centrality distance. Our analysis revealed that autism is the most severe subtype of ASD, while pervasive developmental disorder-not otherwise specified and Asperger syndrome are closely related and milder ASD subtypes. Furthermore, we analyzed the most important ASD-related features that were described in terms of gene co-predictors. Among others, we found a strong co-predictive mechanism between EMC4 and TMEM30A, which may suggest a co-regulation between these genes. The present study demonstrates the potential of applying interpretable machine learning in bioinformatics analyses. Although the proposed methodology was designed for transcriptomics data, it can be applied to other omics disciplines.
Copyright © 2021 Garbulowski, Smolinska, Diamanti, Pan, Maqbool, Feuk and Komorowski.

Entities:  

Keywords:  autism spectrum disorder; autism spectrum disorder subtypes; data integration; gene expression; interpretable machine learning; rule-based classification; transcriptomics

Year:  2021        PMID: 33719335      PMCID: PMC7946989          DOI: 10.3389/fgene.2021.618277

Source DB:  PubMed          Journal:  Front Genet        ISSN: 1664-8021            Impact factor:   4.599


  62 in total

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Authors:  Jeffrey T Leek; W Evan Johnson; Hilary S Parker; Andrew E Jaffe; John D Storey
Journal:  Bioinformatics       Date:  2012-01-17       Impact factor: 6.937

Review 2.  Machine Learning in Medicine.

Authors:  Alvin Rajkomar; Jeffrey Dean; Isaac Kohane
Journal:  N Engl J Med       Date:  2019-04-04       Impact factor: 91.245

Review 3.  Implication of Endoplasmic Reticulum Stress in Autism Spectrum Disorder.

Authors:  Koichi Kawada; Seisuke Mimori
Journal:  Neurochem Res       Date:  2017-08-02       Impact factor: 3.996

4.  Association of Symptom Network Structure With the Course of [corrected] Depression.

Authors:  Claudia van Borkulo; Lynn Boschloo; Denny Borsboom; Brenda W J H Penninx; Lourens J Waldorp; Robert A Schoevers
Journal:  JAMA Psychiatry       Date:  2015-12       Impact factor: 21.596

5.  A conserved endoplasmic reticulum membrane protein complex (EMC) facilitates phospholipid transfer from the ER to mitochondria.

Authors:  Sujoy Lahiri; Jesse T Chao; Shabnam Tavassoli; Andrew K O Wong; Vineet Choudhary; Barry P Young; Christopher J R Loewen; William A Prinz
Journal:  PLoS Biol       Date:  2014-10-14       Impact factor: 8.029

6.  R.ROSETTA: an interpretable machine learning framework.

Authors:  Klev Diamanti; Karolina Smolińska; Mateusz Garbulowski; Nicholas Baltzer; Patricia Stoll; Susanne Bornelöv; Aleksander Øhrn; Lars Feuk; Jan Komorowski
Journal:  BMC Bioinformatics       Date:  2021-03-06       Impact factor: 3.169

7.  Characteristics and predictive value of blood transcriptome signature in males with autism spectrum disorders.

Authors:  Sek Won Kong; Christin D Collins; Yuko Shimizu-Motohashi; Ingrid A Holm; Malcolm G Campbell; In-Hee Lee; Stephanie J Brewster; Ellen Hanson; Heather K Harris; Kathryn R Lowe; Adrianna Saada; Andrea Mora; Kimberly Madison; Rachel Hundley; Jessica Egan; Jillian McCarthy; Ally Eran; Michal Galdzicki; Leonard Rappaport; Louis M Kunkel; Isaac S Kohane
Journal:  PLoS One       Date:  2012-12-05       Impact factor: 3.240

8.  Redox metabolism abnormalities in autistic children associated with mitochondrial disease.

Authors:  R E Frye; R Delatorre; H Taylor; J Slattery; S Melnyk; N Chowdhury; S J James
Journal:  Transl Psychiatry       Date:  2013-06-18       Impact factor: 6.222

9.  WGCNA: an R package for weighted correlation network analysis.

Authors:  Peter Langfelder; Steve Horvath
Journal:  BMC Bioinformatics       Date:  2008-12-29       Impact factor: 3.169

10.  Co-regulation of metabolic genes is better explained by flux coupling than by network distance.

Authors:  Richard A Notebaart; Bas Teusink; Roland J Siezen; Balázs Papp
Journal:  PLoS Comput Biol       Date:  2008-01       Impact factor: 4.475

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