Serveur d'exploration sur les interactions arbre microorganisme

Attention, ce site est en cours de développement !
Attention, site généré par des moyens informatiques à partir de corpus bruts.
Les informations ne sont donc pas validées.

Correlation and association analyses in microbiome study integrating multiomics in health and disease.

Identifieur interne : 000039 ( Main/Exploration ); précédent : 000038; suivant : 000040

Correlation and association analyses in microbiome study integrating multiomics in health and disease.

Auteurs : Yinglin Xia [États-Unis]

Source :

RBID : pubmed:32475527

Abstract

Correlation and association analyses are one of the most widely used statistical methods in research fields, including microbiome and integrative multiomics studies. Correlation and association have two implications: dependence and co-occurrence. Microbiome data are structured as phylogenetic tree and have several unique characteristics, including high dimensionality, compositionality, sparsity with excess zeros, and heterogeneity. These unique characteristics cause several statistical issues when analyzing microbiome data and integrating multiomics data, such as large p and small n, dependency, overdispersion, and zero-inflation. In microbiome research, on the one hand, classic correlation and association methods are still applied in real studies and used for the development of new methods; on the other hand, new methods have been developed to target statistical issues arising from unique characteristics of microbiome data. Here, we first provide a comprehensive view of classic and newly developed univariate correlation and association-based methods. We discuss the appropriateness and limitations of using classic methods and demonstrate how the newly developed methods mitigate the issues of microbiome data. Second, we emphasize that concepts of correlation and association analyses have been shifted by introducing network analysis, microbe-metabolite interactions, functional analysis, etc. Third, we introduce multivariate correlation and association-based methods, which are organized by the categories of exploratory, interpretive, and discriminatory analyses and classification methods. Fourth, we focus on the hypothesis testing of univariate and multivariate regression-based association methods, including alpha and beta diversities-based, count-based, and relative abundance (or compositional)-based association analyses. We demonstrate the characteristics and limitations of each approaches. Fifth, we introduce two specific microbiome-based methods: phylogenetic tree-based association analysis and testing for survival outcomes. Sixth, we provide an overall view of longitudinal methods in analysis of microbiome and omics data, which cover standard, static, regression-based time series methods, principal trend analysis, and newly developed univariate overdispersed and zero-inflated as well as multivariate distance/kernel-based longitudinal models. Finally, we comment on current association analysis and future direction of association analysis in microbiome and multiomics studies.

DOI: 10.1016/bs.pmbts.2020.04.003
PubMed: 32475527


Affiliations:


Links toward previous steps (curation, corpus...)


