Lu Kexin, Huang Junzhi, Yang Yandong, Lu Dongli
Department of Obstetrics and Gynecology, Binzhou Medical University Hospital, Binzhou, Shandong 256603, P.R. China.
Department of Neurology, Binzhou Medical University Hospital, Binzhou, Shandong 256603, P.R. China.
Exp Ther Med. 2019 Mar;17(3):2085-2090. doi: 10.3892/etm.2019.7179. Epub 2019 Jan 16.
Compared with normal neonates, preterm infants have an immature immune system which causes them to have a higher morbidity rate and even death. In order to reduce the mortality of newborns, we need to find the target genes which affect the preterm and understand their mechanism. It has been verified that microRNA (miRNA)-200 and miRNA-182 are closely related to the incidence of preterm. Therefore, it is significant to predict the target genes which are regulated by them for further understanding the mechanism of preterm. We chose the targetscore method for calculating the variational Bayesian-Gaussian mixture model (VB-GMM) as the target genes prediction method. It is designed for condition-specific target predictions and not limited to predict conserved genes, so the results are more accurate than previous sequence-based target prediction algorithms. In this study, our major contribution is to predict the target mRNAs of the chosen miRNAs with the gene expression profiles and a new method, which can effectively improve the accuracy of the prediction.
与正常新生儿相比,早产儿的免疫系统不成熟,这导致他们的发病率更高,甚至会死亡。为了降低新生儿的死亡率,我们需要找到影响早产的靶基因并了解其机制。现已证实,微小RNA(miRNA)-200和miRNA-182与早产的发生密切相关。因此,预测受它们调控的靶基因对于进一步了解早产机制具有重要意义。我们选择了用于计算变分贝叶斯-高斯混合模型(VB-GMM)的靶标评分方法作为靶基因预测方法。它专为特定条件下的靶标预测而设计,不限于预测保守基因,因此结果比以前基于序列的靶标预测算法更准确。在本研究中,我们的主要贡献是利用基因表达谱和一种新方法预测所选miRNA的靶标mRNA,这可以有效提高预测的准确性。