通过共享单元和多通道注意机制预测circrna与疾病的关联。

Xue Zhang, Quan Zou, Mengting Niu, Chunyu Wang
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摘要

动机:环状rna (circRNAs)已被确定为几种疾病进展中的关键参与者;然而,由于生物学研究的高财政负担,它们的作用尚未确定。这突出了开发能够预测circrna -疾病关联的高效计算模型的迫切需要,为克服昂贵的实验研究的局限性提供了一种替代方法。虽然多视图学习方法被广泛采用,但大多数方法未能充分挖掘跨视图的潜在信息,同时忽略了不同视图对重要性的贡献程度不同的事实。结果:本研究提出了一种结合多视图共享单元和多通道注意机制预测环状rna -疾病关联(MSMCDA)的方法。MSMCDA首先通过引入共享单元来促进跨不同网络特征的互动学习,构建环状rna和疾病的相似性和元路径网络。随后,采用多通道注意机制优化相似网络中的权重。最后,对比学习强化了相似性特征。在5个公共数据集上的实验表明,MSMCDA显著优于其他基线方法。此外,结直肠癌、胃癌和非小细胞肺癌的病例研究证实了MSMCDA在发现新的关联方面的有效性。可用性:源代码和数据可在https://github.com/zhangxue2115/MSMCDA.git.Supplementary上获得:补充数据可在Bioinformatics在线上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Predicting circRNA-disease associations with shared units and multi-channel attention mechanisms.

Motivation: Circular RNAs (circRNAs) have been identified as key players in the progression of several diseases; however, their roles have not yet been determined because of the high financial burden of biological studies. This highlights the urgent need to develop efficient computational models that can predict circRNA-disease associations, offering an alternative approach to overcome the limitations of expensive experimental studies. Although multi-view learning methods have been widely adopted, most approaches fail to fully exploit the latent information across views, while simultaneously overlooking the fact that different views contribute to varying degrees of significance.

Results: This study presents a method that combines multi-view shared units and multichannel attention mechanisms to predict circRNA-disease associations (MSMCDA). MSMCDA first constructs similarity and meta-path networks for circRNAs and diseases by introducing shared units to facilitate interactive learning across distinct network features. Subsequently, multichannel attention mechanisms were used to optimize the weights within similarity networks. Finally, contrastive learning strengthened the similarity features. Experiments on five public datasets demonstrated that MSMCDA significantly outperformed other baseline methods. Additionally, case studies on colorectal cancer, gastric cancer, and nonsmall cell lung cancer confirmed the effectiveness of MSMCDA in uncovering new associations.

Availability and implementation: The source code and data are available at https://github.com/zhangxue2115/MSMCDA.git.

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