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Development of a clinical guideline to predict undiagnosed diabetes in dental patients.

Identifieur interne : 000324 ( Main/Exploration ); précédent : 000323; suivant : 000325

Development of a clinical guideline to predict undiagnosed diabetes in dental patients.

Auteurs : Shanshan Li [États-Unis] ; Paige L. Williams ; Chester W. Douglass

Source :

RBID : pubmed:21193764

Descripteurs français

English descriptors

Abstract

BACKGROUND

In 2007, 17.9 million people in the United States had diagnosed diabetes, and 5.7 million had undiagnosed diabetes. The authors developed a clinical guideline to help dentists identify patients with undiagnosed diabetes.

METHODS

The authors used classification and regression tree (CART) methods to generate different prediction models using data from the Third National Health and Nutrition Examination Survey (NHANES III) (1988-1994) and data from NHANES 2003-2004 for external validation. They classified participants who answered "No" to the question "Have you ever been told by a physician that you have diabetes?" and who had a fasting plasma glucose level greater than or equal to 126 milligrams per deciliter as having undiagnosed diabetes. The authors used oral examination data regarding the presence or absence of periodontitis and waist circumference, as well as data on participants' self-reported oral health status, weight, age, family history and race or ethnicity. The authors chose the best prediction model by means of 10-fold cross-validation, as well as internal and external validation methods, which evaluated each prediction model by comparing sensitivity, specificity, area under the receiver operating characteristic curve and ease of use criteria (N = 7,545).

RESULTS

The authors' final clinical guideline for predicting undiagnosed diabetes in dental patients had a sensitivity of 82.4 percent, a specificity of 52.8 percent and a receiver operating characteristic area under the curve of 0.72. They found that waist circumference, age, self-reported oral health status, self-reported race or ethnicity and self-reported weight information could be used to predict the risk of having undiagnosed diabetes (range, 0.1 to 9.1 percent).

CONCLUSION

Dental care providers should consider using a clinical guideline that includes the following predictors: waist circumference, age, self-reported oral health, self-reported weight and self-reported race or ethnicity, as well as any additional information on periodontal status and family history of diabetes.

CLINICAL IMPLICATIONS

This clinical guideline could help dentists identify patients with undiagnosed diabetes, resulting in the early identification of dental patients who require treatment for diabetes and, thus, reduce morbidity and health care costs.


DOI: 10.14219/jada.archive.2011.0025
PubMed: 21193764


Affiliations:


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Le document en format XML

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<term>Appréciation des risques (MeSH)</term>
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<b>BACKGROUND</b>
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<p>In 2007, 17.9 million people in the United States had diagnosed diabetes, and 5.7 million had undiagnosed diabetes. The authors developed a clinical guideline to help dentists identify patients with undiagnosed diabetes.</p>
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<b>METHODS</b>
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<p>The authors used classification and regression tree (CART) methods to generate different prediction models using data from the Third National Health and Nutrition Examination Survey (NHANES III) (1988-1994) and data from NHANES 2003-2004 for external validation. They classified participants who answered "No" to the question "Have you ever been told by a physician that you have diabetes?" and who had a fasting plasma glucose level greater than or equal to 126 milligrams per deciliter as having undiagnosed diabetes. The authors used oral examination data regarding the presence or absence of periodontitis and waist circumference, as well as data on participants' self-reported oral health status, weight, age, family history and race or ethnicity. The authors chose the best prediction model by means of 10-fold cross-validation, as well as internal and external validation methods, which evaluated each prediction model by comparing sensitivity, specificity, area under the receiver operating characteristic curve and ease of use criteria (N = 7,545).</p>
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<b>RESULTS</b>
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<p>The authors' final clinical guideline for predicting undiagnosed diabetes in dental patients had a sensitivity of 82.4 percent, a specificity of 52.8 percent and a receiver operating characteristic area under the curve of 0.72. They found that waist circumference, age, self-reported oral health status, self-reported race or ethnicity and self-reported weight information could be used to predict the risk of having undiagnosed diabetes (range, 0.1 to 9.1 percent).</p>
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<b>CONCLUSION</b>
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<p>Dental care providers should consider using a clinical guideline that includes the following predictors: waist circumference, age, self-reported oral health, self-reported weight and self-reported race or ethnicity, as well as any additional information on periodontal status and family history of diabetes.</p>
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<b>CLINICAL IMPLICATIONS</b>
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<p>This clinical guideline could help dentists identify patients with undiagnosed diabetes, resulting in the early identification of dental patients who require treatment for diabetes and, thus, reduce morbidity and health care costs.</p>
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