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Algorithm for cellular reprogramming

The day we understand the time evolution of subcellular events at a level of detail comparable to physical systems governed by Newton’s laws of motion seems far away. Even so, quantitative approaches to cellular dynamics add to our understanding of cell biology. With data-guided frameworks we can de...

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Autores principales: Ronquist, Scott, Patterson, Geoff, Muir, Lindsey A., Lindsly, Stephen, Chen, Haiming, Brown, Markus, Wicha, Max S., Bloch, Anthony, Brockett, Roger, Rajapakse, Indika
Formato: Online Artículo Texto
Lenguaje:English
Publicado: National Academy of Sciences 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5692574/
https://www.ncbi.nlm.nih.gov/pubmed/29078370
http://dx.doi.org/10.1073/pnas.1712350114
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author Ronquist, Scott
Patterson, Geoff
Muir, Lindsey A.
Lindsly, Stephen
Chen, Haiming
Brown, Markus
Wicha, Max S.
Bloch, Anthony
Brockett, Roger
Rajapakse, Indika
author_facet Ronquist, Scott
Patterson, Geoff
Muir, Lindsey A.
Lindsly, Stephen
Chen, Haiming
Brown, Markus
Wicha, Max S.
Bloch, Anthony
Brockett, Roger
Rajapakse, Indika
author_sort Ronquist, Scott
collection PubMed
description The day we understand the time evolution of subcellular events at a level of detail comparable to physical systems governed by Newton’s laws of motion seems far away. Even so, quantitative approaches to cellular dynamics add to our understanding of cell biology. With data-guided frameworks we can develop better predictions about, and methods for, control over specific biological processes and system-wide cell behavior. Here we describe an approach for optimizing the use of transcription factors (TFs) in cellular reprogramming, based on a device commonly used in optimal control. We construct an approximate model for the natural evolution of a cell-cycle–synchronized population of human fibroblasts, based on data obtained by sampling the expression of 22,083 genes at several time points during the cell cycle. To arrive at a model of moderate complexity, we cluster gene expression based on division of the genome into topologically associating domains (TADs) and then model the dynamics of TAD expression levels. Based on this dynamical model and additional data, such as known TF binding sites and activity, we develop a methodology for identifying the top TF candidates for a specific cellular reprogramming task. Our data-guided methodology identifies a number of TFs previously validated for reprogramming and/or natural differentiation and predicts some potentially useful combinations of TFs. Our findings highlight the immense potential of dynamical models, mathematics, and data-guided methodologies for improving strategies for control over biological processes.
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spelling pubmed-56925742017-11-20 Algorithm for cellular reprogramming Ronquist, Scott Patterson, Geoff Muir, Lindsey A. Lindsly, Stephen Chen, Haiming Brown, Markus Wicha, Max S. Bloch, Anthony Brockett, Roger Rajapakse, Indika Proc Natl Acad Sci U S A Physical Sciences The day we understand the time evolution of subcellular events at a level of detail comparable to physical systems governed by Newton’s laws of motion seems far away. Even so, quantitative approaches to cellular dynamics add to our understanding of cell biology. With data-guided frameworks we can develop better predictions about, and methods for, control over specific biological processes and system-wide cell behavior. Here we describe an approach for optimizing the use of transcription factors (TFs) in cellular reprogramming, based on a device commonly used in optimal control. We construct an approximate model for the natural evolution of a cell-cycle–synchronized population of human fibroblasts, based on data obtained by sampling the expression of 22,083 genes at several time points during the cell cycle. To arrive at a model of moderate complexity, we cluster gene expression based on division of the genome into topologically associating domains (TADs) and then model the dynamics of TAD expression levels. Based on this dynamical model and additional data, such as known TF binding sites and activity, we develop a methodology for identifying the top TF candidates for a specific cellular reprogramming task. Our data-guided methodology identifies a number of TFs previously validated for reprogramming and/or natural differentiation and predicts some potentially useful combinations of TFs. Our findings highlight the immense potential of dynamical models, mathematics, and data-guided methodologies for improving strategies for control over biological processes. National Academy of Sciences 2017-11-07 2017-10-24 /pmc/articles/PMC5692574/ /pubmed/29078370 http://dx.doi.org/10.1073/pnas.1712350114 Text en Copyright © 2017 the Author(s). Published by PNAS. This is an open access article distributed under the PNAS license (http://www.pnas.org/site/aboutpnas/licenses.xhtml) .
spellingShingle Physical Sciences
Ronquist, Scott
Patterson, Geoff
Muir, Lindsey A.
Lindsly, Stephen
Chen, Haiming
Brown, Markus
Wicha, Max S.
Bloch, Anthony
Brockett, Roger
Rajapakse, Indika
Algorithm for cellular reprogramming
title Algorithm for cellular reprogramming
title_full Algorithm for cellular reprogramming
title_fullStr Algorithm for cellular reprogramming
title_full_unstemmed Algorithm for cellular reprogramming
title_short Algorithm for cellular reprogramming
title_sort algorithm for cellular reprogramming
topic Physical Sciences
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5692574/
https://www.ncbi.nlm.nih.gov/pubmed/29078370
http://dx.doi.org/10.1073/pnas.1712350114
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