透明度(行为)
人工智能
计算机科学
研究伦理
伦理问题
工程伦理学
知识管理
管理科学
机器学习
计算机安全
工程类
作者
Sebastian J. Vollmer,Bilal A. Mateen,Gergő Bohner,Franz J. Király,Rayid Ghani,Páll Jónsson,Sarah Cumbers,Adrian Jonas,Katherine McAllister,Puja Myles,David Grainger,Mark Birse,Richard D. Branson,Karel G.M. Moons,Gary S. Collins,John P. A. Ioannidis,Chris Holmes,Harry Hemingway
摘要
Machine learning, artificial intelligence, and other modern statistical methods are providing new opportunities to operationalise previously untapped and rapidly growing sources of data for patient benefit. Despite much promising research currently being undertaken, particularly in imaging, the literature as a whole lacks transparency, clear reporting to facilitate replicability, exploration for potential ethical concerns, and clear demonstrations of effectiveness. Among the many reasons why these problems exist, one of the most important (for which we provide a preliminary solution here) is the current lack of best practice guidance specific to machine learning and artificial intelligence. However, we believe that interdisciplinary groups pursuing research and impact projects involving machine learning and artificial intelligence for health would benefit from explicitly addressing a series of questions concerning transparency, reproducibility, ethics, and effectiveness (TREE). The 20 critical questions proposed here provide a framework for research groups to inform the design, conduct, and reporting; for editors and peer reviewers to evaluate contributions to the literature; and for patients, clinicians and policy makers to critically appraise where new findings may deliver patient benefit.
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