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      VGG-16 딥러닝 알고리즘을 활용한 우식치아와 건전치아 분류 = Evaluation of VGG-16 deep learning algorithm for dental caries classification

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      https://www.riss.kr/link?id=A107963472

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      다국어 초록 (Multilingual Abstract)

      Objectives: Diagnosis of dental caries is based on the dentist’s observation and subjective judgment; therefore, a reliable and objective approach for diagnosing caries is required. Intraoral camera images combined with deep learning technology can ...

      Objectives: Diagnosis of dental caries is based on the dentist’s observation and subjective judgment; therefore, a reliable and objective approach for diagnosing caries is required. Intraoral camera images combined with deep learning technology can be a useful tool to diagnose caries. This study aimed to evaluate the accuracy of the VGG-16 convolutional neural network (CNN) model in detecting dental caries in intraoral camera images.
      Methods: Images were obtained from the Internet and websites using keywords linked to teeth and dental caries. The 670 images that were obtained were categorized by an investigator as either sound (404 sound teeth) or dental caries (266 dental caries), and used in this study. The training and test datasets were divided in the ratio of 7:3 and a four-fold cross validation was performed. The Tensorflow-based Python package Keras was used to train and validate the CNN model. Accuracy, Kappa value, sensitivity, specificity, positive predictive value, negative predictive value, ROC (receiver operating characteristic) curve and AUC (area under curve) values were calculated for the test datasets.
      Results: The accuracy of the VGG-16 deep learning model for the four datasets, through random sampling, was between 0.77 and 0.81, with 0.81 being the highest. The Kappa value was 0.51- 0.60, indicating moderate agreement. The resulting positive predictive values were 0.77-0.82 and negative predictive values were 0.80-0.85. Sensitivity, specificity, and AUC values were 0.66-0.74, 0.81-0.88, and 0.88-0.91, respectively.
      Conclusions: The VGG-16 CNN model showed good discriminatory performance in detecting dental caries in intraoral camera images. The deep learning model can be beneficial in monitoring dental caries in the population.

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      참고문헌 (Reference)

      1 강민제, "딥러닝을 위한 경사하강법 비교" 한국산학기술학회 21 (21): 189-194, 2020

      2 송경두, "딥러닝 알고리즘 개발과정을 통해 본 영상의학분야에서 딥러닝의 최신 경향" 대한영상의학회 80 (80): 202-212, 2019

      3 Gimenez T, "Visual inspection for caries detection : a systematic review and meta-analysis" 94 : 895-904, 2015

      4 Gimenez T, "Visual inspection for caries detection : a systematic review and meta-analysis" 94 : 895-904, 2015

      5 Simonyan K, "Very deep convolutional networks for large-scale image recognition"

      6 Kim BM, "Trend of image classification technology based on deep learning" 35 (35): 8-14, 2018

      7 Ismail AI, "The International Caries Detection and Assessment System(ICDAS) : an integrated system for measuring dental caries" 35 (35): 170-178, 2007

      8 Bader JD, "Systematic reviews of selected dental caries diagnostic and management methods" 65 (65): 960-968, 2021

      9 Kim SJ, "Reliability evaluation of dental caries detection using deep learning" Seoul National University 2019

      10 Petersen PE, "Oral health surveys:basic methods" World Health Organization 2013

      1 강민제, "딥러닝을 위한 경사하강법 비교" 한국산학기술학회 21 (21): 189-194, 2020

      2 송경두, "딥러닝 알고리즘 개발과정을 통해 본 영상의학분야에서 딥러닝의 최신 경향" 대한영상의학회 80 (80): 202-212, 2019

      3 Gimenez T, "Visual inspection for caries detection : a systematic review and meta-analysis" 94 : 895-904, 2015

      4 Gimenez T, "Visual inspection for caries detection : a systematic review and meta-analysis" 94 : 895-904, 2015

      5 Simonyan K, "Very deep convolutional networks for large-scale image recognition"

      6 Kim BM, "Trend of image classification technology based on deep learning" 35 (35): 8-14, 2018

      7 Ismail AI, "The International Caries Detection and Assessment System(ICDAS) : an integrated system for measuring dental caries" 35 (35): 170-178, 2007

      8 Bader JD, "Systematic reviews of selected dental caries diagnostic and management methods" 65 (65): 960-968, 2021

      9 Kim SJ, "Reliability evaluation of dental caries detection using deep learning" Seoul National University 2019

      10 Petersen PE, "Oral health surveys:basic methods" World Health Organization 2013

      11 Choe Gh, "Latest Research Trends in Convolutional Neural Networks" 36 (36): 25-31, 2018

      12 Alassaad SS, "Incomplete cusp fractures : Early diagnosis and communication with patients using fiber-optic transillumination and intraoral photography" 59 : 132-135, 2011

