| Literature DB >> 35121948 |
Olivier Morin1, Martin Vallières2,3,4, Steve Braunstein2, Jorge Barrios Ginart2, Taman Upadhaya2, Henry C Woodruff5,6, Alex Zwanenburg7,8,9,10,11, Avishek Chatterjee3,5,6, Javier E Villanueva-Meyer12, Gilmer Valdes2,13, William Chen2, Julian C Hong2,14, Sue S Yom2, Timothy D Solberg2, Steffen Löck7, Jan Seuntjens3, Catherine Park2, Philippe Lambin5,6.
Abstract
Despite widespread adoption of electronic health records (EHRs), most hospitals are not ready to implement data science research in the clinical pipelines. Here, we develop MEDomics, a continuously learning infrastructure through which multimodal health data are systematically organized and data quality is assessed with the goal of applying artificial intelligence for individual prognosis. Using this framework, currently composed of thousands of individuals with cancer and millions of data points over a decade of data recording, we demonstrate prognostic utility of this framework in oncology. As proof of concept, we report an analysis using this infrastructure, which identified the Framingham risk score to be robustly associated with mortality among individuals with early-stage and advanced-stage cancer, a potentially actionable finding from a real-world cohort of individuals with cancer. Finally, we show how natural language processing (NLP) of medical notes could be used to continuously update estimates of prognosis as a given individual's disease course unfolds.Entities:
Mesh:
Year: 2021 PMID: 35121948 DOI: 10.1038/s43018-021-00236-2
Source DB: PubMed Journal: Nat Cancer ISSN: 2662-1347