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Anatomy-Aware Siamese Network: Exploiting Semantic Asymmetry for Accurate Pelvic Fracture Detection in X-Ray Images

机译:解剖学感知暹罗网络:利用语义不对称在X射线图像中精确骨盆断裂检测

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Visual cues of enforcing bilaterally symmetric anatomies as normal findings are widely used in clinical practice to disambiguate subtle abnormalities from medical images. So far, inadequate research attention has been received on effectively emulating this practice in computer-aided diagnosis (CAD) methods. In this work, we exploit semantic anatomical symmetry or asymmetry analysis in a complex CAD scenario, i.e., anterior pelvic fracture detection in trauma pelvic X-rays (PXRs), where semantically pathological (refer to as fracture) and non-pathological (e.g. pose) asymmetries both occur. Visually subtle yet pathologically critical fracture sites can be missed even by experienced clinicians, when limited diagnosis time is permitted in emergency care. We propose a novel fracture detection framework that builds upon a Siamese network enhanced with a spatial transformer layer to holistically analyze symmetric image features. Image features are spatially formatted to encode bilaterally symmetric anatomies. A new contrastive feature learning component in our Siamese network is designed to optimize the deep image features being more salient corresponding to the underlying semantic asymmetries (caused by pelvic fracture occurrences). Our proposed method have been extensively evaluated on 2,359 PXRs from unique patients (the largest study to-date), and report an area under ROC curve score of 0.9771. This is the highest among state-of-the-art fracture detection methods, with improved clinical indications.
机译:在临床实践中广泛应用于正常调查的视觉提示,以临床实践中消除医学图像的微妙异常。到目前为止,已接受了在计算机辅助诊断(CAD)方法中有效地模仿这种做法的研究注意力不足。在这项工作中,我们在复杂的CAD场景中利用语义解剖学对称或不对称性分析,即创伤骨盆X射线(PXRS)中的前盆腔断裂检测,其中语义病理(称为骨折)和非病理(例如姿势) )两者都发生不对称。当经验丰富的临床医生时,甚至可以错过视觉微妙但病态的临界骨折位点,当时在紧急护理中允许有限的诊断时间。我们提出了一种新颖的裂缝检测框架,其在暹罗网络上建立了一种以空间变压器层增强到全能分析对称图像特征。图像特征在空间地格式化以编码双边对称解剖结构。我们暹罗网络中的新对比特征学习组件旨在优化对应于底层语义不对称的深度图像特征(由骨盆骨折发生引起)。我们提出的方法已广泛评估了来自独特患者的2,359个PXRS(最大的研究到日期),并在ROC曲线评分为0.9771的区域下报告面积。这是最先进的骨折检测方法中最高,具有改善的临床适应症。

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