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首页> 外文期刊>Micron: The international research and review journal for microscopy >Automated labelling of cancer textures in colorectal histopathology slides using quasi-supervised learning
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Automated labelling of cancer textures in colorectal histopathology slides using quasi-supervised learning

机译:使用准监督学习在大肠组织病理学幻灯片中自动标记癌症纹理

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摘要

Quasi-supervised learning is a statistical learning algorithm that contrasts two datasets by computing estimate for the posterior probability of each sample in either dataset. This method has not been applied to histopathological images before. The purpose of this study is to evaluate the performance of the method to identify colorectal tissues with or without adenocarcinoma. Light microscopic digital images from histopathological sections were obtained from 30 colorectal radical surgery materials including adeno-carcinoma and non-neoplastic regions. The texture features were extracted by using local histograms and co-occurrence matrices. The quasi-supervised learning algorithm operates on two datasets, one containing samples of normal tissues labelled only indirectly, and the other containing an unlabeled collection of samples of both normal and cancer tissues. As such, the algorithm eliminates the need for manually labelled samples of normal and cancer tissues for conventional supervised learning and significantly reduces the expert intervention. Several texture feature vector datasets corresponding to different extraction parameters were tested within the proposed framework. The Independent Component Analysis dimensionality reduction approach was also identified as the one improving the labelling performance evaluated in this series. In this series, the proposed method was applied to the dataset of 22,080 vectors with reduced dimensionality 119 from 132. Regions containing cancer tissue could be identified accurately having false and true positive rates up to 19% and 88% respectively without using manually labelled ground-truth datasets in a quasi-supervised strategy. The resulting labelling performances were compared to that of a conventional powerful supervised classifier using manually labelled ground-truth data. The supervised classifier results were calculated as 3.5% and 95% for the same case. The results in this series in comparison with the benchmark classifier, suggest that quasi-supervised image texture labelling may be a useful method in the analysis and classification of pathological slides but further study is required to improve the results.
机译:准监督学习是一种统计学习算法,它通过计算每个数据集中每个样本的后验概率估计值来对比两个数据集。此方法以前尚未应用于组织病理学图像。这项研究的目的是评估该方法鉴定患有或不患有腺癌的大肠组织的性能。从30种结直肠癌根治性手术材料(包括腺癌和非肿瘤区域)获得了病理组织学切片的光学显微数字图像。通过使用局部直方图和共现矩阵提取纹理特征。准监督学习算法在两个数据集上运行,一个包含仅间接标记的正常组织样本,另一个包含未标记的正常和癌组织样本集合。这样,该算法消除了常规监督学习中对正常和癌组织的手动标记样本的需要,并显着减少了专家干预。在提出的框架内测试了对应于不同提取参数的几个纹理特征矢量数据集。独立成分分析降维方法也被认为是改善本系列评估的标签性能的一种方法。在本系列中,将所提出的方法应用于来自132个维度的119个维数减少的119个维数中的22,080个向量的数据集。无需使用人工标记的地面,就可以准确地识别出包含癌组织的区域,其假阳性率和真阳性率分别高达19%和88%。准监督策略中的真相数据集。使用人工标记的地面真相数据,将所得的标记性能与常规功能强大的监督分类器进行了比较。在相同情况下,监督分类器结果计算为3.5%和95%。与基准分类器相比,该系列的结果表明,准监督图像纹理标记在病理切片的分析和分类中可能是有用的方法,但需要进一步研究以改善结果。

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