BACKGROUND: Epithelial ovarian cancer (EOC) is the fifth leading cause of cancer death among women in the United States (5Â % of cancer deaths). The standard treatment for patients with advanced EOC is initial debulking surgery followed by carboplatin-paclitaxel combination chemotherapy. Unfortunately, with chemotherapy most patients relapse and die resulting in a five-year overall survival around 45Â %. Thus, finding novel therapeutics for treating EOC is essential. Connectivity Mapping (CMAP) has been used widely in cancer drug discovery and generally has relied on cancer cell line gene expression and drug phenotype data. Therefore, we took a CMAP approach based on tumor information and clinical endpoints from high grade serous EOC patients. METHODS: We determined tumor gene expression signatures (e.g., sets of genes) associated with time to recurrence (with and without adjustment for additional clinical covariates) among patients within TCGA (nâ=â407) and, separately, from the Mayo Clinic (nâ=â326). Each gene signature was inputted into CMAP software (Broad Institute) to determine a set of drugs for which our signature "matches" the "reference" signature, and drugs that overlapped between the CMAP analyses and the two studies were carried forward for validation studies involving drug screens on a set of 10 EOC cell lines. RESULTS: Of the 11 drugs carried forward, five (mitoxantrone, podophyllotoxin, wortmannin, doxorubicin, and 17-AAG) were known a priori to be cytotoxics and were indeed shown to effect EOC cell viability. CONCLUSIONS: Future research is needed to investigate the use of these CMAP and similar analyses for determining combination therapies that might work synergistically to kill cancer cells and to apply this in silico bioinformatics approach using clinical outcomes to other cancer drug screening studies.
Drug discovery using clinical outcome-based Connectivity Mapping: application to ovarian cancer.
基于临床结果的连接映射进行药物发现:在卵巢癌中的应用
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作者:Raghavan Rama, Hyter Stephen, Pathak Harsh B, Godwin Andrew K, Konecny Gottfried, Wang Chen, Goode Ellen L, Fridley Brooke L
| 期刊: | BMC Genomics | 影响因子: | 3.700 |
| 时间: | 2016 | 起止号: | 2016 Oct 19; 17(1):811 |
| doi: | 10.1186/s12864-016-3149-5 | 研究方向: | 肿瘤 |
| 疾病类型: | 卵巢癌 | ||
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