Development of image classification models for the identification of earthworms exposed to glyphosate-based herbicide: a pilot study
Autor(a) principal: | |
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Data de Publicação: | 2024 |
Outros Autores: | , , , , , |
Tipo de documento: | Artigo |
Idioma: | eng |
Título da fonte: | Repositório Científico de Acesso Aberto de Portugal (Repositórios Cientìficos) |
Texto Completo: | https://doi.org/10.48797/sl.2024.217 |
Resumo: | Background: Glyphosate-based herbicides (GBH) may threaten ecosystems and human health [1]. Animal models using earthworms as environmental bioindicators have been proposed [2], but they must be practical and cheaper [3]. Objective: We test if machine learning models of earthworm image classification can be used to identify GBH-exposed environments. Methods: 144 adults Eisenia andrei earthworms were divided into Control (water), GBH1.5, GBH3.0, and GBH6.0 groups (Roundup® Original DI, equivalent to 1.5, 3.0, and 6.0 L/ha). After 48 hours, each worm was photographed at least two times with a mobile camera (76-88 images/group). Random images were used to train models (85%) and separated for testing (15%). Also, we generated 20 artificial images (AI) variations of each original image (OI) using data augmentation techniques using imgaug library [4], reaching >1,600 images/group. Thus, we trained models six times each in Google’s Teachable Machine with 50, 20, and 10 epochs (learning rate=0.001; batch size=16) using OI with the four (OI-4G) or two groups (OI-2G, Control vs. GBH6.0), or using AI (AI-4G or AI-2G). The resulting models were tested using Python with new images, and the accuracy was compared using 2-way ANOVA, followed by Tukey's test. Results: The OI-2G model showed better accuracy when trained with 50 epochs (P=0.02), but the AI-2G model presented the best accuracy in all epochs tested (P < 0.002). In contrast, the OI-4G model presented the worst performance compared to the others (P<0.0001) (% Accuracy: OI-4G=52±5; OI-2G=77±5; AI-4G=79±3; AI-2G=93±3). When tested, AI models had lower accuracy when compared to OI models (%Accuracy: OI-4G=47; OI-2G=86; AI-4G=38; AI-2G=65). Conclusions: It is possible to detect the presence of GBH in the soil by evaluating earthworm images using machine learning models, even with small sample sizes (photos) and without images created artificially. Models need to be improved to detect the concentration of GBH. |
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Repositório Científico de Acesso Aberto de Portugal (Repositórios Cientìficos) |
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7160 |
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Development of image classification models for the identification of earthworms exposed to glyphosate-based herbicide: a pilot studyPosterBackground: Glyphosate-based herbicides (GBH) may threaten ecosystems and human health [1]. Animal models using earthworms as environmental bioindicators have been proposed [2], but they must be practical and cheaper [3]. Objective: We test if machine learning models of earthworm image classification can be used to identify GBH-exposed environments. Methods: 144 adults Eisenia andrei earthworms were divided into Control (water), GBH1.5, GBH3.0, and GBH6.0 groups (Roundup® Original DI, equivalent to 1.5, 3.0, and 6.0 L/ha). After 48 hours, each worm was photographed at least two times with a mobile camera (76-88 images/group). Random images were used to train models (85%) and separated for testing (15%). Also, we generated 20 artificial images (AI) variations of each original image (OI) using data augmentation techniques using imgaug library [4], reaching >1,600 images/group. Thus, we trained models six times each in Google’s Teachable Machine with 50, 20, and 10 epochs (learning rate=0.001; batch size=16) using OI with the four (OI-4G) or two groups (OI-2G, Control vs. GBH6.0), or using AI (AI-4G or AI-2G). The resulting models were tested using Python with new images, and the accuracy was compared using 2-way ANOVA, followed by Tukey's test. Results: The OI-2G model showed better accuracy when trained with 50 epochs (P=0.02), but the AI-2G model presented the best accuracy in all epochs tested (P < 0.002). In contrast, the OI-4G model presented the worst performance compared to the others (P<0.0001) (% Accuracy: OI-4G=52±5; OI-2G=77±5; AI-4G=79±3; AI-2G=93±3). When tested, AI models had lower accuracy when compared to OI models (%Accuracy: OI-4G=47; OI-2G=86; AI-4G=38; AI-2G=65). Conclusions: It is possible to detect the presence of GBH in the soil by evaluating earthworm images using machine learning models, even with small sample sizes (photos) and without images created artificially. Models need to be improved to detect the concentration of GBH.IUCS-CESPU Publishing2024-05-01info:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/articleapplication/pdfhttps://doi.org/10.48797/sl.2024.217https://doi.org/10.48797/sl.2024.217Scientific Letters; Vol. 1 No. Sup 1 (2024)2795-5117reponame:Repositório Científico de Acesso Aberto de Portugal (Repositórios Cientìficos)instname:Agência para a Sociedade do Conhecimento (UMIC) - FCT - Sociedade da Informaçãoinstacron:RCAAPenghttps://publicacoes.cespu.pt/index.php/sl/article/view/217https://publicacoes.cespu.pt/index.php/sl/article/view/217/227Copyright (c) 2024 Diovana Gelati de Batista, Juliana Furlanetto Pinheiro, Isadora Sulzbacher Ourique, Vítor Basto Fernandes, Rafael Z. Frantz, Nuno Costa, Thiago Gomes Heckinfo:eu-repo/semantics/openAccessde Batista, Diovana GelatiPinheiro, Juliana FurlanettoOurique, Isadora SulzbacherFernandes, Vítor BastoFrantz, Rafael Z.Costa, NunoHeck, Thiago Gomes2024-05-04T08:47:13Zoai:publicacoes.cespu.pt:article/217Portal AgregadorONGhttps://www.rcaap.pt/oai/openairemluisa.alvim@gmail.comopendoar:71602024-05-04T08:47:13Repositório Científico de Acesso Aberto de Portugal (Repositórios Cientìficos) - Agência para a Sociedade do Conhecimento (UMIC) - FCT - Sociedade da Informaçãofalse |
dc.title.none.fl_str_mv |
Development of image classification models for the identification of earthworms exposed to glyphosate-based herbicide: a pilot study |
title |
Development of image classification models for the identification of earthworms exposed to glyphosate-based herbicide: a pilot study |
spellingShingle |
Development of image classification models for the identification of earthworms exposed to glyphosate-based herbicide: a pilot study de Batista, Diovana Gelati Poster |
title_short |
Development of image classification models for the identification of earthworms exposed to glyphosate-based herbicide: a pilot study |
title_full |
Development of image classification models for the identification of earthworms exposed to glyphosate-based herbicide: a pilot study |
title_fullStr |
Development of image classification models for the identification of earthworms exposed to glyphosate-based herbicide: a pilot study |
title_full_unstemmed |
Development of image classification models for the identification of earthworms exposed to glyphosate-based herbicide: a pilot study |
title_sort |
Development of image classification models for the identification of earthworms exposed to glyphosate-based herbicide: a pilot study |
author |
de Batista, Diovana Gelati |
author_facet |
de Batista, Diovana Gelati Pinheiro, Juliana Furlanetto Ourique, Isadora Sulzbacher Fernandes, Vítor Basto Frantz, Rafael Z. Costa, Nuno Heck, Thiago Gomes |
author_role |
author |
author2 |
Pinheiro, Juliana Furlanetto Ourique, Isadora Sulzbacher Fernandes, Vítor Basto Frantz, Rafael Z. Costa, Nuno Heck, Thiago Gomes |
author2_role |
author author author author author author |
dc.contributor.author.fl_str_mv |
