Comparing Clinical Judgment with MySurgeryRisk Algorithm for Preoperative Risk Assessment: A Pilot Study
Meghan Brennan, Sahil Puri, Tezcan Ozrazgat-Baslanti, Rajendra Bhat,, Zheng Feng, Petar Momcilovic, Xiaolin Li, Daisy Zhe Wang, Azra Bihorac

TL;DR
This pilot study shows that a machine-learning algorithm, MySurgeryRisk, predicts postoperative complications more accurately than physicians and improves their risk assessment after interaction.
Contribution
The study demonstrates that integrating a validated predictive algorithm enhances physician risk assessment accuracy for postoperative complications.
Findings
MySurgeryRisk achieved AUCs between 0.73 and 0.85.
Physicians' risk assessments improved after algorithm interaction.
Algorithm outperformed physicians in predicting most complications.
Abstract
Background: Major postoperative complications are associated with increased short and long-term mortality, increased healthcare cost, and adverse long-term consequences. The large amount of data contained in the electronic health record (EHR) creates barriers for physicians to recognize patients most at risk. We hypothesize, if presented in an optimal format, information from data-driven predictive risk algorithms for postoperative complications can improve physician risk assessment. Methods: Prospective, non-randomized, interventional pilot study of twenty perioperative physicians at a quarterly academic medical center. Using 150 clinical cases we compared physicians' risk assessment before and after interaction with MySurgeryRisk, a validated machine-learning algorithm predicting preoperative risk for six major postoperative complications using EHR data. Results: The area under the…
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