Abstract

BackgroundAccurate prediction of motor recovery after stroke is critical for treatment decisions and planning. Machine learning has been proposed to be a promising technique for outcome prediction because of its high accuracy and ability to process large volumes of data. It has been used to predict acute stroke recovery; however, whether machine learning would be effective for predicting rehabilitation outcomes in chronic stroke patients for common contemporary task-oriented interventions remains largely unexplored. This study aimed to determine the accuracy and performance of machine learning to predict clinically significant motor function improvements after contemporary task-oriented intervention in chronic stroke patients and identify important predictors for building machine learning prediction models.MethodsThis study was a secondary analysis of data using two common machine learning approaches, which were the k-nearest neighbor (KNN) and artificial neural network (ANN). Chronic stroke patients (N = 239) that received 30 h of task-oriented training including the constraint-induced movement therapy, bilateral arm training, robot-assisted therapy and mirror therapy were included. The Fugl-Meyer assessment scale (FMA) was the main outcome. Potential predictors include age, gender, side of lesion, time since stroke, baseline functional status, motor function and quality of life. We divided the data set into a training set and a test set and used the cross-validation procedure to construct machine learning models based on the training set. After the models were built, we used the test data set to evaluate the accuracy and prediction performance of the models.ResultsThree important predictors were identified, which were time since stroke, baseline functional independence measure (FIM) and baseline FMA scores. Models for predicting motor function improvements were accurate. The prediction accuracy of the KNN model was 85.42% and area under the receiver operating characteristic curve (AUC-ROC) was 0.89. The prediction accuracy of the ANN model was 81.25% and the AUC-ROC was 0.77.ConclusionsIncorporating machine learning into clinical outcome prediction using three key predictors including time since stroke, baseline functional and motor ability may help clinicians/therapists to identify patients that are most likely to benefit from contemporary task-oriented interventions. The KNN and ANN models may be potentially useful for predicting clinically significant motor recovery in chronic stroke.

Highlights

  • Stroke is one of the leading causes of long-term disability [1]

  • Three most important attributes were identified by the feature selection procedure, which were time since stroke, baseline functional independence measure (FIM) scores and baseline Fugl-Meyer assessment scale (FMA) scores

  • Time since stroke, baseline FIM scores and baseline FMA scores were used for developing the k-nearest neighbor (KNN) and artificial neural network (ANN) models

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Summary

Introduction

Stroke is one of the leading causes of long-term disability [1]. Most stroke patients suffer from upper limb hemiparesis that significantly impairs their functional abilities and quality of life [2]. Machine learning utilizes computerized algorithms to optimize prediction It has several advantages including the ability to process large volumes of data, detection of complex interactions between multiple variables and easy incorporation of new attributes/data into models [4]. These advantages make machine learning an ideal tool for processing complex healthcare informatics data to develop prediction models [5]. It has been used to predict acute stroke recovery; whether machine learning would be effective for predicting rehabilitation outcomes in chronic stroke patients for common contemporary task-oriented interventions remains largely unexplored. This study aimed to determine the accuracy and performance of machine learning to predict clinically significant motor function improvements after contem‐ porary task-oriented intervention in chronic stroke patients and identify important predictors for building machine learning prediction models

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