College of Physics, Jilin University, Changchun 130021, China.
State Key Laboratory of Electroanalytical Chemistry, Changchun Institute of Applied Chemistry, Chinese Academy of Sciences, Changchun 130022, China.
Proc Natl Acad Sci U S A. 2024 Aug 20;121(34):e2401540121. doi: 10.1073/pnas.2401540121. Epub 2024 Aug 16.
Recent advances in single-cell sequencing technology have revolutionized our ability to acquire whole transcriptome data. However, uncovering the underlying transcriptional drivers and nonequilibrium driving forces of cell function directly from these data remains challenging. We address this by learning cell state vector fields from discrete single-cell RNA velocity to quantify the single-cell global nonequilibrium driving forces as landscape and flux. From single-cell data, we quantified the Waddington landscape, showing that optimal paths for differentiation and reprogramming deviate from the naively expected landscape gradient paths and may not pass through landscape saddles at finite fluctuations, challenging conventional transition state estimation of kinetic rate for cell fate decisions due to the presence of the flux. A key insight from our study is that stem/progenitor cells necessitate greater energy dissipation for rapid cell cycles and self-renewal, maintaining pluripotency. We predict optimal developmental pathways and elucidate the nucleation mechanism of cell fate decisions, with transition states as nucleation sites and pioneer genes as nucleation seeds. The concept of loop flux quantifies the contributions of each cycle flux to cell state transitions, facilitating the understanding of cell dynamics and thermodynamic cost, and providing insights into optimizing biological functions. We also infer cell-cell interactions and cell-type-specific gene regulatory networks, encompassing feedback mechanisms and interaction intensities, predicting genetic perturbation effects on cell fate decisions from single-cell omics data. Essentially, our methodology validates the landscape and flux theory, along with its associated quantifications, offering a framework for exploring the physical principles underlying cellular differentiation and reprogramming and broader biological processes through high-throughput single-cell sequencing experiments.
单细胞测序技术的最新进展彻底改变了我们获取全转录组数据的能力。然而,直接从这些数据中揭示细胞功能的潜在转录驱动因素和非平衡驱动力仍然具有挑战性。我们通过从离散的单细胞 RNA 速度中学习细胞状态向量场来解决这个问题,以量化作为景观和通量的单细胞全局非平衡驱动力。从单细胞数据中,我们量化了 Waddington 景观,表明分化和重编程的最优路径偏离了天真预期的景观梯度路径,并且在有限的波动下可能不会通过景观鞍点,这对由于通量的存在,对细胞命运决定的动力学速率的传统过渡状态估计提出了挑战。我们研究的一个关键见解是,干细胞/祖细胞需要更多的能量耗散来实现快速的细胞周期和自我更新,以维持多能性。我们预测最优的发育途径,并阐明细胞命运决定的成核机制,过渡状态作为成核位点,先驱基因作为成核种子。循环通量的概念量化了每个循环通量对细胞状态转变的贡献,有助于理解细胞动力学和热力学成本,并提供了优化生物功能的见解。我们还推断细胞-细胞相互作用和细胞类型特异性基因调控网络,包括反馈机制和相互作用强度,从单细胞组学数据预测遗传扰动对细胞命运决定的影响。从本质上讲,我们的方法验证了景观和通量理论及其相关的量化方法,为通过高通量单细胞测序实验探索细胞分化和重编程以及更广泛的生物学过程的物理原理提供了一个框架。