Quantifying cancer cell plasticity with gene regulatory networks and single-cell dynamics

Front Netw Physiol. 2023 Sep 4:3:1225736. doi: 10.3389/fnetp.2023.1225736. eCollection 2023.

Abstract

Phenotypic plasticity of cancer cells can lead to complex cell state dynamics during tumor progression and acquired resistance. Highly plastic stem-like states may be inherently drug-resistant. Moreover, cell state dynamics in response to therapy allow a tumor to evade treatment. In both scenarios, quantifying plasticity is essential for identifying high-plasticity states or elucidating transition paths between states. Currently, methods to quantify plasticity tend to focus on 1) quantification of quasi-potential based on the underlying gene regulatory network dynamics of the system; or 2) inference of cell potency based on trajectory inference or lineage tracing in single-cell dynamics. Here, we explore both of these approaches and associated computational tools. We then discuss implications of each approach to plasticity metrics, and relevance to cancer treatment strategies.

Keywords: ScRNA-seq; cancer; dynamical systems; gene regulatory networks; network physiology; plasticity.

Publication types

  • Review