Literature DB >> 34020546

A comprehensive survey of regulatory network inference methods using single cell RNA sequencing data.

Hung Nguyen1, Duc Tran1, Bang Tran1, Bahadir Pehlivan1, Tin Nguyen1.   

Abstract

Gene regulatory network is a complicated set of interactions between genetic materials, which dictates how cells develop in living organisms and react to their surrounding environment. Robust comprehension of these interactions would help explain how cells function as well as predict their reactions to external factors. This knowledge can benefit both developmental biology and clinical research such as drug development or epidemiology research. Recently, the rapid advance of single-cell sequencing technologies, which pushed the limit of transcriptomic profiling to the individual cell level, opens up an entirely new area for regulatory network research. To exploit this new abundant source of data and take advantage of data in single-cell resolution, a number of computational methods have been proposed to uncover the interactions hidden by the averaging process in standard bulk sequencing. In this article, we review 15 such network inference methods developed for single-cell data. We discuss their underlying assumptions, inference techniques, usability, and pros and cons. In an extensive analysis using simulation, we also assess the methods' performance, sensitivity to dropout and time complexity. The main objective of this survey is to assist not only life scientists in selecting suitable methods for their data and analysis purposes but also computational scientists in developing new methods by highlighting outstanding challenges in the field that remain to be addressed in the future development.
© The Author(s) 2020. Published by Oxford University Press.

Entities:  

Keywords:  RNA sequencing; gene regulatory network; scRNA-seq; simulation studies; single-cell data

Mesh:

Year:  2021        PMID: 34020546      PMCID: PMC8138892          DOI: 10.1093/bib/bbaa190

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   11.622


  79 in total

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5.  Single-cell dissection of transcriptional heterogeneity in human colon tumors.

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6.  Large-scale mapping and validation of Escherichia coli transcriptional regulation from a compendium of expression profiles.

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7.  BTR: training asynchronous Boolean models using single-cell expression data.

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8.  Machine Learning of Stem Cell Identities From Single-Cell Expression Data via Regulatory Network Archetypes.

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9.  Characterization of transcriptional networks in blood stem and progenitor cells using high-throughput single-cell gene expression analysis.

Authors:  Victoria Moignard; Iain C Macaulay; Gemma Swiers; Florian Buettner; Judith Schütte; Fernando J Calero-Nieto; Sarah Kinston; Anagha Joshi; Rebecca Hannah; Fabian J Theis; Sten Eirik Jacobsen; Marella F de Bruijn; Berthold Göttgens
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10.  SINCERITIES: inferring gene regulatory networks from time-stamped single cell transcriptional expression profiles.

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  18 in total

Review 1.  The use of machine learning to discover regulatory networks controlling biological systems.

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2.  Experimental guidance for discovering genetic networks through hypothesis reduction on time series.

Authors:  Breschine Cummins; Francis C Motta; Robert C Moseley; Anastasia Deckard; Sophia Campione; Marcio Gameiro; Tomáš Gedeon; Konstantin Mischaikow; Steven B Haase
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3.  NETISCE: a network-based tool for cell fate reprogramming.

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4.  Mathematical model and genomics construction of developmental biology patterns using digital image technology.

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5.  Benchmarking imputation methods for network inference using a novel method of synthetic scRNA-seq data generation.

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6.  The GRN concept as a guide for evolutionary developmental biology.

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Review 7.  Guidelines for bioinformatics of single-cell sequencing data analysis in Alzheimer's disease: review, recommendation, implementation and application.

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8.  Network inference with Granger causality ensembles on single-cell transcriptomics.

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9.  SimiC enables the inference of complex gene regulatory dynamics across cell phenotypes.

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Journal:  Commun Biol       Date:  2022-04-12

Review 10.  Temporal modelling using single-cell transcriptomics.

Authors:  Jun Ding; Nadav Sharon; Ziv Bar-Joseph
Journal:  Nat Rev Genet       Date:  2022-01-31       Impact factor: 59.581

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