Periodontal Microorganisms and Cardiovascular Risk Markers in Youth With Type 1 Diabetes and No Diabetes.

JOURNAL OF PERIODONTOLOGY(2016)

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摘要
Background: A subset of periodontal microorganisms has been associated with cardiovascular disease (CVD), which is the leading complication of type 1 diabetes (t1DM). The authors therefore evaluated the association between periodontal microorganism groups and early markers of CVD in youth with t1DM. Methods: A cross-sectional analysis was conducted among youth aged 12 to 19 years at enrollment; 105 had t1DM for >= 5 years and were seeking care at the Barbara Davis Center, University of Colorado, from 2009 to 2011, and 71 did not have diabetes. Subgingival plaque samples were assessed for counts of 41 periodontal microorganisms using DNA-DNA hybridization. Microorganisms were classified using cluster analysis into four groups named red-orange, orange-green, blue/other, and yellow/other, modified from Socransky's color scheme for periodontal microorganisms. Subsamples (54 with t1DM and 48 without diabetes) also received a periodontal examination at the University of Colorado School of Dental Medicine. Results: Participants were approximate to 15 years old on average, and 74% were white. Mean periodontal probing depth was 2 mm (SE 0.02), and 17% had bleeding on probing. In multivariable analyses, glycated hemoglobin (HbA1c) was inversely associated with the yellow/other cluster (microorganisms that are not associated with periodontal disease) among youth with t1DM. Blood pressure, triglycerides, low-density lipoprotein, high-density lipoprotein, and total cholesterol were not associated with microorganism clusters in this group. HbA1c was not associated with periodontal microorganism clusters among youth without diabetes. Conclusion: Among youth with t1DM who had good oral health, periodontal microorganisms were not associated with CVD risk factors.
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关键词
Adolescent,blood pressure,diabetes mellitus,type 1,hemoglobin A,glycosylated,microbiology,periodontal diseases
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