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Constructing lncRNA functional similarity network based on lncRNA-disease associations and disease semantic similarity

机译:基于lncRNA-疾病关联和疾病语义相似性构建lncRNA功能相似性网络

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Increasing evidence has indicated that plenty of lncRNAs play important roles in many critical biological processes. Developing powerful computational models to construct lncRNA functional similarity network based on heterogeneous biological datasets is one of the most important and popular topics in the fields of both lncRNAs and complex diseases. Functional similarity network consturction could benefit the model development for both lncRNA function inference and lncRNA-disease association identification. However, little effort has been attempted to analysis and calculate lncRNA functional similarity on a large scale. In this study, based on the assumption that functionally similar lncRNAs tend to be associated with similar diseases, we developed two novel lncRNA functional similarity calculation models (LNCSIM). LNCSIM was evaluated by introducing similarity scores into the model of Laplacian Regularized Least Squares for LncRNA–Disease Association (LRLSLDA) for lncRNA-disease association prediction. As a result, new predictive models improved the performance of LRLSLDA in the leave-one-out cross validation of various known lncRNA-disease associations datasets. Furthermore, some of the predictive results for colorectal cancer and lung cancer were verified by independent biological experimental studies. It is anticipated that LNCSIM could be a useful and important biological tool for human disease diagnosis, treatment, and prevention.
机译:越来越多的证据表明,大量的lncRNA在许多关键的生物学过程中起着重要的作用。基于异质生物学数据集开发强大的计算模型以构建lncRNA功能相似性网络是lncRNA和复杂疾病领域最重要和最受欢迎的主题之一。功能相似性网络的构建可能有益于lncRNA功能推断和lncRNA-疾病关联鉴定的模型开发。然而,几乎没有尝试尝试大规模分析和计算lncRNA功能相似性。在这项研究中,基于功能相似的lncRNA倾向于与相似疾病相关的假设,我们开发了两个新颖的lncRNA功能相似性计算模型(LNCSIM)。通过将相似性得分引入用于LncRNA-疾病关联的拉普拉斯正则化最小二乘模型(LRLSLDA)来评估LNCSIM,以评估lncRNA-疾病关联。结果,新的预测模型提高了LRLSLDA在各种已知的lncRNA-疾病关联数据集的留一法交叉验证中的性能。此外,独立的生物学实验研究证实了一些对大肠癌和肺癌的预测结果。可以预期,LNCSIM可能是用于人类疾病诊断,治疗和预防的有用且重要的生物学工具。

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