Cargando…
A prognostic 15-gene model based on differentially expressed genes among metabolic subtypes in diffuse large B-cell lymphoma
The outcomes of patients with diffuse large B-cell lymphoma (DLBCL) vary widely, and about 40% of them could not be cured by the standard first-line treatment, R-CHOP, which could be due to the high heterogeneity of DLBCL. Here, we aim to construct a prognostic model based on the genetic signature o...
Autores principales: | , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9931744/ https://www.ncbi.nlm.nih.gov/pubmed/36816541 http://dx.doi.org/10.3389/pore.2023.1610819 |
_version_ | 1784889300002799616 |
---|---|
author | Hou, Jun Guo, Peng Lu, Yujiao Jin, Xiaokang Liang, Ke Zhao, Na Xue, Shunxu Zhou, Chengmin Wang, Guoqiang Zhu, Xin Hong, Huangming Chen, Yungchang Lu, Huafei Wang, Wenxian Xu, Chunwei Han, Yusheng Cai, Shangli Liu, Yang |
author_facet | Hou, Jun Guo, Peng Lu, Yujiao Jin, Xiaokang Liang, Ke Zhao, Na Xue, Shunxu Zhou, Chengmin Wang, Guoqiang Zhu, Xin Hong, Huangming Chen, Yungchang Lu, Huafei Wang, Wenxian Xu, Chunwei Han, Yusheng Cai, Shangli Liu, Yang |
author_sort | Hou, Jun |
collection | PubMed |
description | The outcomes of patients with diffuse large B-cell lymphoma (DLBCL) vary widely, and about 40% of them could not be cured by the standard first-line treatment, R-CHOP, which could be due to the high heterogeneity of DLBCL. Here, we aim to construct a prognostic model based on the genetic signature of metabolic heterogeneity of DLBCL to explore therapeutic strategies for DLBCL patients. Clinical and transcriptomic data of one training and four validation cohorts of DLBCL were obtained from the GEO database. Metabolic subtypes were identified by PAM clustering of 1,916 metabolic genes in the 7 major metabolic pathways in the training cohort. DEGs among the metabolic clusters were then analyzed. In total, 108 prognosis-related DEGs were identified. Through univariable Cox and LASSO regression analyses, 15 DEGs were used to construct a risk score model. The overall survival (OS) and progression-free survival (PFS) of patients with high risk were significantly worse than those with low risk (OS: HR 2.86, 95%CI 2.04–4.01, p < 0.001; PFS: HR 2.42, 95% CI 1.77–3.31, p < 0.001). This model was also associated with OS in the four independent validation datasets (GSE10846: HR 1.65, p = 0.002; GSE53786: HR 2.05, p = 0.02; GSE87371: HR 1.85, p = 0.027; GSE23051: HR 6.16, p = 0.007) and PFS in the two validation datasets (GSE87371: HR 1.67, p = 0.033; GSE23051: HR 2.74, p = 0.049). Multivariable Cox analysis showed that in all datasets, the risk model could predict OS independent of clinical prognosis factors (p < 0.05). Compared with the high-risk group, patients in the low-risk group predictively respond to R-CHOP (p = 0.0042), PI3K inhibitor (p < 0.05), and proteasome inhibitor (p < 0.05). Therefore, in this study, we developed a signature model of 15 DEGs among 3 metabolic subtypes, which could predict survival and drug sensitivity in DLBCL patients. |
format | Online Article Text |
id | pubmed-9931744 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-99317442023-02-17 A prognostic 15-gene model based on differentially expressed genes among metabolic subtypes in diffuse large B-cell lymphoma Hou, Jun Guo, Peng Lu, Yujiao Jin, Xiaokang Liang, Ke Zhao, Na Xue, Shunxu Zhou, Chengmin Wang, Guoqiang Zhu, Xin Hong, Huangming Chen, Yungchang Lu, Huafei Wang, Wenxian Xu, Chunwei Han, Yusheng Cai, Shangli Liu, Yang Pathol Oncol Res Pathology and Oncology Archive The outcomes of patients with diffuse large B-cell lymphoma (DLBCL) vary widely, and about 40% of them could not be cured by the standard first-line treatment, R-CHOP, which could be due to the high heterogeneity of DLBCL. Here, we aim to construct a prognostic model based on the genetic signature of metabolic heterogeneity of DLBCL to explore therapeutic strategies for DLBCL patients. Clinical and transcriptomic data of one training and four validation cohorts of DLBCL were obtained from the GEO database. Metabolic subtypes were identified by PAM clustering of 1,916 metabolic genes in the 7 major metabolic pathways in the training cohort. DEGs among the metabolic clusters were then analyzed. In total, 108 prognosis-related DEGs were identified. Through univariable Cox and LASSO regression analyses, 15 DEGs were used to construct a risk score model. The overall survival (OS) and progression-free survival (PFS) of patients with high risk were significantly worse than those with low risk (OS: HR 2.86, 95%CI 2.04–4.01, p < 0.001; PFS: HR 2.42, 95% CI 1.77–3.31, p < 0.001). This model was also associated with OS in the four independent validation datasets (GSE10846: HR 1.65, p = 0.002; GSE53786: HR 2.05, p = 0.02; GSE87371: HR 1.85, p = 0.027; GSE23051: HR 6.16, p = 0.007) and PFS in the two validation datasets (GSE87371: HR 1.67, p = 0.033; GSE23051: HR 2.74, p = 0.049). Multivariable Cox analysis showed that in all datasets, the risk model could predict OS independent of clinical prognosis factors (p < 0.05). Compared with the high-risk group, patients in the low-risk group predictively respond to R-CHOP (p = 0.0042), PI3K inhibitor (p < 0.05), and proteasome inhibitor (p < 0.05). Therefore, in this study, we developed a signature model of 15 DEGs among 3 metabolic subtypes, which could predict survival and drug sensitivity in DLBCL patients. Frontiers Media S.A. 2023-02-02 /pmc/articles/PMC9931744/ /pubmed/36816541 http://dx.doi.org/10.3389/pore.2023.1610819 Text en Copyright © 2023 Hou, Guo, Lu, Jin, Liang, Zhao, Xue, Zhou, Wang, Zhu, Hong, Chen, Lu, Wang, Xu, Han, Cai and Liu. https://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 | Pathology and Oncology Archive Hou, Jun Guo, Peng Lu, Yujiao Jin, Xiaokang Liang, Ke Zhao, Na Xue, Shunxu Zhou, Chengmin Wang, Guoqiang Zhu, Xin Hong, Huangming Chen, Yungchang Lu, Huafei Wang, Wenxian Xu, Chunwei Han, Yusheng Cai, Shangli Liu, Yang A prognostic 15-gene model based on differentially expressed genes among metabolic subtypes in diffuse large B-cell lymphoma |
title | A prognostic 15-gene model based on differentially expressed genes among metabolic subtypes in diffuse large B-cell lymphoma |
title_full | A prognostic 15-gene model based on differentially expressed genes among metabolic subtypes in diffuse large B-cell lymphoma |
title_fullStr | A prognostic 15-gene model based on differentially expressed genes among metabolic subtypes in diffuse large B-cell lymphoma |
title_full_unstemmed | A prognostic 15-gene model based on differentially expressed genes among metabolic subtypes in diffuse large B-cell lymphoma |
title_short | A prognostic 15-gene model based on differentially expressed genes among metabolic subtypes in diffuse large B-cell lymphoma |
title_sort | prognostic 15-gene model based on differentially expressed genes among metabolic subtypes in diffuse large b-cell lymphoma |
topic | Pathology and Oncology Archive |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9931744/ https://www.ncbi.nlm.nih.gov/pubmed/36816541 http://dx.doi.org/10.3389/pore.2023.1610819 |
work_keys_str_mv | AT houjun aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT guopeng aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT luyujiao aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT jinxiaokang aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT liangke aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT zhaona aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT xueshunxu aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT zhouchengmin aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT wangguoqiang aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT zhuxin aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT honghuangming aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT chenyungchang aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT luhuafei aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT wangwenxian aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT xuchunwei aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT hanyusheng aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT caishangli aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT liuyang aprognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT houjun prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT guopeng prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT luyujiao prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT jinxiaokang prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT liangke prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT zhaona prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT xueshunxu prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT zhouchengmin prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT wangguoqiang prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT zhuxin prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT honghuangming prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT chenyungchang prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT luhuafei prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT wangwenxian prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT xuchunwei prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT hanyusheng prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT caishangli prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma AT liuyang prognostic15genemodelbasedondifferentiallyexpressedgenesamongmetabolicsubtypesindiffuselargebcelllymphoma |