TY - JOUR
T1 - Integrating Computational Methods to Investigate the Macroecology of Microbiomes
AU - Mascarenhas, Rilquer
AU - Ruziska, Flávia M
AU - Moreira, Eduardo Freitas
AU - Campos, Amanda B
AU - Loiola, Miguel
AU - Reis, Kaike
AU - Trindade-Silva, Amaro E
AU - Barbosa, Felipe A S
AU - Salles, Lucas
AU - Menezes, Rafael
AU - Veiga, Rafael
AU - Coutinho, Felipe H
AU - Dutilh, Bas E
AU - Guimarães, Paulo R
AU - Assis, Ana Paula A
AU - Ara, Anderson
AU - Miranda, José G V
AU - Andrade, Roberto F S
AU - Vilela, Bruno
AU - Meirelles, Pedro Milet
N1 - Copyright © 2020 Mascarenhas, Ruziska, Moreira, Campos, Loiola, Reis, Trindade-Silva, Barbosa, Salles, Menezes, Veiga, Coutinho, Dutilh, Guimarães, Assis, Ara, Miranda, Andrade, Vilela and Meirelles.
PY - 2020/1/17
Y1 - 2020/1/17
N2 - Studies in microbiology have long been mostly restricted to small spatial scales. However, recent technological advances, such as new sequencing methodologies, have ushered an era of large-scale sequencing of environmental DNA data from multiple biomes worldwide. These global datasets can now be used to explore long standing questions of microbial ecology. New methodological approaches and concepts are being developed to study such large-scale patterns in microbial communities, resulting in new perspectives that represent a significant advances for both microbiology and macroecology. Here, we identify and review important conceptual, computational, and methodological challenges and opportunities in microbial macroecology. Specifically, we discuss the challenges of handling and analyzing large amounts of microbiome data to understand taxa distribution and co-occurrence patterns. We also discuss approaches for modeling microbial communities based on environmental data, including information on biological interactions to make full use of available Big Data. Finally, we summarize the methods presented in a general approach aimed to aid microbiologists in addressing fundamental questions in microbial macroecology, including classical propositions (such as "everything is everywhere, but the environment selects") as well as applied ecological problems, such as those posed by human induced global environmental changes.
AB - Studies in microbiology have long been mostly restricted to small spatial scales. However, recent technological advances, such as new sequencing methodologies, have ushered an era of large-scale sequencing of environmental DNA data from multiple biomes worldwide. These global datasets can now be used to explore long standing questions of microbial ecology. New methodological approaches and concepts are being developed to study such large-scale patterns in microbial communities, resulting in new perspectives that represent a significant advances for both microbiology and macroecology. Here, we identify and review important conceptual, computational, and methodological challenges and opportunities in microbial macroecology. Specifically, we discuss the challenges of handling and analyzing large amounts of microbiome data to understand taxa distribution and co-occurrence patterns. We also discuss approaches for modeling microbial communities based on environmental data, including information on biological interactions to make full use of available Big Data. Finally, we summarize the methods presented in a general approach aimed to aid microbiologists in addressing fundamental questions in microbial macroecology, including classical propositions (such as "everything is everywhere, but the environment selects") as well as applied ecological problems, such as those posed by human induced global environmental changes.
KW - microbial community modeling
KW - microbial macroecology
KW - spatial scales
KW - machine learning
KW - co-occurrence networks
U2 - 10.3389/fgene.2019.01344
DO - 10.3389/fgene.2019.01344
M3 - Review article
C2 - 32010196
SN - 1664-8021
VL - 10
JO - Frontiers in Genetics
JF - Frontiers in Genetics
M1 - 1344
ER -