Using Machine Learning Methods to Study Colorectal Cancer Tumor Micro-Environment and Its Biomarkers.
Wei WeiYixue LiTao HuangPublished in: International journal of molecular sciences (2023)
Colorectal cancer (CRC) is a leading cause of cancer deaths worldwide, and the identification of biomarkers can improve early detection and personalized treatment. In this study, RNA-seq data and gene chip data from TCGA and GEO were used to explore potential biomarkers for CRC. The SMOTE method was used to address class imbalance, and four feature selection algorithms (MCFS, Borota, mRMR, and LightGBM) were used to select genes from the gene expression matrix. Four machine learning algorithms (SVM, XGBoost, RF, and kNN) were then employed to obtain the optimal number of genes for model construction. Through interpretable machine learning (IML), co-predictive networks were generated to identify rules and uncover underlying relationships among the selected genes. Survival analysis revealed that INHBA , FNBP1 , PDE9A , HIST1H2BG , and CADM3 were significantly correlated with prognosis in CRC patients. In addition, the CIBERSORT algorithm was used to investigate the proportion of immune cells in CRC tissues, and gene mutation rates for the five selected biomarkers were explored. The biomarkers identified in this study have significant implications for the development of personalized therapies and could ultimately lead to improved clinical outcomes for CRC patients.
Keyphrases
- machine learning
- gene expression
- end stage renal disease
- rna seq
- genome wide
- single cell
- deep learning
- big data
- ejection fraction
- chronic kidney disease
- artificial intelligence
- dna methylation
- genome wide identification
- prognostic factors
- bioinformatics analysis
- peritoneal dialysis
- high throughput
- squamous cell carcinoma
- copy number
- circulating tumor cells
- lymph node metastasis