牙周炎症与全身健康指标的关联:一种机器学习方法。

IF 6.8 1区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Yumeng Yan, Praveen Sharma, Jeanie Suvan, Francesco D'Aiuto
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引用次数: 0

摘要

目的口腔和全身炎症之间的关系对理解牙周炎对健康的广泛影响具有深远的意义。本研究的目的是(a)探索牙周炎症与全身炎症和代谢健康标志物之间的关系,以及(b)使用机器学习技术初步评估基于全身健康指标的牙周状态。方法对来自横断面队列(N = 667)的数据进行建模(简单/多元线性、分数多项式、逻辑回归和随机森林回归),以检验系统测量与牙周测量之间的关系。三种分类器——随机森林(RF)、支持向量机(SVM)和梯度增强(GB)——使用牙周发炎表面积(PISA)和人口统计学和人体测量变量(年龄、性别、种族、体重指数(BMI)和吸烟习惯)作为预测全身炎症(用血清c反应蛋白(CRP)水平定义)的输入。使用2001-2002年和2003-2004年国家健康和营养检查调查(NHANES)联合数据集(N = 2288)的第二个具有全国代表性的数据集验证了表现最佳的分类模型(使用曲线下面积和AUC分析进行评估)。然后,结合一组系统参数(包括血清CRP和脂质谱),采用RF、SVM和GB来预测牙周炎的诊断。然后使用NHANES 2009-2010 (N = 664)数据集对表现最佳的分类模型进行验证。结果分数多项式回归证实CRP水平与PISA的sa非线性趋势(p = 0.008)。此外,多元线性回归分析(调整了年龄、性别、种族、BMI和吸烟习惯)证实了对数转化CRP水平与PISA之间的统计学显著关系(p < 0.0001)。Logistic回归证实了PISA与低密度脂蛋白(LDL)之间的关系。在分类模型中,SVM对CRP < 2mg /L和CRP≥2mg /L的区分效果最好(AUC = 0.71)。支持向量机模型在2001-2002年和2003-2004年NHANES波浪中被成功复制(AUC = 0.74)。使用SVM模型基于系统指标预测牙周炎状态(病例与对照组)的效果最好,平均AUC为0.82。在使用2009-2010年NHANES数据集(AUC为0.72)进行外部验证后,部分证实了这一点。本研究通过机器学习模型证实了累积牙周炎症与全身炎症之间的一致关系。结合全身健康参数的预测模型有助于识别牙周炎病例。这两种模型都有可能用于初级卫生保健机构,包括筛查计划,因为它们证实了牙周炎和全身健康之间的双向联系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

The Association of Periodontal Inflammation and Systemic Health Indicators: A Machine Learning Approach

The Association of Periodontal Inflammation and Systemic Health Indicators: A Machine Learning Approach

Aim

The relationship between oral and systemic inflammation has profound implications for understanding the broader health impacts of periodontitis. The aim of this study was to (a) explore the association between periodontal inflammation and markers of systemic inflammation and metabolic health, and (b) preliminarily assess periodontal status based on systemic health indicators using machine learning techniques.

Methods

Data from a cross-sectional cohort (N = 667) were modelled (simple/multiple linear, fractional polynomial, logistic and random forest regression) to examine the association between systemic and periodontal measures. Three classifiers—random forest (RF), support vector machine (SVM) and gradient boosting (GB)—were used using periodontal inflamed surface area (PISA) and demographic and anthropometric variables (age, gender, ethnicity, body mass index [BMI] and smoking habits) as inputs to predict systemic inflammation (defined using serum C-reactive protein [CRP] levels). The best performing classification models (evaluated using area under the curve, AUC analyses) were validated using a second nationally representative dataset from the National Health and Nutrition Examination Surveys (NHANES) 2001–2002 and 2003–2004 combined datasets (N = 2288). Next, RF, SVM and GB were employed incorporating a set of systemic parameters (including serum CRP and lipid profiles) to predict the diagnosis of periodontitis. The best performing classification models were then validated using the NHANES 2009–2010 (N = 664) dataset.

Results

A nonlinear trend of CRP levels and PISA was confirmed by fractional polynomial regression (p = 0.008). Further, multiple linear regression analyses (adjusted for age, gender, ethnicity, BMI and smoking habits) confirmed a statistically significant relationship between log-transformed CRP levels and PISA (p < 0.0001). Logistic regression confirmed a relationship between PISA and low-density lipoprotein (LDL) in both crude and adjusted models. Among the classification models, SVM showed the highest performance in distinguishing CRP < 2 mg/L from CRP ≥ 2 mg/L (AUC = 0.71). The SVM model was successfully replicated in the NHANES 2001–2002 and 2003–2004 waves (AUC = 0.74). Prediction of periodontitis status (case vs. control) based on systemic indicators using the SVM model achieved the best performance with a mean AUC of 0.82. This was partially confirmed after external validation using the 2009–2010 NHANES dataset (AUC of 0.72).

Conclusion

This study confirmed a consistent relationship between measures of cumulative periodontal inflammation and systemic inflammation through machine learning models. A predictive model incorporating systemic health parameters helped in identifying a case with periodontitis. Both models have potential for use in primary healthcare settings, including screening programmes, as providing confirmation of the bidirectional link between periodontitis and systemic health.

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来源期刊
Journal of Clinical Periodontology
Journal of Clinical Periodontology 医学-牙科与口腔外科
CiteScore
13.30
自引率
10.40%
发文量
175
审稿时长
3-8 weeks
期刊介绍: Journal of Clinical Periodontology was founded by the British, Dutch, French, German, Scandinavian, and Swiss Societies of Periodontology. The aim of the Journal of Clinical Periodontology is to provide the platform for exchange of scientific and clinical progress in the field of Periodontology and allied disciplines, and to do so at the highest possible level. The Journal also aims to facilitate the application of new scientific knowledge to the daily practice of the concerned disciplines and addresses both practicing clinicians and academics. The Journal is the official publication of the European Federation of Periodontology but wishes to retain its international scope. The Journal publishes original contributions of high scientific merit in the fields of periodontology and implant dentistry. Its scope encompasses the physiology and pathology of the periodontium, the tissue integration of dental implants, the biology and the modulation of periodontal and alveolar bone healing and regeneration, diagnosis, epidemiology, prevention and therapy of periodontal disease, the clinical aspects of tooth replacement with dental implants, and the comprehensive rehabilitation of the periodontal patient. Review articles by experts on new developments in basic and applied periodontal science and associated dental disciplines, advances in periodontal or implant techniques and procedures, and case reports which illustrate important new information are also welcome.
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