Li Linji, Wang Linna, Lu Li, Zhu Tao
Department of Anesthesiology, West China Hospital, Sichuan University and The Research Units of West China (2018RU012), Chinese Academy of Medical Sciences, Chengdu, China.
Department of Anesthesiology, The Second Clinical Medical College, North Sichuan Medical College, Nanchong Central Hospital, Nanchong, China.
Front Mol Biosci. 2022 Aug 10;9:910688. doi: 10.3389/fmolb.2022.910688. eCollection 2022.
Although unplanned hospital readmission is an important indicator for monitoring the perioperative quality of hospital care, few published studies of hospital readmission have focused on surgical patient populations, especially in the elderly. We aimed to investigate if machine learning approaches can be used to predict postoperative unplanned 30-day hospital readmission in old surgical patients. We extracted demographic, comorbidity, laboratory, surgical, and medication data of elderly patients older than 65 who underwent surgeries under general anesthesia in West China Hospital, Sichuan University from July 2019 to February 2021. Different machine learning approaches were performed to evaluate whether unplanned 30-day hospital readmission can be predicted. Model performance was assessed using the following metrics: AUC, accuracy, precision, recall, and F1 score. Calibration of predictions was performed using Brier Score. A feature ablation analysis was performed, and the change in AUC with the removal of each feature was then assessed to determine feature importance. A total of 10,535 unique surgeries and 10,358 unique surgical elderly patients were included. The overall 30-day unplanned readmission rate was 3.36%. The AUCs of the six machine learning algorithms predicting postoperative 30-day unplanned readmission ranged from 0.6865 to 0.8654. The RF + XGBoost algorithm overall performed the best with an AUC of 0.8654 (95% CI, 0.8484-0.8824), accuracy of 0.9868 (95% CI, 0.9834-0.9902), precision of 0.3960 (95% CI, 0.3854-0.4066), recall of 0.3184 (95% CI, 0.259-0.3778), and F1 score of 0.4909 (95% CI, 0.3907-0.5911). The Brier scores of the six machine learning algorithms predicting postoperative 30-day unplanned readmission ranged from 0.3721 to 0.0464, with RF + XGBoost showing the best calibration capability. The most five important features of RF + XGBoost were operation duration, white blood cell count, BMI, total bilirubin concentration, and blood glucose concentration. Machine learning algorithms can accurately predict postoperative unplanned 30-day readmission in elderly surgical patients.
尽管非计划住院再入院是监测医院围手术期护理质量的重要指标,但很少有已发表的关于住院再入院的研究关注手术患者群体,尤其是老年患者。我们旨在研究机器学习方法是否可用于预测老年手术患者术后30天非计划住院再入院情况。我们提取了2019年7月至2021年2月在四川大学华西医院接受全身麻醉手术的65岁以上老年患者的人口统计学、合并症、实验室检查、手术和用药数据。采用不同的机器学习方法来评估是否可以预测30天非计划住院再入院情况。使用以下指标评估模型性能:AUC、准确率、精确率、召回率和F1分数。使用Brier分数进行预测校准。进行了特征消融分析,然后评估去除每个特征后AUC的变化以确定特征重要性。共纳入10535例独特手术和10358例独特的老年手术患者。30天非计划再入院率总体为3.36%。预测术后30天非计划再入院的六种机器学习算法的AUC范围为0.6865至0.8654。RF + XGBoost算法总体表现最佳,AUC为0.8654(95%CI,0.8484 - 0.8824),准确率为0.9868(95%CI,0.9834 - 0.9902),精确率为0.3960(95%CI,0.3854 - 0.4066),召回率为0.3184(95%CI,0.259 - 0.3778),F1分数为0.4909(95%CI,0.3907 - 0.5911)。预测术后30天非计划再入院的六种机器学习算法的Brier分数范围为0.3721至0.0464,其中RF + XGBoost显示出最佳的校准能力。RF + XGBoost最重要的五个特征是手术时长、白细胞计数、BMI、总胆红素浓度和血糖浓度。机器学习算法可以准确预测老年手术患者术后30天非计划再入院情况。