Development of a rapid fiber-detection system using artificial intelligence in phase-contrast microscope images of actual atmospheric samples
In this study, we attempted to detect fibers in phase contrast microscope images of actual atmospheric samples using an automatic fiber detection system based on artificial intelligence (AI) models and image processing. In order to detect and correct the release of asbestos fibers due to improper de...
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Frontiers Media S.A.
2025-06-01
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Online Access: | https://www.frontiersin.org/articles/10.3389/frans.2025.1571840/full |
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author | Yukiko Iida Takashi Yamamoto Kazuharu Iwasaki Ken-Ichi Yuki Kentaro Kiri Hayato Yamashiro Toshiyuki Toyoguchi Atsushi Terazono |
author_facet | Yukiko Iida Takashi Yamamoto Kazuharu Iwasaki Ken-Ichi Yuki Kentaro Kiri Hayato Yamashiro Toshiyuki Toyoguchi Atsushi Terazono |
author_sort | Yukiko Iida |
collection | DOAJ |
description | In this study, we attempted to detect fibers in phase contrast microscope images of actual atmospheric samples using an automatic fiber detection system based on artificial intelligence (AI) models and image processing. In order to detect and correct the release of asbestos fibers due to improper demolition and removal operations of asbestos-containing building materials as early as possible, it is essential to develop a method that can rapidly and accurately measure airborne asbestos fibers. Current rapid measurement method is the combination short-term atmospheric sampling with counting using a phase contrast microscope. However, visual fiber counting takes a reasonable amount of time and is not sufficiently rapid. Additionally, since the counting process relies on visual fiber counting, analytical accuracy can be decreased due to factors such as analyst fatigue. Ambient air samples or air samples collected near demolition sites were observed and acquired using a phase contrast microscope. From the acquired microscopic images and the fiber counting results by the expert analysts, we created a set of 98 training datasets. The Segformer, one of the semantic segmentation models that had achieved good accuracy in previous studies, was adopted as an AI model for automatic fiber detection system. Of the 98 training datasets, 77 datasets were used for training the model, and 21 datasets were used to evaluate the accuracy of the automatic fiber detection system. The achieved detection accuracy by the AI model was 0.90 for recall, 0.68 for precision, and 0.77 for F1 score. Fiber counting accuracy using an automatic fiber detection system based on AI models and image processing was 0.78 for recall, 0.67 for precision, and 0.72 for F1 score. The time required to detect fibers was about one second per image using a graphics processing unit. The counting accuracy by this automatic fiber detection system based on AI model is comparable to that of manual counting by a skilled analyst, yet the time required for fiber counting is 12–50 times faster, significantly reducing the time required for analysis. |
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issn | 2673-9283 |
language | English |
publishDate | 2025-06-01 |
publisher | Frontiers Media S.A. |
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series | Frontiers in Analytical Science |
spelling | doaj-art-a9f8f7d070fa4357ba900eb2e15c7a8a2025-06-25T04:10:20ZengFrontiers Media S.A.Frontiers in Analytical Science2673-92832025-06-01510.3389/frans.2025.15718401571840Development of a rapid fiber-detection system using artificial intelligence in phase-contrast microscope images of actual atmospheric samplesYukiko Iida0Takashi Yamamoto1Kazuharu Iwasaki2Ken-Ichi Yuki3Kentaro Kiri4Hayato Yamashiro5Toshiyuki Toyoguchi6Atsushi Terazono7Environmental Control Center Co., Ltd, Tokyo, JapanNational Institute for Environmental Studies, Ibaraki, JapanJapan NUS Co., Ltd, Tokyo, JapanEnvironmental Control Center Co., Ltd, Tokyo, JapanJapan NUS Co., Ltd, Tokyo, JapanJapan NUS Co., Ltd, Tokyo, JapanEnvironmental Control Center Co., Ltd, Tokyo, JapanNational Institute for Environmental Studies, Ibaraki, JapanIn this study, we attempted to detect fibers in phase contrast microscope images of actual atmospheric samples using an automatic fiber detection system based on artificial intelligence (AI) models and image processing. In order to detect and correct the release of asbestos fibers due to improper demolition and removal operations of asbestos-containing building materials as early as possible, it is essential to develop a method that can rapidly and accurately measure airborne asbestos fibers. Current rapid measurement method is the combination short-term atmospheric sampling with counting using a phase contrast microscope. However, visual fiber counting takes a reasonable amount of time and is not sufficiently rapid. Additionally, since the counting process relies on visual fiber counting, analytical accuracy can be decreased due to factors such as analyst fatigue. Ambient air samples or air samples collected near demolition sites were observed and acquired using a phase contrast microscope. From the acquired microscopic images and the fiber counting results by the expert analysts, we created a set of 98 training datasets. The Segformer, one of the semantic segmentation models that had achieved good accuracy in previous studies, was adopted as an AI model for automatic fiber detection system. Of the 98 training datasets, 77 datasets were used for training the model, and 21 datasets were used to evaluate the accuracy of the automatic fiber detection system. The achieved detection accuracy by the AI model was 0.90 for recall, 0.68 for precision, and 0.77 for F1 score. Fiber counting accuracy using an automatic fiber detection system based on AI models and image processing was 0.78 for recall, 0.67 for precision, and 0.72 for F1 score. The time required to detect fibers was about one second per image using a graphics processing unit. The counting accuracy by this automatic fiber detection system based on AI model is comparable to that of manual counting by a skilled analyst, yet the time required for fiber counting is 12–50 times faster, significantly reducing the time required for analysis.https://www.frontiersin.org/articles/10.3389/frans.2025.1571840/fullartificial intelligenceasbestosphase-contrast microscopyrapid detectionSegFormer |
spellingShingle | Yukiko Iida Takashi Yamamoto Kazuharu Iwasaki Ken-Ichi Yuki Kentaro Kiri Hayato Yamashiro Toshiyuki Toyoguchi Atsushi Terazono Development of a rapid fiber-detection system using artificial intelligence in phase-contrast microscope images of actual atmospheric samples Frontiers in Analytical Science artificial intelligence asbestos phase-contrast microscopy rapid detection SegFormer |
title | Development of a rapid fiber-detection system using artificial intelligence in phase-contrast microscope images of actual atmospheric samples |
title_full | Development of a rapid fiber-detection system using artificial intelligence in phase-contrast microscope images of actual atmospheric samples |
title_fullStr | Development of a rapid fiber-detection system using artificial intelligence in phase-contrast microscope images of actual atmospheric samples |
title_full_unstemmed | Development of a rapid fiber-detection system using artificial intelligence in phase-contrast microscope images of actual atmospheric samples |
title_short | Development of a rapid fiber-detection system using artificial intelligence in phase-contrast microscope images of actual atmospheric samples |
title_sort | development of a rapid fiber detection system using artificial intelligence in phase contrast microscope images of actual atmospheric samples |
topic | artificial intelligence asbestos phase-contrast microscopy rapid detection SegFormer |
url | https://www.frontiersin.org/articles/10.3389/frans.2025.1571840/full |
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