Bai JianGuo, Yang Hai, Wu ChangDe
Shandong Jiaotong University, Jinan City, Shandong Province, China.
Theory Biosci. 2023 Nov;142(4):359-370. doi: 10.1007/s12064-023-00402-3. Epub 2023 Aug 30.
Methylation is an important epigenetic regulation of methylation genes that plays a crucial role in regulating biological processes. While traditional methods for detecting methylation in biological experiments are constantly improving, the development of artificial intelligence has led to the emergence of deep learning and machine learning methods as a new trend. However, traditional machine learning-based methods rely heavily on manual feature extraction, and most deep learning methods for studying methylation extract fewer features due to their simple network structures. To address this, we propose a bottomneck network based on an attention mechanism and use new methods to ensure that the deep network can learn more effective features while minimizing overfitting. This approach enables the model to learn more features from nucleotide sequences and make better predictions of methylation. The model uses three coding methods to encode the original DNA sequence and then applies feature fusion based on attention mechanisms to obtain the best fusion method. Our results demonstrate that MLACNN outperforms previous methods and achieves more satisfactory performance.
甲基化是甲基化基因的一种重要表观遗传调控,在调节生物过程中起着关键作用。虽然生物实验中检测甲基化的传统方法在不断改进,但人工智能的发展导致深度学习和机器学习方法成为一种新趋势。然而,基于传统机器学习的方法严重依赖人工特征提取,并且大多数用于研究甲基化的深度学习方法由于其简单的网络结构而提取的特征较少。为了解决这个问题,我们提出了一种基于注意力机制的瓶颈网络,并使用新方法确保深度网络能够学习更有效的特征,同时最大限度地减少过拟合。这种方法使模型能够从核苷酸序列中学习更多特征,并对甲基化做出更好的预测。该模型使用三种编码方法对原始DNA序列进行编码,然后基于注意力机制应用特征融合以获得最佳融合方法。我们的结果表明,MLACNN优于先前的方法,并取得了更令人满意的性能。