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

Author:

Alanis-Lobato Gregorio1ORCID,Bartlett Thomas E2ORCID,Huang Qiulin13ORCID,Simon Claire S1,McCarthy Afshan1,Elder Kay4ORCID,Snell Phil4,Christie Leila4,Niakan Kathy K1356ORCID

Affiliation:

1. Human Embryo and Stem Cell Laboratory, The Francis Crick Institute, London, UK

2. Department of Statistical Science, University College, London, UK

3. Department of Physiology, Development and Neuroscience, The Centre for Trophoblast Research, University of Cambridge

4. Bourn Hall Clinic, Cambridge, UK

5. Wellcome – Medical Research Council Cambridge Stem Cell Institute, Jeffrey Cheah Biomedical Centre, University of Cambridge

6. Epigenetics Programme, Babraham Institute, Cambridge, UK

Abstract

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.

Funder

Wellcome Trust

UKRI | Medical Research Council

Cancer Research UK

Francis Crick Institute

Publisher

Life Science Alliance, LLC

Subject

Health, Toxicology and Mutagenesis,Plant Science,Biochemistry, Genetics and Molecular Biology (miscellaneous),Ecology

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