Rethinking Mitosis Detection: Towards Diverse Data and Feature Representation
Hao Wang, Jiatai Lin, Danyi Li, Jing Wang, Bingchao Zhao, Zhenwei Shi,, Xipeng Pan, Huadeng Wang, Bingbing Li, Changhong Liang, Guoqiang Han, Li, Liang, Chu Han, Zaiyi Liu

TL;DR
This paper introduces MitDet, a mitosis detection framework that emphasizes data and feature diversity to improve generalizability, outperforming state-of-the-art methods with minimal annotation effort.
Contribution
The paper proposes a novel mitosis detection framework that balances data and feature diversity, incorporating modules like DGSB, InCDP, and SE to enhance generalizability and performance.
Findings
Outperforms all SOTA approaches on multiple datasets
Effective with minimal point annotations
Enhances domain-relevant diversity of data and features
Abstract
Mitosis detection is one of the fundamental tasks in computational pathology, which is extremely challenging due to the heterogeneity of mitotic cell. Most of the current studies solve the heterogeneity in the technical aspect by increasing the model complexity. However, lacking consideration of the biological knowledge and the complex model design may lead to the overfitting problem while limited the generalizability of the detection model. In this paper, we systematically study the morphological appearances in different mitotic phases as well as the ambiguous non-mitotic cells and identify that balancing the data and feature diversity can achieve better generalizability. Based on this observation, we propose a novel generalizable framework (MitDet) for mitosis detection. The data diversity is considered by the proposed diversity-guided sample balancing (DGSB). And the feature…
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Taxonomy
TopicsAI in cancer detection · Gene expression and cancer classification · Cell Image Analysis Techniques
