Pan Zhenxia, Zhang Huaxiang, Liang Cheng, Li Guanghui, Xiao Qiu, Ding Pingjian, Luo Jiawei
School of Information Science and Engineering, Shandong Normal University, Jinan 250358, China.
School of Information Science and Engineering, Shandong Normal University, Jinan 250358, China.
Mol Ther Nucleic Acids. 2019 Sep 6;17:414-423. doi: 10.1016/j.omtn.2019.06.014. Epub 2019 Jun 28.
Researchers have realized that microRNAs (miRNAs) play significant roles in the pathogenesis of various diseases. Although many computational models have been proposed to predict the associations between miRNAs and diseases, prediction performance could still be improved. In this paper, we propose a novel self-weighted, multi-kernel, multi-label learning (SwMKML) method to predict disease-related miRNAs. SwMKML adaptively learns two optimal kernel matrices for both miRNAs and diseases from multiple kernels constructed from known miRNA-disease associations. Moreover, the miRNA-disease associations predicted from both spaces are updated simultaneously based on a multi-label framework. Compared with four state-of-the-art computational models, SwMKML achieved best results of 95.5%, 93.1%, and 84.1% in global leave-one-out cross-validation, 5-fold cross-validation, and overall prediction accuracy, respectively. A case study conducted on head and neck neoplasms further identified two potential prognostic biomarkers, hsa-mir-125b-1 and hsa-mir-125b-2, for the disease. SwMKML is freely available at Github, and we anticipate that it may become an effective tool for potential miRNA-disease association prediction.
研究人员已经认识到,微小核糖核酸(miRNA)在各种疾病的发病机制中起着重要作用。尽管已经提出了许多计算模型来预测miRNA与疾病之间的关联,但预测性能仍有提升空间。在本文中,我们提出了一种新颖的自加权、多核、多标签学习(SwMKML)方法来预测与疾病相关的miRNA。SwMKML从由已知miRNA-疾病关联构建的多个核中自适应地学习miRNA和疾病的两个最优核矩阵。此外,基于多标签框架同时更新从两个空间预测的miRNA-疾病关联。与四种最先进的计算模型相比,SwMKML在全局留一法交叉验证、5折交叉验证和总体预测准确率方面分别取得了95.5%、93.1%和84.1%的最佳结果。对头颈部肿瘤进行的案例研究进一步确定了该疾病的两个潜在预后生物标志物,即hsa-mir-125b-1和hsa-mir-125b-2。SwMKML可在Github上免费获取,我们预计它可能成为预测潜在miRNA-疾病关联的有效工具。