A high throughput machine-learning driven analysis of Ca2+ spatio-temporal maps

Cell Calcium. 2020 Nov:91:102260. doi: 10.1016/j.ceca.2020.102260. Epub 2020 Jul 28.

Abstract

High-resolution Ca2+ imaging to study cellular Ca2+ behaviors has led to the creation of large datasets with a profound need for standardized and accurate analysis. To analyze these datasets, spatio-temporal maps (STMaps) that allow for 2D visualization of Ca2+ signals as a function of time and space are often used. Methods of STMap analysis rely on a highly arduous process of user defined segmentation and event-based data retrieval. These methods are often time consuming, lack accuracy, and are extremely variable between users. We designed a novel automated machine-learning based plugin for the analysis of Ca2+ STMaps (STMapAuto). The plugin includes optimized tools for Ca2+ signal preprocessing, automated segmentation, and automated extraction of key Ca2+ event information such as duration, spatial spread, frequency, propagation angle, and intensity in a variety of cell types including the Interstitial cells of Cajal (ICC). The plugin is fully implemented in Fiji and able to accurately detect and expeditiously quantify Ca2+ transient parameters from ICC. The plugin's speed of analysis of large-datasets was 197-fold faster than the commonly used single pixel-line method of analysis. The automated machine-learning based plugin described dramatically reduces opportunities for user error and provides a consistent method to allow high-throughput analysis of STMap datasets.

Keywords: Ca(2+) Imaging analysis; Ca(2+) Signaling; Interstitial cell of cajal.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Animals
  • Automation
  • Calcium / metabolism*
  • Interstitial Cells of Cajal / metabolism
  • Machine Learning*
  • Mice, Inbred C57BL
  • Reproducibility of Results
  • Stochastic Processes
  • Time Factors

Substances

  • Calcium