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进展为未控制的严重哮喘:一种新的风险方程。

Progression to Uncontrolled Severe Asthma: A Novel Risk Equation.

机构信息

1 eMAX Health Systems, White Plains, New York.

2 University of Illinois Hospital and Health Sciences System, Chicago, Illinois.

出版信息

J Manag Care Spec Pharm. 2017 Jan;23(1):44-50. doi: 10.18553/jmcp.2017.23.1.44.

Abstract

BACKGROUND

Recently published asthma guidelines by the European Respiratory Society and the American Thoracic Society (ERS-ATS) define severe disease based on medication use and control level. These guidelines also emphasize that asthma severity involves certain biomarker phenotypes, one of them being eosinophilic phenotype. The quantification of the influence of eosinophil level toward predicting disease severity can help decision makers manage therapy better earlier.

OBJECTIVE

To develop a risk-scoring algorithm to identify patients at greater risk of developing uncontrolled severe asthma as defined by ERS-ATS guidelines.

METHODS

Data on asthma patients were extracted from the EMRClaims + database from January 2004 to July 2011. Patients with continuous enrollment 12 months before and after the date of the first encounter with a diagnosis of asthma (index date) with at least 1 blood eosinophil test result in the 12 months after the index date, but before the development of uncontrolled severe asthma or the study end date, were included. Uncontrolled severe asthma was defined as the first date on which all criteria of the ERS-ATS definition were first satisfied in the 12 months after the index date. Age (≥ 50 years vs. < 50 years), race, and sex were measured at index, and the Charlson Comorbidity Index (CCI) score (> 0 vs. 0) was measured in the pre-index period. Elevated eosinophil level was defined as a test result with ≥ 400 cells/µL. The study cohort was randomly split 50-50 into derivation and validation samples. Cox proportional hazards regression was used to develop the risk score for uncontrolled severe asthma using the derivation cohort with independent variables of eosinophil level, age, sex, race, and CCI. A bootstrapping procedure was used to generate 1,000 samples from the derivation cohort. Variables significant in ≥ 50% of the samples were retained in the final regression model. A risk score was then calculated based on the coefficient estimates of the final model. C-statistic was used to test the model's discrimination power.

RESULTS

The study included 2,405 patients, 147 (6%) of whom developed uncontrolled severe asthma. Higher eosinophil level and CCI score > 0 were significantly and independently associated with an increased risk of uncontrolled severe asthma in the derivation cohort (HR = 1.90, 95% CI = 1.17-3.08 and HR = 2.00, 95% CI = 1.28-3.13, respectively); findings were similar in the validation cohort. Total risk score was categorized as 0, 2, and 4. All models showed good C-statistics (0.79-0.80), indicating favorable model discrimination. There was a significantly greater number of patients with uncontrolled severe asthma in the risk score segments of 2 and 4 compared with 0 (each P < 0.0001).

CONCLUSIONS

A risk stratification tool using peripheral eosinophil counts and CCI can be used to predict the development of uncontrolled severe asthma.

DISCLOSURES

This study was funded by Teva Pharmaceuticals. eMAX Health Systems was a consultant to Teva Pharmaceuticals for this study and received payment from Teva Pharmaceuticals for work on this study. Casciano and Dotiwala are employed by eMAX Health Systems. Krishnan, Li, and Martin received payment from eMAX Health Systems for work on this study. Small was employed by Teva Pharmaceuticals at the time of this study. Study concept and design were contributed primarily by Casciano, Krishnan, Small, and Martin, along with Li and Dotiwala. Dotiwala, Casciano, Small, and Li collected the data, along with Martin and Li and Krishnan. Data interpretation was provided by Martin, Casciano, and Li, with assistance from the other authors. The manuscript was written by Li, Casciano, Dotiwala, and Small, with assistance from the other authors, and revised by Dotiwala, Small, Li, and Martin, with assistance from Krishnan and Casciano.

摘要

背景

最近由欧洲呼吸学会和美国胸科学会(ERS-ATS)发布的哮喘指南根据药物使用和控制水平定义了严重疾病。这些指南还强调,哮喘严重程度涉及某些生物标志物表型,其中之一是嗜酸性粒细胞表型。嗜酸性粒细胞水平对预测疾病严重程度的影响的量化有助于决策者更早地更好地管理治疗。

目的

开发一种风险评分算法,以识别根据 ERS-ATS 指南定义患有无法控制的严重哮喘的风险更高的患者。

方法

从 2004 年 1 月至 2011 年 7 月,从 EMRClaims + 数据库中提取哮喘患者的数据。在索引日期(首次诊断为哮喘的日期)前 12 个月内持续登记的患者,并且在索引日期后 12 个月内至少有 1 次血液嗜酸性粒细胞检测结果,但在未控制的严重哮喘或研究结束日期之前,被纳入研究。未控制的严重哮喘定义为在索引日期后 12 个月内首次满足 ERS-ATS 定义的所有标准的日期。在索引时测量年龄(≥50 岁与<50 岁)、种族和性别,在预索引期测量 Charlson 合并症指数(CCI)评分(>0 与 0)。嗜酸性粒细胞水平升高定义为检测结果≥400 个细胞/µL。研究队列随机分为 50-50 的推导和验证样本。使用推导队列中的嗜酸性粒细胞水平、年龄、性别、种族和 CCI 等独立变量,使用 Cox 比例风险回归开发未控制的严重哮喘风险评分。从推导队列中生成 1000 个样本的自举程序。保留在≥50%样本中具有统计学意义的变量的回归模型。然后基于最终模型的系数估计值计算风险评分。C 统计量用于检验模型的区分能力。

结果

该研究纳入了 2405 名患者,其中 147 名(6%)患者发展为未控制的严重哮喘。在推导队列中,较高的嗜酸性粒细胞水平和 CCI 评分>0 与未控制的严重哮喘风险增加显著相关(HR = 1.90,95%CI = 1.17-3.08 和 HR = 2.00,95%CI = 1.28-3.13);在验证队列中也得到了相似的结果。总风险评分分为 0、2 和 4。所有模型的 C 统计量均良好(0.79-0.80),表明模型具有良好的区分能力。与 0 相比,在风险评分段 2 和 4 中,未控制的严重哮喘患者数量明显更多(每个 P < 0.0001)。

结论

使用外周嗜酸性粒细胞计数和 CCI 的风险分层工具可用于预测未控制的严重哮喘的发生。

披露

这项研究由梯瓦制药公司资助。eMAX Health Systems 是梯瓦制药公司的顾问,为这项研究提供了服务,并从梯瓦制药公司获得了这项研究的报酬。Casciano 和 Dotiwala 受雇于 eMAX Health Systems。Krishnan、Li 和 Martin 从 eMAX Health Systems 获得了这项研究的报酬。Small 在研究期间受雇于梯瓦制药公司。概念和设计的主要贡献者是 Casciano、Krishnan、Small 和 Martin,以及 Li 和 Dotiwala。Dotiwala、Casciano、Small 和 Li 收集了数据,Martin 和 Li 和 Krishnan 也参与了数据收集。数据解释由 Martin、Casciano 和 Li 提供,其他作者提供了协助。手稿由 Li、Casciano、Dotiwala 和 Small 撰写,其他作者提供了协助,并由 Dotiwala、Small、Li 和 Martin 进行了修订,同时得到了 Krishnan 和 Casciano 的协助。

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