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Machine Learning Helps Identify CHRONO as a Circadian Clock Component

Over the last decades, researchers have characterized a set of “clock genes” that drive daily rhythms in physiology and behavior. This arduous work has yielded results with far-reaching consequences in metabolic, psychiatric, and neoplastic disorders. Recent attempts to expand our understanding of c...

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Autores principales: Anafi, Ron C., Lee, Yool, Sato, Trey K., Venkataraman, Anand, Ramanathan, Chidambaram, Kavakli, Ibrahim H., Hughes, Michael E., Baggs, Julie E., Growe, Jacqueline, Liu, Andrew C., Kim, Junhyong, Hogenesch, John B.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3988006/
https://www.ncbi.nlm.nih.gov/pubmed/24737000
http://dx.doi.org/10.1371/journal.pbio.1001840
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author Anafi, Ron C.
Lee, Yool
Sato, Trey K.
Venkataraman, Anand
Ramanathan, Chidambaram
Kavakli, Ibrahim H.
Hughes, Michael E.
Baggs, Julie E.
Growe, Jacqueline
Liu, Andrew C.
Kim, Junhyong
Hogenesch, John B.
author_facet Anafi, Ron C.
Lee, Yool
Sato, Trey K.
Venkataraman, Anand
Ramanathan, Chidambaram
Kavakli, Ibrahim H.
Hughes, Michael E.
Baggs, Julie E.
Growe, Jacqueline
Liu, Andrew C.
Kim, Junhyong
Hogenesch, John B.
author_sort Anafi, Ron C.
collection PubMed
description Over the last decades, researchers have characterized a set of “clock genes” that drive daily rhythms in physiology and behavior. This arduous work has yielded results with far-reaching consequences in metabolic, psychiatric, and neoplastic disorders. Recent attempts to expand our understanding of circadian regulation have moved beyond the mutagenesis screens that identified the first clock components, employing higher throughput genomic and proteomic techniques. In order to further accelerate clock gene discovery, we utilized a computer-assisted approach to identify and prioritize candidate clock components. We used a simple form of probabilistic machine learning to integrate biologically relevant, genome-scale data and ranked genes on their similarity to known clock components. We then used a secondary experimental screen to characterize the top candidates. We found that several physically interact with known clock components in a mammalian two-hybrid screen and modulate in vitro cellular rhythms in an immortalized mouse fibroblast line (NIH 3T3). One candidate, Gene Model 129, interacts with BMAL1 and functionally represses the key driver of molecular rhythms, the BMAL1/CLOCK transcriptional complex. Given these results, we have renamed the gene CHRONO (computationally highlighted repressor of the network oscillator). Bi-molecular fluorescence complementation and co-immunoprecipitation demonstrate that CHRONO represses by abrogating the binding of BMAL1 to its transcriptional co-activator CBP. Most importantly, CHRONO knockout mice display a prolonged free-running circadian period similar to, or more drastic than, six other clock components. We conclude that CHRONO is a functional clock component providing a new layer of control on circadian molecular dynamics.
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spelling pubmed-39880062014-04-21 Machine Learning Helps Identify CHRONO as a Circadian Clock Component Anafi, Ron C. Lee, Yool Sato, Trey K. Venkataraman, Anand Ramanathan, Chidambaram Kavakli, Ibrahim H. Hughes, Michael E. Baggs, Julie E. Growe, Jacqueline Liu, Andrew C. Kim, Junhyong Hogenesch, John B. PLoS Biol Research Article Over the last decades, researchers have characterized a set of “clock genes” that drive daily rhythms in physiology and behavior. This arduous work has yielded results with far-reaching consequences in metabolic, psychiatric, and neoplastic disorders. Recent attempts to expand our understanding of circadian regulation have moved beyond the mutagenesis screens that identified the first clock components, employing higher throughput genomic and proteomic techniques. In order to further accelerate clock gene discovery, we utilized a computer-assisted approach to identify and prioritize candidate clock components. We used a simple form of probabilistic machine learning to integrate biologically relevant, genome-scale data and ranked genes on their similarity to known clock components. We then used a secondary experimental screen to characterize the top candidates. We found that several physically interact with known clock components in a mammalian two-hybrid screen and modulate in vitro cellular rhythms in an immortalized mouse fibroblast line (NIH 3T3). One candidate, Gene Model 129, interacts with BMAL1 and functionally represses the key driver of molecular rhythms, the BMAL1/CLOCK transcriptional complex. Given these results, we have renamed the gene CHRONO (computationally highlighted repressor of the network oscillator). Bi-molecular fluorescence complementation and co-immunoprecipitation demonstrate that CHRONO represses by abrogating the binding of BMAL1 to its transcriptional co-activator CBP. Most importantly, CHRONO knockout mice display a prolonged free-running circadian period similar to, or more drastic than, six other clock components. We conclude that CHRONO is a functional clock component providing a new layer of control on circadian molecular dynamics. Public Library of Science 2014-04-15 /pmc/articles/PMC3988006/ /pubmed/24737000 http://dx.doi.org/10.1371/journal.pbio.1001840 Text en © 2014 Anafi 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, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Anafi, Ron C.
Lee, Yool
Sato, Trey K.
Venkataraman, Anand
Ramanathan, Chidambaram
Kavakli, Ibrahim H.
Hughes, Michael E.
Baggs, Julie E.
Growe, Jacqueline
Liu, Andrew C.
Kim, Junhyong
Hogenesch, John B.
Machine Learning Helps Identify CHRONO as a Circadian Clock Component
title Machine Learning Helps Identify CHRONO as a Circadian Clock Component
title_full Machine Learning Helps Identify CHRONO as a Circadian Clock Component
title_fullStr Machine Learning Helps Identify CHRONO as a Circadian Clock Component
title_full_unstemmed Machine Learning Helps Identify CHRONO as a Circadian Clock Component
title_short Machine Learning Helps Identify CHRONO as a Circadian Clock Component
title_sort machine learning helps identify chrono as a circadian clock component
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3988006/
https://www.ncbi.nlm.nih.gov/pubmed/24737000
http://dx.doi.org/10.1371/journal.pbio.1001840
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