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Deep Learning Approaches and Applications in Toxicologic Histopathology: Current Status and Future Perspectives

Whole slide imaging enables the use of a wide array of digital image analysis tools that are revolutionizing pathology. Recent advances in digital pathology and deep convolutional neural networks have created an enormous opportunity to improve workflow efficiency, provide more quantitative, objectiv...

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Autores principales: Mehrvar, Shima, Himmel, Lauren E., Babburi, Pradeep, Goldberg, Andrew L., Guffroy, Magali, Janardhan, Kyathanahalli, Krempley, Amanda L., Bawa, Bhupinder
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer - Medknow 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8609289/
https://www.ncbi.nlm.nih.gov/pubmed/34881097
http://dx.doi.org/10.4103/jpi.jpi_36_21
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author Mehrvar, Shima
Himmel, Lauren E.
Babburi, Pradeep
Goldberg, Andrew L.
Guffroy, Magali
Janardhan, Kyathanahalli
Krempley, Amanda L.
Bawa, Bhupinder
author_facet Mehrvar, Shima
Himmel, Lauren E.
Babburi, Pradeep
Goldberg, Andrew L.
Guffroy, Magali
Janardhan, Kyathanahalli
Krempley, Amanda L.
Bawa, Bhupinder
author_sort Mehrvar, Shima
collection PubMed
description Whole slide imaging enables the use of a wide array of digital image analysis tools that are revolutionizing pathology. Recent advances in digital pathology and deep convolutional neural networks have created an enormous opportunity to improve workflow efficiency, provide more quantitative, objective, and consistent assessments of pathology datasets, and develop decision support systems. Such innovations are already making their way into clinical practice. However, the progress of machine learning - in particular, deep learning (DL) - has been rather slower in nonclinical toxicology studies. Histopathology data from toxicology studies are critical during the drug development process that is required by regulatory bodies to assess drug-related toxicity in laboratory animals and its impact on human safety in clinical trials. Due to the high volume of slides routinely evaluated, low-throughput, or narrowly performing DL methods that may work well in small-scale diagnostic studies or for the identification of a single abnormality are tedious and impractical for toxicologic pathology. Furthermore, regulatory requirements around good laboratory practice are a major hurdle for the adoption of DL in toxicologic pathology. This paper reviews the major DL concepts, emerging applications, and examples of DL in toxicologic pathology image analysis. We end with a discussion of specific challenges and directions for future research.
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spelling pubmed-86092892021-12-07 Deep Learning Approaches and Applications in Toxicologic Histopathology: Current Status and Future Perspectives Mehrvar, Shima Himmel, Lauren E. Babburi, Pradeep Goldberg, Andrew L. Guffroy, Magali Janardhan, Kyathanahalli Krempley, Amanda L. Bawa, Bhupinder J Pathol Inform Review Article Whole slide imaging enables the use of a wide array of digital image analysis tools that are revolutionizing pathology. Recent advances in digital pathology and deep convolutional neural networks have created an enormous opportunity to improve workflow efficiency, provide more quantitative, objective, and consistent assessments of pathology datasets, and develop decision support systems. Such innovations are already making their way into clinical practice. However, the progress of machine learning - in particular, deep learning (DL) - has been rather slower in nonclinical toxicology studies. Histopathology data from toxicology studies are critical during the drug development process that is required by regulatory bodies to assess drug-related toxicity in laboratory animals and its impact on human safety in clinical trials. Due to the high volume of slides routinely evaluated, low-throughput, or narrowly performing DL methods that may work well in small-scale diagnostic studies or for the identification of a single abnormality are tedious and impractical for toxicologic pathology. Furthermore, regulatory requirements around good laboratory practice are a major hurdle for the adoption of DL in toxicologic pathology. This paper reviews the major DL concepts, emerging applications, and examples of DL in toxicologic pathology image analysis. We end with a discussion of specific challenges and directions for future research. Wolters Kluwer - Medknow 2021-11-01 /pmc/articles/PMC8609289/ /pubmed/34881097 http://dx.doi.org/10.4103/jpi.jpi_36_21 Text en Copyright: © 2021 Journal of Pathology Informatics https://creativecommons.org/licenses/by-nc-sa/4.0/This is an open access journal, and articles are distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 License, which allows others to remix, tweak, and build upon the work non-commercially, as long as appropriate credit is given and the new creations are licensed under the identical terms.
spellingShingle Review Article
Mehrvar, Shima
Himmel, Lauren E.
Babburi, Pradeep
Goldberg, Andrew L.
Guffroy, Magali
Janardhan, Kyathanahalli
Krempley, Amanda L.
Bawa, Bhupinder
Deep Learning Approaches and Applications in Toxicologic Histopathology: Current Status and Future Perspectives
title Deep Learning Approaches and Applications in Toxicologic Histopathology: Current Status and Future Perspectives
title_full Deep Learning Approaches and Applications in Toxicologic Histopathology: Current Status and Future Perspectives
title_fullStr Deep Learning Approaches and Applications in Toxicologic Histopathology: Current Status and Future Perspectives
title_full_unstemmed Deep Learning Approaches and Applications in Toxicologic Histopathology: Current Status and Future Perspectives
title_short Deep Learning Approaches and Applications in Toxicologic Histopathology: Current Status and Future Perspectives
title_sort deep learning approaches and applications in toxicologic histopathology: current status and future perspectives
topic Review Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8609289/
https://www.ncbi.nlm.nih.gov/pubmed/34881097
http://dx.doi.org/10.4103/jpi.jpi_36_21
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