Le document en format XML

<record>
<TEI>
<teiHeader>
<fileDesc>
<titleStmt>
<title xml:lang="en">Correlation and association analyses in microbiome study integrating multiomics in health and disease.</title>
<author>
<name sortKey="Xia, Yinglin" sort="Xia, Yinglin" uniqKey="Xia Y" first="Yinglin" last="Xia">Yinglin Xia</name>
<affiliation wicri:level="4">
<nlm:affiliation>Department of Medicine, University of Illinois at Chicago, Chicago, IL, United States. Electronic address: yxia@uic.edu.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Medicine, University of Illinois at Chicago, Chicago, IL</wicri:regionArea>
<placeName>
<region type="state">Illinois</region>
<settlement type="city">Chicago</settlement>
</placeName>
<orgName type="university">Université de l'Illinois à Chicago</orgName>
</affiliation>
</author>
</titleStmt>
<publicationStmt>
<idno type="wicri:source">PubMed</idno>
<date when="2020">2020</date>
<idno type="RBID">pubmed:32475527</idno>
<idno type="pmid">32475527</idno>
<idno type="doi">10.1016/bs.pmbts.2020.04.003</idno>
<idno type="wicri:Area/Main/Corpus">000024</idno>
<idno type="wicri:explorRef" wicri:stream="Main" wicri:step="Corpus" wicri:corpus="PubMed">000024</idno>
<idno type="wicri:Area/Main/Curation">000024</idno>
<idno type="wicri:explorRef" wicri:stream="Main" wicri:step="Curation">000024</idno>
<idno type="wicri:Area/Main/Exploration">000024</idno>
</publicationStmt>
<sourceDesc>
<biblStruct>
<analytic>
<title xml:lang="en">Correlation and association analyses in microbiome study integrating multiomics in health and disease.</title>
<author>
<name sortKey="Xia, Yinglin" sort="Xia, Yinglin" uniqKey="Xia Y" first="Yinglin" last="Xia">Yinglin Xia</name>
<affiliation wicri:level="4">
<nlm:affiliation>Department of Medicine, University of Illinois at Chicago, Chicago, IL, United States. Electronic address: yxia@uic.edu.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Medicine, University of Illinois at Chicago, Chicago, IL</wicri:regionArea>
<placeName>
<region type="state">Illinois</region>
<settlement type="city">Chicago</settlement>
</placeName>
<orgName type="university">Université de l'Illinois à Chicago</orgName>
</affiliation>
</author>
</analytic>
<series>
<title level="j">Progress in molecular biology and translational science</title>
<idno type="eISSN">1878-0814</idno>
<imprint>
<date when="2020" type="published">2020</date>
</imprint>
</series>
</biblStruct>
</sourceDesc>
</fileDesc>
<profileDesc>
<textClass></textClass>
</profileDesc>
</teiHeader>
<front>
<div type="abstract" xml:lang="en">Correlation and association analyses are one of the most widely used statistical methods in research fields, including microbiome and integrative multiomics studies. Correlation and association have two implications: dependence and co-occurrence. Microbiome data are structured as phylogenetic tree and have several unique characteristics, including high dimensionality, compositionality, sparsity with excess zeros, and heterogeneity. These unique characteristics cause several statistical issues when analyzing microbiome data and integrating multiomics data, such as large p and small n, dependency, overdispersion, and zero-inflation. In microbiome research, on the one hand, classic correlation and association methods are still applied in real studies and used for the development of new methods; on the other hand, new methods have been developed to target statistical issues arising from unique characteristics of microbiome data. Here, we first provide a comprehensive view of classic and newly developed univariate correlation and association-based methods. We discuss the appropriateness and limitations of using classic methods and demonstrate how the newly developed methods mitigate the issues of microbiome data. Second, we emphasize that concepts of correlation and association analyses have been shifted by introducing network analysis, microbe-metabolite interactions, functional analysis, etc. Third, we introduce multivariate correlation and association-based methods, which are organized by the categories of exploratory, interpretive, and discriminatory analyses and classification methods. Fourth, we focus on the hypothesis testing of univariate and multivariate regression-based association methods, including alpha and beta diversities-based, count-based, and relative abundance (or compositional)-based association analyses. We demonstrate the characteristics and limitations of each approaches. Fifth, we introduce two specific microbiome-based methods: phylogenetic tree-based association analysis and testing for survival outcomes. Sixth, we provide an overall view of longitudinal methods in analysis of microbiome and omics data, which cover standard, static, regression-based time series methods, principal trend analysis, and newly developed univariate overdispersed and zero-inflated as well as multivariate distance/kernel-based longitudinal models. Finally, we comment on current association analysis and future direction of association analysis in microbiome and multiomics studies.</div>
</front>
</TEI>
<pubmed>
<MedlineCitation Status="In-Process" Owner="NLM">
<PMID Version="1">32475527</PMID>
<DateRevised>
<Year>2020</Year>
<Month>06</Month>
<Day>09</Day>
</DateRevised>
<Article PubModel="Print-Electronic">
<Journal>
<ISSN IssnType="Electronic">1878-0814</ISSN>
<JournalIssue CitedMedium="Internet">
<Volume>171</Volume>
<PubDate>
<Year>2020</Year>
</PubDate>
</JournalIssue>
<Title>Progress in molecular biology and translational science</Title>
<ISOAbbreviation>Prog Mol Biol Transl Sci</ISOAbbreviation>
</Journal>
<ArticleTitle>Correlation and association analyses in microbiome study integrating multiomics in health and disease.</ArticleTitle>
<Pagination>
<MedlinePgn>309-491</MedlinePgn>
</Pagination>
<ELocationID EIdType="pii" ValidYN="Y">S1877-1173(20)30047-8</ELocationID>
