Suppr超能文献

多层次模型在牙周病研究数据中的应用。

The application of multilevel modelling to periodontal research data.

作者信息

Gilthorpe M S, Griffiths G S, Maddick I H, Zamzuri A T

机构信息

Biostatistics Unit, Eastman Dental Institute for Oral Health Care Sciences, University College London, United Kingdom.

出版信息

Community Dent Health. 2000 Dec;17(4):227-35.

Abstract

OBJECTIVE

To explain the theory of multilevel modelling and demonstrate its application in the analysis of dental research data.

BASIC RESEARCH DESIGN

Multilevel modelling was introduced using dental data comprising four levels: repeated measurements at level-1, sites at level-2, teeth at level-3, and subjects at level-4. Variance components models (which have no explanatory variables) were evaluated for all outcome measures. Explanatory variables were added to the models with outcomes for both lifetime cumulative attachment loss and pocket probing depth. Salient features of the multilevel models were discussed.

PARTICIPANTS

Research data were obtained from a longitudinal survey of periodontal disease conducted on 100 white male trainee engineers aged between 16 and 20 years entering the apprentice training school at Royal Air Force Halton, England.

RESULTS

The statistical methods revealed that periodontal measures demonstrate considerable variation at all levels of the multilevel structure. Models for lifetime cumulative attachment loss and pocket probing depth illustrated that risk factors operated at more than one level. Supragingival calculus was a risk factor at the subject-level (subjects experiencing more sites with the condition had greater attachment loss and greater pocketing) whilst there was apparently a protective effect occurring at the site (sites with the condition had less attachment loss and less pocketing).

CONCLUSIONS

This study demonstrates that multilevel modelling is a more powerful research tool than single-level techniques for the analysis of hierarchical dental data. Researchers using these techniques are well equipped to analyse complex hierarchical data structures, such as those often found within dentistry.

摘要

目的

解释多水平模型理论,并展示其在牙科研究数据分析中的应用。

基础研究设计

使用包含四个水平的牙科数据引入多水平模型,这四个水平分别为:水平1的重复测量、水平2的部位、水平3的牙齿以及水平4的受试者。对所有结局指标评估方差成分模型(无解释变量)。将解释变量添加到终生累积附着丧失和牙周袋探诊深度结局的模型中。讨论了多水平模型的显著特征。

参与者

研究数据来自对100名年龄在16至20岁之间进入英国皇家空军哈尔顿学徒培训学校的白人男性实习工程师进行的牙周疾病纵向调查。

结果

统计方法显示,牙周测量指标在多水平结构的所有水平上均表现出相当大的变异性。终生累积附着丧失和牙周袋探诊深度的模型表明,危险因素在多个水平上起作用。龈上牙石是受试者水平的危险因素(患有该疾病的部位更多的受试者有更大的附着丧失和更深的牙周袋),而在部位水平上显然存在保护作用(患有该疾病的部位附着丧失和牙周袋较浅)。

结论

本研究表明,对于分层牙科数据的分析,多水平模型是比单水平技术更强大的研究工具。使用这些技术的研究人员有能力分析复杂的分层数据结构,例如牙科中常见的那些结构。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验