Keyword search (4,163 papers available)

"Mixture" Keyword-tagged Publications:

Title Authors PubMed ID
1 Trajectories of Alcohol-Related Problems Among First-Year Nursing Students: Nature, Predictors, and Outcomes Cheyroux P; Morin AJS; O' Connor RM; Colombat P; Vancappel A; Eltanoukhi R; Gillet N; 41797206
PSYCHOLOGY
2 Scientists warning: we must change paradigm for a revolution in toxicology and world food supply Seralini GE; Jungers G; Andersen A; Antoniou M; Aschner M; Bacon MH; Bertrand M; Bohn T; Bonfleur ML; Bücking E; Defarge N; Djemil R; Domingo JL; Douzelet J; Fagan J; Fournier T; Garcia JLY; Gil S; Hervé-Gruyer P; Hilbeck A; Hilty L; Huber D; Joyeux H; Khan I; Kouretas D; Lemarchand F; Loening U; Longo G; Mesnage R; Nikolopoulou DI; Panoff JM; Parente C; Robinson C; Scherber C; Sprangers D; Sultan C; Tsatsakis A; Vandelac L; Wan NF; Wynne B; Zaller JG; Zerrad-Saadi A; Zhang X; 41551494
CHEMBIOCHEM
3 Optimizing Mixtures of Metal-Organic Frameworks for Robust and Bespoke Passive Atmospheric Water Harvesting Harriman C; Ke Q; Vlugt TJH; Howarth AJ; Simon CM; 41427123
CHEMBIOCHEM
4 Deep clustering analysis via variational autoencoder with Gamma mixture latent embeddings Guo J; Fan W; Amayri M; Bouguila N; 39662201
ENCS
5 Developmental heterogeneity of school burnout across the transition from upper secondary school to higher education: A 9-year follow-up study Nadon L; Morin AJS; Gilbert W; Olivier E; Salmela-Aro K; 39645324
PSYCHOLOGY
6 Self-consolidating concrete: Dataset on mixture design and key properties Amine El Mahdi Safhi 38533116
ENCS
7 Unsupervised Mixture Models on the Edge for Smart Energy Consumption Segmentation with Feature Saliency Al-Bazzaz H; Azam M; Amayri M; Bouguila N; 37837127
ENCS
8 Entropy-Based Variational Scheme with Component Splitting for the Efficient Learning of Gamma Mixtures Bourouis S; Pawar Y; Bouguila N; 35009726
ENCS
9 Mixtures of rare earth elements show antagonistic interactions in Chlamydomonas reinhardtii Morel E; Cui L; Zerges W; Wilkinson KJ; 34175518
BIOLOGY
10 BioMiCo: a supervised Bayesian model for inference of microbial community structure. Shafiei M, Dunn KA, Boon E, MacDonald SM, Walsh DA, Gu H, Bielawski JP 25774293
BIOLOGY

 

Title:BioMiCo: a supervised Bayesian model for inference of microbial community structure.
Authors:Shafiei MDunn KABoon EMacDonald SMWalsh DAGu HBielawski JP
Link:https://www.ncbi.nlm.nih.gov/pubmed/25774293?dopt=Abstract
DOI:10.1186/s40168-015-0073-x
Publication:Microbiome
Keywords:Admixture modelBayesian modelHierarchical mixed-membership modelHumanMicrobial community structureMicrobiomeOTU abundance dataSupervised learningTemperate coastal ocean
PMID:25774293 Category:Microbiome Date Added:2019-06-07
Dept Affiliation: BIOLOGY
1 Department of Mathematics and Statistics, Dalhousie University, Halifax, NS Canada.
2 Department of Biology, Dalhousie University, Halifax, NS Canada.
3 Department of Biology, Concordia University, Montreal, Quebec Canada.
4 Department of Mathematics and Statistics, Dalhousie University, Halifax, NS Canada ; Department of Biology, Dalhousie University, Halifax, NS Canada.

Description:

BioMiCo: a supervised Bayesian model for inference of microbial community structure.

Microbiome. 2015;3:8

Authors: Shafiei M, Dunn KA, Boon E, MacDonald SM, Walsh DA, Gu H, Bielawski JP

Abstract

BACKGROUND: Microbiome samples often represent mixtures of communities, where each community is composed of overlapping assemblages of species. Such mixtures are complex, the number of species is huge and abundance information for many species is often sparse. Classical methods have a limited value for identifying complex features within such data.

RESULTS: Here, we describe a novel hierarchical model for Bayesian inference of microbial communities (BioMiCo). The model takes abundance data derived from environmental DNA, and models the composition of each sample by a two-level hierarchy of mixture distributions constrained by Dirichlet priors. BioMiCo is supervised, using known features for samples and appropriate prior constraints to overcome the challenges posed by many variables, sparse data, and large numbers of rare species. The model is trained on a portion of the data, where it learns how assemblages of species are mixed to form communities and how assemblages are related to the known features of each sample. Training yields a model that can predict the features of new samples. We used BioMiCo to build models for three serially sampled datasets and tested their predictive accuracy across different time points. The first model was trained to predict both body site (hand, mouth, and gut) and individual human host. It was able to reliably distinguish these features across different time points. The second was trained on vaginal microbiomes to predict both the Nugent score and individual human host. We found that women having normal and elevated Nugent scores had distinct microbiome structures that persisted over time, with additional structure within women having elevated scores. The third was trained for the purpose of assessing seasonal transitions in a coastal bacterial community. Application of this model to a high-resolution time series permitted us to track the rate and time of community succession and accurately predict known ecosystem-level events.

CONCLUSION: BioMiCo provides a framework for learning the structure of microbial communities and for making predictions based on microbial assemblages. By training on carefully chosen features (abiotic or biotic), BioMiCo can be used to understand and predict transitions between complex communities composed of hundreds of microbial species.

PMID: 25774293 [PubMed]





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