应用拉曼光谱技术对伴2型糖尿病慢性牙周炎患者龈下菌斑的研究
张娟1, 刘依萍1, 曹士盛1, 李欣2, 董晓曦3, 李宏霄31. 天津医科大学口腔医院修复科, 天津 300070;
2. 天津医科大学口腔医院牙周科, 天津 300070;
3. 中国医学科学院生物医学工程研究所, 天津 300192
收稿日期:
2023-01-19出版日期:
2023-12-30发布日期:
2023-12-12通讯作者:
李宏霄E-mail:lihx@bme.pumc.edu.cn作者简介:
张娟(1973-),女,副主任医师,博士基金资助:
天津市教委社会科学重大项目(2019JWZD53)关键词: 慢性牙周炎, 2型糖尿病, 龈下菌斑, 拉曼光谱, 机器学习算法
Abstract: Objective The aim of this study is to combine Raman spectroscopy and machine learning techniques to distinguish subgingival plaques among three groups of subjects, including patients with chronic periodontitis (CP) and type 2 diabetes mellitus (T2DM), patients with CP alone, and healthy controls.Methods The Raman spectra of the subgingival plaques from 20 patients with CP and T2DM (group A), 23 patients with CP alone (group B), and 23 healthy controls (group C) were obtained using a portable Raman spectrometer. Eight common machine learning algorithms were applied to build models to distinguish the Raman spectra of the three types of subgingival plaques.Results The model identified as optimal for distinguishing the three types of subgingival plaques was linear discriminant analysis (LDA). The optimal model to distinguish groups A and B is LDA, groups A and C is extra trees (ET), and groups B and C group is LDA.Conclusion The proposed classification model based on Raman spectroscopy and machine learning algorithms can distinguish subgingival plaques among patients with CP and T2DM, with CP alone, and healthy controls. This technique can be used in future clinical practice as a screening or diagnostic tool.
Key words: chronic periodontitis, type 2 diabetes mellitus, subgingival plaque, Raman spectroscopy, machine learning algorithm
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