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Introducing an efficient sampling method for national surveys with limited sample sizes: application to a national study to determine quality and cost of healthcare

机译:介绍了具有有限样本规模的国家调查的有效采样方法:在国家研究中申请确定医疗保健的质量和成本

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Sampling a small number of participants from an entire country is not straightforward. In this case, researchers reluctantly sample from a single setting or few settings, which limits the generalizability of findings. Therefore, there is a need to design efficient sampling method for small sample size surveys that can produce generalizable results at the country level. Data comprised of twenty proxy variables to measure health services demands, structures, and outcomes of 413 districts of Iran. We used two data mining methods (hierarchical clustering method (HCM) and model-based clustering method (MCM)) to create homogenous groups of districts, i.e., strata based on these variables. We compared the internal and stability validity of the methods by statistical indices. An expert group checked the face validity of the methods, particularly regarding the total number of strata and the combination of districts in each stratum. The efficiency of selected method, which is measured by the inverse of variance, was compared with a simple random sampling (SRS) through simulation. The sampling design was tested in a national study in Iran, which aimed to evaluate the quality and costs of medical care for eight selected diseases by only recruiting 300 participants per disease at the country level. MCM and HCM divided the districts into eight and two clusters, respectively. The measures of internal and stability validity showed that clusters created by MCM were more separated, compact, and stable, thus forming our optimum strata. The probability of death from stroke, chronic obstructive pulmonary disease, and in-hospital mortality rate were the most important indicators that distinguished the eight strata. Based on the simulation results, MCM increased the efficiency of the sampling design up to 1.7 times compared to SRS. The use of data mining improved the efficiency of sampling up to 1.7 times greater than SRS and markedly reduced the number of strata to eight in the entire country. The proposed sampling design also identified key variables that could be used to classify districts in Iran for sampling from these target populations in the future studies.
机译:对整个国家的少数参与者抽样并不简单。在这种情况下,研究人员不情愿地从单个设置或几个设置中进行采样,这限制了调查结果的普遍性。因此,需要设计有效的采样方法,用于小样本大小调查,可以在国家级别产生易达的结果。由20个代理变量组成的数据,以衡量413个伊朗地区的健康服务需求,结构和结果。我们使用了两种数据挖掘方法(分层聚类方法(HCM)和基于模型的聚类方法(MCM))来创建区域的同质组,即基于这些变量。我们通过统计指数比较了方法的内部和稳定性有效性。专家组检查了这些方法的面部有效性,特别是关于地层的总数和每个层中的地区的组合。通过仿真比较通过方差逆测量的所选方法的效率与简单的随机抽样(SRS)进行比较。采样设计在伊朗的国家研究中进行了测试,该研究旨在通过在国家一级招募300名参与者来评估八种选定疾病的医疗保健的质量和成本。 MCM和HCM分别将该地区分成八个和两个群集。内部和稳定性有效性的措施表明,MCM产生的簇更加分开,紧凑,稳定,从而形成了我们的最佳地层。中风,慢性阻塞性肺病和住院死亡率死亡的可能性是区分八层的最重要指标。根据仿真结果,MCM与SRS相比提高了采样设计的效率高达1.7次。数据挖掘的使用提高了比SRS的比例高达1.7倍,并显着降低了整个国家/地区的八个。建议的抽样设计还确定了可用于对伊朗的区域进行分类,以便在未来的研究中对这些目标人群进行抽样。

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