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NFMCLDA:通过网络融合和矩阵补全预测基于 miRNA 的 lncRNA-疾病关联。

NFMCLDA: Predicting miRNA-based lncRNA-disease associations by network fusion and matrix completion.

机构信息

School of Science, Jiangnan University, Wuxi, Jiangsu, 214122, China.

School of Science, Jiangnan University, Wuxi, Jiangsu, 214122, China.

出版信息

Comput Biol Med. 2024 May;174:108403. doi: 10.1016/j.compbiomed.2024.108403. Epub 2024 Apr 2.

Abstract

In recent years, emerging evidence has revealed a strong association between dysregulations of long non-coding RNAs (lncRNAs) and sophisticated human diseases. Biological experiments are adequate to identify such associations, but they are costly and time-consuming. Therefore, developing high-quality computational methods is a challenging and urgent task in the field of bioinformatics. This paper proposes a new lncRNA-disease association inference approach NFMCLDA (Network Fusion and Matrix Completion lncRNA-Disease Association), which can effectively integrate multi-source association data. In this approach, miRNA information is used as the transition path, and an unbalanced random walk method on three-layer heterogeneous network is adopted in the preprocessing. Therefore, more effective information between networks can be mined and the sparsity problem of the association matrix can be solved. Finally, the matrix completion method accurately predicts associations. The results show that NFMCLDA can provide more accurate lncRNA-disease associations than state-of-the-art methods. The areas under the receiver operating characteristic curves are 0.9648 and 0.9713, respectively, through the cross-validation of 5-fold and 10-fold. Data from published case studies on four diseases - lung cancer, osteosarcoma, cervical cancer, and colon cancer - have confirmed the reliable predictive potential of NFMCLDA model.

摘要

近年来,新出现的证据表明长非编码 RNA(lncRNA)的失调与复杂的人类疾病之间存在很强的关联。生物实验足以识别这种关联,但它们既昂贵又耗时。因此,开发高质量的计算方法是生物信息学领域的一项具有挑战性和紧迫性的任务。本文提出了一种新的 lncRNA-疾病关联推断方法 NFMCLDA(网络融合和矩阵补全 lncRNA-疾病关联),可以有效地整合多源关联数据。在该方法中,miRNA 信息被用作过渡路径,在三层异质网络上采用非平衡随机游走方法进行预处理。因此,可以挖掘出网络之间更有效的信息,并解决关联矩阵的稀疏性问题。最后,矩阵补全方法可以准确预测关联。结果表明,NFMCLDA 可以比最先进的方法提供更准确的 lncRNA-疾病关联。通过 5 折和 10 折交叉验证,ROC 曲线下的面积分别为 0.9648 和 0.9713。来自四个疾病(肺癌、骨肉瘤、宫颈癌和结肠癌)的已发表案例研究的数据证实了 NFMCLDA 模型具有可靠的预测潜力。

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