In recent years, several works have adopted the convolutional neural network (CNN) to diagnose the avascular necrosis of the femoral head (AVNFH) based on X-ray images or magnetic resonance imaging (MRI). However, due to the tissue overlap, X-ray images are difficult to provide fine-grained features for early diagnosis. MRI, on the other hand, has a long imaging time, is more expensive, making it impractical in mass screening. Computed tomography (CT) shows layer-wise tissues, is faster to image, and is less costly than MRI. However, to our knowledge, there is no work on CT-based automated diagnosis of AVNFH. In this work, we collected and labeled a large-scale dataset for AVNFH ranking. In addition, existing end-to-end CNNs only yields the classification result and are difficult to provide more information for doctors in diagnosis. To address this issue, we propose the structure regularized attentive network (SRANet), which is able to highlight the necrotic regions during classification based on patch attention. SRANet extracts features in chunks of images, obtains weight via the attention mechanism to aggregate the features, and constrains them by a structural regularizer with prior knowledge to improve the generalization. SRANet was evaluated on our AVNFH-CT dataset. Experimental results show that SRANet is superior to CNNs for AVNFH classification, moreover, it can localize lesions and provide more information to assist doctors in diagnosis. Our codes are made public at https://github.com/tomas-lilingfeng/SRANet.
翻译:近些年来,有几部作品采用了共生神经网络(CNN)来根据X光图像或磁共振成像(MRI)来诊断血管头部(AVNFH)的血管坏死。然而,由于组织重叠,X光图像很难提供细微的早期诊断特征。另一方面,MRI的成像时间较长,因此在大规模筛查中不切实际。计算成像(CT)显示分层组织,比MRI更快,成本较低。然而,据我们了解,没有基于CT的AVNFH自动诊断。然而,由于组织重叠,我们收集X光图像很难提供细微的早期诊断特征。此外,现有的端对端CNN只能产生分类结果,也很难为诊断医生提供更多的信息。为了解决这一问题,我们建议结构化的分层观察网络(SRANet)可以提供比分层结构化的分解网络(SRANet),在分类过程中能够突出内分层区域。SRANet的分级特征有助于通过Cyalalalal SR的分级功能显示常规数据。SRODA的分数,SRAS-Ceral-dealalalalal-dealal-deal-I(通过Cenalation),Syal-deal-deal-dealation)可以通过Syal-Odal-deal-Odal-Syal-ID)来改善我们的分解,Stural-IFIFIFD-ID-IFD-ID-Stargal-I.Sturdaldaldal-I. Stradal-I.S-I.S-I.S-I.S-I.S-I.S-ID-ID-I.