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Automatic pathology of prostate cancer in whole mount slides incorporating individual gland classification

机译:包含单个腺分类的整片玻片中前列腺癌的自动病理学

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This paper presents an automatic pathology (AutoPath) approach to detect prostatic adenocarcinoma based on morphological analysis of high resolution whole mount (WM) histopathology images of the prostate. In the first stage of the cancer detection algorithm, a pre-screening of cancerous regions is performed at low magnification (5x) based on regional features. In the second stage, we propose a novel technique of labelling individual glands as benign or malignant using gland specific features at high magnification (20x). Two new features, Number of Nuclei Layers and Epithelial Layer Density, are proposed to label individual glands. We validate the approach on 70 WM slides, obtained from 30 patients, and achieve average sensitivity of 90%, specificity of 93% and accuracy of 93%. The main advantage of the approach is that detection of individual malignant gland units, irrespective of neighbouring histology and/or the spatial extent of the cancer, allows a finer annotation of cancer. The AutoPath method performs well on slides with low Gleason grades (3 and 4), but is currently limited in its ability to detect cancer in higher Gleason grades.
机译:本文提出了一种自动病理学(AutoPath)方法,基于对高分辨率高分辨率整装(WM)前列腺组织病理学图像的形态学分析来检测前列腺腺癌。在癌症检测算法的第一阶段,根据区域特征以低放大倍数(5x)对癌症区域进行预筛选。在第二阶段中,我们提出了使用高倍率(20x)的特定腺体特征将单个腺体标记为良性或恶性的新技术。提出了两个新功能,即核层数和上皮层密度,以标记单个腺体。我们对70份WM载玻片进行了验证,该载玻片来自30例患者,平均敏感性为90%,特异性为93%,准确性为93%。该方法的主要优点是,检测单个恶性腺单位,无论相邻组织学和/或癌症的空间范围如何,都可以对癌症进行更好的注释。 AutoPath方法在格里森等级较低(3和4)的幻灯片上表现良好,但目前在格里森等级较高的癌症检测能力方面受到限制。

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