Wang Junfeng, Cheng Kuikui, Yan Chaokun, Luo Huimin, Luo Junwei
School of Physics and Electronic Information Engineering, Henan Polytechnic University, Jiaozuo, 454003, China.
School of Software, Henan Polytechnic University, Jiaozuo, 454003, China.
BMC Bioinformatics. 2025 Apr 1;26(1):96. doi: 10.1186/s12859-025-06092-6.
Chromatin loops are critical for the three-dimensional organization of the genome and gene regulation. Accurate identification of chromatin loops is essential for understanding the regulatory mechanisms in disease. However, current mainstream detection methods rely primarily on single-source data, such as Hi-C, which limits these methods' ability to capture the diverse features of chromatin loop structures. In contrast, multi-source data integration and deep learning approaches, though not yet widely applied, hold significant potential.
In this study, we developed a method called DconnLoop to integrate Hi-C, ChIP-seq, and ATAC-seq data to predict chromatin loops. This method achieves feature extraction and fusion of multi-source data by integrating residual mechanisms, directional connectivity excitation modules, and interactive feature space decoders. Finally, we apply density estimation and density clustering to the genome-wide prediction results to identify more representative loops. The code is available from https://github.com/kuikui-C/DconnLoop .
The results demonstrate that DconnLoop outperforms existing methods in both precision and recall. In various experiments, including Aggregate Peak Analysis and peak enrichment comparisons, DconnLoop consistently shows advantages. Extensive ablation studies and validation across different sequencing depths further confirm DconnLoop's robustness and generalizability.
染色质环对于基因组的三维组织和基因调控至关重要。准确识别染色质环对于理解疾病的调控机制至关重要。然而,当前的主流检测方法主要依赖单一来源的数据,如Hi-C,这限制了这些方法捕捉染色质环结构多样特征的能力。相比之下,多源数据整合和深度学习方法虽然尚未广泛应用,但具有巨大潜力。
在本研究中,我们开发了一种名为DconnLoop的方法,用于整合Hi-C、ChIP-seq和ATAC-seq数据以预测染色质环。该方法通过整合残差机制、方向连通性激发模块和交互式特征空间解码器来实现多源数据的特征提取和融合。最后,我们对全基因组预测结果应用密度估计和密度聚类,以识别更具代表性的环。代码可从https://github.com/kuikui-C/DconnLoop获取。
结果表明,DconnLoop在精度和召回率方面均优于现有方法。在包括聚集峰分析和峰富集比较在内的各种实验中,DconnLoop始终表现出优势。广泛的消融研究和不同测序深度的验证进一步证实了DconnLoop的稳健性和通用性。