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Deep Learning-Based Automatic Duckweed Counting Using StarDist and Its Application on Measuring Growth Inhibition Potential of Rare Earth Elements as Contaminants of Emerging Concerns

In recent years, there have been efforts to utilize surface water as a power source, material, and food. However, these efforts are impeded due to the vast amounts of contaminants and emerging contaminants introduced by anthropogenic activities. Herbicides such as Glyphosate and Glufosinate are comm...

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Autores principales: Kurnia, Kevin Adi, Lin, Ying-Ting, Farhan, Ali, Malhotra, Nemi, Luong, Cao Thang, Hung, Chih-Hsin, Roldan, Marri Jmelou M., Tsao, Che-Chia, Cheng, Tai-Sheng, Hsiao, Chung-Der
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10457735/
https://www.ncbi.nlm.nih.gov/pubmed/37624185
http://dx.doi.org/10.3390/toxics11080680
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author Kurnia, Kevin Adi
Lin, Ying-Ting
Farhan, Ali
Malhotra, Nemi
Luong, Cao Thang
Hung, Chih-Hsin
Roldan, Marri Jmelou M.
Tsao, Che-Chia
Cheng, Tai-Sheng
Hsiao, Chung-Der
author_facet Kurnia, Kevin Adi
Lin, Ying-Ting
Farhan, Ali
Malhotra, Nemi
Luong, Cao Thang
Hung, Chih-Hsin
Roldan, Marri Jmelou M.
Tsao, Che-Chia
Cheng, Tai-Sheng
Hsiao, Chung-Der
author_sort Kurnia, Kevin Adi
collection PubMed
description In recent years, there have been efforts to utilize surface water as a power source, material, and food. However, these efforts are impeded due to the vast amounts of contaminants and emerging contaminants introduced by anthropogenic activities. Herbicides such as Glyphosate and Glufosinate are commonly known to contaminate surface water through agricultural industries. In contrast, some emerging contaminants, such as rare earth elements, have started to enter the surface water from the production and waste of electronic products. Duckweeds are angiosperms from the Lemnaceae family and have been used for toxicity tests in aquatic environments, mainly those from the genus Lemna, and have been approved by OECD. In this study, we used duckweed from the genus Wolffia, which is smaller and considered a good indicator of metal pollutants in the aquatic environment. The growth rate of duckweed is the most common endpoint in observing pollutant toxicity. In order to observe and mark the fronds automatically, we used StarDist, a machine learning-based tool. StarDist is available as a plugin in ImageJ, simplifying and assisting the counting process. Python also helps arrange, manage, and calculate the inhibition percentage after duckweeds are exposed to contaminants. The toxicity test results showed Dysprosium to be the most toxic, with an IC(50) value of 14.6 ppm, and Samarium as the least toxic, with an IC(50) value of 279.4 ppm. In summary, we can provide a workflow for automatic frond counting using StarDist integrated with ImageJ and Python to simplify the detection, counting, data management, and calculation process.
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spelling pubmed-104577352023-08-27 Deep Learning-Based Automatic Duckweed Counting Using StarDist and Its Application on Measuring Growth Inhibition Potential of Rare Earth Elements as Contaminants of Emerging Concerns Kurnia, Kevin Adi Lin, Ying-Ting Farhan, Ali Malhotra, Nemi Luong, Cao Thang Hung, Chih-Hsin Roldan, Marri Jmelou M. Tsao, Che-Chia Cheng, Tai-Sheng Hsiao, Chung-Der Toxics Article In recent years, there have been efforts to utilize surface water as a power source, material, and food. However, these efforts are impeded due to the vast amounts of contaminants and emerging contaminants introduced by anthropogenic activities. Herbicides such as Glyphosate and Glufosinate are commonly known to contaminate surface water through agricultural industries. In contrast, some emerging contaminants, such as rare earth elements, have started to enter the surface water from the production and waste of electronic products. Duckweeds are angiosperms from the Lemnaceae family and have been used for toxicity tests in aquatic environments, mainly those from the genus Lemna, and have been approved by OECD. In this study, we used duckweed from the genus Wolffia, which is smaller and considered a good indicator of metal pollutants in the aquatic environment. The growth rate of duckweed is the most common endpoint in observing pollutant toxicity. In order to observe and mark the fronds automatically, we used StarDist, a machine learning-based tool. StarDist is available as a plugin in ImageJ, simplifying and assisting the counting process. Python also helps arrange, manage, and calculate the inhibition percentage after duckweeds are exposed to contaminants. The toxicity test results showed Dysprosium to be the most toxic, with an IC(50) value of 14.6 ppm, and Samarium as the least toxic, with an IC(50) value of 279.4 ppm. In summary, we can provide a workflow for automatic frond counting using StarDist integrated with ImageJ and Python to simplify the detection, counting, data management, and calculation process. MDPI 2023-08-08 /pmc/articles/PMC10457735/ /pubmed/37624185 http://dx.doi.org/10.3390/toxics11080680 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Kurnia, Kevin Adi
Lin, Ying-Ting
Farhan, Ali
Malhotra, Nemi
Luong, Cao Thang
Hung, Chih-Hsin
Roldan, Marri Jmelou M.
Tsao, Che-Chia
Cheng, Tai-Sheng
Hsiao, Chung-Der
Deep Learning-Based Automatic Duckweed Counting Using StarDist and Its Application on Measuring Growth Inhibition Potential of Rare Earth Elements as Contaminants of Emerging Concerns
title Deep Learning-Based Automatic Duckweed Counting Using StarDist and Its Application on Measuring Growth Inhibition Potential of Rare Earth Elements as Contaminants of Emerging Concerns
title_full Deep Learning-Based Automatic Duckweed Counting Using StarDist and Its Application on Measuring Growth Inhibition Potential of Rare Earth Elements as Contaminants of Emerging Concerns
title_fullStr Deep Learning-Based Automatic Duckweed Counting Using StarDist and Its Application on Measuring Growth Inhibition Potential of Rare Earth Elements as Contaminants of Emerging Concerns
title_full_unstemmed Deep Learning-Based Automatic Duckweed Counting Using StarDist and Its Application on Measuring Growth Inhibition Potential of Rare Earth Elements as Contaminants of Emerging Concerns
title_short Deep Learning-Based Automatic Duckweed Counting Using StarDist and Its Application on Measuring Growth Inhibition Potential of Rare Earth Elements as Contaminants of Emerging Concerns
title_sort deep learning-based automatic duckweed counting using stardist and its application on measuring growth inhibition potential of rare earth elements as contaminants of emerging concerns
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10457735/
https://www.ncbi.nlm.nih.gov/pubmed/37624185
http://dx.doi.org/10.3390/toxics11080680
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