Cargando…

Deep Learning Reveals Key Immunosuppression Genes and Distinct Immunotypes in Periodontitis

BACKGROUND: Periodontitis is a chronic immuno-inflammatory disease characterized by inflammatory destruction of tooth-supporting tissues. Its pathogenesis involves a dysregulated local host immune response that is ineffective in combating microbial challenges. An integrated investigation of genes in...

Descripción completa

Detalles Bibliográficos
Autores principales: Ning, Wanchen, Acharya, Aneesha, Sun, Zhengyang, Ogbuehi, Anthony Chukwunonso, Li, Cong, Hua, Shiting, Ou, Qianhua, Zeng, Muhui, Liu, Xiangqiong, Deng, Yupei, Haak, Rainer, Ziebolz, Dirk, Schmalz, Gerhard, Pelekos, George, Wang, Yang, Hu, Xianda
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7994531/
https://www.ncbi.nlm.nih.gov/pubmed/33777111
http://dx.doi.org/10.3389/fgene.2021.648329
_version_ 1783669771002183680
author Ning, Wanchen
Acharya, Aneesha
Sun, Zhengyang
Ogbuehi, Anthony Chukwunonso
Li, Cong
Hua, Shiting
Ou, Qianhua
Zeng, Muhui
Liu, Xiangqiong
Deng, Yupei
Haak, Rainer
Ziebolz, Dirk
Schmalz, Gerhard
Pelekos, George
Wang, Yang
Hu, Xianda
author_facet Ning, Wanchen
Acharya, Aneesha
Sun, Zhengyang
Ogbuehi, Anthony Chukwunonso
Li, Cong
Hua, Shiting
Ou, Qianhua
Zeng, Muhui
Liu, Xiangqiong
Deng, Yupei
Haak, Rainer
Ziebolz, Dirk
Schmalz, Gerhard
Pelekos, George
Wang, Yang
Hu, Xianda
author_sort Ning, Wanchen
collection PubMed
description BACKGROUND: Periodontitis is a chronic immuno-inflammatory disease characterized by inflammatory destruction of tooth-supporting tissues. Its pathogenesis involves a dysregulated local host immune response that is ineffective in combating microbial challenges. An integrated investigation of genes involved in mediating immune response suppression in periodontitis, based on multiple studies, can reveal genes pivotal to periodontitis pathogenesis. Here, we aimed to apply a deep learning (DL)-based autoencoder (AE) for predicting immunosuppression genes involved in periodontitis by integrating multiples omics datasets. METHODS: Two periodontitis-related GEO transcriptomic datasets (GSE16134 and GSE10334) and immunosuppression genes identified from DisGeNET and HisgAtlas were included. Immunosuppression genes related to periodontitis in GSE16134 were used as input to build an AE, to identify the top disease-representative immunosuppression gene features. Using K-means clustering and ANOVA, immune subtype labels were assigned to disease samples and a support vector machine (SVM) classifier was constructed. This classifier was applied to a validation set (Immunosuppression genes related to periodontitis in GSE10334) for predicting sample labels, evaluating the accuracy of the AE. In addition, differentially expressed genes (DEGs), signaling pathways, and transcription factors (TFs) involved in immunosuppression and periodontitis were determined with an array of bioinformatics analysis. Shared DEGs common to DEGs differentiating periodontitis from controls and those differentiating the immune subtypes were considered as the key immunosuppression genes in periodontitis. RESULTS: We produced representative molecular features and identified two immune subtypes in periodontitis using an AE. Two subtypes were also predicted in the validation set with the SVM classifier. Three “master” immunosuppression genes, PECAM1, FCGR3A, and FOS were identified as candidates pivotal to immunosuppressive mechanisms in periodontitis. Six transcription factors, NFKB1, FOS, JUN, HIF1A, STAT5B, and STAT4, were identified as central to the TFs-DEGs interaction network. The two immune subtypes were distinct in terms of their regulating pathways. CONCLUSION: This study applied a DL-based AE for the first time to identify immune subtypes of periodontitis and pivotal immunosuppression genes that discriminated periodontitis from the healthy. Key signaling pathways and TF-target DEGs that putatively mediate immune suppression in periodontitis were identified. PECAM1, FCGR3A, and FOS emerged as high-value biomarkers and candidate therapeutic targets for periodontitis.
format Online
Article
Text
id pubmed-7994531
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-79945312021-03-27 Deep Learning Reveals Key Immunosuppression Genes and Distinct Immunotypes in Periodontitis Ning, Wanchen Acharya, Aneesha Sun, Zhengyang Ogbuehi, Anthony Chukwunonso Li, Cong Hua, Shiting Ou, Qianhua Zeng, Muhui Liu, Xiangqiong Deng, Yupei Haak, Rainer Ziebolz, Dirk Schmalz, Gerhard Pelekos, George Wang, Yang Hu, Xianda Front Genet Genetics BACKGROUND: Periodontitis is a chronic immuno-inflammatory disease characterized by inflammatory destruction of tooth-supporting tissues. Its pathogenesis involves a dysregulated local host immune response that is ineffective in combating microbial challenges. An integrated investigation of genes involved in mediating immune response