Abstract

Background Dental caries is one of the most common chronic diseases observed in elderly patients. The development of preventive strategies for dental caries in elderly individuals is vital. Objective The objective of the present study was to construct a generalized regression neural network (GRNN) prediction model for the risk assessment of dental caries among the geriatric residents of Liaoning, China. Methods A stratified equal-capacity random sampling method was used to randomly select 1144 elderly (65-74 years) residents (gender ratio 1 : 1) of Liaoning, China. Data for the oral assessment, including caries characteristics, and questionnaire survey from each participant were collected. Multivariate logistic regression analysis was then performed to identify the independent predictors. GRNN was applied to establish a prediction model for dental caries. The accuracy of the unconditional logistic regression and the GRNN early warning model was compared. Results A total of 1144 patients fulfilled the requirements and completed the questionnaires. The caries rate was 68.5%, and the main associated factors were toothache history, residence area, smoking, and drinking. We randomly divided the data for the 1144 participants into a training set (915 cases) and a test set (229 cases). The optimal smoothing factor was 0.7, and the area under the receiver operating characteristic curve for the GRNN model was 0.626 (95% confidence interval, 0.544 to 0.708), with a P value of 0.002. In terms of consistency, sensitivity, and specificity, the GRNN model was better than the traditional unconditional multivariate logistic regression model. Conclusion Geriatric (65-74 years) residents of Liaoning, China, have a high rate of dental caries. Residents with a history of toothache and smoking habits are more susceptible to the disease. The GRNN early warning model is an accurate and meaningful tool for screening, early diagnosis, and treatment planning for geriatric individuals with a high risk of caries.

Highlights

  • Dental caries is one of the most common chronic diseases observed in elderly populations [1,2,3,4]

  • We evaluated the potential collinearity between the variables, and the variance inflation factor (VIF) corresponding to these variables was less than 2, suggesting that there was no multicollinearity problem in the model

  • These findings suggested that oral healthcare for the old residents of this province had not received enough attention and suffered from a lack of corresponding oral healthcare publicity and education in recent decades

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Summary

Introduction

Dental caries (tooth decay) is one of the most common chronic diseases observed in elderly populations [1,2,3,4]. Most cases of dental caries (>60%) were concentrated in 20% of participants who were at a high risk of developing the disease [13]. These findings emphasized the urgent need for the prevention and timely. The objective of the present study was to construct a generalized regression neural network (GRNN) prediction model for the risk assessment of dental caries among the geriatric residents of Liaoning, China. Geriatric (65-74 years) residents of Liaoning, China, have a high rate of dental caries. The GRNN early warning model is an accurate and meaningful tool for screening, early diagnosis, and treatment planning for geriatric individuals with a high risk of caries

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