Cargando…

Applying Deep Neural Network Analysis to High-Content Image-Based Assays

The etiological underpinnings of many CNS disorders are not well understood. This is likely due to the fact that individual diseases aggregate numerous pathological subtypes, each associated with a complex landscape of genetic risk factors. To overcome these challenges, researchers are integrating n...

Descripción completa

Detalles Bibliográficos
Autores principales: Yang, Samuel J., Lipnick, Scott L., Makhortova, Nina R., Venugopalan, Subhashini, Fan, Minjie, Armstrong, Zan, Schlaeger, Thorsten M., Deng, Liyong, Chung, Wendy K., O’Callaghan, Liadan, Geraschenko, Anton, Whye, Dosh, Berndl, Marc, Hazard, Jon, Williams, Brian, Narayanaswamy, Arunachalam, Ando, D. Michael, Nelson, Philip, Rubin, Lee L.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: SAGE Publications 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6710615/
https://www.ncbi.nlm.nih.gov/pubmed/31284814
http://dx.doi.org/10.1177/2472555219857715
_version_ 1783446376085979136
author Yang, Samuel J.
Lipnick, Scott L.
Makhortova, Nina R.
Venugopalan, Subhashini
Fan, Minjie
Armstrong, Zan
Schlaeger, Thorsten M.
Deng, Liyong
Chung, Wendy K.
O’Callaghan, Liadan
Geraschenko, Anton
Whye, Dosh
Berndl, Marc
Hazard, Jon
Williams, Brian
Narayanaswamy, Arunachalam
Ando, D. Michael
Nelson, Philip
Rubin, Lee L.
author_facet Yang, Samuel J.
Lipnick, Scott L.
Makhortova, Nina R.
Venugopalan, Subhashini
Fan, Minjie
Armstrong, Zan
Schlaeger, Thorsten M.
Deng, Liyong
Chung, Wendy K.
O’Callaghan, Liadan
Geraschenko, Anton
Whye, Dosh
Berndl, Marc
Hazard, Jon
Williams, Brian
Narayanaswamy, Arunachalam
Ando, D. Michael
Nelson, Philip
Rubin, Lee L.
author_sort Yang, Samuel J.
collection PubMed
description The etiological underpinnings of many CNS disorders are not well understood. This is likely due to the fact that individual diseases aggregate numerous pathological subtypes, each associated with a complex landscape of genetic risk factors. To overcome these challenges, researchers are integrating novel data types from numerous patients, including imaging studies capturing broadly applicable features from patient-derived materials. These datasets, when combined with machine learning, potentially hold the power to elucidate the subtle patterns that stratify patients by shared pathology. In this study, we interrogated whether high-content imaging of primary skin fibroblasts, using the Cell Painting method, could reveal disease-relevant information among patients. First, we showed that technical features such as batch/plate type, plate, and location within a plate lead to detectable nuisance signals, as revealed by a pre-trained deep neural network and analysis with deep image embeddings. Using a plate design and image acquisition strategy that accounts for these variables, we performed a pilot study with 12 healthy controls and 12 subjects affected by the severe genetic neurological disorder spinal muscular atrophy (SMA), and evaluated whether a convolutional neural network (CNN) generated using a subset of the cells could distinguish disease states on cells from the remaining unseen control–SMA pair. Our results indicate that these two populations could effectively be differentiated from one another and that model selectivity is insensitive to batch/plate type. One caveat is that the samples were also largely separated by source. These findings lay a foundation for how to conduct future studies exploring diseases with more complex genetic contributions and unknown subtypes.
format Online
Article
Text
id pubmed-6710615
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher SAGE Publications
record_format MEDLINE/PubMed
spelling pubmed-67106152019-09-17 Applying Deep Neural Network Analysis to High-Content Image-Based Assays Yang, Samuel J. Lipnick, Scott L. Makhortova, Nina R. Venugopalan, Subhashini Fan, Minjie Armstrong, Zan Schlaeger, Thorsten M. Deng, Liyong Chung, Wendy K. O’Callaghan, Liadan Geraschenko, Anton Whye, Dosh Berndl, Marc Hazard, Jon Williams, Brian Narayanaswamy, Arunachalam Ando, D. Michael Nelson, Philip Rubin, Lee L. SLAS Discov Original Research The etiological underpinnings of many CNS disorders are not well understood. This is likely due to the fact that individual diseases aggregate numerous pathological subtypes, each associated with a complex landscape of genetic risk factors. To overcome these challenges, researchers are integrating novel data types from numerous