Use of Machine Learning in Stroke Rehabilitation: A Narrative Review.

Yoo Jin Choo, Min Cheol Chang
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引用次数: 2

Abstract

A narrative review was conducted of machine learning applications and research in the field of stroke rehabilitation. The machine learning models commonly used in medical research include random forest, logistic regression, and deep neural networks. Convolutional neural networks (CNNs), a type of deep neural network, are typically used for image analysis. Machine learning has been used in stroke rehabilitation to predict recovery of motor function using a large amount of clinical data as input. Recent studies on predicting motor function have trained CNN models using magnetic resonance images as input data together with clinical data to increase the accuracy of motor function prediction models. Additionally, a model interpreting videofluoroscopic swallowing studies was developed and investigated. In the future, we anticipate that machine learning will be actively used to treat stroke patients, such as predicting the occurrence of depression and the recovery of language, cognitive, and sensory function, as well as prescribing appropriate rehabilitation treatments.

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机器学习在中风康复中的应用:述评。
对机器学习在脑卒中康复领域的应用和研究进行了综述。医学研究中常用的机器学习模型包括随机森林、逻辑回归和深度神经网络。卷积神经网络(cnn)是一种深度神经网络,通常用于图像分析。机器学习已被用于脑卒中康复,以大量临床数据作为输入来预测运动功能的恢复。最近的运动功能预测研究将磁共振图像作为输入数据,结合临床数据训练CNN模型,以提高运动功能预测模型的准确性。此外,一个解释视频透视吞咽研究的模型被开发和研究。在未来,我们预计机器学习将积极用于治疗中风患者,例如预测抑郁症的发生和语言、认知和感觉功能的恢复,以及处方适当的康复治疗。
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