In many histopathology tasks, sample classification depends on morphological details in tissue or single cells that are only visible at the highest magnification. For a pathologist, this implies tedious zooming in and out, while for a computational decision support algorithm, it leads to the analysis of a huge number of small image patches per whole slide image (WSI). Attention-based multiple instance learning (MIL), where attention estimation is learned in a weakly supervised manner, has been successfully applied in computational histopathology, but it is challenged by large numbers of irrelevant patches, reducing its accuracy. Here, we present an active learning approach to the problem. Querying the expert to annotate regions of interest in a WSI guides the formation of high-attention regions for MIL. We train an attention-based MIL and calculate a confidence metric for every image in the dataset to select the most uncertain WSIs for expert annotation. We test our approach on the CAMELYON17 dataset classifying metastatic lymph node sections in breast cancer. With a novel attention guiding loss, this leads to an accuracy boost of the trained models with few regions annotated for each class. Active learning thus improves WSIs classification accuracy, leads to faster and more robust convergence, and speeds up the annotation process. It may in the future serve as an important contribution to train MIL models in the clinically relevant context of cancer classification in histopathology.
翻译:在许多感官病理学任务中,抽样分类取决于组织或单一细胞中的形态细节,这些细节只在最高放大度时才能看到。对于病理学家来说,这意味着对问题的积极学习方法。请专家注意在WSI中感兴趣的区域,为MIL提供高度关注区域的形成指导。我们训练了以关注为基础的MIL,并计算了数据集中每个图像的可信度度度度度指标,以选择最不确定的WSI作专家说明。我们测试了CAMELYON17数据集对乳腺癌中大量不相干部分的分类,降低了其准确性。我们在这里展示了一种积极的学习方法。请专家对WSI中感兴趣的区域进行注解,指导MIL的高度关注区域形成。我们培训了以关注为基础的MIL,并计算了数据集中每个图像中选择最不确定的WSI作专家说明的可信度度指标。我们测试了我们在CAMELYON17数据集中对乳腺癌中转移性淋染部分的分类方法,降低了它的准确性。我们提出了一种积极的学习方法,引导了对损失进行新的关注,从而提高了对结果的精确性分类的精确度,从而提升了对每一类的精确性学的精度。</s>