Jed A. Fuhrman

Jed  A. Fuhrman

University of Southern California

H-index: 111

North America-United States

Professor Information

University

University of Southern California

Position

McCulloch Crosby Chair of Marine Biology

Citations(all)

55533

Citations(since 2020)

20607

Cited By

42924

hIndex(all)

111

hIndex(since 2020)

61

i10Index(all)

220

i10Index(since 2020)

151

Email

University Profile Page

University of Southern California

Research & Interests List

Biological oceanography

Marine microbiology

Microbial ecology

Top articles of Jed A. Fuhrman

Variational inference for microbiome survey data with application to global ocean data

Linking sequence-derived microbial taxa abundances to host (patho-)physiology or habitat characteristics in a reproducible and interpretable manner has remained a formidable challenge for the analysis of microbiome survey data. Here, we introduce a flexible probabilistic modeling framework, VI-MIDAS (Variational Inference for MIcrobiome survey DAta analysiS), that enables joint estimation of context-dependent drivers and broad patterns of associations of microbial taxon abundances from microbiome survey data. VI-MIDAS comprises mechanisms for direct coupling of taxon abundances with covariates and taxa-specific latent coupling which can incorporate spatio-temporal information and taxon-taxon interactions. We leverage mean-field variational inference for posterior VI-MIDAS model parameter estimation and illustrate model building and analysis using Tara Ocean Expedition survey data. Using VI-MIDAS' latent embedding model and tools from network analysis, we show that marine microbial communities can be broadly categorized into five modules, including SAR11-, Nitrosopumilus-, and Alteromondales-dominated communities, each associated with specific environmental and spatiotemporal signatures. VI-MIDAS also finds evidence for largely positive taxon-taxon associations in SAR11 or Rhodospirillales clades, and negative associations with Alteromonadales and Flavobacteriales classes. Our results indicate that VI-MIDAS provides a powerful integrative statistical analysis framework for discovering broad patterns of associations between microbial taxa and context-specific covariate data from microbiome survey data.

Authors

Aditya K Mishra,Jesse McNichol,Jed Fuhrman,David Blei,Christian Lorenz Muller

Journal

bioRxiv

Published Date

2024

Predictable functional biogeography of marine microbial heterotrophs

Microbial heterotrophs (`picoheterotrophs') drive global carbon cycling, but how to quantitatively organize their functional complexity remains unclear. Here, we generate a global-scale, mechanistic understanding of marine picoheterotrophic functional biogeography with a novel model-data synthesis. We build picoheterotrophic diversity into a trait-based marine ecosystem model along two axes: substrate lability and optimization for growth rate (copiotrophy) vs. substrate affinity (oligotrophy). Using genetic sequences along an Alaska-to-Antarctica Pacific Ocean transect, we compile 21 picoheterotrophic guilds and estimate their degree of copiotrophy. Data and model agreement suggests that gradients in predation and substrate lability predominantly set biogeographical patterns, and identifies `slow copiotrophs' subsisting at depth. Results demonstrate the predictability of the marine microbiome and connect ecological dynamics with carbon storage, crucial for projecting changes in a warming ocean.

Authors

Emily J Zakem,Jesse McNichol,JL Weissman,Yubin Raut,Liang Xu,Elisa R Halewood,Craig A Carlson,Stephanie Dutkiewicz,Jed A Fuhrman,Naomi M Levine

Journal

bioRxiv

Published Date

2024

DeepLINK-T: deep learning inference for time series data using knockoffs and LSTM

