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LWPCMF:基于逻辑加权轮廓的协同矩阵分解用于预测miRNA与疾病的关联

LWPCMF: Logistic Weighted Profile-Based Collaborative Matrix Factorization for Predicting MiRNA-Disease Associations.

作者信息

Yin Meng-Meng, Cui Zhen, Gao Ming-Ming, Liu Jin-Xing, Gao Ying-Lian

出版信息

IEEE/ACM Trans Comput Biol Bioinform. 2021 May-Jun;18(3):1122-1129. doi: 10.1109/TCBB.2019.2937774. Epub 2021 Jun 3.

DOI:10.1109/TCBB.2019.2937774
PMID:31478868
Abstract

As is known to all, constructing experiments to predict unknown miRNA-disease association is time-consuming, laborious and costly. Accordingly, new prediction model should be conducted to predict novel miRNA-disease associations. What's more, the performance of this method should be high and reliable. In this paper, a new computation model Logistic Weighted Profile-based Collaborative Matrix Factorization (LWPCMF) is put forward. In this method, weighted profile (WP) is combined with collaborative matrix factorization (CMF) to increase the performance of this model. And, the neighbor information is considered. In addition, logistic function is applied to miRNA functional similarity matrix and disease semantic similarity matrix to extract valuable information. At the same time, by adding WP and logistic function, the known correlation can be protected. And, Gaussian Interaction Profile (GIP) kernels of miRNAs and diseases are added to miRNA functional similarity network and disease semantic similarity network to augment kernel similarities. Then, a five-fold cross validation is implemented to evaluate the predictive ability of this method. Besides, case studies are conducted to view the experimental results. The final result contains not only known associations but also newly predicted ones. And, the result proves that our method is better than other existing methods. This model is able to predict potential miRNA-disease associations.

摘要

众所周知,构建实验来预测未知的miRNA与疾病的关联既耗时、费力又成本高昂。因此,需要构建新的预测模型来预测新的miRNA与疾病的关联。此外,该方法的性能应高且可靠。本文提出了一种新的计算模型——基于逻辑加权轮廓的协同矩阵分解(LWPCMF)。在该方法中,加权轮廓(WP)与协同矩阵分解(CMF)相结合以提高模型性能。并且,考虑了邻居信息。此外,将逻辑函数应用于miRNA功能相似性矩阵和疾病语义相似性矩阵以提取有价值的信息。同时,通过添加WP和逻辑函数,可以保护已知的相关性。并且,将miRNA和疾病的高斯相互作用轮廓(GIP)核添加到miRNA功能相似性网络和疾病语义相似性网络中以增强核相似性。然后,实施五折交叉验证来评估该方法的预测能力。此外,进行案例研究以查看实验结果。最终结果不仅包含已知的关联,还包含新预测的关联。并且,结果证明我们的方法优于其他现有方法。该模型能够预测潜在的miRNA与疾病的关联。

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IEEE/ACM Trans Comput Biol Bioinform. 2021 May-Jun;18(3):1122-1129. doi: 10.1109/TCBB.2019.2937774. Epub 2021 Jun 3.
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