Table 1_Application and performance of artificial intelligence-based models in the detection, segmentation and classification of periapical lesions: a systematic review.docx

Background<p>Periapical lesions appear as periapical radiolucency on various imaging modalities. The accuracy of dentists in diagnosing periapical radiolucency varies significantly. Recent scientific and technological advancements have enabled the development and evaluation of artificial intel...

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Hoofdauteur: Ali Alaqla (22671818) (author)
Andere auteurs: Sanjeev B. Khanagar (22671821) (author), Alzahraa Ibrahim Albelaihi (22671824) (author), Oinam Gokulchandra Singh (22671827) (author), Abdulmohsen Alfadley (11824796) (author)
Gepubliceerd in: 2025
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_version_ 1851480880253501440
author Ali Alaqla (22671818)
author2 Sanjeev B. Khanagar (22671821)
Alzahraa Ibrahim Albelaihi (22671824)
Oinam Gokulchandra Singh (22671827)
Abdulmohsen Alfadley (11824796)
author2_role author
author
author
author
author_facet Ali Alaqla (22671818)
Sanjeev B. Khanagar (22671821)
Alzahraa Ibrahim Albelaihi (22671824)
Oinam Gokulchandra Singh (22671827)
Abdulmohsen Alfadley (11824796)
author_role author
dc.creator.none.fl_str_mv Ali Alaqla (22671818)
Sanjeev B. Khanagar (22671821)
Alzahraa Ibrahim Albelaihi (22671824)
Oinam Gokulchandra Singh (22671827)
Abdulmohsen Alfadley (11824796)
dc.date.none.fl_str_mv 2025-11-24T06:16:22Z
dc.identifier.none.fl_str_mv 10.3389/fdmed.2025.1717343.s001
dc.relation.none.fl_str_mv https://figshare.com/articles/dataset/Table_1_Application_and_performance_of_artificial_intelligence-based_models_in_the_detection_segmentation_and_classification_of_periapical_lesions_a_systematic_review_docx/30691223
dc.rights.none.fl_str_mv CC BY 4.0
info:eu-repo/semantics/openAccess
dc.subject.none.fl_str_mv Dentistry not elsewhere classified
artificial intelligence
apical
conditions
classification
detection
neural networks
periapical
lesions and segmentation
dc.title.none.fl_str_mv Table 1_Application and performance of artificial intelligence-based models in the detection, segmentation and classification of periapical lesions: a systematic review.docx
dc.type.none.fl_str_mv Dataset
info:eu-repo/semantics/publishedVersion
dataset
description Background<p>Periapical lesions appear as periapical radiolucency on various imaging modalities. The accuracy of dentists in diagnosing periapical radiolucency varies significantly. Recent scientific and technological advancements have enabled the development and evaluation of artificial intelligence (AI) systems for various diagnostic applications in dentistry.</p>Objectives<p>The aim was to report on the application and performance of AI-based models in the detection, segmentation, and classification of periapical lesions.</p>Methods and methods<p>A systematic effort for data acquisition began with an exploration of a wide range of reputable databases, including PubMed, Scopus, Embase, Cochrane, Web of Science, Google Scholar, and the Saudi Digital Library. Our comprehensive investigation spanned from 1st January 2000 to 31st March 2025.</p>Results<p>Twenty-eight articles fulfilled the eligibility criteria. Among these, 20 (71.4%) applied AI technology for automated detection, 3 (10.7%) for segmentation, 2 (7.2%) for periapical lesion detection and segmentation, and 3 (10.7%) for periapical lesion classification. Thirteen (46.5%) studies in this review utilized dental panoramic radiographs, 8 (28.5%) used intraoral radiographs (periapical and bitewing), and 7 (25%) employed CBCT scans. The AI models demonstrated an accuracy range of 70% to 99.65%, with sensitivity varying from 65% to 100% and specificity ranging from 62% to 100%. The risk of bias assessment using the QUADAS-2 tool, indicated 32.1% of the studies exhibited a significant risk of bias regarding the assessment of bias and applicability issues in the reference standard arm. While the certainty of evidence was evaluated through the GRADE approach, which indicated that the included studies demonstrated a moderate degree of evidence certainty.</p>Conclusions<p>According to the results of the studies presented, AI-based technologies hold significant potential to assist clinicians and enhance the reliability of clinical diagnoses, enabling less experienced clinicians to identify lesions with greater accuracy. However, prospective studies and randomized clinical trials are essential to evaluate the effectiveness and cost-efficiency of deep learning-based lesion detection in real clinical settings.</p>Systematic Review Registration<p>PROSPERO CRD420251011455.</p>
eu_rights_str_mv openAccess
id Manara_8d671bee61b2a4b4161b97feadc70d8e
identifier_str_mv 10.3389/fdmed.2025.1717343.s001
network_acronym_str Manara
network_name_str ManaraRepo
oai_identifier_str oai:figshare.com:article/30691223
publishDate 2025
repository.mail.fl_str_mv
