Modern biotechnologies have revolutionized human genomics, allowing researchers to query across the ~3.2 billion nucleotide base positions that form the human genome. The ability to detect genetic variants in a high- throughput manner has revealed specific alleles that contribute to human phenotypic variation, including those associated with disease risk. However, the vast majority of studies have focus exclusively on the portion of the genome located in the nucleus. Largely ignored is the DNA contained in the cell's mitochondria (mtDNA), which harbors the genes encoding proteins that are responsible for generating most of the cell's energy. Importantly, the large and variable numbers of mitochondrial chromosome copies per cell can result in an mtDNA variant co- existing with a wild-type allele, a condition known as heteroplasmy. The variant's heteroplasmy level can shift dramatically across generations, as well as spatially/temporally within the same individual. With new data sources, it is possible for the first time to develop highly accurate models of the processes underlying mitochondrial genome dynamics. Since these processes have hierarchical aspects, Bayesian hierarchical modeling is an ideal framework within which to develop such models. Given this, we propose to pursue the following three Specific Aims: 1) Develop a flexible Bayesian modeling framework to capture mtDNA dynamics; 2) Apply the framework to large data sets from a variety of clinically- relevant settings; and 3) Comprehensive model testing, experimental validation, and implementation. Mitochondrial DNA mutations have been implicated in disease phenotypes including diabetes, autism, encephalomyopathies, stroke, vision loss, cancer, and many others. As additional relevant data become available, further elucidation of the impact of mtDNA variation on complex phenotypes is possible. Such insights are likely to lead to important discoveries in genetics as well as medical applications. This project will facilitate advances by providing reliable computational infrastructure for efficient and accurate modeling of mtDNA mutational dynamics. The resulting software will be implemented and disseminated in the free and portable statistical computing platform R.

Public Health Relevance

The proposed research will facilitate a better understanding of how specific types of DNA mutations can increase or decrease in abundance through inheritance, human development, and human aging. Such understanding may lead to novel ways to treat individuals carrying certain disease-causing mutations.

Agency
National Institute of Health (NIH)
Institute
National Library of Medicine (NLM)
Type
Research Project (R01)
Project #
1R01LM013067-01A1
Application #
9886304
Study Section
Biomedical Library and Informatics Review Committee (BLR)
Program Officer
Ye, Jane
Project Start
2020-05-01
Project End
2024-02-29
Budget Start
2020-05-01
Budget End
2021-02-28
Support Year
1
Fiscal Year
2020
Total Cost
Indirect Cost
Name
Case Western Reserve University
Department
Genetics
Type
Schools of Medicine
DUNS #
077758407
City
Cleveland
State
OH
Country
United States
Zip Code
44106