Pérez-Farinós Napoleón, Galán Iñaki, Ordobás María, Zorrilla Belén, Cantero José Luis, Ramírez Rosa
Servicio de Epidemiología, Instituto de Salud Pública de la Comunidad de Madrid, Madrid, España.
Gac Sanit. 2009 May-Jun;23(3):186-91. doi: 10.1016/j.gaceta.2008.05.010. Epub 2009 Mar 6.
To construct a design for probabilistic sampling of reporting physicians in sentinel networks.
We performed a multi-stage sample selection study. Data on primary care physicians and their patients were obtained from the Madrid Health Institute for 2005. The geographical unit of reference was the basic health area. A factorial analysis was performed on the basis of demographic, socio-cultural and socio-occupational variables. A cluster analysis was conducted to group the 247 basic health areas into homogeneous strata, which were then tested using a discriminant analysis. The general practitioners and pediatricians needed in each stratum were selected by simple random sampling. The representativeness of the population monitored by the selected physicians was studied with respect to the population of Madrid.
Factorial analysis yielded five factors. Using these, 14 strata were obtained, which were shown to be homogeneous and mutually different by discriminant analysis. The minimum population that needed to be monitored consisted of 146,946 adults and 24,518 children, proportionally distributed among the respective strata. Eighty-eight general practitioners and 32 pediatricians were selected, who respectively covered populations of 154,610 and 31,336 persons representative of the general population.
Obtaining samples through suitable designs improves the accuracy of the information gathered by health sentinel networks in epidemiologic surveillance. Ensuring the representativeness of the study population vis-à-vis the general population is essential; cluster analysis and simple random sampling are methods that meet this need. Selecting physicians by means of probabilistic methods enables the accuracy of estimates to be ascertained.
构建哨点网络中报告医生的概率抽样设计。
我们进行了一项多阶段抽样选择研究。2005年从马德里卫生研究所获取了初级保健医生及其患者的数据。参考的地理单位是基本健康区域。基于人口统计学、社会文化和社会职业变量进行了因子分析。进行聚类分析,将247个基本健康区域划分为同质层,然后使用判别分析进行检验。通过简单随机抽样选择每个层所需的全科医生和儿科医生。研究了所选医生所监测人群相对于马德里人口的代表性。
因子分析产生了五个因子。利用这些因子,得到了14个层,判别分析表明这些层是同质且相互不同的。需要监测的最小人群包括146,946名成年人和24,518名儿童,按比例分布在各个层中。选择了88名全科医生和32名儿科医生,他们分别覆盖了代表普通人群的154,610人和31,336人。
通过合适的设计获取样本可提高卫生哨点网络在流行病学监测中收集信息的准确性。确保研究人群相对于普通人群的代表性至关重要;聚类分析和简单随机抽样是满足这一需求的方法。通过概率方法选择医生能够确定估计的准确性。