Cargando…

High-performance single-cell gene regulatory network inference at scale: the Inferelator 3.0

MOTIVATION: Gene regulatory networks define regulatory relationships between transcription factors and target genes within a biological system, and reconstructing them is essential for understanding cellular growth and function. Methods for inferring and reconstructing networks from genomics data ha...

Descripción completa

Detalles Bibliográficos
Autores principales: Skok Gibbs, Claudia, Jackson, Christopher A, Saldi, Giuseppe-Antonio, Tjärnberg, Andreas, Shah, Aashna, Watters, Aaron, De Veaux, Nicholas, Tchourine, Konstantine, Yi, Ren, Hamamsy, Tymor, Castro, Dayanne M, Carriero, Nicholas, Gorissen, Bram L, Gresham, David, Miraldi, Emily R, Bonneau, Richard
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9048651/
https://www.ncbi.nlm.nih.gov/pubmed/35188184
http://dx.doi.org/10.1093/bioinformatics/btac117
_version_ 1784695977421045760
author Skok Gibbs, Claudia
Jackson, Christopher A
Saldi, Giuseppe-Antonio
Tjärnberg, Andreas
Shah, Aashna
Watters, Aaron
De Veaux, Nicholas
Tchourine, Konstantine
Yi, Ren
Hamamsy, Tymor
Castro, Dayanne M
Carriero, Nicholas
Gorissen, Bram L
Gresham, David
Miraldi, Emily R
Bonneau, Richard
author_facet Skok Gibbs, Claudia
Jackson, Christopher A
Saldi, Giuseppe-Antonio
Tjärnberg, Andreas
Shah, Aashna
Watters, Aaron
De Veaux, Nicholas
Tchourine, Konstantine
Yi, Ren
Hamamsy, Tymor
Castro, Dayanne M
Carriero, Nicholas
Gorissen, Bram L
Gresham, David
Miraldi, Emily R
Bonneau, Richard
author_sort Skok Gibbs, Claudia
collection PubMed
description MOTIVATION: Gene regulatory networks define regulatory relationships between transcription factors and target genes within a biological system, and reconstructing them is essential for understanding cellular growth and function. Methods for inferring and reconstructing networks from genomics data have evolved rapidly over the last decade in response to advances in sequencing technology and machine learning. The scale of data collection has increased dramatically; the largest genome-wide gene expression datasets have grown from thousands of measurements to millions of single cells, and new technologies are on the horizon to increase to tens of millions of cells and above. RESULTS: In this work, we present the Inferelator 3.0, which has been significantly updated to integrate data from distinct cell types to learn context-specific regulatory networks and aggregate them into a shared regulatory network, while retaining the functionality of the previous versions. The Inferelator is able to integrate the largest single-cell datasets and learn cell-type-specific gene regulatory networks. Compared to other network inference methods, the Inferelator learns new and informative Saccharomyces cerevisiae networks from single-cell gene expression data, measured by recovery of a known gold standard. We demonstrate its scaling capabilities by learning networks for multiple distinct neuronal and glial cell types in the developing Mus musculus brain at E18 from a large (1.3 million) single-cell gene expression dataset with paired single-cell chromatin accessibility data. AVAILABILITY AND IMPLEMENTATION: The inferelator software is available on GitHub (https://github.com/flatironinstitute/inferelator) under the MIT license and has been released as python packages with associated documentation (https://inferelator.readthedocs.io/). SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
format Online
Article
Text
id pubmed-9048651
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Oxford University Press
record_format MEDLINE/PubMed
spelling pubmed-90486512022-04-29 High-performance single-cell gene regulatory network inference at scale: the Inferelator 3.0 Skok Gibbs, Claudia Jackson, Christopher A Saldi, Giuseppe-Antonio Tjärnberg, Andreas Shah, Aashna Watters, Aaron De Veaux, Nicholas Tchourine, Konstantine Yi, Ren Hamamsy, Tymor Castro, Dayanne M Carriero, Nicholas Gorissen, Bram L Gresham, David Miraldi, Emily R Bonneau, Richard Bioinformatics Original Papers MOTIVATION: Gene regulatory networks define regulatory relationships between transcription factors and target genes within a biological system, and reconstructing them is essential for understanding cellular growth and function. Methods for inferring and reconstructing networks from genomics data have evolved rapidly over the last decade in response to advances in sequencing technology and machine learning. The scale of data collection has increased dramatically; the largest genome-wide gene expression datasets have grown from thousands of measurements to millions of single cells, and new technologies are on the horizon to increase to tens of millions of cells and above. RESULTS: In this work, we present the Inferelator 3.0, which has been significantly updated to integrate data from distinct cell types to learn context-specific regulatory networks and aggregate them into a shared regulatory network, while retaining the functionality of the previous versions. The Inferelator is able to integrate the largest single-cell datasets and learn cell-type-specific gene regulatory networks. Compared to other network inference methods, the Inferelator learns new and informative Saccharomyces cerevisiae networks from single-cell gene expression data, measured by recovery of a known gold standard. We demonstrate its scaling capabilities by learning networks for multiple distinct neuronal and glial cell types in the developing Mus musculus brain at E18 from a large (1.3 million) single-cell gene expression dataset with paired single-cell chromatin accessibility data. AVAILABILITY AND IMPLEMENTATION: The inferelator software is available on GitHub (https://github.com/flatironinstitute/inferelator) under the MIT license and has been released as python packages with associated documentation (https://inferelator.readthedocs.io/). SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online. Oxford University Press 2022-02-21 /pmc/articles/PMC9048651/ /pubmed/35188184 http://dx.doi.org/10.1093/bioinformatics/btac117 Text en © The Author(s) 2022. Published by Oxford University Press. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Papers
Skok Gibbs, Claudia
Jackson, Christopher A
Saldi, Giuseppe-Antonio
Tjärnberg, Andreas
Shah, Aashna
Watters, Aaron
De Veaux, Nicholas
Tchourine, Konstantine
Yi, Ren
Hamamsy, Tymor
Castro, Dayanne M
Carriero, Nicholas
Gorissen, Bram L
Gresham, David
Miraldi, Emily R
Bonneau, Richard
High-performance single-cell gene regulatory network inference at scale: the Inferelator 3.0
title High-performance single-cell gene regulatory network inference at scale: the Inferelator 3.0
title_full High-performance single-cell gene regulatory network inference at scale: the Inferelator 3.0
title_fullStr High-performance single-cell gene regulatory network inference at scale: the Inferelator 3.0
title_full_unstemmed High-performance single-cell gene regulatory network inference at scale: the Inferelator 3.0
title_short High-performance single-cell gene regulatory network inference at scale: the Inferelator 3.0
title_sort high-performance single-cell gene regulatory network inference at scale: the inferelator 3.0
topic Original Papers
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9048651/
https://www.ncbi.nlm.nih.gov/pubmed/35188184
http://dx.doi.org/10.1093/bioinformatics/btac117
work_keys_str_mv AT skokgibbsclaudia highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT jacksonchristophera highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT saldigiuseppeantonio highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT tjarnbergandreas highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT shahaashna highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT wattersaaron highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT deveauxnicholas highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT tchourinekonstantine highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT yiren highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT hamamsytymor highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT castrodayannem highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT carrieronicholas highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT gorissenbraml highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT greshamdavid highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT miraldiemilyr highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30
AT bonneaurichard highperformancesinglecellgeneregulatorynetworkinferenceatscaletheinferelator30