Wang Meixi, Zhu Ping
School of Science, Jiangnan University, Wuxi 214122, China.
School of Science, Jiangnan University, Wuxi 214122, China.
Biosystems. 2021 Jan;199:104292. doi: 10.1016/j.biosystems.2020.104292. Epub 2020 Nov 19.
MicroRNAs (miRNAs) are widely involved in a series of significant biological processes, which have been revealed and verified by accumulating experimental studies. The computational inference of the correlation between miRNAs and diseases is essential to facilitate the detection of disease biomarkers for disease diagnosis, prevention, treatment and prognosis. In this paper, a model with Multiple use of Random Walk with restart algorithm was introduced for the prediction of the MiRNA-Disease Association (MRWMDA). Based on diverse similarity measures, the model first implemented the random walk with restart (RWR) algorithm on the integrated similarity network to construct the topological similarity of miRNAs and diseases, which took full advantage of the network topology information. Then, the RWR algorithm was applied in the miRNA topological similarity network, and a steady probability of each miRNA-disease pair was obtained to prioritize miRNA candidates. In particular, the initial probability of the RWR algorithm was determined by utilizing the combination of the recommendation algorithm and the maximum similarity method. The proposed model achieved significant improvement in prediction compared with previous models, with an AUC of 0.9353 and an AUPR of 0.4809. In addition, case studies of breast neoplasms and lung neoplasms representing different disease types further demonstrated the excellent ability of MRWMDA in detecting potential disease-associated miRNAs. These performance analyses indicated that MRWMDA could be an effective and powerful biological computational tool in relevant biomedical studies.
微小RNA(miRNA)广泛参与一系列重要的生物学过程,大量实验研究已揭示并证实了这些过程。对miRNA与疾病之间相关性的计算推断对于促进疾病生物标志物的检测以用于疾病诊断、预防、治疗和预后至关重要。本文介绍了一种多次使用带重启的随机游走算法的模型,用于预测miRNA-疾病关联(MRWMDA)。基于多种相似性度量,该模型首先在整合的相似性网络上实施带重启的随机游走(RWR)算法,以构建miRNA和疾病的拓扑相似性,充分利用了网络拓扑信息。然后,将RWR算法应用于miRNA拓扑相似性网络,获得每个miRNA-疾病对的稳定概率,以对miRNA候选物进行优先级排序。特别地,通过结合推荐算法和最大相似性方法来确定RWR算法的初始概率。与先前的模型相比,所提出的模型在预测方面取得了显著改进,AUC为0.9353,AUPR为0.4809。此外,代表不同疾病类型的乳腺肿瘤和肺肿瘤的案例研究进一步证明了MRWMDA在检测潜在疾病相关miRNA方面的卓越能力。这些性能分析表明,MRWMDA可能是相关生物医学研究中一种有效且强大的生物计算工具。