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You will know by its tail: a method for quantification of heterogeneity of bacterial populations using single cell MIC profiling

Natalia Pacocha, Marta Zapotoczna, Karol Makuch, Jakub Bogusławski, Piotr Garstecki
doi: https://doi.org/10.1101/2022.04.29.490018
Natalia Pacocha
1Institute of Physical Chemistry, Polish Academy of Sciences, Kasprzaka 44/52, 01-224 Warsaw, Poland
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Marta Zapotoczna
2Department of Molecular Microbiology, Institute of Microbiology, Faculty of Biology, Biological and Chemical Research Centre, University of Warsaw, Żwirki i Wigury 101, 02-089 Warsaw, Poland
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Karol Makuch
1Institute of Physical Chemistry, Polish Academy of Sciences, Kasprzaka 44/52, 01-224 Warsaw, Poland
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  • For correspondence: kmakuch@ichf.edu.pl garst@ichf.edu.pl
Jakub Bogusławski
3International Centre for Translational Eye Research, Institute of Physical Chemistry, Polish Academy of Sciences, Kasprzaka 44/52, 01-224 Warsaw, Poland
4Department of Physical Chemistry of Biological Systems, Institute of Physical Chemistry, Polish Academy of Sciences, Kasprzaka 44/52,01-224 Warsaw, Poland
5Laser & Fiber Electronics Group, Faculty of Electronics, Wrocław University of Science and Technology, Wybrzeze Wyspianskiego 27, 50-370 Wroclaw, Poland
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Piotr Garstecki
1Institute of Physical Chemistry, Polish Academy of Sciences, Kasprzaka 44/52, 01-224 Warsaw, Poland
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  • For correspondence: kmakuch@ichf.edu.pl garst@ichf.edu.pl
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Posted April 29, 2022.
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You will know by its tail: a method for quantification of heterogeneity of bacterial populations using single cell MIC profiling
Natalia Pacocha, Marta Zapotoczna, Karol Makuch, Jakub Bogusławski, Piotr Garstecki
bioRxiv 2022.04.29.490018; doi: https://doi.org/10.1101/2022.04.29.490018
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You will know by its tail: a method for quantification of heterogeneity of bacterial populations using single cell MIC profiling
Natalia Pacocha, Marta Zapotoczna, Karol Makuch, Jakub Bogusławski, Piotr Garstecki
bioRxiv 2022.04.29.490018; doi: https://doi.org/10.1101/2022.04.29.490018

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