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基于机器学习的开颅术后继发中枢神经系统感染预测模型。

A predictive model for secondary central nervous system infection after craniotomy based on machine learning.

机构信息

People's Hospital of Deyang City, Deyang, 618000, Sichuan, China.

Medicine and Engineering Interdisciplinary Research Laboratory of Nursing & Materials, West China Hospital, 610041, Chengdu, China.

出版信息

Sci Rep. 2024 Oct 22;14(1):24942. doi: 10.1038/s41598-024-75122-9.

Abstract

To analyze the risk factors of secondary Central nervous system infections (CNSIs) after craniotomy, and to establish an individualized predictive model for CNSIs risk. The independent risk factors were screened by univariate and multivariate logistic regression analysis. Logistic regression, naive bayes, random forest, light GBM and adaboost algorithms were used to establish predictive models for secondary CNSIs after craniotomy. The predictive model based on the Adaboost algorithm demonstrated superior prediction performance compared to the other four models. Under 5-fold cross validation, the accuracy was 0.80, the precision was 0.69, the recall was 0.85, the F1-score was 0.76, the area under the ROC curve was 0.897,and the average precision was 0.880. The top 5 variables of importance in Adaboost model were operation time, indwelling time of lumbar drainage tube, indwelling lumbar drainage tube during operation, indwelling epidural drainage tube during operation, and GCS score. In addition, Adaboost model with the best prediction performance was used for clinical verification, and the prediction results were compared with the actual occurrence of CNSIs after surgery. The results showed that the accuracy of Adaboost model in predicting CNSIs was 60%, the accuracy of Adaboost model in predicting non-CNSIS was 92%, and the overall prediction accuracy was 76%.

摘要

分析开颅术后继发中枢神经系统感染(CNSIs)的危险因素,并建立 CNSIs 风险的个体化预测模型。采用单因素和多因素 logistic 回归分析筛选独立危险因素。采用 logistic 回归、朴素贝叶斯、随机森林、light GBM 和 adaboost 算法建立开颅术后继发 CNSIs 的预测模型。基于 Adaboost 算法的预测模型与其他四个模型相比,具有更好的预测性能。在 5 折交叉验证下,准确率为 0.80,精度为 0.69,召回率为 0.85,F1 得分为 0.76,ROC 曲线下面积为 0.897,平均精度为 0.880。Adaboost 模型中最重要的前 5 个变量是手术时间、腰穿引流管留置时间、手术期间留置腰穿引流管、手术期间留置硬膜外引流管和 GCS 评分。此外,还使用具有最佳预测性能的 Adaboost 模型进行临床验证,并将预测结果与术后 CNSIs 的实际发生情况进行比较。结果表明,Adaboost 模型预测 CNSIs 的准确率为 60%,预测非 CNSIS 的准确率为 92%,总体预测准确率为 76%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d786/11496797/46b8bae2f868/41598_2024_75122_Fig1_HTML.jpg

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