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Evaluation of Engineering Potential in Undomesticated Microbes with VECTOR

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NIAID Data Ecosystem2026-05-10 收录
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https://www.ncbi.nlm.nih.gov/sra/SRP570791
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Genetic engineering research has predominantly focused on well-characterized organisms like Escherichia coli and Bacillus subtilis, with methods that often fail to translate to other microorganisms. This limitation presents a significant challenge, particularly given the increasing isolation of large microbial collections through high throughput culturomics. In response, we developed a scalable, high-throughput pipeline to evaluate the engineerability of diverse microbial community members we named VECTOR (Versatile Engineering and Characterization of Transferable Origins and Resistance). We utilized a library of vectors with the Bacterial Expression Vector Archive (BEVA) architecture that included combinations of three antibiotic resistance genes, and three broad host range origins of replication (pBBR1, RK2 and RSF1010) or the restricted host range R6K with an integrative mariner transposon. We tagged each vector with green fluorescent protein and a unique nucleotide barcode. The resulting plasmids were delivered en masse to libraries of undomesticated microbes from the plant microbiome in workflows designed to evaluate their ability to be engineered. Utilizing OD600 and relative fluorescence measurements, we were able to monitor genetic cargo transfer in real time, indicating successfully engineered strains. Next-generation sequencing of plasmid molecular barcodes allowed us to identify specific vector architectures that worked well in particular bacterial strains from a large community. Modifications to the procedure facilitated isolation of engineered microbes. Our results underscore the potential of this approach to rapidly develop toolkits for the efficient engineering of a wide range of cultivatable microorganisms.
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2026-03-01
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