作者
Gary S. Collins,Karel G.M. Moons,Paula Dhiman,Richard D. Riley,Andrew L. Beam,Ben Van Calster,Marzyeh Ghassemi,Xiaoxuan Liu,Johannes B. Reitsma,Maarten van Smeden,Anne‐Laure Boulesteix,Jennifer Camaradou,Leo Anthony Celi,Spiros Denaxas,Alastair K. Denniston,Ben Glocker,Robert Golub,Hugh Harvey,Georg Heinze,Michael M. Hoffman,André Pascal Kengne,Emily Lam,Naomi Lee,Elizabeth Loder,Lena Maier‐Hein,Bilal A. Mateen,Melissa D. McCradden,Luke Oakden‐Rayner,Johan Ordish,Richard Parnell,Sherri Rose,Karandeep Singh,Laure Wynants,Patrícia Logullo
摘要
The TRIPOD (Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis) statement was published in 2015 to provide the minimum reporting recommendations for studies developing or evaluating the performance of a prediction model. Methodological advances in the field of prediction have since included the widespread use of artificial intelligence (AI) powered by machine learning methods to develop prediction models. An update to the TRIPOD statement is thus needed. TRIPOD+AI provides harmonised guidance for reporting prediction model studies, irrespective of whether regression modelling or machine learning methods have been used. The new checklist supersedes the TRIPOD 2015 checklist, which should no longer be used. This article describes the development of TRIPOD+AI and presents the expanded 27 item checklist with more detailed explanation of each reporting recommendation, and the TRIPOD+AI for Abstracts checklist. TRIPOD+AI aims to promote the complete, accurate, and transparent reporting of studies that develop a prediction model or evaluate its performance. Complete reporting will facilitate study appraisal, model evaluation, and model implementation.