Development and Validation of a Machine Learning Model to Identify Patients Before Surgery at High Risk for Postoperative Adverse Events

被引:19
|
作者
Mahajan, Aman [1 ]
Esper, Stephen [1 ]
Oo, Thien Htay [2 ]
McKibben, Jeffery [2 ]
Garver, Michael [2 ]
Artman, Jamie [1 ]
Klahre, Cynthia [1 ]
Ryan, John [3 ]
Sadhasivam, Senthilkumar [1 ]
Holder-Murray, Jennifer [3 ]
Marroquin, Oscar C. [2 ,4 ]
机构
[1] Univ Pittsburgh, Sch Med, Dept Anesthesiol & Perioperat Med, Pittsburgh, PA USA
[2] Univ Pittsburgh, Dept Clin Analyt, Med Ctr, Pittsburgh, PA USA
[3] Univ Pittsburgh, Dept Surg, Med Ctr, Pittsburgh, PA USA
[4] Univ Pittsburgh, Heart & Vasc Inst, Med Ctr, Pittsburgh, PA USA
关键词
CARDIAC RISK; HOSPITAL PARTICIPATION; SURGICAL OUTCOMES; AMERICAN-COLLEGE; CALCULATOR; COMPLICATIONS; ASSOCIATION; PREDICTION; PROGRAM; PREHABILITATION;
D O I
10.1001/jamanetworkopen.2023.22285
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Importance Identifying patients at high risk of adverse outcomes prior to surgery may allow for interventions associated with improved postoperative outcomes; however, few tools exist for automated prediction. Objective To evaluate the accuracy of an automated machine-learning model in the identification of patients at high risk of adverse outcomes from surgery using only data in the electronic health record. Design, Setting, and Participants This prognostic study was conducted among 1477561 patients undergoing surgery at 20 community and tertiary care hospitals in the University of Pittsburgh Medical Center (UPMC) health network. The study included 3 phases: (1) building and validating a model on a retrospective population, (2) testing model accuracy on a retrospective population, and (3) validating the model prospectively in clinical care. A gradient-boosted decision tree machine learning method was used for developing a preoperative surgical risk prediction tool. The Shapley additive explanations method was used for model interpretability and further validation. Accuracy was compared between the UPMC model and National Surgical Quality Improvement Program (NSQIP) surgical risk calculator for predicting mortality. Data were analyzed from September through December 2021. Exposure Undergoing any type of surgical procedure. Main Outcomes and Measures Postoperative mortality and major adverse cardiac and cerebrovascular events (MACCEs) at 30 days were evaluated. Results Among 1477561 patients included in model development (806148 females [54.5%; mean [SD] age, 56.8 [17.9] years), 1016966 patient encounters were used for training and 254242 separate encounters were used for testing the model. After deployment in clinical use, another 206353 patients were prospectively evaluated; an additional 902 patients were selected for comparing the accuracy of the UPMC model and NSQIP tool for predicting mortality. The area under the receiver operating characteristic curve (AUROC) for mortality was 0.972 (95% CI, 0.971-0.973) for the training set and 0.946 (95% CI, 0.943-0.948) for the test set. The AUROC for MACCE and mortality was 0.923 (95% CI, 0.922-0.924) on the training and 0.899 (95% CI, 0.896-0.902) on the test set. In prospective evaluation, the AUROC for mortality was 0.956 (95% CI, 0.953-0.959), sensitivity was 2148 of 2517 patients (85.3%), specificity was 186286 of 203836 patients (91.4%), and negative predictive value was 186286 of 186655 patients (99.8%). The model outperformed the NSQIP tool as measured by AUROC (0.945 [95% CI, 0.914-0.977] vs 0.897 [95% CI, 0.854-0.941], for a difference of 0.048), specificity (0.87 [95% CI, 0.83-0.89] vs 0.68 [95% CI, 0.65-0.69]), and accuracy (0.85 [95% CI, 0.82-0.87] vs 0.69 [95% CI, 0.66, 0.72]). Conclusions and Relevance This study found that an automated machine learning model was accurate in identifying patients undergoing surgery who were at high risk of adverse outcomes using only preoperative variables within the electronic health record, with superior performance compared with the NSQIP calculator. These findings suggest that using this model to identify patients at increased risk of adverse outcomes prior to surgery may allow for individualized perioperative care, which may be associated with improved outcomes.
