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Aging progression of human gut microbiota
by
Xu, Congmin
, Qiu, Peng
, Zhu, Huaiqiu
in
16S rRNA sequencing
/ Abundance
/ Adolescent
/ Adult
/ Age
/ Age Factors
/ Age groups
/ Aged
/ Aged, 80 and over
/ Aging
/ Aging (Biology)
/ Algorithms
/ Artificial intelligence
/ Bacteria
/ Bacteria - classification
/ Bacteria - genetics
/ Biological Microscopy
/ Biomedical and Life Sciences
/ Biomedical engineering
/ Centenarians
/ Child
/ Child, Preschool
/ DNA, Bacterial - genetics
/ DNA, Ribosomal - genetics
/ Female
/ Gastrointestinal Microbiome
/ Gene expression
/ Genetics
/ Geriatrics
/ Gut microbiota
/ Health
/ Human gut microbiota
/ Humans
/ Infant
/ Infant, Newborn
/ Intestinal microflora
/ Life Sciences
/ Literature reviews
/ Machine learning
/ Male
/ Microbiology
/ Microbiota
/ Microbiota (Symbiotic organisms)
/ Microorganisms
/ Middle Aged
/ Mycology
/ Neonates
/ Newborn infants
/ Oldest old people
/ Parasitology
/ Phylogeny
/ Plant genomics
/ Probiotics
/ Relative abundance
/ Research Article
/ RNA
/ RNA sequencing
/ RNA, Ribosomal, 16S - genetics
/ rRNA 16S
/ Sample progression discovery
/ Sequence Analysis, DNA - methods
/ Taxonomy
/ Unsupervised Machine Learning
/ Variance analysis
/ Virology
/ Young Adult
2019
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Aging progression of human gut microbiota
by
Xu, Congmin
, Qiu, Peng
, Zhu, Huaiqiu
in
16S rRNA sequencing
/ Abundance
/ Adolescent
/ Adult
/ Age
/ Age Factors
/ Age groups
/ Aged
/ Aged, 80 and over
/ Aging
/ Aging (Biology)
/ Algorithms
/ Artificial intelligence
/ Bacteria
/ Bacteria - classification
/ Bacteria - genetics
/ Biological Microscopy
/ Biomedical and Life Sciences
/ Biomedical engineering
/ Centenarians
/ Child
/ Child, Preschool
/ DNA, Bacterial - genetics
/ DNA, Ribosomal - genetics
/ Female
/ Gastrointestinal Microbiome
/ Gene expression
/ Genetics
/ Geriatrics
/ Gut microbiota
/ Health
/ Human gut microbiota
/ Humans
/ Infant
/ Infant, Newborn
/ Intestinal microflora
/ Life Sciences
/ Literature reviews
/ Machine learning
/ Male
/ Microbiology
/ Microbiota
/ Microbiota (Symbiotic organisms)
/ Microorganisms
/ Middle Aged
/ Mycology
/ Neonates
/ Newborn infants
/ Oldest old people
/ Parasitology
/ Phylogeny
/ Plant genomics
/ Probiotics
/ Relative abundance
/ Research Article
/ RNA
/ RNA sequencing
/ RNA, Ribosomal, 16S - genetics
/ rRNA 16S
/ Sample progression discovery
/ Sequence Analysis, DNA - methods
/ Taxonomy
/ Unsupervised Machine Learning
/ Variance analysis
/ Virology
/ Young Adult
2019
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Aging progression of human gut microbiota
by
Xu, Congmin
, Qiu, Peng
, Zhu, Huaiqiu
in
16S rRNA sequencing
/ Abundance
/ Adolescent
/ Adult
/ Age
/ Age Factors
/ Age groups
/ Aged
/ Aged, 80 and over
/ Aging
/ Aging (Biology)
/ Algorithms
/ Artificial intelligence
/ Bacteria
/ Bacteria - classification
/ Bacteria - genetics
/ Biological Microscopy
/ Biomedical and Life Sciences
/ Biomedical engineering
/ Centenarians
/ Child
/ Child, Preschool
/ DNA, Bacterial - genetics
/ DNA, Ribosomal - genetics
/ Female
/ Gastrointestinal Microbiome
/ Gene expression
/ Genetics
/ Geriatrics
/ Gut microbiota
/ Health
/ Human gut microbiota
/ Humans
/ Infant
/ Infant, Newborn
/ Intestinal microflora
/ Life Sciences
/ Literature reviews
/ Machine learning
/ Male
/ Microbiology
/ Microbiota
/ Microbiota (Symbiotic organisms)
/ Microorganisms
/ Middle Aged
/ Mycology
/ Neonates
/ Newborn infants
/ Oldest old people
/ Parasitology
/ Phylogeny
/ Plant genomics
/ Probiotics
/ Relative abundance
/ Research Article
/ RNA
/ RNA sequencing
/ RNA, Ribosomal, 16S - genetics
/ rRNA 16S
/ Sample progression discovery
/ Sequence Analysis, DNA - methods
/ Taxonomy
/ Unsupervised Machine Learning
/ Variance analysis
/ Virology
/ Young Adult
2019
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Journal Article
Aging progression of human gut microbiota
2019
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Overview
Background
Human gut microbiota are important for human health and have been regarded as a “forgotten organ”, whose variation is closely linked with various factors, such as host genetics, diet, pathological conditions and external environment. The diversity of human gut microbiota has been correlated with aging, which was characterized by different abundance of bacteria in various age groups. In the literature, most of the previous studies of age-related gut microbiota changes focused on individual species in the gut community with supervised methods. Here, we aimed to examine the underlying aging progression of the human gut microbial community from an unsupervised perspective.
Results
We obtained raw 16S rRNA sequencing data of subjects ranging from newborns to centenarians from a previous study, and summarized the data into a relative abundance matrix of genera in all the samples. Without using the age information of samples, we applied an unsupervised algorithm to recapitulate the underlying aging progression of microbial community from hosts in different age groups and identify genera associated to this progression. Literature review of these identified genera indicated that for individuals with advanced ages, some beneficial genera are lost while some genera related with inflammation and cancer increase.
Conclusions
The multivariate unsupervised analysis here revealed the existence of a continuous aging progression of human gut microbiota along with the host aging process. The identified genera associated to this aging process are meaningful for designing probiotics to maintain the gut microbiota to resemble a young age, which hopefully will lead to positive impact on human health, especially for individuals in advanced age groups.
Publisher
BioMed Central,BioMed Central Ltd,Springer Nature B.V,BMC
Subject
/ Adult
/ Age
/ Aged
/ Aging
/ Bacteria
/ Biomedical and Life Sciences
/ Child
/ Female
/ Genetics
/ Health
/ Humans
/ Infant
/ Male
/ Microbiota (Symbiotic organisms)
/ Mycology
/ Neonates
/ RNA
/ RNA, Ribosomal, 16S - genetics
/ rRNA 16S
/ Sample progression discovery
/ Sequence Analysis, DNA - methods
/ Taxonomy
/ Unsupervised Machine Learning
/ Virology
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