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Tissue segmentation in volumetric laser endomicroscopy data using FusionNet and a domain-specific loss function

机译:使用FusionNet和域特定损耗功能的体积激光结尾体数据组织分割

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Volumetric Laser Endomicroscopy (VLE) is a promising balloon-based imaging technique for detecting early neoplasia in Barretts Esophagus. Especially Computer Aided Detection (CAD) techniques show great promise compared to medical doctors, who cannot reliably find disease patterns in the noisy VLE signal. However, an essential pre-processing step for the CAD system is tissue segmentation. At present, tissue is segmented manually but is not scalable for the entire VLE scan consisting of 1,200 frames of 4,096 × 2,048 pixels. Furthermore, the current CAD methods cannot use the VLE scans to their full potential, as only a small segment of the esophagus is selected for further processing, while an automated segmentation system results in significantly more available data. This paper explores the possibility of automatically segmenting relevant tissue for VLE scans using FusionNet and a domain-specific loss function. The contribution of this work is threefold. First, we propose a tissue segmentation algorithm for VLE scans. Second, we introduce a weighted ground truth that exploits the signal-to-noise ratio characteristics of the VLE data. Third, we compare our algorithm segmentation against two additional VLE experts. The results show that our algorithm annotations are indistinguishable from the expert annotations and therefore the algorithm can be used as a preprocessing step for further classification of the tissue.
机译:体积激光端子镜检查(VLE)是一种有前途的气球的成像技术,用于检测Barretts食道的早期肿瘤。特别是计算机辅助检测(CAD)技术与医生相比表现出很大的承诺,他不能在嘈杂的VLE信号中可靠地发现疾病模式。然而,CAD系统的基本预处理步骤是组织分割。目前,组织被手动分割,但是对于整个VLE扫描不可缩放,其由4,096×2,048像素的1,200帧组成。此外,目前的CAD方法不能使用VLE扫描到它们的全部潜力,因为只选择进一步处理的小段进行进一步处理,而自动分割系统会导致更大的可用数据。本文探讨了使用FusionNet和域特定损耗函数自动分割相关组织的可能性。这项工作的贡献是三倍。首先,我们提出了一种用于VLE扫描的组织分割算法。其次,我们介绍了一种加权地面真理,用于利用VLE数据的信噪比特性。第三,我们将算法分割与两个额外的VLE专家进行比较。结果表明,我们的算法注释与专家注释难以区分,因此算法可以用作预处理步骤以进一步分类组织。

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