| Literature DB >> 35121878 |
Brendan Reardon1,2, Nathanael D Moore1,2,3,4,5, Nicholas S Moore1,2,6, Eric Kofman1,2,7,8, Saud H AlDubayan1,2,9,10, Alexander T M Cheung1,2,11, Jake Conway1,2,12, Haitham Elmarakeby1,2,13, Alma Imamovic2,14, Sophia C Kamran2,15, Tanya Keenan1,2, Daniel Keliher1,2,16, David J Konieczkowski2,17,18,19, David Liu1,2, Kent W Mouw2,6,17, Jihye Park1,2, Natalie I Vokes1,2,20, Felix Dietlein1,2, Eliezer M Van Allen21,22.
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.Entities:
Mesh:
Year: 2021 PMID: 35121878 PMCID: PMC9082009 DOI: 10.1038/s43018-021-00243-3
Source DB: PubMed Journal: Nat Cancer ISSN: 2662-1347