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首页> 外文期刊>Journal of Biomechanics >Machine learning in human movement biomechanics: Best practices, common pitfalls, and new opportunities
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Machine learning in human movement biomechanics: Best practices, common pitfalls, and new opportunities

机译:人体运动中的机器学习生物力学:最佳实践,常见的陷阱和新的机会

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摘要

Traditional laboratory experiments, rehabilitation clinics, and wearable sensors offer biomechanists a wealth of data on healthy and pathological movement. To harness the power of these data and make research more efficient, modern machine learning techniques are starting to complement traditional statistical tools. This survey summarizes the current usage of machine learning methods in human movement biomechanics and highlights best practices that will enable critical evaluation of the literature. We carried out a PubMed/Medline database search for original research articles that used machine learning to study movement biomechanics in patients with musculoskeletal and neuromuscular diseases. Most studies that met our inclusion criteria focused on classifying pathological movement, predicting risk of developing a disease, estimating the effect of an intervention, or automatically recognizing activities to facilitate out-of-clinic patient monitoring. We found that research studies build and evaluate models inconsistently, which motivated our discussion of best practices. We provide recommendations for training and evaluating machine learning models and discuss the potential of several underutilized approaches, such as deep learning, to generate new knowledge about human movement. We believe that cross-training biomechanists in data science and a cultural shift toward sharing of data and tools are essential to maximize the impact of biomechanics research. (C) 2018 Published by Elsevier Ltd.
机译:传统的实验室实验,康复诊所和可穿戴传感器提供生物力学家的健康和病理运动的丰富数据。为了利用这些数据的力量并使研究更有效,现代机器学习技术开始补充传统的统计工具。本次调查总结了当前使用机器学习方法在人体运动生物力学中,并突出显示最佳实践,以实现对文献的批判性评价。我们开展了一款PubMed / Medline数据库搜索原始研究文章,用于使用机器学习来研究肌肉骨骼和神经肌肉疾病患者的运动生物力学。大多数符合我们纳入标准的研究侧重于分类病理运动,预测发展疾病的风险,估计干预的效果,或自动识别出诊所患者监测的活动。我们发现研究研究建立并评估了模型不一致,这是我们对最佳实践的讨论。我们为培训和评估机器学习模型提供建议,并讨论几种未充分利用的方法,例如深度学习,为人类运动产生新的知识。我们认为,数据科学的交叉训练生物机制和分享数据和工具的文化转变对于最大化生物力学研究的影响至关重要。 (c)2018由elestvier有限公司出版

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