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Feasibility of a Machine Learning Classifier for Predicting Post-Induction Hypotension in Non-Cardiac Surgery

Authors
 Park, Insun  ;  Park, Jae Hyon  ;  Koo, Young Hyun  ;  Koo, Chang-Hoon  ;  Koo, Bon-Wook  ;  Kim, Jin-Hee  ;  Oh, Ah-Young 
Citation
 YONSEI MEDICAL JOURNAL, Vol.66(3) : 160-171, 2025-03 
Journal Title
YONSEI MEDICAL JOURNAL
ISSN
 0513-5796 
Issue Date
2025-03
MeSH
Adult ; Aged ; Algorithms ; Feasibility Studies ; Female ; Humans ; Hypotension* / diagnosis ; Hypotension* / etiology ; Machine Learning* ; Male ; Middle Aged ; ROC Curve
Keywords
Anesthesia ; general ; artificial intelligence ; general surgery ; hypotension ; machine learning
Abstract
Purpose: To develop a machine learning (ML) classifier for predicting post-induction hypotension (PIH) in non-cardiac surgeries. Materials and Methods: Preoperative data and early vital signs were obtained from 3669 cases in the VitalDB database, an open- source registry. PIH was defined as sustained mean arterial pressure (MAP) <65 mm Hg within 20 minutes since induction or from induction to incision. Six different ML algorithms were used to create binary classifiers to predict PIH. The primary outcome was the area under the receiver operating characteristic curve (AUROC) of ML classifiers. Results: A total of 2321 (63.3%) cases exhibited PIH. Among ML classifiers, the random forest regressor and extremely gradient boosting regressor showed the highest AUROC, both recording a value of 0.772. Excluding these models, the light gradient boosting machine regressor showed the second highest AUROC [0.769; 95% confidence interval (CI), 0.767-0.771], followed by the gradient boosting regressor (0.768; 95% CI, 0.763-0.772), AdaBoost regressor (0.752; 95% CI, 0.743-0.761), and automatic relevance determination regression (0.685; 95% CI, 0.669-0.701). The top three important features were mean diastolic blood pressure (DBP), mini- mum MAP, and minimum DBP from anesthetic induction to tracheal intubation, and these features were lower in cases with PIH (all p <0.001). Conclusion: ML classifiers exhibited moderate performance in predicting PIH, and have the potential for real-time prediction.
Files in This Item:
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DOI
10.3349/ymj.2024.0020
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Radiology (영상의학교실) > 1. Journal Papers
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/208818
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