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Slide-Specific Models for Segmentation of Differently Stained Digital Histopathology Whole Slide Images

机译:用于分割的幻灯片特异性模型,用于分割的不同染色的数字组织病理学整体幻灯片图像

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The automatic analysis of whole slide images (WSIs) of stained histopathology tissue sections plays a crucial role in the discovery of predictive biomarkers in the field on immuno-oncology by enabling the quantification of the phenotypic information contained in the tissue sections. The automatic detection of cells and nuclei, while being one of the major steps of such analysis, remains a difficult problem because of the low visual differentiation of high pleomorphic and densely cluttered objects and of the diversity of tissue appearance between slides. The key idea of this work is to take advantage of well-differentiated objects in each slide to learn about the appearance of the tissue and in particular about the appearance of low-differentiated objects. We detect well-differentiated objects on a automatically selected set of representative regions, learn slide-specific visual context models, and finally use the resulting posterior maps to perform the final detection steps on the whole slide. The accuracy of the method is demonstrated against manual annotations on a set of differently stained images.
机译:染色的组织病理学组织部分的整个滑动图像(WSI)的自动分析在发现免疫肿瘤学的预测生物标志物中,通过使组织切片中包含的表型信息的定量进行定量,在免疫肿瘤学的预测生物标志物中起着至关重要的作用。电池和核的自动检测,同时是这种分析的主要步骤之一,仍然是难题的难题,因为高脂形态和密集杂乱的物体和载玻片之间的组织外观的多样性的低视觉分化。这项工作的关键思想是利用每个滑块中的良好分化的物体来了解组织的外观,特别是关于低分化物体的外观。我们在自动选定的代表区上检测到良好的对象,学习幻灯片的视觉上下文模型,并最终使用产生的后映图来执行整个幻灯片上的最终检测步骤。在一组不同染色的图像上对手动注释进行说明该方法的准确性。

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