基于机器学习的脑卒中患者早期卒中后疲劳预测模型:一项纵向研究。

Yu Wu, Depeng Zhou, Lovel Fornah, Jian Liu, Jun Zhao, Shicai Wu
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引用次数: 0

摘要

背景中风后疲劳是中风幸存者长期存在的身心症状之一,将严重影响中风患者的日常生活能力和生活质量。方法对 702 名中风患者进行为期 3 个月的纵向研究。从出院前的病历和调查问卷中获得了 23 个临床特征。采用疲劳严重程度量表对中风后早期疲劳进行评估。数据集被随机分为训练组(70%)和内部验证组(30%),采用超采样、10倍交叉验证和网格搜索来优化超参数。使用最小绝对收缩和选择操作符(LASSO)回归进行特征选择。本研究采用 16 种 ML 算法预测卒中后早期疲劳。结果在 16 种 ML 算法中,Bagging 模型是预测脑卒中患者卒中后早期疲劳的最佳模型(AUC = 0.8479,准确度 = 0.7518,精确度 = 0.5741,召回 = 0.7209,F1 分数 = 0.6392,brier 分数 = 0.1490)。基于 LASSO 的特征选择显示,卒中患者卒中后早期疲劳的风险因素包括焦虑、睡眠、社会支持、家庭护理、疼痛、抑郁、神经功能缺陷、戒酒/不饮酒、平衡功能、卒中类型、性别、心脏病、吸烟和偏瘫。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Based Model for Prediction of Early Post-Stroke Fatigue in Patients With Stroke: A Longitudinal Study.

BackgroundPost-stroke fatigue, as one of the long-lasting physical and mental symptoms accompanying stroke survivors, will seriously affect the daily living ability and quality of life of stroke patients.ObjectiveThe aim of this study was to develop machine learning (ML) algorithms to predict early post-stroke fatigue among patients with stroke.MethodsA longitudinal study of 702 patients with stroke followed for 3 months. Twenty-three clinical features were obtained from medical records and questionnaires before discharge. Early post-stroke fatigue was assessed using the Fatigue Severity Scale. The dataset was randomly divided into a training group (70%) and an internal validation group (30%), applied oversampling, 10-fold cross-validation, and grid search to optimize the hyperparameter. Feature selection using the Least Absolute Shrinkage and Selection Operator (LASSO) regression. Sixteen ML algorithms were performed to predict early post-stroke fatigue in this study. Accuracy, precision, recall, F1 score, area under the receiver operating characteristic curve (AUC), and brier score were used to evaluate the models performance.ResultsAmong the 16 ML algorithms, the Bagging model was the optimal model for predicting early post-stroke fatigue in patients with stroke (AUC = 0.8479, accuracy = 0.7518, precision = 0.5741, recall = 0.7209, F1 score = 0.6392, brier score = 0.1490). The feature selection based on LASSO revealed that risk factors for early post-stroke fatigue in patients with stroke included anxiety, sleep, social support, family care, pain, depression, neural-functional defect, quit/no drinking, balance function, type of stroke, sex, heart disease, smoking, and hemiplegia.ConclusionsIn this study, the Bagging model proved to be effective in predicting early post-stroke fatigue.

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