Li Jian-Qiang, Rong Zhi-Hao, Chen Xing, Yan Gui-Ying, You Zhu-Hong
College of Computer Science and Software Engineering, Shenzhen University, Shenzhen, 518060, China.
School of Software, Beihang University, Beijing, 100191, China.
Oncotarget. 2017 Mar 28;8(13):21187-21199. doi: 10.18632/oncotarget.15061.
Nowadays, researchers have realized that microRNAs (miRNAs) are playing a significant role in many important biological processes and they are closely connected with various complex human diseases. However, since there are too many possible miRNA-disease associations to analyze, it remains difficult to predict the potential miRNAs related to human diseases without a systematic and effective method. In this study, we developed a Matrix Completion for MiRNA-Disease Association prediction model (MCMDA) based on the known miRNA-disease associations in HMDD database. MCMDA model utilized the matrix completion algorithm to update the adjacency matrix of known miRNA-disease associations and furthermore predict the potential associations. To evaluate the performance of MCMDA, we performed leave-one-out cross validation (LOOCV) and 5-fold cross validation to compare MCMDA with three previous classical computational models (RLSMDA, HDMP, and WBSMDA). As a result, MCMDA achieved AUCs of 0.8749 in global LOOCV, 0.7718 in local LOOCV and average AUC of 0.8767+/-0.0011 in 5-fold cross validation. Moreover, the prediction results associated with colon neoplasms, kidney neoplasms, lymphoma and prostate neoplasms were verified. As a consequence, 84%, 86%, 78% and 90% of the top 50 potential miRNAs for these four diseases were respectively confirmed by recent experimental discoveries. Therefore, MCMDA model is superior to the previous models in that it improves the prediction performance although it only depends on the known miRNA-disease associations.
如今,研究人员已经意识到微小RNA(miRNA)在许多重要的生物学过程中发挥着重要作用,并且它们与各种复杂的人类疾病密切相关。然而,由于需要分析的miRNA-疾病关联太多,在没有系统有效的方法的情况下,预测与人类疾病相关的潜在miRNA仍然很困难。在本研究中,我们基于HMDD数据库中已知的miRNA-疾病关联,开发了一种用于miRNA-疾病关联预测的矩阵填充模型(MCMDA)。MCMDA模型利用矩阵填充算法更新已知miRNA-疾病关联的邻接矩阵,并进一步预测潜在关联。为了评估MCMDA的性能,我们进行了留一法交叉验证(LOOCV)和五折交叉验证,以将MCMDA与之前的三种经典计算模型(RLSMDA、HDMP和WBSMDA)进行比较。结果,MCMDA在全局LOOCV中的AUC为0.8749,在局部LOOCV中的AUC为0.7718,在五折交叉验证中的平均AUC为0.8767±0.0011。此外,与结肠肿瘤、肾肿瘤、淋巴瘤和前列腺肿瘤相关的预测结果得到了验证。因此,这四种疾病排名前50的潜在miRNA中,分别有84%、86%、78%和90%被最近的实验发现所证实。因此,MCMDA模型优于之前的模型,因为尽管它仅依赖于已知的miRNA-疾病关联,但它提高了预测性能。