<ELocationID EIdType="doi" ValidYN="Y">10.1016/bs.pmbts.2020.04.003</ELocationID>
<Abstract>
<AbstractText>Correlation and association analyses are one of the most widely used statistical methods in research fields, including microbiome and integrative multiomics studies. Correlation and association have two implications: dependence and co-occurrence. Microbiome data are structured as phylogenetic tree and have several unique characteristics, including high dimensionality, compositionality, sparsity with excess zeros, and heterogeneity. These unique characteristics cause several statistical issues when analyzing microbiome data and integrating multiomics data, such as large p and small n, dependency, overdispersion, and zero-inflation. In microbiome research, on the one hand, classic correlation and association methods are still applied in real studies and used for the development of new methods; on the other hand, new methods have been developed to target statistical issues arising from unique characteristics of microbiome data. Here, we first provide a comprehensive view of classic and newly developed univariate correlation and association-based methods. We discuss the appropriateness and limitations of using classic methods and demonstrate how the newly developed methods mitigate the issues of microbiome data. Second, we emphasize that concepts of correlation and association analyses have been shifted by introducing network analysis, microbe-metabolite interactions, functional analysis, etc. Third, we introduce multivariate correlation and association-based methods, which are organized by the categories of exploratory, interpretive, and discriminatory analyses and classification methods. Fourth, we focus on the hypothesis testing of univariate and multivariate regression-based association methods, including alpha and beta diversities-based, count-based, and relative abundance (or compositional)-based association analyses. We demonstrate the characteristics and limitations of each approaches. Fifth, we introduce two specific microbiome-based methods: phylogenetic tree-based association analysis and testing for survival outcomes. Sixth, we provide an overall view of longitudinal methods in analysis of microbiome and omics data, which cover standard, static, regression-based time series methods, principal trend analysis, and newly developed univariate overdispersed and zero-inflated as well as multivariate distance/kernel-based longitudinal models. Finally, we comment on current association analysis and future direction of association analysis in microbiome and multiomics studies.</AbstractText>
<CopyrightInformation>© 2020 Elsevier Inc. All rights reserved.</CopyrightInformation>
</Abstract>
<AuthorList CompleteYN="Y">
<Author ValidYN="Y">
<LastName>Xia</LastName>
<ForeName>Yinglin</ForeName>
<Initials>Y</Initials>
<AffiliationInfo>
<Affiliation>Department of Medicine, University of Illinois at Chicago, Chicago, IL, United States. Electronic address: yxia@uic.edu.</Affiliation>
</AffiliationInfo>
</Author>
</AuthorList>
<Language>eng</Language>
<PublicationTypeList>
<PublicationType UI="D016428">Journal Article</PublicationType>
</PublicationTypeList>
<ArticleDate DateType="Electronic">
<Year>2020</Year>
<Month>05</Month>
<Day>23</Day>
</ArticleDate>
</Article>
<MedlineJournalInfo>
<Country>Netherlands</Country>
<MedlineTA>Prog Mol Biol Transl Sci</MedlineTA>
<NlmUniqueID>101498165</NlmUniqueID>
<ISSNLinking>1877-1173</ISSNLinking>
</MedlineJournalInfo>
<CitationSubset>IM</CitationSubset>
<KeywordList Owner="NOTNLM">
<Keyword MajorTopicYN="Y">Adaptive methods</Keyword>
<Keyword MajorTopicYN="Y">Alpha diversity</Keyword>
<Keyword MajorTopicYN="Y">Beta diversity</Keyword>
<Keyword MajorTopicYN="Y">Compositional-based association analysis</Keyword>
<Keyword MajorTopicYN="Y">Correlation and association analyses</Keyword>
<Keyword MajorTopicYN="Y">Count-based association analysis</Keyword>
<Keyword MajorTopicYN="Y">Differential abundance analysis</Keyword>
<Keyword MajorTopicYN="Y">Dirichlet-multinomial models</Keyword>
<Keyword MajorTopicYN="Y">Hypothesis testing</Keyword>
<Keyword MajorTopicYN="Y">Kernel-based methods</Keyword>
<Keyword MajorTopicYN="Y">Longitudinal analysis</Keyword>
<Keyword MajorTopicYN="Y">Microbiome</Keyword>
<Keyword MajorTopicYN="Y">Multiomics</Keyword>
<Keyword MajorTopicYN="Y">Over-dispersed and zero-inflated models</Keyword>
<Keyword MajorTopicYN="Y">Phylogenetic tree-based association analysis</Keyword>
<Keyword MajorTopicYN="Y">Relative abundance based-association analysis</Keyword>
<Keyword MajorTopicYN="Y">Survival analysis</Keyword>
</KeywordList>
</MedlineCitation>
<PubmedData>
<History>
<PubMedPubDate PubStatus="entrez">
<Year>2020</Year>
<Month>6</Month>
<Day>2</Day>
<Hour>6</Hour>
<Minute>0</Minute>
</PubMedPubDate>
<PubMedPubDate PubStatus="pubmed">
<Year>2020</Year>
<Month>6</Month>
<Day>2</Day>
<Hour>6</Hour>
<Minute>0</Minute>
</PubMedPubDate>
<PubMedPubDate PubStatus="medline">
<Year>2020</Year>
<Month>6</Month>
<Day>2</Day>
<Hour>6</Hour>
<Minute>0</Minute>
</PubMedPubDate>
</History>
<PublicationStatus>ppublish</PublicationStatus>
<ArticleIdList>
<ArticleId IdType="pubmed">32475527</ArticleId>
<ArticleId IdType="pii">S1877-1173(20)30047-8</ArticleId>
<ArticleId IdType="doi">10.1016/bs.pmbts.2020.04.003</ArticleId>
</ArticleIdList>
</PubmedData>
</pubmed>
<affiliations>
<list>
<country>
<li>États-Unis</li>
</country>
<region>
<li>Illinois</li>
</region>
<settlement>
<li>Chicago</li>
</settlement>
<orgName>
<li>Université de l'Illinois à Chicago</li>
</orgName>
</list>
<tree>
<country name="États-Unis">
<region name="Illinois">
<name sortKey="Xia, Yinglin" sort="Xia, Yinglin" uniqKey="Xia Y" first="Yinglin" last="Xia">Yinglin Xia</name>
</region>
</country>
</tree>
</affiliations>
</record>

