Xia Shuda, Archer Holden, Xi Yin, Wells Joel, Chhabra Avneesh
Department of Radiology, University of Texas Southwestern Medical Center, Dallas, TX, USA.
Acta Radiol. 2025 Mar 19:2841851251324551. doi: 10.1177/02841851251324551.
BackgroundHip dysplasia (HD) involves abnormal acetabular development, resulting in reduced femoral head coverage, labral tears, and cartilage injury. Machine learning (AI) advancements have enabled reproducible radiographic measurements for HD, such as lateral center edge angle (LCEA), Tonnis, and extrusion index. Moreover, incorporating 3D magnetic resonance imaging (MRI) alongside 2D MRI enhances diagnostic capabilities.PurposeTo correlate advanced MRI-assessed labral and cartilage injuries with validated AI-generated radiographic measurements.Material and MethodsThis study enrolled 139 patients (age range = 16-68 years) with HD, comprising a total of 156 hips. All patients had 2D and 3D MRI scans, four-view X-rays, and AI-generated radiographic measurements using a commercial AI program that utilized bony landmarks to generate measurements. Labral reconstructions were obtained for each hip, and a multi-reader study was conducted. Inter-reader (ICC) analysis and Spearman correlations were calculated.ResultsThe predominant location for the largest labral tear was anterosuperior (133/156, 90%), and paralabral cysts were observed in 53/156 (34%) cases. No statistically significant correlations were found between the length of labral tears and radiographic measurements. However, statistically significant correlations were observed between paralabral cysts and femoral head coverage, extrusion index, LCEA, and Tonnis measurements.ConclusionAI-generated radiographic measurements in HD exhibited weak correlations with advanced MRI findings, likely due to the condition's complex pathophysiology.
背景
髋关节发育不良(HD)涉及髋臼发育异常,导致股骨头覆盖减少、盂唇撕裂和软骨损伤。机器学习(AI)的进步使得能够对HD进行可重复的影像学测量,如外侧中心边缘角(LCEA)、托尼斯角和挤压指数。此外,将三维磁共振成像(MRI)与二维MRI相结合可提高诊断能力。
目的
将先进的MRI评估的盂唇和软骨损伤与经过验证的AI生成的影像学测量结果相关联。
材料与方法
本研究纳入了139例HD患者(年龄范围 = 16 - 68岁),共156个髋关节。所有患者均进行了二维和三维MRI扫描、四视图X线检查,并使用一个利用骨性标志进行测量的商业AI程序生成影像学测量结果。对每个髋关节进行盂唇重建,并开展多阅片者研究。计算阅片者间(ICC)分析和斯皮尔曼相关性。
结果
最大盂唇撕裂的主要位置是前上方(133/156,90%),53/156(34%)例观察到盂唇旁囊肿。盂唇撕裂长度与影像学测量之间未发现统计学显著相关性。然而,在盂唇旁囊肿与股骨头覆盖、挤压指数、LCEA和托尼斯测量之间观察到统计学显著相关性。
结论
HD中AI生成的影像学测量结果与先进的MRI表现之间的相关性较弱,可能是由于该疾病复杂的病理生理学原因。