2021
DOI: 10.1101/2021.08.23.457396
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A deep learning-based iterative digital pathology annotation tool

Abstract: Well-annotated exemplars are an important prerequisite for supervised deep learning schemes. Unfortunately, generating these annotations is a cumbersome and laborious process, due to the large amount of time and effort needed. Here we present a deep-learning-based iterative digital pathology annotation tool that is both easy to use by pathologists and easy to integrate into machine vision systems. Our pathology image annotation tool greatly reduces annotation time from hours to a few minutes, while maintaining… Show more

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“…As well as this, manual annotation makes it difficult to generate large-scale datasets for segmentation tasks in computational pathology. Iterative labelling strategies (Tavolara et al, 2020;Graham et al, 2021a;Jaber et al, 2021), which use a human-in-theloop mechanism, have recently been used in the literature and can help significantly decrease the time required for annotation, while still ensuring a high level of accuracy.…”
Section: Supervised Learning Datasets For Cpathmentioning
confidence: 99%
“…As well as this, manual annotation makes it difficult to generate large-scale datasets for segmentation tasks in computational pathology. Iterative labelling strategies (Tavolara et al, 2020;Graham et al, 2021a;Jaber et al, 2021), which use a human-in-theloop mechanism, have recently been used in the literature and can help significantly decrease the time required for annotation, while still ensuring a high level of accuracy.…”
Section: Supervised Learning Datasets For Cpathmentioning
confidence: 99%