A Simple and Flexible Computational Framework for Inferring Sources of Heterogeneity from Single-Cell Dynamics

Cell Syst. 2019 Jan 23;8(1):15-26.e11. doi: 10.1016/j.cels.2018.12.007. Epub 2019 Jan 9.

Abstract

Single-cell time-lapse data provide the means for disentangling sources of cell-to-cell and intra-cellular variability, a key step for understanding heterogeneity in cell populations. However, single-cell analysis with dynamic models is a challenging open problem: current inference methods address only single-gene expression or neglect parameter correlations. We report on a simple, flexible, and scalable method for estimating cell-specific and population-average parameters of non-linear mixed-effects models of cellular networks, demonstrating its accuracy with a published model and dataset. We also propose sensitivity analysis for identifying which biological sub-processes quantitatively and dynamically contribute to cell-to-cell variability. Our application to endocytosis in yeast demonstrates that dynamic models of realistic size can be developed for the analysis of single-cell data and that shifting the focus from single reactions or parameters to nuanced and time-dependent contributions of sub-processes helps biological interpretation. Generality and simplicity of the approach will facilitate customized extensions for analyzing single-cell dynamics.

Keywords: cell-to-cell variability; endocytosis; network inference; non-linear mixed-effects models; systems biology; time-lapse imaging.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Humans
  • Single-Cell Analysis / methods*
  • Systems Biology / methods*