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Peering Into the Black Box of Artificial Intelligence: Evaluation Metrics of Machine Learning Methods

机译:凝视着人工智能的黑匣子:机器学习方法的评估度量

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摘要

OBJECTIVE. Machine learning (ML) and artificial intelligence (AI) are rapidly becoming the most talked about and controversial topics in radiology and medicine. Over the past few years, the numbers of ML- or AI-focused studies in the literature have increased almost exponentially, and ML has become a hot topic at academic and industry conferences. However, despite the increased awareness of ML as a tool, many medical professionals have a poor understanding of how ML works and how to critically appraise studies and tools that are presented to us. Thus, we present a brief overview of ML, explain the metrics used in ML and how to interpret them, and explain some of the technical jargon associated with the field so that readers with a medical background and basic knowledge of statistics can feel more comfortable when examining ML applications.
机译:客观的。 机器学习(ML)和人工智能(AI)正在迅速成为放射学和医学中最讨论的和争议的主题。 在过去的几年中,文献中的ML-或AI的重点研究的数量几乎是指数增加的,ML已成为学术和行业会议的热门话题。 然而,尽管对ML作为工具的意识提高,但许多医学专业人员对ML工作方式的理解差,以及如何批判性评估向我们呈现的研究和工具。 因此,我们介绍了ML的简要概述,解释ML中使用的指标以及如何解释它们,并解释与该领域相关的一些技术术语,以便读者具有医学背景和统计数据的基本知识可能会感觉更舒适 检查ML应用程序。

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