SPIN: sex-specific and pathway-based interpretable neural network for sexual dimorphism analysis

Author:

Ko Euiseong1ORCID,Kim Youngsoon2ORCID,Shokoohi Farhad3ORCID,Mersha Tesfaye B45ORCID,Kang Mingon1ORCID

Affiliation:

1. Department of Computer Science, University of Nevada , Las Vegas, Las Vegas, NV , USA

2. Department of Information and Statistics and Department of Bio&Medical Bigdata (BK21 Four program), Gyeongsang National University , Jinju , Republic of Korea

3. Department of Mathematical Sciences, University of Nevada , Las Vegas, Las Vegas, NV , USA

4. Department of Pediatrics , Cincinnati Children’s Hospital Medical Center, , Cincinnati, OH , USA

5. University of Cincinnati , Cincinnati Children’s Hospital Medical Center, , Cincinnati, OH , USA

Abstract

Abstract Sexual dimorphism in prevalence, severity and genetic susceptibility exists for most common diseases. However, most genetic and clinical outcome studies are designed in sex-combined framework considering sex as a covariate. Few sex-specific studies have analyzed males and females separately, which failed to identify gene-by-sex interaction. Here, we propose a novel unified biologically interpretable deep learning-based framework (named SPIN) for sexual dimorphism analysis. We demonstrate that SPIN significantly improved the C-index up to 23.6% in TCGA cancer datasets, and it was further validated using asthma datasets. In addition, SPIN identifies sex-specific and -shared risk loci that are often missed in previous sex-combined/-separate analysis. We also show that SPIN is interpretable for explaining how biological pathways contribute to sexual dimorphism and improve risk prediction in an individual level, which can result in the development of precision medicine tailored to a specific individual’s characteristics.

Funder

National Science Foundation Major Research Instrumentation

Centers for Medicare and Medicaid Services

Minority Research Grant Program

National Research Foundation of Korea

Korea government

National Institutes of Health

Publisher

Oxford University Press (OUP)

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3. Sex differences in cancer: epidemiology, genetics and therapy;In Kim,2018

4. Sexual dimorphism in the incidence of human cancers;Zheng;BMC Cancer,2019

5. Gender differences in asthma development and progression;Postma;Gend Med,2007

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