Diagnostic performance of artificial intelligence-aided caries detection on bitewing radiographs: a systematic review and meta-analysis

被引:6
作者
Ammar, Nour [1 ,2 ]
Kuehnisch, Jan [1 ]
机构
[1] Ludwig Maximilian Univ Munich, Univ Hosp, Dept Conservat Dent & Periodontol, D-80336 Munich, Germany
[2] Alexandria Univ, Fac Dent, Dept Pediat Dent & Dent Publ Hlth, Alexandria 21257, Egypt
关键词
Dental caries; Reference standards; Diagnostic techniques and procedures; Assessment; Visual examination; Adjunct methods; TEST ACCURACY;
D O I
10.1016/j.jdsr.2024.02.001
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
The accuracy of artificial intelligence-aided (AI) caries diagnosis can vary considerably depending on numerous factors. This review aimed to assess the diagnostic accuracy of AI models for caries detection and classification on bitewing radiographs. Publications after 2010 were screened in five databases. A customized risk of bias (RoB) assessment tool was developed and applied to the 14 articles that met the inclusion criteria out of 935 references. Dataset sizes ranged from 112 to 3686 radiographs. While 86 % of the studies reported a model with an accuracy of >= 80 %, most exhibited unclear or high risk of bias. Three studies compared the model's diagnostic performance to dentists, in which the models consistently showed higher average sensitivity. Five studies were included in a bivariate diagnostic random-effects meta -analysis for overall caries detection. The diagnostic odds ratio was 55.8 (95 % CI= 28.8 - 108.3), and the summary sensitivity and specificity were 0.87 (0.76 - 0.94) and 0.89 (0.75 - 0.960), respectively. Independent meta-analyses for dentin and enamel caries detection were conducted and showed sensitivities of 0.84 (0.80 - 0.87) and 0.71 (0.66 - 0.75), respectively. Despite the promising diagnostic performance of AI models, the lack of high-quality, adequately reported, and externally validated studies highlight current challenges and future research needs.
引用
收藏
页码:128 / 136
页数:9
相关论文
共 39 条
[1]   RESEARCH AND EDUCATION Artificial intelligence in the detection and classification of dental caries [J].
Ahmed, Walaa Magdy ;
Azhari, Amr Ahmed ;
Fawaz, Khaled Ahmed ;
Ahmed, Hani M. ;
Alsadah, Zainab M. ;
Majumdar, Aritra ;
Carvalho, Ricardo Marins .
JOURNAL OF PROSTHETIC DENTISTRY, 2025, 133 (05) :1326-1332
[2]   The U-Net Approaches to Evaluation of Dental Bite-Wing Radiographs: An Artificial Intelligence Study [J].
Baydar, Oguzhan ;
Rozylo-Kalinowska, Ingrid ;
Futyma-Gabka, Karolina ;
Saglam, Hande .
DIAGNOSTICS, 2023, 13 (03)
[3]   Deep-learning approach for caries detection and segmentation on dental bitewing radiographs [J].
Bayrakdar, Ibrahim Sevki ;
Orhan, Kaan ;
Akarsu, Serdar ;
Celik, Ozer ;
Atasoy, Samet ;
Pekince, Adem ;
Yasa, Yasin ;
Bilgir, Elif ;
Saglam, Hande ;
Aslan, Ahmet Faruk ;
Odabas, Alper .
ORAL RADIOLOGY, 2022, 38 (04) :468-479
[4]   Diagnosis of interproximal caries lesions with deep convolutional neural network in digital bitewing radiographs [J].
Bayraktar, Yusuf ;
Ayan, Enes .
CLINICAL ORAL INVESTIGATIONS, 2022, 26 (01) :623-632
[5]  
Bossuyt P SR, 2013, Cochrane Rev
[6]  
Bossuyt PM, 2015, BMJ-BRIT MED J, V351, DOI [10.1148/radiol.2015151516, 10.1373/clinchem.2015.246280, 10.1136/bmj.h5527]
[7]  
Campbell JM., 2020, JBI Manual for Evidence Synthesis, DOI [10.46658/JBIMES-20-10, DOI 10.46658/JBIMES-20-10]
[8]   Detecting caries lesions of different radiographic extension on bitewings using deep learning [J].
Cantu, Anselmo Garcia ;
Gehrung, Sascha ;
Krois, Joachim ;
Chaurasia, Akhilanand ;
Rossi, Jesus Gomez ;
Gaudin, Robert ;
Elhennawy, Karim ;
Schwendicke, Falk .
JOURNAL OF DENTISTRY, 2020, 100
[9]   Detection of Proximal Caries Lesions on Bitewing Radiographs Using Deep Learning Method [J].
Chen, Xiaotong ;
Guo, Jiachang ;
Ye, Jiaxue ;
Zhang, Mingming ;
Liang, Yuhong .
CARIES RESEARCH, 2023, 56 (5-6) :455-463
[10]  
Estai M, 2022, OR SURG OR MED OR PA, V134, P262, DOI 10.1016/j.oooo.2022.03.008