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Identification of potentially functional circRNAs and prediction of circRNA‐miRNA‐mRNA regulatory network in periodontitis: Bridging the gap between bioinformatics and clinical needs

BACKGROUND AND OBJECTIVE: Periodontitis is a multifactorial chronic inflammatory disease that can lead to the irreversible destruction of dental support tissues. As an epigenetic factor, the expression of circRNA is tissue‐dependent and disease‐dependent. This study aimed to identify novel periodont...

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Autores principales: Yu, Weijun, Gu, Qisheng, Wu, Di, Zhang, Weiqi, Li, Gang, Lin, Lu, Lowe, Jared M., Hu, Shucheng, Li, Tia Wenjun, Zhou, Zhen, Miao, Michael Z., Gong, Yuhua, Zhao, Yifei, Lu, Eryi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9325354/
https://www.ncbi.nlm.nih.gov/pubmed/35388494
http://dx.doi.org/10.1111/jre.12989
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author Yu, Weijun
Gu, Qisheng
Wu, Di
Zhang, Weiqi
Li, Gang
Lin, Lu
Lowe, Jared M.
Hu, Shucheng
Li, Tia Wenjun
Zhou, Zhen
Miao, Michael Z.
Gong, Yuhua
Zhao, Yifei
Lu, Eryi
author_facet Yu, Weijun
Gu, Qisheng
Wu, Di
Zhang, Weiqi
Li, Gang
Lin, Lu
Lowe, Jared M.
Hu, Shucheng
Li, Tia Wenjun
Zhou, Zhen
Miao, Michael Z.
Gong, Yuhua
Zhao, Yifei
Lu, Eryi
author_sort Yu, Weijun
collection PubMed
description BACKGROUND AND OBJECTIVE: Periodontitis is a multifactorial chronic inflammatory disease that can lead to the irreversible destruction of dental support tissues. As an epigenetic factor, the expression of circRNA is tissue‐dependent and disease‐dependent. This study aimed to identify novel periodontitis‐associated circRNAs and predict relevant circRNA‐periodontitis regulatory network by using recently developed bioinformatic tools and integrating sequencing profiling with clinical information for getting a better and more thorough image of periodontitis pathogenesis, from gene to clinic. MATERIAL AND METHODS: High‐throughput sequencing and RT‐qPCR were conducted to identify differentially expressed circRNAs in gingival tissues from periodontitis patients. The relationship between upregulated circRNAs expression and probing depth (PD) was performed using Spearman's correlation analysis. Bioinformatic analyses including GO analysis, circRNA‐disease association prediction, and circRNA‐miRNA‐mRNA network prediction were performed to clarify potential regulatory functions of identified circRNAs in periodontitis. A receiver‐operating characteristic (ROC) curve was established to assess the diagnostic significance of identified circRNAs. RESULTS: High‐throughput sequencing identified 70 differentially expressed circRNAs (68 upregulated and 2 downregulated circRNAs) in human periodontitis (fold change >2.0 and p < .05). The top five upregulated circRNAs were validated by RT‐qPCR that had strong associations with multiple human diseases, including periodontitis. The upregulation of circRNAs were positively correlated with PD (R = .40–.69, p < .05, moderate). A circRNA‐miRNA‐mRNA network with the top five upregulated circRNAs, differentially expressed mRNAs, and overlapped predicted miRNAs indicated potential roles of circRNAs in immune response, cell apoptosis, migration, adhesion, and reaction to oxidative stress. The ROC curve showed that circRNAs had potential value in periodontitis diagnosis (AUC = 0.7321–0.8667, p < .05). CONCLUSION: CircRNA‐disease associations were predicted by online bioinformatic tools. Positive correlation between upregulated circRNAs, circPTP4A2, chr22:23101560‐23135351+, circARHGEF28, circBARD1 and circRASA2, and PD suggested function of circRNAs in periodontitis. Network prediction further focused on downstream targets regulated by circRNAs during periodontitis pathogenesis.
