An integrated strain-level analytic pipeline utilizing longitudinal metagenomic data

Bibliographic Details
Title: An integrated strain-level analytic pipeline utilizing longitudinal metagenomic data
Authors: Boyan Zhou, Chan Wang, Gregory Putzel, Jiyuan Hu, Menghan Liu, Fen Wu, Yu Chen, Alejandro Pironti, Huilin Li
Source: Microbiology Spectrum, Vol 12, Iss 11 (2024)
Publisher Information: American Society for Microbiology, 2024.
Publication Year: 2024
Collection: LCC:Microbiology
Subject Terms: microbiome, longitudinal metagenomic data, strain-level analysis, genomic variants, strain dynamics, Microbiology, QR1-502
More Details: ABSTRACT With the development of sequencing technology and analytic tools, studying within-species variations enhances the understanding of microbial biological processes. Nevertheless, most existing methods designed for strain-level analysis lack the capability to concurrently assess both strain proportions and genome-wide single nucleotide variants (SNVs) across longitudinal metagenomic samples. In this study, we introduce LongStrain, an integrated pipeline for the analysis of large-scale metagenomic data from individuals with longitudinal or repeated samples. In LongStrain, we first utilize two efficient tools, Kraken2 and Bowtie2, for the taxonomic classification and alignment of sequencing reads, respectively. Subsequently, we propose to jointly model strain proportions and shared haplotypes across samples within individuals. This approach specifically targets tracking a primary strain and a secondary strain for each subject, providing their respective proportions and SNVs as output. With extensive simulation studies of a microbial community and single species, our results demonstrate that LongStrain is superior to two genotyping methods and two deconvolution methods across a majority of scenarios. Furthermore, we illustrate the potential applications of LongStrain in the real data analysis of The Environmental Determinants of Diabetes in the Young study and a gastric intestinal metaplasia microbiome study. In summary, the proposed analytic pipeline demonstrates marked statistical efficiency over the same type of methods and has great potential in understanding the genomic variants and dynamic changes at strain level. LongStrain and its tutorial are freely available online at https://github.com/BoyanZhou/LongStrain.IMPORTANCEThe advancement in DNA-sequencing technology has enabled the high-resolution identification of microorganisms in microbial communities. Since different microbial strains within species may contain extreme phenotypic variability (e.g., nutrition metabolism, antibiotic resistance, and pathogen virulence), investigating within-species variations holds great scientific promise in understanding the underlying mechanism of microbial biological processes. To fully utilize the shared genomic variants across longitudinal metagenomics samples collected in microbiome studies, we develop an integrated analytic pipeline (LongStrain) for longitudinal metagenomics data. It concurrently leverages the information on proportions of mapped reads for individual strains and genome-wide SNVs to enhance the efficiency and accuracy of strain identification. Our method helps to understand strains’ dynamic changes and their association with genome-wide variants. Given the fast-growing longitudinal studies of microbial communities, LongStrain which streamlines analyses of large-scale raw sequencing data should be of great value in microbiome research communities.
Document Type: article
File Description: electronic resource
Language: English
ISSN: 2165-0497
29145597
Relation: https://doaj.org/toc/2165-0497
DOI: 10.1128/spectrum.01431-24
Access URL: https://doaj.org/article/291455979dc0431b8efb2e35e9fc6709
Accession Number: edsdoj.291455979dc0431b8efb2e35e9fc6709
Database: Directory of Open Access Journals
More Details
ISSN:21650497
29145597
DOI:10.1128/spectrum.01431-24
Published in:Microbiology Spectrum
Language:English