Penalized matrix decomposition for denoising, compression, and improved demixing of functional imaging data
E. Kelly Buchanan, Ian Kinsella, Ding Zhou, Rong Zhu, Pengcheng Zhou,, Felipe Gerhard, John Ferrante, Ying Ma, Sharon Kim, Mohammed Shaik, Yajie, Liang, Rongwen Lu, Jacob Reimer, Paul Fahey, Taliah Muhammad, Graham Dempsey,, Elizabeth Hillman, Na Ji, Andreas Tolias, Liam Paninski

TL;DR
This paper introduces a scalable penalized matrix decomposition method for denoising and compressing functional imaging data, significantly improving signal quality and facilitating neural activity demixing without extensive parameter tuning.
Contribution
The authors develop a novel spatially-localized penalized matrix decomposition approach that outperforms NMF in robustness, scalability, and ease of use for various functional imaging datasets.
Findings
Achieved 2-4x SNR improvement across datasets
Obtained 20-300x data compression rates with minimal signal loss
Enhanced robustness and speed in neural activity demixing
Abstract
Calcium imaging has revolutionized systems neuroscience, providing the ability to image large neural populations with single-cell resolution. The resulting datasets are quite large, which has presented a barrier to routine open sharing of this data, slowing progress in reproducible research. State of the art methods for analyzing this data are based on non-negative matrix factorization (NMF); these approaches solve a non-convex optimization problem, and are effective when good initializations are available, but can break down in low-SNR settings where common initialization approaches fail. Here we introduce an approach to compressing and denoising functional imaging data. The method is based on a spatially-localized penalized matrix decomposition (PMD) of the data to separate (low-dimensional) signal from (temporally-uncorrelated) noise. This approach can be applied in parallel on local…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Fluorescence Microscopy Techniques · CCD and CMOS Imaging Sensors
