Topological data analysis of spatial patterning in heterogeneous cell populations: clustering and sorting with varying cell-cell adhesion.

Journal: NPJ systems biology and applications
PMID:

Abstract

Different cell types aggregate and sort into hierarchical architectures during the formation of animal tissues. The resulting spatial organization depends (in part) on the strength of adhesion of one cell type to itself relative to other cell types. However, automated and unsupervised classification of these multicellular spatial patterns remains challenging, particularly given their structural diversity and biological variability. Recent developments based on topological data analysis are intriguing to reveal similarities in tissue architecture, but these methods remain computationally expensive. In this article, we show that multicellular patterns organized from two interacting cell types can be efficiently represented through persistence images. Our optimized combination of dimensionality reduction via autoencoders, combined with hierarchical clustering, achieved high classification accuracy for simulations with constant cell numbers. We further demonstrate that persistence images can be normalized to improve classification for simulations with varying cell numbers due to proliferation. Finally, we systematically consider the importance of incorporating different topological features as well as information about each cell type to improve classification accuracy. We envision that topological machine learning based on persistence images will enable versatile and robust classification of complex tissue architectures that occur in development and disease.

Authors

  • Dhananjay Bhaskar
    School of Engineering, Brown University, Providence, RI, USA.
  • William Y Zhang
    Data Science Institute, Brown University, Providence, RI, USA.
  • Alexandria Volkening
    NSF-Simons Center for Quantitative Biology, Northwestern University, Evanston, IL 60208.
  • Björn Sandstede
    Division of Applied Mathematics, Brown University, Providence, RI 02912.
  • Ian Y Wong
    Department of Ophthalmology, The University of Hong Kong, Hong Kong SAR, China.