Department of Biomedical Informatics, Arizona State University, Scottsdale, AZ, USA.
Department of Radiology, Mayo Clinic, Scottsdale, AZ, USA.
Med Image Anal. 2019 Dec;58:101541. doi: 10.1016/j.media.2019.101541. Epub 2019 Aug 6.
Diagnosing pulmonary embolism (PE) and excluding disorders that may clinically and radiologically simulate PE poses a challenging task for both human and machine perception. In this paper, we propose a novel vessel-oriented image representation (VOIR) that can improve the machine perception of PE through a consistent, compact, and discriminative image representation, and can also improve radiologists' diagnostic capabilities for PE assessment by serving as the backbone of an effective PE visualization system. Specifically, our image representation can be used to train more effective convolutional neural networks for distinguishing PE from PE mimics, and also allows radiologists to inspect the vessel lumen from multiple perspectives, so that they can report filling defects (PE), if any, with confidence. Our image representation offers four advantages: (1) Efficiency and compactness-concisely summarizing the 3D contextual information around an embolus in only three image channels, (2) consistency-automatically aligning the embolus in the 3-channel images according to the orientation of the affected vessel, (3) expandability-naturally supporting data augmentation for training CNNs, and (4) multi-view visualization-maximally revealing filling defects. To evaluate the effectiveness of VOIR for PE diagnosis, we use 121 CTPA datasets with a total of 326 emboli. We first compare VOIR with two other compact alternatives using six CNN architectures of varying depths and under varying amounts of labeled training data. Our experiments demonstrate that VOIR enables faster training of a higher-performing model compared to the other compact representations, even in the absence of deep architectures and large labeled training sets. Our experiments comparing VOIR with the 3D image representation further demonstrate that the 2D CNN trained with VOIR achieves a significant performance gain over the 3D CNNs. Our robustness analyses also show that the suggested PE CAD is robust to the choice of CT scanner machines and the physical size of crops used for training. Finally, our PE CAD is ranked second at the PE challenge in the category of 0 mm localization error.
诊断肺栓塞 (PE) 并排除可能在临床和影像学上模拟 PE 的疾病对人类和机器感知都是一项具有挑战性的任务。在本文中,我们提出了一种新颖的基于血管的图像表示 (VOIR),通过一致、紧凑和有区别的图像表示来提高机器对 PE 的感知能力,并且可以作为有效的 PE 可视化系统的骨干来提高放射科医生对 PE 评估的诊断能力。具体来说,我们的图像表示可以用于训练更有效的卷积神经网络来区分 PE 和 PE 模拟物,并且还允许放射科医生从多个角度检查血管腔,以便他们可以有信心报告任何充盈缺损(PE)。我们的图像表示具有四个优点:(1) 高效和紧凑-仅用三个图像通道简洁地总结栓塞周围的 3D 上下文信息,(2) 一致性-根据受影响血管的方向自动对齐 3 通道图像中的栓塞,(3) 可扩展性-自然支持用于训练 CNN 的数据增强,以及 (4) 多视图可视化-最大程度地揭示充盈缺损。为了评估 VOIR 对 PE 诊断的有效性,我们使用了 121 个 CTPA 数据集,共有 326 个栓塞。我们首先使用六个具有不同深度的 CNN 架构并在不同数量的标记训练数据下,将 VOIR 与另外两种紧凑的替代方法进行比较。我们的实验表明,与其他紧凑表示相比,VOIR 即使在没有深度架构和大量标记训练集的情况下,也能够更快地训练出性能更高的模型。我们将 VOIR 与 3D 图像表示的实验比较进一步表明,使用 VOIR 训练的 2D CNN 比 3D CNN 取得了显著的性能提升。我们的稳健性分析还表明,所提出的 PE CAD 对 CT 扫描仪机器的选择和用于训练的作物的物理大小具有鲁棒性。最后,我们的 PE CAD 在定位误差为 0 毫米的类别中在 PE 挑战赛中排名第二。