Evan Qu
@quevan.bsky.social
40 followers 9 following 12 posts
PhD candidate in the MIT Microbiology Program (co2020). @Lieberman Lab @contaminatedsci.bsky.social. I study the ecology and evolution of skin microbes, like this one -> 🤏
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quevan.bsky.social
Turning to the vaginal microbiome, we showed how PHLAME's novelty aware approach can identify samples that are abundant novel diversity.

By our estimate, about 1/3 of vaginal samples we looked at had substantial abundances (>20%) of yet-characterized Gardnerella strains
quevan.bsky.social
We also found a clade of C. acnes that is higher abundance on older people (>40 yo). This association is independent of sex and consistent across geographic regions.
quevan.bsky.social
We used PHLAME to pull out some interesting associations from public data.

In the skin microbiome, we discovered that some clades of C. acnes are recently emerged, strongly geographic restricted, and at high prevalence in those regions. This pattern may indicate region specific adaptation.
quevan.bsky.social
Using this novelty-aware approach, PHLAME achieves near-perfect precision and high sensitivity, even for species with low coverage.

We also benchmarked PHLAME using @microjacob.bsky.social's unique resource of thousands of paired isolates and metagenomes from the same samples (see Fig. 4)
quevan.bsky.social
Counting missing mutations is not easy when reads are low-coverage and overdispersed.

We solved this problem using a model that independently measures dispersion and zero-inflation by comparing counts across just the mutational allele compared to all alleles at the same positions.
quevan.bsky.social
We figured out that we could estimate the divergence along each branch (novelty of a new strain) by counting the proportion of clade-specific mutations missing in metagenomic samples (π).
quevan.bsky.social
PHLAME quantifies novel strain diversity in samples using an evolutionary framework. Novel strains in a sample are assumed to share some, but not all, evolutionary history with known strains. We call the degree of unshared evolutionary history between a sample and a reference database Divergence.
quevan.bsky.social
We were concerned that ‘pushing’ novel diversity might influence downstream association detection, especially in samples with significant amounts of novel strain diversity.
quevan.bsky.social
Standard practice for complex metagenomic samples is to use reference databases to detect strains.

Because reference databases are never comprehensive, many of these methods will represent novel strains (i.e., not in the database) as a nearby representative genome in the database.
quevan.bsky.social
Many health or environmental associations may be driven by intraspecies variants.

The most straightforward approach for strain associations, direct inference of genotypes from metagenomics, is difficult in environments where many strains of the same species coexist.
Reposted by Evan Qu
microjacob.bsky.social
Ever wondered about the origin of the bacteria that call our faces home? 🤔 Our new preprint dives into the fascinating dynamics of the human facial skin microbiome (FSM) and explores the natural history of important microbiome species on people at high resolution. 🧫🧵