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Improving the Identification of Out-of-Hospital Sudden Cardiac Deaths in a General Practice Research Database

机译:在一般实践研究数据库中改善医院外突发心脏死亡的鉴定

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BackgroundThe ascertainment of sudden cardiac death (SCD) in electronic health databases is challenging.ObjectivesOur objective was to evaluate the applicability of the validated computer definition of SCD developed by Chung et al. in a retrospective study of SCD and domperidone exposure in the Clinical Practice Research Datalink (CPRD).MethodsWe assessed out-of-hospital SCD by applying the validated computer definition and linking data with Hospital Episode Statistics and death certificates. We developed a separate algorithm to identify end-of-life care in noninstitutionalized patients and excluded associated deaths from the analysis to address their misclassification as SCD.ResultsOf the 681,104 patients in the study cohort, 3444 were initially classified as out-of-hospital SCD. Next, 163 deaths were identified as expected deaths by our algorithm for end-of-life home care. After review of patient profiles, 162 were classified as expected deaths because of evidence that the patient received palliative or end-of-life care, but one was a false negative. The exclusion of such cases appreciably changed the odds ratio for current exposure to domperidone compared with non-use of study medications from 2.09 (95?% confidence interval [CI] 1.16–3.74) to 1.71 (95?% CI 0.92–3.18). A similar effect on the odds ratio was observed for current exposure to metoclopramide but not to proton pump inhibitors.ConclusionsOur algorithm to identify end-of-life care at home in the CPRD performed well, with only one false negative. The exclusion of misclassified cases of SCD reduced the magnitude of the odds ratios for SCD associated with domperidone and metoclopramide exposure by controlling protopathic bias.
机译:背景技术电子健康数据库中的突然心脏死亡(SCD)的确定是挑战的。可能的目的是评估Chung等人开发的经过验证的计算机定义的适用性。在临床实践研究DataLink(CPRD)中的SCD和Domperidone接触的回顾性研究.Methodswe通过应用经过验证的计算机定义和将数据与医院剧集统计和死亡证书联系起来,评估了医院外的SCD。我们开发了一个单独的算法,以识别非合理性患者的寿命终端,并排除了分析中的相关死亡,以解决他们的错误分类为SCD。研究队列的681,104名患者,3444名初始归类为医院外科SCD 。接下来,通过我们的惯用算法为预期的预期死亡而被确定为预期死亡的预期死亡。在审查患者概况后,由于患者接受了姑息或终生护理的证据表明,162人被归类为预期的死亡,但是一个是假阴性。除了从2.09(95倍置信区间隔[CI] 1.16-3.74)至1.71(95〜%CI 0.92-3.18)的情况下,排除这种情况的案例明显改变了DOMPERIDONE对DOMPERIDONE的可能性比例。观察到对电流暴露于甲氧氯丙普胺但不是质子泵抑制剂的相似效果。结论CPRD在家中识别寿命结束的算法,只有一个假阴性。排除SCD的错误分配病例降低了通过控制突出偏压与Dumperidone和甲酰氯丙酰胺暴露相关的SCD的大量比例的大小。

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