Preoperative Prediction of Postoperative Infections Using Machine Learning and Electronic Health Record Data

被引:3
|
作者
Zhuang, Yaxu [1 ,2 ]
Dyas, Adam [1 ,3 ]
Meguid, Robert A. [1 ,3 ,4 ]
Henderson, William G. [1 ]
Bronsert, Michael [1 ,4 ]
Madsen, Helen [1 ,3 ]
Colborn, Kathryn L. [1 ,2 ,3 ,4 ]
机构
[1] Univ Colorado Anschutz Med Campus, Dept Surg, Surg Outcomes & Appl Res Program, Aurora, CO 80045 USA
[2] Colorado Sch Publ Hlth, Dept Biostat & Informat, Aurora, CO 80045 USA
[3] Univ Colorado Anschutz Med Campus, Sch Med, Dept Surg, Aurora, CO 80045 USA
[4] Univ Colorado Anschutz Med Campus, Adult & Child Consortium Hlth Outcomes Res & Deli, Aurora, CO 80045 USA
基金
美国医疗保健研究与质量局;
关键词
machine learning; postoperative infection; preoperative risk; ASSESSMENT SYSTEM SURPAS; SURGICAL-WOUND CLASSIFICATION; URINARY-TRACT-INFECTION; SURVEILLANCE; COMPLICATIONS; MODELS; MISCLASSIFICATION; IDENTIFICATION; VALIDATION; VARIABLES;
D O I
10.1097/SLA.0000000000006106
中图分类号
R61 [外科手术学];
学科分类号
摘要
Objective:To estimate preoperative risk of postoperative infections using structured electronic health record (EHR) data. Background:Surveillance and reporting of postoperative infections is primarily done through costly, labor-intensive manual chart reviews on a small sample of patients. Automated methods using statistical models applied to postoperative EHR data have shown promise to augment manual review as they can cover all operations in a timely manner. However, there are no specific models for risk-adjusting infectious complication rates using EHR data. Methods:Preoperative EHR data from 30,639 patients (2013-2019) were linked to the American College of Surgeons National Surgical Quality Improvement Program preoperative data and postoperative infection outcomes data from 5 hospitals in the University of Colorado Health System. EHR data included diagnoses, procedures, operative variables, patient characteristics, and medications. Lasso and the knockoff filter were used to perform controlled variable selection. Outcomes included surgical site infection, urinary tract infection, sepsis/septic shock, and pneumonia up to 30 days postoperatively. Results:Among >15,000 candidate predictors, 7 were chosen for the surgical site infection model and 6 for each of the urinary tract infection, sepsis, and pneumonia models. Important variables included preoperative presence of the specific outcome, wound classification, comorbidities, and American Society of Anesthesiologists physical status classification. The area under the receiver operating characteristic curve for each model ranged from 0.73 to 0.89. Conclusions:Parsimonious preoperative models for predicting postoperative infection risk using EHR data were developed and showed comparable performance to existing American College of Surgeons National Surgical Quality Improvement Program risk models that use manual chart review. These models can be used to estimate risk-adjusted postoperative infection rates applied to large volumes of EHR data in a timely manner.
引用
收藏
页码:720 / 726
页数:7
相关论文
共 50 条
  • [42] Machine Learning Models for Pancreatic Cancer Risk Prediction Using Electronic Health Record Data-A Systematic Review and Assessment
    Mishra, Anup Kumar
    Chong, Bradford
    Arunachalam, Shivaram P.
    Oberg, Ann L.
    Majumder, Shounak
    AMERICAN JOURNAL OF GASTROENTEROLOGY, 2024, 119 (08): : 1466 - 1482
  • [43] Identifying and Predicting Postoperative Infections Based on Readily Available Electronic Health Record Data
    van der Meijden, Siri Lise
    van Boekel, Anna
    Schinkelshoek, Laurens
    van Goor, Harry
    de Boer, Mark
    Steyerberg, Ewout
    Geerts, Bart
    Arbous, Sesmu
    CARING IS SHARING-EXPLOITING THE VALUE IN DATA FOR HEALTH AND INNOVATION-PROCEEDINGS OF MIE 2023, 2023, 302 : 348 - 349
  • [44] Automated Detection of Postoperative Reintubation Using Electronic Health Record Data
    Saad, Manal
    Dubovoy, Timur Z.
    Kheterpal, Sachin
    Colquhoun, Douglas A.
    ANESTHESIOLOGY, 2024, 140 (01) : 173 - 175
  • [45] Predicting Intensive Care Unit Readmission with Machine Learning Using Electronic Health Record Data
    Rojas, J. C.
    Carey, K. A.
    Edelson, D. P.
    Venable, L. R.
    Howell, M. D.
    Churpek, M. M.
    AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 2018, 197
  • [46] Using Natural Language Processing and Machine Learning to Identify Opioids in Electronic Health Record Data
    McDermott, Sean P.
    Wasan, Ajay D.
    JOURNAL OF PAIN RESEARCH, 2023, 16 : 2133 - 2140
  • [47] Predicting Intensive Care Unit Readmission with Machine Learning Using Electronic Health Record Data
    Rojas, Juan C.
    Carey, Kyle A.
    Edelson, Dana P.
    Venable, Laura R.
    Howell, Michael D.
    Churpek, Matthew M.
    ANNALS OF THE AMERICAN THORACIC SOCIETY, 2018, 15 (07) : 846 - 853
  • [48] Machine Learning Prediction of Kidney Stone Composition Using Electronic Health Record-Derived Features
    Abraham, Abin
    Kavoussi, Nicholas L.
    Sui, Wilson
    Bejan, Cosmin
    Capra, John A.
    Hsi, Ryan
    JOURNAL OF ENDOUROLOGY, 2022, 36 (02) : 243 - 250
  • [49] Identification of surgical site infections using electronic health record data
    Colborn, Kathryn L.
    Bronsert, Michael
    Amioka, Elise
    Hammermeister, Karl
    Henderson, William G.
    Meguid, Robert
    AMERICAN JOURNAL OF INFECTION CONTROL, 2018, 46 (11) : 1230 - 1235
  • [50] Identification of urinary tract infections using electronic health record data
    Colborn, Kathryn L.
    Bronsert, Michael
    Hammermeister, Karl
    Henderson, William G.
    Singh, Abhinav B.
    Meguid, Robert A.
    AMERICAN JOURNAL OF INFECTION CONTROL, 2019, 47 (04) : 371 - 375