Large-scale public data reuse to model immunotherapy response and resistance

被引:0
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作者
Jingxin Fu
Karen Li
Wubing Zhang
Changxin Wan
Jing Zhang
Peng Jiang
X. Shirley Liu
机构
[1] Tongji University,Clinical Translational Research Center, Shanghai Pulmonary Hospital, School of Life Science and Technology
[2] Dana Farber Cancer Institute,Department of Data Sciences
[3] Harvard T.H. Chan School of Public Health,Tongji Hospital, School of life Science and Technology
[4] Tongji University,Present Address: Cancer Data Science Laboratory
[5] The Winsor School,undefined
[6] National Cancer Institute,undefined
[7] National Institutes of Health,undefined
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关键词
Immunotherapy; Immune evasion; Data integration; Web platform;
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摘要
Despite growing numbers of immune checkpoint blockade (ICB) trials with available omics data, it remains challenging to evaluate the robustness of ICB response and immune evasion mechanisms comprehensively. To address these challenges, we integrated large-scale omics data and biomarkers on published ICB trials, non-immunotherapy tumor profiles, and CRISPR screens on a web platform TIDE (http://tide.dfci.harvard.edu). We processed the omics data for over 33K samples in 188 tumor cohorts from public databases, 998 tumors from 12 ICB clinical studies, and eight CRISPR screens that identified gene modulators of the anticancer immune response. Integrating these data on the TIDE web platform with three interactive analysis modules, we demonstrate the utility of public data reuse in hypothesis generation, biomarker optimization, and patient stratification.
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