Click
here to close Hello! We notice that
you are using Internet Explorer, which is not supported by Echinobase
and may cause the site to display incorrectly. We suggest using a
current version of Chrome,
FireFox,
or Safari.
PLoS One
2021 Jan 01;1612:e0261926. doi: 10.1371/journal.pone.0261926.
Show Gene links
Show Anatomy links
Developmental gene regulatory network connections predicted by machine learning from gene expression data alone.
Zhang J
,
Ibrahim F
,
Najmulski E
,
Katholos G
,
Altarawy D
,
Heath LS
,
Tulin SL
.
???displayArticle.abstract???
Gene regulatory network (GRN) inference can now take advantage of powerful machine learning algorithms to complement traditional experimental methods in building gene networks. However, the dynamical nature of embryonic development-representing the time-dependent interactions between thousands of transcription factors, signaling molecules, and effector genes-is one of the most challenging arenas for GRN prediction. In this work, we show that successful GRN predictions for a developmental network from gene expression data alone can be obtained with the Priors Enriched Absent Knowledge (PEAK) network inference algorithm. PEAK is a noise-robust method that models gene expression dynamics via ordinary differential equations and selects the best network based on information-theoretic criteria coupled with the machine learning algorithm Elastic Net. We test our GRN prediction methodology using two gene expression datasets for the purple sea urchin, Stronglyocentrotus purpuratus, and cross-check our results against existing GRN models that have been constructed and validated by over 30 years of experimental results. Our results find a remarkably high degree of sensitivity in identifying known gene interactions in the network (maximum 81.58%). We also generate novel predictions for interactions that have not yet been described, which provide a resource for researchers to use to further complete the sea urchin GRN. Published ChIPseq data and spatial co-expression analysis further support a subset of the top novel predictions. We conclude that GRN predictions that match known gene interactions can be produced using gene expression data alone from developmental time series experiments.
???displayArticle.pubmedLink???
34962963
???displayArticle.pmcLink???PMC8714117 ???displayArticle.link???PLoS One
Fig 1. Differentially expressed genes.Intersection of unique differentially expressed genes determined by NOISeq, EdgeR and GFold. The intersection of all 5 methods contains 10,627 unique genes specified as differentially expressed as seen where all the ovals overlap in the center. The number of genes uniquely described as DE by each program is the outermost number closest to the label, 2 for NOISeq (λ1 = 0.9), 411 for NOISeq (λ1 = 0.85), 16 for GFold1 (λ3 = â 1), 0 for GFold2 (λ4 = â 1.5), and 988 for EdgeR.
Fig 2. Example PEAK predicted interactions.An interactome visualization of a subset of PEAK-predicted interactions within the top-5 predictions (highest confidence scores) for each gene. Both known interactions (yellow gene boxes and red arrows) and new predicted interactions (blue gene boxes and black arrows) are included among these predictions.
Fig 3. Half-life value evaluation.Sensitivity as a measure of accuracy for the prediction of ectoderm and endomesoderm gene regulatory relations calculated with 5 different median mRNA half-life settings. For the Transcriptomic RNAseq data, 3hrs, 5hrs, 7hrs, 10hrs, 15hrs were tested. For the Nanostring data, 2hrs, 3hrs, 4hrs, 5hrs, 6hrs was tested.
Altarawy,
PEAK: Integrating Curated and Noisy Prior Knowledge in Gene Regulatory Network Inference.
2017, Pubmed
Altarawy,
PEAK: Integrating Curated and Noisy Prior Knowledge in Gene Regulatory Network Inference.
2017,
Pubmed
Arnone,
The hardwiring of development: organization and function of genomic regulatory systems.
1997,
Pubmed
,
Echinobase
Arrieta-Ortiz,
An experimentally supported model of the Bacillus subtilis global transcriptional regulatory network.
2015,
Pubmed
Cary,
EchinoBase: Tools for Echinoderm Genome Analyses.
2018,
Pubmed
,
Echinobase
Chen,
Sequencing and analysis of the transcriptome of the acorn worm Ptychodera flava, an indirect developing hemichordate.
2014,
Pubmed
,
Echinobase
Conesa,
Blast2GO: a universal tool for annotation, visualization and analysis in functional genomics research.
2005,
Pubmed
Davidson,
A provisional regulatory gene network for specification of endomesoderm in the sea urchin embryo.
2002,
Pubmed
,
Echinobase
Davidson,
A genomic regulatory network for development.
2002,
Pubmed
,
Echinobase
Delgado,
Computational methods for Gene Regulatory Networks reconstruction and analysis: A review.
