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MICA: a multi-omics method to predict gene regulatory networks in early human embryos

Recent advances in single-cell omics have transformed characterisation of cell types in challenging-to-study biological contexts. In contexts with limited single-cell samples, such as the early human embryo inference of transcription factor-gene regulatory network (GRN) interactions is especially di...

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Autores principales: Alanis-Lobato, Gregorio, Bartlett, Thomas E, Huang, Qiulin, Simon, Claire S, McCarthy, Afshan, Elder, Kay, Snell, Phil, Christie, Leila, Niakan, Kathy K
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Life Science Alliance LLC 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10599980/
https://www.ncbi.nlm.nih.gov/pubmed/37879938
http://dx.doi.org/10.26508/lsa.202302415
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author Alanis-Lobato, Gregorio
Bartlett, Thomas E
Huang, Qiulin
Simon, Claire S
McCarthy, Afshan
Elder, Kay
Snell, Phil
Christie, Leila
Niakan, Kathy K
author_facet Alanis-Lobato, Gregorio
Bartlett, Thomas E
Huang, Qiulin
Simon, Claire S
McCarthy, Afshan
Elder, Kay
Snell, Phil
Christie, Leila
Niakan, Kathy K
author_sort Alanis-Lobato, Gregorio
collection PubMed
description Recent advances in single-cell omics have transformed characterisation of cell types in challenging-to-study biological contexts. In contexts with limited single-cell samples, such as the early human embryo inference of transcription factor-gene regulatory network (GRN) interactions is especially difficult. Here, we assessed application of different linear or non-linear GRN predictions to single-cell simulated and human embryo transcriptome datasets. We also compared how expression normalisation impacts on GRN predictions, finding that transcripts per million reads outperformed alternative methods. GRN inferences were more reproducible using a non-linear method based on mutual information (MI) applied to single-cell transcriptome datasets refined with chromatin accessibility (CA) (called MICA), compared with alternative network prediction methods tested. MICA captures complex non-monotonic dependencies and feedback loops. Using MICA, we generated the first GRN inferences in early human development. MICA predicted co-localisation of the AP-1 transcription factor subunit proto-oncogene JUND and the TFAP2C transcription factor AP-2γ in early human embryos. Overall, our comparative analysis of GRN prediction methods defines a pipeline that can be applied to single-cell multi-omics datasets in especially challenging contexts to infer interactions between transcription factor expression and target gene regulation.
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spelling pubmed-105999802023-10-27 MICA: a multi-omics method to predict gene regulatory networks in early human embryos Alanis-Lobato, Gregorio Bartlett, Thomas E Huang, Qiulin Simon, Claire S McCarthy, Afshan Elder, Kay Snell, Phil Christie, Leila Niakan, Kathy K Life Sci Alliance Resources Recent advances in single-cell omics have transformed characterisation of cell types in challenging-to-study biological contexts. In contexts with limited single-cell samples, such as the early human embryo inference of transcription factor-gene regulatory network (GRN) interactions is especially difficult. Here, we assessed application of different linear or non-linear GRN predictions to single-cell simulated and human embryo transcriptome datasets. We also compared how expression normalisation impacts on GRN predictions, finding that transcripts per million reads outperformed alternative methods. GRN inferences were more reproducible using a non-linear method based on mutual information (MI) applied to single-cell transcriptome datasets refined with chromatin accessibility (CA) (called MICA), compared with alternative network prediction methods tested. MICA captures complex non-monotonic dependencies and feedback loops. Using MICA, we generated the first GRN inferences in early human development. MICA predicted co-localisation of the AP-1 transcription factor subunit proto-oncogene JUND and the TFAP2C transcription factor AP-2γ in early human embryos. Overall, our comparative analysis of GRN prediction methods defines a pipeline that can be applied to single-cell multi-omics datasets in especially challenging contexts to infer interactions between transcription factor expression and target gene regulation. Life Science Alliance LLC 2023-10-25 /pmc/articles/PMC10599980/ /pubmed/37879938 http://dx.doi.org/10.26508/lsa.202302415 Text en © 2023 Alanis-Lobato et al. https://creativecommons.org/licenses/by/4.0/This article is available under a Creative Commons License (Attribution 4.0 International, as described at https://creativecommons.org/licenses/by/4.0/).
spellingShingle Resources
Alanis-Lobato, Gregorio
Bartlett, Thomas E
Huang, Qiulin
Simon, Claire S
McCarthy, Afshan
Elder, Kay
Snell, Phil
Christie, Leila
Niakan, Kathy K
MICA: a multi-omics method to predict gene regulatory networks in early human embryos
title MICA: a multi-omics method to predict gene regulatory networks in early human embryos
title_full MICA: a multi-omics method to predict gene regulatory networks in early human embryos
title_fullStr MICA: a multi-omics method to predict gene regulatory networks in early human embryos
title_full_unstemmed MICA: a multi-omics method to predict gene regulatory networks in early human embryos
title_short MICA: a multi-omics method to predict gene regulatory networks in early human embryos
title_sort mica: a multi-omics method to predict gene regulatory networks in early human embryos
topic Resources
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10599980/
https://www.ncbi.nlm.nih.gov/pubmed/37879938
http://dx.doi.org/10.26508/lsa.202302415
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