MySurgeryRisk: Development and Validation of a Machine-learning Risk Algorithm for Major Complications and Death After Surgery
Annals of Surgery2018Vol. 269(4), pp. 652–662
Citations Over TimeTop 1% of 2018 papers
Azra Bihorac, Tezcan Ozrazgat‐Baslanti, Ashkan Ebadi, Amir Motaei, Loutfy H. Madkour, P. M. Pardalos, Gloria Lipori, William R. Hogan, Philip A. Efron, Frederick A. Moore, Lyle L. Moldawer, Daisy Zhe Wang, Charles Hobson, Parisa Rashidi, Xiaolin Li, Petar Momčilović
Abstract
We constructed an automated predictive analytics framework for machine-learning algorithm with high discriminatory ability for assessing the risk of surgical complications and death using readily available preoperative electronic health records data. The feasibility of this novel algorithm implemented in real time clinical workflow requires further testing.
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