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一种用于预测慢性阻塞性肺疾病患者呼吸状态的多变量模型。

A multivariate model for predicting respiratory status in patients with chronic obstructive pulmonary disease.

作者信息

Murata G H, Kapsner C O, Lium D J, Busby H K

机构信息

Veterans Affairs Medical Center, and the Department of Medicine, University of New Mexico School of Medicine, Albuquerque 87108, USA.

出版信息

J Gen Intern Med. 1998 Jul;13(7):462-8. doi: 10.1046/j.1525-1497.1998.00135.x.

Abstract

OBJECTIVE

To develop and validate a multivariate model for predicting respiratory status in patients with advanced chronic obstructive pulmonary disease (COPD).

DESIGN

Prospective, double-blind study of peak flow monitoring.

SETTING

Albuquerque Veterans Affairs Medical Center.

PATIENTS

Male veterans with an irreversible component of airflow obstruction on baseline pulmonary function tests.

MEASUREMENTS

This study was conducted between January 1995 and May 1996. At entry, subjects were instructed in the use of the modified Medical Research Council Dyspnea Scale and a mini-Wright peak flow meter equipped with electronic storage. For the next 6 months, they recorded their dyspnea scores once daily and peak expiratory flow rates twice daily, before and after the use of bronchodilators. Patients were blinded to their peak expiratory flow rates, and medical care was provided in the customary manner. Readings were aggregated into 7-day sampling intervals, and interval means were calculated for dyspnea score and peak expiratory flow rate parameters. Intervals from all subjects were then pooled and randomized to separate groups for model development (training set) and validation (test set). In the training set, logistic regression was used to identify variables that predicted future respiratory status. The dependent variable was the log odds that the subject would attain his highest level of dyspnea in the next 7 days. The final model was used to stratify the test set into "high-risk" and "low-risk" categories. The analysis was repeated for 3-day intervals.

MAIN RESULTS

Of the 40 patients considered eligible for study, 8 declined to participate, 4 could not master the technique of peak flow monitoring, and 6 had no fluctuations in their dyspnea level. The remaining 22 subjects form the basis of this report. Fourteen (64%) of the latter completed the 6-month protocol. Data from the 8 who were dropped or died were included up to the point of withdrawal. For 7-day forecasts, mean dyspnea score and mean daily prebronchodilator peak expiratory flow rate were identified as predictor variables. The adjusted odds ratio (OR) for mean dyspnea score was 2.71 (95% confidence interval [CI] 1.79, 4.12) per unit. For mean prebronchodilator peak expiratory flow rate, it was 1.05 (95% CI 1.01, 1.09) per percentage predicted. For 3-day forecasts, the model was composed of mean dyspnea score and mean daily bronchodilator response. The ORs for these terms were 2.66 (95% CI 2.06, 3.44) per unit and 0.980 (95% CI 0.962, 0.998) per percentage of improvement over baseline, respectively. For a given level of dyspnea, higher pre-bronchodilator peak expiratory flow rate and lower bronchodilator response were poor prognostic findings. When the models were applied to the test sets, "high-risk" intervals were 4 times more likely to be followed by maximal symptoms than "low-risk" intervals.

CONCLUSIONS

Dyspnea scores and certain peak expiratory flow rate parameters are independent predictors of respiratory status in patients with COPD. However, our results suggest that monitoring is of little benefit except in patients with the most advanced form of this disease, and its contribution to their management is modest at best.

摘要

目的

建立并验证一种用于预测晚期慢性阻塞性肺疾病(COPD)患者呼吸状态的多变量模型。

设计

峰流速监测的前瞻性双盲研究。

地点

阿尔伯克基退伍军人事务医疗中心。

患者

在基线肺功能测试中存在气流阻塞不可逆成分的男性退伍军人。

测量

本研究于1995年1月至1996年5月进行。入组时,指导受试者使用改良的医学研究委员会呼吸困难量表和配备电子存储功能的小型赖特峰流速仪。在接下来的6个月里,他们每天记录一次呼吸困难评分,每天在使用支气管扩张剂前后记录两次呼气峰流速。患者对自己的呼气峰流速不知情,医疗护理按常规方式提供。读数汇总为7天的采样间隔,并计算呼吸困难评分和呼气峰流速参数的间隔均值。然后将所有受试者的间隔数据汇总并随机分为两组,分别用于模型开发(训练集)和验证(测试集)。在训练集中,使用逻辑回归来识别预测未来呼吸状态的变量。因变量是受试者在接下来7天内达到其最高呼吸困难水平的对数优势。最终模型用于将测试集分为“高风险”和“低风险”类别。以3天间隔重复进行分析。

主要结果

在40名被认为符合研究条件的患者中,8人拒绝参与,4人未能掌握峰流速监测技术,6人的呼吸困难水平无波动。其余22名受试者构成了本报告的基础。其中14人(64%)完成了6个月的方案。8名退出或死亡患者的数据纳入至退出时。对于7天预测,平均呼吸困难评分和每日支气管扩张剂使用前的平均呼气峰流速被确定为预测变量。平均呼吸困难评分每单位的调整优势比(OR)为2.71(95%置信区间[CI]1.79, 4.12)。对于支气管扩张剂使用前的平均呼气峰流速,每预测百分比为1.05(95%CI 1.01, 1.09)。对于3天预测,模型由平均呼吸困难评分和每日支气管扩张剂反应组成。这些指标的OR分别为每单位2.66(95%CI 2:06, 3.44)和相对于基线改善百分比的0.980(95%CI 0.962, 0.998)。对于给定的呼吸困难水平,支气管扩张剂使用前较高的呼气峰流速和较低的支气管扩张剂反应是不良预后表现。当将模型应用于测试集时,“高风险”间隔之后出现最大症状的可能性是“低风险”间隔的4倍。

结论

呼吸困难评分和某些呼气峰流速参数是COPD患者呼吸状态的独立预测指标。然而,我们的结果表明,监测仅对该病最晚期患者有少许益处,其对治疗的贡献充其量也很有限。

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