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首页> 外文期刊>Journal of medical systems >Near-set Based Mucin Segmentation in Histopathology Images for Detecting Mucinous Carcinoma
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Near-set Based Mucin Segmentation in Histopathology Images for Detecting Mucinous Carcinoma

机译:基于近嵌段的粘液病理学图像中的粘液分段检测粘液瘤

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This paper introducesnear-set based segmentation method for extraction and quantification of mucin regions for detecting mucinouscarcinoma (MC which is a sub type of Invasive ductal carcinoma (IDC)). From histology point of view, the presence of mucin is one of the indicators for detection of this carcinoma. In order to detect MC, the proposed method majorly includes pre-processing by colour correction, colour transformation followed by near-set based segmentation and post-processing for delineating only mucin regions from the histological images at 40x. The segmentation step works in two phases such as Learn and Run. In pre-processing step, white balance method is used for colour correction of microscopic images (RGB format). These images are transformed into HSI (Hue, Saturation, and Intensity) colour space and H-plane is extracted in order to get better visual separation of the different histological regions (background, mucin and tissue regions). Thereafter, histogram in H-plane is optimally partitioned to find set representation for each of the regions. In Learn phase, features of typical mucin pixel and unlabeled pixels are learnt in terms of coverage of observed sets in the sample space surrounding the pixel under consideration. On the other hand, in Run phase the unlabeled pixels are clustered as mucin and non-mucin based on its indiscernibilty with ideal mucin, i.e. their feature values differ within a tolerance limit. This experiment is performed for grade-I and grade-II of MC and hence percentage of average segmentation accuracy is achieved within confidence interval of [97.36 97.70] for extracting mucin areas. In addition, computation of percentage of mucin present in a histological image is provided for understanding the alteration of such diagnostic indicator in MC detection.
机译:本文介绍了基于粘液区域的提取和定量的基于分段方法,用于检测粘液区瘤(MC,IN侵袭性导管癌(IDC))。从组织学的角度来看,粘蛋白的存在是检测该癌的指标之一。为了检测MC,所提出的方法主要包括通过颜色校正预处理,颜色变换,然后基于近组的分段和后处理,仅用于在40倍的组织学图像中描绘粘液区域。分段步骤在两个阶段工作,例如学习和运行。在预处理步骤中,白平衡方法用于微观图像的颜色校正(RGB格式)。这些图像被转换为​​HSI(色调,饱和度和强度)颜色空间,提取H平面,以便更好地视觉分离不同的组织学区(背景,粘蛋白和组织区域)。此后,H平面中的直方图最佳地分区以查找每个区域的集合表示。在学习阶段,根据所考虑的像素围绕像素的样本空间中观察到的集合的覆盖范围来了解典型粘液像素和未标记像素的特征。另一方面,在运行阶段,将未标记的像素基于具有理想粘合蛋白的Idiscibilty聚集为粘蛋白和非粘合蛋白,即它们的特征值在公差限制内不同。该实验对级-I和MC级-II进行,因此在提取粘蛋白区域的置信区间内实现了平均分割精度的百分比。此外,提供了在组织学图像中存在的粘蛋白百分比的计算以理解MC检测中这种诊断指标的改变。

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