Cargando…

Genetic co-expression networks contribute to creating predictive model and exploring novel biomarkers for the prognosis of breast cancer

Genetic co-expression network (GCN) analysis augments the understanding of breast cancer (BC). We aimed to propose GCN-based modeling for BC relapse-free survival (RFS) prediction and to discover novel biomarkers. We used GCN and Cox proportional hazard regression to create various prediction models...

Descripción completa

Detalles Bibliográficos
Autores principales: Li, Yuan-Kuei, Hsu, Huan-Ming, Lin, Meng-Chiung, Chang, Chi-Wen, Chu, Chi-Ming, Chang, Yu-Jia, Yu, Jyh-Cherng, Chen, Chien-Ting, Jian, Chen-En, Sun, Chien-An, Chen, Kang-Hua, Kuo, Ming-Hao, Cheng, Chia-Shiang, Chang, Ya-Ting, Wu, Yi-Syuan, Wu, Hao-Yi, Yang, Ya-Ting, Lin, Chen, Lin, Hung-Che, Hu, Je-Ming, Chang, Yu-Tien
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8012617/
https://www.ncbi.nlm.nih.gov/pubmed/33790307
http://dx.doi.org/10.1038/s41598-021-84995-z
_version_ 1783673401717555200
author Li, Yuan-Kuei
Hsu, Huan-Ming
Lin, Meng-Chiung
Chang, Chi-Wen
Chu, Chi-Ming
Chang, Yu-Jia
Yu, Jyh-Cherng
Chen, Chien-Ting
Jian, Chen-En
Sun, Chien-An
Chen, Kang-Hua
Kuo, Ming-Hao
Cheng, Chia-Shiang
Chang, Ya-Ting
Wu, Yi-Syuan
Wu, Hao-Yi
Yang, Ya-Ting
Lin, Chen
Lin, Hung-Che
Hu, Je-Ming
Chang, Yu-Tien
author_facet Li, Yuan-Kuei
Hsu, Huan-Ming
Lin, Meng-Chiung
Chang, Chi-Wen
Chu, Chi-Ming
Chang, Yu-Jia
Yu, Jyh-Cherng
Chen, Chien-Ting
Jian, Chen-En
Sun, Chien-An
Chen, Kang-Hua
Kuo, Ming-Hao
Cheng, Chia-Shiang
Chang, Ya-Ting
Wu, Yi-Syuan
Wu, Hao-Yi
Yang, Ya-Ting
Lin, Chen
Lin, Hung-Che
Hu, Je-Ming
Chang, Yu-Tien
author_sort Li, Yuan-Kuei
collection PubMed
description Genetic co-expression network (GCN) analysis augments the understanding of breast cancer (BC). We aimed to propose GCN-based modeling for BC relapse-free survival (RFS) prediction and to discover novel biomarkers. We used GCN and Cox proportional hazard regression to create various prediction models using mRNA microarray of 920 tumors and conduct external validation using independent data of 1056 tumors. GCNs of 34 identified candidate genes were plotted in various sizes. Compared to the reference model, the genetic predictors selected from bigger GCNs composed better prediction models. The prediction accuracy and AUC of 3 ~ 15-year RFS are 71.0–81.4% and 74.6–78% respectively (rfm, ACC 63.2–65.5%, AUC 61.9–74.9%). The hazard ratios of risk scores of developing relapse ranged from 1.89 ~ 3.32 (p < 10(–8)) over all models under the control of the node status. External validation showed the consistent finding. We found top 12 co-expressed genes are relative new or novel biomarkers that have not been explored in BC prognosis or other cancers until this decade. GCN-based modeling creates better prediction models and facilitates novel genes exploration on BC prognosis.
format Online
Article
Text
id pubmed-8012617
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-80126172021-04-05 Genetic co-expression networks contribute to creating predictive model and exploring novel biomarkers for the prognosis of breast cancer Li, Yuan-Kuei Hsu, Huan-Ming Lin, Meng-Chiung Chang, Chi-Wen Chu, Chi-Ming Chang, Yu-Jia Yu, Jyh-Cherng Chen, Chien-Ting Jian, Chen-En Sun, Chien-An Chen, Kang-Hua Kuo, Ming-Hao Cheng, Chia-Shiang Chang, Ya-Ting Wu, Yi-Syuan Wu, Hao-Yi Yang, Ya-Ting Lin, Chen Lin, Hung-Che Hu, Je-Ming Chang, Yu-Tien Sci Rep Article Genetic co-expression network (GCN) analysis augments the understanding of breast cancer (BC). We aimed to propose GCN-based modeling for BC relapse-free survival (RFS) prediction and to discover novel biomarkers. We used GCN and Cox proportional hazard regression to create various prediction models using mRNA microarray of 920 tumors and conduct external validation using independent data of 1056 tumors. GCNs of 34 identified candidate genes were plotted in various sizes. Compared