Last updated:
Author(s):
Marçal Comajoan Cara, Daniel Mas Montserrat, Alexander G. Ioannidis
Publish date:
1 January 2024
Journal:
Biocomputing
PubMed ID:
38160290

Abstract

The lack of diversity in genomic datasets, currently skewed towards individuals of European ancestry, presents a challenge in developing inclusive biomedical models. The scarcity of such data is particularly evident in labeled datasets that include genomic data linked to electronic health records. To address this gap, this paper presents PopGenAdapt, a genotype-to-phenotype prediction model which adopts semi-supervised domain adaptation (SSDA) techniques originally proposed for computer vision. PopGenAdapt is designed to leverage the substantial labeled data available from individuals of European ancestry, as well as the limited labeled and the larger amount of unlabeled data from currently underrepresented populations. The method is evaluated in underrepresented populations from Nigeria, Sri Lanka, and Hawaii for the prediction of several disease outcomes. The results suggest a significant improvement in the performance of genotype-to-phenotype models for these populations over state-of-the-art supervised learning methods, setting SSDA as a promising strategy for creating more inclusive machine learning models in biomedical research.Our code is available at https://github.com/AI-sandbox/PopGenAdapt.

Related projects

This proposal seeks access to UK Biobank data to support efforts to generate effect therapeutic hypotheses from genomic and hospital in-patient data. We have developed…

Institution:
Stanford University, United States of America

All projects