Intratumor heterogeneity is a major obstacle toward understanding and treatment of cancers. We have analyzed cellular genetic and phenotypic heterogeneity in breast tumors and found that higher pre-treatment genetic diversity predicts therapy resistance and distant metastases are the most diverse. We also developed an experimental model of clonal heterogeneity and shown that polyclonal tumors grow faster and are more metastatic, the tumor-driver clone can be a minor subpopulation acting via non-cell-autonomous mechanisms, a dominant clone can outcompete the tumor-driver minor clone leading to tumor collapse, and that cancer therapies intensify clonal competition potentially leading to inadvertent acceleration of disease progression. These data questions current views of how to define cancer-driving events in clinical samples and how to design treatment based on this knowledge. Based on our preliminary data we hypothesize that clonal heterogeneity within tumors drives metastatic progression and therapeutic resistance and that understanding the molecular and cellular mechanisms underlying clonal interactions within tumors will improve the clinical management of breast cancer patients. The goal of this proposal is to test these hypotheses using a multidisciplinary approach applied to clinical samples and experimental models. We will utilize a model of clonal heterogeneity of breast cancer that we have developed and will generate new ones from patient samples. We will analyze the composition of primary and metastatic tumors in unperturbed states and following therapies and investigate molecular and cellular mechanisms by which clonal interactions promote tumorigenesis using comprehensive molecular and mathematical approaches. We will explore the role of non-cell-autonomous tumor drivers and clonal interference in clinical breast tumors by analyzing tumors at different progression stages and pre- and post-treatment samples using comprehensive and single cell profiling approaches coupled with mechanistic studies in xenograft models. We will design novel treatment strategies for heterogeneous tumors. Tumor progression is a somatic evolution following Darwinian principles. Despite being universally accepted, current approaches to the study and treatment of cancers do not utilize and build on these evolutionary principles. The proposed studies will address this void by the combined analysis of experimental and clinical breast tumors. Our results will help the design of more effective therapeutic strategies for heterogeneous tumors.

Public Health Relevance

Tumor heterogeneity is a major obstacle in the understanding and treatment of cancer, yet it can also be used to predict tumor evolution and individualized treatment strategies. The proposal aims at delineating tumor evolutionary paths in experimental and in clinical breast cancer using multidisciplinary approaches.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Unknown (R35)
Project #
5R35CA197623-05
Application #
9745558
Study Section
Special Emphasis Panel (ZCA1)
Program Officer
Hildesheim, Jeffrey
Project Start
2015-08-01
Project End
2022-07-31
Budget Start
2019-08-01
Budget End
2020-07-31
Support Year
5
Fiscal Year
2019
Total Cost
Indirect Cost
Name
Dana-Farber Cancer Institute
Department
Type
DUNS #
076580745
City
Boston
State
MA
Country
United States
Zip Code
02215
Witwicki, Robert M; Ekram, Muhammad B; Qiu, Xintao et al. (2018) TRPS1 Is a Lineage-Specific Transcriptional Dependency in Breast Cancer. Cell Rep 25:1255-1267.e5
Hinohara, Kunihiko; Wu, Hua-Jun; Vigneau, Sébastien et al. (2018) KDM5 Histone Demethylase Activity Links Cellular Transcriptomic Heterogeneity to Therapeutic Resistance. Cancer Cell 34:939-953.e9
Maley, Carlo C; Aktipis, Athena; Graham, Trevor A et al. (2017) Classifying the evolutionary and ecological features of neoplasms. Nat Rev Cancer 17:605-619
Gil Del Alcazar, Carlos R; Huh, Sung Jin; Ekram, Muhammad B et al. (2017) Immune Escape in Breast Cancer During In Situ to Invasive Carcinoma Transition. Cancer Discov 7:1098-1115
Marusyk, Andriy; Tabassum, Doris P; Janiszewska, Michalina et al. (2016) Spatial Proximity to Fibroblasts Impacts Molecular Features and Therapeutic Sensitivity of Breast Cancer Cells Influencing Clinical Outcomes. Cancer Res 76:6495-6506