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Accuracy and consistency of grass pollen identification by human analysts using electron micrographs of surface ornamentation(1)

• Premise of the study: Humans frequently identify pollen grains at a taxonomic rank above species. Grass pollen is a classic case of this situation, which has led to the development of computational methods for identifying grass pollen species. This paper aims to provide context for these computati...

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Autores principales: Mander, Luke, Baker, Sarah J., Belcher, Claire M., Haselhorst, Derek S., Rodriguez, Jacklyn, Thorn, Jessica L., Tiwari, Shivangi, Urrego, Dunia H., Wesseln, Cassandra J., Punyasena, Surangi W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Botanical Society of America 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4141715/
https://www.ncbi.nlm.nih.gov/pubmed/25202649
http://dx.doi.org/10.3732/apps.1400031
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author Mander, Luke
Baker, Sarah J.
Belcher, Claire M.
Haselhorst, Derek S.
Rodriguez, Jacklyn
Thorn, Jessica L.
Tiwari, Shivangi
Urrego, Dunia H.
Wesseln, Cassandra J.
Punyasena, Surangi W.
author_facet Mander, Luke
Baker, Sarah J.
Belcher, Claire M.
Haselhorst, Derek S.
Rodriguez, Jacklyn
Thorn, Jessica L.
Tiwari, Shivangi
Urrego, Dunia H.
Wesseln, Cassandra J.
Punyasena, Surangi W.
author_sort Mander, Luke
collection PubMed
description • Premise of the study: Humans frequently identify pollen grains at a taxonomic rank above species. Grass pollen is a classic case of this situation, which has led to the development of computational methods for identifying grass pollen species. This paper aims to provide context for these computational methods by quantifying the accuracy and consistency of human identification. • Methods: We measured the ability of nine human analysts to identify 12 species of grass pollen using scanning electron microscopy images. These are the same images that were used in computational identifications. We have measured the coverage, accuracy, and consistency of each analyst, and investigated their ability to recognize duplicate images. • Results: Coverage ranged from 87.5% to 100%. Mean identification accuracy ranged from 46.67% to 87.5%. The identification consistency of each analyst ranged from 32.5% to 87.5%, and each of the nine analysts produced considerably different identification schemes. The proportion of duplicate image pairs that were missed ranged from 6.25% to 58.33%. • Discussion: The identification errors made by each analyst, which result in a decline in accuracy and consistency, are likely related to psychological factors such as the limited capacity of human memory, fatigue and boredom, recency effects, and positivity bias.
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spelling pubmed-41417152014-09-08 Accuracy and consistency of grass pollen identification by human analysts using electron micrographs of surface ornamentation(1) Mander, Luke Baker, Sarah J. Belcher, Claire M. Haselhorst, Derek S. Rodriguez, Jacklyn Thorn, Jessica L. Tiwari, Shivangi Urrego, Dunia H. Wesseln, Cassandra J. Punyasena, Surangi W. Appl Plant Sci Application Article • Premise of the study: Humans frequently identify pollen grains at a taxonomic rank above species. Grass pollen is a classic case of this situation, which has led to the development of computational methods for identifying grass pollen species. This paper aims to provide context for these computational methods by quantifying the accuracy and consistency of human identification. • Methods: We measured the ability of nine human analysts to identify 12 species of grass pollen using scanning electron microscopy images. These are the same images that were used in computational identifications. We have measured the coverage, accuracy, and consistency of each analyst, and investigated their ability to recognize duplicate images. • Results: Coverage ranged from 87.5% to 100%. Mean identification accuracy ranged from 46.67% to 87.5%. The identification consistency of each analyst ranged from 32.5% to 87.5%, and each of the nine analysts produced considerably different identification schemes. The proportion of duplicate image pairs that were missed ranged from 6.25% to 58.33%. • Discussion: The identification errors made by each analyst, which result in a decline in accuracy and consistency, are likely related to psychological factors such as the limited capacity of human memory, fatigue and boredom, recency effects, and positivity bias. Botanical Society of America 2014-08-12 /pmc/articles/PMC4141715/ /pubmed/25202649 http://dx.doi.org/10.3732/apps.1400031 Text en © 2014 Mander et al. Published by the Botanical Society of America http://creativecommons.org/licenses/by-nc/4.0/ This work is licensed under a Creative Commons Attribution License (CC-BY-NC-SA).
spellingShingle Application Article
Mander, Luke
Baker, Sarah J.
Belcher, Claire M.
Haselhorst, Derek S.
Rodriguez, Jacklyn
Thorn, Jessica L.
Tiwari, Shivangi
Urrego, Dunia H.
Wesseln, Cassandra J.
Punyasena, Surangi W.
Accuracy and consistency of grass pollen identification by human analysts using electron micrographs of surface ornamentation(1)
title Accuracy and consistency of grass pollen identification by human analysts using electron micrographs of surface ornamentation(1)
title_full Accuracy and consistency of grass pollen identification by human analysts using electron micrographs of surface ornamentation(1)
title_fullStr Accuracy and consistency of grass pollen identification by human analysts using electron micrographs of surface ornamentation(1)
title_full_unstemmed Accuracy and consistency of grass pollen identification by human analysts using electron micrographs of surface ornamentation(1)
title_short Accuracy and consistency of grass pollen identification by human analysts using electron micrographs of surface ornamentation(1)
title_sort accuracy and consistency of grass pollen identification by human analysts using electron micrographs of surface ornamentation(1)
topic Application Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4141715/
https://www.ncbi.nlm.nih.gov/pubmed/25202649
http://dx.doi.org/10.3732/apps.1400031
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