Functional identification of islet cell types by electrophysiological fingerprinting

J R Soc Interface. 2017 Mar;14(128):20160999. doi: 10.1098/rsif.2016.0999.

Abstract

The α-, β- and δ-cells of the pancreatic islet exhibit different electrophysiological features. We used a large dataset of whole-cell patch-clamp recordings from cells in intact mouse islets (N = 288 recordings) to investigate whether it is possible to reliably identify cell type (α, β or δ) based on their electrophysiological characteristics. We quantified 15 electrophysiological variables in each recorded cell. Individually, none of the variables could reliably distinguish the cell types. We therefore constructed a logistic regression model that included all quantified variables, to determine whether they could together identify cell type. The model identified cell type with 94% accuracy. This model was applied to a dataset of cells recorded from hyperglycaemic βV59M mice; it correctly identified cell type in all cells and was able to distinguish cells that co-expressed insulin and glucagon. Based on this revised functional identification, we were able to improve conductance-based models of the electrical activity in α-cells and generate a model of δ-cell electrical activity. These new models could faithfully emulate α- and δ-cell electrical activity recorded experimentally.

Keywords: conductance-based models; islet electrophysiology; logistic regression; α-cell; β-cell; δ-cell.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Animals
  • Electrophysiological Phenomena*
  • Hyperglycemia / genetics
  • Hyperglycemia / physiopathology*
  • Islets of Langerhans / physiopathology*
  • Mice
  • Mice, Knockout
  • Models, Biological*