Zhang Xiao, Fei Ningbo, Zhang Xinxin, Wang Qun, Fang Zongping
Department of Anesthesiology and Perioperative Medicine, Xijing Hospital, Fourth Military Medical University, Xi'an, China.
Department of Orthopedics and Traumatology, The Duchess of Kent Children's Hospital at Sandy Bay, The University of Hong Kong, Hong Kong, Hong Kong SAR, China.
Front Aging Neurosci. 2022 Jul 18;14:897611. doi: 10.3389/fnagi.2022.897611. eCollection 2022.
With the aging of populations and the high prevalence of stroke, postoperative stroke has become a growing concern. This study aimed to establish a prediction model and assess the risk factors for stroke in elderly patients during the postoperative period.
ML (Machine learning) prediction models were applied to elderly patients from the MIMIC (Medical Information Mart for Intensive Care)-III and MIMIC-VI databases. The SMOTENC (synthetic minority oversampling technique for nominal and continuous data) balancing technique and iterative SVD (Singular Value Decomposition) data imputation method were used to address the problem of category imbalance and missing values, respectively. We analyzed the possible predictive factors of stroke in elderly patients using seven modeling approaches to train the model. The diagnostic value of the model derived from machine learning was evaluated by the ROC curve (receiver operating characteristic curve).
We analyzed 7,128 and 661 patients from MIMIC-VI and MIMIC-III, respectively. The XGB (extreme gradient boosting) model got the highest AUC (area under the curve) of 0.78 (0.75-0.81), making it better than the other six models, Besides, we found that XGB model with databalancing was better than that without data balancing. Based on this prediction model, we found hypertension, cancer, congestive heart failure, chronic pulmonary disease and peripheral vascular disease were the top five predictors. Furthermore, we demonstrated that hypertension predicted postoperative stroke is much more valuable.
Stroke in elderly patients during the postoperative period can be reliably predicted. We proved XGB model is a reliable predictive model, and the history of hypertension should be weighted more heavily than the results of laboratory tests to prevent postoperative stroke in elderly patients regardless of gender.
随着人口老龄化以及中风的高患病率,术后中风已日益受到关注。本研究旨在建立一个预测模型,并评估老年患者术后中风的危险因素。
将机器学习(ML)预测模型应用于来自重症监护医学信息集市(MIMIC)-III和MIMIC-VI数据库的老年患者。分别采用用于名义和连续数据的合成少数过采样技术(SMOTENC)平衡技术和迭代奇异值分解(SVD)数据插补方法来解决类别不平衡和缺失值问题。我们使用七种建模方法训练模型,分析老年患者中风的可能预测因素。通过ROC曲线(受试者工作特征曲线)评估机器学习得出的模型的诊断价值。
我们分别分析了来自MIMIC-VI的7128例患者和来自MIMIC-III的661例患者。极端梯度提升(XGB)模型获得了最高的曲线下面积(AUC),为0.78(0.75 - 0.81),使其优于其他六个模型。此外,我们发现进行数据平衡的XGB模型比未进行数据平衡的模型更好。基于此预测模型,我们发现高血压、癌症、充血性心力衰竭、慢性肺病和外周血管疾病是前五大预测因素。此外,我们证明高血压对预测术后中风更有价值。
老年患者术后中风可以得到可靠预测。我们证明XGB模型是一个可靠的预测模型,并且无论性别,高血压病史在预防老年患者术后中风方面应比实验室检查结果更受重视。