Clinical Applications of Machine Learning

N. Mateussi, Michael P. Rogers, Emily A. Grimsley, M. Read, Rajavi Parikh, Ricardo Pietrobon, Paul C. Kuo
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Abstract

This review introduces interpretable predictive machine learning approaches, natural language processing, image recognition, and reinforcement learning methodologies to familiarize end users. As machine learning, artificial intelligence, and generative artificial intelligence become increasingly utilized in clinical medicine, it is imperative that end users understand the underlying methodologies. This review describes publicly available datasets that can be used with interpretable predictive approaches, natural language processing, image recognition, and reinforcement learning models, outlines result interpretation, and provides references for in-depth information about each analytical framework. This review introduces interpretable predictive machine learning models, natural language processing, image recognition, and reinforcement learning methodologies. Interpretable predictive machine learning models, natural language processing, image recognition, and reinforcement learning are core machine learning methodologies that underlie many of the artificial intelligence methodologies that will drive the future of clinical medicine and surgery. End users must be well versed in the strengths and weaknesses of these tools as they are applied to patient care now and in the future.
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机器学习的临床应用
本综述介绍了可解释的预测性机器学习方法、自然语言处理、图像识别和强化学习方法,以便终端用户熟悉这些方法。 随着机器学习、人工智能和生成式人工智能越来越多地应用于临床医学,终端用户必须了解其基本方法。 本综述介绍了可用于可解释预测方法、自然语言处理、图像识别和强化学习模型的公开数据集,概述了结果解释,并提供了有关每个分析框架深入信息的参考文献。 本综述介绍了可解释预测机器学习模型、自然语言处理、图像识别和强化学习方法。 可解释预测机器学习模型、自然语言处理、图像识别和强化学习是核心机器学习方法,是许多人工智能方法的基础,将推动未来临床医学和外科手术的发展。终端用户必须精通这些工具的优缺点,因为它们现在和将来都会被应用到病人护理中。
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