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arxiv: 2307.07528 · v1 · pith:GOSSLMRR · submitted 2023-07-13 · q-bio.QM · cs.AI· cs.CV· cs.HC· eess.IV

PatchSorter: A High Throughput Deep Learning Digital Pathology Tool for Object Labeling

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classification q-bio.QM cs.AIcs.CVcs.HCeess.IV
keywords labelingdeepdigitallargelearningobjectspatchsorterpathology
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The discovery of patterns associated with diagnosis, prognosis, and therapy response in digital pathology images often requires intractable labeling of large quantities of histological objects. Here we release an open-source labeling tool, PatchSorter, which integrates deep learning with an intuitive web interface. Using >100,000 objects, we demonstrate a >7x improvement in labels per second over unaided labeling, with minimal impact on labeling accuracy, thus enabling high-throughput labeling of large datasets.

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