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首页> 外文期刊>International Journal of Population Data Science >Using Bayesian Model Averaging to Analyse Hierarchical Health Data: model implementation and application to linked health service use data
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Using Bayesian Model Averaging to Analyse Hierarchical Health Data: model implementation and application to linked health service use data

机译:使用平均贝叶斯模型分析分层健康数据:模型实现和对链接的健康服务使用数据的应用

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ABSTRACTObjectiveThe majority of standard coding systems applied to health data are hierarchical: they start with several major categories and then each category is broken into subcategories across multiple levels. Running statistical models on these datasets, may lead to serious methodological challenges such as multicollinearity between levels or selecting suboptimal models as model space grows exponentially by adding each new level. The aim of this presentation is to introduce an analytical framework that addresses this challenge. ApproachData was from individuals who claimed Transport Accident Commission (TAC) compensation for motor vehicle accidents that occurred between 2010 and 2012 in the state of Victoria, Australia and provided consent for Pharmaceutical Benefits Scheme (PBS) and Medicare Benefits Schedule (MBS) linkage (n=738). PBS and MBS records dating from 12 months prior to injury were provided by the Department of Human Services (Canberra, Australia). Pre-injury use of health service items and pharmaceuticals were considered to indicate pre-existing health conditions. Both MBS and PBS listings have a hierarchical structure. The outcome was the cost of recovery; this was also hierarchical across four level (e.g. total, medical, consultations, and specialist). A Bayesian Model Averaging model was embedded into a data mining framework which automatically created all the cost outcomes and selected the best model after penalizing for multicollinearity. The model was run across multiple prior settings to ensure robustness. Monash University’s High Performance Computing Cluster was used for running approximately 5000 final models.ResultsThe framework successfully identified variables at different levels of hierarchy as indicators of pre-existing conditions that affect cost of recovery. For example, according to the results, on average, patients who received prescription pain or mental health related medication before the injury had 31.2% higher short-term and 36.9% higher long-term total recovery cost. For every anaesthetic in the year before the accident, post-injury hospital cost increased by 24%, for patients with anxiety it increased by 35.4%. For post-injury medical costs, every prescription of drugs used in diabetes (Category A10 in ATC) increased the cost by 8%, long term medical costs were affected by both pain and mental health. ConclusionBayesian model averaging provides a robust framework for mining hierarchically linked health data helping researchers to identify potential associations which may not have been discovered using conventional technique and also preventing them from identifying associations that are sporadic but not robust.
机译:摘要目标适用于健康数据的大多数标准编码系统都是分层的:它们从几个主要类别开始,然后每个类别又分为多个级别的子类别。在这些数据集上运行统计模型可能会导致严重的方法挑战,例如级别之间的多重共线性,或者随着模型空间的增加(通过添加每个新级别)而选择次优模型。本演讲的目的是介绍一个解决这一挑战的分析框架。 ApproachData来自声称对澳大利亚维多利亚州在2010年至2012年之间发生的机动车交通事故向交通事故委员会(TAC)进行赔偿的个人,并表示同意药物福利计划(PBS)和医疗保险福利计划(MBS)的关联(n = 738)。人类服务部(澳大利亚堪培拉)提供了受伤前12个月的PBS和MBS记录。受伤前使用卫生服务项目和药品被认为是表明预先存在的健康状况。 MBS和PBS列表均具有层次结构。结果就是恢复成本;这也是四个层次的层次结构(例如,总层次,医疗层次,咨询层次和专家层次)。贝叶斯模型平均模型被嵌入到数据挖掘框架中,该框架会自动创建所有成本结果并在对多重共线性进行惩罚后选择最佳模型。该模型在多个先前设置上运行,以确保鲁棒性。莫纳什大学的高性能计算集群用于运​​行大约5000个最终模型。结果该框架成功地确定了不同层次结构的变量,这些变量是影响恢复成本的既有条件的指标。例如,根据结果,平均而言,受伤前接受处方药或精神健康相关药物治疗的患者的短期总康复成本高31.2%,长期总康复成本高36.9%。事故发生前一年中,每使用一种麻醉剂,受伤后的医院费用都会增加24%,而焦虑症患者的费用会增加35.4%。对于受伤后的医疗费用,糖尿病患者使用的每个处方药(ATC中的A10类)均使费用增加了8%,长期医疗费用同时受到疼痛和心理健康的影响。结论贝叶斯模型平均为挖掘分层链接的健康数据提供了一个鲁棒的框架,可帮助研究人员识别使用常规技术可能未发现的潜在关联,并防止他们识别偶发但不鲁棒的关联。

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