Machine learning/artificial intelligence in sports medicine: state of the art and future directions

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Abstract

Machine learning (ML) is changing the way health care is practiced and recent applications of these novel statistical techniques have started to impact orthopaedic sports medicine. Machine learning enables the analysis of large volumes of data to establish complex relationships between “input” and “output” variables. These relationships may be more complex than could be established through traditional statistical analysis and can lead to the ability to predict the “output” with high levels of accuracy. Supervised learning is the most common ML approach for healthcare data and recent studies have developed algorithms to predict patient-specific outcome after surgical procedures such as hip arthroscopy and anterior cruciate ligament reconstruction. Deep learning is a higher-level ML approach that facilitates the processing and interpretation of complex datasets through artificial neural networks that are inspired by the way the human brain processes information. In orthopaedic sports medicine, deep learning has primarily been used for automatic image (computer vision) and text (natural language processing) interpretation. While applications in orthopaedic sports medicine have been increasing exponentially, one significant barrier to widespread adoption of ML remains clinician unfamiliarity with the associated methods and concepts. The goal of this review is to introduce these concepts, review current machine learning models in orthopaedic sport medicine, and discuss future opportunities for innovation within the specialty.

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运动医学中的机器学习/人工智能:艺术现状与未来方向》。
机器学习(ML)正在改变医疗保健的实践方式,这些新型统计技术的最新应用已开始影响骨科运动医学。机器学习能够分析大量数据,在 "输入 "和 "输出 "变量之间建立复杂的关系。这些关系可能比通过传统统计分析建立的关系更加复杂,并能带来高准确度的 "输出 "预测能力。监督学习是医疗保健数据最常用的 ML 方法,最近的研究开发了一些算法,用于预测髋关节镜和前十字韧带重建等外科手术后特定患者的预后。深度学习是一种更高层次的 ML 方法,它通过人工神经网络来处理和解释复杂的数据集,其灵感来源于人脑处理信息的方式。在骨科运动医学中,深度学习主要用于自动图像(计算机视觉)和文本(自然语言处理)解释。虽然运动骨科医学中的应用呈指数级增长,但临床医生对相关方法和概念的不熟悉仍然是阻碍广泛采用 ML 的一个重要因素。本综述旨在介绍这些概念,回顾当前矫形运动医学中的机器学习模型,并讨论该专业未来的创新机会。
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来源期刊
CiteScore
2.90
自引率
6.20%
发文量
61
审稿时长
108 days
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