Tools for Quantitative Analysis of Calcium Signaling Data Using Jupyter-Lab Notebooks

bioRxiv [Preprint]. 2023 Jun 14:2023.06.13.544740. doi: 10.1101/2023.06.13.544740.

Abstract

Calcium signaling data analysis has become increasing complex as the size of acquired datasets increases. In this paper we present a Ca2+ signaling data analysis method that employs custom written software scripts deployed in a collection of Jupyter-Lab "notebooks" which were designed to cope with this complexity. The notebook contents are organized to optimize data analysis workflow and efficiency. The method is demonstrated through application to several different Ca2+ signaling experiment types.

Keywords: Calcium signaling; Jupyter-Lab; Python; multiphoton microscopy.

Publication types

  • Preprint