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Fully Automated Computational Approach for Precisely Measuring Organelle Acidification with Optical pH Sensors

Academic Article
Publication Date:
2022
abstract:
pH balance and regulation within organelles are fundamental to cell homeostasis and proliferation. The ability to track pH in cells becomes significantly important to understand these processes in detail. Fluorescent sensors based on micro- and nanoparticles have been applied to measure intracellular pH; however, an accurate methodology to precisely monitor acidification kinetics of organelles in living cells has not been established, limiting the scope of this class of sensors. Here, silica-based fluorescent microparticles were utilized to probe the pH of intracellular organelles in MDA-MB-231 and MCF-7 breast cancer cells. In addition to the robust, ratiometric, trackable, and bioinert pH sensors, we developed a novel dimensionality reduction algorithm to automatically track and screen massive internalization events of pH sensors. We found that the mean acidification time is comparable among the two cell lines (Delta T-MCF = 16.3 min; Delta TMDA-MB-231 = 19.5 min); however, MCF-7 cells showed a much broader heterogeneity in comparison to MDA-MB-231 cells. The use of pH sensors and ratiometric imaging of living cells in combination with a novel computational approach allow analysis of thousands of events in a computationally inexpensive and faster way than the standard routes. The reported methodology can potentially be used to monitor pH as well as several other parameters associated with endocytosis.
Iris type:
01.01 Articolo in rivista
Keywords:
ratiometric pH sensors; silica microparticles; fluorescence; pH sensing; organelle acidification; microparticle tracking; data compression; automated cluster analysis
List of contributors:
Chandra, Anil; Alemanno, Francesco; Prasad, Saumya; DEL MERCATO, LORETTA LAUREANA; Gigli, Giuseppe; Rizzo, Riccardo
Authors of the University:
DEL MERCATO LORETTA LAUREANA
RIZZO RICCARDO
Handle:
https://iris.cnr.it/handle/20.500.14243/461976
Published in:
ACS APPLIED MATERIALS & INTERFACES (PRINT)
Journal
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