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Quantifying Cellular Heterogeneity in Cancer and the Microenvironment

In spite of recent advances in therapy, cancer remains a leading cause of death worldwide. Therapy response is often unpredictable and relapse frequently occurs. In many cases, this therapy resistance is attributed to subsets of therapy resistant cancer cells and surrounding stromal cells that support a resistant phenotype. A better understanding of cellular heterogeneity in cancer is therefore crucial in order to develop novel therapeutic strategies and improve patient outcomes. Experimental technologies like mass cytometry (CyTOF) allow for high-content, multi-parametric single-cell analysis of human tumor samples. However, analytical tools and workflows are still needed to standardize and automate the process of identifying and quantitatively describing cell populations in the resulting data. This dissertation presents a novel workflow for automated discovery and characterization of novel and rare cell subsets, quantification of cellular heterogeneity, and characterization of cells based on population-specific feature enrichment. First, a modular workflow is described that combines biaxial gating, dimensionality reduction, clustering, and hierarchically clustered heatmaps to maximize rare population discovery and to create an interpretable visualization of cell population characteristics. Next, a novel method is introduced for quantifying cellular heterogeneity based on two-dimensional mapping of cells in phenotypic space using tSNE analysis. Finally, an algorithmic method termed Marker Enrichment Modeling (MEM) is introduced that automatically quantifies population-specific feature enrichment and generates descriptive labels for cell populations based on their feature enrichment scores. MEM analysis is shown to identify features important to cell identity across multiple datasets, and MEM labels are effectively used to compare populations of cells across tissue types, experiments, institutions, and platforms. Going forward, the tools presented here lay the groundwork for novel computational methods for machine learning of cell identity and registering cell populations across studies or clinical endpoints. Automated methods for identifying and describing cell populations will enable rapid discovery of biologically and clinically relevant cells and contribute to the development of novel diagnostic, prognostic, and therapeutic approaches to cancer and other diseases.

Identiferoai:union.ndltd.org:VANDERBILT/oai:VANDERBILTETD:etd-11282016-171056
Date29 November 2016
CreatorsDiggins, Kirsten Elizabeth
ContributorsTodd D. Giorgio, Ph.D., Vito Quaranta, M.D., Jonathan M. Irish, Ph.D., Melissa Skala, Ph.D.
PublisherVANDERBILT
Source SetsVanderbilt University Theses
LanguageEnglish
Detected LanguageEnglish
Typetext
Formatapplication/pdf
Sourcehttp://etd.library.vanderbilt.edu/available/etd-11282016-171056/
Rightsunrestricted, I hereby certify that, if appropriate, I have obtained and attached hereto a written permission statement from the owner(s) of each third party copyrighted matter to be included in my thesis, dissertation, or project report, allowing distribution as specified below. I certify that the version I submitted is the same as that approved by my advisory committee. I hereby grant to Vanderbilt University or its agents the non-exclusive license to archive and make accessible, under the conditions specified below, my thesis, dissertation, or project report in whole or in part in all forms of media, now or hereafter known. I retain all other ownership rights to the copyright of the thesis, dissertation or project report. I also retain the right to use in future works (such as articles or books) all or part of this thesis, dissertation, or project report.

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