2019,
Pubmed
Du,
Transcriptome sequencing and characterization for the sea cucumber Apostichopus japonicus (Selenka, 1867).
2012,
Pubmed
,
Echinobase
Ettensohn,
Alx1, a member of the Cart1/Alx3/Alx4 subfamily of Paired-class homeodomain proteins, is an essential component of the gene network controlling skeletogenic fate specification in the sea urchin embryo.
2003,
Pubmed
,
Echinobase
Feng,
GFOLD: a generalized fold change for ranking differentially expressed genes from RNA-seq data.
2012,
Pubmed
Fernandez-Valverde,
Inference of Developmental Gene Regulatory Networks Beyond Classical Model Systems: New Approaches in the Post-genomic Era.
2018,
Pubmed
,
Echinobase
Geiss,
Direct multiplexed measurement of gene expression with color-coded probe pairs.
2008,
Pubmed
Gildor,
Mature maternal mRNAs are longer than zygotic ones and have complex degradation kinetics in sea urchin.
2016,
Pubmed
,
Echinobase
Helm,
Characterization of differential transcript abundance through time during Nematostella vectensis development.
2013,
Pubmed
Henry,
Beyond the sea: Crepidula atrasolea as a spiralian model system.
2017,
Pubmed
Henry,
Differential localization of mRNAs during early development in the mollusc, Crepidula fornicata.
2010,
Pubmed
JACOB,
Genetic regulatory mechanisms in the synthesis of proteins.
1961,
Pubmed
Khor,
Genome-wide identification of binding sites and gene targets of Alx1, a pivotal regulator of echinoderm skeletogenesis.
2019,
Pubmed
,
Echinobase
Koide,
Xenopus as a model system to study transcriptional regulatory networks.
2005,
Pubmed
,
Echinobase
Levine,
Gene regulatory networks for development.
2005,
Pubmed
,
Echinobase
Li,
New regulatory circuit controlling spatial and temporal gene expression in the sea urchin embryo oral ectoderm GRN.
2013,
Pubmed
,
Echinobase
Longabaugh,
Computational representation of developmental genetic regulatory networks.
2005,
Pubmed
Marbach,
Wisdom of crowds for robust gene network inference.
2012,
Pubmed
Marbach,
Predictive regulatory models in Drosophila melanogaster by integrative inference of transcriptional networks.
2012,
Pubmed
Marcelli,
A dimerized HMX1 inhibits EPHA6/epha4b in mouse and zebrafish retinas.
2014,
Pubmed
Materna,
High accuracy, high-resolution prevalence measurement for the majority of locally expressed regulatory genes in early sea urchin development.
2010,
Pubmed
,
Echinobase
Mevel,
RUNX transcription factors: orchestrators of development.
2019,
Pubmed
Nagata,
Emergence of cooperative bistability and robustness of gene regulatory networks.
2020,
Pubmed
Oliveri,
Global regulatory logic for specification of an embryonic cell lineage.
2008,
Pubmed
,
Echinobase
Robinson,
edgeR: a Bioconductor package for differential expression analysis of digital gene expression data.
2010,
Pubmed
Robinson,
Integrative genomics viewer.
2011,
Pubmed
Shashikant,
Global analysis of primary mesenchyme cell cis-regulatory modules by chromatin accessibility profiling.
2018,
Pubmed
,
Echinobase
Sodergren,
The genome of the sea urchin Strongylocentrotus purpuratus.
2006,
Pubmed
,
Echinobase
Stathopoulos,
Genomic regulatory networks and animal development.
2005,
Pubmed
Su,
A perturbation model of the gene regulatory network for oral and aboral ectoderm specification in the sea urchin embryo.
2009,
Pubmed
,
Echinobase
Thorvaldsdóttir,
Integrative Genomics Viewer (IGV): high-performance genomics data visualization and exploration.
2013,
Pubmed
Tu,
Gene structure in the sea urchin Strongylocentrotus purpuratus based on transcriptome analysis.
2012,
Pubmed
,
Echinobase
Tu,
Quantitative developmental transcriptomes of the sea urchin Strongylocentrotus purpuratus.
2014,
Pubmed
,
Echinobase
Tulin,
A quantitative reference transcriptome for Nematostella vectensis early embryonic development: a pipeline for de novo assembly in emerging model systems.
2013,
Pubmed
Van den Broeck,
Gene Regulatory Network Inference: Connecting Plant Biology and Mathematical Modeling.
2020,
Pubmed