Assessing and Enhancing Robustness of Deep Learning Models with Corruption Emulation in Digital Pathology
Deep learning in digital pathology brings intelligence and automation as substantial enhancements to pathological analysis, the gold standard of clinical diagnosis. However, multiple steps from tissue preparation to slide imaging introduce various image corruptions, making it difficult for deep neur...
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Zusammenfassung: | Deep learning in digital pathology brings intelligence and automation as
substantial enhancements to pathological analysis, the gold standard of
clinical diagnosis. However, multiple steps from tissue preparation to slide
imaging introduce various image corruptions, making it difficult for deep
neural network (DNN) models to achieve stable diagnostic results for clinical
use. In order to assess and further enhance the robustness of the models, we
analyze the physical causes of the full-stack corruptions throughout the
pathological life-cycle and propose an Omni-Corruption Emulation (OmniCE)
method to reproduce 21 types of corruptions quantified with 5-level severity.
We then construct three OmniCE-corrupted benchmark datasets at both patch level
and slide level and assess the robustness of popular DNNs in classification and
segmentation tasks. Further, we explore to use the OmniCE-corrupted datasets as
augmentation data for training and experiments to verify that the
generalization ability of the models has been significantly enhanced. |
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DOI: | 10.48550/arxiv.2310.20427 |