PUPpy: a primer design pipeline for substrain-level microbial detection and absolute quantification

Author:

Ghezzi Hans1ORCID,Fan Yiyun M.2ORCID,Ng Katharine M.3ORCID,Burckhardt Juan C.3ORCID,Pepin Deanna M.3ORCID,Lin Xuan4ORCID,Ziels Ryan M.4ORCID,Tropini Carolina1356ORCID

Affiliation:

1. Department of Bioinformatics, University of British Columbia, Vancouver, British Columbia, Canada

2. Department of Cellular and Physiological Sciences, University of British Columbia, Vancouver, British Columbia, Canada

3. Department of Microbiology and Immunology, University of British Columbia, Vancouver, British Columbia, Canada

4. Civil Engineering, The University of British Columbia, Vancouver, British Columbia, Canada

5. School of Biomedical Engineering, University of British Columbia, Vancouver, British Columbia, Canada

6. Humans and the Microbiome Program, Canadian Institute for Advanced Research (CIFAR), Toronto, Ontario, Canada

Abstract

ABSTRACT Characterizing microbial communities at high resolution and with absolute quantification is crucial to unravel the complexity and diversity of microbial ecosystems. This can be achieved with PCR assays, which enable highly selective detection and absolute quantification of microbial DNA. However, a major challenge that has hindered PCR applications in microbiome research is the design of highly specific primer sets that exclusively amplify intended targets. Here, we introduce Phylogenetically Unique Primers in python (PUPpy), a fully automated pipeline to design microbe- and group-specific primers within a given microbial community. PUPpy can be executed from a user-friendly graphical user interface, or two simple terminal commands, and it only requires coding sequence files of the community members as input. PUPpy-designed primers enable the detection of individual microbes and quantification of absolute microbial abundance in defined communities below the strain level. We experimentally evaluated the performance of PUPpy-designed primers using two bacterial communities as benchmarks. Each community comprises 10 members, exhibiting a range of genetic similarities that spanned from different phyla to substrains. PUPpy-designed primers also enable the detection of groups of bacteria in an undefined community, such as the detection of a gut bacterial family in a complex stool microbiota sample. Taxon-specific primers designed with PUPpy showed 100% specificity to their intended targets, without unintended amplification, in each community tested. Lastly, we show the absolute quantification of microbial abundance using PUPpy-designed primers in droplet digital PCR, benchmarked against 16S rRNA and shotgun sequencing. Our data shows that PUPpy-designed microbe-specific primers can be used to quantify substrain-level absolute counts, providing more resolved and accurate quantification in defined communities than short-read 16S rRNA and shotgun sequencing. IMPORTANCE Profiling microbial communities at high resolution and with absolute quantification is essential to uncover hidden ecological interactions within microbial ecosystems. Nevertheless, achieving resolved and quantitative investigations has been elusive due to methodological limitations in distinguishing and quantifying highly related microbes. Here, we describe Phylogenetically Unique Primers in python (PUPpy), an automated computational pipeline to design taxon-specific primers within defined microbial communities. Taxon-specific primers can be used to selectively detect and quantify individual microbes and larger taxa within a microbial community. PUPpy achieves substrain-level specificity without the need for computationally intensive databases and prioritizes user-friendliness by enabling both terminal and graphical user interface applications. Altogether, PUPpy enables fast, inexpensive, and highly accurate perspectives into microbial ecosystems, supporting the characterization of bacterial communities in both in vitro and complex microbiota settings.

Funder

Canadian Institute for Advanced Research

Michael Smith Health Research BC

Canadian Government | Natural Sciences and Engineering Research Council of Canada

Canada Foundation for Innovation

Johnson & Johnson women in STEM2D

Publisher

American Society for Microbiology

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