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Risk score based on expression of five novel genes predicts survival in soft tissue sarcoma
Author(s) -
Hui-Yun Gu,
Chao Zhang,
Jia Guo,
Min Yang,
Hou-Cheng Zhong,
Wei Jin,
Yang Liu,
Liping Gao,
Renxiong Wei
Publication year - 2020
Publication title -
aging
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.473
H-Index - 90
ISSN - 1945-4589
DOI - 10.18632/aging.102847
Subject(s) - soft tissue sarcoma , gene , sarcoma , soft tissue , oncology , expression (computer science) , biology , medicine , computational biology , bioinformatics , cancer research , genetics , pathology , computer science , programming language
In this study, The Cancer Genome Atlas and Genotype-Tissue Expression databases were used to identify potential biomarkers of soft tissue sarcoma (STS) and construct a prognostic model. The model was used to calculate risk scores based on the expression of five key genes, among which MYBL2 and FBN2 were upregulated and TSPAN7, GCSH, and DDX39B were downregulated in STS patients. We also examined gene signatures associated with the key genes and evaluated the model's clinical utility. The key genes were found to be involved in the cell cycle, DNA replication, and various cancer pathways, and gene alterations were associated with a poor prognosis. According to the prognostic model, risk scores negatively correlated with infiltration of six types of immune cells. Furthermore, age, margin status, presence of metastasis, and risk score were independent prognostic factors for STS patients. A nomogram that incorporated the risk score and other independent prognostic factors accurately predicted survival in STS patients. These findings may help to improve prognostic prediction and aid in the identification of effective treatments for STS patients.

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