Data Set Terminology of Deep Learning in Medicine: A Historical Review and Recommendation
Shannon L. Walston, Hiroshi Seki, Hirotaka Takita, Yasuhito Mitsuyama,, Shingo Sato, Akifumi Hagiwara, Rintaro Ito, Shouhei Hanaoka, Yukio Miki,, Daiju Ueda

TL;DR
This paper reviews the historical evolution of data set terminology in medical AI, emphasizing the importance of clear, standardized language to improve communication and research quality in interdisciplinary collaborations.
Contribution
It provides a comprehensive historical analysis of terminology, clarifies classifications of data sets, and proposes pragmatic solutions for terminological standardization in medical AI research.
Findings
Historical divergence of terminology clarified
Classification of data sets for AI evaluation provided
Recommendations for standardized terminology proposed
Abstract
Medicine and deep learning-based artificial intelligence (AI) engineering represent two distinct fields each with decades of published history. With such history comes a set of terminology that has a specific way in which it is applied. However, when two distinct fields with overlapping terminology start to collaborate, miscommunication and misunderstandings can occur. This narrative review aims to give historical context for these terms, accentuate the importance of clarity when these terms are used in medical AI contexts, and offer solutions to mitigate misunderstandings by readers from either field. Through an examination of historical documents, including articles, writing guidelines, and textbooks, this review traces the divergent evolution of terms for data sets and their impact. Initially, the discordant interpretations of the word 'validation' in medical and AI contexts are…
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Taxonomy
MethodsSparse Evolutionary Training
