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阐明影响机器学习算法在痉挛评估中预测的因素:一项前瞻性观察性研究。

Elucidating factors influencing machine learning algorithm prediction in spasticity assessment: a prospective observational study.

作者信息

Mohamad Hashim Natiara, Yee Jingye, Othman Nurul Atiqah, Johar Khairunnisa, Low Cheng Yee, Hanapiah Fazah Akhtar, Che Zakaria Noor Ayuni

机构信息

Department of Rehabilitation Medicine, Faculty of Medicine, Universiti Teknologi MARA, Sungai Buloh, Malaysia.

Faculty of Mechanical and Manufacturing Engineering, Universiti Tun Hussein Onn Malaysia, Parit Raja, Malaysia.

出版信息

Comput Methods Biomech Biomed Engin. 2022 Jul;25(9):971-984. doi: 10.1080/10255842.2021.1990270. Epub 2021 Oct 20.

Abstract

The Machine Learning Model (MLM) has garnered popularity in rehabilitation, ranging from developing algorithms in outcome prediction, prognostication, and training artificial intelligence. High-quality data plays a critical role in algorithm development. Limited studies have explored factors that may influence the MLM algorithm performance in predicting spasticity severity level. The objectives of this study were to train and validate a MLM algorithm for spasticity assessment and determine the algorithm's prediction performance in predicting ambiguous spasticity datasets. Forty-seven persons with central nervous system pathology that fulfilled the inclusion and exclusion criteria were recruited. Four biomechanical properties of spasticity were obtained using off-the-shelf wearable sensors. The data were analyzed individually, and ambiguous datasets were separated. The acceptable inertial data were used to train and validate MLM in predicting spasticity. The trained and validated MLM algorithm was later deployed to predict the ambiguous spasticity datasets. A series of MLM were applied, including Support Vector Machine, Decision Tree, and Random Forest. The MLM's performance accuracy of the validation data was 96%, 52%, and 72%, respectively. The validated MLM accuracy performance level predicting ambiguous datasets reduces to 20%, 23%, and 23%, respectively. This study elucidates data biases and variances of disease background, pathophysiological and anatomical factors that have to be considered in MLM training.

摘要

机器学习模型(MLM)在康复领域颇受欢迎,涵盖了在结果预测、预后判断以及人工智能训练等方面开发算法。高质量数据在算法开发中起着关键作用。有限的研究探讨了可能影响MLM算法预测痉挛严重程度水平性能的因素。本研究的目的是训练和验证用于痉挛评估的MLM算法,并确定该算法在预测模糊痉挛数据集时的预测性能。招募了47名符合纳入和排除标准的中枢神经系统病变患者。使用现成的可穿戴传感器获取了痉挛的四种生物力学特性。对数据进行单独分析,并分离出模糊数据集。可接受的惯性数据用于训练和验证MLM以预测痉挛。随后将经过训练和验证的MLM算法用于预测模糊痉挛数据集。应用了一系列MLM,包括支持向量机、决策树和随机森林。验证数据的MLM性能准确率分别为96%、52%和72%。预测模糊数据集的经过验证的MLM准确率性能水平分别降至20%、23%和23%。本研究阐明了在MLM训练中必须考虑的疾病背景、病理生理和解剖因素的数据偏差和方差。

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