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ADAPTIVE CLASSIFICATION FOR WHOLE SLIDE TISSUE SEGMENTATION

机译:整个幻灯片组织分割的自适应分类

摘要

A method of segmenting images of biological specimens using adaptive classification to segment a biological specimen into different types of tissue regions. The segmentation is performed by, first, extracting features from the neighborhood of a grid of points (GPs) sampled on the whole-slide (WS) image and classifying them into different tissue types. Secondly, an adaptive classification procedure is performed where some or all of the GPs in a WS image are classified using a pre-built training database, and classification confidence scores for the GPs are generated. The classified GPs with high confidence scores are utilized to generate an adaptive training database, which is then used to re-classify the low confidence GPs. The motivation of the method is that the strong variation of tissue appearance makes the classification problem more challenging, while good classification results are obtained when the training and test data origin from the same slide.
机译:一种使用自适应分类分割生物标本图像的方法,将生物样本分段成不同类型的组织区域。分割由第一,首先提取来自在整个幻灯片(WS)图像上采样的点(GPS)附近的特征,并将它们分类为不同的组织类型。其次,执行自适应分类过程,其中WS图像中的一些或所有GPS使用预构建的训练数据库进行分类,并且生成GPS的分类置信符号。具有高置信度分数的分类GPS用于生成自适应训练数据库,然后用于重新分类低置信度GPS。该方法的动机是组织外观的强变化使得分类问题更具挑战性,而当训练和测试数据来自同一载玻片的源时,获得良好的分类结果。

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