Co-Expression Networks in Sunflower: Harnessing the Power of Multi-Study Transcriptomic Public Data to Identify and Categorize Candidate Genes for Fungal Resistance
Author:
Ribone Andrés I.1ORCID, Fass Mónica1, Gonzalez Sergio1, Lia Veronica1, Paniego Norma1ORCID, Rivarola Máximo1ORCID
Affiliation:
1. Instituto de Agrobiotecnología y Biología Molecular (IABIMO), CICVyA—Instituto Nacional de Tecnología Agropecuaria (INTA), Consejo Nacional de Investigaciones Científicas y Técnicas (CONICET), Los Reseros y Nicolás Repetto, Hurlingham 1686, Argentina
Abstract
Fungal plant diseases are a major threat to food security worldwide. Current efforts to identify and list loci involved in different biological processes are more complicated than originally thought, even when complete genome assemblies are available. Despite numerous experimental and computational efforts to characterize gene functions in plants, about ~40% of protein-coding genes in the model plant Arabidopsis thaliana L. are still not categorized in the Gene Ontology (GO) Biological Process (BP) annotation. In non-model organisms, such as sunflower (Helianthus annuus L.), the number of BP term annotations is far fewer, ~22%. In the current study, we performed gene co-expression network analysis using eight terabytes of public transcriptome datasets and expression-based functional prediction to categorize and identify loci involved in the response to fungal pathogens. We were able to construct a reference gene network of healthy green tissue (GreenGCN) and a gene network of healthy and stressed root tissues (RootGCN). Both networks achieved robust, high-quality scores on the metrics of guilt-by-association and selective constraints versus gene connectivity. We were able to identify eight modules enriched in defense functions, of which two out of the three modules in the RootGCN were also conserved in the GreenGCN, suggesting similar defense-related expression patterns. We identified 16 WRKY genes involved in defense related functions and 65 previously uncharacterized loci now linked to defense response. In addition, we identified and classified 122 loci previously identified within QTLs or near candidate loci reported in GWAS studies of disease resistance in sunflower linked to defense response. All in all, we have implemented a valuable strategy to better describe genes within specific biological processes.
Funder
Agency for the Promotion of Research, Technological Development, and Innovation Ministry of Science, Technology, and Innovation
Subject
Plant Science,Ecology,Ecology, Evolution, Behavior and Systematics
Reference74 articles.
1. IPPC (2021). Secretariat Scientific Review of the Impact of Climate Change on Plant Pests, FAO on behalf of the IPPC Secretariat. 2. Redefining “stress resistance genes”, and why it matters;Maron;J. Exp. Bot.,2016 3. Dimitrijevic, A., and Horn, R. (2017). Sunflower hybrid breeding: From markers to genomic selection. Front. Plant Sci., 8. 4. Wu, Y., Shi, H., Yu, H., Ma, Y., Hu, H., Han, Z., Zhang, Y., Zhen, Z., Yi, L., and Hou, J. (2022). Combined GWAS and transcriptome analyses provide new insights into the response mechanisms of sunflower against drought stress. Front. Plant Sci., 13. 5. Guo, S., Zuo, Y., Zhang, Y., Wu, C., Su, W., Jin, W., Yu, H., An, Y., and Li, Q. (2017). Large-scale transcriptome comparison of sunflower genes responsive to Verticillium dahliae. BMC Genomics, 18.
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