ERMer: a serverless platform for navigating, analyzing, and visualizingEscherichia coliregulatory landscape through graph database

Author:

Mao Zhitao12ORCID,Wang Ruoyu12,Li Haoran12,Huang Yixin3,Zhang Qiang4,Liao Xiaoping12ORCID,Ma Hongwu12

Affiliation:

1. Biodesign Center, Key Laboratory of Systems Microbial Biotechnology, Tianjin Institute of Industrial Biotechnology, Chinese Academy of Sciences , Tianjin   300308 , PR China

2. National Technology Innovation Center of Synthetic Biology , Tianjin   300308 , PR China

3. AWS Professional Services , No.576 West Tianshan Road , Shanghai   200335 , PR China

4. AWS Solution Architect Sector, Amazon Web Service Inc , Beijing   100016 , PR China

Abstract

AbstractCellular regulation is inherently complex, and one particular cellular function is often controlled by a cascade of different types of regulatory interactions. For example, the activity of a transcription factor (TF), which regulates the expression level of downstream genes through transcriptional regulation, can be regulated by small molecules through compound–protein interactions. To identify such complex regulatory cascades, traditional relational databases require ineffective additional operations and are computationally expensive. In contrast, graph databases are purposefully developed to execute such deep searches efficiently. Here, we present ERMer (E. coli Regulation Miner), the first cloud platform for mining the regulatory landscape of Escherichia coli based on graph databases. Combining the AWS Neptune graph database, AWS lambda function, and G6 graph visualization engine enables quick search and visualization of complex regulatory cascades/patterns. Users can also interactively navigate the E. coli regulatory landscape through ERMer. Furthermore, a Q&A module is included to showcase the power of graph databases in answering complex biological questions through simple queries. The backend graph model can be easily extended as new data become available. In addition, the framework implemented in ERMer can be easily migrated to other applications or organisms. ERMer is available at https://ermer.biodesign.ac.cn/.

Funder

National Key Research and Development Program of China

Tianjin Synthetic Biotechnology Innovation Capacity Improvement Project

Youth Innovation Promotion Association CAS

Publisher

Oxford University Press (OUP)

Subject

Genetics

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