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Using association rule mining to jointly detect clinical features and differentially expressed genes related to chronic inflammatory diseases

OBJECTIVE: It is increasingly common to find patients affected by a combination of type 2 diabetes mellitus (T2DM), dyslipidemia (DLP) and periodontitis (PD), which are chronic inflammatory diseases. More studies able to capture unknown relationships among these diseases will contribute to raise bio...

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Autores principales: Veroneze, Rosana, Cruz Tfaile Corbi, Sâmia, Roque da Silva, Bárbara, de S. Rocha, Cristiane, V. Maurer-Morelli, Cláudia, Perez Orrico, Silvana Regina, Cirelli, Joni A., Von Zuben, Fernando J., Mantuaneli Scarel-Caminaga, Raquel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7531780/
https://www.ncbi.nlm.nih.gov/pubmed/33007040
http://dx.doi.org/10.1371/journal.pone.0240269
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author Veroneze, Rosana
Cruz Tfaile Corbi, Sâmia
Roque da Silva, Bárbara
de S. Rocha, Cristiane
V. Maurer-Morelli, Cláudia
Perez Orrico, Silvana Regina
Cirelli, Joni A.
Von Zuben, Fernando J.
Mantuaneli Scarel-Caminaga, Raquel
author_facet Veroneze, Rosana
Cruz Tfaile Corbi, Sâmia
Roque da Silva, Bárbara
de S. Rocha, Cristiane
V. Maurer-Morelli, Cláudia
Perez Orrico, Silvana Regina
Cirelli, Joni A.
Von Zuben, Fernando J.
Mantuaneli Scarel-Caminaga, Raquel
author_sort Veroneze, Rosana
collection PubMed
description OBJECTIVE: It is increasingly common to find patients affected by a combination of type 2 diabetes mellitus (T2DM), dyslipidemia (DLP) and periodontitis (PD), which are chronic inflammatory diseases. More studies able to capture unknown relationships among these diseases will contribute to raise biological and clinical evidence. The aim of this study was to apply association rule mining (ARM) to discover whether there are consistent patterns of clinical features (CFs) and differentially expressed genes (DEGs) relevant to these diseases. We intend to reinforce the evidence of the T2DM-DLP-PD-interplay and demonstrate the ARM ability to provide new insights into multivariate pattern discovery. METHODS: We utilized 29 clinical glycemic, lipid and periodontal parameters from 143 patients divided into five groups based upon diabetic, dyslipidemic and periodontal conditions (including a healthy-control group). At least 5 patients from each group were selected to assess the transcriptome by microarray. ARM was utilized to assess relevant association rules considering: (i) only CFs; and (ii) CFs+DEGs, such that the identified DEGs, specific to each group of patients, were submitted to gene expression validation by quantitative polymerase chain reaction (qPCR). RESULTS: We obtained 78 CF-rules and 161 CF+DEG-rules. Based on their clinical significance, Periodontists and Geneticist experts selected 11 CF-rules, and 5 CF+DEG-rules. From the five DEGs prospected by the rules, four of them were validated by qPCR as significantly different from the control group; and two of them validated the previous microarray findings. CONCLUSIONS: ARM was a powerful data analysis technique to identify multivariate patterns involving clinical and molecular profiles of patients affected by specific pathological panels. ARM proved to be an effective mining approach to analyze gene expression with the advantage of including patient’s CFs. A combination of CFs and DEGs might be employed in modeling the patient’s chance to develop complex diseases, such as those studied here.
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spelling pubmed-75317802020-10-08 Using association rule mining to jointly detect clinical features and differentially expressed genes related to chronic inflammatory diseases Veroneze, Rosana Cruz Tfaile Corbi, Sâmia Roque da Silva, Bárbara de S. Rocha, Cristiane V. Maurer-Morelli, Cláudia Perez Orrico, Silvana Regina Cirelli, Joni A. Von Zuben, Fernando J. Mantuaneli Scarel-Caminaga, Raquel PLoS One Research Article OBJECTIVE: It is increasingly common to find patients affected by a combination of type 2 diabetes mellitus (T2DM), dyslipidemia (DLP) and periodontitis (PD), which are chronic inflammatory diseases. More studies able to capture unknown relationships among these diseases will contribute to raise biological and clinical evidence. The aim of this study was to apply association rule mining (ARM) to discover whether there are consistent patterns of clinical features (CFs) and differentially expressed genes (DEGs) relevant to these diseases. We intend to reinforce the evidence of the T2DM-DLP-PD-interplay and demonstrate the ARM ability to provide new insights into multivariate pattern discovery. METHODS: We utilized 29 clinical glycemic, lipid and periodontal parameters from 143 patients divided into five groups based upon diabetic, dyslipidemic and periodontal conditions (including a healthy-control group). At least 5 patients from each group were selected to assess the transcriptome by microarray. ARM was utilized to assess relevant association rules considering: (i) only CFs; and (ii) CFs+DEGs, such that the identified DEGs, specific to each group of patients, were submitted to gene expression validation by quantitative polymerase chain reaction (qPCR). RESULTS: We obtained 78 CF-rules and 161 CF+DEG-rules. Based on their clinical significance, Periodontists and Geneticist experts selected 11 CF-rules, and 5 CF+DEG-rules. From the five DEGs prospected by the rules, four of them were validated by qPCR as significantly different from the control group; and two of them validated the previous microarray findings. CONCLUSIONS: ARM was a powerful data analysis technique to identify multivariate patterns involving clinical and molecular profiles of patients affected by specific pathological panels. ARM proved to be an effective mining approach to analyze gene expression with the advantage of including patient’s CFs. A combination of CFs and DEGs might be employed in modeling the patient’s chance to develop complex diseases, such as those studied here. Public Library of Science 2020-10-02 /pmc/articles/PMC7531780/ /pubmed/33007040 http://dx.doi.org/10.1371/journal.pone.0240269 Text en © 2020 Veroneze et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Veroneze, Rosana
Cruz Tfaile Corbi, Sâmia
Roque da Silva, Bárbara
de S. Rocha, Cristiane
V. Maurer-Morelli, Cláudia
Perez Orrico, Silvana Regina
Cirelli, Joni A.
Von Zuben, Fernando J.
Mantuaneli Scarel-Caminaga, Raquel
Using association rule mining to jointly detect clinical features and differentially expressed genes related to chronic inflammatory diseases
title Using association rule mining to jointly detect clinical features and differentially expressed genes related to chronic inflammatory diseases
title_full Using association rule mining to jointly detect clinical features and differentially expressed genes related to chronic inflammatory diseases
title_fullStr Using association rule mining to jointly detect clinical features and differentially expressed genes related to chronic inflammatory diseases
title_full_unstemmed Using association rule mining to jointly detect clinical features and differentially expressed genes related to chronic inflammatory diseases
title_short Using association rule mining to jointly detect clinical features and differentially expressed genes related to chronic inflammatory diseases
title_sort using association rule mining to jointly detect clinical features and differentially expressed genes related to chronic inflammatory diseases
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7531780/
https://www.ncbi.nlm.nih.gov/pubmed/33007040
http://dx.doi.org/10.1371/journal.pone.0240269
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