Bacteria.guru: comparative transcriptomics and co-expression database for bacterial pathogens

While bacteria can be beneficial to our health, their deadly pathogenic potential has been an ever-present concern exacerbated by the emergence of drug-resistant strains. As such, there is a pressing urgency for an enhanced understanding of their gene function and regulation, which could mediate the...

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Main Authors: Lim, Peng Ken, Davey, Emilia Emmanuelle, Wee, Sean, Seetoh, Wei Song, Goh, Jong Ching, Zheng, Xinghai, Phang, Sean Kia Ann, Seah, Eugene Sheng Kai, Ng, Janice Wan Zhen, Wee, Xavier Jia Hui, Quek, Aloysius Jun Hui, Lim, Jordan JingHeng, Rodrigues, Edbert Edric, Lee, Heesoo, Lim, Chin Yong, Tan, Wei Zhi, Dan, Yuet Ruh, Lee, Bronson, Chee, Samuel En Le, Lim, Zachary Ze En, Guan, Jia Sheng, Tan, Ivan Jia Le, Arong, Trinidad Jeremiah, Mutwil, Marek
Other Authors: School of Biological Sciences
Format: Article
Language:English
Published: 2022
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Online Access:https://hdl.handle.net/10356/161692
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Institution: Nanyang Technological University
Language: English
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Summary:While bacteria can be beneficial to our health, their deadly pathogenic potential has been an ever-present concern exacerbated by the emergence of drug-resistant strains. As such, there is a pressing urgency for an enhanced understanding of their gene function and regulation, which could mediate the development of novel antimicrobials. Transcriptomic analyses have been established as insightful and indispensable to the functional characterization of genes and identification of new biological pathways, but in the context of bacterial studies, they remain limited to species-specific datasets. To address this, we integrated the genomic and transcriptomic data of the 17 most notorious and researched bacterial pathogens, creating bacteria.guru, an interactive database that can identify, visualize, and compare gene expression profiles, coexpression networks, functionally enriched clusters, and gene families across species. Through illustrating antibiotic resistance mechanisms in P. aeruginosa, we demonstrate that bacteria.guru could potentially aid in discovering multi-faceted antibiotic targets and, overall, facilitate future bacterial research. AVAILABILITY: The database and coexpression networks are freely available from https://bacteria.guru/. Sample annotations can be found in the supplemental data.