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首页> 外文期刊>Pharmacoepidemiology and drug safety >Chronic obstructive pulmonary disease exacerbation episodes derived from electronic health record data validated using clinical trial data
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Chronic obstructive pulmonary disease exacerbation episodes derived from electronic health record data validated using clinical trial data

机译:慢性阻塞性肺部疾病加剧源自电子健康记录数据使用临床试验数据验证

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摘要

Purpose To validate an algorithm for acute exacerbations of chronic obstructive pulmonary disease (AECOPD) episodes derived in an electronic health record (EHR) database, against AECOPD episodes collected in a randomized clinical trial using an electronic case report form (eCRF). Methods We analyzed two data sources from the Salford Lung Study in COPD: trial eCRF and the Salford Integrated Record, a linked primary-secondary routine care EHR database of all patients in Salford. For trial participants, AECOPD episodes reported in eCRF were compared with algorithmically derived moderate/severe AECOPD episodes identified in EHR. Episode characteristics (frequency, duration), sensitivity, and positive predictive value (PPV) were calculated. A match between eCRF and EHR episodes was defined as at least 1-day overlap. Results In the primary effectiveness analysis population (n = 2269), 3791 EHR episodes (mean [SD] length: 15.1 [3.59] days; range: 14-54) and 4403 moderate/severe AECOPD eCRF episodes (mean length: 13.8 [16.20] days; range: 1-372) were identified. eCRF episodes exceeding 28 days were usually broken up into shorter episodes in the EHR. Sensitivity was 63.6% and PPV 71.1%, where concordance was defined as at least 1-day overlap. Conclusions The EHR algorithm performance was acceptable, indicating that EHR-derived AECOPD episodes may provide an efficient, valid method of data collection. Comparing EHR-derived AECOPD episodes with those collected by eCRF resulted in slightly fewer episodes, and eCRF episodes of extreme lengths were poorly captured in EHR. Analysis of routinely collected EHR data may be reasonable when relative, rather than absolute, rates of AECOPD are relevant for stakeholders' decision making.
机译:目的,用于验证在电子健康记录(EHR)数据库中衍生的慢性阻塞性肺病(AECOPD)发作的急性加剧算法,用于使用电子案例报告表格(ECRF)在随机临床试验中收集的AECOPD集。方法分析了COPD中萨尔福德肺部研究的两种数据来源:试验ECRF和萨尔福德综合记录,萨尔福德所有患者的联系的主要次级常规护理EHR数据库。对于试验参与者,将ECRF中报告的AECOPD发作与EHR中鉴定的算法衍生的中等/严重AECOPD发作进行了比较。计算剧集特征(频率,持续时间),灵敏度和阳性预测值(PPV)。 ECRF和EHR剧集之间的匹配定义为至少1天重叠。结果初级有效性分析群体(n = 2269),3791 ehr发作(平均值[SD]长度:15.1 [3.59]天;范围:14-54)和4403中等/严重AECOPD ECRF剧集(平均长度:13.8 [16.20] ]天;范围:1-372)被确定。超过28天的ECRF剧集通常被分解为EHR中的较短事件。敏感性为63.6%和PPV 71.1%,其中一致性定义为至少1天重叠。结论EHR算法性能是可接受的,表明EHR导出的AECOPD剧集可以提供有效,有效的数据收集方法。将EHR衍生的AECOPD集比较与ECRF收集的剧集导致略微较少,并且EHR中极度的ECRF发作率差。当ACOPD的相对而不是绝对的,常规收集的EHR数据分析可能是合理的,因为AECOPD与利益相关者决策相关。

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