      13 Krizhevsky A, "Imagenet classification with deep convolutional neural networks" 25 : 1097-1105, 2012

      14 Deng J, "ImageNet: A large-scale hierarchical image database" 248-255, 2009

      15 Szegedy C, "Going deeper with convolutions" 1-9, 2015

      16 Lee KS, "Evaluation of transfer learning with deep convolutional neural networks for screening osteoporosis in dental panoramic radiographs" 9 (9): 392-, 2020

      17 Obrochta JC, "Efficient & Effective Use of the Intraoral Camera"

      18 National Institutes of Health, "Diagnosis and management of dental caries throughout life" 18 (18): 1-23, 2001

      19 Khanagar SB, "Developments, application, and performance of artificial intelligence in dentistry-a systematic review" 16 (16): 508-522, 2021

      20 Lee JH, "Detection and diagnosis of dental caries using a deep learning-based convolutional neural network algorithm" 77 : 106-111, 2018

      21 Fejerskov O, "Dental Caries: the Disease and Its Clinical Management" Wiley Blackwell 7-10, 2015

      22 Fejerskov O, "Dental Caries: the Disease and Its Clinical Management" Wiley Blackwell 11-20, 2015

      23 Fejerskov O, "Dental Caries: the Disease and Its Clinical Management" Wiley Blackwell 173-190, 2015

      24 Schwendicke F, "Deep learning for caries lesion detection in near-infrared light transillumination images : A pilot study" 92 : 103260-, 2020

      25 Boye U, "Comparison of an intra-oral photographic caries assessment with an established visual caries assessment method for use in dental epidemiological studies of children" 41 : 526-533, 2013

      26 Pitts NB, "Clinical diagnosis of dental caries : a European perspective" 65 (65): 972-978, 2001

      27 Prajapati SA, "Classification of dental diseases using CNN and transfer learning" 70-74, 2017

      28 Pretty IA, "Caries detection and diagnosis : novel technologies" 34 (34): 727-739, 2006

      29 Gook KH, "Artificial intelligence technology and examples of industrial application" 20 : 5-27, 2019

      30 Babu A, "Artificial Intelligence in dentistry:Concepts, Applications and Research Challenges" 297-, 2021

      31 황재준, "An overview of deep learning in the field of dentistry" 대한영상치의학회 49 (49): 1-7, 2019

      32 Devito KL, "An artificial multilayer perceptron neural network for diagnosis of proximal dental caries" 106 : 879-884, 2008

      33 홍준용, "AI 의료영상 분석의 개요 및 연구 현황에 대한 고찰" 대한방사선과학회 43 (43): 195-208, 2020

      34 Ministry of Health & Welfare, "2018 Korean National Oral Health Survey" Ministry of Health & Welfare 382-, 2019

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      학술지 이력

      학술지 이력
      연월일 이력구분 이력상세 등재구분
      2022 평가예정 재인증평가 신청대상 (재인증)
      2019-01-01 평가 등재학술지 선정 (계속평가) KCI등재
      2018-12-01 평가 등재후보로 하락 (계속평가) KCI등재후보
      2015-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2014-09-29 학회명변경 한글명 : 대한구강보건학회 -> 대한예방치과·구강보건학회
      영문명 : Korean Academy Of Oral Health -> The Korean Academy of Preventive Dentistry and Oral Health
      KCI등재
      2012-05-03 학회명변경 영문명 : The Korean Academy Of Dental Health -> Korean Academy Of Oral Health KCI등재
      2012-05-03 학술지명변경 외국어명 : The Journal of the Korean Academy of Dental Health -> Journal of Korean Academy of Oral Health KCI등재
      2011-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2009-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2007-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2004-01-01 평가 등재학술지 선정 (등재후보2차) KCI등재
      2003-01-01 평가 등재후보 1차 PASS (등재후보1차) KCI등재후보
      2002-01-01 평가 등재후보학술지 유지 (등재후보1차) KCI등재후보
      2000-07-01 평가 등재후보학술지 선정 (신규평가) KCI등재후보
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      학술지 인용정보

      학술지 인용정보
      기준연도 WOS-KCI 통합IF(2년) KCIF(2년) KCIF(3년)
      2016 1.09 1.09 1.07
      KCIF(4년) KCIF(5년) 중심성지수(3년) 즉시성지수
      1.01 0.91 1.746 0.1
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