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TexNet: Texture Loss Based Network for Gastric Antrum Segmentation in Ultrasound

机译:TexNet:超声胃窦分割的纹理损失网络

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摘要

Gastric Antrum (GA) cross-sectional area measurement using ultrasound imaging is an important point-of-care (POC) application in intense care unit (ICU) and anesthesia. GA in ultrasound images often show substantial differences in both shape and texture among subjects, leading to a challenging task of automated segmentation. To the best of our knowledge, no work has been published for this task. Meanwhile, dice similarity coefficient (DSC) based loss function has been widely used by CNN-based segmentation methods. Simply calculating mask overlap, DSC is often biased towards shape and lack of generalization ability for cases with diversified and complicated texture patterns. In this paper, we present a robust segmentation method (TexNet) by introducing a new loss function based on multiscale information of local boundary texture. The new texture loss provides a complementary measure of texture-wise accuracy in contour area which can reduce overfitting issues caused by using DSC loss alone. Experiments have been performed on 8487 images from 121 patients. Results show that TexNet outperforms state of the art methods with higher accuracy and better consistency. Besides GA, the proposed method could potentially be an ideal solution to segment other organs with large variation in both shape and texture among subjects.
机译:使用超声成像的胃窦(GA)横截面积测量是强烈护理单元(ICU)和麻醉中的重要疗程(POC)应用。超声图像中的GA经常显示对象之间的形状和质地的显着差异,导致自动分割的具有挑战性的任务。据我们所知,这项任务没有发布任何工作。同时,基于CNN的分段方法广泛使用基于骰子相似系数(DSC)的损耗函数。简单地计算掩模重叠,DSC通常朝向形状偏向,缺乏多样化和复杂纹理模式的情况。在本文中,我们通过基于局部边界纹理的多尺度信息引入新的损失函数来呈现强大的分割方法(TexNet)。新的纹理损失在轮廓区域中提供了纹理方面精度的互补度,这可以减少单独使用DSC损失引起的过度拟合问题。在121名患者的8487张图像上进行了实验。结果表明,TexNet优于最高精度和更好的一致性的现有技术。除GA外,所提出的方法可能是对受试者之间的形状和纹理的其他器官分段的理想解决方案。

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