Semi-Automated Quality Assurance in Digital Pathology: Tile Classification Approach
Meredith VandeHaar, M. Clinch, I. Yilmaz, M.A. Rahman, Y. Xiao, F. Dogany, H.M. Alazab, A. Nassar, Z. Akkus, B. Dangott

TL;DR
This paper introduces a deep learning-based tile classification algorithm for quality assurance in digital pathology, aiming to efficiently detect and localize artifacts in slides to assist human review.
Contribution
The study develops a hybrid AI approach combining single and multiple artifact models to improve artifact detection accuracy in digital pathology slides.
Findings
InceptionResNet was identified as the optimal model.
Hybrid model design improved artifact detection performance.
The approach reduces manual review time for quality assurance.
Abstract
Quality assurance is a critical but underexplored area in digital pathology, where even minor artifacts can have significant effects. Artifacts have been shown to negatively impact the performance of AI diagnostic models. In current practice, trained staff manually review digitized images prior to release of these slides to pathologists which are then used to render a diagnosis. Conventional image processing approaches, provide a foundation for detecting artifacts on digital pathology slides. However, current tools do not leverage deep learning, which has the potential to improve detection accuracy and scalability. Despite these advancements, methods for quality assurance in digital pathology remain limited, presenting a gap for innovation. We propose an AI algorithm designed to screen digital pathology slides by analyzing tiles and categorizing them into one of 10 predefined artifact…
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Taxonomy
TopicsAI in cancer detection · Cell Image Analysis Techniques · Digital Imaging for Blood Diseases
