Prediction Correction Topic Evolution Research for Metabolic Pathways of the Gut Microbiota

The gut microbiota is composed of a large number of different bacteria, that play a key role in the construction of a metabolic signaling network. Deepening the link between metabolic pathways of the gut microbiota and human health, it seems increasingly essential to evolutionarily define the princi...

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Main Authors: Li Ning, Peng Lifang, He Huixin
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-12-01
Series:Frontiers in Molecular Biosciences
Subjects:
LDA
Online Access:https://www.frontiersin.org/articles/10.3389/fmolb.2020.600720/full
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spelling doaj-300b0242f41d4ce18a2764074e5c37602020-12-15T07:07:59ZengFrontiers Media S.A.Frontiers in Molecular Biosciences2296-889X2020-12-01710.3389/fmolb.2020.600720600720Prediction Correction Topic Evolution Research for Metabolic Pathways of the Gut MicrobiotaLi Ning0Peng Lifang1He Huixin2Management Science and Engineering Department, Management School, Xiamen University, Xiamen, ChinaManagement Science and Engineering Department, Management School, Xiamen University, Xiamen, ChinaComputer Science and Engineering Department, Computer Science and Engineering School, Huaqiao University, Quanzhou, ChinaThe gut microbiota is composed of a large number of different bacteria, that play a key role in the construction of a metabolic signaling network. Deepening the link between metabolic pathways of the gut microbiota and human health, it seems increasingly essential to evolutionarily define the principal technologies applied in the field and their future trends. We use a topic analysis tool, Latent Dirichlet Allocation, to extract themes as a probabilistic distribution of latent topics from literature dataset. We also use the Prophet neural network prediction tool to predict future trend of this area of study. A total of 1,271 abstracts (from 2006 to 2020) were retrieved from MEDLINE with the query on “gut microbiota” and “metabolic pathway.” Our study found 10 topics covering current research types: dietary health, inflammation and liver cancer, fatty and diabetes, microbiota community, hepatic metabolism, metabolomics-based approach and SFCAs, allergic and immune disorders, gut dysbiosis, obesity, brain reaction, and cardiovascular disease. The analysis indicates that, with the rapid development of gut microbiota research, the metabolomics-based approach and SCFAs (topic 6) and dietary health (topic 1) have more studies being reported in the last 15 years. We also conclude from the data that, three other topics could be heavily focused in the future: metabolomics-based approach and SCFAs (topic 6), obesity (topic 8) and brain reaction and cardiovascular disease (topic 10), to unravel microbial affecting human health.https://www.frontiersin.org/articles/10.3389/fmolb.2020.600720/fullgut microbiotametabolic pathwayLDAtime-series featuretopic prediction
collection DOAJ
language English
format Article
sources DOAJ
author Li Ning
Peng Lifang
He Huixin
spellingShingle Li Ning
Peng Lifang
He Huixin
Prediction Correction Topic Evolution Research for Metabolic Pathways of the Gut Microbiota
Frontiers in Molecular Biosciences
gut microbiota
metabolic pathway
LDA
time-series feature
topic prediction
author_facet Li Ning
Peng Lifang
He Huixin
author_sort Li Ning
title Prediction Correction Topic Evolution Research for Metabolic Pathways of the Gut Microbiota
title_short Prediction Correction Topic Evolution Research for Metabolic Pathways of the Gut Microbiota
title_full Prediction Correction Topic Evolution Research for Metabolic Pathways of the Gut Microbiota
title_fullStr Prediction Correction Topic Evolution Research for Metabolic Pathways of the Gut Microbiota
title_full_unstemmed Prediction Correction Topic Evolution Research for Metabolic Pathways of the Gut Microbiota
title_sort prediction correction topic evolution research for metabolic pathways of the gut microbiota
publisher Frontiers Media S.A.
series Frontiers in Molecular Biosciences
issn 2296-889X
publishDate 2020-12-01
description The gut microbiota is composed of a large number of different bacteria, that play a key role in the construction of a metabolic signaling network. Deepening the link between metabolic pathways of the gut microbiota and human health, it seems increasingly essential to evolutionarily define the principal technologies applied in the field and their future trends. We use a topic analysis tool, Latent Dirichlet Allocation, to extract themes as a probabilistic distribution of latent topics from literature dataset. We also use the Prophet neural network prediction tool to predict future trend of this area of study. A total of 1,271 abstracts (from 2006 to 2020) were retrieved from MEDLINE with the query on “gut microbiota” and “metabolic pathway.” Our study found 10 topics covering current research types: dietary health, inflammation and liver cancer, fatty and diabetes, microbiota community, hepatic metabolism, metabolomics-based approach and SFCAs, allergic and immune disorders, gut dysbiosis, obesity, brain reaction, and cardiovascular disease. The analysis indicates that, with the rapid development of gut microbiota research, the metabolomics-based approach and SCFAs (topic 6) and dietary health (topic 1) have more studies being reported in the last 15 years. We also conclude from the data that, three other topics could be heavily focused in the future: metabolomics-based approach and SCFAs (topic 6), obesity (topic 8) and brain reaction and cardiovascular disease (topic 10), to unravel microbial affecting human health.
topic gut microbiota
metabolic pathway
LDA
time-series feature
topic prediction
url https://www.frontiersin.org/articles/10.3389/fmolb.2020.600720/full
work_keys_str_mv AT lining predictioncorrectiontopicevolutionresearchformetabolicpathwaysofthegutmicrobiota
AT penglifang predictioncorrectiontopicevolutionresearchformetabolicpathwaysofthegutmicrobiota
AT hehuixin predictioncorrectiontopicevolutionresearchformetabolicpathwaysofthegutmicrobiota
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