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Identification of public submitted tick images: A neural network approach

Ticks and tick-borne diseases represent a growing public health threat in North America and Europe. The number of ticks, their geographical distribution, and the incidence of tick-borne diseases, like Lyme disease, are all on the rise. Accurate, real-time tick-image identification through a smartpho...

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Autores principales: Justen, Lennart, Carlsmith, Duncan, Paskewitz, Susan M., Bartholomay, Lyric C., Bron, Gebbiena M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8638930/
https://www.ncbi.nlm.nih.gov/pubmed/34855822
http://dx.doi.org/10.1371/journal.pone.0260622
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author Justen, Lennart
Carlsmith, Duncan
Paskewitz, Susan M.
Bartholomay, Lyric C.
Bron, Gebbiena M.
author_facet Justen, Lennart
Carlsmith, Duncan
Paskewitz, Susan M.
Bartholomay, Lyric C.
Bron, Gebbiena M.
author_sort Justen, Lennart
collection PubMed
description Ticks and tick-borne diseases represent a growing public health threat in North America and Europe. The number of ticks, their geographical distribution, and the incidence of tick-borne diseases, like Lyme disease, are all on the rise. Accurate, real-time tick-image identification through a smartphone app or similar platform could help mitigate this threat by informing users of the risks associated with encountered ticks and by providing researchers and public health agencies with additional data on tick activity and geographic range. Here we outline the requirements for such a system, present a model that meets those requirements, and discuss remaining challenges and frontiers in automated tick identification. We compiled a user-generated dataset of more than 12,000 images of the three most common tick species found on humans in the U.S.: Amblyomma americanum, Dermacentor variabilis, and Ixodes scapularis. We used image augmentation to further increase the size of our dataset to more than 90,000 images. Here we report the development and validation of a convolutional neural network which we call “TickIDNet,” that scores an 87.8% identification accuracy across all three species, outperforming the accuracy of identifications done by a member of the general public or healthcare professionals. However, the model fails to match the performance of experts with formal entomological training. We find that image quality, particularly the size of the tick in the image (measured in pixels), plays a significant role in the network’s ability to correctly identify an image: images where the tick is small are less likely to be correctly identified because of the small object detection problem in deep learning. TickIDNet’s performance can be increased by using confidence thresholds to introduce an “unsure” class and building image submission pipelines that encourage better quality photos. Our findings suggest that deep learning represents a promising frontier for tick identification that should be further explored and deployed as part of the toolkit for addressing the public health consequences of tick-borne diseases.
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spelling pubmed-86389302021-12-03 Identification of public submitted tick images: A neural network approach Justen, Lennart Carlsmith, Duncan Paskewitz, Susan M. Bartholomay, Lyric C. Bron, Gebbiena M. PLoS One Research Article Ticks and tick-borne diseases represent a growing public health threat in North America and Europe. The number of ticks, their geographical distribution, and the incidence of tick-borne diseases, like Lyme disease, are all on the rise. Accurate, real-time tick-image identification through a smartphone app or similar platform could help mitigate this threat by informing users of the risks associated with encountered ticks and by providing researchers and public health agencies with additional data on tick activity and geographic range. Here we outline the requirements for such a system, present a model that meets those requirements, and discuss remaining challenges and frontiers in automated tick identification. We compiled a user-generated dataset of more than 12,000 images of the three most common tick species found on humans in the U.S.: Amblyomma americanum, Dermacentor variabilis, and Ixodes scapularis. We used image augmentation to further increase the size of our dataset to more than 90,000 images. Here we report the development and validation of a convolutional neural network which we call “TickIDNet,” that scores an 87.8% identification accuracy across all three species, outperforming the accuracy of identifications done by a member of the general public or healthcare professionals. However, the model fails to match the performance of experts with formal entomological training. We find that image quality, particularly the size of the tick in the image (measured in pixels), plays a significant role in the network’s ability to correctly identify an image: images where the tick is small are less likely to be correctly identified because of the small object detection problem in deep learning. TickIDNet’s performance can be increased by using confidence thresholds to introduce an “unsure” class and building image submission pipelines that encourage better quality photos. Our findings suggest that deep learning represents a promising frontier for tick identification that should be further explored and deployed as part of the toolkit for addressing the public health consequences of tick-borne diseases. Public Library of Science 2021-12-02 /pmc/articles/PMC8638930/ /pubmed/34855822 http://dx.doi.org/10.1371/journal.pone.0260622 Text en © 2021 Justen et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Justen, Lennart
Carlsmith, Duncan
Paskewitz, Susan M.
Bartholomay, Lyric C.
Bron, Gebbiena M.
Identification of public submitted tick images: A neural network approach
title Identification of public submitted tick images: A neural network approach
title_full Identification of public submitted tick images: A neural network approach
title_fullStr Identification of public submitted tick images: A neural network approach
title_full_unstemmed Identification of public submitted tick images: A neural network approach
title_short Identification of public submitted tick images: A neural network approach
title_sort identification of public submitted tick images: a neural network approach
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8638930/
https://www.ncbi.nlm.nih.gov/pubmed/34855822
http://dx.doi.org/10.1371/journal.pone.0260622
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