2022
DOI: 10.1002/path.5921
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Developing image analysis methods for digital pathology

Abstract: The potential to use quantitative image analysis and artificial intelligence is one of the driving forces behind digital pathology. However, despite novel image analysis methods for pathology being described across many publications, few become widely adopted and many are not applied in more than a single study. The explanation is often straightforward: software implementing the method is simply not available, or is too complex, incomplete, or dataset‐dependent for others to use. The result is a disconnect bet… Show more

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Cited by 33 publications
(17 citation statements)
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“…Digital image analysis, as opposed to semi-quantitative scoring, is becoming a common standard and has significant benefits in terms of larger scale experiments such as a wide staining panel applied to a TMA, normalization and implementation on analysis standards across labs and institutions, and cost-effectiveness. (33)(34)(35)(36) Hourglass was designed as a user-friendly and robust analysis tool to systematically and reproducibly mine large bioimaging datasets in the rapidly expanding digital pathology space. Naturally, alongside the boom of big data in biomedical and clinical spaces, tools are constantly created to query public and private datasets.…”
Section: Discussionmentioning
confidence: 99%
“…Digital image analysis, as opposed to semi-quantitative scoring, is becoming a common standard and has significant benefits in terms of larger scale experiments such as a wide staining panel applied to a TMA, normalization and implementation on analysis standards across labs and institutions, and cost-effectiveness. (33)(34)(35)(36) Hourglass was designed as a user-friendly and robust analysis tool to systematically and reproducibly mine large bioimaging datasets in the rapidly expanding digital pathology space. Naturally, alongside the boom of big data in biomedical and clinical spaces, tools are constantly created to query public and private datasets.…”
Section: Discussionmentioning
confidence: 99%
“…Ki67 and Cleaved Caspase 3 staining was quantified in a blinded fashion using QuPath software on 3-4 non-overlapping fields per tumor. 65 …”
Section: Methodsmentioning
confidence: 99%
“…The second review, from Peter Bankhead in Edinburgh, UK, focuses on image analysis methods, highlighting the current disconnect between the existing possibilities for digital pathology and the reality of using sophisticated image analysis systems in a coherent, consistent manner. In addition to reviewing the basic approaches, the article discusses the challenges of developing a novel algorithm past proof‐of‐concept and the need for collaborative and multidisciplinary approaches, with openness and sharing as a key principle for the future [2].…”
Section: Digital Pathologymentioning
confidence: 99%