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February Reading List: back to the basics

2/4/2020

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It has been a while since my last post. I needed to take some personal time and had to step away from science for a bit. After going through my first year at a postdoc, applying for faculty jobs (unsuccessfully), trying to finish up PhD projects, issues with intellectual and data sharing from colleagues, and some family emergencies along the way, I really needed to step back and focus on myself before I could come back to work. So apologies for the delay for those who follow these posts. I will be back on schedule from now on! 
​Before I begin, part of my break was going to Australia for some personal leave. As most people know, there are terrible fires sweeping through their national parks and other protected areas. It's estimated 1.25B animals have perished in the fires. If you can, please consider donating to the bushfire relief: wwf.org.au

BONUS: photo from the trip cuddling a koala
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Framework to link microbial structure to function

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Phylogenetic conservatism of physiological traits. These traits will contribute to an organism's response to environmental change and, inevitably, affect the community's ability to resist change or return to its original state (resilience).
For my first post of the new year, I wanted to return to some of my favorite topics in microbial ecology: linking community patterns to function. I think it is imperative to move beyond identifying microbial community patterns and identify how various (a)biotic factors contribute to the structure of those observed patterns. For the first paper, the authors suggest employing ideas of microbial resistance and resilience to monitor microbial communities and their responses to climate [1]. These ideas were discussed over 10 years ago(!!!) by Allison & Martiny (who are two of my favorite people from my UCI time) [2]. As an aside, this paper was one of the reasons I went to UCI for my PhD - definitely a must read if you haven't already. Back to the paper at hand, the authors characterize the intrinsic (taxonomic and functional diversity) and extrinsic (both abiotic and biotic factors) that confer resistance and resilience of soil microbial communities to climate change. These connections are really only possible by applying trait-based approaches to characterize microbial life-history strategies related to climate extremes.

Quantifying physiological traits

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What other endorsement do you need to read this next paper [3]. Understanding carbon use efficiency has wide-ranging applications from breaking down growth rate - yield tradeoffs to scaling CUE for ecosystem modeling. Using 23 diverse soil isolates, the authors investigated physiological traits, including growth rate on various substrates. By computing CUE metrics for each strain the authors could correlate these values to genomic predictions, such as rRNA operon copy number and extracellular enzymes. Some results included wide ranges in CUE temperature sensitivity across taxa, creating difficulties in predicting phylogenetic conservatism of an assumed complex trait. Brief note, I similarly found a wide range in carbon use across strains within a single genus and this variation was highly dependent on temperature [4] - what drives these differences?! Further, the authors found that genomic predicted traits did not correlate with CUE measurements, highlighting the difficulty in using genomic traits as reliable predictors. We always need to integrate physiology!

Scaling from traits to response to whole communities

The best application of trait-based approaches in naturally occurring bacteria are probably​ the phytoplankton (specifically Prochlorococcus and Synechococcus). A new paper analyzed the distribution of picoeukaryotic phytoplankton with a global environmental abundance dataset combined with quantitative niche modeling [5]. The integration of the niche model enabled the authors to provide finer-taxonomic resolution to capture the high diversity of functional species within the phytoplankton groups (including differential responses to temperature and light). Together, the authors observed niche partitioning along a temperature gradient across the three major groups, which account for most of the photosynthetic biomass in tropical waters.
Using metagenomics, microbial ecologists have gained an unprecedented insight into the functional potential of understudied taxa as well as whole communities. However, as the above paper suggests, the genomic potential doesn't always tell the entire story. This next paper utilizes time-resolved metatranscriptomics to understand how expressed genes in microbial communities contribute to functional observations [6]. By comparing metatranscriptomes across rhizosphere and bulk soil, the authors found a significant successional pattern across time. Further, functional genes indicated a rapid functional successional pattern as well with four major functional guilds emerging: specialization to root exudates, decaying roots, root biomass, and later stage roots. These overall patterns suggest that specific microbial taxa specialize on various spatiotemporal strategies related to both habitat (root v soil) and time. As a disclaimer to those interested in using metatranscriptomics, they are very messy datasets. Honestly, they make metagenomes look easy... Here, the authors capitalized on a well-known system (just check the author list!) that has previously created a unique reference database for this specific system, including single-cell genomes (SAGs), isolate genomes, and stable isotope probing metagenomes.
Last paper I want to include really capture why assessing the (active) functional genes can better resolve community patterns. In particular, does relic DNA (essentially leftover DNA from dead organisms) mask community patterns [7]? Using fine-scale spatial sampling combined with temporal sampling, the authors demonstrate that, unsurprisingly, spatial variation largely explains community patterns. This is not new as distance decay relationships were an early observation for the argument FOR microbial biogeography patterns. What was interesting is the temporal dynamics. The observed temporal dynamics was hindered by the presence of relic DNA. By accounting for relic DNA in the samples, the authors found the temporal signal to be more evident.

Papers:

1. Bardgett RD, Caruso T. (2020). Soil microbial community responses to climate extremes: resistance, resilience and transitions to alternative states. Phil. Trans. R. Soc. B
DOI: 10.1098/rstb.2019.0112

2. Allison SD, Martiny JBH. (2008). Resistance, resilience, and redundancy in microbial communities. PNAS
DOI: 10.1073/pnas.0801925105

3. Pold G, Domeignoz-Horta LA, Morrison EW, Frey SD, Sistla SA, DeAngelis KM. (2020). Carbon use efficiency and its temperature sensitivity covary in soil bacteria. mBio
DOI: 10.1128/mBio.02293-19

​4. Chase AB, Gomez-Lunar Z, Lopez AE, Li J, Allison SD, Martiny AC, Martiny JBH. (2018). Emergence of soil bacterial ecotypes along a climate gradient. Environmental Microbiology
DOI: 10.1111/1462-2920.14405

5. Flombaum P, Wang WL, Primeau FW, Martiny AC. (2020). Global picophytoplankton niche partitioning predicts overall positive response to ocean warming. Nature Geoscience
DOI: 10.1038/s41561-019-0524-2

6. Nuccio EE, Star E, Karaoz U, Brodie EL, Zhou J, Tringe SG, Malmstrom RR, Woyke T, Banfield JF, Firestone MK, Pett-Ridge J. (2020). Niche differentiation is spatially and temporally regulated in the rhizosphere. ISME
DOI: 10.1038/s41396-019-0582-x
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7. Carini P, Delgado-Baquerizo M, Hinckley ELS, Holland-Moritz H, Brewer TE, Rue G, Vanderburgh C, McKnight D, Fierer N. (2020). Effects of spatial variability and relic DNA removal on the detection of temporal dynamics in soil microbial communities. mBio
DOI: 10.1128/mBio.02776-19
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