August 27, 2016
Journal Article

Network Analysis of Transcriptomics Expands Regulatory Landscapes in Synechococcus sp. PCC 7002

Abstract

Cyanobacterial regulation of gene expression must contend with a genome organization that lacks apparent functional context, as the majority of cellular processes and metabolic pathways are encoded by genes found at disparate locations across the genome. In addition, the fact that coordinated regulation of cyanobacterial cellular machinery takes place with significantly fewer transcription factors, compared to other Eubacteria, suggests the involvement of post-transcriptional mechanisms and regulatory adaptations which are not fully understood. Global transcript abundance from model cyanobacterium Synechococcus sp. PCC 7002 grown under 42 different conditions was analyzed using context-likelihood of relatedness. The resulting 903-gene network, which was organized into 11 modules, not only allowed classification of cyanobacterial responses to specific environmental variables but provided insight into the transcriptional network topology and led to the expansion of predicted regulons. When used in conjunction with genome sequence, the global transcript abundance allowed identification of putative post-transcriptional changes in expression as well as novel potential targets of both DNA binding proteins and asRNA regulators. The results offer a new perspective into the multi-level regulation that governs cellular adaptations of fast-growing physiologically robust cyanobacterium Synechococcus sp. PCC 7002 to changing environmental variables. It also extends a methodological knowledge-based framework for studying multi-scale regulatory mechanisms that operate in cyanobacteria. Finally, it provides valuable context for integrating systems-level data to enhance evidence-driven genomic annotation, especially in organisms where traditional context analyses cannot be implemented due to lack of operon-based functional organization.

Revised: July 2, 2020 | Published: August 27, 2016

Citation

McClure R.S., C.C. Overall, J.E. McDermott, E.A. Hill, L.M. Markillie, L.A. McCue, and R.C. Taylor, et al. 2016. Network Analysis of Transcriptomics Expands Regulatory Landscapes in Synechococcus sp. PCC 7002. Nucleic Acids Research 44, no. 18:8810-8825. PNNL-SA-113421. doi:10.1093/nar/gkw737