repository.name.fl_str_mv
repository_id_str
rights_invalid_str_mv CC BY 4.0
spelling Table 1_Application and performance of artificial intelligence-based models in the detection, segmentation and classification of periapical lesions: a systematic review.docxAli Alaqla (22671818)Sanjeev B. Khanagar (22671821)Alzahraa Ibrahim Albelaihi (22671824)Oinam Gokulchandra Singh (22671827)Abdulmohsen Alfadley (11824796)Dentistry not elsewhere classifiedartificial intelligenceapicalconditionsclassificationdetectionneural networksperiapicallesions and segmentationBackground<p>Periapical lesions appear as periapical radiolucency on various imaging modalities. The accuracy of dentists in diagnosing periapical radiolucency varies significantly. Recent scientific and technological advancements have enabled the development and evaluation of artificial intelligence (AI) systems for various diagnostic applications in dentistry.</p>Objectives<p>The aim was to report on the application and performance of AI-based models in the detection, segmentation, and classification of periapical lesions.</p>Methods and methods<p>A systematic effort for data acquisition began with an exploration of a wide range of reputable databases, including PubMed, Scopus, Embase, Cochrane, Web of Science, Google Scholar, and the Saudi Digital Library. Our comprehensive investigation spanned from 1st January 2000 to 31st March 2025.</p>Results<p>Twenty-eight articles fulfilled the eligibility criteria. Among these, 20 (71.4%) applied AI technology for automated detection, 3 (10.7%) for segmentation, 2 (7.2%) for periapical lesion detection and segmentation, and 3 (10.7%) for periapical lesion classification. Thirteen (46.5%) studies in this review utilized dental panoramic radiographs, 8 (28.5%) used intraoral radiographs (periapical and bitewing), and 7 (25%) employed CBCT scans. The AI models demonstrated an accuracy range of 70% to 99.65%, with sensitivity varying from 65% to 100% and specificity ranging from 62% to 100%. The risk of bias assessment using the QUADAS-2 tool, indicated 32.1% of the studies exhibited a significant risk of bias regarding the assessment of bias and applicability issues in the reference standard arm. While the certainty of evidence was evaluated through the GRADE approach, which indicated that the included studies demonstrated a moderate degree of evidence certainty.</p>Conclusions<p>According to the results of the studies presented, AI-based technologies hold significant potential to assist clinicians and enhance the reliability of clinical diagnoses, enabling less experienced clinicians to identify lesions with greater accuracy. However, prospective studies and randomized clinical trials are essential to evaluate the effectiveness and cost-efficiency of deep learning-based lesion detection in real clinical settings.</p>Systematic Review Registration<p>PROSPERO CRD420251011455.</p>2025-11-24T06:16:22ZDatasetinfo:eu-repo/semantics/publishedVersiondataset10.3389/fdmed.2025.1717343.s001https://figshare.com/articles/dataset/Table_1_Application_and_performance_of_artificial_intelligence-based_models_in_the_detection_segmentation_and_classification_of_periapical_lesions_a_systematic_review_docx/30691223CC BY 4.0info:eu-repo/semantics/openAccessoai:figshare.com:article/306912232025-11-24T06:16:22Z
spellingShingle Table 1_Application and performance of artificial intelligence-based models in the detection, segmentation and classification of periapical lesions: a systematic review.docx
Ali Alaqla (22671818)
Dentistry not elsewhere classified
artificial intelligence
apical
conditions
classification
detection
neural networks
periapical
lesions and segmentation
status_str publishedVersion
title Table 1_Application and performance of artificial intelligence-based models in the detection, segmentation and classification of periapical lesions: a systematic review.docx
title_full Table 1_Application and performance of artificial intelligence-based models in the detection, segmentation and classification of periapical lesions: a systematic review.docx
title_fullStr Table 1_Application and performance of artificial intelligence-based models in the detection, segmentation and classification of periapical lesions: a systematic review.docx
title_full_unstemmed Table 1_Application and performance of artificial intelligence-based models in the detection, segmentation and classification of periapical lesions: a systematic review.docx
title_short Table 1_Application and performance of artificial intelligence-based models in the detection, segmentation and classification of periapical lesions: a systematic review.docx
title_sort Table 1_Application and performance of artificial intelligence-based models in the detection, segmentation and classification of periapical lesions: a systematic review.docx
topic Dentistry not elsewhere classified
artificial intelligence
apical
conditions
classification
detection
neural networks
periapical
lesions and segmentation