Construction of Decision Trees Based on Gene Expression Omnibus Data to Classify Bladder Cancer and Its Subtypes
Author(s) -
Jiaquan Zhou,
Xin-Li Kang,
Congjie Xu,
Liu Shuan,
Yang Wang
Publication year - 2021
Publication title -
medical science monitor
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.636
H-Index - 85
eISSN - 1643-3750
pISSN - 1234-1010
DOI - 10.12659/msm.929394
Subject(s) - bladder cancer , gene expression , infiltration (hvac) , gene , immunohistochemistry , biology , gene expression profiling , muscle tissue , pathology , cancer , cancer research , computational biology , medicine , anatomy , genetics , physics , thermodynamics
Background Bladder cancer is a malignant tumor of the genitourinary system. Different subtypes of bladder cancer have different treatment methods and prognoses. Therefore, identifying hub genes affecting other genes is of great significance for the treatment of bladder cancer. Material/Methods: We obtained expression profiles from the GSE13507 and GSE77952 datasets from the Gene Expression Omnibus database. First, principal component analysis was used to identify the difference in gene expression in different types of tissues. Differential expression analysis was used to find the differentially expressed genes between normal and tumor tissues, and between tumors with and without muscle infiltration. Further, based on differentially expressed genes, we constructed 2 decision trees for differentiating between tumor and normal tissues, and between muscle-infiltrating and non-muscle-infiltrating tumor tissues. A receiver operating characteristic curve was used to evaluate the prediction effect of the decision trees. Results FAM107A and C8orf4 showed significantly lower expression in bladder cancer tissues than in normal tissues. Regarding muscle infiltration, CTHRC1 showed lower expression and HMGCS2 showed higher expression in non-muscle-infiltrating samples than in those with muscle infiltration. We constructed 2 decision trees for differentiating between tumor and normal tissue, and between tissues with and without muscle infiltration. Both decision trees showed good prediction results. Conclusions These newly discovered hub genes will be helpful in understanding the occurrence and development of different subtypes of bladder cancer, and will provide new therapeutic targets and biomarkers for bladder cancer.
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