Pour manipuler ce document sous Unix (Dilib)

EXPLOR_STEP=$WICRI_ROOT/Bois/explor/TreeMicInterV1/Data/Main/Exploration
HfdSelect -h $EXPLOR_STEP/biblio.hfd -nk 000039 | SxmlIndent | more

Ou

HfdSelect -h $EXPLOR_AREA/Data/Main/Exploration/biblio.hfd -nk 000039 | SxmlIndent | more

Pour mettre un lien sur cette page dans le réseau Wicri

{{Explor lien
   |wiki=    Bois
   |area=    TreeMicInterV1
   |flux=    Main
   |étape=   Exploration
   |type=    RBID
   |clé=     pubmed:32475527
   |texte=   Correlation and association analyses in microbiome study integrating multiomics in health and disease.
}}

Pour générer des pages wiki

HfdIndexSelect -h $EXPLOR_AREA/Data/Main/Exploration/RBID.i   -Sk "pubmed:32475527" \
       | HfdSelect -Kh $EXPLOR_AREA/Data/Main/Exploration/biblio.hfd   \
       | NlmPubMed2Wicri -a TreeMicInterV1 

Wicri

This area was generated with Dilib version V0.6.37.
Data generation: Thu Nov 19 16:52:21 2020. Site generation: Thu Nov 19 16:52:50 2020