引用
收藏
页数:12
相关论文
共 50 条
  • [1] Machine learning and postoperative complications: Determining risk before surgery in patients with cancer
    Hernandez, Matthew C.
    Chen, Chen
    Carlin, Cameron S.
    Seth, Naini S.
    Yuh, Bertram
    Eftekhari, Zahra
    Nguyen, Andrew
    Lai, Lily L.
    JOURNAL OF CLINICAL ONCOLOGY, 2023, 41 (16)
  • [2] Development and Validation of a Machine Learning Model to Phenotype Surgical Patients at Risk of Developing Postoperative Sepsis
    Walters, Emily
    Hill, Brian
    Cannesson, Maxime
    ANESTHESIA AND ANALGESIA, 2020, 130 : 959 - 959
  • [3] Development and validation of an interpretable machine learning model to predict major adverse cardiovascular events after noncardiac surgery in geriatric patients: a prospective study
    Yu, Jiayu
    Peng, Xiran
    Zhou, Ruihao
    Zhu, Tao
    Hao, Xuechao
    INTERNATIONAL JOURNAL OF SURGERY, 2025, 111 (02) : 1939 - 1949
  • [4] Development and Validation of Machine Learning Algorithms for Predicting Adverse Events After Surgery for Lumbar Degenerative Spondylolisthesis
    Fatima, Nida
    Zheng, Hui
    Massaad, Elie
    Hadzipasic, Muhamed
    Shankar, Ganesh M.
    Shin, John H.
    WORLD NEUROSURGERY, 2020, 140 : 627 - 641
  • [5] Prospective Validation of Clinical Criteria to Identify Emergency Department Patients at High Risk for Adverse Drug Events
    Hohl, Corinne M.
    Badke, Katherin
    Zhao, Amy
    Wickham, Maeve E.
    Woo, Stephanie A.
    Sivilotti, Marco L. A.
    Perry, Jeffrey J.
    ACADEMIC EMERGENCY MEDICINE, 2018, 25 (09) : 1014 - 1026
  • [6] Machine Learning Model to Identify Sepsis Patients in the Emergency Department: Algorithm Development and Validation
    Lin, Pei-Chen
    Chen, Kuo-Tai
    Chen, Huan-Chieh
    Islam, Md Mohaimenul
    Lin, Ming-Chin
    JOURNAL OF PERSONALIZED MEDICINE, 2021, 11 (11):
  • [7] Development and Validation of Machine-Learning Model to Predict the Risk of Major Cardiovascular Events and Death for Patients with Kidney Failure Having Noncardiac Surgery
    Pabla, Gurpreet S.
    Tangri, Navdeep
    Harrison, Tyrone
    Ferguson, Thomas W.
    Sevinc, Emir
    Whitlock, Reid
    JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY, 2024, 35 (10):
  • [8] Applying Machine Learning to Identify Pediatric Patients at Risk of Critical Perioperative Adverse Events: using the APRICOT Dataset
    Lonsdale, Hannah
    Gray, Geoffrey M.
    Yates, Hannah
    Ahumada, Luis
    Rehman, Mohamed
    Varughese, Anna
    Fackler, Jim
    Habre, Walid
    Disma, Nicola
    ANESTHESIA AND ANALGESIA, 2021, 132 (5S_SUPPL): : 759 - 760
  • [9] Multicenter Development and External Validation of a Machine Learning Model to Identify Hospitalized Patients With Untreated Infection
    Buell, K. G.
    Carey, K. A.
    Dussault, N.
    Parker, W. F.
    Dumanian, J.
    Bhavani, S. V.
    Gilbert, E. R.
    Winslow, C. J.
    Shah, N. S.
    Afshar, M.
    Edelson, D. P.
    Churpek, M. M.
    AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 2023, 207
  • [10] Development of a machine learning-based risk model for postoperative complications of lung cancer surgery
    Kadomatsu, Yuka
    Emoto, Ryo
    Kubo, Yoko
    Nakanishi, Keita
    Ueno, Harushi
    Kato, Taketo
    Nakamura, Shota
    Mizuno, Tetsuya
    Matsui, Shigeyuki
    Chen-Yoshikawa, Toyofumi Fengshi
    SURGERY TODAY, 2024, 54 (12) : 1482 - 1489