Wang Yongtian, Liu Xinmeng, Shen Yewei, Song Xuerui, Wang Tao, Shang Xuequn, Peng Jiajie
School of Computer Science at Northwestern Polytechnical University, Xi'an, China.
children's health prevention department of Xi'an Children's Hospital.
Brief Bioinform. 2023 Mar 19;24(2). doi: 10.1093/bib/bbad069.
Emerging studies have shown that circular RNAs (circRNAs) are involved in a variety of biological processes and play a key role in disease diagnosing, treating and inferring. Although many methods, including traditional machine learning and deep learning, have been developed to predict associations between circRNAs and diseases, the biological function of circRNAs has not been fully exploited. Some methods have explored disease-related circRNAs based on different views, but how to efficiently use the multi-view data about circRNA is still not well studied. Therefore, we propose a computational model to predict potential circRNA-disease associations based on collaborative learning with circRNA multi-view functional annotations. First, we extract circRNA multi-view functional annotations and build circRNA association networks, respectively, to enable effective network fusion. Then, a collaborative deep learning framework for multi-view information is designed to get circRNA multi-source information features, which can make full use of the internal relationship among circRNA multi-view information. We build a network consisting of circRNAs and diseases by their functional similarity and extract the consistency description information of circRNAs and diseases. Last, we predict potential associations between circRNAs and diseases based on graph auto encoder. Our computational model has better performance in predicting candidate disease-related circRNAs than the existing ones. Furthermore, it shows the high practicability of the method that we use several common diseases as case studies to find some unknown circRNAs related to them. The experiments show that CLCDA can efficiently predict disease-related circRNAs and are helpful for the diagnosis and treatment of human disease.
新兴研究表明,环状RNA(circRNA)参与多种生物过程,并在疾病诊断、治疗和推断中发挥关键作用。尽管已经开发了许多方法,包括传统机器学习和深度学习,来预测circRNA与疾病之间的关联,但circRNA的生物学功能尚未得到充分利用。一些方法基于不同视角探索了与疾病相关的circRNA,但如何有效利用关于circRNA的多视角数据仍未得到充分研究。因此,我们提出一种计算模型,基于circRNA多视角功能注释的协同学习来预测潜在的circRNA-疾病关联。首先,我们分别提取circRNA多视角功能注释并构建circRNA关联网络,以实现有效的网络融合。然后,设计一个用于多视角信息的协同深度学习框架,以获取circRNA多源信息特征,这可以充分利用circRNA多视角信息之间的内在关系。我们通过circRNA和疾病的功能相似性构建一个由它们组成的网络,并提取circRNA和疾病的一致性描述信息。最后,我们基于图自动编码器预测circRNA与疾病之间的潜在关联。我们的计算模型在预测候选疾病相关circRNA方面比现有模型具有更好的性能。此外,我们以几种常见疾病为例进行研究,发现了一些与之相关的未知circRNA,这表明了我们所使用方法的高度实用性。实验表明,CLCDA可以有效地预测疾病相关的circRNA,并有助于人类疾病的诊断和治疗。