High-dimensional longitudinal time series data is prevalent across various real-world applications. Many such applications can be modeled as regression problems with high-dimensional time series covariates. Deep learning has been a popular and powerful tool for fitting these regression models. Yet, the development of interpretable and reproducible deep-learning models is challenging and remains underexplored. This study introduces a novel method, Deep Learning Inference using Knockoffs for Time series data (DeepLINK-T), focusing on the selection of significant time series variables in regression while controlling the false discovery rate (FDR) at a predetermined level. DeepLINK-T combines deep learning with knockoff inference to control FDR in feature selection for time series models, accommodating a wide variety of feature distributions. It addresses dependencies across time and features by leveraging a time-varying latent factor structure in time series covariates. Three key ingredients for DeepLINK-T are 1) a Long Short-Term Memory (LSTM) autoencoder for generating time series knockoff variables, 2) an LSTM prediction network using both original and knockoff variables, and 3) the application of the knockoffs framework for variable selection with FDR control. Extensive simulation studies have been conducted to evaluate DeepLINK-T's performance, showing its capability to control FDR effectively while demonstrating superior feature selection power for high-dimensional longitudinal time series data compared to its non-time series counterpart. DeepLINK-T is further applied to three metagenomic data sets, validating its practical …

Authors

W. Zuo,Z. Zhu,Y. Du,Y.-C. Yeh,J. A. Fuhrman,J. Lv,Y. Fan,F. Sun

Journal

Manuscript

Published Date

2024

Diverse marine T4-like cyanophage communities are primarily comprised of low-abundance species including species with distinct seasonal, persistent, occasional, or sporadic …

Cyanophages exert important top-down controls on their cyanobacteria hosts; however, concurrent analysis of both phage and host populations is needed to better assess phage–host interaction models. We analyzed picocyanobacteria Prochlorococcus and Synechococcus and T4-like cyanophage communities in Pacific Ocean surface waters using five years of monthly viral and cellular fraction metagenomes. Cyanophage communities contained thousands of mostly low-abundance (<2% relative abundance) species with varying temporal dynamics, categorized as seasonally recurring or non-seasonal and occurring persistently, occasionally, or sporadically (detected in ≥85%, 15-85%, or <15% of samples, respectively). Viromes contained mostly seasonal and persistent phages (~40% each), while cellular fraction metagenomes had mostly sporadic species (~50%), reflecting that these sample sets capture different steps of the infection cycle—virions from prior infections or within currently infected cells, respectively. Two groups of seasonal phages correlated to Synechococcus or Prochlorococcus were abundant in spring/summer or fall/winter, respectively. Cyanophages likely have a strong influence on the host community structure, as their communities explained up to 32% of host community variation. These results support how both seasonally recurrent and apparent stochastic processes, likely determined by host availability and different host-range strategies among phages, are critical to phage–host interactions and dynamics, consistent with both the Kill-the-Winner and the Bank models.

Authors

Emily Dart,Jed A Fuhrman,Nathan A Ahlgren

Journal

Viruses

Published Date

2023/2/20

ViralCC retrieves complete viral genomes and virus-host pairs from metagenomic Hi-C data

The introduction of high-throughput chromosome conformation capture (Hi-C) into metagenomics enables reconstructing high-quality metagenome-assembled genomes (MAGs) from microbial communities. Despite recent advances in recovering eukaryotic, bacterial, and archaeal genomes using Hi-C contact maps, few of Hi-C-based methods are designed to retrieve viral genomes. Here we introduce ViralCC, a publicly available tool to recover complete viral genomes and detect virus-host pairs using Hi-C data. Compared to other Hi-C-based methods, ViralCC leverages the virus-host proximity structure as a complementary information source for the Hi-C interactions. Using mock and real metagenomic Hi-C datasets from several different microbial ecosystems, including the human gut, cow fecal, and wastewater, we demonstrate that ViralCC outperforms existing Hi-C-based binning methods as well as state-of …

Authors

Yuxuan Du,Jed A Fuhrman,Fengzhu Sun

Journal

Nature Communications

Published Date

2023/1/31

Inter-comparison of marine microbiome sampling protocols

Research on marine microbial communities is growing, but studies are hard to compare because of variation in seawater sampling protocols. To help researchers in the inter-comparison of studies that use different seawater sampling methodologies, as well as to help them design future sampling campaigns, we developed the EuroMarine Open Science Exploration initiative (EMOSE). Within the EMOSE framework, we sampled thousands of liters of seawater from a single station in the NW Mediterranean Sea (Service d’Observation du Laboratoire Arago [SOLA], Banyuls-sur-Mer), during one single day. The resulting dataset includes multiple seawater processing approaches, encompassing different material-type kinds of filters (cartridge membrane and flat membrane), three different size fractionations (>0.22 µm, 0.22–3 µm, 3–20 µm and >20 µm), and a number of different seawater volumes ranging from 1 …

