Improving Caries Risk Prediction Modeling: A Call for Action

Dentistry has entered an era of personalized/precision care in which targeting care to groups, individuals, or even tooth surfaces based on their caries risk has become a reality to address the skewed distribution of the disease. The best approach to determine a patient’s prognosis relies on the development of caries risk prediction models (CRPMs). A desirable model should be derived and validated to appropriately discriminate between patients who will develop disease from those who will not, and it should provide an accurate estimation of the patient’s absolute risk (i.e., calibration). However, evidence suggests there is a need to improve the methodological standards and increase consistency in the way CRPMs are developed and evaluated. In fact, although numerous caries risk assessment tools are available, most are not routinely used in practice or used to influence treatment decisions, and choice is not commonly based on high-quality evidence. Research will propose models that will become more complex, incorporating new factors with high prognostic value (e.g., human genetic markers, microbial biomarkers). Big data and predictive analytic methods will be part of the new approaches for the identification of promising predictors with the ability to monitor patients’ risk in real time. Eventually, the implementation of validated, accurate CRPMs will have to follow a user-centered design respecting the patient-clinician dynamic, with no disruption to the clinical workflow, and needs to operate at low cost. The resulting predictive risk estimate needs to be presented to the patient in an understandable way so that it triggers behavior change and effectively informs health care decision making, to ultimately improve caries outcomes. However, research on these later aspects is largely missing and increasingly needed in dentistry.

[1]  J. Ioannidis,et al.  Validation and Utility Testing of Clinical Prediction Models: Time to Change the Approach. , 2020, JAMA.

[2]  R. Saunders,et al.  Best Care at Lower Cost: The Path to Continuously Learning Health Care in America , 2013 .

[3]  Mei Lin,et al.  Oral health surveillance report : trends in dental caries and sealants, tooth retention, and edentulism, United States : 1999–2004 to 2011–2016 , 2019 .

[4]  R. Weyant,et al.  Evidence-based clinical practice guideline on nonrestorative treatments for carious lesions: A report from the American Dental Association. , 2018, Journal of the American Dental Association.

[5]  Chava L. Ramspek,et al.  Prediction versus aetiology: common pitfalls and how to avoid them: Clinical Epidemiology in Nephrology , 2017, Nephrology, dialysis, transplantation : official publication of the European Dialysis and Transplant Association - European Renal Association.

[6]  G. Guyatt,et al.  Discrimination and Calibration of Clinical Prediction Models: Users’ Guides to the Medical Literature , 2017, JAMA.

[7]  N. Sahlin,et al.  Diagnostic accuracy of different caries risk assessment methods. A systematic review. , 2015, Journal of dentistry.

[8]  Jinlin Song,et al.  Predicting trend of early childhood caries in mainland China: a combined meta-analytic and mathematical modelling approach based on epidemiological surveys , 2017, Scientific Reports.

[9]  M. Fontana,et al.  Patient caries risk assessment. , 2009, Monographs in oral science.

[10]  J. Abernathy,et al.  The University of North Carolina Caries Risk Assessment study: further developments in caries risk prediction. , 1992, Community dentistry and oral epidemiology.

[11]  E. Elkin,et al.  Decision Curve Analysis: A Novel Method for Evaluating Prediction Models , 2006, Medical decision making : an international journal of the Society for Medical Decision Making.

[12]  Matthew D. Bramlett,et al.  Influences on Children's Oral Health: A Conceptual Model , 2007, Pediatrics.

[13]  P. Royston,et al.  Prognosis and prognostic research: application and impact of prognostic models in clinical practice , 2009, BMJ : British Medical Journal.

[14]  Maarten van Smeden,et al.  Calibration: the Achilles heel of predictive analytics , 2019, BMC Medicine.

[15]  Nubia M. Chávez-Lamas,et al.  Deep Artificial Neural Networks for the Diagnostic of Caries Using Socioeconomic and Nutritional Features as Determinants: Data from NHANES 2013–2014 , 2018, Bioengineering.

