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Statistical Methods for Next Generation Genome-Wide Association Studies (2023-2026)

Abstract

This project aims to develop cutting-edge statistical methods to analyse large genomic datasets and identify genetic variants associated with inter-individual differences in various human traits. Knowledge of trait-associated DNA variants is instrumental in understanding how natural selection has shaped human traits. By integrating genomic data from diverse and underrepresented populations, this project further expects to contribute to the equitable use of genomic technologies in humans, regardless of geographical origins. Expected outcomes of this research include novel analysis methods and software tools, which should broadly and significantly benefit gene discovery in other species, including those of agricultural relevance.

Experts

Associate Professor Loic Yengo

ARC Future Fellow - GL
Institute for Molecular Bioscience
Loic Yengo
Loic Yengo