Cargando…
Use of deep learning methods to translate drug-induced gene expression changes from rat to human primary hepatocytes
In clinical trials, animal and cell line models are often used to evaluate the potential toxic effects of a novel compound or candidate drug before progressing to human trials. However, relating the results of animal and in vitro model exposures to relevant clinical outcomes in the human in vivo sys...
Autores principales: | , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Public Library of Science
2020
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7418976/ https://www.ncbi.nlm.nih.gov/pubmed/32780735 http://dx.doi.org/10.1371/journal.pone.0236392 |
_version_ | 1783569790971936768 |
---|---|
author | O’Donovan, Shauna D. Driessens, Kurt Lopatta, Daniel Wimmenauer, Florian Lukas, Alexander Neeven, Jelmer Stumm, Tobias Smirnov, Evgueni Lenz, Michael Ertaylan, Gokhan Jennen, Danyel G. J. van Riel, Natal A. W. Cavill, Rachel Peeters, Ralf L. M. de Kok, Theo M. C. M. |
author_facet | O’Donovan, Shauna D. Driessens, Kurt Lopatta, Daniel Wimmenauer, Florian Lukas, Alexander Neeven, Jelmer Stumm, Tobias Smirnov, Evgueni Lenz, Michael Ertaylan, Gokhan Jennen, Danyel G. J. van Riel, Natal A. W. Cavill, Rachel Peeters, Ralf L. M. de Kok, Theo M. C. M. |
author_sort | O’Donovan, Shauna D. |
collection | PubMed |
description | In clinical trials, animal and cell line models are often used to evaluate the potential toxic effects of a novel compound or candidate drug before progressing to human trials. However, relating the results of animal and in vitro model exposures to relevant clinical outcomes in the human in vivo system still proves challenging, relying on often putative orthologs. In recent years, multiple studies have demonstrated that the repeated dose rodent bioassay, the current gold standard in the field, lacks sufficient sensitivity and specificity in predicting toxic effects of pharmaceuticals in humans. In this study, we evaluate the potential of deep learning techniques to translate the pattern of gene expression measured following an exposure in rodents to humans, circumventing the current reliance on orthologs, and also from in vitro to in vivo experimental designs. Of the applied deep learning architectures applied in this study the convolutional neural network (CNN) and a deep artificial neural network with bottleneck architecture significantly outperform classical machine learning techniques in predicting the time series of gene expression in primary human hepatocytes given a measured time series of gene expression from primary rat hepatocytes following exposure in vitro to a previously unseen compound across multiple toxicologically relevant gene sets. With a reduction in average mean absolute error across 76 genes that have been shown to be predictive for identifying carcinogenicity from 0.0172 for a random regression forest to 0.0166 for the CNN model (p < 0.05). These deep learning architecture also perform well when applied to predict time series of in vivo gene expression given measured time series of in vitro gene expression for rats. |
format | Online Article Text |
id | pubmed-7418976 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | Public Library of Science |
record_format | MEDLINE/PubMed |
spelling | pubmed-74189762020-08-19 Use of deep learning methods to translate drug-induced gene expression changes from rat to human primary hepatocytes O’Donovan, Shauna D. Driessens, Kurt Lopatta, Daniel Wimmenauer, Florian Lukas, Alexander Neeven, Jelmer Stumm, Tobias Smirnov, Evgueni Lenz, Michael Ertaylan, Gokhan Jennen, Danyel G. J. van Riel, Natal A. W. Cavill, Rachel Peeters, Ralf L. M. de Kok, Theo M. C. M. PLoS One Research Article In clinical trials, animal and cell line models are often used to evaluate the potential toxic effects of a novel compound or candidate drug before progressing to human trials. However, relating the results of animal and in vitro model exposures to relevant clinical outcomes in the human in vivo system still proves challenging, relying on often putative orthologs. In recent years, multiple studies have demonstrated that the repeated dose rodent bioassay, the current gold standard in the field, lacks sufficient sensitivity and specificity in predicting toxic effects of pharmaceuticals in humans. In this study, we evaluate the potential of deep learning techniques to translate the pattern of gene expression measured following an exposure in rodents to humans, circumventing the current reliance on orthologs, and also from in vitro to in vivo experimental designs. Of the applied deep learning architectures applied in this study the convolutional neural network (CNN) and a deep artificial neural network with bottleneck architecture significantly outperform classical machine learning techniques in predicting the time series of gene expression in primary human hepatocytes given a measured time series of gene expression from primary rat hepatocytes following exposure in vitro to a previously unseen compound across multiple toxicologically relevant gene sets. With a reduction in average mean absolute error across 76 genes that have been shown to be predictive for identifying carcinogenicity from 0.0172 for a random regression forest to 0.0166 for the CNN model (p < 0.05). These deep learning architecture also perform well when applied to predict time series of in vivo gene expression given measured time series of in vitro gene expression for rats. Public Library of Science 2020-08-11 /pmc/articles/PMC7418976/ /pubmed/32780735 http://dx.doi.org/10.1371/journal.pone.0236392 Text en © 2020 O’Donovan 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 O’Donovan, Shauna D. Driessens, Kurt Lopatta, Daniel Wimmenauer, Florian Lukas, Alexander Neeven, Jelmer Stumm, Tobias Smirnov, Evgueni Lenz, Michael Ertaylan, Gokhan Jennen, Danyel G. J. van Riel, Natal A. W. Cavill, Rachel Peeters, Ralf L. M. de Kok, Theo M. C. M. Use of deep learning methods to translate drug-induced gene expression changes from rat to human primary hepatocytes |
title | Use of deep learning methods to translate drug-induced gene expression changes from rat to human primary hepatocytes |
title_full | Use of deep learning methods to translate drug-induced gene expression changes from rat to human primary hepatocytes |
title_fullStr | Use of deep learning methods to translate drug-induced gene expression changes from rat to human primary hepatocytes |
title_full_unstemmed | Use of deep learning methods to translate drug-induced gene expression changes from rat to human primary hepatocytes |
title_short | Use of deep learning methods to translate drug-induced gene expression changes from rat to human primary hepatocytes |
title_sort | use of deep learning methods to translate drug-induced gene expression changes from rat to human primary hepatocytes |
topic | Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7418976/ https://www.ncbi.nlm.nih.gov/pubmed/32780735 http://dx.doi.org/10.1371/journal.pone.0236392 |
work_keys_str_mv | AT odonovanshaunad useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT driessenskurt useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT lopattadaniel useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT wimmenauerflorian useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT lukasalexander useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT neevenjelmer useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT stummtobias useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT smirnovevgueni useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT lenzmichael useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT ertaylangokhan useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT jennendanyelgj useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT vanrielnatalaw useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT cavillrachel useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT peetersralflm useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes AT dekoktheomcm useofdeeplearningmethodstotranslatedruginducedgeneexpressionchangesfromrattohumanprimaryhepatocytes |