Authors

Francisco Pascoal,Maria Paola Tomasino,Roberta Piredda,Grazia Marina Quero,Luís Torgo,Julie Poulain,Pierre E Galand,Jed A Fuhrman,Alex Mitchell,Tinkara Tinta,Timotej Turk Dermastia,Antonio Fernandez-Guerra,Alessandro Vezzi,Ramiro Logares,Francesca Malfatti,Hisashi Endo,Anna Maria Dąbrowska,Fabio De Pascale,Pablo Sánchez,Nicolas Henry,Bruno Fosso,Bryan Wilson,Stephan Toshchakov,Gregory Kevin Ferrant,Ivo Grigorov,Fabio Rocha Jimenez Vieira,Rodrigo Costa,Stéphane Pesant,Catarina Magalhães

Journal

ISME communications

Published Date

2023/12

Symbiotic UCYN-A strains co-occurred with El Niño, relaxed upwelling, and varied eukaryotes over 10 years off Southern California

Biological nitrogen fixation, the conversion of N2 gas into a bioavailable form, is vital to sustaining marine primary production. Studies have shifted beyond traditionally studied tropical diazotrophs. Candidatus Atelocyanobacterium thalassa (or UCYN-A) has emerged as a focal point due to its streamlined metabolism, intimate partnership with a haptophyte host, and broad distribution. Here, we explore the environmental parameters that govern UCYN-A’s presence at the San Pedro Ocean Time-series (SPOT), its host specificity, and statistically significant interactions with non-host eukaryotes from 2008-2018. 16S and 18S rRNA gene sequences were amplified by “universal primers” from monthly samples and resolved into Amplicon Sequence Variants, allowing us to observe multiple UCYN-A symbioses. UCYN-A1 relative abundances increased following the 2015-2016 El Niño event. This “open ocean ecotype …

Authors

Colette Fletcher-Hoppe,Yi-Chun Yeh,Yubin Raut,JL Weissman,Jed A Fuhrman

Journal

ISME communications

Published Date

2023/12

Constraining the composition and quantity of organic matter used by abundant marine Thaumarchaeota

Marine Group I (MGI) Thaumarchaeota were originally described as chemoautotrophic nitrifiers, but molecular and isotopic evidence suggests heterotrophic and/or mixotrophic capabilities. Here, we investigated the quantity and composition of organic matter assimilated by individual, uncultured MGI cells from the Pacific Ocean to constrain their potential for mixotrophy and heterotrophy. We observed that most MGI cells did not assimilate carbon from any organic substrate provided (glucose, pyruvate, oxaloacetate, protein, urea, and amino acids). The minority of MGI cells that did assimilate it did so exclusively from nitrogenous substrates (urea, 15% of MGI and amino acids, 36% of MGI), and only as an auxiliary carbon source (<20% of that subset's total cellular carbon was derived from those substrates). At the population level, MGI assimilation of organic carbon comprised just 0.5%–11% of total biomass carbon …

Authors

Alma E Parada,Xavier Mayali,Peter K Weber,Jessica Wollard,Alyson E Santoro,Jed A Fuhrman,Jennifer Pett‐Ridge,Anne E Dekas

Journal

Environmental Microbiology

Published Date

2023/3

Professor FAQs

What is Jed A. Fuhrman's h-index at University of Southern California?

The h-index of Jed A. Fuhrman has been 61 since 2020 and 111 in total.

What are Jed A. Fuhrman's research interests?

The research interests of Jed A. Fuhrman are: Biological oceanography, Marine microbiology, Microbial ecology

What is Jed A. Fuhrman's total number of citations?

Jed A. Fuhrman has 55,533 citations in total.

What are the co-authors of Jed A. Fuhrman?

The co-authors of Jed A. Fuhrman are Kenneth H. Nealson.

Co-Authors

H-index: 135
Kenneth H. Nealson

Kenneth H. Nealson

University of Southern California

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