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ACCBN: ant-Colony-clustering-based bipartite network method for predicting long non-coding RNA–protein interactions

机译:ACCBN:基于蚁群聚类的二分网络方法,用于预测长期非编码RNA蛋白质相互作用

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Long non-coding RNA (lncRNA) studies play an important role in the development, invasion, and metastasis of the tumor. The analysis and screening of the differential expression of lncRNAs in cancer and corresponding paracancerous tissues provides new clues for finding new cancer diagnostic indicators and improving the treatment. Predicting lncRNA-protein interactions is very important in the analysis of lncRNAs. This article proposes an Ant-Colony-Clustering-Based Bipartite Network (ACCBN) method and predicts lncRNA-protein interactions. The ACCBN method combines ant colony clustering and bipartite network inference to predict lncRNA-protein interactions. A five-fold cross-validation method was used in the experimental test. The results show that the values of the evaluation indicators of ACCBN on the test set are significantly better after comparing the predictive ability of ACCBN with RWR, ProCF, LPIHN, and LPBNI method. With the continuous development of biology, besides the research on the cellular process, the research on the interaction function between proteins becomes a new key topic of biology. The studies on protein-protein interactions had important implications for bioinformatics, clinical medicine, and pharmacology. However, there are many kinds of proteins, and their functions of interactions are complicated. Moreover, the experimental methods require time to be confirmed because it is difficult to estimate. Therefore, a viable solution is to predict protein-protein interactions efficiently with computers. The ACCBN method has a good effect on the prediction of protein-protein interactions in terms of sensitivity, precision, accuracy, and F1-score.
机译:长期非编码RNA(LNCRNA)研究在肿瘤的发育,侵袭和转移中起重要作用。癌症中LNCRNA差异表达的分析和筛选和相应的副癌组织提供了寻找新癌症诊断指标并改善治疗的新线索。预测LNCRNA蛋白相互作用在LNCRNA的分析中非常重要。本文提出了一种基于蚁群聚类的二分网络(ACCBN)方法,并预测LNCRNA-蛋白质相互作用。 ACCBN方法将蚁群聚类和二分网络推断结合以预测LNCRNA-蛋白质相互作用。实验试验中使用了五倍的交叉验证方法。结果表明,在比较ACCBN与RWR,PROCF,LPIHN和LPBNI方法的预测能力之后,ACCBN的评估指标的值明显更好。随着生物学的不断发展,除了对蜂窝过程的研究外,蛋白质之间的相互作用功能的研究成为生物学的新关键话题。蛋白质 - 蛋白质相互作用的研究对生物信息学,临床医学和药理学具有重要意义。然而,有多种蛋白质,它们的相互作用的功能是复杂的。此外,实验方法需要时间确认,因为难以估计。因此,可行的解决方案是通过计算机有效地预测蛋白质蛋白质的相互作用。 ACCBN方法对敏感性,精度,精度和F1分数的蛋白质 - 蛋白质相互作用的预测具有良好的效果。

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