...
首页> 外文期刊>Tropical Medicine and International Health: TM and IH >How useful is a name-based algorithm in health research among Turkish migrants in Germany?
【24h】

How useful is a name-based algorithm in health research among Turkish migrants in Germany?

机译:基于名称的算法在德国土耳其移民的健康研究中有多大用处?

获取原文
获取原文并翻译 | 示例

摘要

Migrants often face particular social, economic and health disadvantages relative to the population of the host country. In order to adapt health services to the needs of migrants, health researchers need to identify differences in risk factor and disease profiles, as well as inequalities concerning treatment and prevention. Registries of health-related events could be employed for these purposes. In Germany, however, routine data bases often hold no, or inaccurate, information on the national origin of the cases registered. We developed an algorithm based on a large data set of Turkish family and first names (n=15 000), with religion as additional criterion, to identify cases of Turkish origin in registries in a largely automatic search. We tested the performance of the algorithm in a population registry and in a cancer registry. The algorithm discriminates well against Greek and Arab names, with 1% false positive matches in our study. It achieves a specificity of > 99.9% in delimiting Turkish from German cases in the cancer registry. The sensitivity can be increased to 85%, provided the small proportion of case records with uncertain origin can be assessed manually. The name algorithm can be useful for registry-based health research among Turkish migrants in Germany. Possible applications are e.g. in cancer registries to compare survival among German and Turkish cancer patients, or in health insurance registries to compare the relative importance of work-related degenerative diseases. In specific circumstances, the algorithm may also be useful in aetiological research.
机译:相对于东道国的人口,移民往往面临特殊的社会,经济和健康不利条件。为了使卫生服务适应移民的需求,卫生研究人员需要确定风险因素和疾病状况的差异,以及与治疗和预防有关的不平等现象。可以将与健康有关的事件的注册表用于这些目的。但是,在德国,常规数据库通常没有或没有关于所注册案件的国家来源的信息。我们开发了一种基于土耳其族和姓氏(n = 15 000)的大数据集的算法,并以宗教作为附加标准,可以在很大程度上自动搜索的情况下识别出注册表中的土耳其血统。我们在人口登记册和癌症登记册中测试了该算法的性能。该算法可以很好地区分希腊和阿拉伯名称,在我们的研究中,假阳性匹配率为1%。在癌症登记处将土耳其人与德国人区分开来时,其特异性达到> 99.9%。如果可以手动评估一小部分来源不确定的病例记录,则敏感性可以提高到85%。名称算法对于德国的土耳其移民中基于注册表的健康研究很有用。可能的应用例如在癌症登记处比较德国和土耳其癌症患者的生存率,或在健康保险登记处比较与工作有关的变性疾病的相对重要性。在特定情况下,该算法在病因研究中也可能有用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号