论文标题
3D通过虚拟多视图投影和重建3D无监督的异常检测和定位:低剂量胸部计算机断层扫描的临床验证
3D unsupervised anomaly detection and localization through virtual multi-view projection and reconstruction: Clinical validation on low-dose chest computed tomography
论文作者
论文摘要
基于深度学习的低剂量计算机断层扫描(CT)的计算机辅助诊断最近引起了人们的关注,因为它具有很高的精度和低辐射暴露,因此作为一线自动测试工具。但是,现有的方法依赖于监督的学习,给医生施加额外的负担,以收集疾病数据或注释空间标签以进行网络培训,从而阻碍了他们的实施。我们提出了一种基于深层神经网络的方法,用于计算机辅助诊断,称为虚拟多视图投影和重建,用于无监督的异常检测。据推测,这是仅需要健康患者数据进行培训的第一种方法来识别包含任何异常的三维(3D)区域。该方法具有三个关键组件。与现有使用常规CT切片作为网络输入的现有计算机辅助诊断工具不同,我们的方法1)通过投射提取的3D肺部区域来改善对3D肺结构的识别,从而从多样化的视图中获得二维(2D)图像,以获得网络输入的二维(2D)图像,2)可用于实现INTUPTITION,以适用于本质Anom Annom Annom Annom Annom ANOM 3)3D)使用多个2D异常图的恢复方法。与基于监督学习(曲线下的面积为0.848)相比,基于无监督学习的提出方法将患者级的异常检测提高了10%(曲线下的面积为0.959),并以93%的精度定位了异常区域,表明其高性能。
Computer-aided diagnosis for low-dose computed tomography (CT) based on deep learning has recently attracted attention as a first-line automatic testing tool because of its high accuracy and low radiation exposure. However, existing methods rely on supervised learning, imposing an additional burden to doctors for collecting disease data or annotating spatial labels for network training, consequently hindering their implementation. We propose a method based on a deep neural network for computer-aided diagnosis called virtual multi-view projection and reconstruction for unsupervised anomaly detection. Presumably, this is the first method that only requires data from healthy patients for training to identify three-dimensional (3D) regions containing any anomalies. The method has three key components. Unlike existing computer-aided diagnosis tools that use conventional CT slices as the network input, our method 1) improves the recognition of 3D lung structures by virtually projecting an extracted 3D lung region to obtain two-dimensional (2D) images from diverse views to serve as network inputs, 2) accommodates the input diversity gain for accurate anomaly detection, and 3) achieves 3D anomaly/disease localization through a novel 3D map restoration method using multiple 2D anomaly maps. The proposed method based on unsupervised learning improves the patient-level anomaly detection by 10% (area under the curve, 0.959) compared with a gold standard based on supervised learning (area under the curve, 0.848), and it localizes the anomaly region with 93% accuracy, demonstrating its high performance.