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An algorithm to identify patients with type 2 diabetes among undocumented migrants using data on drug dispensation by charities.

机译:一种使用慈善机构分配药物的数据在无证移民中识别2型糖尿病患者的算法。

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Background . Electronic databases of chronic diseases are available in many countries. Health data of residents, natives and documented migrants, are thus easily accessible. This does not happen for the growing population of undocumented migrants. Methods . We analysed the databases of two Italian non-governmental organisations (NGOs) containing the records of all drug dispensations to 12,386 undocumented migrants from January 1 st , 2013 to December 31 st , 2016, with the aim to identify treated for type 2 diabetes (T2D) on the basis of demographic data and dispensed medicines. Medications were identified according to the Anatomical Chemical Therapeutic (ATC) classification. All the patients with at least one dispensation per year of any A10 (antidiabetic) drug were selected. An algorithm to match this observation with the diagnosis of type 2 diabetes mellitus (T2D), on the basis of demographic data and use or not of insulin, was developed. The algorithm was validated in 400 diabetic and 400 non-diabetic patients randomly selected. Results . The algorithm correctly identified all patients (N=660) with T2D. When our patients were grouped according to ethnicity, we found that all ethnic groups contributed a comparable percentage of patients with T2D. Also, no difference was seen between the group of EU citizens living in poverty cared for by the NGOs and any of the ethnic groups. Conclusions . This algorithm can be used to identify patients treated for T2D when no diagnostic codes are available, as is frequently the case with undocumented migrants. Therefore it can be useful for many aspects of public health.
机译:背景 。许多国家都有慢性病电子数据库。因此,居民,原住民和有证件的移民的健康数据很容易获得。对于越来越多的无证移民来说,这种情况不会发生。方法 。我们分析了两个意大利非政府组织(NGOs)的数据库,其中包含2013年1月1日至2016年12月31日对12,386名无证移民的所有配药记录,目的是确定治疗2型糖尿病(T2D )基于人口统计数据和配药。根据解剖化学疗法(ATC)分类确定药物。选择所有每年至少分配一种A10(抗糖尿病)药物的患者。根据人口统计数据和是否使用胰岛素,开发了一种将该观察结果与2型糖尿病(T2D)诊断相匹配的算法。该算法在随机选择的400位糖尿病患者和400位非糖尿病患者中得到了验证。结果。该算法正确地识别了所有患有T2D的患者(N = 660)。当我们按照种族对患者进行分组时,我们发现所有族裔对T2D患者的贡献均相当。同样,在非政府组织照顾的生活在贫困中的欧盟公民群体与任何种族群体之间也没有差异。结论。当没有可用的诊断代码时,可以使用该算法来识别接受T2D治疗的患者,这与无证移民经常发生。因此,它对于公共卫生的许多方面都是有用的。

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