Litcius/Paper detail

Measuring and mitigating PCR bias in microbiota datasets

Justin D. Silverman, Rachael J. Bloom, Sharon Jiang, Heather K. Durand, Eric P. Dallow, Sayan Mukherjee, Lawrence A. David

2021PLoS Computational Biology118 citationsDOIOpen Access PDF

Abstract

PCR amplification plays an integral role in the measurement of mixed microbial communities via high-throughput DNA sequencing of the 16S ribosomal RNA (rRNA) gene. Yet PCR is also known to introduce multiple forms of bias in 16S rRNA studies. Here we present a paired modeling and experimental approach to characterize and mitigate PCR NPM-bias (PCR bias from non-primer-mismatch sources) in microbiota surveys. We use experimental data from mock bacterial communities to validate our approach and human gut microbiota samples to characterize PCR NPM-bias under real-world conditions. Our results suggest that PCR NPM-bias can skew estimates of microbial relative abundances by a factor of 4 or more, but that this bias can be mitigated using log-ratio linear models.

Topics & Concepts

BiologyRibosomal RNAComputational biologyMicrobiome16S ribosomal RNAGeneticsPrimer (cosmetics)SkewGeneComputer sciencePhysicsThermodynamicsTelecommunicationsGut microbiota and healthMolecular Biology Techniques and ApplicationsColorectal Cancer Screening and Detection