Kristensen J K, Sandbaek A, Lassen J F, Bro F, Lauritzen T
Department of General Practice, University of Aarhus, Vennelyst Boulevard 6, DK-8000 Arhus C.
Dan Med Bull. 2001 Feb;48(1):33-7.
This study aims to describe the process of identifying people known to have diabetes through public data files, to validate this method, and to describe models for optimization of such identification processes.
In a study population of 303,250 citizens, the diabetics were identified by combining information from public data files with information from general practitioners. Data validity was checked by comparing the results of data searches in public data files against information from general practitioners and a random sample of diabetics. Two models were defined to optimize the use of public data files for identification of diabetics. In model A the minimum number of parameters needed to obtain a sensitivity as high as possible was identified. In model B the optimal combination of parameters needed to obtain a high positive predictive value combined with a high sensitivity was identified.
A total of 5449 diabetics were identified. Of those 4438 (81%) were classified as Type 2 diabetics and 1011 (19%) were classified as Type 1 diabetics. The data validation revealed that one person was misclassified as a diabetic and 93 persons were misclassified as non-diabetics. In model A the identification parameters included: "prescription", "HbA1c", "chiropodist service" and "glucose service". In model B the optimal combination of parameters was identified as: minimum two HbA1c measurements, minimum one visit to a chiropodist, minimum one prescription or minimum one abnormal HbA1c during one year.
Public data files are suitable for identification of both Type 1 and Type 2 diabetics. Models have been developed to identify diabetics and to promote the possibilities of long-term follow-up and quality assessment in an unselected diabetic population in a region.
本研究旨在描述通过公共数据文件识别已知患有糖尿病的人群的过程,验证该方法,并描述优化此类识别过程的模型。
在一个包含303250名公民的研究群体中,通过将公共数据文件中的信息与全科医生的信息相结合来识别糖尿病患者。通过将公共数据文件中的数据搜索结果与全科医生的信息以及糖尿病患者的随机样本进行比较来检查数据有效性。定义了两个模型以优化使用公共数据文件来识别糖尿病患者。在模型A中,确定了获得尽可能高的敏感性所需的最少参数数量。在模型B中,确定了获得高阳性预测值并结合高敏感性所需的参数的最佳组合。
共识别出5449名糖尿病患者。其中4438名(81%)被分类为2型糖尿病患者,1011名(19%)被分类为1型糖尿病患者。数据验证显示,有1人被误分类为糖尿病患者,93人被误分类为非糖尿病患者。在模型A中,识别参数包括:“处方”、“糖化血红蛋白(HbA1c)”、“足病医生服务”和“血糖服务”。在模型B中,参数的最佳组合被确定为:一年内至少两次糖化血红蛋白测量值、至少一次看足病医生、至少一张处方或至少一次异常糖化血红蛋白测量值。
公共数据文件适用于识别1型和2型糖尿病患者。已开发出模型来识别糖尿病患者,并促进对某一地区未经过选择的糖尿病患者群体进行长期随访和质量评估的可能性。