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Whole Slide Pathology Image Patch Based Deep Classification: An Investigation of the Effects of the Latent Autoencoder Representation and the Loss Function Form

机译:整个幻灯片病理学图像补丁的深度分类:调查潜伏型自动化器表示与损失功能形式的影响

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The analysis of whole-slide pathological images is a major area of deep learning applications in medicine. The automation of disease identification, prevention, diagnosis, and treatment selection from whole-slide images (WSIs) has seen many advances in the last decade due to the progress made in the areas of computer vision and machine learning. The focus of this work is on patch level to slide image level analysis of WSIs, popular in the existing literature. In particular, we investigate the nature of the information content present in images on the local level of individual patches using autoencoding. Driven by our findings at this stage, which raise questions about the us of autoencoders, we next address the challenge posed by what we argue is an overly coarse classification of patches as tumorous and non-tumorous, which leads to the loss of important information. We showed that task specific modifications of the loss function, which take into account the content of individual patches in a more nuanced manner, facilitate a dramatic reduction in the false negative classification rate.
机译:全载病理学图像分析是医学深度学习应用的主要领域。由于计算机视觉和机器学习领域的进展,全幻灯片(WSIS)的疾病鉴定,预防,诊断和治疗选择的自动化鉴定,预防,诊断和治疗选择,在过去十年中已经看到了许多进展。这项工作的焦点是在现有文献中流行的WSIS滑动图像级别分析的补丁水平。特别是,我们研究使用自动码边在各个贴片的本地层面上存在的信息内容的性质。在我们在这个阶段推动的,这提出了关于美国自动化学者的问题,我们接下来解决了我们所争论的挑战,这是一种过于粗糙分类的斑块作为肿瘤和非肿瘤,这导致了重要信息的损失。我们展示了任务对损失函数的特定修改,这考虑了更细微的方式以更细致的方式进行各个贴片的含量,便于假阴性分类率的显着降低。

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