Sui Jianan, Cui Weirong, Zhang Xiaoxiao, Duan Hongliang, Guo Jingjing
Centre in Artificial Intelligence Driven Drug Discovery, Faculty of Applied Sciences, Macao Polytechnic University, Macau.
College of Life Sciences, Nanjing Agricultural University, Nanjing, Jiangsu, China.
J Mol Biol. 2025 Oct 1;437(19):169360. doi: 10.1016/j.jmb.2025.169360. Epub 2025 Jul 28.
MicroRNAs (miRNAs) play pivotal roles in cellular regulation, and their dysregulation is closely linked to a wide spectrum of human diseases; thus, accurate miRNA-disease association prediction is critical for guiding experimental validation and therapeutic development. In this work, we propose RGFMDA, an innovative framework designed to predict miRNA-disease associations more effectively. RGFMDA employs a residual graph sampling and aggregation network to enhance information localization within miRNA and disease networks. It also features a nonlinear integration of features and a global context integration module that synergistically combine feature interactions and oversee global dependencies. Additionally, the framework uses triplet contrastive learning to refine the distinction between associated and non-associated miRNA-disease pairs, enhancing the accuracy of predictions. On the HMDD v2.0 benchmark, RGFMDA achieved an AUC of 0.9524, surpassing existing approaches whose reported AUC values range from approximately 0.916 to 0.942. On the HMDD v3.2 dataset, RGFMDA further improved performance with an AUC of 0.9604, exceeding state-of-the-art models that demonstrate AUCs between roughly 0.912 and 0.953. Case studies involving lung, esophageal, breast, and colorectal cancers have further confirmed the efficacy of RGFMDA. In summary, RGFMDA represents a robust and reliable computational tool for uncovering novel miRNA-disease associations, thereby facilitating future biological discovery and therapeutic development.
微小RNA(miRNA)在细胞调控中发挥着关键作用,其失调与多种人类疾病密切相关;因此,准确预测miRNA与疾病的关联对于指导实验验证和治疗方法的开发至关重要。在这项工作中,我们提出了RGFMDA,这是一个旨在更有效地预测miRNA与疾病关联的创新框架。RGFMDA采用残差图采样和聚合网络来增强miRNA和疾病网络内的信息定位。它还具有特征的非线性整合和全局上下文整合模块,该模块协同结合特征相互作用并监督全局依赖性。此外,该框架使用三元对比学习来细化相关和不相关的miRNA与疾病对之间的区分,提高预测的准确性。在HMDD v2.0基准测试中,RGFMDA的AUC达到0.9524,超过了现有方法,现有方法报告的AUC值约为0.916至0.942。在HMDD v3.2数据集上,RGFMDA进一步提高了性能,AUC为0.9604,超过了展示AUC在大约0.912至0.953之间的最先进模型。涉及肺癌、食管癌、乳腺癌和结直肠癌的案例研究进一步证实了RGFMDA的有效性。总之,RGFMDA是一种强大且可靠的计算工具,用于发现新的miRNA与疾病的关联,从而促进未来的生物学发现和治疗方法的开发。