GamaComet: A Deep Learning-Based Tool for the Detection and Classification of DNA Damage from Buccal Mucosa Comet Assay Images

Comet assay is a simple and precise method to analyze DNA damage. Nowadays, many research studies have demonstrated the effectiveness of buccal mucosa cells usage in comet assays. However, several software tools do not perform well for detecting and classifying comets from a comet assay image of buc...

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Main Authors: Afiyahayati, Afiyahayati, Anarossi, Edgar, Yanuaryska, Ryna Dwi, Mulyana, Sri
Format: Article PeerReviewed
Language:English
Published: MDPI 2022
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Online Access:https://repository.ugm.ac.id/278729/1/GamaComet-A-Deep-LearningBased-Tool-for-the-Detection-and-Classification-of-DNA-Damage-from-Buccal-Mucosa-Comet-Assay-ImagesDiagnostics.pdf
https://repository.ugm.ac.id/278729/
https://www.mdpi.com/2075-4418/12/8/2002
https://doi.org/10.3390/diagnostics12082002
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spelling id-ugm-repo.2787292023-10-09T02:29:34Z https://repository.ugm.ac.id/278729/ GamaComet: A Deep Learning-Based Tool for the Detection and Classification of DNA Damage from Buccal Mucosa Comet Assay Images Afiyahayati, Afiyahayati Anarossi, Edgar Yanuaryska, Ryna Dwi Mulyana, Sri Radiology and Organ Imaging Dentistry Mathematics and Applied Sciences Comet assay is a simple and precise method to analyze DNA damage. Nowadays, many research studies have demonstrated the effectiveness of buccal mucosa cells usage in comet assays. However, several software tools do not perform well for detecting and classifying comets from a comet assay image of buccal mucosa cells because the cell has a lot more noise. Therefore, a specific software tool is required for fully automated comet detection and classification from buccal mucosa cell swabs. This research proposes a deep learning-based fully automated framework using Faster R-CNN to detect and classify comets in a comet assay image taken from buccal mucosa swab. To train the Faster R-CNN model, buccal mucosa samples were collected from 24 patients in Indonesia. We acquired 275 comet assay images containing 519 comets. Furthermore, two strategies were used to overcome the lack of dataset problems during the model training, namely transfer learning and data augmentation. We implemented the proposed Faster R-CNN model as a web-based tool, GamaComet, that can be accessed freely for academic purposes. To test the GamaComet, buccal mucosa samples were collected from seven patients in Indonesia. We acquired 43 comet assay images containing 73 comets. GamaComet can give an accuracy of 81.34% for the detection task and an accuracy of 66.67% for the classification task. Furthermore, we also compared the performance of GamaComet with an existing free software tool for comet detection, OpenComet. The experiment results showed that GamaComet performed significantly better than OpenComet that could only give an accuracy of 11.5% for the comet detection task. Downstream analysis can be well conducted based on the detection and classification results from GamaComet. The analysis showed that patients owning comet assay images containing comets with class 3 and class 4 had a smoking habit, meaning they had more cells with a high level of DNA damage. Although GamaComet had a good performance, the performance for the classification task could still be improved. Therefore, it will be one of the future works for the research development of GamaComet. MDPI 2022-08-18 Article PeerReviewed application/pdf en https://repository.ugm.ac.id/278729/1/GamaComet-A-Deep-LearningBased-Tool-for-the-Detection-and-Classification-of-DNA-Damage-from-Buccal-Mucosa-Comet-Assay-ImagesDiagnostics.pdf Afiyahayati, Afiyahayati and Anarossi, Edgar and Yanuaryska, Ryna Dwi and Mulyana, Sri (2022) GamaComet: A Deep Learning-Based Tool for the Detection and Classification of DNA Damage from Buccal Mucosa Comet Assay Images. MDPI, 12 (2002). pp. 1-19. ISSN 20754418 https://www.mdpi.com/2075-4418/12/8/2002 https://doi.org/10.3390/diagnostics12082002
