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Deep Learning of Histopathological Features for the Prediction of Tumour Molecular Genetics

Advanced diagnostics are enabling cancer treatments to become increasingly tailored to the individual through developments in immunotherapies and targeted therapies. However, long turnaround times and high costs of molecular testing hinder the widespread implementation of targeted cancer treatments....

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Autores principales: Murchan, Pierre, Ó’Brien, Cathal, O’Connell, Shane, McNevin, Ciara S., Baird, Anne-Marie, Sheils, Orla, Ó Broin, Pilib, Finn, Stephen P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8393642/
https://www.ncbi.nlm.nih.gov/pubmed/34441338
http://dx.doi.org/10.3390/diagnostics11081406
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author Murchan, Pierre
Ó’Brien, Cathal
O’Connell, Shane
McNevin, Ciara S.
Baird, Anne-Marie
Sheils, Orla
Ó Broin, Pilib
Finn, Stephen P.
author_facet Murchan, Pierre
Ó’Brien, Cathal
O’Connell, Shane
McNevin, Ciara S.
Baird, Anne-Marie
Sheils, Orla
Ó Broin, Pilib
Finn, Stephen P.
author_sort Murchan, Pierre
collection PubMed
description Advanced diagnostics are enabling cancer treatments to become increasingly tailored to the individual through developments in immunotherapies and targeted therapies. However, long turnaround times and high costs of molecular testing hinder the widespread implementation of targeted cancer treatments. Meanwhile, gold-standard histopathological assessment carried out by a trained pathologist is widely regarded as routine and mandatory in most cancers. Recently, methods have been developed to mine hidden information from histopathological slides using deep learning applied to scanned and digitized slides; deep learning comprises a collection of computational methods which learn patterns in data in order to make predictions. Such methods have been reported to be successful in a variety of cancers for predicting the presence of biomarkers such as driver mutations, tumour mutational burden, and microsatellite instability. This information could prove valuable to pathologists and oncologists in clinical decision making for cancer treatment and triage for in-depth sequencing. In addition to identifying molecular features, deep learning has been applied to predict prognosis and treatment response in certain cancers. Despite reported successes, many challenges remain before the clinical implementation of such diagnostic strategies in the clinical setting is possible. This review aims to outline recent developments in the field of deep learning for predicting molecular genetics from histopathological slides, as well as to highlight limitations and pitfalls of working with histopathology slides in deep learning.
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spelling pubmed-83936422021-08-28 Deep Learning of Histopathological Features for the Prediction of Tumour Molecular Genetics Murchan, Pierre Ó’Brien, Cathal O’Connell, Shane McNevin, Ciara S. Baird, Anne-Marie Sheils, Orla Ó Broin, Pilib Finn, Stephen P. Diagnostics (Basel) Review Advanced diagnostics are enabling cancer treatments to become increasingly tailored to the individual through developments in immunotherapies and targeted therapies. However, long turnaround times and high costs of molecular testing hinder the widespread implementation of targeted cancer treatments. Meanwhile, gold-standard histopathological assessment carried out by a trained pathologist is widely regarded as routine and mandatory in most cancers. Recently, methods have been developed to mine hidden information from histopathological slides using deep learning applied to scanned and digitized slides; deep learning comprises a collection of computational methods which learn patterns in data in order to make predictions. Such methods have been reported to be successful in a variety of cancers for predicting the presence of biomarkers such as driver mutations, tumour mutational burden, and microsatellite instability. This information could prove valuable to pathologists and oncologists in clinical decision making for cancer treatment and triage for in-depth sequencing. In addition to identifying molecular features, deep learning has been applied to predict prognosis and treatment response in certain cancers. Despite reported successes, many challenges remain before the clinical implementation of such diagnostic strategies in the clinical setting is possible. This review aims to outline recent developments in the field of deep learning for predicting molecular genetics from histopathological slides, as well as to highlight limitations and pitfalls of working with histopathology slides in deep learning. MDPI 2021-08-03 /pmc/articles/PMC8393642/ /pubmed/34441338 http://dx.doi.org/10.3390/diagnostics11081406 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Review
Murchan, Pierre
Ó’Brien, Cathal
O’Connell, Shane
McNevin, Ciara S.
Baird, Anne-Marie
Sheils, Orla
Ó Broin, Pilib
Finn, Stephen P.
Deep Learning of Histopathological Features for the Prediction of Tumour Molecular Genetics
title Deep Learning of Histopathological Features for the Prediction of Tumour Molecular Genetics
title_full Deep Learning of Histopathological Features for the Prediction of Tumour Molecular Genetics
title_fullStr Deep Learning of Histopathological Features for the Prediction of Tumour Molecular Genetics
title_full_unstemmed Deep Learning of Histopathological Features for the Prediction of Tumour Molecular Genetics
title_short Deep Learning of Histopathological Features for the Prediction of Tumour Molecular Genetics
title_sort deep learning of histopathological features for the prediction of tumour molecular genetics
topic Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8393642/
https://www.ncbi.nlm.nih.gov/pubmed/34441338
http://dx.doi.org/10.3390/diagnostics11081406
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