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一项关于自动交互式呼叫结合健康风险预测对慢性阻塞性肺疾病(COPD)加重频率和严重程度影响的随机对照试验,该试验通过临床评估和使用EXACT PRO进行。

A randomised controlled trial of the effect of automated interactive calling combined with a health risk forecast on frequency and severity of exacerbations of COPD assessed clinically and using EXACT PRO.

作者信息

Halpin David M G, Laing-Morton Tish, Spedding Sarah, Levy Mark L, Coyle Peter, Lewis Jonathan, Newbold Paul, Marno Penny

机构信息

Royal Devon & Exeter Hospital, Barrack Road, Exeter, UK.

出版信息

Prim Care Respir J. 2011 Sep;20(3):324-31, 2 p following 331. doi: 10.4104/pcrj.2011.00057.

Abstract

BACKGROUND

We have developed a winter forecasting service to predict when patients with COPD are at higher risk of an exacerbation and alert them via an automated telephone call.

AIMS

To assess the effect of the service and its ability to predict periods of increased risk.

METHODS

A 4-month prospective randomised controlled trial using clinical criteria and the EXACT PRO questionnaire to identify exacerbations. Patients were randomly allocated to receive alert calls. All patients completed a diary including the EXACT PRO questionnaire on a BlackBerry Smartphone each day. They were contacted and assessed if they appeared to be exacerbating.

RESULTS

79 patients participated, 40 received alert calls. The exacerbation frequency per patient per week was significantly greater during periods of predicted high risk (0.086 ± 0.010 v 0.055 ± 0.010). The exacerbation frequency (± standard error of the mean, SEM) in patients receiving alert calls was lower (0.95 ± 0.27 v 1.17 ± 0.29) but this was not statistically significant. Fewer patients receiving alert calls had one or more EXACT event compared to the controls (34% v 53%, p=0.11), their duration was shorter (8.2 ± 2.0 v10.1 ± 1.9 days, p=0.481) and they were less severe (AUC 65 ± 21 v 115 ± 22, p=0.118). There were no significant differences in the mean change (± SEM) in SGRQ scores between the groups.

CONCLUSIONS

The ability of the forecast to predict high risk periods was confirmed unequivocally. Alert calls appeared to reduce the frequency and severity of exacerbations but these effects did not reach statistical significance, perhaps because of the number of participants, lower than expected exacerbation rates, and the fact that there was contact with patients in both groups whenever they appeared to be exacerbating.

摘要

背景

我们开发了一种冬季预测服务,以预测慢性阻塞性肺疾病(COPD)患者何时处于病情加重的高风险状态,并通过自动电话提醒他们。

目的

评估该服务的效果及其预测风险增加期的能力。

方法

进行一项为期4个月的前瞻性随机对照试验,使用临床标准和EXACT PRO问卷来确定病情加重情况。患者被随机分配接受提醒电话。所有患者每天在黑莓智能手机上完成一份日记,包括EXACT PRO问卷。如果他们似乎病情加重,就会与他们联系并进行评估。

结果

79名患者参与,40名接受提醒电话。在预测的高风险期,每位患者每周的病情加重频率显著更高(0.086±0.010对0.055±0.010)。接受提醒电话的患者的病情加重频率(±平均标准误,SEM)较低(0.95±0.27对1.17±0.29),但这没有统计学意义。与对照组相比,接受提醒电话的患者中发生一次或多次EXACT事件的人数较少(34%对53%,p = 0.11),事件持续时间较短(8.2±2.0对10.1±1.9天,p = 0.481),且病情较轻(AUC 65±21对115±22,p = 0.118)。两组间圣乔治呼吸问卷(SGRQ)评分的平均变化(±SEM)无显著差异。

结论

该预测能够明确预测高风险期。提醒电话似乎降低了病情加重的频率和严重程度,但这些效果未达到统计学意义,可能是由于参与者数量、低于预期的病情加重率,以及两组患者在病情加重时都会与他们联系。

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