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医疗保险理赔中疾病分类准确性下降:我们是否应该重新考虑主要诊断分类?

Declining accuracy in disease classification on health insurance claims: should we reconsider classification by principal diagnosis?

机构信息

National Institute of Public Health, Department of Management Sciences, Wako, Saitama, Japan.

出版信息

J Epidemiol. 2010;20(2):166-75. doi: 10.2188/jea.je20090044. Epub 2010 Jan 9.

Abstract

BACKGROUND

An ideal classification should have maximum intercategory variance and minimal intracategory variance. Health insurance claims typically include multiple diagnoses and are classified into different disease categories by choosing principal diagnoses. The accuracy of classification based on principal diagnoses was evaluated by comparing intercategory and intracategory variance of per-claim costs and the trend in accuracy was reviewed.

METHODS

Means and standard deviations of log-transformed per-claim costs were estimated from outpatient claims data from the National Health Insurance Medical Benefit Surveys of 1995 to 2007, a period during which only the ICD10 classification was applied. Intercategory and intracategory variances were calculated for each of 38 mutually exclusive disease categories and the percentage of intercategory variance to overall variance was calculated to assess the trend in accuracy of classification.

RESULTS

A declining trend in the percentage of intercategory variance was observed: from 19.5% in 1995 to 10% in 2007. This suggests that there was a decline in the accuracy of disease classification in discriminating per-claim costs for different disease categories. The declining trend temporarily reversed in 2002, when hospitals and clinics were directed to assign the principal diagnosis. However, this reversal was only temporary and the declining trend appears to be consistent.

CONCLUSIONS

Classification of health insurance claims based on principal diagnoses is becoming progressively less accurate in discriminating per-claim costs. Researchers who estimate disease-specific health care costs using health insurance claims must therefore proceed with caution.

摘要

背景

理想的分类应该具有最大的类别间方差和最小的类别内方差。医疗保险索赔通常包括多个诊断,并通过选择主要诊断将其分类为不同的疾病类别。通过比较每笔索赔成本的类别间和类别内方差以及审查准确性的趋势,评估了基于主要诊断的分类的准确性。

方法

从 1995 年至 2007 年国家健康保险医疗福利调查的门诊索赔数据中估计了对数转换后每笔索赔成本的平均值和标准差,在此期间仅应用了 ICD10 分类。为 38 个相互排斥的疾病类别中的每一个计算了类别间和类别内的方差,并计算了类别间方差占总方差的百分比,以评估分类准确性的趋势。

结果

观察到类别间方差百分比呈下降趋势:从 1995 年的 19.5%下降到 2007 年的 10%。这表明,在区分不同疾病类别的每笔索赔成本方面,疾病分类的准确性有所下降。这一下降趋势在 2002 年暂时逆转,当时医院和诊所被指示分配主要诊断。然而,这种逆转只是暂时的,下降趋势似乎是一致的。

结论

基于主要诊断的医疗保险索赔分类在区分每笔索赔成本方面的准确性越来越差。因此,使用医疗保险索赔估计特定疾病的医疗保健成本的研究人员必须谨慎行事。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cc4f/3900816/893102fe2117/je-20-166-g001.jpg

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