institution Universitas Gadjah Mada
building UGM Library
continent Asia
country Indonesia
Indonesia
content_provider UGM Library
collection Repository Civitas UGM
language English
topic Radiology and Organ Imaging
Dentistry
Mathematics and Applied Sciences
spellingShingle Radiology and Organ Imaging
Dentistry
Mathematics and Applied Sciences
Afiyahayati, Afiyahayati
Anarossi, Edgar
Yanuaryska, Ryna Dwi
Mulyana, Sri
GamaComet: A Deep Learning-Based Tool for the Detection and Classification of DNA Damage from Buccal Mucosa Comet Assay Images
description Comet assay is a simple and precise method to analyze DNA damage. Nowadays, many research studies have demonstrated the effectiveness of buccal mucosa cells usage in comet assays. However, several software tools do not perform well for detecting and classifying comets from a comet assay image of buccal mucosa cells because the cell has a lot more noise. Therefore, a specific software tool is required for fully automated comet detection and classification from buccal mucosa cell swabs. This research proposes a deep learning-based fully automated framework using Faster R-CNN to detect and classify comets in a comet assay image taken from buccal mucosa swab. To train the Faster R-CNN model, buccal mucosa samples were collected from 24 patients in Indonesia. We acquired 275 comet assay images containing 519 comets. Furthermore, two strategies were used to overcome the lack of dataset problems during the model training, namely transfer learning and data augmentation. We implemented the proposed Faster R-CNN model as a web-based tool, GamaComet, that can be accessed freely for academic purposes. To test the GamaComet, buccal mucosa samples were collected from seven patients in Indonesia. We acquired 43 comet assay images containing 73 comets. GamaComet can give an accuracy of 81.34% for the detection task and an accuracy of 66.67% for the classification task. Furthermore, we also compared the performance of GamaComet with an existing free software tool for comet detection, OpenComet. The experiment results showed that GamaComet performed significantly better than OpenComet that could only give an accuracy of 11.5% for the comet detection task. Downstream analysis can be well conducted based on the detection and classification results from GamaComet. The analysis showed that patients owning comet assay images containing comets with class 3 and class 4 had a smoking habit, meaning they had more cells with a high level of DNA damage. Although GamaComet had a good performance, the performance for the classification task could still be improved. Therefore, it will be one of the future works for the research development of GamaComet.
format Article
PeerReviewed
author Afiyahayati, Afiyahayati
Anarossi, Edgar
Yanuaryska, Ryna Dwi
Mulyana, Sri
author_facet Afiyahayati, Afiyahayati
Anarossi, Edgar
Yanuaryska, Ryna Dwi
Mulyana, Sri
author_sort Afiyahayati, Afiyahayati
title GamaComet: A Deep Learning-Based Tool for the Detection and Classification of DNA Damage from Buccal Mucosa Comet Assay Images
title_short GamaComet: A Deep Learning-Based Tool for the Detection and Classification of DNA Damage from Buccal Mucosa Comet Assay Images
title_full GamaComet: A Deep Learning-Based Tool for the Detection and Classification of DNA Damage from Buccal Mucosa Comet Assay Images
title_fullStr GamaComet: A Deep Learning-Based Tool for the Detection and Classification of DNA Damage from Buccal Mucosa Comet Assay Images
title_full_unstemmed GamaComet: A Deep Learning-Based Tool for the Detection and Classification of DNA Damage from Buccal Mucosa Comet Assay Images
title_sort gamacomet: a deep learning-based tool for the detection and classification of dna damage from buccal mucosa comet assay images
publisher MDPI
publishDate 2022
url https://repository.ugm.ac.id/278729/1/GamaComet-A-Deep-LearningBased-Tool-for-the-Detection-and-Classification-of-DNA-Damage-from-Buccal-Mucosa-Comet-Assay-ImagesDiagnostics.pdf
https://repository.ugm.ac.id/278729/
https://www.mdpi.com/2075-4418/12/8/2002
https://doi.org/10.3390/diagnostics12082002
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