Comparison of traditional regression modeling vs. AI modeling for the prediction of dental caries: a secondary data analysis

被引:0
|
作者
Dey, Priya [1 ]
Ogwo, Chukwuebuka [1 ]
Tellez, Marisol [1 ]
机构
[1] Temple Univ, Maurice H Kornberg Sch Dent, Oral Hlth Sci, Philadelphia, PA 19122 USA
来源
关键词
machine learning; dental caries; prediction; Artificial Intelligence; traditional statistical;
D O I
10.3389/froh.2024.1322733
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
Introduction There are substantial gaps in our understanding of dental caries in primary and permanent dentition and various predictors using newer modeling methods such as Machine Learning (ML) algorithms and Artificial Intelligence (AI). The objective of this study is to compare the accuracy, precision, and differences between the caries predictive capability of AI vs. traditional multivariable regression techniques.Methods The study was conducted using secondary data stored in the Temple University Kornberg School of Dentistry electronic health records system (axiUm) of pediatric patients aged 6-16 years who were patients on record at the Pediatric Dentistry Clinic. The outcome variables considered in the study were the decayed-missing-filled teeth (DMFT) and the decayed-extracted-filled teeth (deft) scores. The predictors included age, sex, insurance, fluoride exposure, having a dental home, consumption of sugary meals, family caries experience, having special needs, visible plaque, medications reducing salivary flow, and overall assessment questions.Results The average DMFT score was 0.85 +/- 2.15, while the average deft scores were 0.81 +/- 2.15. For childhood dental caries, XGBoost was the best performing ML algorithm with accuracy, sensitivity. and Kappa as 81%, 84%, and 61%, respectively, followed by Support Vector Machine and Lasso Regression algorithms, both with 84% specificity. The most important variables for prediction found were age and visible plaque.Conclusions The machine learning model outperformed the traditional statistical model in the prediction of childhood dental caries. Data from a more diverse population will help improve the quality of caries prediction for permanent dentition where the traditional statistical method outperformed the machine learning model.
引用
收藏
页数:8
相关论文
共 50 条
  • [21] The Comparative Effectiveness of Portable Video Modeling vs. Traditional Video Modeling Interventions with Children with Autism Spectrum Disorders
    Miltenberger, Catherine A.
    Charlop, Marjorie H.
    JOURNAL OF DEVELOPMENTAL AND PHYSICAL DISABILITIES, 2015, 27 (03) : 341 - 358
  • [22] The Comparative Effectiveness of Portable Video Modeling vs. Traditional Video Modeling Interventions with Children with Autism Spectrum Disorders
    Catherine A. Miltenberger
    Marjorie H. Charlop
    Journal of Developmental and Physical Disabilities, 2015, 27 : 341 - 358
  • [23] Review and Recommendations for Zero-Inflated Count Regression Modeling of Dental Caries Indices in Epidemiological Studies
    Preisser, J. S.
    Stamm, J. W.
    Long, D. L.
    Kincade, M. E.
    CARIES RESEARCH, 2012, 46 (04) : 413 - 423
  • [24] Ordinal Logistic Regression Modeling of Dental Caries among Preschool Children in Bachok District, Kelantan, Malaysia
    Ali, Zalila
    Ahmad, Wan Muhamad Amir Wan
    Hasan, Ruhaya
    Baharum, Adam
    PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON MATHEMATICAL SCIENCES AND TECHNOLOGY 2018 (MATHTECH 2018): INNOVATIVE TECHNOLOGIES FOR MATHEMATICS & MATHEMATICS FOR TECHNOLOGICAL INNOVATION, 2019, 2184
  • [25] Nonlinear modeling of glucose metabolism: comparison of parametric vs. nonparametric methods
    Mitsis, Georgios D.
    Marmarelis, Vasilis Z.
    2007 ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY, VOLS 1-16, 2007, : 5968 - 5971
  • [26] Qualitative vs. Quantitative Software Process Simulation Modeling: Conversion and Comparison
    Zhang, He
    Kitchenham, Barbara
    Jeffery, Ross
    ASWEC 2009: 20TH AUSTRALIAN SOFTWARE ENGINEERING CONFERENCE, PROCEEDINGS, 2009, : 345 - +
  • [27] ANALYSIS OF LONGITUDINAL DATA - RANDOM COEFFICIENT REGRESSION MODELING
    RUTTER, CM
    ELASHOFF, RM
    STATISTICS IN MEDICINE, 1994, 13 (12) : 1211 - 1231
  • [28] Comparison of the Effects of Video Modeling with Narration vs. Video Modeling on the Functional Skill Acquisition of Adolescents with Autism
    Smith, Molly
    Ayres, Kevin
    Mechling, Linda
    Smith, Katie
    EDUCATION AND TRAINING IN AUTISM AND DEVELOPMENTAL DISABILITIES, 2013, 48 (02) : 164 - 178
  • [29] Smart Grid Data Analysis and Prediction Modeling
    Yang, Hang
    Li, Ping
    Masood, Anum
    Xiao, Yuning
    Sheng, Bin
    Yu, Qichen
    PROCEEDINGS OF THE 2016 INTERNATIONAL CONFERENCE ON PROGRESS IN INFORMATICS AND COMPUTING (PIC), VOL 1, 2016, : 541 - 544
  • [30] Oil formation volume factor modeling: Traditional vs. Stochastically optimized neural networks
    Bagheripour, Parisa
    Asoodeh, Mojtaba
    Asoodeh, Ali
    CENTRAL EUROPEAN JOURNAL OF GEOSCIENCES, 2013, 5 (04): : 508 - 513