THE PROGRESS IN THE RESEARCH OF MACHINE LEARNING IN SPORTS MEDICINE

Katherine Ning LI
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Abstract

To explore the prospects and challenges of applying artificial intelligence and its machine learning subfield in sports medicine, to drive knowledge innovation in this domain. Research Content includes Applications of machine learning in sports medicine: Clustering and classifying athlete data, developing predictive models to optimize training and prevent injuries, and providing interpretable decision support for medical professionals. Challenges of machine learning in sports medicine: Issues with data availability and quality, model interpretability and transparency, as well as the integration with existing workflows. In summary, the potential of AI and machine learning in sports medicine is immense, but to fully harness their transformative value, interdisciplinary collaboration, data sharing, rigorous validation, and the establishment of ethical guidelines are essential. Only through these collective efforts can the field optimize athlete training, prevent injuries, and drive overall innovation in sports medicine. KEYWORD: Machine Learning,Sports Medicine , Artificial intelligence ,Knowledge Representation, Decision Support
运动医学中的机器学习研究进展情况
探索人工智能及其机器学习子领域在运动医学中的应用前景和挑战,推动该领域的知识创新。研究内容包括机器学习在运动医学中的应用:对运动员数据进行聚类和分类,开发预测模型以优化训练和预防损伤,并为医疗专业人员提供可解释的决策支持。机器学习在运动医学中的挑战:数据的可用性和质量、模型的可解释性和透明度以及与现有工作流程的整合等问题。总之,人工智能和机器学习在运动医学中的潜力是巨大的,但要充分利用其变革性价值,跨学科合作、数据共享、严格验证和建立伦理准则是必不可少的。只有通过这些共同努力,运动医学领域才能优化运动员训练、预防损伤并推动运动医学的全面创新。 关键词:机器学习,运动医学,人工智能,知识表示,决策支持
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