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全科医疗咨询中地理差异的多层次建模。

Multilevel modeling of geographic variation in general practice consultations.

机构信息

Population Wellbeing and Environment Research Lab (PowerLab), School of Health and Society, Faculty of Arts, Social Sciences, and Humanities, University of Wollongong, Wollongong, New South Wales, Australia.

Menzies Centre for Health Policy, University of Sydney, Sydney, New South Wales, Australia.

出版信息

Health Serv Res. 2021 Dec;56(6):1252-1261. doi: 10.1111/1475-6773.13644. Epub 2021 Mar 15.

Abstract

OBJECTIVE

To test relatively simple and complex models for examining model fit, higher-level variation in, and correlates of, GP consultations, where known nonhierarchical data structures are present.

SETTING

New South Wales (NSW), Australia.

DESIGN

Association between socioeconomic circumstances and geographic remoteness with GP consultation frequencies per participant was assessed using single-level, hierarchical, and multiple membership cross-classified (MMCC) models. Models were adjusted for age, gender, and a range of socioeconomic and demographic confounds.

DATA COLLECTION/EXTRACTION METHODS: A total of 261,930 participants in the Sax Institute's 45 and Up Study were linked to all GP consultation records (Medicare Benefits Schedule; Department of Human Services) within 12 months of baseline (2006-2009).

PRINCIPAL FINDINGS

Deviance information criterion values indicated the MMCC negative binomial regression was the best fitting model, relative to an MMCC Poisson equivalent and simpler hierarchical and single-level models. Between-area variances were relatively consistent across models, even when between GP variation was estimated. Lower rates of GP consultation outside of major cities were only observed once between-GP variation was assessed simultaneously with between-area variation in the MMCC models.

CONCLUSIONS

Application of the MMCC model is necessary for estimation of variances and effect sizes in sources of big data on primary care in which complex nonhierarchical clustering by geographical area and GP is present.

摘要

目的

检验相对简单和复杂的模型,以考察模型拟合度、更高层次的变异性以及与全科医生就诊相关的因素,这些因素都存在已知的非层次数据结构。

设置

澳大利亚新南威尔士州(NSW)。

设计

使用单水平、层次和多成员交叉分类(MMCC)模型评估社会经济状况和地理位置与每位参与者的全科医生就诊频率之间的关联。模型调整了年龄、性别以及一系列社会经济和人口统计学混杂因素。

数据收集/提取方法:Sax 研究所的 45 岁及以上研究共有 261930 名参与者,在基线(2006-2009 年)后 12 个月内与所有全科医生就诊记录(医疗保险福利计划;人类服务部)相关联。

主要发现

偏差信息准则值表明,与 MMCC 泊松等效模型和更简单的层次和单水平模型相比,MMCC 负二项回归是最佳拟合模型。即使在估计了 GP 之间的变异后,各区域之间的方差仍然相对一致。只有在 MMCC 模型中同时评估 GP 之间和区域之间的变异时,才观察到大城市以外的 GP 就诊率较低。

结论

在存在复杂的地理区域和 GP 非层次聚类的大数据源中评估方差和效应量时,必须应用 MMCC 模型。

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Multilevel modeling of geographic variation in general practice consultations.全科医疗咨询中地理差异的多层次建模。
Health Serv Res. 2021 Dec;56(6):1252-1261. doi: 10.1111/1475-6773.13644. Epub 2021 Mar 15.

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