A Deep Learning Algorithm for Radiographic Measurements of the Hip in Adults-A Reliability and Agreement Study.

IF 3.3
Janni Jensen, Ole Graumann, Søren Overgaard, Oke Gerke, Michael Lundemann, Martin Haagen Haubro, Claus Varnum, Lene Bak, Janne Rasmussen, Lone B Olsen, Benjamin S B Rasmussen
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引用次数: 5

Abstract

Hip dysplasia (HD) is a frequent cause of hip pain in skeletally mature patients and may lead to osteoarthritis (OA). An accurate and early diagnosis may postpone, reduce or even prevent the onset of OA and ultimately hip arthroplasty at a young age. The overall aim of this study was to assess the reliability of an algorithm, designed to read pelvic anterior-posterior (AP) radiographs and to estimate the agreement between the algorithm and human readers for measuring (i) lateral center edge angle of Wiberg (LCEA) and (ii) Acetabular index angle (AIA). The algorithm was based on deep-learning models developed using a modified U-net architecture and ResNet 34. The newly developed algorithm was found to be highly reliable when identifying the anatomical landmarks used for measuring LCEA and AIA in pelvic radiographs, thus offering highly consistent measurement outputs. The study showed that manual identification of the same landmarks made by five specialist readers were subject to variance and the level of agreement between the algorithm and human readers was consequently poor with mean measured differences from 0.37 to 9.56° for right LCEA measurements. The algorithm displayed the highest agreement with the senior orthopedic surgeon. With further development, the algorithm may be a good alternative to humans when screening for HD.

Abstract Image

Abstract Image

Abstract Image

用于成人髋关节放射测量的深度学习算法-可靠性和一致性研究。
髋关节发育不良(HD)是骨骼成熟患者髋关节疼痛的常见原因,并可能导致骨关节炎(OA)。准确和早期的诊断可以延缓、减少甚至预防骨性关节炎的发生,并最终在年轻时进行髋关节置换术。本研究的总体目的是评估一种算法的可靠性,该算法被设计用于读取骨盆前后(AP) x线片,并评估该算法与人类读者在测量(i) Wiberg侧中心边缘角(LCEA)和(ii)髋臼指数角(AIA)时的一致性。该算法基于使用改进的U-net架构和ResNet 34开发的深度学习模型。新开发的算法在识别用于骨盆x线片测量LCEA和AIA的解剖标志时具有很高的可靠性,从而提供高度一致的测量输出。研究表明,由5名专业读者手工识别的相同地标存在差异,因此算法与人类读者之间的一致性很差,正确LCEA测量的平均测量差异为0.37至9.56°。该算法与资深骨科医生的一致性最高。随着进一步的发展,该算法可能是一个很好的替代人类筛查HD。
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