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Tox_(R)CNN: Deep learning-based nuclei profiling tool for drug toxicity screening

Toxicity is an important factor in failed drug development, and its efficient identification and prediction is a major challenge in drug discovery. We have explored the potential of microscopy images of fluorescently labeled nuclei for the prediction of toxicity based on nucleus pattern recognition....

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Autores principales: Jimenez-Carretero, Daniel, Abrishami, Vahid, Fernández-de-Manuel, Laura, Palacios, Irene, Quílez-Álvarez, Antonio, Díez-Sánchez, Alberto, del Pozo, Miguel A., Montoya, María C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6291153/
https://www.ncbi.nlm.nih.gov/pubmed/30500821
http://dx.doi.org/10.1371/journal.pcbi.1006238
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author Jimenez-Carretero, Daniel
Abrishami, Vahid
Fernández-de-Manuel, Laura
Palacios, Irene
Quílez-Álvarez, Antonio
Díez-Sánchez, Alberto
del Pozo, Miguel A.
Montoya, María C.
author_facet Jimenez-Carretero, Daniel
Abrishami, Vahid
Fernández-de-Manuel, Laura
Palacios, Irene
Quílez-Álvarez, Antonio
Díez-Sánchez, Alberto
del Pozo, Miguel A.
Montoya, María C.
author_sort Jimenez-Carretero, Daniel
collection PubMed
description Toxicity is an important factor in failed drug development, and its efficient identification and prediction is a major challenge in drug discovery. We have explored the potential of microscopy images of fluorescently labeled nuclei for the prediction of toxicity based on nucleus pattern recognition. Deep learning algorithms obtain abstract representations of images through an automated process, allowing them to efficiently classify complex patterns, and have become the state-of-the art in machine learning for computer vision. Here, deep convolutional neural networks (CNN) were trained to predict toxicity from images of DAPI-stained cells pre-treated with a set of drugs with differing toxicity mechanisms. Different cropping strategies were used for training CNN models, the nuclei-cropping-based Tox_CNN model outperformed other models classifying cells according to health status. Tox_CNN allowed automated extraction of feature maps that clustered compounds according to mechanism of action. Moreover, fully automated region-based CNNs (RCNN) were implemented to detect and classify nuclei, providing per-cell toxicity prediction from raw screening images. We validated both Tox_(R)CNN models for detection of pre-lethal toxicity from nuclei images, which proved to be more sensitive and have broader specificity than established toxicity readouts. These models predicted toxicity of drugs with mechanisms of action other than those they had been trained for and were successfully transferred to other cell assays. The Tox_(R)CNN models thus provide robust, sensitive, and cost-effective tools for in vitro screening of drug-induced toxicity. These models can be adopted for compound prioritization in drug screening campaigns, and could thereby increase the efficiency of drug discovery.
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spelling pubmed-62911532018-12-28 Tox_(R)CNN: Deep learning-based nuclei profiling tool for drug toxicity screening Jimenez-Carretero, Daniel Abrishami, Vahid Fernández-de-Manuel, Laura Palacios, Irene Quílez-Álvarez, Antonio Díez-Sánchez, Alberto del Pozo, Miguel A. Montoya, María C. PLoS Comput Biol Research Article Toxicity is an important factor in failed drug development, and its efficient identification and prediction is a major challenge in drug discovery. We have explored the potential of microscopy images of fluorescently labeled nuclei for the prediction of toxicity based on nucleus pattern recognition. Deep learning algorithms obtain abstract representations of images through an automated process, allowing them to efficiently classify complex patterns, and have become the state-of-the art in machine learning for computer vision. Here, deep convolutional neural networks (CNN) were trained to predict toxicity from images of DAPI-stained cells pre-treated with a set of drugs with differing toxicity mechanisms. Different cropping strategies were used for training CNN models, the nuclei-cropping-based Tox_CNN model outperformed other models classifying cells according to health status. Tox_CNN allowed automated extraction of feature maps that clustered compounds according to mechanism of action. Moreover, fully automated region-based CNNs (RCNN) were implemented to detect and classify nuclei, providing per-cell toxicity prediction from raw screening images. We validated both Tox_(R)CNN models for detection of pre-lethal toxicity from nuclei images, which proved to be more sensitive and have broader specificity than established toxicity readouts. These models predicted toxicity of drugs with mechanisms of action other than those they had been trained for and were successfully transferred to other cell assays. The Tox_(R)CNN models thus provide robust, sensitive, and cost-effective tools for in vitro screening of drug-induced toxicity. These models can be adopted for compound prioritization in drug screening campaigns, and could thereby increase the efficiency of drug discovery. Public Library of Science 2018-11-30 /pmc/articles/PMC6291153/ /pubmed/30500821 http://dx.doi.org/10.1371/journal.pcbi.1006238 Text en © 2018 Jimenez-Carretero et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Jimenez-Carretero, Daniel
Abrishami, Vahid
Fernández-de-Manuel, Laura
Palacios, Irene
Quílez-Álvarez, Antonio
Díez-Sánchez, Alberto
del Pozo, Miguel A.
Montoya, María C.
Tox_(R)CNN: Deep learning-based nuclei profiling tool for drug toxicity screening
title Tox_(R)CNN: Deep learning-based nuclei profiling tool for drug toxicity screening
title_full Tox_(R)CNN: Deep learning-based nuclei profiling tool for drug toxicity screening
title_fullStr Tox_(R)CNN: Deep learning-based nuclei profiling tool for drug toxicity screening
title_full_unstemmed Tox_(R)CNN: Deep learning-based nuclei profiling tool for drug toxicity screening
title_short Tox_(R)CNN: Deep learning-based nuclei profiling tool for drug toxicity screening
title_sort tox_(r)cnn: deep learning-based nuclei profiling tool for drug toxicity screening
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6291153/
https://www.ncbi.nlm.nih.gov/pubmed/30500821
http://dx.doi.org/10.1371/journal.pcbi.1006238
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