Machine Learning Approaches to Predict 6-Month Mortality Among Patients With Cancer
Author(s) -
Ravi B. Parikh,
Christopher R. Manz,
Corey Chivers,
Susan Harkness Regli,
Jennifer Braun,
Michael Draugelis,
Lynn M. Schuchter,
Lawrence N. Shulman,
Amol S. Navathe,
Mitesh S. Patel,
Nina O’Connor
Publication year - 2019
Publication title -
jama network open
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.278
H-Index - 39
ISSN - 2574-3805
DOI - 10.1001/jamanetworkopen.2019.15997
Subject(s) - medicine , cancer , logistic regression , cohort , population , machine learning , environmental health , computer science
Key Points Question Can machine learning algorithms identify oncology patients at risk of short-term mortality to inform timely conversations between patients and physicians regrading serious illness? Findings In this cohort study of 26 525 patients seen in oncology practices within a large academic health system, machine learning algorithms accurately identified patients at high risk of 6-month mortality with good discrimination and positive predictive value. When the gradient boosting algorithm was applied in real time, most patients who were classified as having high risk were deemed appropriate by oncology clinicians for a conversation regarding serious illness. Meaning In this study, machine learning algorithms accurately identified patients with cancer who were at risk of 6-month mortality, suggesting that these models could facilitate more timely conversations between patients and physicians regarding goals and values.
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