Shi Zhenqi, Cong Linxing, Wu Hao
IEEE J Biomed Health Inform. 2025 Aug 6;PP. doi: 10.1109/JBHI.2025.3595904.
The cell cycle plays a pivotal role in regulating cell fate and stem cell differentiation. As a rate-limiting step in differentiation, its precise regulation is essential for maintaining cellular diversity and tissue homeostasis. Recent advances in single-cell multi-omics technologies have enabled the integration of gene expression data and chromatin structural regulation, thereby enhancing the prediction of cell cycle using multi-omics approaches. However, current algorithms have yet to effectively integrate transcriptome and three-dimensional (3D) genomic data for cell cycle prediction. We propose MomicPred, an innovative dual-branch multi-modal fusion framework designed to predict cell cycle dynamics. This framework integrates transcriptome-derived gene expression data with global chromatin structural insights from 3D genome data. By leveraging the complementary nature of these multi-omics data, MomicPred extracts three core feature sets that uncover cross-layer associations and synergistic interactions between the two omics modalities, enabling high-precision cell cycle prediction. We further evaluate the framework's performance through various benchmarking strategies, demonstrating its efficiency and robustness. Furthermore, feature importance analysis reveals chromatin structural changes and key biological processes across distinct cell cycle stages, offering new perspectives for future research. MomicPred is available on GitHub at https://github.com/HaoWuLab-Bioinformatics/MomicPred.
细胞周期在调节细胞命运和干细胞分化中起着关键作用。作为分化过程中的限速步骤,其精确调控对于维持细胞多样性和组织稳态至关重要。单细胞多组学技术的最新进展使得基因表达数据和染色质结构调控得以整合,从而增强了使用多组学方法预测细胞周期的能力。然而,当前的算法尚未有效地整合转录组和三维(3D)基因组数据用于细胞周期预测。我们提出了MomicPred,这是一种创新的双分支多模态融合框架,旨在预测细胞周期动态。该框架将转录组衍生的基因表达数据与来自3D基因组数据的全局染色质结构见解相结合。通过利用这些多组学数据的互补性,MomicPred提取了三个核心特征集,揭示了两种组学模式之间的跨层关联和协同相互作用,实现了高精度的细胞周期预测。我们通过各种基准测试策略进一步评估了该框架的性能,证明了其效率和稳健性。此外,特征重要性分析揭示了不同细胞周期阶段的染色质结构变化和关键生物学过程,为未来的研究提供了新的视角。MomicPred可在GitHub上获取,网址为https://github.com/HaoWuLab-Bioinformatics/MomicPred。