Deep Learning in Diagnosis of Dental Anomalies and Diseases: A Systematic Review

被引:5
|
作者
Sivari, Esra [1 ]
Senirkentli, Guler Burcu [2 ]
Bostanci, Erkan [3 ]
Guzel, Mehmet Serdar [3 ]
Acici, Koray [4 ]
Asuroglu, Tunc [5 ]
机构
[1] Cankiri Karatekin Univ, Dept Comp Engn, TR-18100 Cankiri, Turkiye
[2] Baskent Univ, Dept Pediat Dent, TR-06810 Ankara, Turkiye
[3] Ankara Univ, Dept Comp Engn, TR-06830 Ankara, Turkiye
[4] Ankara Univ, Dept Artificial Intelligence & Data Engn, TR-06830 Ankara, Turkiye
[5] Tampere Univ, Fac Med & Hlth Technol, Tampere 33720, Finland
关键词
deep learning; dental anomalies and diseases; dental diagnostics; dental images; convolutional neural network; PERIODONTAL BONE LOSS; CONVOLUTIONAL NEURAL-NETWORK; ARTIFICIAL-INTELLIGENCE; PANORAMIC RADIOGRAPHS; AUTOMATIC DETECTION; CLASSIFICATION; CARIES; TEETH; IDENTIFICATION; PERFORMANCE;
D O I
10.3390/diagnostics13152512
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Deep learning and diagnostic applications in oral and dental health have received significant attention recently. In this review, studies applying deep learning to diagnose anomalies and diseases in dental image material were systematically compiled, and their datasets, methodologies, test processes, explainable artificial intelligence methods, and findings were analyzed. Tests and results in studies involving human-artificial intelligence comparisons are discussed in detail to draw attention to the clinical importance of deep learning. In addition, the review critically evaluates the literature to guide and further develop future studies in this field. An extensive literature search was conducted for the 2019-May 2023 range using the Medline (PubMed) and Google Scholar databases to identify eligible articles, and 101 studies were shortlisted, including applications for diagnosing dental anomalies (n = 22) and diseases (n = 79) using deep learning for classification, object detection, and segmentation tasks. According to the results, the most commonly used task type was classification (n = 51), the most commonly used dental image material was panoramic radiographs (n = 55), and the most frequently used performance metric was sensitivity/recall/true positive rate (n = 87) and accuracy (n = 69). Dataset sizes ranged from 60 to 12,179 images. Although deep learning algorithms are used as individual or at least individualized architectures, standardized architectures such as pre-trained CNNs, Faster R-CNN, YOLO, and U-Net have been used in most studies. Few studies have used the explainable AI method (n = 22) and applied tests comparing human and artificial intelligence (n = 21). Deep learning is promising for better diagnosis and treatment planning in dentistry based on the high-performance results reported by the studies. For all that, their safety should be demonstrated using a more reproducible and comparable methodology, including tests with information about their clinical applicability, by defining a standard set of tests and performance metrics.
引用
收藏
页数:28
相关论文
共 50 条
  • [1] Deep learning in the diagnosis of maxillary sinus diseases: a systematic review
    Wu, Ziang
    Yu, Xinbo
    Chen, Yizhou
    Chen, Xiaojun
    Xu, Chun
    [J]. DENTOMAXILLOFACIAL RADIOLOGY, 2024, 53 (06) : 354 - 362
  • [2] Dental caries diagnosis using neural networks and deep learning: a systematic review
    Forouzeshfar, Parsa
    Safaei, Ali A.
    Ghaderi, Foad
    Kamangar, Sedighesadat Hashemi
    Kaviani, Hanieh
    Haghi, Sahebeh
    [J]. MULTIMEDIA TOOLS AND APPLICATIONS, 2024, 83 (10) : 30423 - 30466
  • [3] Dental caries diagnosis using neural networks and deep learning: a systematic review
    Parsa Forouzeshfar
    Ali A. Safaei
    Foad Ghaderi
    SedigheSadat Hashemi Kamangar
    Hanieh Kaviani
    Sahebeh Haghi
    [J]. Multimedia Tools and Applications, 2024, 83 : 30423 - 30466
  • [4] Machine learning and deep learning techniques to support clinical diagnosis of arboviral diseases: A systematic review
    da Silva Neto, Sebastiao Rogerio
    Oliveira, Thomas Tabosa
    Teixeira, Igor Vitor
    Aguiar de Oliveira, Samuel Benjamin
    Sampaio, Vanderson Souza
    Lynn, Theo
    Endo, Patricia Takako
    [J]. PLOS NEGLECTED TROPICAL DISEASES, 2022, 16 (01):
  • [5] Deep learning in wheat diseases classification: A systematic review
    Deepak Kumar
    Vinay Kukreja
    [J]. Multimedia Tools and Applications, 2022, 81 : 10143 - 10187
  • [6] Deep learning in wheat diseases classification: A systematic review
    Kumar, Deepak
    Kukreja, Vinay
    [J]. MULTIMEDIA TOOLS AND APPLICATIONS, 2022, 81 (07) : 10143 - 10187
  • [7] Deep learning in gastric tissue diseases: a systematic review
    Goncalves e Goncalves, Wanderson
    de Paula dos Santos, Marcelo Henrique
    Franca Lobato, Fabio Manoel
    Ribeiro-dos-Santos, Andrea
    de Araujo, Gilderlanio Santana
    [J]. BMJ OPEN GASTROENTEROLOGY, 2020, 7 (01):
  • [8] A systematic review of deep learning techniques for plant diseases
    Pacal, Ishak
    Kunduracioglu, Ismail
    Alma, Mehmet Hakki
    Deveci, Muhammet
    Kadry, Seifedine
    Nedoma, Jan
    Slany, Vlastimil
    Martinek, Radek
    [J]. ARTIFICIAL INTELLIGENCE REVIEW, 2024, 57 (11)
  • [9] FUNDAMENTAL PRINCIPLES OF A SYSTEMATIC DIAGNOSIS OF DENTAL ANOMALIES
    Connolly, C. J.
    [J]. AMERICAN JOURNAL OF PHYSICAL ANTHROPOLOGY, 1927, 11 (01) : 142 - 143
  • [10] Deep Learning Algorithms for Screening and Diagnosis of Systemic Diseases Based on Ophthalmic Manifestations: A Systematic Review
    Iao, Wai Cheng
    Zhang, Weixing
    Wang, Xun
    Wu, Yuxuan
    Lin, Duoru
    Lin, Haotian
    [J]. DIAGNOSTICS, 2023, 13 (05)