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Memory based active contour algorithm using pixel-level classified images for colon crypt segmentation

机译:基于内存的主动轮廓算法,使用像素级分类图像进行结肠隐窝分割

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In this paper, we introduce a novel method for detection and segmentation of crypts in colon biopsies. Most of the approaches proposed in the literature try to segment the crypts using only the biopsy image without understanding the meaning of each pixel. The proposed method differs in that we segment the crypts using an automatically generated pixel-level classification image of the original biopsy image and handle the artifacts due to the sectioning process and variance in color, shape and size of the crypts. The biopsy image pixels are classified to nuclei, immune system, lumen, cytoplasm, stroma and goblet cells. The crypts are then segmented using a novel active contour approach, where the external force is determined by the semantics of each pixel and the model of the crypt. The active contour is applied for every lumen candidate detected using the pixel-level classification. Finally, a false positive crypt elimination process is performed to remove segmentation errors. This is done by measuring their adherence to the crypt model using the pixel level classification results. The method was tested on 54 biopsy images containing 4944 healthy and 2236 cancerous crypts, resulting in 87% detection of the crypts with 9% of false positive segments (segments that do not represent a crypt). The segmentation accuracy of the true positive segments is 96%. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在本文中,我们介绍了一种用于结肠活检中隐窝的检测和分割的新方法。文献中提出的大多数方法都尝试仅使用活检图像来分割隐窝,而不了解每个像素的含义。所提出的方法的不同之处在于,我们使用原始活检图像的自动生成的像素级分类图像对隐窝进行分割,并处理由于切片过程以及隐窝的颜色,形状和大小的差异而导致的伪影。活检图像像素分为细胞核,免疫系统,管腔,细胞质,基质和杯状细胞。然后使用新颖的主动轮廓方法对隐窝进行分割,其中外力由每个像素的语义和隐窝模型确定。主动轮廓将应用于使用像素级分类检测到的每个内腔候选对象。最后,执行假阳性隐窝消除过程以消除分段错误。这是通过使用像素级别分类结果测量其对crypt模型的遵守来完成的。该方法在包含4944个健康隐窝和2236个癌性隐窝的54个活检图像上进行了测试,结果检出隐窝的比例为87%,假阳性片段为9%(不代表隐窝的片段)。真实阳性片段的分割精度为96%。 (C)2015 Elsevier Ltd.保留所有权利。

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