Jia Jianhua, Cao Xiaojing, Wei Zhangying
School of Information Engineering, Jingdezhen Ceramic University, Jingdezhen, 333403, China.
Curr Genomics. 2023 Nov 22;24(3):171-186. doi: 10.2174/0113892029270191231013111911.
N4 acetylcytidine (ac4C) is a highly conserved nucleoside modification that is essential for the regulation of immune functions in organisms. Currently, the identification of ac4C is primarily achieved using biological methods, which can be time-consuming and labor-intensive. In contrast, accurate identification of ac4C by computational methods has become a more effective method for classification and prediction.
To the best of our knowledge, although there are several computational methods for ac4C locus prediction, the performance of the models they constructed is poor, and the network structure they used is relatively simple and suffers from the disadvantage of network degradation. This study aims to improve these limitations by proposing a predictive model based on integrated deep learning to better help identify ac4C sites.
In this study, we propose a new integrated deep learning prediction framework, DLC-ac4C. First, we encode RNA sequences based on three feature encoding schemes, namely C2 encoding, nucleotide chemical property (NCP) encoding, and nucleotide density (ND) encoding. Second, one-dimensional convolutional layers and densely connected convolutional networks (DenseNet) are used to learn local features, and bi-directional long short-term memory networks (Bi-LSTM) are used to learn global features. Third, a channel attention mechanism is introduced to determine the importance of sequence characteristics. Finally, a homomorphic integration strategy is used to limit the generalization error of the model, which further improves the performance of the model.
The DLC-ac4C model performed well in terms of sensitivity (Sn), specificity (Sp), accuracy (Acc), Mathews correlation coefficient (MCC), and area under the curve (AUC) for the independent test data with 86.23%, 79.71%, 82.97%, 66.08%, and 90.42%, respectively, which was significantly better than the prediction accuracy of the existing methods.
Our model not only combines DenseNet and Bi-LSTM, but also uses the channel attention mechanism to better capture hidden information features from a sequence perspective, and can identify ac4C sites more effectively.
N4-乙酰胞苷(ac4C)是一种高度保守的核苷修饰,对生物体免疫功能的调节至关重要。目前,ac4C的鉴定主要通过生物学方法实现,这些方法可能耗时且费力。相比之下,通过计算方法准确鉴定ac4C已成为一种更有效的分类和预测方法。
据我们所知,尽管有几种用于ac4C位点预测的计算方法,但它们构建的模型性能较差,且所使用的网络结构相对简单,存在网络退化的缺点。本研究旨在通过提出一种基于集成深度学习的预测模型来改善这些局限性,以更好地帮助识别ac4C位点。
在本研究中,我们提出了一种新的集成深度学习预测框架DLC-ac4C。首先,我们基于三种特征编码方案对RNA序列进行编码,即C2编码、核苷酸化学性质(NCP)编码和核苷酸密度(ND)编码。其次,使用一维卷积层和密集连接卷积网络(DenseNet)来学习局部特征,使用双向长短期记忆网络(Bi-LSTM)来学习全局特征。第三,引入通道注意力机制来确定序列特征的重要性。最后,使用同态集成策略来限制模型的泛化误差,这进一步提高了模型的性能。
DLC-ac4C模型在独立测试数据的敏感性(Sn)、特异性(Sp)、准确性(Acc)、马修斯相关系数(MCC)和曲线下面积(AUC)方面表现良好,分别为86.23%、79.71%、82.97%、66.08%和90.42%,显著优于现有方法的预测准确性。
我们的模型不仅结合了DenseNet和Bi-LSTM,还使用通道注意力机制从序列角度更好地捕捉隐藏信息特征,能够更有效地识别ac4C位点。