Yu Chang-Qing, Jiang Chen, Wang Lei, You Zhu-Hong, Wang Xin-Fei, Wei Meng-Meng, Shi Tai-Long, Liang Si-Zhe
School of Information Engineering, Xijing Univerity, Xi'an, 710123, China.
Guangxi Key Lab of Human-Machine Interaction and Intelligent Decision, Guangxi Academy of Science, Nanning, 530007, China.
BMC Biol. 2025 Jun 9;23(1):162. doi: 10.1186/s12915-025-02260-5.
Increasing research indicates that the complex interactions between circular RNAs (circRNAs) and microRNAs (miRNAs) are critical for diagnosing and treating various human diseases. Consequently, accurately predicting potential circRNA-miRNA interactions (CMIs) has become increasingly important and urgent. Traditional biological experiments, however, are often labor-intensive, time-consuming, and prone to external influences.
To tackle this challenge, we present a novel model, iHofman, designed to predict CMIs by integrating high-order and low-order features with weighted attention mechanisms. Specifically, we first extract sequence and structural information representations using FastText and GraRep, respectively, and capture high-order and low-order features from sequence information representations using stacked autoencoders. Subsequently, weighted attention mechanisms are applied for feature fusion, focusing on the most relevant information. Finally, multi-layer perceptron is employed to accurately infer potential CMIs. In the fivefold cross-validation (CV) experiment on the baseline dataset, iHofman achieved an accuracy of 82.49% with an AUC of 0.9092. iHofman also demonstrates solid performance on other CMI datasets. In case studies, 26 of the top 30 CMIs with the highest iHofman predictive scores were confirmed in relevant literature.
The above experimental results indicate that iHofman can effectively predict potential CMIs and has achieved outstanding performance compared with existing methods. It provides a reliable supplementary approach for subsequent biological wet experiments.
越来越多的研究表明,环状RNA(circRNA)与微小RNA(miRNA)之间的复杂相互作用对于各种人类疾病的诊断和治疗至关重要。因此,准确预测潜在的circRNA-miRNA相互作用(CMI)变得越来越重要和紧迫。然而,传统的生物学实验往往劳动强度大、耗时且容易受到外部影响。
为应对这一挑战,我们提出了一种新颖的模型iHofman,旨在通过将高阶和低阶特征与加权注意力机制相结合来预测CMI。具体而言,我们首先分别使用FastText和GraRep提取序列和结构信息表示,并使用堆叠自动编码器从序列信息表示中捕获高阶和低阶特征。随后,应用加权注意力机制进行特征融合,聚焦于最相关的信息。最后,采用多层感知器来准确推断潜在的CMI。在基线数据集的五折交叉验证(CV)实验中,iHofman的准确率达到82.49%,AUC为0.9092。iHofman在其他CMI数据集上也表现出稳健的性能。在案例研究中,iHofman预测得分最高的前30个CMI中有26个在相关文献中得到了证实。
上述实验结果表明,iHofman能够有效地预测潜在的CMI,与现有方法相比取得了优异的性能。它为后续的生物学湿实验提供了一种可靠的补充方法。