FOLFOX treatment response prediction in metastatic or recurrent colorectal cancer patients via machine learning algorithms.
Wei LuDongliang FuXiangxing KongZhiheng HuangMaxwell HwangYingshuang ZhuLiubo ChenKai JiangXinlin LiYihua WuJun LiYing YuanKe-Feng DingPublished in: Cancer medicine (2020)
Early identification of metastatic or recurrent colorectal cancer (CRC) patients who will be sensitive to FOLFOX (5-FU, leucovorin and oxaliplatin) therapy is very important. We performed microarray meta-analysis to identify differentially expressed genes (DEGs) between FOLFOX responders and nonresponders in metastatic or recurrent CRC patients, and found that the expression levels of WASHC4, HELZ, ERN1, RPS6KB1, and APPBP2 were downregulated, while the expression levels of IRF7, EML3, LYPLA2, DRAP1, RNH1, PKP3, TSPAN17, LSS, MLKL, PPP1R7, GCDH, C19ORF24, and CCDC124 were upregulated in FOLFOX responders compared with nonresponders. Subsequent functional annotation showed that DEGs were significantly enriched in autophagy, ErbB signaling pathway, mitophagy, endocytosis, FoxO signaling pathway, apoptosis, and antifolate resistance pathways. Based on those candidate genes, several machine learning algorithms were applied to the training set, then performances of models were assessed via the cross validation method. Candidate models with the best tuning parameters were applied to the test set and the final model showed satisfactory performance. In addition, we also reported that MLKL and CCDC124 gene expression were independent prognostic factors for metastatic CRC patients undergoing FOLFOX therapy.
Keyphrases
- machine learning
- prognostic factors
- signaling pathway
- metastatic colorectal cancer
- squamous cell carcinoma
- small cell lung cancer
- gene expression
- pi k akt
- poor prognosis
- systematic review
- artificial intelligence
- patients undergoing
- oxidative stress
- endoplasmic reticulum stress
- big data
- deep learning
- epithelial mesenchymal transition
- bioinformatics analysis
- dna methylation
- end stage renal disease
- ejection fraction
- newly diagnosed
- induced apoptosis
- cell cycle arrest
- dendritic cells
- transcription factor
- long non coding rna
- binding protein
- randomized controlled trial
- tyrosine kinase
- nlrp inflammasome
- case control
- patient reported
- single cell
- cell therapy