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基于临床特征的机器学习模型预测缺血性卒中后严重吞咽困难

A Machine-Learning Model Based on Clinical Features for the Prediction of Severe Dysphagia After Ischemic Stroke.

作者信息

Ye Feng, Cheng Liang-Ling, Li Wei-Min, Guo Ying, Fan Xiao-Fang

机构信息

Wuxi School of Medicine, Jiangnan University, Wuxi, People's Republic of China.

Department of Ultrasonography, Affiliated Hospital of Jiangnan University, Wuxi, People's Republic of China.

出版信息

Int J Gen Med. 2024 Nov 28;17:5623-5631. doi: 10.2147/IJGM.S484237. eCollection 2024.

Abstract

BACKGROUND

This study aimed to construct machine-learning models for prediction of severe dysphagia after ischemic stroke based on clinical features and identify significant clinical predictors.

METHODS

Patients hospitalized with dysphagia after ischemic stroke in Affiliated Hospital of Jiangnan University were retrospectively analyzed and randomly divided into training and validation sets at a ratio of 7:3. Additional patients from Huai'an Hospital were selected as test set. 19 relevant clinical characteristics were collected. According to the water swallowing test (WST), patients were divided into severe dysphagia group and non-severe dysphagia group. K-nearest neighbor (KNN), decision tree (DT), random forest (RF), support vector machine (SVM), light gradient boosting machine (LGBM), and extreme gradient boosting (XGBoost) were applied to predict severe dysphagia. Receiver operating characteristic (ROC) curves were plotted, the area under the ROC (AUC) was calculated to assess predictive power, and DeLong's test was used to compare the AUCs among six models. Finally, an optimal model was obtained, and significant clinical predictors of severe dysphagia after stroke were screened.

RESULTS

A total of 724 patients were enrolled, 422 in training set, 182 in validation set and 120 in test set, respectively, with no statistically differences in baseline information (>0.05). In the training set, the AUCs of KNN, DT, RF, SVM and XGBoost were higher than that of LGBM (<0.05). In the validation and test sets, the AUCs of XGBoost were also higher. The performance metrics of XGBoost were better in terms of accuracy, precision, recall, and F1-score. Therefore, XGBoost was the best model, with good clinical practicality. Furthermore, the top five features based on XGBoost were NIHSS score, BI, BMI, age and time since stroke onset.

CONCLUSION

Among all clinical feature-based machine-learning models for the prediction of severe dysphagia after ischemic stroke, XGBoost had the best predictive value.

摘要

背景

本研究旨在基于临床特征构建用于预测缺血性卒中后严重吞咽困难的机器学习模型,并确定重要的临床预测因素。

方法

对江南大学附属医院收治的缺血性卒中后吞咽困难患者进行回顾性分析,并按7:3的比例随机分为训练集和验证集。选取淮安市医院的其他患者作为测试集。收集19项相关临床特征。根据饮水试验(WST),将患者分为严重吞咽困难组和非严重吞咽困难组。应用K近邻(KNN)、决策树(DT)、随机森林(RF)、支持向量机(SVM)、轻梯度提升机(LGBM)和极端梯度提升(XGBoost)预测严重吞咽困难。绘制受试者工作特征(ROC)曲线,计算ROC曲线下面积(AUC)以评估预测能力,并使用德龙检验比较六个模型的AUC。最后,获得最佳模型,并筛选出卒中后严重吞咽困难的重要临床预测因素。

结果

共纳入724例患者,训练集422例,验证集182例,测试集120例,基线信息无统计学差异(>0.05)。在训练集中,KNN、DT、RF、SVM和XGBoost的AUC高于LGBM(<0.05)。在验证集和测试集中,XGBoost的AUC也更高。XGBoost在准确性、精确性、召回率和F1分数方面的性能指标更好。因此,XGBoost是最佳模型,具有良好的临床实用性。此外,基于XGBoost的前五个特征是美国国立卫生研究院卒中量表(NIHSS)评分、巴氏指数(BI)、体重指数(BMI)、年龄和卒中发病后的时间。

结论

在所有基于临床特征的缺血性卒中后严重吞咽困难预测机器学习模型中,XGBoost具有最佳预测价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e289/11610381/544068bf7ee0/IJGM-17-5623-g0001.jpg

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