医学
磁共振成像
滑膜炎
接收机工作特性
组内相关
秩相关
类风湿性关节炎
分割
核医学
动态增强MRI
斯皮尔曼秩相关系数
相关性
人工智能
放射科
计算机科学
数学
内科学
机器学习
临床心理学
几何学
心理测量学
作者
Yijun Mao,Keizo Imahori,Wanxuan Fang,Hiroyuki Sugimori,Shinji Kiuch,Kenneth Sutherland,Tamotsu Kamishima
摘要
Background Challenges persist in achieving automatic and efficient inflammation quantification using dynamic contrast‐enhanced (DCE) MRI in rheumatoid arthritis (RA) patients. Purpose To investigate an automatic artificial intelligence (AI) approach and an optimized dynamic MRI protocol for quantifying disease activity in RA in whole hands while excluding arterial pixels. Study Type Retrospective. Subjects Twelve RA patients underwent DCE‐MRI with 27 phases for creating the AI model and tested on images with a variable number of phases from 35 RA patients. Field Strength/Sequence 3.0 T/DCE T1‐weighted gradient echo sequence (mDixon, water image). Assessment The model was trained with various DCE‐MRI time‐intensity number of phases. Evaluations were conducted for similarity between AI segmentation and manual outlining in 51 ROIs with synovitis. The relationship between synovial volume via AI segmentation with rheumatoid arthritis magnetic resonance imaging scoring (RAMRIS) across whole hands was then evaluated. The reference standard was determined by an experienced musculoskeletal radiologist. Statistical Test Area under the curve (AUC) of receiver operating characteristic (ROC), Dice and Spearman's rank correlation coefficients, and interclass correlation coefficient (ICC). A P ‐value <0.05 was considered statistically significant. Results A minimum of 15 phases (acquisition time at least 2.5 minutes) was found to be necessary. AUC ranged from 0.941 ± 0.009 to 0.965 ± 0.009. The Dice score was 0.557–0.615. Spearman's correlation coefficients between the AI model and ground truth were 0.884–0.927 and 0.736–0.831, for joint ROIs and whole hands, respectively. The Spearman's correlation coefficient for the additional test set between the model trained with 15 phases and RAMRIS was 0.768. Conclusion The AI‐based classification model effectively identified synovitis pixels while excluding arteries. The optimal performance was achieved with at least 15 phases, providing a quantitative assessment of inflammatory activity in RA while minimizing acquisition time. Evidence Level 3 Technical Efficacy Stage 2
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