Machine learning compensates fold-change method and highlights oxidative phosphorylation in the brain transcriptome of Alzheimer’s disease

Abstract Alzheimer’s disease (AD) is a neurodegenerative disorder causing 70% of dementia cases. However, the mechanism of disease development is still elusive. Despite the availability of a wide range of biological data, a comprehensive understanding of AD's mechanism from machine learning (ML...

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Main Authors: Jack Cheng, Hsin-Ping Liu, Wei-Yong Lin, Fuu-Jen Tsai
Format: Article
Language:English
Published: Nature Publishing Group 2021-07-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-93085-z
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spelling doaj-b614a110173d4f4ab37eb591658964f12021-07-04T11:28:31ZengNature Publishing GroupScientific Reports2045-23222021-07-0111111310.1038/s41598-021-93085-zMachine learning compensates fold-change method and highlights oxidative phosphorylation in the brain transcriptome of Alzheimer’s diseaseJack Cheng0Hsin-Ping Liu1Wei-Yong Lin2Fuu-Jen Tsai3Graduate Institute of Integrated Medicine, College of Chinese Medicine, China Medical UniversityGraduate Institute of Acupuncture Science, College of Chinese Medicine, China Medical UniversityGraduate Institute of Integrated Medicine, College of Chinese Medicine, China Medical UniversityDepartment of Medical Research, China Medical University HospitalAbstract Alzheimer’s disease (AD) is a neurodegenerative disorder causing 70% of dementia cases. However, the mechanism of disease development is still elusive. Despite the availability of a wide range of biological data, a comprehensive understanding of AD's mechanism from machine learning (ML) is so far unrealized, majorly due to the lack of needed data density. To harness the AD mechanism's knowledge from the expression profiles of postmortem prefrontal cortex samples of 310 AD and 157 controls, we used seven predictive operators or combinations of RapidMiner Studio operators to establish predictive models from the input matrix and to assign a weight to each attribute. Besides, conventional fold-change methods were also applied as controls. The identified genes were further submitted to enrichment analysis for KEGG pathways. The average accuracy of ML models ranges from 86.30% to 91.22%. The overlap ratio of the identified genes between ML and conventional methods ranges from 19.7% to 21.3%. ML exclusively identified oxidative phosphorylation genes in the AD pathway. Our results highlighted the deficiency of oxidative phosphorylation in AD and suggest that ML should be considered as complementary to the conventional fold-change methods in transcriptome studies.https://doi.org/10.1038/s41598-021-93085-z
collection DOAJ
language English
format Article
sources DOAJ
author Jack Cheng
Hsin-Ping Liu
Wei-Yong Lin
Fuu-Jen Tsai
spellingShingle Jack Cheng
Hsin-Ping Liu
Wei-Yong Lin
Fuu-Jen Tsai
Machine learning compensates fold-change method and highlights oxidative phosphorylation in the brain transcriptome of Alzheimer’s disease
Scientific Reports
author_facet Jack Cheng
Hsin-Ping Liu
Wei-Yong Lin
Fuu-Jen Tsai
author_sort Jack Cheng
title Machine learning compensates fold-change method and highlights oxidative phosphorylation in the brain transcriptome of Alzheimer’s disease
title_short Machine learning compensates fold-change method and highlights oxidative phosphorylation in the brain transcriptome of Alzheimer’s disease
title_full Machine learning compensates fold-change method and highlights oxidative phosphorylation in the brain transcriptome of Alzheimer’s disease
title_fullStr Machine learning compensates fold-change method and highlights oxidative phosphorylation in the brain transcriptome of Alzheimer’s disease
title_full_unstemmed Machine learning compensates fold-change method and highlights oxidative phosphorylation in the brain transcriptome of Alzheimer’s disease
title_sort machine learning compensates fold-change method and highlights oxidative phosphorylation in the brain transcriptome of alzheimer’s disease
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-07-01
description Abstract Alzheimer’s disease (AD) is a neurodegenerative disorder causing 70% of dementia cases. However, the mechanism of disease development is still elusive. Despite the availability of a wide range of biological data, a comprehensive understanding of AD's mechanism from machine learning (ML) is so far unrealized, majorly due to the lack of needed data density. To harness the AD mechanism's knowledge from the expression profiles of postmortem prefrontal cortex samples of 310 AD and 157 controls, we used seven predictive operators or combinations of RapidMiner Studio operators to establish predictive models from the input matrix and to assign a weight to each attribute. Besides, conventional fold-change methods were also applied as controls. The identified genes were further submitted to enrichment analysis for KEGG pathways. The average accuracy of ML models ranges from 86.30% to 91.22%. The overlap ratio of the identified genes between ML and conventional methods ranges from 19.7% to 21.3%. ML exclusively identified oxidative phosphorylation genes in the AD pathway. Our results highlighted the deficiency of oxidative phosphorylation in AD and suggest that ML should be considered as complementary to the conventional fold-change methods in transcriptome studies.
url https://doi.org/10.1038/s41598-021-93085-z
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