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Visualising decision-reasoning regions in computer-aided pathological pattern diagnosis of endoscytoscopic images based on CNN weights analysis

机译:基于CNN权重分析的内窥镜图像计算机辅助病理模式诊断中的决策推理区域可视化

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Purpose of this paper is to present a method for visualising decision-reasoning regions in computer-aided pathological pattern diagnosis of endocytoscopic images. Endocytoscope enables us to perform direct observation of cells and their nuclei on the colon wall at maximum 500-times ultramagnification. For this new modality, computer-aided pathological diagnosis system is strongly required for the support of non-expert physicians. To develop a CAD system, we adopt convolutional neural network (CNN) as the classifier of endocytoscopic images. In addition to this classification function, based on CNN weights analysis, we develop a filter function that visualises decision-reasoning regions on classified images. This visualisation function helps novice endocytoscopists to develop their understanding of pathological pattern on endocytoscopic images for accurate endocytoscopic diagnosis. In numerical experiment, our CNN model achieved 90 % classification accuracy. Furthermore, experimental results show that decision-reasoning regions suggested by our filter function contain characteristic pit patterns in real endocytoscopic diagnosis.
机译:本文的目的是提出一种在计算机辅助内镜图像病理模式诊断中可视化决策推理区域的方法。内窥镜使我们能够以最大500倍的超大倍率直接观察结肠壁上的细胞及其细胞核。对于这种新形式,非专业医生的支持非常需要计算机辅助病理诊断系统。为了开发CAD系统,我们采用卷积神经网络(CNN)作为内窥镜图像的分类器。除了此分类功能外,我们还基于CNN权重分析,开发了一种过滤功能,可在分类图像上可视化决策推理区域。此可视化功能可帮助内窥镜新手对内窥镜图像上的病理模式进行了解,以进行准确的内窥镜诊断。在数值实验中,我们的CNN模型达到了90%的分类精度。此外,实验结果表明,我们的过滤器功能建议的决策推理区域在真正的内窥镜诊断中包含特征性的凹坑模式。

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