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The use of CRISPR-Cas Selective Amplicon Sequencing (CCSAS) to reveal the eukaryotic microbiome of metazoans

Zhong, K. X.; Cho, A.; Deeg, C. M.; Chan, A. M.; Suttle, C. A.

2020-06-02 microbiology
10.1101/2020.06.02.130807 bioRxiv
Show abstract

Characterization of the eukaryotic microbiome is required to understand the role of microbial communities in health and disease. Such investigation relies on sequencing 18S ribosomal RNA genes (rDNA), which serve as taxonomic markers; however, this is compromised by contaminating host rDNA sequences. To overcome this problem, we developed CRISPR-Cas Selective Amplicon Sequencing (CCSAS), a high-resolution and efficient approach for characterizing eukaryotic microbiomes. CCSAS uses taxon-specific single-guide RNA (sgRNA) to direct Cas9 to cut 18S rDNA sequences of the host. Validation shows that >96.5% of rDNA amplicons from ten model organisms were cleaved, while rDNA from protists and fungi were unaffected. In oyster spat, CCSAS resolved [~]8.5-fold more taxa, and several additional major phylogenetic groups when compared to the best available alternative approach. We designed taxon-specific sgRNA for [~]16,000 metazoan and plant taxa, making CCSAS widely available for characterizing eukaryotic microbiomes that have largely been neglected because of methodological challenges.

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