Literature DB >> 32803754

Pollen analysis using multispectral imaging flow cytometry and deep learning.

Susanne Dunker1,2, Elena Motivans2,3,4, Demetra Rakosy1,2, David Boho5, Patrick Mäder5, Thomas Hornick1,2, Tiffany M Knight2,3,4.   

Abstract

Pollen identification and quantification are crucial but challenging tasks in addressing a variety of evolutionary and ecological questions (pollination, paleobotany), but also for other fields of research (e.g. allergology, honey analysis or forensics). Researchers are exploring alternative methods to automate these tasks but, for several reasons, manual microscopy is still the gold standard. In this study, we present a new method for pollen analysis using multispectral imaging flow cytometry in combination with deep learning. We demonstrate that our method allows fast measurement while delivering high accuracy pollen identification. A dataset of 426 876 images depicting pollen from 35 plant species was used to train a convolutional neural network classifier. We found the best-performing classifier to yield a species-averaged accuracy of 96%. Even species that are difficult to differentiate using microscopy could be clearly separated. Our approach also allows a detailed determination of morphological pollen traits, such as size, symmetry or structure. Our phylogenetic analyses suggest phylogenetic conservatism in some of these traits. Given a comprehensive pollen reference database, we provide a powerful tool to be used in any pollen study with a need for rapid and accurate species identification, pollen grain quantification and trait extraction of recent pollen.
© 2020 The Authors New Phytologist © 2020 New Phytologist Trust.

Keywords:  convolutional neural networks; deep learning; multispectral imaging flow cytometry; pollen; pollinator; species identification

Mesh:

Year:  2020        PMID: 32803754     DOI: 10.1111/nph.16882

Source DB:  PubMed          Journal:  New Phytol        ISSN: 0028-646X            Impact factor:   10.151


  6 in total

1.  Deep learning in deep time.

Authors:  Alexander E White
Journal:  Proc Natl Acad Sci U S A       Date:  2020-11-09       Impact factor: 11.205

2.  Deep learning-based high-throughput phenotyping can drive future discoveries in plant reproductive biology.

Authors:  Cedar Warman; John E Fowler
Journal:  Plant Reprod       Date:  2021-03-16       Impact factor: 3.767

3.  Imaging Flow Cytometry as a Quick and Effective Identification Technique of Pollen Grains from Betulaceae, Oleaceae, Urticaceae and Asteraceae.

Authors:  Iwona Gierlicka; Idalia Kasprzyk; Maciej Wnuk
Journal:  Cells       Date:  2022-02-09       Impact factor: 6.600

4.  Dimensionality reduction by UMAP for visualizing and aiding in classification of imaging flow cytometry data.

Authors:  Ireneusz Stolarek; Anna Samelak-Czajka; Marek Figlerowicz; Paulina Jackowiak
Journal:  iScience       Date:  2022-09-15

5.  Deep Learning Methods for Improving Pollen Monitoring.

Authors:  Elżbieta Kubera; Agnieszka Kubik-Komar; Krystyna Piotrowska-Weryszko; Magdalena Skrzypiec
Journal:  Sensors (Basel)       Date:  2021-05-19       Impact factor: 3.576

6.  DNA metabarcoding using nrITS2 provides highly qualitative and quantitative results for airborne pollen monitoring.

Authors:  Marcel Polling; Melati Sin; Letty A de Weger; Arjen G C L Speksnijder; Mieke J F Koenders; Hugo de Boer; Barbara Gravendeel
Journal:  Sci Total Environ       Date:  2021-09-21       Impact factor: 7.963

  6 in total

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