Department of Mathematics, Shanghai University, Shanghai, 200444, China.
Newtouch Center for Mathematics of Shanghai University, Shanghai, 200444, China.
J Biol Phys. 2024 Nov 14;51(1):2. doi: 10.1007/s10867-024-09665-3.
Cell fate decision is crucial in biological development and plays fundamental roles in normal development and functional maintenance of organisms. By identifying key regulatory interactions and molecules involved in these fate decisions, we can shed light on the intricate mechanisms underlying the cell fates. This understanding ultimately reveals the fundamental principles driving biological development and the origins of various diseases. In this study, we present an overarching framework which integrates pseudo-trajectory inference and differential analysis to determine critical regulatory interactions and molecules during cell fate transitions. To demonstrate feasibility and reliability of the approach, we employ the differentiation networks of hepatobiliary system and embryonic stem cells as representative model systems. By applying pseudo-trajectory inference to biological data, we aim to identify critical regulatory interactions and molecules during the cell fate transition processes. Consistent with experimental observations, the approach can allow us to infer dynamical cell fate decision processes and gain insights into the underlying mechanisms which govern cell state decisions.
细胞命运决定在生物发育中至关重要,对生物体的正常发育和功能维持起着基础性作用。通过鉴定这些命运决定中涉及的关键调控相互作用和分子,我们可以深入了解细胞命运背后的复杂机制。这种理解最终揭示了驱动生物发育的基本原理和各种疾病的起源。在这项研究中,我们提出了一个综合框架,该框架将伪轨迹推断和差异分析整合在一起,以确定细胞命运转变过程中的关键调控相互作用和分子。为了展示该方法的可行性和可靠性,我们以肝胆系统和胚胎干细胞的分化网络作为代表性模型系统。通过将伪轨迹推断应用于生物数据,我们旨在确定细胞命运转变过程中的关键调控相互作用和分子。与实验观察一致的是,该方法可以帮助我们推断动态的细胞命运决策过程,并深入了解调控细胞状态决策的潜在机制。