MitoDetect++: A Domain-Robust Pipeline for Mitosis Detection and Atypical Subtyping
Nasir, Esha Sadia, Lv, Jiaqi, Jahanifar, Mostafa, Raza, Shan E Ahmed
–arXiv.org Artificial Intelligence
Automated detection and classification of mitotic figures especially distinguishing atypical from normal remain critical challenges in computational pathology. We present MitoDetect++, a unified deep learning pipeline designed for the MIDOG 2025 challenge, addressing both mitosis detection and atypical mitosis classification. For detection (Track 1), we employ a U-Net-based encoder-decoder architecture with EfficientNetV2-L as the backbone, enhanced with attention modules, and trained via combined segmentation losses. For classification (Track 2), we leverage the Virchow2 vision transformer, fine-tuned efficiently using Low-Rank Adaptation (LoRA) to minimize resource consumption. To improve generalization and mitigate domain shifts, we integrate strong augmentations, focal loss, and group-aware stratified 5-fold cross-validation. At inference, we deploy test-time augmentation (TTA) to boost robustness. Our method achieves a balanced accuracy of 0.892 across validation domains, highlighting its clinical applicability and scalability across tasks.
arXiv.org Artificial Intelligence
Sep-8-2025
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- Europe > Germany > Hesse > Darmstadt Region > Wiesbaden (0.05)
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- Research Report (0.40)
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- Health & Medicine > Therapeutic Area > Oncology (0.31)
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