Is diabetes mellitus correctly registered and classified in primary care? A population-based study in Catalonia, Spain

Manel Mata-Cases , Dídac Mauricio , Jordi Real , Bonaventura Bolíbar , Josep Franch-Nadal
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Abstract

Objective

To assess the prevalence of miscoding, misclassification, misdiagnosis and under-registration of diabetes mellitus (DM) in primary health care in Catalonia (Spain), and to explore use of automated algorithms to identify them.

Methods

In this cross-sectional, retrospective study using an anonymized electronic general practice database, data were collected from patients or users with a diabetes-related code or from patients with no DM or prediabetes code but treated with antidiabetic drugs (unregistered DM). Decision algorithms were designed to classify the true diagnosis of type 1 DM (T1DM), type 2 DM (T2DM), and undetermined DM (UDM), and to classify unregistered DM patients treated with antidiabetic drugs.

Results

Data were collected from a total of 376,278 subjects with a DM ICD-10 code, and from 8707 patients with no DM or prediabetes code but treated with antidiabetic drugs. After application of the algorithms, 13.9% of patients with T1DM were identified as misclassified, and were probably T2DM; 80.9% of patients with UDM were reclassified as T2DM, and 19.1% of them were misdiagnosed as DM when they probably had prediabetes. The overall prevalence of miscoding (multiple codes or UDM) was 2.2%. Finally, 55.2% of subjects with unregistered DM were classified as prediabetes, 35.7% as T2DM, 8.5% as UDM treated with insulin, and 0.6% as T1DM.

Conclusions

The prevalence of inappropriate codification or classification and under-registration of DM is relevant in primary care. Implementation of algorithms could automatically flag cases that need review and would substantially decrease the risk of inappropriate registration or coding.

糖尿病在初级保健中的登记和分类是否正确?西班牙加泰罗尼亚的一项基于人群的研究
目的评估加泰罗尼亚(西班牙)初级卫生保健中糖尿病(DM)的错误编码、错误分类、误诊和登记不足的发生率,并探索使用自动化算法来识别它们。方法在这项使用匿名电子全科医学数据库的横断面回顾性研究中,数据来自具有糖尿病相关代码的患者或用户,或来自没有糖尿病或糖尿病前期代码但使用抗糖尿病药物治疗的患者(未注册糖尿病患者)。设计决策算法对1型糖尿病(T1DM)、2型糖尿病(T2DM)和未确诊糖尿病(UDM)的真实诊断进行分类,并对接受抗糖尿病药物治疗的未登记糖尿病患者进行分类。结果收集了376278名具有糖尿病ICD-10代码的受试者和8707名没有糖尿病或糖尿病前期代码但接受抗糖尿病药物治疗的患者的数据。应用算法后,13.9%的T1DM患者被确定为错误分类,可能是T2DM;80.9%的UDM患者被重新归类为T2DM,19.1%的患者在可能患有糖尿病前期时被误诊为DM。错误编码(多重编码或UDM)的总患病率为2.2%。最后,55.2%的未登记糖尿病受试者被归类为糖尿病前期,35.7%被归类为T2DM,8.5%被归类为胰岛素治疗的UDM,0.6%被归类为T1DM。结论DM编码或分类不当和登记不足的患病率与初级保健有关。算法的实现可以自动标记需要审查的案例,并将大大降低不适当注册或编码的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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