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Feature-based analysis of mouse prostatic intraepithelial neoplasia in histological tissue sections

机译:基于特征的组织学切片中小鼠前列腺上皮内瘤变的分析

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This paper describes work presented at the Nordic Symposium on Digital Pathology 2015, in Link?ping, Sweden. Prostatic intraepithelial neoplasia (PIN) represents premalignant tissue involving epithelial growth confined in the lumen of prostatic acini. In the attempts to understand oncogenesis in the human prostate, early neoplastic changes can be modeled in the mouse with genetic manipulation of certain tumor suppressor genes or oncogenes. As with many early pathological changes, the PIN lesions in the mouse prostate are macroscopically small, but microscopically spanning areas often larger than single high magnification focus fields in microscopy. This poses a challenge to utilize full potential of the data acquired in histological specimens. We use whole prostates fixed in molecular fixative PAXgene?, embedded in paraffin, sectioned through and stained with H&E. To visualize and analyze the microscopic information spanning whole mouse PIN (mPIN) lesions, we utilize automated whole slide scanning and stacked sections through the tissue. The region of interests is masked, and the masked areas are processed using a cascade of automated image analysis steps. The images are normalized in color space, after which exclusion of secretion areas and feature extraction is performed. Machine learning is utilized to build a model of early PIN lesions for determining the probability for histological changes based on the calculated features. We performed a feature-based analysis to mPIN lesions. First, a quantitative representation of over 100 features was built, including several features representing pathological changes in PIN, especially describing the spatial growth pattern of lesions in the prostate tissue. Furthermore, we built a classification model, which is able to align PIN lesions corresponding to grading by visual inspection to more advanced and mild lesions. The classifier allowed both determining the probability of early histological changes for uncategorized tissue samples and interpretation of the model parameters. Here, we develop quantitative image analysis pipeline to describe morphological changes in histological images. Even subtle changes in mPIN lesion characteristics can be described with feature analysis and machine learning. Constructing and using multidimensional feature data to represent histological changes enables richer analysis and interpretation of early pathological lesions.
机译:本文介绍了在瑞典林克平举行的2015年北欧数字病理学研讨会上提出的工作。前列腺上皮内瘤变(PIN)代表恶变前组织,累及局限在前列腺腺腔内的上皮生长。为了理解人类前列腺癌的发生,可以通过对某些肿瘤抑制基因或癌基因进行基因操作来模拟小鼠的早期肿瘤变化。与许多早期病理变化一样,小鼠前列腺中的PIN损伤在宏观上很小,但在显微镜下的跨度通常大于显微镜中单个高倍率聚焦场。利用组织学样本中获得的数据的全部潜力提出了挑战。我们使用固定在分子固定剂PAXgene?中的整个前列腺,将其包埋在石蜡中,切开并用H&E染色。为了可视化和分析横跨整个小鼠PIN(mPIN)病变的微观信息,我们利用了自动的整个玻片扫描和贯穿组织的堆叠切片。对感兴趣区域进行遮罩,并使用一系列自动图像分析步骤来处理遮罩区域。在色彩空间中对图像进行归一化,然后排除分泌区域并进行特征提取。利用机器学习来建立早期PIN病变的模型,以便根据计算出的特征确定组织学变化的可能性。我们对mPIN病变进行了基于特征的分析。首先,建立了100多个特征的定量表示,包括代表PIN病理变化的几个特征,特别是描述了前列腺组织中病变的空间生长模式。此外,我们建立了一个分类模型,该模型能够通过目视检查将对应于分级的PIN病变对准更高级和轻度的病变。分类器既可以确定未分类的组织样本的早期组织学变化的可能性,又可以解释模型参数。在这里,我们开发定量图像分析管道,以描述组织学图像中的形态变化。甚至可以通过特征分析和机器学习描述mPIN病变特征的细微变化。通过构建和使用多维特征数据来表示组织学变化,可以对早期病理病变进行更丰富的分析和解释。

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