AtlasPatch: Efficient Tissue Detection and High-throughput Patch Extraction for Computational Pathology at Scale
Ahmed Alagha, Christopher Leclerc, Yousef Kotp, Omar Metwally, Calvin Moras, Peter Rentopoulos, Ghodsiyeh Rostami, Bich Ngoc Nguyen, Jumanah Baig, Abdelhakim Khellaf, Vincent Quoc-Huy Trinh, Rabeb Mizouni, Hadi Otrok, Jamal Bentahar, Mahdi S. Hosseini

TL;DR
AtlasPatch is a scalable, robust, and efficient framework for tissue detection and patch extraction in whole-slide images, significantly accelerating preprocessing for computational pathology without sacrificing accuracy.
Contribution
We introduce AtlasPatch, a novel framework combining foundation-model tissue detection with high-throughput patch extraction, optimized for large-scale and heterogeneous datasets.
Findings
Achieves high tissue detection precision of 0.986
Reduces preprocessing time by up to 16 times
Maintains downstream task performance
Abstract
Whole-slide image (WSI) preprocessing, comprising tissue detection followed by patch extraction, is foundational to AI-driven computational pathology but remains a major bottleneck for scaling to large and heterogeneous cohorts. We present AtlasPatch, a scalable framework that couples foundation-model tissue detection with high-throughput patch extraction at minimal computational overhead. Our tissue detector achieves high precision (0.986) and remains robust across varying tissue conditions (e.g., brightness, fragmentation, boundary definition, tissue heterogeneity) and common artifacts (e.g., pen/ink markings, scanner streaks). This robustness is enabled by our annotated, heterogeneous multi-cohort training set of ~30,000 WSI thumbnails combined with efficient adaptation of the Segment-Anything (SAM) model. AtlasPatch also reduces end-to-end WSI preprocessing time by up to 16…
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Taxonomy
TopicsAI in cancer detection · Medical Image Segmentation Techniques · Cell Image Analysis Techniques
