Meng Xinyi, Du Yongku, Jia Rongrong, Zhou Qing, Xia Yuwei, Shi Feng, Zhao Fanhui, Gao Yanjun
Xi'an Key Laboratory of Metabolic Disease Imaging, Xi'an No. 3 Hospital, Affiliated Hospital of Northwest University, Xi'an, China.
Radiology Department, Xi'an No. 5 Hospital, Xi'an, China.
Quant Imaging Med Surg. 2025 Jun 6;15(6):5137-5150. doi: 10.21037/qims-2024-2742. Epub 2025 Jun 3.
Grading assessment of sacroiliitis via X-ray is widely used in clinical evaluation. The aim of this study was to develop and validate an artificial intelligence (AI) system to help physicians in assessing and diagnosing sacroiliitis from standard X-ray images.
In this retrospective study, a deep learning model for the automated grading assessment of radiographic sacroiliitis was developed using pelvic X-ray images from a training set of 465 individuals (930 single sacroiliac joints) and a validation set of 195 individuals (390 single sacroiliac joints). The algorithm was tested using an external test set of 223 individuals (446 single sacroiliac joints). The receiver operating characteristic (ROC) curve was used to calculate the area under the curve (AUC), sensitivity, and specificity to assess the model's performance. The findings of the model were used as a reference to determine its utility in aiding radiologists in the diagnosis and grading assessment of sacroiliitis.
The neural network model demonstrated proficiency in assessing grading of sacroiliitis. In the external test set, the model achieved a grading accuracy rate of 63.90% for radiographic sacroiliitis, and its diagnostic accuracy for determining the presence of radiographic sacroiliitis reached 90.13%. With the assistance of the model, the diagnostic accuracy of radiological sacroiliac arthritis by two junior imaging physicians improved significantly, increasing from 92.45% and 91.10% to 97.17% and 95.29%, respectively. Furthermore, the accuracy of image grading (grades 0 to 4) also showed notable improvement, rising from 75.00% and 74.08% to 88.89% and 80.90%, respectively.
The AI model demonstrated high diagnostic accuracy and can greatly enhance the precision of radiographic sacroiliitis grading.
通过X线对骶髂关节炎进行分级评估在临床评估中被广泛应用。本研究的目的是开发并验证一种人工智能(AI)系统,以帮助医生从标准X线图像中评估和诊断骶髂关节炎。
在这项回顾性研究中,利用来自465名个体(930个单骶髂关节)的训练集和195名个体(390个单骶髂关节)的验证集的骨盆X线图像,开发了一种用于放射学骶髂关节炎自动分级评估的深度学习模型。该算法使用223名个体(446个单骶髂关节)的外部测试集进行测试。采用受试者工作特征(ROC)曲线来计算曲线下面积(AUC)、敏感性和特异性,以评估模型的性能。模型的结果被用作参考,以确定其在辅助放射科医生进行骶髂关节炎诊断和分级评估中的效用。
神经网络模型在评估骶髂关节炎分级方面表现出专业能力。在外部测试集中,该模型对放射学骶髂关节炎的分级准确率达到63.90%,其诊断放射学骶髂关节炎存在与否的准确率达到90.13%。在该模型的辅助下,两名初级影像科医生对放射学骶髂关节炎的诊断准确率显著提高,分别从92.45%和91.10%提高到97.17%和95.29%。此外,图像分级(0至4级)的准确性也有显著提高,分别从75.00%和74.08%提高到88.89%和80.90%。
AI模型显示出较高的诊断准确性,并且可以大大提高放射学骶髂关节炎分级的精度。