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A Multiscale Approach for Whole-Slide Image Segmentation of five Tissue Classes in Urothelial Carcinoma Slides

机译:尿路上皮癌载玻片五种组织类全载图像分割的多尺度方法

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摘要

In pathology labs worldwide, we see an increasing number of tissue samples that need to be assessed without the same increase in the number of pathologists. Computational pathology, where digital scans of histological samples called whole-slide images (WSI) are processed by computational tools, can be of help for the pathologists and is gaining research interests. Most research effort has been given to classify slides as being cancerous or not, localization of cancerous regions, and to the “big-four” in cancer: breast, lung, prostate, and bowel. Urothelial carcinoma, the most common form of bladder cancer, is expensive to follow up due to a high risk of recurrence, and grading systems have a high degree of inter- and intra-observer variability. The tissue samples of urothelial carcinoma contain a mixture of damaged tissue, blood, stroma, muscle, and urothelium, where it is mainly muscle and urothelium that is diagnostically relevant. A coarse segmentation of these tissue types would be useful to i) guide pathologists to the diagnostic relevant areas of the WSI, and ii) use as input in a computer-aided diagnostic (CAD) system. However, little work has been done on segmenting tissue types in WSIs, and on computational pathology for urothelial carcinoma in particular. In this work, we are using convolutional neural networks (CNN) for multiscale tile-wise classification and coarse segmentation, including both context and detail, by using three magnification levels: 25x, 100x, and 400x. 28 models were trained on weakly labeled data from 32 WSIs, where the best model got an F1-score of 96.5% across six classes. The multiscale models were consistently better than the single-scale models, demonstrating the benefit of combining multiple scales. No tissue-class ground-truth for complete WSIs exist, but the best models were used to segment seven unseen WSIs where the results were manually inspected by a pathologist and are considered as very promising.
机译:在全球病理学实验室中,我们看到需要评估的越来越多的组织样本,而无需同样增加的病理学家的数量。计算病理学,其中通过计算工具处理了称为全幻灯片(WSI)的组织学样本的数字扫描,可以对病理学家有所帮助,并且正在获得研究兴趣。已经进行了大多数研究努力将幻灯片分类为癌症,癌症地区的定位,以及癌症中的“大四四”:乳腺,肺,前列腺和肠道。由于复发风险高,尿路上癌,最常见的膀胱癌形式昂贵,并且渐变系统具有高度和观测器内的膀胱内变异性。尿路上皮癌的组织样本含有受损组织,血液,基质,肌肉和尿路鞘的混合物,主要是肌肉和尿路鞘,其诊断性相关。这些组织类型的粗略分割对于i)指导病理学家对WSI的诊断相关领域以及II)用作计算机辅助诊断(CAD)系统中的输入。然而,在WSIS中分段组织类型以及特别是尿路皮癌的计算病理学中已经完成了一点工作。在这项工作中,我们正在使用卷积神经网络(CNN)进行多尺度瓷砖 - 明智的分类和粗略分割,包括三个放大级别和细节,包括三个放大级别:25x,100x和400x。 28种型号培训了32 WSIS的弱标记数据,其中最好的模型在六个课程中获得了96.5%的F1分数。多尺度模型始终如一的比单尺寸模型更好,展示了组合多个尺度的益处。没有完整的WSIS的组织级地面真理存在,但最好的模型用于分割七个看不见的WSI,其中结果被病理学家手动检查,并且被认为是非常有前途的。

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