Establishment of prediction model for risk of postoperative cognitive dysfunction after non-cardiac surgery based on different machine learning algorithms

Objective To establish a risk model for predicting postoperative cognitive dysfunction (POCD) after non-cardiac surgery using preoperative indicators based on machine learning algorithm. Methods A case-control study was designed, and conducted on the POCD patients after non-cardiac surgery in the me...

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Main Authors: SONG Ailin, LI Yujie, SHU Xin, HU Xiaoyan, ZHONG Kunhua
Format: Article
Language:zho
Published: Editorial Office of Journal of Army Medical University 2023-04-01
Series:陆军军医大学学报
Subjects:
Online Access:http://aammt.tmmu.edu.cn/html/202301048.htm
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author SONG Ailin
LI Yujie
SHU Xin
HU Xiaoyan
ZHONG Kunhua
author_facet SONG Ailin
LI Yujie
SHU Xin
HU Xiaoyan
ZHONG Kunhua
author_sort SONG Ailin
collection DOAJ
description Objective To establish a risk model for predicting postoperative cognitive dysfunction (POCD) after non-cardiac surgery using preoperative indicators based on machine learning algorithm. Methods A case-control study was designed, and conducted on the POCD patients after non-cardiac surgery in the medical big data platform of our hospital from January 2014 to January 2019. Finally, 92 patients were included in the POCD group. According to surgical type and age matched of the POCD group, another 276 patients who did not develop POCD after surgery and discharged from the hospital during the same time period from the same big data platform were assigned into the non-POCD group at a ratio of 1∶3. At the same time, these 368 patients were randomly divided into modeling group (n=259) and validation group (n=109) at a ratio of 7∶3. After data preprocessing and feature selection of preoperative clinical indicators (general data, relevant scoring scales, surgical-related data and results of preoperative laboratory tests), the risk prediction model of POCD for non-cardiac surgery was established based on 3 machine learning algorithms, that is, logistic regression (LR), support vector machine (SVM) and Decision Tree. The model efficacy was evaluated by sensitivity, specificity, F1 score, and the area under the receiver operating characteristic curve (AUC). Results The SVM algorithm was the best model among the 3 machine learning algorithms to predict the risk of POCD after non-cardiac surgery. The AUC value of the model in the validation group was 0.957 (95%CI: 0.905~1.000), with a sensitivity and specificity of 92.6% and 98.8%, respectively. Conclusion A prediction model of POCD after non-cardiac surgery is successfully established based on machine learning algorithm. This model shows good predictive performance for POCD. [Key words] machine learning , prediction model , postoperative cognitive dysfunction,
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spelling doaj.art-664f2b5956a14b6b9e70e0e3bd1cb3dd2023-05-06T00:00:58ZzhoEditorial Office of Journal of Army Medical University陆军军医大学学报2097-09272023-04-0145875976410.16016/j.2097-0927.202301048Establishment of prediction model for risk of postoperative cognitive dysfunction after non-cardiac surgery based on different machine learning algorithmsSONG Ailin0 LI Yujie1 SHU Xin2HU Xiaoyan3 ZHONG Kunhua4 Department of Anesthesiology, First Affiliated Hospital, Army Medical University (Third Military Medical University), Chongqing, 400038 Department of Anesthesiology, First Affiliated Hospital, Army Medical University (Third Military Medical University), Chongqing, 400038 Department of Anesthesiology, First Affiliated Hospital, Army Medical University (Third Military Medical University), Chongqing, 400038Department of Anesthesiology, First Affiliated Hospital, Army Medical University (Third Military Medical University), Chongqing, 400038Chongqing Institute of Green and Intelligent Technology, Chinese Academy of Sciences, Chongqing, 400714, ChinaObjective To establish a risk model for predicting postoperative cognitive dysfunction (POCD) after non-cardiac surgery using preoperative indicators based on machine learning algorithm. Methods A case-control study was designed, and conducted on the POCD patients after non-cardiac surgery in the medical big data platform of our hospital from January 2014 to January 2019. Finally, 92 patients were included in the POCD group. According to surgical type and age matched of the POCD group, another 276 patients who did not develop POCD after surgery and discharged from the hospital during the same time period from the same big data platform were assigned into the non-POCD group at a ratio of 1∶3. At the same time, these 368 patients were randomly divided into modeling group (n=259) and validation group (n=109) at a ratio of 7∶3. After data preprocessing and feature selection of preoperative clinical indicators (general data, relevant scoring scales, surgical-related data and results of preoperative laboratory tests), the risk prediction model of POCD for non-cardiac surgery was established based on 3 machine learning algorithms, that is, logistic regression (LR), support vector machine (SVM) and Decision Tree. The model efficacy was evaluated by sensitivity, specificity, F1 score, and the area under the receiver operating characteristic curve (AUC). Results The SVM algorithm was the best model among the 3 machine learning algorithms to predict the risk of POCD after non-cardiac surgery. The AUC value of the model in the validation group was 0.957 (95%CI: 0.905~1.000), with a sensitivity and specificity of 92.6% and 98.8%, respectively. Conclusion A prediction model of POCD after non-cardiac surgery is successfully established based on machine learning algorithm. This model shows good predictive performance for POCD. [Key words] machine learning , prediction model , postoperative cognitive dysfunction,http://aammt.tmmu.edu.cn/html/202301048.htmmachine learningprediction modelpostoperative cognitive dysfunction
spellingShingle SONG Ailin
LI Yujie
SHU Xin
HU Xiaoyan
ZHONG Kunhua
Establishment of prediction model for risk of postoperative cognitive dysfunction after non-cardiac surgery based on different machine learning algorithms
陆军军医大学学报
machine learning
prediction model
postoperative cognitive dysfunction
title Establishment of prediction model for risk of postoperative cognitive dysfunction after non-cardiac surgery based on different machine learning algorithms
title_full Establishment of prediction model for risk of postoperative cognitive dysfunction after non-cardiac surgery based on different machine learning algorithms
title_fullStr Establishment of prediction model for risk of postoperative cognitive dysfunction after non-cardiac surgery based on different machine learning algorithms
title_full_unstemmed Establishment of prediction model for risk of postoperative cognitive dysfunction after non-cardiac surgery based on different machine learning algorithms
title_short Establishment of prediction model for risk of postoperative cognitive dysfunction after non-cardiac surgery based on different machine learning algorithms
title_sort establishment of prediction model for risk of postoperative cognitive dysfunction after non cardiac surgery based on different machine learning algorithms
topic machine learning
prediction model
postoperative cognitive dysfunction
url http://aammt.tmmu.edu.cn/html/202301048.htm
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AT shuxin establishmentofpredictionmodelforriskofpostoperativecognitivedysfunctionafternoncardiacsurgerybasedondifferentmachinelearningalgorithms
AT huxiaoyan establishmentofpredictionmodelforriskofpostoperativecognitivedysfunctionafternoncardiacsurgerybasedondifferentmachinelearningalgorithms
AT zhongkunhua establishmentofpredictionmodelforriskofpostoperativecognitivedysfunctionafternoncardiacsurgerybasedondifferentmachinelearningalgorithms