2025-09-09 ワシントン大学セントルイス校
<関連情報>
- https://source.washu.edu/2025/09/microbiome-instability-linked-to-poor-growth-in-kids/
- https://medicine.washu.edu/news/microbiome-instability-linked-to-poor-growth-in-kids/
- https://www.sciencedirect.com/science/article/pii/S0092867425009754
Culture-independent meta-pangenomics enabled by long-read metagenomics reveals associations with pediatric undernutrition
Jeremiah J. Minich, Nicholas Allsing, M. Omar Din, Michael J. Tisza, Kenneth Maleta, Daniel McDonald, Nolan Hartwick, Allen Mamerto, Caitriona Brennan, Lauren Hansen, Justin Shaffer, Emily R. Murray, Tiffany Duong, Rob Knight, Kevin Stephenson, Mark J. Manary, Todd P. Michael
Cell Available online: 9 September 2025
DOI:https://doi.org/10.1016/j.cell.2025.08.020

Highlights
- LR platform comparison: PB and ONT yield 44–64× more cMAGs/Gbp than ILMN
- 986 cMAGs (839 circular) from 8 children over 11 months in a longitudinal dataset
- Multi-clade pangenome and mGWAS reveal genetic links to linear growth and breastfeeding
- Gut microbe genome temporal instability is associated with linear growth faltering
Summary
The human gut microbiome is linked to child malnutrition, yet traditional microbiome approaches lack resolution. We hypothesized that complete metagenome-assembled genomes (cMAGs), recovered through long-read (LR) DNA sequencing, would enable pangenome and microbial genome-wide association study (GWAS) analyses to identify microbial genetic associations with child linear growth. LR methods produced 44–64× more cMAGs per gigabase pair (Gbp) than short-read methods, with PacBio (PB) yielding the most accurate and cost-effective assemblies. In a Malawian longitudinal pediatric cohort, we generated 986 cMAGs (839 circular) from 47 samples and applied this database to an expanded set of 210 samples. Machine learning identified species predictive of linear growth. Pangenome analyses revealed microbial genetic associations with linear growth, while genome instability correlated with declining length-for-age Z score (LAZ). This resource demonstrates the power of comparing cMAGs with health trajectories and establishes a new standard for microbiome association studies.


