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Tissue-border Detection in Volumetric Laser Endomicroscopy using Bi-directional Gated Recurrent Neural Networks

机译:使用双向门控复发性神经网络体积激光端子复制的组织边界检测

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Volumetric Laser Endomicroscopy (VLE) is a novel technique that can aid in the early detection of dysplasia in patients with Barrett's Esophagus (BE). Due to the relatively large size of VLE scans and the subtle appearance of this precursor of esophageal cancer. Computer Aided Detection (CAD) has proven to significantly contribute to VLE analysis. However, the tissue segmentation stage that is required for further processing by such a CAD system is currently limiting the execution speed, thereby hampering its clinical application. To segment the tissue of interest, current state-of-the-art solutions typically apply a Convolutional Neural Network (CNN) for image segmentation. In this paper, alternatively, a Recurrent Neural Network (RNN) is proposed to facilitate automatic tissue segmentation. In contrast to CNNs for image segmentation, the RNN focuses exclusively on the boundary between tissue and non-tissue rather than generating a full 2D segmentation, where we exploit the recent observation that only the upper tissue-boundary is relevant. This effectively poses the 2D segmentation problem as a 1D curve fitting problem, which can be computed much more efficiently. To train and evaluate our approach, four assessors manually annotated the tissue boundary in VLE images. The results of the proposed approach demonstrate a promising Mean Absolute Error (MAE) of 11 pixels or lower compared to human annotations, for which the inter-observer variability is around 5 pixels. Furthermore, the proposed RNN-based model is less computationally expensive compared to the current state-of-the-art model, since it requires approximately 18 times less floating-point operations. The resulting speed-up facilitates much faster pre-processing, enabling real-time CAD applications for VLE.
机译:体积激光端子镜(VLE)是一种新型技术,可以帮助预早移检测Barrett食道(BE)的患者发育不良。由于较大的大小的VLE扫描和这种食管癌前体的微妙外观。计算机辅助检测(CAD)已被证明是为了显着贡献VLE分析。然而,通过这种CAD系统进一步处理所需的组织分割阶段目前限制了执行速度,从而阻碍了其临床应用。为了分段感兴趣的组织,目前的最先进的解决方案通常适用于图像分割的卷积神经网络(CNN)。在本文中,替代地,提出了一种经常性神经网络(RNN)以促进自动组织分割。与图像分割的CNN相反,RNN专注于组织和非组织之间的边界,而不是产生完整的2D分段,在那里我们利用最近观察到上组织边界是相关的。这有效地将2D分割问题提示为1D曲线拟合问题,这可以更有效地计算。要培训和评估我们的方法,四个评估员手动注释VLE图像中的组织边界。所提出的方法的结果证明了与人类注释相比11像素或更低的有希望的平均误差(MAE),其中观察者间变异性约为5个像素。此外,与当前的最先进的模型相比,所提出的基于RNN的模型较低,因为它需要大约18倍的浮点操作。由此产生的速度促进了更快的预处理,从而实现了VLE的实时CAD应用。

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