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Accuracy and generalizability of using automated methods for identifying adverse events from electronic health record data: a validation study protocol

机译:使用自动化方法从电子健康记录数据中识别不良事件的准确性和通用性:一项验证研究方案

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Background Adverse events (AEs) in acute care hospitals are frequent and associated with significant morbidity, mortality, and costs. Measuring AEs is necessary for quality improvement and benchmarking purposes, but current detection methods lack in accuracy, efficiency, and generalizability. The growing availability of electronic health records (EHR) and the development of natural language processing techniques for encoding narrative data offer an opportunity to develop potentially better methods. The purpose of this study is to determine the accuracy and generalizability of using automated methods for detecting three high-incidence and high-impact AEs from EHR data: a) hospital-acquired pneumonia, b) ventilator-associated event and, c) central line-associated bloodstream infection. Methods This validation study will be conducted among medical, surgical and ICU patients admitted between 2013 and 2016 to the Centre hospitalier universitaire de Sherbrooke (CHUS) and the McGill University Health Centre (MUHC), which has both French and English sites. A random 60% sample of CHUS patients will be used for model development purposes (cohort 1, development set). Using a random sample of these patients, a reference standard assessment of their medical chart will be performed. Multivariate logistic regression and the area under the curve (AUC) will be employed to iteratively develop and optimize three automated AE detection models (i.e., one per AE of interest) using EHR data from the CHUS. These models will then be validated on a random sample of the remaining 40% of CHUS patients (cohort 1, internal validation set) using chart review to assess accuracy. The most accurate models developed and validated at the CHUS will then be applied to EHR data from a random sample of patients admitted to the MUHC French site (cohort 2) and English site (cohort 3)—a critical requirement given the use of narrative data –, and accuracy will be assessed using chart review. Generalizability will be determined by comparing AUCs from cohorts 2 and 3 to those from cohort 1. Discussion This study will likely produce more accurate and efficient measures of AEs. These measures could be used to assess the incidence rates of AEs, evaluate the success of preventive interventions, or benchmark performance across hospitals.
机译:背景急性护理医院的不良事件(AE)频繁发生,并与大量发病率,死亡率和费用相关。为了提高质量和进行基准测试,必须测量AE,但是当前的检测方法缺乏准确性,效率和通用性。电子健康记录(EHR)的可用性不断增长,以及用于对叙事数据进行编码的自然语言处理技术的发展,为开发可能更好的方法提供了机会。这项研究的目的是确定使用自动方法从EHR数据中检测三种高发病率和高影响性AE的准确性和通用性:a)医院获得性肺炎,b)呼吸机相关事件,c)中心线-相关的血液感染。方法该验证研究将在2013年至2016年入院的舍布鲁克大学医院(CHUS)和麦吉尔大学健康中心(MUHC)的法医和英法医疗机构的医疗,外科和ICU患者中进行。 CHUS患者的60%随机样本将用于模型开发目的(队列1,开发集)。使用这些患者的随机样本,将对其医学图表进行参考标准评估。使用来自CHUS的EHR数据,采用多元logistic回归和曲线下面积(AUC)迭代开发和优化三个自动AE检测模型(即每个感兴趣的AE)。然后,将使用图表审查评估准确性,对剩余40%的CHUS患者(组1,内部验证集)的随机样本进行验证。然后,在CHUS开发和验证的最准确的模型将应用于来自MUHC法国站点(队列2)和英语站点(队列3)的患者随机样本的EHR数据-考虑到使用叙述性数据,这是一个关键要求–,准确性将通过图表审查进行评估。普遍性将通过比较队列2和队列3的AUC与队列1的AUC来确定。讨论该研究可能会产生更准确,有效的AE量度。这些措施可用于评估AE的发生率,评估预防性干预措施的成功率或在整个医院中进行基准测试。

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