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Main Authors: Atey, Kaustubh, Jha, Sameer Anand, Bala, Gouranga, Sethi, Amit
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.20745
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author Atey, Kaustubh
Jha, Sameer Anand
Bala, Gouranga
Sethi, Amit
author_facet Atey, Kaustubh
Jha, Sameer Anand
Bala, Gouranga
Sethi, Amit
contents Atypical mitotic figures (AMFs) are important histopathological markers yet remain challenging to identify consistently, particularly under domain shift stemming from scanner, stain, and acquisition differences. We present a simple training-time recipe for domain-robust AMF classification in MIDOG 2025 Task 2. The approach (i) increases feature diversity via style perturbations inserted at early and mid backbone stages, (ii) aligns attention-refined features across sites using weak domain labels (Scanner, Origin, Species, Tumor) through an auxiliary alignment loss, and (iii) stabilizes predictions by distilling from an exponential moving average (EMA) teacher with temperature-scaled KL divergence. On the organizer-run preliminary leaderboard for atypical mitosis classification, our submission attains balanced accuracy of 0.8762, sensitivity of 0.8873, specificity of 0.8651, and ROC AUC of 0.9499. The method incurs negligible inference-time overhead, relies only on coarse domain metadata, and delivers strong, balanced performance, positioning it as a competitive submission for the MIDOG 2025 challenge.
format Preprint
id arxiv_https___arxiv_org_abs_2508_20745
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Mix, Align, Distil: Reliable Cross-Domain Atypical Mitosis Classification
Atey, Kaustubh
Jha, Sameer Anand
Bala, Gouranga
Sethi, Amit
Computer Vision and Pattern Recognition
Atypical mitotic figures (AMFs) are important histopathological markers yet remain challenging to identify consistently, particularly under domain shift stemming from scanner, stain, and acquisition differences. We present a simple training-time recipe for domain-robust AMF classification in MIDOG 2025 Task 2. The approach (i) increases feature diversity via style perturbations inserted at early and mid backbone stages, (ii) aligns attention-refined features across sites using weak domain labels (Scanner, Origin, Species, Tumor) through an auxiliary alignment loss, and (iii) stabilizes predictions by distilling from an exponential moving average (EMA) teacher with temperature-scaled KL divergence. On the organizer-run preliminary leaderboard for atypical mitosis classification, our submission attains balanced accuracy of 0.8762, sensitivity of 0.8873, specificity of 0.8651, and ROC AUC of 0.9499. The method incurs negligible inference-time overhead, relies only on coarse domain metadata, and delivers strong, balanced performance, positioning it as a competitive submission for the MIDOG 2025 challenge.
title Mix, Align, Distil: Reliable Cross-Domain Atypical Mitosis Classification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.20745