PhagoStat a scalable and interpretable end to end framework for
efficient quantification of cell phagocytosis in neurodegenerative disease
studies
- URL: http://arxiv.org/abs/2304.13764v2
- Date: Wed, 13 Mar 2024 07:48:50 GMT
- Title: PhagoStat a scalable and interpretable end to end framework for
efficient quantification of cell phagocytosis in neurodegenerative disease
studies
- Authors: Mehdi Ounissi, Morwena Latouche and Daniel Racoceanu
- Abstract summary: We introduce an end-to-end, scalable, and versatile real-time framework for quantifying and analyzing phagocytic activity.
Our proposed pipeline is able to process large data-sets and includes a data quality verification module.
We apply our pipeline to analyze microglial cell phagocytosis in FTD and obtain statistically reliable results.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantifying the phagocytosis of dynamic, unstained cells is essential for
evaluating neurodegenerative diseases. However, measuring rapid cell
interactions and distinguishing cells from background make this task very
challenging when processing time-lapse phase-contrast video microscopy. In this
study, we introduce an end-to-end, scalable, and versatile real-time framework
for quantifying and analyzing phagocytic activity. Our proposed pipeline is
able to process large data-sets and includes a data quality verification module
to counteract perturbations such as microscope movements and frame blurring. We
also propose an explainable cell segmentation module to improve the
interpretability of DL methods compared to black-box algorithms. This includes
two interpretable DL capabilities: visual explanation and model simplification.
We demonstrate that interpretability in DL is not the opposite of high
performance, by additionally providing essential DL algorithm optimization
insights and solutions. Besides, incorporating interpretable modules results in
an efficient architecture design and optimized execution time. We apply our
pipeline to analyze microglial cell phagocytosis in FTD and obtain
statistically reliable results showing that FTD mutant cells are larger and
more aggressive than control cells. The method has been tested and validated on
public benchmarks by generating state-of-the art performances. To stimulate
translational approaches and future studies, we release an open-source
end-to-end pipeline and a unique microglial cells phagocytosis dataset for
immune system characterization in neurodegenerative diseases research. This
pipeline and the associated dataset will consistently crystallize future
advances in this field, promoting the development of interpretable algorithms
dedicated to the domain of neurodegenerative diseases' characterization.
github.com/ounissimehdi/PhagoStat
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