Mini Review: The Last Mile-Opportunities and Challenges for Machine Learning in Digital Toxicologic Pathology
Publication year
2021Source
Toxicologic Pathology, 49, 4, (2021), pp. 714-719ISSN
Publication type
Article / Letter to editor
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Organization
Medical Imaging
Pathology
Journal title
Toxicologic Pathology
Volume
vol. 49
Issue
iss. 4
Page start
p. 714
Page end
p. 719
Subject
Radboudumc 15: Urological cancers RIHS: Radboud Institute for Health Sciences; Pathology - Radboud University Medical CenterAbstract
The 2019 manuscript by the Special Interest Group on Digital Pathology and Image Analysis of the Society of Toxicologic pathology suggested that a synergism between artificial intelligence (AI) and machine learning (ML) technologies and digital toxicologic pathology would improve the daily workflow and future impact of toxicologic pathologists globally. Now 2 years later, the authors of this review consider whether, in their opinion, there is any evidence that supports that thesis. Specifically, we consider the opportunities and challenges for applying ML (the study of computer algorithms that are able to learn from example data and extrapolate the learned information to unseen data) algorithms in toxicologic pathology and how regulatory bodies are navigating this rapidly evolving field. Although we see similarities with the "Last Mile" metaphor, the weight of evidence suggests that toxicologic pathologists should approach ML with an equal dose of skepticism and enthusiasm. There are increasing opportunities for impact in our field that leave the authors cautiously excited and optimistic. Toxicologic pathologists have the opportunity to critically evaluate ML applications with a "call-to-arms" mentality. Why should we be late adopters? There is ample evidence to encourage engagement, growth, and leadership in this field.
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- Academic publications [243399]
- Electronic publications [129932]
- Faculty of Medical Sciences [92493]
- Open Access publications [104456]
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