Prediction Model Development and Validation of 12-Year Incident Edentulism of Older Adults in the United States.

IF 2.2 Q2 DENTISTRY, ORAL SURGERY & MEDICINE
JDR Clinical & Translational Research Pub Date : 2023-10-01 Epub Date: 2022-08-09 DOI:10.1177/23800844221112062
J S Preisser, K Moss, T L Finlayson, J A Jones, J A Weintraub
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引用次数: 3

Abstract

Introduction: Edentulism affects health and quality of life.

Objectives: Identify factors that predict older adults becoming edentulous over 12 y in the US Health and Retirement Study (HRS) by developing and validating a prediction model.

Methods: The HRS includes data on a representative sample of US adults aged >50 y. Selection criteria included participants in 2006 and 2018 who answered, "Have you lost all of your upper and lower natural permanent teeth?" Persons who answered "no" in 2006 and "yes" in 2018 experienced incident edentulism. Excluding 2006 edentulous, the data set (n = 4,288) was split into selection (70%, n = 3,002) and test data (30%, n = 1,286), and Monte Carlo cross-validation was applied to 500 random partitions of the selection data into training (n = 1,716) and validation (n = 1,286) data sets. Fitted logistic models from the training data sets were applied to the validation data sets to obtain area under the curve (AUC) for 32 candidate models. Six variables were included in all models (age, race/ethnicity, gender, education, smoking, last dental visit) while all combinations of 5 variables (income, alcohol use, self-rated health, loneliness, cognitive status) were considered for inclusion. The best parsimonious model based on highest mean AUC was fitted to the selection data set to obtain a final prediction equation. It was applied to the test data to estimate AUC and 95% confidence interval using 1,000 bootstrap samples.

Results: From 2006 to 2018, 9.7% of older adults became edentulous. The 2006 mean (SD) age was 66.7 (8.7) for newly edentulous and 66.3 (8.4) for dentate (P = 0.31). The baseline 6-variable model mean AUC was 0.740. The 7-variable model with cognition had AUC = 0.749 and test data AUC = 0.748 (95% confidence interval, 0.715-0.781), modestly improving prediction. Negligible improvement was gained from adding more variables.

Conclusion: Cognition information improved the 12-y prediction of becoming edentulous beyond the modifiable risk factors of smoking and dental care use, as well as nonmodifiable demographic factors.

Knowledge transfer statement: This prediction modeling and validation study identifies cognition as well as modifiable (dental care use, smoking) and nonmodifiable factors (race, ethnicity, gender, age, education) associated with incident complete tooth loss in the United States. This information is useful for the public, dental care providers, and health policy makers in improving approaches to preventive care, oral and general health, and quality of life for older adults.

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美国老年人12年事件无意识的预测模型开发和验证。
简介:遗毒症影响健康和生活质量。目的:在美国健康与退休研究(HRS)中,通过开发和验证预测模型,确定预测老年人12岁以上无牙的因素。方法:HRS包括年龄>50岁的美国成年人代表性样本的数据。选择标准包括2006年和2018年的参与者,他们回答“你的上下自然恒牙都掉光了吗?”2006年回答“不”和2018年回答“是”的人经历了缺牙事件。排除2006年的缺牙,将数据集(n=4288)分为选择数据(70%,n=3002)和测试数据(30%,n=1286),并将蒙特卡洛交叉验证应用于500个随机划分的选择数据,将其分为训练数据集(n=1716)和验证数据集(n=1286)。将来自训练数据集的拟合逻辑模型应用于验证数据集,以获得32个候选模型的曲线下面积(AUC)。所有模型中包括6个变量(年龄、种族/民族、性别、教育、吸烟、最后一次牙科就诊),而5个变量的所有组合(收入、饮酒、自我评估健康、孤独、认知状态)都被考虑纳入。将基于最高平均AUC的最佳简约模型拟合到选择数据集,以获得最终预测方程。将其应用于测试数据,以使用1000个bootstrap样本来估计AUC和95%置信区间。结果:从2006年到2018年,9.7%的老年人出现缺牙现象。2006年的平均(SD)年龄为66.7(8.7)(新无牙)和66.3(8.4)(牙齿)(P=0.31)。基线6变量模型的平均AUC为0.740。认知的7变量模型的AUC=0.749,测试数据AUC=0.748(95%置信区间,0.715-0.781),适度改善了预测。通过增加更多的变量获得了可忽略的改进。结论:除了吸烟和牙科护理使用的可改变的风险因素以及不可改变的人口统计学因素外,认知信息改善了12岁无牙症的预测。知识转移声明:这项预测建模和验证研究确定了与美国完全性牙齿缺失事件相关的认知以及可改变的(牙科护理使用、吸烟)和不可改变的因素(种族、民族、性别、年龄、教育)。这些信息有助于公众、牙科护理提供者和卫生政策制定者改进预防性护理、口腔和一般健康以及老年人生活质量的方法。
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来源期刊
JDR Clinical & Translational Research
JDR Clinical & Translational Research DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
6.20
自引率
6.70%
发文量
45
期刊介绍: JDR Clinical & Translational Research seeks to publish the highest quality research articles on clinical and translational research including all of the dental specialties and implantology. Examples include behavioral sciences, cariology, oral & pharyngeal cancer, disease diagnostics, evidence based health care delivery, human genetics, health services research, periodontal diseases, oral medicine, radiology, and pathology. The JDR Clinical & Translational Research expands on its research content by including high-impact health care and global oral health policy statements and systematic reviews of clinical concepts affecting clinical practice. Unique to the JDR Clinical & Translational Research are advances in clinical and translational medicine articles created to focus on research with an immediate potential to affect clinical therapy outcomes.
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