Literature DB >> 8026219

Neural network analysis of flow cytometric data for 40 marine phytoplankton species.

L Boddy1, C W Morris, M F Wilkins, G A Tarran, P H Burkill.   

Abstract

Flow cytometry data (time of flight, horizontal and vertical forward light scatter, 90 degrees light scatter, and "red" and "orange" integral fluorescence) were collected for laboratory cultures of 40 species of marine phytoplankton, from the following taxonomic classes, the Dinophyceae, Bacillariophyceae, Prymnesiophyceae, Cryptophyceae, and other flagellates. Single-hidden-layer "back-propagation" neural networks were trained to discriminate between species by recognising patterns in their flow cytometric signatures, and network performance was assessed using an independent test data set. Two approaches were adopted employing: (1) a hierarchy of small networks, the first identifying to which major taxonomic group a cell belonged, and then a network for that taxonomic group identified to species, and (2) a single large network. Discriminating some of the major taxonomic groups was successful but others less so. With networks for specific groups, cryptophyte species were all identified reliably (probability of correct classification always being > 0.75); in the other groups half of the species were identified reliably. With the large network, dinoflagellates, cryptomonads, and flagellates were identified almost as well as by networks specific for these groups. The application of neural computing techniques to identification of such a large number of species represents a significant advance from earlier studies, although further development is required.

Mesh:

Year:  1994        PMID: 8026219     DOI: 10.1002/cyto.990150403

Source DB:  PubMed          Journal:  Cytometry        ISSN: 0196-4763


  8 in total

1.  Identification of phytoplankton from flow cytometry data by using radial basis function neural networks.

Authors:  M F Wilkins; L Boddy; C W Morris; R R Jonker
Journal:  Appl Environ Microbiol       Date:  1999-10       Impact factor: 4.792

2.  Using a neural network with flow cytometry histograms to recognize cell surface protein binding patterns.

Authors:  Eun-Young Kim; Qing Zeng; James Rawn; Matthew Wand; Alan J Young; Edgar Milford; Steven J Mentzer; Robert A Greenes
Journal:  Proc AMIA Symp       Date:  2002

3.  Automated species identification: why not?

Authors:  Kevin J Gaston; Mark A O'Neill
Journal:  Philos Trans R Soc Lond B Biol Sci       Date:  2004-04-29       Impact factor: 6.237

Review 4.  Flow cytometry and cell sorting of heterogeneous microbial populations: the importance of single-cell analyses.

Authors:  H M Davey; D B Kell
Journal:  Microbiol Rev       Date:  1996-12

5.  Use of a microscope photometer to analyze in vivo fluorescence intensity of epilithic microalgae grown on artificial substrata.

Authors:  G Becker; H Holfeld; A T Hasselrot; D M Fiebig; D A Menzler
Journal:  Appl Environ Microbiol       Date:  1997-04       Impact factor: 4.792

6.  Combining high-throughput imaging flow cytometry and deep learning for efficient species and life-cycle stage identification of phytoplankton.

Authors:  Susanne Dunker; David Boho; Jana Wäldchen; Patrick Mäder
Journal:  BMC Ecol       Date:  2018-12-03       Impact factor: 2.964

7.  Examining the effectiveness of discriminant function analysis and cluster analysis in species identification of male field crickets based on their calling songs.

Authors:  Ranjana Jaiswara; Diptarup Nandi; Rohini Balakrishnan
Journal:  PLoS One       Date:  2013-09-25       Impact factor: 3.240

8.  Deep Learning in Label-free Cell Classification.

Authors:  Claire Lifan Chen; Ata Mahjoubfar; Li-Chia Tai; Ian K Blaby; Allen Huang; Kayvan Reza Niazi; Bahram Jalali
Journal:  Sci Rep       Date:  2016-03-15       Impact factor: 4.379

  8 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.