College of Computer Science and Electronic Engineering, Hunan University, Changsha, China.
School of Basic Education, Changsha Aeronautical Vocational and Technical College, Changsha, China.
Methods. 2023 Apr;212:1-9. doi: 10.1016/j.ymeth.2023.02.003. Epub 2023 Feb 21.
MicroRNA(miRNA) is a class of short non-coding RNAs with a length of about 22 nucleotides, which participates in various biological processes of cells. A number of studies have shown that miRNAs are closely related to the occurrence of cancer and various human diseases. Therefore, studying miRNA-disease associations is helpful to understand the pathogenesis of diseases as well as the prevention, diagnosis, treatment and prognosis of diseases. Traditional biological experimental methods for studying miRNA-disease associations have disadvantages such as expensive equipment, time-consuming and labor-intensive. With the rapid development of bioinformatics, more and more researchers are committed to developing effective computational methods to predict miRNA-disease associations in roder to reduce the time and money cost of experiments. In this study, we proposed a neural network-based deep matrix factorization method named NNDMF to predict miRNA-disease associations. To address the problem that traditional matrix factorization methods can only extract linear features, NNDMF used neural network to perform deep matrix factorization to extract nonlinear features, which makes up for the shortcomings of traditional matrix factorization methods. We compared NNDMF with four previous classical prediction models (IMCMDA, GRMDA, SACMDA and ICFMDA) in global LOOCV and local LOOCV, respectively. The AUCs achieved by NNDMF in two cross-validation methods were 0.9340 and 0.8763, respectively. Furthermore, we conducted case studies on three important human diseases (lymphoma, colorectal cancer and lung cancer) to validate the effectiveness of NNDMF. In conclusion, NNDMF could effectively predict the potential miRNA-disease associations.
微小 RNA(miRNA)是一类约 22 个核苷酸长度的短非编码 RNA,参与细胞的各种生物学过程。许多研究表明,miRNA 与癌症和各种人类疾病的发生密切相关。因此,研究 miRNA-疾病关联有助于了解疾病的发病机制以及疾病的预防、诊断、治疗和预后。传统的 miRNA-疾病关联的生物实验方法存在设备昂贵、耗时耗力等缺点。随着生物信息学的快速发展,越来越多的研究人员致力于开发有效的计算方法来预测 miRNA-疾病关联,以减少实验的时间和金钱成本。在本研究中,我们提出了一种基于神经网络的深度矩阵分解方法 NNDMF,用于预测 miRNA-疾病关联。为了解决传统矩阵分解方法只能提取线性特征的问题,NNDMF 使用神经网络进行深度矩阵分解来提取非线性特征,弥补了传统矩阵分解方法的不足。我们分别在全局 LOOCV 和局部 LOOCV 中,将 NNDMF 与四种先前的经典预测模型(IMCMDA、GRMDA、SACMDA 和 ICFMDA)进行了比较。NNDMF 在两种交叉验证方法中获得的 AUC 分别为 0.9340 和 0.8763。此外,我们对三种重要的人类疾病(淋巴瘤、结直肠癌和肺癌)进行了案例研究,以验证 NNDMF 的有效性。总之,NNDMF 可以有效地预测潜在的 miRNA-疾病关联。