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From function to translation: Decoding genetic susceptibility to human diseases via artificial intelligence

Erping Long, Peixing Wan, Qingyu Chen, Zhiyong Lu, Jiyeon Choi

2023Cell Genomics20 citationsDOIOpen Access PDF

Abstract

While genome-wide association studies (GWAS) have discovered thousands of disease-associated loci, molecular mechanisms for a considerable fraction of the loci remain to be explored. The logical next steps for post-GWAS are interpreting these genetic associations to understand disease etiology (GWAS functional studies) and translating this knowledge into clinical benefits for the patients (GWAS translational studies). Although various datasets and approaches using functional genomics have been developed to facilitate these studies, significant challenges remain due to data heterogeneity, multiplicity, and high dimensionality. To address these challenges, artificial intelligence (AI) technology has demonstrated considerable promise in decoding complex functional datasets and providing novel biological insights into GWAS findings. This perspective first describes the landmark progress driven by AI in interpreting and translating GWAS findings and then outlines specific challenges followed by actionable recommendations related to data availability, model optimization, and interpretation, as well as ethical concerns.

Topics & Concepts

Genome-wide association studyGenetic associationData scienceComputer scienceComputational biologyArtificial intelligenceBiologyGeneticsSingle-nucleotide polymorphismGeneGenotypeGenetic Associations and EpidemiologyBioinformatics and Genomic NetworksGenomics and Rare Diseases
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