Focus Areas in the Genomic Medicine Cycle
Major leadership positions
Assistant Professor of Psychiatry
Assistant Investigator
MGH Department/Division
Department of Psychiatry
MGH Unit(s)
Psychiatric and Neurodevelopmental Genetics Unit
Overview
The Ge Lab develops new computational approaches to advance precision medicine.
Research in the Ge Lab broadly focuses on statistical genetics and neuroimaging genetics. We develop new statistical, computational and machine learning methods to analyze and integrate large-scale genomic, neuroimaging, behavioral and electronic health records data, in order to (i) understand the genetic architecture of human complex traits and common diseases; (ii) unravel the biological basis of brain structure and function, and the genetic and neural underpinnings of mental disorders; and (iii) improve individualized prediction of disease risk, development, severity and progression in clinical settings.
Priority Projects
Genomic Prediction. Building reliable and accurate genomic prediction models may improve risk stratification, diagnostic accuracy, prevention of common diseases and prediction of therapeutic outcomes. We develop robust and computationally efficient algorithms to improve the predictive performance of polygenic risk scores in individuals with diverse genetic and sociocultural backgrounds and to facilitate the implementation of polygenic risk scores in clinical settings.
Statistical Genetics. We develop scalable and accurate statistical genetics methods and leverage global biobanks and electronic health records to dissect the genetic architecture of human complex traits and diseases in populations of diverse genetic ancestries, to facilitate the discovery and mapping of common and rare disease-causing variants, and to improve individualized prediction of disease risk and trajectories.
Neuroimaging Genetics. Neurological and psychiatric disorders often emerge from variations in brain structure and function. We develop statistical and computational techniques to explore the genetic underpinnings of individual differences in high-dimensional phenotypes derived from structural and functional brain magnetic resonance imaging (MRI) scans, and integrate large-scale neuroimaging, genetic, transcriptomic, clinical and behavioral data to understand the biological basis of brain disorders.
Lab Members
Name: | Email: | Role: |
---|---|---|
Justin Tubbs | jtubbs [@] mgh.harvard.edu | Research Fellow |
Travis Mallard | tmallard [@] mgh.harvard.edu | Research Fellow |
Kai Yuan | kyuan [@] broadinstitute.org | Research Fellow |
Yingzhe Zhang | yzhang1 [@] hsph.harvard.edu | Graduate Student |