医学
骨关节炎
射线照相术
放射科
核医学
口腔正畸科
物理疗法
病理
替代医学
作者
Mathias W. Brejnebøl,Anders Lenskjold,Katharina Ziegeler,Huib Ruitenbeek,F. Müller,Janus Damm Nybing,Jacob J. Visser,Loes M. Schiphouwer,Jorrit Jasper,Behschad Bashian,Haoyin Cao,Maximilian Muellner,Sebastian Dahlmann,Dimitar Ivanov Radev,Ann Ganestam,Camilla T. Nielsen,Carsten U. Stroemmen,Edwin H. G. Oei,Kay‐Geert Hermann,Mikael Boesen
出处
期刊:Radiology
[Radiological Society of North America]
日期:2024-07-01
卷期号:312 (1)
被引量:1
标识
DOI:10.1148/radiol.233341
摘要
Background Due to conflicting findings in the literature, there are concerns about a lack of objectivity in grading knee osteoarthritis (KOA) on radiographs. Purpose To examine how artificial intelligence (AI) assistance affects the performance and interobserver agreement of radiologists and orthopedists of various experience levels when evaluating KOA on radiographs according to the established Kellgren-Lawrence (KL) grading system. Materials and Methods In this retrospective observer performance study, consecutive standing knee radiographs from patients with suspected KOA were collected from three participating European centers between April 2019 and May 2022. Each center recruited four readers across radiology and orthopedic surgery at in-training and board-certified experience levels. KL grading (KL-0 = no KOA, KL-4 = severe KOA) on the frontal view was assessed by readers with and without assistance from a commercial AI tool. The majority vote of three musculoskeletal radiology consultants established the reference standard. The ordinal receiver operating characteristic method was used to estimate grading performance. Light kappa was used to estimate interrater agreement, and bootstrapped
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