to the reference model, the genetic predictors selected from bigger GCNs composed better prediction models. The prediction accuracy and AUC of 3 ~ 15-year RFS are 71.0–81.4% and 74.6–78% respectively (rfm, ACC 63.2–65.5%, AUC 61.9–74.9%). The hazard ratios of risk scores of developing relapse ranged from 1.89 ~ 3.32 (p < 10(–8)) over all models under the control of the node status. External validation showed the consistent finding. We found top 12 co-expressed genes are relative new or novel biomarkers that have not been explored in BC prognosis or other cancers until this decade. GCN-based modeling creates better prediction models and facilitates novel genes exploration on BC prognosis. Nature Publishing Group UK 2021-03-31 /pmc/articles/PMC8012617/ /pubmed/33790307 http://dx.doi.org/10.1038/s41598-021-84995-z Text en © The Author(s) 2021, corrected publication 2021 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Li, Yuan-Kuei
Hsu, Huan-Ming
Lin, Meng-Chiung
Chang, Chi-Wen
Chu, Chi-Ming
Chang, Yu-Jia
Yu, Jyh-Cherng
Chen, Chien-Ting
Jian, Chen-En
Sun, Chien-An
Chen, Kang-Hua
Kuo, Ming-Hao
Cheng, Chia-Shiang
Chang, Ya-Ting
Wu, Yi-Syuan
Wu, Hao-Yi
Yang, Ya-Ting
Lin, Chen
Lin, Hung-Che
Hu, Je-Ming
Chang, Yu-Tien
Genetic co-expression networks contribute to creating predictive model and exploring novel biomarkers for the prognosis of breast cancer
title Genetic co-expression networks contribute to creating predictive model and exploring novel biomarkers for the prognosis of breast cancer
title_full Genetic co-expression networks contribute to creating predictive model and exploring novel biomarkers for the prognosis of breast cancer
title_fullStr Genetic co-expression networks contribute to creating predictive model and exploring novel biomarkers for the prognosis of breast cancer
title_full_unstemmed Genetic co-expression networks contribute to creating predictive model and exploring novel biomarkers for the prognosis of breast cancer
title_short Genetic co-expression networks contribute to creating predictive model and exploring novel biomarkers for the prognosis of breast cancer
title_sort genetic co-expression networks contribute to creating predictive model and exploring novel biomarkers for the prognosis of breast cancer
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8012617/
https://www.ncbi.nlm.nih.gov/pubmed/33790307
http://dx.doi.org/10.1038/s41598-021-84995-z
work_keys_str_mv AT liyuankuei geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT hsuhuanming geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT linmengchiung geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT changchiwen geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT chuchiming geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT changyujia geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT yujyhcherng geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT chenchienting geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT jianchenen geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT sunchienan geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT chenkanghua geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT kuominghao geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT chengchiashiang geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT changyating geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT wuyisyuan geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT wuhaoyi geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT yangyating geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT linchen geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT linhungche geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT hujeming geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer
AT changyutien geneticcoexpressionnetworkscontributetocreatingpredictivemodelandexploringnovelbiomarkersfortheprognosisofbreastcancer