IEEE Trans Neural Netw Learn Syst. 2021 Mar;32(3):932-946. doi: 10.1109/TNNLS.2021.3054746. Epub 2021 Mar 1.
Chest computed tomography (CT) imaging has become indispensable for staging and managing coronavirus disease 2019 (COVID-19), and current evaluation of anomalies/abnormalities associated with COVID-19 has been performed majorly by the visual score. The development of automated methods for quantifying COVID-19 abnormalities in these CT images is invaluable to clinicians. The hallmark of COVID-19 in chest CT images is the presence of ground-glass opacities in the lung region, which are tedious to segment manually. We propose anamorphic depth embedding-based lightweight CNN, called Anam-Net, to segment anomalies in COVID-19 chest CT images. The proposed Anam-Net has 7.8 times fewer parameters compared to the state-of-the-art UNet (or its variants), making it lightweight capable of providing inferences in mobile or resource constraint (point-of-care) platforms. The results from chest CT images (test cases) across different experiments showed that the proposed method could provide good Dice similarity scores for abnormal and normal regions in the lung. We have benchmarked Anam-Net with other state-of-the-art architectures, such as ENet, LEDNet, UNet++, SegNet, Attention UNet, and DeepLabV3+. The proposed Anam-Net was also deployed on embedded systems, such as Raspberry Pi 4, NVIDIA Jetson Xavier, and mobile-based Android application (CovSeg) embedded with Anam-Net to demonstrate its suitability for point-of-care platforms. The generated codes, models, and the mobile application are available for enthusiastic users at https://github.com/NaveenPaluru/Segmentation-COVID-19.
胸部计算机断层扫描 (CT) 成像对于 2019 年冠状病毒病 (COVID-19) 的分期和管理变得不可或缺,目前主要通过视觉评分来评估与 COVID-19 相关的异常/异常。开发用于量化这些 CT 图像中 COVID-19 异常的自动化方法对临床医生来说是非常宝贵的。COVID-19 在胸部 CT 图像中的特征是肺部存在磨玻璃样混浊,手动分割这些混浊非常繁琐。我们提出了一种基于变形深度嵌入的轻量级卷积神经网络,称为 Anam-Net,用于分割 COVID-19 胸部 CT 图像中的异常。与最先进的 UNet(或其变体)相比,所提出的 Anam-Net 具有 7.8 倍的参数少,使其成为轻量级的,可以在移动或资源受限(护理点)平台上提供推理。来自不同实验的胸部 CT 图像(测试用例)的结果表明,该方法可以为肺部异常和正常区域提供良好的 Dice 相似性得分。我们已经将 Anam-Net 与其他最先进的架构(如 ENet、LEDNet、UNet++、SegNet、Attention UNet 和 DeepLabV3+)进行了基准测试。所提出的 Anam-Net 还部署在嵌入式系统上,例如 Raspberry Pi 4、NVIDIA Jetson Xavier 和基于移动的 Android 应用程序(CovSeg),其中嵌入了 Anam-Net,以展示其在护理点平台上的适用性。感兴趣的用户可以在 https://github.com/NaveenPaluru/Segmentation-COVID-19 上获得生成的代码、模型和移动应用程序。