Comparing the accuracy of two machine learning models in detection and classification of periapical lesions using periapical radiographs

被引:1
|
作者
Viet, Do Hoang [1 ]
Son, Le Hoang [2 ]
Tuyen, Do Ngoc [2 ]
Tuan, Tran Manh [3 ]
Thang, Nguyen Phu [1 ]
Ngoc, Vo Truong Nhu [1 ]
机构
[1] Hanoi Med Univ, Sch Dent, Hanoi 100000, Vietnam
[2] Hanoi Univ Sci & Technol, Sch Informat & Commun Technol, Hanoi 100000, Vietnam
[3] Thuyloi Univ, Fac Comp Sci & Engn, Hanoi 100000, Vietnam
关键词
Deep learning; Periapical lesion; Periapical index; CNN; APICAL PERIODONTITIS; ENDODONTIC TREATMENT; PREVALENCE; POPULATION;
D O I
10.1007/s11282-024-00759-1
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
BackgroundPrevious deep learning-based studies were mainly conducted on detecting periapical lesions; limited information in classification, such as the periapical index (PAI) scoring system, is available. The study aimed to apply two deep learning models, Faster R-CNN and YOLOv4, in detecting and classifying periapical lesions using the PAI score from periapical radiographs (PR) in three different regions of the dental arch: anterior teeth, premolars, and molars.MethodsOut of 2658 PR selected for the study, 2122 PR were used for training, 268 PR were used for validation and 268 PR were used for testing. The diagnosis made by experienced dentists was used as the reference diagnosis.ResultsThe Faster R-CNN and YOLOv4 models obtained great sensitivity, specificity, accuracy, and precision for detecting periapical lesions. No clear difference in the performance of both models among these three regions was found. The true prediction of Faster R-CNN was 89%, 83.01% and 91.84% for PAI 3, PAI 4 and PAI 5 lesions, respectively. The corresponding values of YOLOv4 were 68.06%, 50.94%, and 65.31%.ConclusionsOur study demonstrated the potential of YOLOv4 and Faster R-CNN models for detecting and classifying periapical lesions based on the PAI scoring system using periapical radiographs.
引用
收藏
页码:493 / 500
页数:8
相关论文
共 50 条
  • [21] Automatic Detection of Radiographic Alveolar Bone Loss in Bitewing and Periapical Intraoral Radiographs Using Deep Learning Technology: A Preliminary Evaluation
    Alghaihab, Amjad
    Moretti, Antonio J.
    Reside, Jonathan
    Tuzova, Lyudmila
    Huang, Yiing-Shiuan
    Tyndall, Donald A.
    DIAGNOSTICS, 2025, 15 (05)
  • [22] Detection of the pathological exposure of pulp using an artificial intelligence tool: a multicentric study over periapical radiographs
    Altukroni, A.
    Alsaeedi, A.
    Gonzalez-Losada, C.
    Lee, J. H.
    Alabudh, M.
    Mirah, M.
    El-Amri, S.
    El-Deen, O. Ezz
    BMC ORAL HEALTH, 2023, 23 (01)
  • [23] Detection of the pathological exposure of pulp using an artificial intelligence tool: a multicentric study over periapical radiographs
    A. Altukroni
    A. Alsaeedi
    C. Gonzalez-Losada
    J. H. Lee
    M. Alabudh
    M. Mirah
    S. El-Amri
    O. Ezz El-Deen
    BMC Oral Health, 23
  • [24] Evaluation of the Alveolar Crest and Cemento-Enamel Junction in Periodontitis Using Object Detection on Periapical Radiographs
    Lin, Tai-Jung
    Mao, Yi-Cheng
    Lin, Yuan-Jin
    Liang, Chin-Hao
    He, Yi-Qing
    Hsu, Yun-Chen
    Chen, Shih-Lun
    Chen, Tsung-Yi
    Chen, Chiung-An
    Li, Kuo-Chen
    Abu, Patricia Angela R.
    DIAGNOSTICS, 2024, 14 (15)
  • [25] Deep learning convolutional neural network algorithms for the early detection and diagnosis of dental caries on periapical radiographs: A systematic review
    Musri, Nabilla
    Christie, Brenda
    Ichwan, Solachuddin Jauhari Arief
    Cahyanto, Arief
    IMAGING SCIENCE IN DENTISTRY, 2021, 51 (03) : 237 - 242
  • [26] Detection of Periodontal Bone Loss on Periapical Radiographs-A Diagnostic Study Using Different Convolutional Neural Networks
    Hoss, Patrick
    Meyer, Ole
    Woelfle, Uta Christine
    Wuelk, Annika
    Meusburger, Theresa
    Meier, Leon
    Hickel, Reinhard
    Gruhn, Volker
    Hesenius, Marc
    Kuehnisch, Jan
    Dujic, Helena
    JOURNAL OF CLINICAL MEDICINE, 2023, 12 (22)
  • [27] Efficacy of deep convolutional neural network algorithm for the identification and classification of dental implant systems, using panoramic and periapical radiographs A pilot study
    Lee, Jae-Hong
    Jeong, Seong-Nyum
    MEDICINE, 2020, 99 (26) : E20787
  • [28] Development and Validation of a Visually Explainable Deep Learning Model for Classification of C-shaped Canals of the Mandibular Second Molars in Periapical and Panoramic Dental Radiographs
    Yang, Sujin
    Lee, Hagyeong
    Jang, Byounghan
    Kim, Kee-Deog
    Kim, Jaeyeon
    Kim, Hwiyoung
    Park, Wonse
    JOURNAL OF ENDODONTICS, 2022, 48 (07) : 914 - 921
  • [29] Comparing two classes of end-to-end machine-learning models in lung nodule detection and classification: MTANNs vs. CNNs
    Tajbakhsh, Nima
    Suzuki, Kenji
    PATTERN RECOGNITION, 2017, 63 : 476 - 486
  • [30] VinDr-SpineXR: A Deep Learning Framework for Spinal Lesions Detection and Classification from Radiographs
    Nguyen, Hieu T.
    Pham, Hieu H.
    Nguyen, Nghia T.
    Nguyen, Ha Q.
    Huynh, Thang Q.
    Minh Dao
    Van Vu
    MEDICAL IMAGE COMPUTING AND COMPUTER ASSISTED INTERVENTION - MICCAI 2021, PT V, 2021, 12905 : 291 - 301