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一种多维分级系统(BODE指数)作为慢性阻塞性肺疾病住院治疗的预测指标。

A multidimensional grading system (BODE index) as predictor of hospitalization for COPD.

作者信息

Ong Kian-Chung, Earnest Arul, Lu Suat-Jin

机构信息

Department of Respiratory Medicine, Tan Tock Seng Hospital, 11 Jalan Tan Tock Seng, Singapore 308433.

出版信息

Chest. 2005 Dec;128(6):3810-6. doi: 10.1378/chest.128.6.3810.

DOI:10.1378/chest.128.6.3810
PMID:16354849
Abstract

STUDY OBJECTIVES

We hypothesized that the BODE (body mass index, airflow obstruction, dyspnea, and exercise capacity) index would better predict hospitalization for COPD than FEV1 alone, and the purpose of this study was to test this hypothesis in a cohort of patients with COPD.

DESIGN

Historical cohort study.

SETTING

University-affiliated hospital.

PATIENTS

One hundred twenty-seven patients with COPD recruited from the outpatient clinic of a single institution were followed up for a mean period of 16.2 months.

MEASUREMENTS

The BODE index was calculated for each patient using variables obtained within 4 weeks of enrollment. The main outcome measure was the number of hospital admissions for COPD during follow-up. We used the Poisson regression model to quantify and compare the relationship between FEV1 and BODE scores with the number of hospital admissions.

RESULTS

During the follow-up period, 47% of patients required at least one hospital admission and 17% died. Using Poisson regression analysis, a significant effect of BODE score on the number of hospital admissions was found (incidence rate ratio, 1.20; 95% confidence interval [CI], 1.15 to 1.25; p < 0.001). In comparison, there was a significant but smaller effect of the FEV1 percentage of predicted on the number of hospital admissions (incidence rate ratio, 0.08; 95% CI, 0.04 to 0.16; p < 0.001). When categorizing the BODE scores into four quartiles, we found that the BODE index is also a better predictor of hospital admissions than the staging system of COPD as defined by the Global Initiative for Chronic Obstructive Lung Disease. The pseudo r2 using quartiles of the BODE index as the predictor was 0.16, as compared to 0.04 for stages of severity based on FEV1.

CONCLUSIONS

The BODE staging system, which includes in addition to FEV1 other physiologic and clinical variables, helps to better predict hospitalization for COPD.

摘要

研究目的

我们假设BODE(体重指数、气流阻塞、呼吸困难和运动能力)指数比单独的FEV1能更好地预测慢性阻塞性肺疾病(COPD)患者的住院情况,本研究的目的是在一组COPD患者中验证这一假设。

设计

历史性队列研究。

地点

大学附属医院。

患者

从单个机构的门诊招募了127例COPD患者,平均随访16.2个月。

测量

使用入组后4周内获得的变量为每位患者计算BODE指数。主要结局指标是随访期间因COPD住院的次数。我们使用泊松回归模型来量化和比较FEV1和BODE评分与住院次数之间的关系。

结果

在随访期间,47%的患者至少需要住院一次,17%的患者死亡。通过泊松回归分析,发现BODE评分对住院次数有显著影响(发病率比,1.20;95%置信区间[CI],1.15至1.25;p<0.001)。相比之下,预计FEV1百分比对住院次数有显著但较小的影响(发病率比,0.08;95%CI,0.04至0.16;p<0.001)。将BODE评分分为四个四分位数时,我们发现BODE指数比慢性阻塞性肺疾病全球倡议定义的COPD分期系统更能预测住院情况。以BODE指数四分位数作为预测指标的伪r2为0.16,而基于FEV1的严重程度分期的伪r2为0.04°

结论

BODE分期系统除了包括FEV1外,还纳入了其他生理和临床变量,有助于更好地预测住院情况。

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