M

Mary K. Firestone

Lawrence Berkeley National Laboratory

ORCID: 0000-0002-4289-3244

Publishes on Soil Carbon and Nitrogen Dynamics, Microbial Community Ecology and Physiology, Methane Hydrates and Related Phenomena. 497 papers and 39.5k citations.

497Publications
39.5kTotal Citations

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Top publicationsby citations

A quantitative framework reveals ecological drivers of grassland microbial community assembly in response to warming
Daliang Ning, Mengting Yuan, Linwei Wu et al.|Nature Communications|2020
Cited by 1.3kOpen Access

Unraveling the drivers controlling community assembly is a central issue in ecology. Although it is generally accepted that selection, dispersal, diversification and drift are major community assembly processes, defining their relative importance is very challenging. Here, we present a framework to quantitatively infer community assembly mechanisms by phylogenetic bin-based null model analysis (iCAMP). iCAMP shows high accuracy (0.93-0.99), precision (0.80-0.94), sensitivity (0.82-0.94), and specificity (0.95-0.98) on simulated communities, which are 10-160% higher than those from the entire community-based approach. Application of iCAMP to grassland microbial communities in response to experimental warming reveals dominant roles of homogeneous selection (38%) and 'drift' (59%). Interestingly, warming decreases 'drift' over time, and enhances homogeneous selection which is primarily imposed on Bacillales. In addition, homogeneous selection has higher correlations with drought and plant productivity under warming than control. iCAMP provides an effective and robust tool to quantify microbial assembly processes, and should also be useful for plant and animal ecology.

The interconnected rhizosphere: High network complexity dominates rhizosphere assemblages
Shengjing Shi, Erin Nuccio, Zhou Jason Shi et al.|Ecology Letters|2016
Cited by 1.2kOpen Access

While interactions between roots and microorganisms have been intensively studied, we know little about interactions among root-associated microbes. We used random matrix theory-based network analysis of 16S rRNA genes to identify bacterial networks associated with wild oat (Avena fatua) over two seasons in greenhouse microcosms. Rhizosphere networks were substantially more complex than those in surrounding soils, indicating the rhizosphere has a greater potential for interactions and niche-sharing. Network complexity increased as plants grew, even as diversity decreased, highlighting that community organisation is not captured by univariate diversity. Covariations were predominantly positive (> 80%), suggesting that extensive mutualistic interactions may occur among rhizosphere bacteria; we identified quorum-based signalling as one potential strategy. Putative keystone taxa often had low relative abundances, suggesting low-abundance taxa may significantly contribute to rhizosphere function. Network complexity, a previously undescribed property of the rhizosphere microbiome, appears to be a defining characteristic of this habitat.