The mitochondrial energy metabolism pathway-related signature predicts prognosis and indicates immune microenvironment infiltration in osteosarcoma

Author:

Yang Sen1ORCID,Liu Liyun1,Liu Xiaoyun2,Li Xinghua2,Zheng Yuyu2,Ren Zeen3,Wang Ruijiang1,Wang Yun3,Li Qian4

Affiliation:

1. Department of Orthopedics, The Peace Hospital of Changzhi City, The First Clinical Hospital of Changzhi Medical University, Changzhi, Shanxi Province, China

2. Department of General Medical, The People’s Hospital of Changzhi City, The Third Clinical Hospital of Changzhi Medical University, Changzhi, Shanxi Province, China

3. Department of Orthopedics, The Second People’s Hospital of Changzhi City, The Fourth Clinical Hospital of Changzhi Medical University, Changzhi, Shanxi Province, China

4. School of Basic Medicine, Medical College of Baicheng City, Baicheng, Jilin Province, China.

Abstract

Background: Abnormalities in the mitochondrial energy metabolism pathways are closely related to the occurrence and development of many cancers. Furthermore, abnormal genes in mitochondrial energy metabolism pathways may be novel targets and biomarkers for the diagnosis and treatment of osteosarcoma. In this study, we aimed to establish a mitochondrial energy metabolism-related gene signature for osteosarcoma prognosis. Methods: We first obtained differentially expressed genes based on the metastatic status of 84 patients with osteosarcoma from the TARGET database. After Venn analysis of differentially expressed genes and mitochondrial energy metabolism pathway-related genes (MMRGs), 2 key genes were obtained using univariate Cox regression and least absolute shrinkage and selection operator (LASSO) regression analysis. Next, we used these 2 genes to establish a prognostic signature. Subsequent analyses elucidated the correlation between these 2 key genes with clinical features and 28 types of immune cells. Pathway changes in osteosarcoma pathogenesis under different metastatic states were clarified using gene set enrichment analysis (GSEA) of differentially expressed genes. Results: A gene signature composed of 2 key prognosis-related genes (KCNJ5 and PFKFB2) was identified. A risk score was calculated based on the gene signature, which divided osteosarcoma patients into low- or high-risk groups that showed good and poor prognosis, respectively. High expression of these 2 key genes is associated with low-risk group in patients with osteosarcoma. We constructed an accurate nomogram to help clinicians assess the survival time of patients with osteosarcoma. The results of immune cell infiltration level showed that the high-risk group had lower levels of immune cell infiltration. GSEA revealed changes in immune regulation and hypoxia stress pathways in osteosarcoma under different metastatic states. Conclusion: Our study identified an excellent gene signature that could be helpful in improving the prognosis of patients with osteosarcoma.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

General Medicine

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