IEEE/ACM Trans Comput Biol Bioinform. 2021 Mar-Apr;18(2):405-415. doi: 10.1109/TCBB.2019.2931546. Epub 2021 Apr 6.
Increasing evidences revealed that microRNAs (miRNAs) play critical roles in important biological processes. The identification of disease-related miRNAs is critical to understand the molecular mechanisms of human diseases. Most existing computational methods require diverse features to predict miRNA-disease associations. However, diverse features are not available for all miRNAs or diseases. In addition, most methods can't predict links for miRNAs or diseases without association information. In this paper, we propose a fast linear neighborhood similarity-based network link inference method, named FLNSNLI, to predict miRNA-disease associations. First, known miRNA-disease associations are formulated as a bipartite network, and miRNAs (or diseases) are expressed as association profiles. Second, miRNA-miRNA similarity and disease-disease similarity are calculated by fast linear neighborhood similarity measure and association profiles. Third, the label propagation algorithm is respectively implemented on two sides to score candidate miRNA-disease associations. Finally, FLNSNLI adopts the weighted average strategy and makes predictions. Moreover, we develop a link complementing approach, and extend FLNSNLI to predict links for miRNAs (or diseases) without known associations. In computational experiments, FLNSNLI produces high-accuracy performances, and outperforms other state-of-the-art methods. More importantly, FLNSNLI requires less information but performs well. Case studies on three popular diseases show that FLNSNLI is useful for the microRNA-disease association prediction.
越来越多的证据表明,microRNAs(miRNAs)在重要的生物学过程中发挥着关键作用。鉴定与疾病相关的 miRNAs 对于理解人类疾病的分子机制至关重要。大多数现有的计算方法需要多种特征来预测 miRNA-疾病关联。然而,并非所有 miRNAs 或疾病都有多种特征。此外,大多数方法无法预测没有关联信息的 miRNAs 或疾病之间的联系。在本文中,我们提出了一种快速线性邻域相似性网络链路推断方法,称为 FLNSNLI,用于预测 miRNA-疾病关联。首先,将已知的 miRNA-疾病关联表示为二分网络,并将 miRNAs(或疾病)表示为关联谱。其次,通过快速线性邻域相似性度量和关联谱计算 miRNA-miRNA 相似性和疾病-疾病相似性。第三,在两侧分别实施标签传播算法来评分候选 miRNA-疾病关联。最后,FLNSNLI 采用加权平均策略进行预测。此外,我们开发了一种链路补充方法,并将 FLNSNLI 扩展到预测没有已知关联的 miRNAs(或疾病)的链路。在计算实验中,FLNSNLI 产生了高精度的性能,优于其他最先进的方法。更重要的是,FLNSNLI 需要的信息更少,但性能良好。对三种常见疾病的案例研究表明,FLNSNLI 对于 miRNA-疾病关联预测是有用的。