Cracking the PUMA Challenge in 24 Hours with CellViT++ and nnU-Net
By: Negar Shahamiri , Moritz Rempe , Lukas Heine and more
Potential Business Impact:
Helps doctors find cancer cells faster.
Automatic tissue segmentation and nuclei detection is an important task in pathology, aiding in biomarker extraction and discovery. The panoptic segmentation of nuclei and tissue in advanced melanoma (PUMA) challenge aims to improve tissue segmentation and nuclei detection in melanoma histopathology. Unlike many challenge submissions focusing on extensive model tuning, our approach emphasizes delivering a deployable solution within a 24-hour development timeframe, using out-of-the-box frameworks. The pipeline combines two models, namely CellViT++ for nuclei detection and nnU-Net for tissue segmentation. Our results demonstrate a significant improvement in tissue segmentation, achieving a Dice score of 0.750, surpassing the baseline score of 0.629. For nuclei detection, we obtained results comparable to the baseline in both challenge tracks. The code is publicly available at https://github.com/TIO-IKIM/PUMA.
Similar Papers
Tissue Aware Nuclei Detection and Classification Model for Histopathology Images
CV and Pattern Recognition
Helps doctors find and name cells in sickness.
Adaptive Multi-Scale Integration Unlocks Robust Cell Annotation in Histopathology Images
CV and Pattern Recognition
Helps doctors identify cell types for better disease understanding.
Co-Seg: Mutual Prompt-Guided Collaborative Learning for Tissue and Nuclei Segmentation
CV and Pattern Recognition
Helps doctors see tiny parts of sickness in cells.