Zheng Yuwen, Wu Yuhua, Chen Xiaofei, Wang Ping, Dong Fuwen, He Linyang, Su Qing, Cheng Guohua, Ma Chunyu, Yao Hongyan, Zhou Sheng
The First Clinical Medical College of Gansu University of Chinese Medicine, Lanzhou, China.
Xi'an Hospital of Traditional Chinese Medicine, Xi'an, China.
Quant Imaging Med Surg. 2025 Feb 1;15(2):1425-1438. doi: 10.21037/qims-24-1373. Epub 2025 Jan 22.
Rotator cuff injury is a common cause of shoulder pain. Precise and efficient measurement of morphological parameters is necessary in the clinical diagnosis and evaluation of shoulder disorders. However, manual measurement is a time-consuming and labor-intensive task, with low inter-observer reliability. The automatic measurement of radiographic parameters in supraspinatus outlet radiographs has not been reported yet. Thus, the objective of this study was to use a cascaded High-Resolution Net (HRNet) model based on deep learning (DL) algorithms to automatically measure morphological parameters from supraspinatus outlet radiographs and assess its performance. It was intended for use in early screening of patients with rotator cuff disease and to guide them to further consultation.
This cross-sectional study collected 1,668 supraspinatus outlet radiographs from the picture archiving and communication system of Gansu Provincial Hospital of Traditional Chinese Medicine and the Affiliated Hospital of Gansu University of Chinese Medicine. Among them, 521 images were provided for test datasets and 1,147 images were provided for a model training dataset and validation dataset. Landmarks were annotated for acromio-humeral interval (AHI), acromial tilt (AT), and 3 lines in Park's acromial classification (line huo-acrf, line acro-acro1, and line huo-acro1). R4 radiologist reviewed the means of 3 radiologists as a reference standard. Model performance was assessed by calculating the percentage of correct key points (PCK), intra-class correlation coefficients (ICCs), Pearson's correlation coefficients, mean absolute error, and root mean square error. The reliability of R1, R2, R3, AI with R4 and inter-observer reliability of R1, R2, and R3 for acromial morphology classification were assessed by Cohen's kappa coefficient.
Within the 3-mm threshold, the PCK of the model ranged from 74% to 100%. Compared to the reference standard, the model had reliable measurement of AHI, AT, line huo-acrf, line acro-acro1, line huo-acro1 (ICC =0.73-0.94) and moderate reliability of acromial morphology classification (k=0.50-0.56).
The cascaded HRNet developed in this study can automatically measure morphological parameters of the shoulder. It may aid early clinical screening for shoulder disorders and assist physicians in treatment decisions.
肩袖损伤是肩部疼痛的常见原因。在肩部疾病的临床诊断和评估中,精确且高效地测量形态学参数是必要的。然而,手动测量是一项耗时且费力的任务,观察者间的可靠性较低。目前尚未有关于自动测量冈上肌出口位X线片上的影像学参数的报道。因此,本研究的目的是使用基于深度学习(DL)算法的级联高分辨率网络(HRNet)模型,从冈上肌出口位X线片中自动测量形态学参数并评估其性能。其旨在用于肩袖疾病患者的早期筛查,并指导他们进一步咨询。
本横断面研究从甘肃省中医院和甘肃中医药大学附属医院的图像存档与通信系统中收集了1668张冈上肌出口位X线片。其中,521张图像用于测试数据集,1147张图像用于模型训练数据集和验证数据集。对肩峰-肱骨间距(AHI)、肩峰倾斜度(AT)以及Park肩峰分类中的3条线(线huo-acrf、线acro-acro1和线huo-acro1)进行地标标注。4名放射科医生的测量均值经另一名放射科医生复核作为参考标准。通过计算关键点正确百分比(PCK)、组内相关系数(ICC)、Pearson相关系数、平均绝对误差和均方根误差来评估模型性能。通过Cohen's kappa系数评估R1、R2、R3、AI与R4之间的可靠性以及R1、R2和R3之间肩峰形态分类的观察者间可靠性。
在3毫米阈值内,模型的PCK范围为74%至100%。与参考标准相比,该模型对AHI、AT、线huo-acrf、线acro-acro1、线huo-acro1的测量具有可靠的结果(ICC = 0.73 - 0.94),对肩峰形态分类具有中等可靠性(k = 0.50 - 0.56)。
本研究中开发的级联HRNet能够自动测量肩部的形态学参数。它可能有助于肩部疾病的早期临床筛查,并协助医生进行治疗决策。