Department of Orthopedics, Xijing Hospital, Air Force Military Medical University, No.169 Changle West Road, Xi'an, Shaanxi Province, 710032, China.
School of Electrical Engineering, Xi'an Jiaotong University, No.28 West Xianning Road, Xi'an, Shaanxi, 710049, China.
J Digit Imaging. 2022 Dec;35(6):1506-1513. doi: 10.1007/s10278-022-00672-1. Epub 2022 Jun 16.
The rotation and tilt of the pelvis during anteroposterior pelvic radiography can lead to misdiagnosis of developmental dysplasia of the hip (DDH) in children. At present, no method exists for accurately and conveniently measuring the precise rotation and tilt angles of pelvic on radiographs. The objective of this study was to develop several rotation and tilt measurement models using transfer learning and digital reconstructed radiographs (DRRs), and to compare their performances on pelvic radiographs. Based on the inclusion criteria, 30 of 92 children who underwent 3D hip CT scans at Xijing Hospital from 2015 to 2020 were included in the study. Using DRR techniques, radiographs were generated by rotating and tilting the pelvis in CT datasets at - 12 to 12° (projected every 3°) and were randomized to a 2:1:1 ratio of training dataset, validation dataset, and test dataset. Five pre-trained networks, including VGG16, Xception, VGG19, ResNet50 and InceptionV3 were used to develop pelvic rotation measurement models and tilt measurement models, and these models were trained with training dataset. The callback function was used during the training to slow down the learning rate when learning was stalled. Then, the validation set was used to optimize each model and compare their performances. At last, we tested the final performances of optimal rotation measurement model and optimal tilt measurement model on test dataset. The mean absolute error (MAE) was employed to assess the performance of the models. A total of 2430 pelvic DRRs were collected based on 30 CT datasets. Among 5 pre-trained transfer learning models, VGG16-Tilt achieved the best tilt prediction performance at the same BS and different LR. VGG16-Tilt model achieved its best performance on validation set at LR = 0.001 and BS = 4, and the final MAE on the test set was 0.5250°. In terms of rotation prediction, VGG16-Rotation also achieved the best performance, and it achieved its best performance on validation set at LR = 0.002 and BS = 8. The final MAE of VGG16-Rotation on the test set was 1.0731°. Pretrained transfer learning models worked well in predicting tilt and rotation angles of the pelvis on radiographs in children. Among them, VGG16-Tilt and VGG16-Rotation had the best effect in dealing with such problems despite their simple structures. These models deployed in devices can give orthopedic surgeons a powerful aid in DDH diagnosis.
骨盆在前后位骨盆 X 线摄影中的旋转和倾斜可导致儿童发育性髋关节发育不良(DDH)的误诊。目前,尚无一种方法可准确、方便地测量 X 线片上骨盆的精确旋转和倾斜角度。本研究旨在利用迁移学习和数字重建射线照片(DRR)开发几种旋转和倾斜测量模型,并比较它们在骨盆 X 线片上的性能。根据纳入标准,从 2015 年至 2020 年,在西京医院接受 3D 髋关节 CT 扫描的 92 名儿童中有 30 名符合条件。使用 DRR 技术,通过在 CT 数据集上旋转和倾斜骨盆来生成射线照片,旋转角度为-12 至 12°(每隔 3°投影一次),并以 2:1:1 的比例随机分为训练数据集、验证数据集和测试数据集。使用 5 种预先训练的网络,包括 VGG16、Xception、VGG19、ResNet50 和 InceptionV3 来开发骨盆旋转测量模型和倾斜测量模型,并使用训练数据集对这些模型进行训练。在训练过程中,使用回调函数在学习停滞时降低学习率。然后,使用验证集优化每个模型并比较它们的性能。最后,我们在测试数据集上测试了最佳旋转测量模型和最佳倾斜测量模型的最终性能。使用平均绝对误差(MAE)评估模型的性能。基于 30 个 CT 数据集,共收集了 2430 个骨盆 DRR。在 5 种预先训练的迁移学习模型中,VGG16-Tilt 在相同的 BS 和不同的 LR 下实现了最佳的倾斜预测性能。VGG16-Tilt 模型在 LR=0.001 和 BS=4 时在验证集上达到最佳性能,在测试集上的最终 MAE 为 0.5250°。在旋转预测方面,VGG16-Rotation 也达到了最佳性能,在 LR=0.002 和 BS=8 时在验证集上达到最佳性能。VGG16-Rotation 在测试集上的最终 MAE 为 1.0731°。预先训练的迁移学习模型在预测儿童骨盆 X 线片上的倾斜和旋转角度方面表现良好。其中,VGG16-Tilt 和 VGG16-Rotation 尽管结构简单,但在处理此类问题方面效果最佳。这些模型在设备中的部署可以为骨科医生提供 DDH 诊断的有力辅助。