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运动医学中的黑箱预测方法应因其鲁莽行为而被红牌罚下:需要改变策略以推进运动员的护理。

Black Box Prediction Methods in Sports Medicine Deserve a Red Card for Reckless Practice: A Change of Tactics is Needed to Advance Athlete Care.

机构信息

Department of Orthopaedic Surgery & Rehabilitation, Wake Forest School of Medicine, Winston-Salem, NC, USA.

Centre for Sport, Exercise and Osteoarthritis Research Versus Arthritis, University of Oxford, Oxford, UK.

出版信息

Sports Med. 2022 Aug;52(8):1729-1735. doi: 10.1007/s40279-022-01655-6. Epub 2022 Feb 17.

Abstract

There is growing interest in the role of predictive analytics in sport, where such extensive data collection provides an exciting opportunity for the development and utilisation of prediction models for medical and performance purposes. Clinical prediction models have traditionally been developed using regression-based approaches, although newer machine learning methods are becoming increasingly popular. Machine learning models are considered 'black box'. In parallel with the increase in machine learning, there is also an emergence of proprietary prediction models that have been developed by researchers with the aim of becoming commercially available. Consequently, because of the profitable nature of proprietary systems, developers are often reluctant to transparently report (or make freely available) the development and validation of their prediction algorithms; the term 'black box' also applies to these systems. The lack of transparency and unavailability of algorithms to allow implementation by others of 'black box' approaches is concerning as it prevents independent evaluation of model performance, interpretability, utility, and generalisability prior to implementation within a sports medicine and performance environment. Therefore, in this Current Opinion article, we: (1) critically examine the use of black box prediction methodology and discuss its limited applicability in sport, and (2) argue that black box methods may pose a threat to delivery and development of effective athlete care and, instead, highlight why transparency and collaboration in prediction research and product development are essential to improve the integration of prediction models into sports medicine and performance.

摘要

人们对预测分析在体育中的作用越来越感兴趣,在体育领域,这种广泛的数据收集为开发和利用用于医疗和表现目的的预测模型提供了令人兴奋的机会。临床预测模型传统上是使用基于回归的方法开发的,尽管较新的机器学习方法越来越受欢迎。机器学习模型被认为是“黑箱”。随着机器学习的增加,也出现了一些专有的预测模型,这些模型是由研究人员开发的,目的是使其商业化。因此,由于专有系统的盈利性质,开发人员往往不愿意透明地报告(或免费提供)其预测算法的开发和验证;“黑箱”一词也适用于这些系统。缺乏透明度和无法获得算法来允许其他人实现“黑箱”方法,这令人担忧,因为这会阻止在运动医学和表现环境中实施模型性能、可解释性、实用性和通用性的独立评估。因此,在这篇述评文章中,我们:(1)批判性地审查了黑箱预测方法的使用,并讨论了其在体育领域的有限适用性;(2)认为黑箱方法可能对提供有效的运动员护理构成威胁,相反,强调了为什么预测研究和产品开发中的透明度和协作对于改善预测模型在运动医学和表现中的整合至关重要。

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