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spelling pubmed-93253542022-07-30 Identification of potentially functional circRNAs and prediction of circRNA‐miRNA‐mRNA regulatory network in periodontitis: Bridging the gap between bioinformatics and clinical needs Yu, Weijun Gu, Qisheng Wu, Di Zhang, Weiqi Li, Gang Lin, Lu Lowe, Jared M. Hu, Shucheng Li, Tia Wenjun Zhou, Zhen Miao, Michael Z. Gong, Yuhua Zhao, Yifei Lu, Eryi J Periodontal Res Original Articles BACKGROUND AND OBJECTIVE: Periodontitis is a multifactorial chronic inflammatory disease that can lead to the irreversible destruction of dental support tissues. As an epigenetic factor, the expression of circRNA is tissue‐dependent and disease‐dependent. This study aimed to identify novel periodontitis‐associated circRNAs and predict relevant circRNA‐periodontitis regulatory network by using recently developed bioinformatic tools and integrating sequencing profiling with clinical information for getting a better and more thorough image of periodontitis pathogenesis, from gene to clinic. MATERIAL AND METHODS: High‐throughput sequencing and RT‐qPCR were conducted to identify differentially expressed circRNAs in gingival tissues from periodontitis patients. The relationship between upregulated circRNAs expression and probing depth (PD) was performed using Spearman's correlation analysis. Bioinformatic analyses including GO analysis, circRNA‐disease association prediction, and circRNA‐miRNA‐mRNA network prediction were performed to clarify potential regulatory functions of identified circRNAs in periodontitis. A receiver‐operating characteristic (ROC) curve was established to assess the diagnostic significance of identified circRNAs. RESULTS: High‐throughput sequencing identified 70 differentially expressed circRNAs (68 upregulated and 2 downregulated circRNAs) in human periodontitis (fold change >2.0 and p < .05). The top five upregulated circRNAs were validated by RT‐qPCR that had strong associations with multiple human diseases, including periodontitis. The upregulation of circRNAs were positively correlated with PD (R = .40–.69, p < .05, moderate). A circRNA‐miRNA‐mRNA network with the top five upregulated circRNAs, differentially expressed mRNAs, and overlapped predicted miRNAs indicated potential roles of circRNAs in immune response, cell apoptosis, migration, adhesion, and reaction to oxidative stress. The ROC curve showed that circRNAs had potential value in periodontitis diagnosis (AUC = 0.7321–0.8667, p < .05). CONCLUSION: CircRNA‐disease associations were predicted by online bioinformatic tools. Positive correlation between upregulated circRNAs, circPTP4A2, chr22:23101560‐23135351+, circARHGEF28, circBARD1 and circRASA2, and PD suggested function of circRNAs in periodontitis. Network prediction further focused on downstream targets regulated by circRNAs during periodontitis pathogenesis. John Wiley and Sons Inc. 2022-04-06 2022-06 /pmc/articles/PMC9325354/ /pubmed/35388494 http://dx.doi.org/10.1111/jre.12989 Text en © 2022 The Authors. Journal of Periodontal Research published by John Wiley & Sons Ltd. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Original Articles
Yu, Weijun
Gu, Qisheng
Wu, Di
Zhang, Weiqi
Li, Gang
Lin, Lu
Lowe, Jared M.
Hu, Shucheng
Li, Tia Wenjun
Zhou, Zhen
Miao, Michael Z.
Gong, Yuhua
Zhao, Yifei
Lu, Eryi
Identification of potentially functional circRNAs and prediction of circRNA‐miRNA‐mRNA regulatory network in periodontitis: Bridging the gap between bioinformatics and clinical needs
title Identification of potentially functional circRNAs and prediction of circRNA‐miRNA‐mRNA regulatory network in periodontitis: Bridging the gap between bioinformatics and clinical needs
title_full Identification of potentially functional circRNAs and prediction of circRNA‐miRNA‐mRNA regulatory network in periodontitis: Bridging the gap between bioinformatics and clinical needs
title_fullStr Identification of potentially functional circRNAs and prediction of circRNA‐miRNA‐mRNA regulatory network in periodontitis: Bridging the gap between bioinformatics and clinical needs
title_full_unstemmed Identification of potentially functional circRNAs and prediction of circRNA‐miRNA‐mRNA regulatory network in periodontitis: Bridging the gap between bioinformatics and clinical needs
title_short Identification of potentially functional circRNAs and prediction of circRNA‐miRNA‐mRNA regulatory network in periodontitis: Bridging the gap between bioinformatics and clinical needs
title_sort identification of potentially functional circrnas and prediction of circrna‐mirna‐mrna regulatory network in periodontitis: bridging the gap between bioinformatics and clinical needs
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9325354/
https://www.ncbi.nlm.nih.gov/pubmed/35388494
http://dx.doi.org/10.1111/jre.12989
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