Comprehensive Insights into Artificial Intelligence for Dental Lesion Detection: A Systematic Review

<b>Background/Objectives:</b> The growing demand for artificial intelligence (AI) in healthcare is driven by the need for more robust and automated diagnostic systems. These methods not only provide accurate diagnoses but also promise to enhance operational efficiency and optimize resour...

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Main Authors: Kubra Demir, Ozlem Sokmen, Isil Karabey Aksakalli, Kubra Torenek-Agirman
Format: Article
Language:English
Published: MDPI AG 2024-12-01
Series:Diagnostics
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Online Access:https://www.mdpi.com/2075-4418/14/23/2768
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author Kubra Demir
Ozlem Sokmen
Isil Karabey Aksakalli
Kubra Torenek-Agirman
author_facet Kubra Demir
Ozlem Sokmen
Isil Karabey Aksakalli
Kubra Torenek-Agirman
author_sort Kubra Demir
collection DOAJ
description <b>Background/Objectives:</b> The growing demand for artificial intelligence (AI) in healthcare is driven by the need for more robust and automated diagnostic systems. These methods not only provide accurate diagnoses but also promise to enhance operational efficiency and optimize resource utilization in clinical workflows. In the field of dental lesion detection, the application of deep learning models to various imaging techniques has gained significant prominence. This study presents a comprehensive systematic review of the utilization of deep learning methods for detecting dental lesions across different imaging modalities, including panoramic imaging, periapical radiographs, and cone-beam computed tomography (CBCT). A systematic search was conducted following the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines to ensure a structured and transparent review process. <b>Methods:</b> This study addresses four key research questions related to the types of objects used for AI in dental images, state-of-the-art approaches for detecting lesions in dental images, data augmentation methods, and challenges and possible solutions to the existing AI-based dental lesion detection. Furthermore, this systematic review was performed on 29 primary studies identified from multiple electronic databases. This review focused on studies published between 2019 and 2024, sourced from IEEE, Web of Knowledge, Springer, ScienceDirect, PubMed, and Google Scholar. <b>Results:</b> We identified five types of lesions in dental images as periapical lesions, cyst lesions, jawbone lesions, dental caries, and apical lesions. Among the fourteen state-of-the-art deep learning approaches, the results demonstrate that deep learning models, such as U-Net, AlexNet, and You Only Look Once (YOLO) version 8 (YOLOv8) are commonly employed for dental lesion detection. These deep learning models have the potential to serve as integral components of decision-making processes by improving detection accuracy and supporting clinical workflows. Furthermore, we found that among twelve types of data augmentation techniques, flipping, rotation, and reflection methods played an important role in increasing the diversity of the datasets. We also identified six challenges for dental lesion detection, and the main issues were identified as data integration, poor data quality, limited model generalization, and overfitting. Proposed solutions against the aforementioned challenges include the integration of larger datasets, model optimization, and diversification of data sources. <b>Conclusions:</b> This study provides a comprehensive overview of current methodologies and potential advancements in dental lesion detection using deep learning. The findings indicate that possible solutions against the challenges of AI-based diagnostic methods in dental lesion detection need to be more generalizable regardless of image type, the number of data, and data quality.
