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查尔森合并症指数:更新与翻译

Charlson Comorbidity Index: Update and Translation.

作者信息

Glasheen William P, Cordier Tristan, Gumpina Rajiv, Haugh Gil, Davis Jared, Renda Andrew

机构信息

Principal Data Scientist, Consumer Analytics and Data Strategy.

Principal Data Scientist, Clinical Data Science, at the time of manuscript preparation.

出版信息

Am Health Drug Benefits. 2019 Jun-Jul;12(4):188-197.

Abstract

BACKGROUND

The original Charlson Comorbidity Index (CCI) encompassed 19 categories of medical conditions that were identifiable in medical records. Subsequent publications provided scoring algorithms based on () codes. The recent adoption of () codes in the United States created a need for a new scoring scheme. In addition, a review of existing claims-based scoring systems suggested 3 areas for improvement: the lack of explicit identification of secondary diabetes, the lack of differentiation between HIV infection and AIDS, and insufficient guidance on scoring hierarchy. In addition, addressing the third need raised the issue of disease severity in renal disease.

OBJECTIVES

This initiative aimed to create an expanded and refined scoring system for CCI, addressing the classification of issues noted above, create a corresponding system, assess the comparability of - and -based scores, and validate the new scoring scheme.

METHODS

We created and code tables for 19 CCI medical conditions. The new scoring scheme was labeled CDMF CCI and was tested using claims-based data for individuals aged ≥65 years who participated in a Humana Medicare Advantage plan during at least 1 of 3 consecutive 12-month periods. Two 12-month periods were during the era and the third 12-month period was during the era. Because many individuals were counted in more than one 12-month period, we described the study population as comprising 3 panels. We used regression models to analyze the association between the CCI score and same-year inpatient admissions and near-term (90-day) mortality. Additional testing was done by comparing the mean CCI score or disease prevalence in the 3 subpopulations of people with HIV/AIDS, renal disease, or diabetes. Finally, we calculated area under the receiver operating characteristics (AUC-ROC) curve values by applying the Deyo system and our and scoring systems.

RESULTS

The CDMF and scoring scheme yielded comparable scores across the 3 panels, and inpatient admissions and mortality rates consistently increased in each panel as the CCI score increased. Comparisons of the performance of the Deyo system and our proposed CDMF system in the 3 key subpopulations showed that the CDMF system produced a lower CCI score in the presence of HIV infection without AIDS, achieved similar detection ability of diabetes, and allowed good differentiation between mild-to-moderate and severe renal disease. AUC-ROC values were similar between the CDMF coding system and the Deyo system.

CONCLUSION

Our results support the implementation of the CDMF CCI scoring instrument to triage individual patients for disease- and care-management programs. In addition, the CDMF scheme allows for a more precise understanding of chronic disease at a population level, thus allowing health systems and plans to design services and benefits to meet multifactorial clinical needs. Preliminary validation sets the stage for further testing using long-term follow-up data and for the adaptation of this coding scheme to a chart review instrument.

摘要

背景

最初的查尔森合并症指数(CCI)涵盖了19类可在医疗记录中识别的疾病状况。后续出版物提供了基于()代码的评分算法。美国最近采用了()代码,因此需要一种新的评分方案。此外,对现有的基于索赔的评分系统进行的审查提出了3个需要改进的方面:未明确识别继发性糖尿病、未区分HIV感染和艾滋病以及评分层次结构的指导不足。此外,解决第三个问题引发了肾脏疾病中疾病严重程度的问题。

目的

本倡议旨在创建一个扩展和完善的CCI评分系统,解决上述分类问题,创建一个相应的()系统,评估基于()和()的分数的可比性,并验证新的评分方案。

方法

我们为19种CCI疾病状况创建了()和()代码表。新的评分方案被标记为CDMF CCI,并使用在连续3个12个月期间至少1个期间参加Humana医疗保险优势计划的65岁及以上个体的基于索赔的数据进行测试。两个12个月期间处于()时代,第三个12个月期间处于()时代。由于许多个体在多个12个月期间被计数,我们将研究人群描述为由3个面板组成。我们使用回归模型分析CCI评分与同年住院入院和近期(90天)死亡率之间的关联。通过比较HIV/AIDS、肾脏疾病或糖尿病患者的3个亚组中的平均CCI评分或疾病患病率进行了额外测试。最后,我们通过应用Deyo系统以及我们的()和()评分系统计算受试者工作特征曲线下面积(AUC-ROC)值。

结果

CDMF()和()评分方案在3个面板中产生了可比的分数,并且随着CCI评分的增加,每个面板中的住院入院率和死亡率持续上升。在3个关键亚组中对Deyo系统和我们提出的CDMF()系统的性能进行比较表明,在没有艾滋病的HIV感染情况下,CDMF()系统产生的CCI评分较低,在糖尿病检测能力方面相似,并且能够很好地区分轻度至中度和重度肾脏疾病。CDMF()编码系统和Deyo系统之间的AUC-ROC值相似。

结论

我们的结果支持实施CDMF CCI评分工具,以便为疾病和护理管理计划对个体患者进行分类。此外,CDMF方案允许在人群层面更精确地了解慢性病,从而使卫生系统和计划能够设计服务和福利以满足多因素临床需求。初步验证为使用长期随访数据进行进一步测试以及将此编码方案改编为图表审查工具奠定了基础。

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