1 Department of Radiology, Belfast City Hospital, 51 Lisburn Rd, Belfast, Antrim BT9 7AB, UK.
2 Royal College of Surgeons in Ireland, Dublin, Ireland.
AJR Am J Roentgenol. 2019 Jan;212(1):38-43. doi: 10.2214/AJR.18.20224. Epub 2018 Oct 17.
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.
Attention to sample size, overfitting, underfitting, cross validation, as well as a broad knowledge of the metrics of machine learning, can help those with little or no technical knowledge begin to assess machine learning studies. However, transparency in methods and sharing of algorithms is vital to allow clinicians to assess these tools themselves.
机器学习(ML)和人工智能(AI)正在迅速成为放射学和医学领域最热门和最具争议的话题。在过去的几年中,文献中以 ML 或 AI 为重点的研究数量几乎呈指数级增长,ML 已成为学术和行业会议上的热门话题。然而,尽管人们越来越意识到 ML 是一种工具,但许多医学专业人员对 ML 的工作原理以及如何批判性地评估向我们展示的研究和工具知之甚少。因此,我们简要介绍了 ML,解释了 ML 中使用的指标以及如何解释这些指标,并解释了与该领域相关的一些技术术语,以便具有医学背景和统计学基础知识的读者在检查 ML 应用程序时感到更加舒适。
关注样本量、过拟合、欠拟合、交叉验证,以及对机器学习指标的广泛了解,可以帮助那些技术知识很少或没有的人开始评估机器学习研究。然而,方法的透明度和算法的共享对于允许临床医生自行评估这些工具至关重要。