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Polygenic Risk Score

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Entries

DL for PRS Survey (DL PRS Survey)

AI GWAS Polygenic Risk Score Deep Learning Survey Review Brief Bioinform
PUBMED_LINK
40802796
FULL NAME
A Survey on Deep Learning for Polygenic Risk Scores
DESCRIPTION
A comprehensive survey of deep learning approaches for polygenic risk scores (PRS). Reviews how neural networks can model non-linear relationships between genetic variants and disease risk, going beyond traditional linear PRS methods, and assesses their performance across different traits and architectures. Published in Briefings in Bioinformatics.
TITLE
A survey on deep learning for polygenic risk scores.
ABSTRACT
Polygenic risk scores (PRS) combine the effects of multiple genetic variants to predict an individual's genetic predisposition to a disease. PRS typically rely on linear models, which assume that all genetic variants act independently. There is growing interest in applying deep learning neural networks to model PRS given their ability to model non-linear relationships. We conducted a survey of the literature to investigate how neural networks are being applied to PRS.
DOI
10.1093/bib/bbaf373