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Center for Computational Biology and Bioinformatics Computational modeling of cancer micro-environment by using large scale data analysis Chi Zhang, Ph.D. Center for Computational Biology and Bioinformatics Department of Medical and Molecular Genetics 09/28/2016 1/12 Research Interests Computational modeling of the: 1) Tissue level characteristics 2) Cellular and biochemical level changes (metabolism) 3) Genomics alterations by integrative analysis of multiple omics data types, to i) Identify key biological mechanisms related to cancer initiation, progression and metastasis. ii) Predict biomarkers for diagnosis and selection of therapies Google: Chi Zhang, Indiana University Webpage: csbl.bmb.uga.edu/~zhangchi/ 2/12 Study cancer micro-environment through omics data modeling Cancer microenvironment Cell line and animal models: i)1.Cellular characteristics Micro-environment of ii) Responses to certain treatment real cancer tissue vs. iii) Responses under certain conditions … experimental conditions 2. Highly unstable microenvironmental factors Immune response Oxygen level Acidity level H Douglas, and R Weinberg. Cell (2000) 3/12 Decipher the cell components in tissue samples by transcriptomics data It is critical to decipher the signals from different cell • Interactionscomponents among the cancer cells,tissue immune cells and in the samples stromal cells, play critical roles in the progression of cancer. Lisa M. Coussens and Zena Werb, Nature, (2002) 4/12 Tissue based omics data g1 g2 g3 g4 g5 …… T cell Cancer cell Macrophage Tissue gene expression • By a regression based cell deconvolution analysis, we can solve (estimate) the relative proportion of each cell type in each tissue sample. 5/12 Applications in colon cancer and Implications • A subgroup of colon cancer samples • Elevated CD4+ T cells, tumor associated macrophages, neutrophils • Decreased CD8+ T cells • Highly mutated genome • High level oxidative stress (may cause DNA damage) Over expressed NADPH oxidase are highly correlated with the oxidative stress responsive genes and the predicted immune cell proportions. 6/12 Linking the micro-environmental alterations to genomic mutations • Gain or loss of functions led by a certain mutation • Example: CtBP-binding region APC gene Beta-Catenin-binding region Cell Migration Cell Adhesion Control of Proliferation Chromosomal segregation • Collective effect of multiple mutations It is critical to comprehensively infer the functions of each mutation and their collective effect A bi-clustering based data integration approach: Genomics, Transcriptomics and Clinical Data 7/12 Example: APC mutation in colon cancer • A possible functional change due to APC mutations in the 14th and 15th exons. Other samples with APC mutation Samples APC mutation profile in colon cancer samples In the bi-cluster Exon and nucleotide positions 8/12 Functional changes and prognosis of the concurrent mutations Gene Functions: 1. Innate immune response 2. Tumor associated macrophage 3. T cell activation 4. Interferon gamma signaling 5. Steroid hormone metabolism 9/12 Applications on more cancer types • We have studied: Acute Myeloid Leukemia Dr. Kapur 21Reuben well studied cancer associated genes. 20 other frequently mutated genes. Colorectal cancer 18 cancer types. Outcome of chemotherapy ~40,000 significant biclusters have been identified 10/12 Future directions Center for Computational Biology and Bioinformatics Cell line data: Mutation Gene expression Dr. Lijun Chen Drug response Predict for possible drugs Mutation: Druggable target on protein tertiary structure Dr. Samy Meroueh Linking the results to cancer microenvironment: Elucidate how certain mutations are selected More data types Dr. Chi Zhang Mutations on a certain exon: Alternative splicing A dysfunctioned isoform Development of new algorithm, Machine Learning Dr. Lang Li Dr. Yunlong Liu Dr. Ning Xia Clinical Trial Outcome with respect to certain clinical Dr. Yong Zang features 11/12 Thank you! You are welcomed to do rotation in my lab! Chi Zhang [email protected] Suit 5000 (Room 5021), HITS Building csbl.bmb.uga.edu/~zhangchi 12/12