Periodontal Disease Detection with Machine Learning Technology From Radiographic Images : An Interdisciplinary Study Of Dentistry and Computer Science

This study aims to evaluate the effectiveness of the Convolutional Neural Network (CNN) model in identifying periodontal disease using dental images. With the applied method, the CNN model was trained using a dataset consisting of 40 dental images and tested on 55 images to evaluate its ability to...

Full description

Saved in:
Bibliographic Details
Main Authors: Yusra Fadhillah, Ade Ismail Abdul Kodir, Muhammad Noor Hasan Siregar
Format: Article
Language:English
Published: Universitas Andalas 2024-10-01
Series:CHIPSET
Subjects:
Online Access:http://chipset.fti.unand.ac.id/index.php/chipset/article/view/280
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1841551655046217728
author Yusra Fadhillah
Ade Ismail Abdul Kodir
Muhammad Noor Hasan Siregar
author_facet Yusra Fadhillah
Ade Ismail Abdul Kodir
Muhammad Noor Hasan Siregar
author_sort Yusra Fadhillah
collection DOAJ
description This study aims to evaluate the effectiveness of the Convolutional Neural Network (CNN) model in identifying periodontal disease using dental images. With the applied method, the CNN model was trained using a dataset consisting of 40 dental images and tested on 55 images to evaluate its ability to classify the images as healthy or periodontal. The evaluation results showed that the CNN model achieved an overall accuracy of 91.16%. The model precision for healthy images reached 92.39%, while the precision for unhealthy images was 91.05%. Recall sensitivity for healthy images is 91.16%, and for F1-Score images is 91.07%. The data shows that the model has better performance in identifying healthy images compared to periodontal images. To improve the performance of the model, data augmentation techniques such as rotation, flipping, and scaling were applied, which gave a slight improvement to the results. However, the limited size of the dataset seems to be an obstacle in achieving higher accuracy. Therefore, this study recommends expanding the dataset size and applying more complex model architectures or transfer learning techniques to improve detection performance. The conclusion of this study shows that CNN models have potential for periodontal disease detection, but need further development to improve accuracy and reliability. This research contributes to the development of medical detection technology and opens a path for further research in improving periodontal disease detection systems using CNN technology.
format Article
id doaj-art-ece5e6b3789c4929ab5d9b0915532792
institution Kabale University
issn 2722-4422
language English
publishDate 2024-10-01
publisher Universitas Andalas
record_format Article
series CHIPSET
spelling doaj-art-ece5e6b3789c4929ab5d9b09155327922025-01-09T15:45:57ZengUniversitas AndalasCHIPSET2722-44222024-10-0150210.25077/chipset.5.02.1-8.2024Periodontal Disease Detection with Machine Learning Technology From Radiographic Images : An Interdisciplinary Study Of Dentistry and Computer ScienceYusra Fadhillah0Ade Ismail Abdul Kodir1Muhammad Noor Hasan Siregar2Department of Engineering, Computer Science Study Program Unversity Graha Nusantara Padangsidimpuan City, IndonesiaDepartment of Periodontics, Faculty of Dentistry, Sultan Agung Islamic University, Semarang, IndonesiaDepartment of Engineering, Computer Science Study Program Unversity Graha Nusantara Padangsidimpuan City, Indonesia This study aims to evaluate the effectiveness of the Convolutional Neural Network (CNN) model in identifying periodontal disease using dental images. With the applied method, the CNN model was trained using a dataset consisting of 40 dental images and tested on 55 images to evaluate its ability to classify the images as healthy or periodontal. The evaluation results showed that the CNN model achieved an overall accuracy of 91.16%. The model precision for healthy images reached 92.39%, while the precision for unhealthy images was 91.05%. Recall sensitivity for healthy images is 91.16%, and for F1-Score images is 91.07%. The data shows that the model has better performance in identifying healthy images compared to periodontal images. To improve the performance of the model, data augmentation techniques such as rotation, flipping, and scaling were applied, which gave a slight improvement to the results. However, the limited size of the dataset seems to be an obstacle in achieving higher accuracy. Therefore, this study recommends expanding the dataset size and applying more complex model architectures or transfer learning techniques to improve detection performance. The conclusion of this study shows that CNN models have potential for periodontal disease detection, but need further development to improve accuracy and reliability. This research contributes to the development of medical detection technology and opens a path for further research in improving periodontal disease detection systems using CNN technology. http://chipset.fti.unand.ac.id/index.php/chipset/article/view/280PeriodontalMachine LearningConvolutionalNeural NetworkImage ClassificationToot Detection
spellingShingle Yusra Fadhillah
Ade Ismail Abdul Kodir
Muhammad Noor Hasan Siregar
Periodontal Disease Detection with Machine Learning Technology From Radiographic Images : An Interdisciplinary Study Of Dentistry and Computer Science
CHIPSET
Periodontal
Machine Learning
Convolutional
Neural Network
Image Classification
Toot Detection
title Periodontal Disease Detection with Machine Learning Technology From Radiographic Images : An Interdisciplinary Study Of Dentistry and Computer Science
title_full Periodontal Disease Detection with Machine Learning Technology From Radiographic Images : An Interdisciplinary Study Of Dentistry and Computer Science
title_fullStr Periodontal Disease Detection with Machine Learning Technology From Radiographic Images : An Interdisciplinary Study Of Dentistry and Computer Science
title_full_unstemmed Periodontal Disease Detection with Machine Learning Technology From Radiographic Images : An Interdisciplinary Study Of Dentistry and Computer Science
title_short Periodontal Disease Detection with Machine Learning Technology From Radiographic Images : An Interdisciplinary Study Of Dentistry and Computer Science
title_sort periodontal disease detection with machine learning technology from radiographic images an interdisciplinary study of dentistry and computer science
topic Periodontal
Machine Learning
Convolutional
Neural Network
Image Classification
Toot Detection
url http://chipset.fti.unand.ac.id/index.php/chipset/article/view/280
work_keys_str_mv AT yusrafadhillah periodontaldiseasedetectionwithmachinelearningtechnologyfromradiographicimagesaninterdisciplinarystudyofdentistryandcomputerscience
AT adeismailabdulkodir periodontaldiseasedetectionwithmachinelearningtechnologyfromradiographicimagesaninterdisciplinarystudyofdentistryandcomputerscience
AT muhammadnoorhasansiregar periodontaldiseasedetectionwithmachinelearningtechnologyfromradiographicimagesaninterdisciplinarystudyofdentistryandcomputerscience