CASC-AI: Consensus-aware Self-corrective Learning for Noise Cell Segmentation
Ruining Deng, Yihe Yang, David J. Pisapia, Benjamin Liechty, Junchao, Zhu, Juming Xiong, Junlin Guo, Zhengyi Lu, Jiacheng Wang, Xing Yao, Runxuan, Yu, Rendong Zhang, Gaurav Rudravaram, Mengmeng Yin, Pinaki Sarder, Haichun, Yang, Yuankai Huo, Mert R. Sabuncu

TL;DR
This paper introduces CASC-AI, a novel consensus-aware self-corrective learning framework that improves cell segmentation accuracy in noisy, lay-annotated datasets by leveraging consensus matrices and contrastive learning to iteratively refine labels.
Contribution
It proposes a new AI agent that uses consensus information and contrastive learning to adaptively correct annotation noise in cell segmentation tasks.
Findings
Enhanced segmentation accuracy on noisy datasets
Effective correction of false positives and negatives
Robust learning with lay-annotated data
Abstract
Multi-class cell segmentation in high-resolution gigapixel whole slide images (WSIs) is crucial for various clinical applications. However, training such models typically requires labor-intensive, pixel-wise annotations by domain experts. Recent efforts have democratized this process by involving lay annotators without medical expertise. However, conventional non-corrective approaches struggle to handle annotation noise adaptively because they lack mechanisms to mitigate false positives (FP) and false negatives (FN) at both the image-feature and pixel levels. In this paper, we propose a consensus-aware self-corrective AI agent that leverages the Consensus Matrix to guide its learning process. The Consensus Matrix defines regions where both the AI and annotators agree on cell and non-cell annotations, which are prioritized with stronger supervision. Conversely, areas of disagreement are…
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Taxonomy
TopicsNeural Networks and Applications · Cell Image Analysis Techniques · Machine Learning and Data Classification
MethodsContrastive Learning
