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利用日本定期收集的数据评估了基于索赔的常见慢性病算法的关联度量。

Association measures of claims-based algorithms for common chronic conditions were assessed using regularly collected data in Japan.

机构信息

Department of Public Health, Graduate School of Medicine, The University of Tokyo, 7-3-1 Hongo, Bunkyo-ku, Tokyo 113-0033, Japan.

Center of Innovation, The University of Tokyo, 7-3-1 Hongo, Bunkyo-ku, Tokyo 113-8656, Japan; Department of Clinical Sciences, Lund University, Skåne University Hospital, Malmö, Sweden; Epidemiology and Prevention Group, Center for Public Health Sciences, National Cancer Center, 5-1-1 Tsukiji, Chuo-ku, Tokyo 104-0045, Japan.

出版信息

J Clin Epidemiol. 2018 Jul;99:84-95. doi: 10.1016/j.jclinepi.2018.03.004. Epub 2018 Mar 14.

Abstract

OBJECTIVES

Although claims data are widely used in medical research, their ability to identify persons' health-related conditions has not been fully justified. We assessed the validity of claims-based algorithms (CBAs) for identifying people with common chronic conditions in a large population using annual health screening results as the gold standard.

STUDY DESIGN AND SETTING

Using a longitudinal claims database (n = 523,267) combined with annual health screening results, we defined the people with hypertension, diabetes, and/or dyslipidemia by applying health screening results as their gold standard and compared them against various CBAs.

RESULTS

By using diagnostic and medication code-based CBAs, sensitivity and specificity were 74.5% (95% confidence interval [CI], 74.2%-74.8%) and 98.2% (98.2%-98.3%) for hypertension, 78.6% (77.3%-79.8%) and 99.6% (99.5%-99.6%) for diabetes, and 34.5% (34.2%-34.7%) and 97.2% (97.2%-97.3%) for dyslipidemia, respectively. Sensitivity did not decrease substantially for hypertension (65.2% [95% CI, 64.9%-65.5%]) and diabetes (73.0% [71.7%-74.2%]) when we used the same CBAs without limiting to primary care settings.

CONCLUSION

We used regularly collected data to obtain CBA association measures, which are applicable to a wide range of populations. Our framework can be a basis of the validity assessment of CBAs for identifying persons' health-related conditions with regularly collected data.

摘要

目的

尽管索赔数据在医学研究中被广泛应用,但它们识别与健康相关状况的能力尚未得到充分证实。我们使用年度健康筛查结果作为金标准,评估了基于索赔的算法(CAB)在大型人群中识别常见慢性病患者的准确性。

研究设计和设置

使用纵向索赔数据库(n=523267)和年度健康筛查结果,我们通过应用健康筛查结果来定义患有高血压、糖尿病和/或血脂异常的人群,并将其作为金标准,同时与各种 CBA 进行比较。

结果

使用基于诊断和药物代码的 CBA,高血压的敏感性和特异性分别为 74.5%(95%置信区间[CI],74.2%-74.8%)和 98.2%(98.2%-98.3%),糖尿病为 78.6%(77.3%-79.8%)和 99.6%(99.5%-99.6%),血脂异常为 34.5%(34.2%-34.7%)和 97.2%(97.2%-97.3%)。当我们不局限于初级保健机构使用相同的 CBA 时,高血压(65.2%[95%CI,64.9%-65.5%])和糖尿病(73.0%[71.7%-74.2%])的敏感性并未显著下降。

结论

我们使用常规收集的数据来获得 CBA 关联度量,这些度量适用于广泛的人群。我们的框架可以作为使用常规收集的数据评估 CBA 识别与健康相关状况的有效性的基础。

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