The overall goal of this project is to develop computational methods for studying tumor growth, and to relate growth parameters to patient characteristics and prognosis. We hypothesize that tumor growth parameters will allow us to define cancer phenotypes that help resolve cancer heterogeneity, and thereby improve power in analyses that try to link germline genetic variation and internal/external environment to phenotypic variation (Projects 1 & 3). When discovered, human tumors vary in size and extent of spread. Although it is impossible to look directly back in time to see how the tumor grew, it is possible to reconstruct the past with ?molecular phylogeny?. The approach is analogous to reconstructing the genealogy of species using DNA sequences. In previous work, we developed a molecular phylogeny approach to study human cancers using DNA methylation patterns and found that a relatively simple exponential growth model fits most colorectal cancers. We now propose to test and further develop the model by integrating new independent molecular data types. The experimental data sample glands from opposite tumor sides and measures passenger DNA methylation patterns, chromosome copy number, and point mutations. Each data type provides `molecular clocks' with different rates of sequence evolution, such that their joint analysis permits our setting a new goal of characterizing what happens during the first few cell divisions following transformation, even before a tumor is clinically detectable. We hypothesize that abnormal cell mobility, a prerequisite for subsequent invasion and metastasis, is a phenotype that can be measured immediately after tumor initiation in some cancers but not benign tumors (?Born to be Bad?). This work will provide a new understanding of intratumor heterogeneity and cancer cell behavior, and might well be the catalyst for the development of new treatment or prognostic paradigms. We will use approximate Bayesian computation to estimate model parameters in this high-dimensional setting. This requires the development of software, and implementation of methods for choosing an optimal set of statistics and corresponding weights for parameter inference. These tools will be applicable to any ABC analysis, and not just our own. As such, we will make this software publicly available to the wider community. The present application uses data from colon cancer to develop the methods and software tools for inferring tumor growth, but the approach is generalizable to any adenocarcinomas, or tumors with glandular structure (e.g. prostate, kidney, lung, breast and more).

Public Health Relevance

Despite decades of research, cancer remains a significant health problem. A fundamental knowledge gap, too often overlooked, is that we know few details of the actual patterns of tumor growth. We use ?molecular phylogeny? to study a cancer's natural history, looking back in time to track the genomes of single tumor cells as they divide and move through time and space, and characterize early cell behavior that might predict cancer aggressiveness and assist clinical decision-making.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Program Projects (P01)
Project #
5P01CA196569-05
Application #
9991776
Study Section
Special Emphasis Panel (ZCA1)
Project Start
Project End
Budget Start
2020-07-01
Budget End
2021-06-30
Support Year
5
Fiscal Year
2020
Total Cost
Indirect Cost
Name
University of Southern California
Department
Type
DUNS #
072933393
City
Los Angeles
State
CA
Country
United States
Zip Code
90089
Ryser, Marc D; Min, Byung-Hoon; Siegmund, Kimberly D et al. (2018) Spatial mutation patterns as markers of early colorectal tumor cell mobility. Proc Natl Acad Sci U S A 115:5774-5779
Liu, Jie; Liang, Gangning; Siegmund, Kimberly D et al. (2018) Data integration by multi-tuning parameter elastic net regression. BMC Bioinformatics 19:369
Moss, Lilit C; Gauderman, William J; Lewinger, Juan Pablo et al. (2018) Using Bayes model averaging to leverage both gene main effects and G?×? E interactions to identify genomic regions in genome-wide association studies. Genet Epidemiol :
Ritz, Beate R; Chatterjee, Nilanjan; Garcia-Closas, Montserrat et al. (2017) Lessons Learned From Past Gene-Environment Interaction Successes. Am J Epidemiol 186:778-786
Gauderman, W James; Mukherjee, Bhramar; Aschard, Hugues et al. (2017) Update on the State of the Science for Analytical Methods for Gene-Environment Interactions. Am J Epidemiol 186:762-770
Thomas, Duncan C (2017) Estimating the Effect of Targeted Screening Strategies: An Application to Colonoscopy and Colorectal Cancer. Epidemiology 28:470-478
Rao, D C; Sung, Yun J; Winkler, Thomas W et al. (2017) Multiancestry Study of Gene-Lifestyle Interactions for Cardiovascular Traits in 610 475 Individuals From 124 Cohorts: Design and Rationale. Circ Cardiovasc Genet 10:
The Gene Ontology Consortium (2017) Expansion of the Gene Ontology knowledgebase and resources. Nucleic Acids Res 45:D331-D338
Mi, Huaiyu; Huang, Xiaosong; Muruganujan, Anushya et al. (2017) PANTHER version 11: expanded annotation data from Gene Ontology and Reactome pathways, and data analysis tool enhancements. Nucleic Acids Res 45:D183-D189
Gref, Anna; Merid, Simon K; Gruzieva, Olena et al. (2017) Genome-Wide Interaction Analysis of Air Pollution Exposure and Childhood Asthma with Functional Follow-up. Am J Respir Crit Care Med 195:1373-1383

Showing the most recent 10 out of 28 publications