patients, including imaging studies capturing broadly applicable features from patient-derived materials. These datasets, when combined with machine learning, potentially hold the power to elucidate the subtle patterns that stratify patients by shared pathology. In this study, we interrogated whether high-content imaging of primary skin fibroblasts, using the Cell Painting method, could reveal disease-relevant information among patients. First, we showed that technical features such as batch/plate type, plate, and location within a plate lead to detectable nuisance signals, as revealed by a pre-trained deep neural network and analysis with deep image embeddings. Using a plate design and image acquisition strategy that accounts for these variables, we performed a pilot study with 12 healthy controls and 12 subjects affected by the severe genetic neurological disorder spinal muscular atrophy (SMA), and evaluated whether a convolutional neural network (CNN) generated using a subset of the cells could distinguish disease states on cells from the remaining unseen control–SMA pair. Our results indicate that these two populations could effectively be differentiated from one another and that model selectivity is insensitive to batch/plate type. One caveat is that the samples were also largely separated by source. These findings lay a foundation for how to conduct future studies exploring diseases with more complex genetic contributions and unknown subtypes. SAGE Publications 2019-07-08 2019-09 /pmc/articles/PMC6710615/ /pubmed/31284814 http://dx.doi.org/10.1177/2472555219857715 Text en © 2019 Society for Laboratory Automation and Screening http://www.creativecommons.org/licenses/by-nc/4.0/ This article is distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 License (http://www.creativecommons.org/licenses/by-nc/4.0/) which permits non-commercial use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access pages (https://us.sagepub.com/en-us/nam/open-access-at-sage).
spellingShingle Original Research
Yang, Samuel J.
Lipnick, Scott L.
Makhortova, Nina R.
Venugopalan, Subhashini
Fan, Minjie
Armstrong, Zan
Schlaeger, Thorsten M.
Deng, Liyong
Chung, Wendy K.
O’Callaghan, Liadan
Geraschenko, Anton
Whye, Dosh
Berndl, Marc
Hazard, Jon
Williams, Brian
Narayanaswamy, Arunachalam
Ando, D. Michael
Nelson, Philip
Rubin, Lee L.
Applying Deep Neural Network Analysis to High-Content Image-Based Assays
title Applying Deep Neural Network Analysis to High-Content Image-Based Assays
title_full Applying Deep Neural Network Analysis to High-Content Image-Based Assays
title_fullStr Applying Deep Neural Network Analysis to High-Content Image-Based Assays
title_full_unstemmed Applying Deep Neural Network Analysis to High-Content Image-Based Assays
title_short Applying Deep Neural Network Analysis to High-Content Image-Based Assays
title_sort applying deep neural network analysis to high-content image-based assays
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6710615/
https://www.ncbi.nlm.nih.gov/pubmed/31284814
http://dx.doi.org/10.1177/2472555219857715
work_keys_str_mv AT yangsamuelj applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT lipnickscottl applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT makhortovaninar applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT venugopalansubhashini applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT fanminjie applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT armstrongzan applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT schlaegerthorstenm applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT dengliyong applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT chungwendyk applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT ocallaghanliadan applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT geraschenkoanton applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT whyedosh applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT berndlmarc applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT hazardjon applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT williamsbrian applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT narayanaswamyarunachalam applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT andodmichael applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT nelsonphilip applyingdeepneuralnetworkanalysistohighcontentimagebasedassays
AT rubinleel applyingdeepneuralnetworkanalysistohighcontentimagebasedassays