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Robust estimation of microbial diversity in theory and in practice

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Robust estimation of microbial diversity in theory and in practice. / Haegeman, Bart; Hamelin, Jérôme; Moriarty, John et al.
In: ISME Journal, Vol. 7, No. 6, 06.2013, p. 1092-1101.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Haegeman, B, Hamelin, J, Moriarty, J, Neal, P, Dushoff, J & Weitz, JS 2013, 'Robust estimation of microbial diversity in theory and in practice', ISME Journal, vol. 7, no. 6, pp. 1092-1101. https://doi.org/10.1038/ismej.2013.10

APA

Haegeman, B., Hamelin, J., Moriarty, J., Neal, P., Dushoff, J., & Weitz, J. S. (2013). Robust estimation of microbial diversity in theory and in practice. ISME Journal, 7(6), 1092-1101. https://doi.org/10.1038/ismej.2013.10

Vancouver

Haegeman B, Hamelin J, Moriarty J, Neal P, Dushoff J, Weitz JS. Robust estimation of microbial diversity in theory and in practice. ISME Journal. 2013 Jun;7(6):1092-1101. doi: 10.1038/ismej.2013.10

Author

Haegeman, Bart ; Hamelin, Jérôme ; Moriarty, John et al. / Robust estimation of microbial diversity in theory and in practice. In: ISME Journal. 2013 ; Vol. 7, No. 6. pp. 1092-1101.

Bibtex

@article{5d1a20b8e3834fccbb15bee01dc97c4e,
title = "Robust estimation of microbial diversity in theory and in practice",
abstract = "Quantifying diversity is of central importance for the study of structure, function and evolution of microbial communities. The estimation of microbial diversity has received renewed attention with the advent of large-scale metagenomic studies. Here, we consider what the diversity observed in a sample tells us about the diversity of the community being sampled. First, we argue that one cannot reliably estimate the absolute and relative number of microbial species present in a community without making unsupported assumptions about species abundance distributions. The reason for this is that sample data do not contain information about the number of rare species in the tail of species abundance distributions. We illustrate the difficulty in comparing species richness estimates by applying Chao{\textquoteright}s estimator of species richness to a set of in silico communities: they are ranked incorrectly in the presence of large numbers of rare species. Next, we extend our analysis to a general family of diversity metrics ({\textquoteleft}Hill diversities{\textquoteright}), and construct lower and upper estimates of diversity values consistent with the sample data. The theory generalizes Chao{\textquoteright}s estimator, which we retrieve as the lower estimate of species richness. We show that Shannon and Simpson diversity can be robustly estimated for the in silico communities. We analyze nine metagenomic data sets from a wide range of environments, and show that our findings are relevant for empirically-sampled communities. Hence, we recommend the use of Shannon and Simpson diversity rather than species richness in efforts to quantify and compare microbial diversity.",
keywords = "Chao estimator, Hill diversities , metagenomics , Shannon diversity , Simpson diversity , species abundance distribution",
author = "Bart Haegeman and J{\'e}r{\^o}me Hamelin and John Moriarty and Peter Neal and Jonathan Dushoff and Weitz, {Joshua S.}",
year = "2013",
month = jun,
doi = "10.1038/ismej.2013.10",
language = "English",
volume = "7",
pages = "1092--1101",
journal = "ISME Journal",
issn = "1751-7362",
publisher = "Nature Publishing Group",
number = "6",

}

RIS

TY - JOUR

T1 - Robust estimation of microbial diversity in theory and in practice

AU - Haegeman, Bart

AU - Hamelin, Jérôme

AU - Moriarty, John

AU - Neal, Peter

AU - Dushoff, Jonathan

AU - Weitz, Joshua S.

PY - 2013/6

Y1 - 2013/6

N2 - Quantifying diversity is of central importance for the study of structure, function and evolution of microbial communities. The estimation of microbial diversity has received renewed attention with the advent of large-scale metagenomic studies. Here, we consider what the diversity observed in a sample tells us about the diversity of the community being sampled. First, we argue that one cannot reliably estimate the absolute and relative number of microbial species present in a community without making unsupported assumptions about species abundance distributions. The reason for this is that sample data do not contain information about the number of rare species in the tail of species abundance distributions. We illustrate the difficulty in comparing species richness estimates by applying Chao’s estimator of species richness to a set of in silico communities: they are ranked incorrectly in the presence of large numbers of rare species. Next, we extend our analysis to a general family of diversity metrics (‘Hill diversities’), and construct lower and upper estimates of diversity values consistent with the sample data. The theory generalizes Chao’s estimator, which we retrieve as the lower estimate of species richness. We show that Shannon and Simpson diversity can be robustly estimated for the in silico communities. We analyze nine metagenomic data sets from a wide range of environments, and show that our findings are relevant for empirically-sampled communities. Hence, we recommend the use of Shannon and Simpson diversity rather than species richness in efforts to quantify and compare microbial diversity.

AB - Quantifying diversity is of central importance for the study of structure, function and evolution of microbial communities. The estimation of microbial diversity has received renewed attention with the advent of large-scale metagenomic studies. Here, we consider what the diversity observed in a sample tells us about the diversity of the community being sampled. First, we argue that one cannot reliably estimate the absolute and relative number of microbial species present in a community without making unsupported assumptions about species abundance distributions. The reason for this is that sample data do not contain information about the number of rare species in the tail of species abundance distributions. We illustrate the difficulty in comparing species richness estimates by applying Chao’s estimator of species richness to a set of in silico communities: they are ranked incorrectly in the presence of large numbers of rare species. Next, we extend our analysis to a general family of diversity metrics (‘Hill diversities’), and construct lower and upper estimates of diversity values consistent with the sample data. The theory generalizes Chao’s estimator, which we retrieve as the lower estimate of species richness. We show that Shannon and Simpson diversity can be robustly estimated for the in silico communities. We analyze nine metagenomic data sets from a wide range of environments, and show that our findings are relevant for empirically-sampled communities. Hence, we recommend the use of Shannon and Simpson diversity rather than species richness in efforts to quantify and compare microbial diversity.

KW - Chao estimator

KW - Hill diversities

KW - metagenomics

KW - Shannon diversity

KW - Simpson diversity

KW - species abundance distribution

U2 - 10.1038/ismej.2013.10

DO - 10.1038/ismej.2013.10

M3 - Journal article

VL - 7

SP - 1092

EP - 1101

JO - ISME Journal

JF - ISME Journal

SN - 1751-7362

IS - 6

ER -