Active Learning (AL) is an artificial intelligence (AI) training paradigm that improves training efficiency in cases where labeled training is hard to obtain. In AL, unlabeled samples are selected for annotation using a bootstrap classifier to identify samples whose informational content is not represented in the current training set. Given a small number of samples, this optimizes training by focusing annotation on “informative” samples. For computational pathology, identifying the most-informative samples is non-trivial, particularly for segmentation. In this work, we develop a feature-driven approach to identifying informative samples. We use a feature extraction pipeline operating on segmentation results to find “outlier” samples which are likely incorrectly segmented. This process allows us to automatically flag samples for re-annotation based on architecture of segmentation (compared with less robust confidence-based approaches). We apply this process to the problem of segmenting oral cavity cancer (OCC) H&E stained whole-slide images (WSIs), where the architecture of OCC tumor growth is an aggressive pathological indicator. Improving segmentation requires costly annotation of WSIs; thus, we seek to employ an AL approach to improve annotation efficiency. Our results show that, while outlier features alone are not sufficient to flag samples for re-annotation, we can identify some WSIs which fail segmentation.
In our previous work, we have demonstrated that it is possible to use a small bootstrap set of fully annotated regions of interest (ROIs) to generate segmentation results on the WSI scale. In this work, pathologists were asked to edit the previously generated annotations on 150 WSIs, focusing on only the tumor class. Of these re-annotated WSIs, 21 were then sampled from, and used to train a new version of the classifier. Segmentation results were then generated for the remainder of the images. This work demonstrates an improvement in segmentation of the tumor class.
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