Zhao Anna, Chen Yuxiang, Yang Haoran, Chen Tingting, Rao Xianqi, Li Ziliang
Affiliated Stomatology Hospital of Kunming Medical University, Kunming, Yunnan, China; Yunnan Provincial Key Laboratory of Stomatology, Kunming, Yunnan, China.
Acta Odontol Scand. 2024 Dec 3;83:653-665. doi: 10.2340/aos.v83.42435.
To analyse the risk factors contributing to the prevalence of periodontitis among clusters of patients with diabetes and to examine the clustering patterns of clinical blood biochemical indicators.
Data regarding clinical blood biochemical indicators and periodontitis prevalence among 1804 patients with diabetes were sourced from the National Health and Nutrition Examination Survey (NHANES) database spanning 2009 to 2014. A clinical prediction model for periodontitis risk in patients with diabetes was constructed via the XGBoost machine learning method. Furthermore, the relationships between diabetes patient clusters and periodontitis prevalence were investigated through consistent consensus clustering analysis.
Seventeen clinical blood biochemical indicators emerged as superior predictors of periodontitis in patients with diabetes. Patients with diabetes were subsequently categorized into two subtypes: Cluster A presented a slightly lower periodontitis prevalence (74.80%), whereas Cluster B presented a higher prevalence risk (83.68%). Differences between the two groups were considered statistically significant at a p value of ≤0.05. There was marked variability in the associations of different cluster characteristics with periodontitis prevalence.
Machine learning combined with consensus clustering analysis revealed a greater prevalence of periodontitis among patients with diabetes mellitus in Cluster B. This cluster was characterized by a smoking habit, a lower education level, a higher income-to-poverty ratio, and higher levels of albumin (ALB g/L) and alanine aminotransferase (ALT U/L).
分析糖尿病患者群体中导致牙周炎患病率的危险因素,并研究临床血液生化指标的聚类模式。
1804例糖尿病患者的临床血液生化指标和牙周炎患病率数据来自2009年至2014年的美国国家健康与营养检查调查(NHANES)数据库。通过XGBoost机器学习方法构建糖尿病患者牙周炎风险的临床预测模型。此外,通过一致性聚类分析研究糖尿病患者聚类与牙周炎患病率之间的关系。
17项临床血液生化指标成为糖尿病患者牙周炎的优良预测指标。糖尿病患者随后被分为两个亚型:A组牙周炎患病率略低(74.80%),而B组患病率风险较高(83.68%)。两组之间的差异在p值≤0.05时被认为具有统计学意义。不同聚类特征与牙周炎患病率的关联存在显著差异。
机器学习结合一致性聚类分析显示,B组糖尿病患者中牙周炎患病率更高。该聚类的特征是有吸烟习惯、教育水平较低、收入贫困比更高以及白蛋白(ALB g/L)和丙氨酸转氨酶(ALT U/L)水平更高。