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spelling doaj-art-dbe61d5a6e704cd3b0cb7f7dd21f34c02025-08-20T01:55:34ZengMDPI AGDiagnostics2075-44182024-12-011423276810.3390/diagnostics14232768Comprehensive Insights into Artificial Intelligence for Dental Lesion Detection: A Systematic ReviewKubra Demir0Ozlem Sokmen1Isil Karabey Aksakalli2Kubra Torenek-Agirman3Department of Computer Engineering, Erzurum Technical University, 25040 Erzurum, TürkiyeDepartment of Industrial Engineering, Erzurum Technical University, 25040 Erzurum, TürkiyeDepartment of Computer Engineering, Erzurum Technical University, 25040 Erzurum, TürkiyeDepartment of Dentomaxillofacial Radiology, Ataturk University, 25240 Erzurum, Türkiye<b>Background/Objectives:</b> The growing demand for artificial intelligence (AI) in healthcare is driven by the need for more robust and automated diagnostic systems. These methods not only provide accurate diagnoses but also promise to enhance operational efficiency and optimize resource utilization in clinical workflows. In the field of dental lesion detection, the application of deep learning models to various imaging techniques has gained significant prominence. This study presents a comprehensive systematic review of the utilization of deep learning methods for detecting dental lesions across different imaging modalities, including panoramic imaging, periapical radiographs, and cone-beam computed tomography (CBCT). A systematic search was conducted following the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines to ensure a structured and transparent review process. <b>Methods:</b> This study addresses four key research questions related to the types of objects used for AI in dental images, state-of-the-art approaches for detecting lesions in dental images, data augmentation methods, and challenges and possible solutions to the existing AI-based dental lesion detection. Furthermore, this systematic review was performed on 29 primary studies identified from multiple electronic databases. This review focused on studies published between 2019 and 2024, sourced from IEEE, Web of Knowledge, Springer, ScienceDirect, PubMed, and Google Scholar. <b>Results:</b> We identified five types of lesions in dental images as periapical lesions, cyst lesions, jawbone lesions, dental caries, and apical lesions. Among the fourteen state-of-the-art deep learning approaches, the results demonstrate that deep learning models, such as U-Net, AlexNet, and You Only Look Once (YOLO) version 8 (YOLOv8) are commonly employed for dental lesion detection. These deep learning models have the potential to serve as integral components of decision-making processes by improving detection accuracy and supporting clinical workflows. Furthermore, we found that among twelve types of data augmentation techniques, flipping, rotation, and reflection methods played an important role in increasing the diversity of the datasets. We also identified six challenges for dental lesion detection, and the main issues were identified as data integration, poor data quality, limited model generalization, and overfitting. Proposed solutions against the aforementioned challenges include the integration of larger datasets, model optimization, and diversification of data sources. <b>Conclusions:</b> This study provides a comprehensive overview of current methodologies and potential advancements in dental lesion detection using deep learning. The findings indicate that possible solutions against the challenges of AI-based diagnostic methods in dental lesion detection need to be more generalizable regardless of image type, the number of data, and data quality.https://www.mdpi.com/2075-4418/14/23/2768dental lesion detectionsystematic reviewartificial intelligencechallengesproposed solutions
spellingShingle Kubra Demir
Ozlem Sokmen
Isil Karabey Aksakalli
Kubra Torenek-Agirman
Comprehensive Insights into Artificial Intelligence for Dental Lesion Detection: A Systematic Review
Diagnostics
dental lesion detection
systematic review
artificial intelligence
challenges
proposed solutions
title Comprehensive Insights into Artificial Intelligence for Dental Lesion Detection: A Systematic Review
title_full Comprehensive Insights into Artificial Intelligence for Dental Lesion Detection: A Systematic Review
title_fullStr Comprehensive Insights into Artificial Intelligence for Dental Lesion Detection: A Systematic Review
title_full_unstemmed Comprehensive Insights into Artificial Intelligence for Dental Lesion Detection: A Systematic Review
title_short Comprehensive Insights into Artificial Intelligence for Dental Lesion Detection: A Systematic Review
title_sort comprehensive insights into artificial intelligence for dental lesion detection a systematic review
topic dental lesion detection
systematic review
artificial intelligence
challenges
proposed solutions
url https://www.mdpi.com/2075-4418/14/23/2768
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AT ozlemsokmen comprehensiveinsightsintoartificialintelligencefordentallesiondetectionasystematicreview
AT isilkarabeyaksakalli comprehensiveinsightsintoartificialintelligencefordentallesiondetectionasystematicreview
AT kubratorenekagirman comprehensiveinsightsintoartificialintelligencefordentallesiondetectionasystematicreview