Date of Award

12-2024

Document Type

Dissertation

Degree Name

Doctor of Philosophy (PhD)

Department

School of Computing

Committee Chair/Advisor

F Alex Feltus

Committee Member

Alexander V. Alekseyenko

Committee Member

Bethany Wolf

Committee Member

Fabio Morgante

Committee Member

Miriam Konkel

Abstract

Understanding partial genetic backgrounds illuminates the genetic architecture of complex traits and diseases, revealing how diverse genetic backgrounds contribute to phenotypic diversity. With this approach we could advance personalized medicine by identifying population-specific variants affecting drug metabolism, tailoring medical treatments to individual genetic profiles. Additionally, it offers evolutionary insights into human history, shedding light on past migrations and the spread of genetic traits. This research leverages cutting-edge statistical genetics techniques and novel machine learning approaches to efficiently analyze extensive population genomic datasets, distilling complex admixture signals into meaningful genetic markers.

The study introduces Admix-AI, an innovative convolutional neural network-based tool for accurate classification of admixed genetic backgrounds. This computational advancement enables more precise identification of ancestry-specific genetic variants associated with disease risk and treatment response. The application of Admix-AI to self-reported datasets reveals critical insights into the inaccuracies of labels across genetic backgrounds.

Furthermore, this work is one of the first to investigate the influence of Neanderthal-derived genetic variations on autism spectrum disorders, uncovering significant enrichment of rare variants in autistic individuals across multiple genetic backgrounds. These finding sheds light on the evolutionary origins of neurodevelopmental disorders and the ongoing impact of ancient admixture events on human health.

Share

COinS
 
 

To view the content in your browser, please download Adobe Reader or, alternately,
you may Download the file to your hard drive.

NOTE: The latest versions of Adobe Reader do not support viewing PDF files within Firefox on Mac OS and if you are using a modern (Intel) Mac, there is no official plugin for viewing PDF files within the browser window.