suppression in periodontitis, based on multiple studies, can reveal genes pivotal to periodontitis pathogenesis. Here, we aimed to apply a deep learning (DL)-based autoencoder (AE) for predicting immunosuppression genes involved in periodontitis by integrating multiples omics datasets. METHODS: Two periodontitis-related GEO transcriptomic datasets (GSE16134 and GSE10334) and immunosuppression genes identified from DisGeNET and HisgAtlas were included. Immunosuppression genes related to periodontitis in GSE16134 were used as input to build an AE, to identify the top disease-representative immunosuppression gene features. Using K-means clustering and ANOVA, immune subtype labels were assigned to disease samples and a support vector machine (SVM) classifier was constructed. This classifier was applied to a validation set (Immunosuppression genes related to periodontitis in GSE10334) for predicting sample labels, evaluating the accuracy of the AE. In addition, differentially expressed genes (DEGs), signaling pathways, and transcription factors (TFs) involved in immunosuppression and periodontitis were determined with an array of bioinformatics analysis. Shared DEGs common to DEGs differentiating periodontitis from controls and those differentiating the immune subtypes were considered as the key immunosuppression genes in periodontitis. RESULTS: We produced representative molecular features and identified two immune subtypes in periodontitis using an AE. Two subtypes were also predicted in the validation set with the SVM classifier. Three “master” immunosuppression genes, PECAM1, FCGR3A, and FOS were identified as candidates pivotal to immunosuppressive mechanisms in periodontitis. Six transcription factors, NFKB1, FOS, JUN, HIF1A, STAT5B, and STAT4, were identified as central to the TFs-DEGs interaction network. The two immune subtypes were distinct in terms of their regulating pathways. CONCLUSION: This study applied a DL-based AE for the first time to identify immune subtypes of periodontitis and pivotal immunosuppression genes that discriminated periodontitis from the healthy. Key signaling pathways and TF-target DEGs that putatively mediate immune suppression in periodontitis were identified. PECAM1, FCGR3A, and FOS emerged as high-value biomarkers and candidate therapeutic targets for periodontitis. Frontiers Media S.A. 2021-03-12 /pmc/articles/PMC7994531/ /pubmed/33777111 http://dx.doi.org/10.3389/fgene.2021.648329 Text en Copyright © 2021 Ning, Acharya, Sun, Ogbuehi, Li, Hua, Ou, Zeng, Liu, Deng, Haak, Ziebolz, Schmalz, Pelekos, Wang and Hu. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Genetics
Ning, Wanchen
Acharya, Aneesha
Sun, Zhengyang
Ogbuehi, Anthony Chukwunonso
Li, Cong
Hua, Shiting
Ou, Qianhua
Zeng, Muhui
Liu, Xiangqiong
Deng, Yupei
Haak, Rainer
Ziebolz, Dirk
Schmalz, Gerhard
Pelekos, George
Wang, Yang
Hu, Xianda
Deep Learning Reveals Key Immunosuppression Genes and Distinct Immunotypes in Periodontitis
title Deep Learning Reveals Key Immunosuppression Genes and Distinct Immunotypes in Periodontitis
title_full Deep Learning Reveals Key Immunosuppression Genes and Distinct Immunotypes in Periodontitis
title_fullStr Deep Learning Reveals Key Immunosuppression Genes and Distinct Immunotypes in Periodontitis
title_full_unstemmed Deep Learning Reveals Key Immunosuppression Genes and Distinct Immunotypes in Periodontitis
title_short Deep Learning Reveals Key Immunosuppression Genes and Distinct Immunotypes in Periodontitis
title_sort deep learning reveals key immunosuppression genes and distinct immunotypes in periodontitis
topic Genetics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7994531/
https://www.ncbi.nlm.nih.gov/pubmed/33777111
http://dx.doi.org/10.3389/fgene.2021.648329
work_keys_str_mv AT ningwanchen deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT acharyaaneesha deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT sunzhengyang deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT ogbuehianthonychukwunonso deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT licong deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT huashiting deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT ouqianhua deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT zengmuhui deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT liuxiangqiong deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT dengyupei deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT haakrainer deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT ziebolzdirk deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT schmalzgerhard deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT pelekosgeorge deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT wangyang deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis
AT huxianda deeplearningrevealskeyimmunosuppressiongenesanddistinctimmunotypesinperiodontitis