Jodeiri Ata, Seyedarabi Hadi, Danishvar Sebelan, Shafiei Seyyed Hossein, Sales Jafar Ganjpour, Khoori Moein, Rahimi Shakiba, Mortazavi Seyed Mohammad Javad
Faculty of Electrical and Computer Engineering, University of Tabriz, Tabriz 51666, Iran.
Faculty of Advanced Medical Sciences, Tabriz University of Medical Sciences, Tabriz 51656, Iran.
Bioengineering (Basel). 2024 Feb 17;11(2):194. doi: 10.3390/bioengineering11020194.
Accurate and reliable estimation of the pelvic tilt is one of the essential pre-planning factors for total hip arthroplasty to prevent common post-operative complications such as implant impingement and dislocation. Inspired by the latest advances in deep learning-based systems, our focus in this paper has been to present an innovative and accurate method for estimating the functional pelvic tilt (PT) from a standing anterior-posterior (AP) radiography image. We introduce an encoder-decoder-style network based on a concurrent learning approach called VGG-UNET (VGG embedded in U-NET), where a deep fully convolutional network known as VGG is embedded at the encoder part of an image segmentation network, i.e., U-NET. In the bottleneck of the VGG-UNET, in addition to the decoder path, we use another path utilizing light-weight convolutional and fully connected layers to combine all extracted feature maps from the final convolution layer of VGG and thus regress PT. In the test phase, we exclude the decoder path and consider only a single target task i.e., PT estimation. The absolute errors obtained using VGG-UNET, VGG, and Mask R-CNN are 3.04 ± 2.49, 3.92 ± 2.92, and 4.97 ± 3.87, respectively. It is observed that the VGG-UNET leads to a more accurate prediction with a lower standard deviation (STD). Our experimental results demonstrate that the proposed multi-task network leads to a significantly improved performance compared to the best-reported results based on cascaded networks.
准确可靠地估计骨盆倾斜度是全髋关节置换术前规划的重要因素之一,可预防诸如植入物撞击和脱位等常见术后并发症。受基于深度学习系统的最新进展启发,我们在本文中的重点是提出一种创新且准确的方法,用于从站立位前后(AP)X线摄影图像估计功能性骨盆倾斜度(PT)。我们引入了一种基于名为VGG - UNET(嵌入U - NET中的VGG)的并发学习方法的编码器 - 解码器式网络,其中一个名为VGG的深度全卷积网络嵌入到图像分割网络(即U - NET)的编码器部分。在VGG - UNET的瓶颈处,除了解码器路径外,我们还使用另一条路径,利用轻量级卷积层和全连接层来组合从VGG的最终卷积层提取的所有特征图,从而回归PT。在测试阶段,我们排除解码器路径,仅考虑单个目标任务,即PT估计。使用VGG - UNET、VGG和Mask R - CNN获得的绝对误差分别为3.04±2.49、3.92±2.92和4.97±3.87。可以观察到,VGG - UNET以较低的标准差(STD)实现了更准确的预测。我们的实验结果表明,与基于级联网络的最佳报告结果相比,所提出的多任务网络性能有显著提高。