ReCasNet: Improving consistency within the two-stage mitosis detection framework
Chawan Piansaddhayanon, Sakun Santisukwongchote, Shanop Shuangshoti,, Qingyi Tao, Sira Sriswasdi, Ekapol Chuangsuwanich

TL;DR
ReCasNet is a novel deep learning pipeline that enhances two-stage mitosis detection by reducing false positives, adjusting poorly centered objects, and improving training data consistency, leading to more accurate cancer grading.
Contribution
The paper introduces ReCasNet, a new framework with three key improvements to address inconsistencies in two-stage mitosis detection pipelines.
Findings
Up to 4.8% F1 score improvement in detection.
44.1% reduction in mean absolute percentage error.
Effective generalization to other object detection networks.
Abstract
Mitotic count (MC) is an important histological parameter for cancer diagnosis and grading, but the manual process for obtaining MC from whole-slide histopathological images is very time-consuming and prone to error. Therefore, deep learning models have been proposed to facilitate this process. Existing approaches utilize a two-stage pipeline: the detection stage for identifying the locations of potential mitotic cells and the classification stage for refining prediction confidences. However, this pipeline formulation can lead to inconsistencies in the classification stage due to the poor prediction quality of the detection stage and the mismatches in training data distributions between the two stages. In this study, we propose a Refine Cascade Network (ReCasNet), an enhanced deep learning pipeline that mitigates the aforementioned problems with three improvements. First, window…
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Taxonomy
TopicsAI in cancer detection · Cutaneous Melanoma Detection and Management · Radiomics and Machine Learning in Medical Imaging
