Use of multiple singular value decompositions to analyze complex intracellular calcium ion signals
Josue G. Martinez, Jianhua Z. Huang, Robert C. Burghardt, Rola, Barhoumi, Raymond J. Carroll

TL;DR
This paper introduces novel semi-automatic methods using multiple weighted singular value decompositions to extract and analyze complex calcium ion signals from time series images of cells, addressing challenges like segmentation, data compression, saturation, and oscillation detection.
Contribution
The paper develops a new approach employing multiple weighted SVDs tailored to complex intracellular calcium imaging data for improved signal extraction and comparison.
Findings
Effective extraction of calcium signals despite saturation issues
Automated cell segmentation and data compression techniques
Enhanced comparison of calcium signals across conditions
Abstract
We compare calcium ion signaling () between two exposures; the data are present as movies, or, more prosaically, time series of images. This paper describes novel uses of singular value decompositions (SVD) and weighted versions of them (WSVD) to extract the signals from such movies, in a way that is semi-automatic and tuned closely to the actual data and their many complexities. These complexities include the following. First, the images themselves are of no interest: all interest focuses on the behavior of individual cells across time, and thus, the cells need to be segmented in an automated manner. Second, the cells themselves have 100 pixels, so that they form 100 curves measured over time, so that data compression is required to extract the features of these curves. Third, some of the pixels in some of the cells are subject to image saturation due to bit…
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