PatchSorter: a high throughput deep learning digital pathology tool for object labeling
C.F. Walker, Tasneem Talawalla, Róbert Tóth, Akhil Ambekar, Kien Rea, Oswin Chamian, Fan Fan, Sabina Berezowska, Sven Rottenberg, Anant Madabhushi, Marie Maillard, Laura Barisoni, Hugo M. Horlings, Andrew Janowczyk
Abstract
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.
Topics & Concepts
Digital pathologyComputer scienceDeep learningThroughputObject (grammar)Interface (matter)Artificial intelligenceOpen sourceOperating systemSoftwareBubbleWirelessMaximum bubble pressure methodAI in cancer detectionCell Image Analysis TechniquesDigital Imaging for Blood Diseases