精确肿瘤学
精密医学
仿形(计算机编程)
临床试验
个性化医疗
肿瘤科
口译(哲学)
医学
临床实习
计算生物学
临床肿瘤学
生物信息学
内科学
医学物理学
计算机科学
病理
生物
癌症
家庭医学
程序设计语言
操作系统
作者
Brendan Reardon,Nathanael D. Moore,Nicholas Moore,Eric Kofman,Saud H. AlDubayan,Alexander T. M. Cheung,Jake R. Conway,Haitham Elmarakeby,Alma Imamović,Sophia C. Kamran,Tanya E. Keenan,Daniel Keliher,David J. Konieczkowski,David Liu,Kent W. Mouw,Jihye Park,Natalie I. Vokes,Felix Dietlein,Eliezer M. Van Allen
出处
期刊:Nature cancer
[Nature Portfolio]
日期:2021-09-30
卷期号:2 (10): 1102-1112
被引量:29
标识
DOI:10.1038/s43018-021-00243-3
摘要
Abstract Tumor molecular profiling of single gene-variant (‘first-order’) genomic alterations informs potential therapeutic approaches. Interactions between such first-order events and global molecular features (for example, mutational signatures) are increasingly associated with clinical outcomes, but these ‘second-order’ alterations are not yet accounted for in clinical interpretation algorithms and knowledge bases. We introduce the Molecular Oncology Almanac (MOAlmanac), a paired clinical interpretation algorithm and knowledge base to enable integrative interpretation of multimodal genomic data for point-of-care decision making and translational-hypothesis generation. We benchmarked MOAlmanac to a first-order interpretation method across multiple retrospective cohorts and observed an increased number of clinical hypotheses from evaluation of molecular features and profile-to-cell line matchmaking. When applied to a prospective precision oncology trial cohort, MOAlmanac nominated a median of two therapies per patient and identified therapeutic strategies administered in 47% of patients. Overall, we present an open-source computational method for integrative clinical interpretation of individualized molecular profiles.
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