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Imaging Flow Cytometry As a Quick and Effective Identification Technique of Pollen Grains from , , and

Overview
Journal Cells
Publisher MDPI
Date 2022 Feb 25
PMID 35203248
Authors
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Abstract

Despite the continuous and intensive development of laboratory techniques, a light microscope is still the most common tool used in pollen grains differentiation. However, microscopy is time-consuming and needs well-educated and experienced researchers. Other currently used techniques can be categorised as images and non-images analysis, but each has certain limitations. We propose a new approach to differentiate pollen grains using the Imaging Flow Cytometry (IFC) technique. It allows for high-throughput fluorescence data recording, which, in contrast to the standard FC, also enables real-time control of the results thanks to the possibility of digital image recording of cells flowing through the measuring capillary. The developed method allows us to determine the characteristics of the pollen grains population based on the obtained fluorescence data, using various combinations of parameters available in the IDEAS software, which can be analysed on different fluorescence channels. On this basis, we distinguished pollen grains both between and within different genera belonging to the , , and families. Thereby, we prove that the proposed methodology is sufficient for accurate, fast, and cost-effective identification and potentially can be used in the routine analysis of allergenic pollen grains.

Citing Articles

An Analysis of Longan Honey from Taiwan and Thailand Using Flow Cytometry and Physicochemical Analysis.

Kafle L, Mabuza T Foods. 2024; 13(23).

PMID: 39682844 PMC: 11640696. DOI: 10.3390/foods13233772.

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