[16]  Margherita Fontana,et al.  The Clinical, Environmental, and Behavioral Factors That Foster Early Childhood Caries: Evidence for Caries Risk Assessment. , 2015, Pediatric dentistry.

[17]  R. Evans,et al.  The Caries Management System: are preventive effects sustained postclinical trial? , 2015, Community dentistry and oral epidemiology.

[18]  Rebecca S. Graves,et al.  Users' Guides to the Medical Literature: A Manual for Evidence-Based Clinical Practice. , 2002 .

[19]  S. Helgerson Clinical Epidemiology: How to Do Clinical Practice Research , 2006 .

[20]  R. D'Agostino,et al.  Developing points‐based risk‐scoring systems in the presence of competing risks , 2016, Statistics in medicine.

[21]  N. Obuchowski,et al.  Assessing the Performance of Prediction Models: A Framework for Traditional and Novel Measures , 2010, Epidemiology.

[22]  G. Guyatt,et al.  Clinical Prediction Rules , 2004 .

[23]  C D Naylor,et al.  Clinical prediction rules. , 1997, Journal of clinical epidemiology.

[24]  D. Manton,et al.  Genetic and Early-Life Environmental Influences on Dental Caries Risk: A Twin Study , 2019, Pediatrics.

[25]  Yvonne Vergouwe,et al.  Prognosis and prognostic research: Developing a prognostic model , 2009, BMJ : British Medical Journal.

[26]  Yvonne Vergouwe,et al.  Towards better clinical prediction models: seven steps for development and an ABCD for validation. , 2014, European heart journal.

[27]  S. Twetman,et al.  A systematic review of risk assessment tools for early childhood caries: is there evidence? , 2020, European archives of paediatric dentistry : official journal of the European Academy of Paediatric Dentistry.

[28]  I. Mejàre,et al.  Caries risk assessment. A systematic review , 2014, Acta odontologica Scandinavica.

[29]  G. Campus,et al.  Are standardized caries risk assessment models effective in assessing actual caries status and future caries increment? A systematic review , 2018, BMC Oral Health.

[30]  I. Pretty,et al.  Evidence on existing caries risk assessment systems: are they predictive of future caries? , 2013, Community dentistry and oral epidemiology.

[31]  K. Divaris Predicting Dental Caries Outcomes in Children , 2016, Journal of dental research.

[32]  Robert M Wachter,et al.  Artificial Intelligence in Health Care: Will the Value Match the Hype? , 2019, JAMA.

[33]  B. Levy,et al.  Predicting Caries in Medical Settings: Risk Factors in Diverse Infant Groups , 2018, Journal of dental research.

[34]  Wei Li,et al.  Application of machine learning for diagnostic prediction of root caries. , 2019, Gerodontology.

[35]  N. Timpson,et al.  Heritability of Caries Scores, Trajectories, and Disease Subtypes , 2020, Journal of dental research.

[36]  K. Godfrey,et al.  Caries Risk Prediction Models in a Medical Health Care Setting , 2020, Journal of dental research.

[37]  Jie Ma,et al.  A systematic review shows no performance benefit of machine learning over logistic regression for clinical prediction models. , 2019, Journal of clinical epidemiology.

[38]  I. Kohane,et al.  Big Data and Machine Learning in Health Care. , 2018, JAMA.

[39]  Bruce M Psaty,et al.  Comparison of 2 Treatment Models: Precision Medicine and Preventive Medicine. , 2018, JAMA.

[40]  G. Gaumer,et al.  How useful are current caries risk assessment tools in informing the oral health care decision-making process? , 2019, Journal of the American Dental Association.

[41]  J. G. Hollands,et al.  The visual communication of risk. , 1999, Journal of the National Cancer Institute. Monographs.

[42]  Margherita Fontana,et al.  Assessing patients' caries risk. , 2006, Journal of the American Dental Association.

[43]  D. French,et al.  Can Communicating Personalised Disease Risk Promote Healthy Behaviour Change? A Systematic Review of Systematic Reviews , 2017, Annals of behavioral medicine : a publication of the Society of Behavioral Medicine.