Liu Ziqiang, Dai Qiguo, Yu Xianhai, Duan Xiaodong, Wang Chunyu
IEEE J Biomed Health Inform. 2025 Mar;29(3):1838-1848. doi: 10.1109/JBHI.2023.3299423. Epub 2025 Mar 6.
Circular RNA (circRNA) is a class of noncoding RNA that is highly conserved and exhibit exceptional stability. Due to its function as a microRNA sponge, circRNA has gained significant attention as an essential biomarker and potential drug target in the pathogenesis of several cancers. Although many circRNAs have been identified to play a role in cancer resistance, traditional methods are time-consuming and expensive. In this context, computational methods offer a promising way to facilitate the discovery process. However, most existing prediction models focus on the association between circRNAs and drug resistance, without considering the corresponding disease-related information in the circRNA-drug resistance association. Incorporating disease-related information into the prediction of circRNA-drug resistance associations could potentially improve the efficiency and speed of discovering and developing circRNA-targeting drugs. We propose a computational framework, named GraphCDD, for predicting the association between circRNA and drug resistance. Our model utilizes data from three sources, namely circRNA, disease, and drug, to construct three similarity networks that represent the features of circRNA, disease, and drug, respectively. We utilize a multimodal graph neural network to acquire efficient representations of circRNAs, diseases, and drugs by integrating various types of information, and establish a predictive model. The experimental results have validated the effectiveness of our model and provided a promising method in predicting potential associations between circRNA and drug resistance.
环状RNA(circRNA)是一类非编码RNA,高度保守且具有非凡的稳定性。由于其作为微小RNA海绵的功能,circRNA作为几种癌症发病机制中的重要生物标志物和潜在药物靶点受到了广泛关注。尽管已经鉴定出许多circRNA在癌症耐药中发挥作用,但传统方法耗时且昂贵。在这种情况下,计算方法为促进发现过程提供了一种有前景的途径。然而,大多数现有的预测模型侧重于circRNA与耐药性之间的关联,而没有考虑circRNA - 耐药性关联中相应的疾病相关信息。将疾病相关信息纳入circRNA - 耐药性关联的预测中可能会提高发现和开发circRNA靶向药物的效率和速度。我们提出了一个名为GraphCDD的计算框架,用于预测circRNA与耐药性之间的关联。我们的模型利用来自circRNA、疾病和药物三个来源的数据,分别构建代表circRNA、疾病和药物特征的三个相似性网络。我们利用多模态图神经网络通过整合各种类型的信息来获取circRNA、疾病和药物的有效表示,并建立一个预测模型。实验结果验证了我们模型的有效性,并为预测circRNA与耐药性之间的潜在关联提供了一种有前景的方法。