Estimating and comparing microbial diversity in the presence of sequencing errors

Estimating and comparing microbial diversity are statistically challenging due to limited sampling and possible sequencing errors for low-frequency counts, producing spurious singletons. The inflated singleton count seriously affects statistical analysis and inferences about microbial diversity. Pre...

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Main Authors: Chun-Huo Chiu, Anne Chao
Format: Article
Language:English
Published: PeerJ Inc. 2016-02-01
Series:PeerJ
Subjects:
Online Access:https://peerj.com/articles/1634.pdf
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spelling doaj-bd1a3d5cd6374a31bc409e6a806ee8582020-11-24T22:47:53ZengPeerJ Inc.PeerJ2167-83592016-02-014e163410.7717/peerj.1634Estimating and comparing microbial diversity in the presence of sequencing errorsChun-Huo ChiuAnne ChaoEstimating and comparing microbial diversity are statistically challenging due to limited sampling and possible sequencing errors for low-frequency counts, producing spurious singletons. The inflated singleton count seriously affects statistical analysis and inferences about microbial diversity. Previous statistical approaches to tackle the sequencing errors generally require different parametric assumptions about the sampling model or about the functional form of frequency counts. Different parametric assumptions may lead to drastically different diversity estimates. We focus on nonparametric methods which are universally valid for all parametric assumptions and can be used to compare diversity across communities. We develop here a nonparametric estimator of the true singleton count to replace the spurious singleton count in all methods/approaches. Our estimator of the true singleton count is in terms of the frequency counts of doubletons, tripletons and quadrupletons, provided these three frequency counts are reliable. To quantify microbial alpha diversity for an individual community, we adopt the measure of Hill numbers (effective number of taxa) under a nonparametric framework. Hill numbers, parameterized by an order q that determines the measures’ emphasis on rare or common species, include taxa richness (q = 0), Shannon diversity (q = 1, the exponential of Shannon entropy), and Simpson diversity (q = 2, the inverse of Simpson index). A diversity profile which depicts the Hill number as a function of order q conveys all information contained in a taxa abundance distribution. Based on the estimated singleton count and the original non-singleton frequency counts, two statistical approaches (non-asymptotic and asymptotic) are developed to compare microbial diversity for multiple communities. (1) A non-asymptotic approach refers to the comparison of estimated diversities of standardized samples with a common finite sample size or sample completeness. This approach aims to compare diversity estimates for equally-large or equally-complete samples; it is based on the seamless rarefaction and extrapolation sampling curves of Hill numbers, specifically for q = 0, 1 and 2. (2) An asymptotic approach refers to the comparison of the estimated asymptotic diversity profiles. That is, this approach compares the estimated profiles for complete samples or samples whose size tends to be sufficiently large. It is based on statistical estimation of the true Hill number of any order q ≥ 0. In the two approaches, replacing the spurious singleton count by our estimated count, we can greatly remove the positive biases associated with diversity estimates due to spurious singletons and also make fair comparisons across microbial communities, as illustrated in our simulation results and in applying our method to analyze sequencing data from viral metagenomes.https://peerj.com/articles/1634.pdfExtrapolationHill numbersMicrobial diversityRarefactionSample coverageStandardization
collection DOAJ
language English
format Article
sources DOAJ
author Chun-Huo Chiu
Anne Chao
spellingShingle Chun-Huo Chiu
Anne Chao
Estimating and comparing microbial diversity in the presence of sequencing errors
PeerJ
Extrapolation
Hill numbers
Microbial diversity
Rarefaction
Sample coverage
Standardization
author_facet Chun-Huo Chiu
Anne Chao
author_sort Chun-Huo Chiu
title Estimating and comparing microbial diversity in the presence of sequencing errors
title_short Estimating and comparing microbial diversity in the presence of sequencing errors
title_full Estimating and comparing microbial diversity in the presence of sequencing errors
title_fullStr Estimating and comparing microbial diversity in the presence of sequencing errors
title_full_unstemmed Estimating and comparing microbial diversity in the presence of sequencing errors
title_sort estimating and comparing microbial diversity in the presence of sequencing errors
publisher PeerJ Inc.
series PeerJ
issn 2167-8359
publishDate 2016-02-01
description Estimating and comparing microbial diversity are statistically challenging due to limited sampling and possible sequencing errors for low-frequency counts, producing spurious singletons. The inflated singleton count seriously affects statistical analysis and inferences about microbial diversity. Previous statistical approaches to tackle the sequencing errors generally require different parametric assumptions about the sampling model or about the functional form of frequency counts. Different parametric assumptions may lead to drastically different diversity estimates. We focus on nonparametric methods which are universally valid for all parametric assumptions and can be used to compare diversity across communities. We develop here a nonparametric estimator of the true singleton count to replace the spurious singleton count in all methods/approaches. Our estimator of the true singleton count is in terms of the frequency counts of doubletons, tripletons and quadrupletons, provided these three frequency counts are reliable. To quantify microbial alpha diversity for an individual community, we adopt the measure of Hill numbers (effective number of taxa) under a nonparametric framework. Hill numbers, parameterized by an order q that determines the measures’ emphasis on rare or common species, include taxa richness (q = 0), Shannon diversity (q = 1, the exponential of Shannon entropy), and Simpson diversity (q = 2, the inverse of Simpson index). A diversity profile which depicts the Hill number as a function of order q conveys all information contained in a taxa abundance distribution. Based on the estimated singleton count and the original non-singleton frequency counts, two statistical approaches (non-asymptotic and asymptotic) are developed to compare microbial diversity for multiple communities. (1) A non-asymptotic approach refers to the comparison of estimated diversities of standardized samples with a common finite sample size or sample completeness. This approach aims to compare diversity estimates for equally-large or equally-complete samples; it is based on the seamless rarefaction and extrapolation sampling curves of Hill numbers, specifically for q = 0, 1 and 2. (2) An asymptotic approach refers to the comparison of the estimated asymptotic diversity profiles. That is, this approach compares the estimated profiles for complete samples or samples whose size tends to be sufficiently large. It is based on statistical estimation of the true Hill number of any order q ≥ 0. In the two approaches, replacing the spurious singleton count by our estimated count, we can greatly remove the positive biases associated with diversity estimates due to spurious singletons and also make fair comparisons across microbial communities, as illustrated in our simulation results and in applying our method to analyze sequencing data from viral metagenomes.
topic Extrapolation
Hill numbers
Microbial diversity
Rarefaction
Sample coverage
Standardization
url https://peerj.com/articles/1634.pdf
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AT annechao estimatingandcomparingmicrobialdiversityinthepresenceofsequencingerrors
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