Kaushik Aman Chandra, Mehmood Aamir, Wei Dong-Qing, Dai Xiaofeng
Wuxi School of Medicine, Jiangnan University, Wuxi, China.
School of Life Sciences and Biotechnology, Shanghai Jiao Tong University, Shanghai, China.
Front Bioeng Biotechnol. 2020 Apr 3;8:241. doi: 10.3389/fbioe.2020.00241. eCollection 2020.
LncRNAs, miRNAs, mRNAs, methylation, and proteins exert profound biological functions and are widely applied as prognostic features in liver cancer. This study aims to identify prognostic biomarkers' signature for liver cancer. Samples with inadequate tumor purity were filtered out and the expression data from different resources were retrieved. The Spares learning approach was applied to select lncRNAs, miRNAs, mRNAs, methylation, and proteins' features based on their differentially expressed groups. The LASSO boosting technique was employed for the predictive model construction. A total of 200 lncRNAs, 200 miRNAs, 371 mRNAs, 371 methylations, and 184 proteins were observed to be differentially expressed. Five lncRNAs, 11 miRNAs, 30 mRNAs, 4 methylations, and 3 proteins were selected for further evaluation using the feature elimination technique. The highest accuracy of 89.32% is achieved as a result of training and learning by Spares learning methodology. Final outcomes revealed that 5 lncRNA, 11 miRNA, 30 mRNA, 4 methylation, and 3 protein signatures could be potential biomarkers for the prognosis of liver cancer patients.
长链非编码RNA(lncRNAs)、微小RNA(miRNAs)、信使RNA(mRNAs)、甲基化和蛋白质发挥着重要的生物学功能,并被广泛用作肝癌的预后特征。本研究旨在识别肝癌的预后生物标志物特征。剔除肿瘤纯度不足的样本,并检索来自不同来源的表达数据。应用稀疏学习方法基于差异表达组选择lncRNAs、miRNAs、mRNAs、甲基化和蛋白质的特征。采用套索增强技术构建预测模型。共观察到200个lncRNAs、200个miRNAs、371个mRNAs、371个甲基化和184个蛋白质存在差异表达。使用特征消除技术选择了5个lncRNAs、11个miRNAs、30个mRNAs、4个甲基化和3个蛋白质进行进一步评估。通过稀疏学习方法进行训练和学习,最高准确率达到了89.32%。最终结果表明,5个lncRNA、11个miRNA、30个mRNA、4个甲基化和3个蛋白质特征可能是肝癌患者预后的潜在生物标志物。