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Finer Disentanglement of Aleatoric Uncertainty Can Accelerate Chemical Histopathology Imaging

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Label-free chemical imaging holds significant promise for improving digital pathology workflows, but data acquisition speed remains a limiting factor. To address this gap, we propose an adaptive strategy-initially scan the low information (LI) content of the entire tissue quickly, identify regions with high aleatoric uncertainty (AU), and selectively re-image them at better quality to capture higher information (HI) details. The primary challenge lies in distinguishing between high-AU regions mitigable through HI imaging and those that are not. However, since existing uncertainty frameworks cannot separate such AU subcategories, we propose a fine-grained disentanglement method based on post-hoc latent space analysis to unmix resolvable from irresolvable high-AU regions. We apply our approach to streamline infrared spectroscopic imaging of breast tissues, achieving superior downstream segmentation performance. This marks the first study focused on fine-grained AU disentanglement within dynamic image spaces (LI-to-HI), with novel application to streamline histopathology.

Ji-Hun Oh, Kianoush Falahkheirkhah, Rohit Bhargava• 2025

Related benchmarks

TaskDatasetResultRank
Tissue SegmentationBreast cancer tissue Unconstrained, TA ≈ 50 (test)
F1 Score54.9
3
Tissue SegmentationBreast cancer tissue Tighter constraints, 1 < TA < 50 (test)
F1 Score53.97
3
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