Department of Systems Biology, Harvard Medical School, Boston, MA 02115.
Department of Molecular, Cell, and Cancer Biology, University of Massachusetts Medical School, Worcester, MA 01605.
Proc Natl Acad Sci U S A. 2018 Mar 6;115(10):E2467-E2476. doi: 10.1073/pnas.1714723115. Epub 2018 Feb 20.
Single-cell expression profiling reveals the molecular states of individual cells with unprecedented detail. Because these methods destroy cells in the process of analysis, they cannot measure how gene expression changes over time. However, some information on dynamics is present in the data: the continuum of molecular states in the population can reflect the trajectory of a typical cell. Many methods for extracting single-cell dynamics from population data have been proposed. However, all such attempts face a common limitation: for any measured distribution of cell states, there are multiple dynamics that could give rise to it, and by extension, multiple possibilities for underlying mechanisms of gene regulation. Here, we describe the aspects of gene expression dynamics that cannot be inferred from a static snapshot alone and identify assumptions necessary to constrain a unique solution for cell dynamics from static snapshots. We translate these constraints into a practical algorithmic approach, population balance analysis (PBA), which makes use of a method from spectral graph theory to solve a class of high-dimensional differential equations. We use simulations to show the strengths and limitations of PBA, and then apply it to single-cell profiles of hematopoietic progenitor cells (HPCs). Cell state predictions from this analysis agree with HPC fate assays reported in several papers over the past two decades. By highlighting the fundamental limits on dynamic inference faced by any method, our framework provides a rigorous basis for dynamic interpretation of a gene expression continuum and clarifies best experimental designs for trajectory reconstruction from static snapshot measurements.
单细胞表达谱分析以空前的细节揭示了单个细胞的分子状态。由于这些方法在分析过程中会破坏细胞,因此它们无法测量基因表达随时间的变化。然而,在数据中存在一些动态信息:群体中连续的分子状态可以反映典型细胞的轨迹。已经提出了许多从群体数据中提取单细胞动力学的方法。然而,所有这些尝试都面临着一个共同的限制:对于任何测量的细胞状态分布,都有多种动力学可以产生它,并且可以扩展到基因调控的潜在机制的多种可能性。在这里,我们描述了仅从静态快照无法推断出的基因表达动力学方面,并确定了从静态快照约束细胞动力学唯一解所需的假设。我们将这些约束转化为一种实用的算法方法,即群体平衡分析 (PBA),它利用谱图理论中的一种方法来求解一类高维微分方程。我们使用模拟来展示 PBA 的优缺点,然后将其应用于造血祖细胞 (HPC) 的单细胞图谱。该分析的细胞状态预测与过去二十年中几篇论文中报道的 HPC 命运测定结果一致。通过突出任何方法在动态推断方面面临的基本限制,我们的框架为基因表达连续体的动态解释提供了严格的基础,并阐明了从静态快照测量重建轨迹的最佳实验设计。