de Batista, Diovana Gelati Pinheiro, Juliana Furlanetto Ourique, Isadora Sulzbacher Fernandes, Vítor Basto Frantz, Rafael Z. Costa, Nuno Heck, Thiago Gomes |
dc.subject.por.fl_str_mv |
Poster |
topic |
Poster |
description |
Background: Glyphosate-based herbicides (GBH) may threaten ecosystems and human health [1]. Animal models using earthworms as environmental bioindicators have been proposed [2], but they must be practical and cheaper [3]. Objective: We test if machine learning models of earthworm image classification can be used to identify GBH-exposed environments. Methods: 144 adults Eisenia andrei earthworms were divided into Control (water), GBH1.5, GBH3.0, and GBH6.0 groups (Roundup® Original DI, equivalent to 1.5, 3.0, and 6.0 L/ha). After 48 hours, each worm was photographed at least two times with a mobile camera (76-88 images/group). Random images were used to train models (85%) and separated for testing (15%). Also, we generated 20 artificial images (AI) variations of each original image (OI) using data augmentation techniques using imgaug library [4], reaching >1,600 images/group. Thus, we trained models six times each in Google’s Teachable Machine with 50, 20, and 10 epochs (learning rate=0.001; batch size=16) using OI with the four (OI-4G) or two groups (OI-2G, Control vs. GBH6.0), or using AI (AI-4G or AI-2G). The resulting models were tested using Python with new images, and the accuracy was compared using 2-way ANOVA, followed by Tukey's test. Results: The OI-2G model showed better accuracy when trained with 50 epochs (P=0.02), but the AI-2G model presented the best accuracy in all epochs tested (P < 0.002). In contrast, the OI-4G model presented the worst performance compared to the others (P<0.0001) (% Accuracy: OI-4G=52±5; OI-2G=77±5; AI-4G=79±3; AI-2G=93±3). When tested, AI models had lower accuracy when compared to OI models (%Accuracy: OI-4G=47; OI-2G=86; AI-4G=38; AI-2G=65). Conclusions: It is possible to detect the presence of GBH in the soil by evaluating earthworm images using machine learning models, even with small sample sizes (photos) and without images created artificially. Models need to be improved to detect the concentration of GBH. |
publishDate |
2024 |
dc.date.none.fl_str_mv |
2024-05-01 |
dc.type.status.fl_str_mv |
info:eu-repo/semantics/publishedVersion |
dc.type.driver.fl_str_mv |
info:eu-repo/semantics/article |
format |
article |
status_str |
publishedVersion |
dc.identifier.uri.fl_str_mv |
https://doi.org/10.48797/sl.2024.217 https://doi.org/10.48797/sl.2024.217 |
url |
https://doi.org/10.48797/sl.2024.217 |
dc.language.iso.fl_str_mv |
eng |
language |
eng |
dc.relation.none.fl_str_mv |
https://publicacoes.cespu.pt/index.php/sl/article/view/217 https://publicacoes.cespu.pt/index.php/sl/article/view/217/227 |
dc.rights.driver.fl_str_mv |
info:eu-repo/semantics/openAccess |
eu_rights_str_mv |
openAccess |
dc.format.none.fl_str_mv |
application/pdf |
dc.publisher.none.fl_str_mv |
IUCS-CESPU Publishing |
publisher.none.fl_str_mv |
IUCS-CESPU Publishing |
dc.source.none.fl_str_mv |
Scientific Letters; Vol. 1 No. Sup 1 (2024) 2795-5117 reponame:Repositório Científico de Acesso Aberto de Portugal (Repositórios Cientìficos) instname:Agência para a Sociedade do Conhecimento (UMIC) - FCT - Sociedade da Informação instacron:RCAAP |
instname_str |
Agência para a Sociedade do Conhecimento (UMIC) - FCT - Sociedade da Informação |
instacron_str |
RCAAP |
institution |
RCAAP |
reponame_str |
Repositório Científico de Acesso Aberto de Portugal (Repositórios Cientìficos) |
collection |
Repositório Científico de Acesso Aberto de Portugal (Repositórios Cientìficos) |
repository.name.fl_str_mv |
Repositório Científico de Acesso Aberto de Portugal (Repositórios Cientìficos) - Agência para a Sociedade do Conhecimento (UMIC) - FCT - Sociedade da Informação |
repository.mail.fl_str_mv |
mluisa.alvim@gmail.com |
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1817543357503635456 |