Rochefort Christian M, Buckeridge David L, Forster Alan J
Ingram School of Nursing, Faculty of Medicine, McGill University, Wilson Hall, 3506 University Street, Montreal, QC, H3A 2A7, Canada.
McGill Clinical and Health Informatics Research Group, McGill University, 1140, Pine Avenue West, Montreal, QC, H3A 1A3, Canada.
Implement Sci. 2015 Jan 8;10:5. doi: 10.1186/s13012-014-0197-6.
Adverse events are associated with significant morbidity, mortality and cost in hospitalized patients. Measuring adverse events is necessary for quality improvement, but current detection methods are inaccurate, untimely and expensive. The advent of electronic health records and the development of automated methods for encoding and classifying electronic narrative data, such as natural language processing, offer an opportunity to identify potentially better methods. The objective of this study is to determine the accuracy of using automated methods for detecting three highly prevalent adverse events: a) hospital-acquired pneumonia, b) catheter-associated bloodstream infections, and c) in-hospital falls.
METHODS/DESIGN: This validation study will be conducted at two large Canadian academic health centres: the McGill University Health Centre (MUHC) and The Ottawa Hospital (TOH). The study population consists of all medical, surgical and intensive care unit patients admitted to these centres between 2008 and 2014. An automated detection algorithm will be developed and validated for each of the three adverse events using electronic data extracted from multiple clinical databases. A random sample of MUHC patients will be used to develop the automated detection algorithms (cohort 1, development set). The accuracy of these algorithms will be assessed using chart review as the reference standard. Then, receiver operating characteristic curves will be used to identify optimal cut points for each of the data sources. Multivariate logistic regression and the areas under curve (AUC) will be used to identify the optimal combination of data sources that maximize the accuracy of adverse event detection. The most accurate algorithms will then be validated on a second random sample of MUHC patients (cohort 1, validation set), and accuracy will be measured using chart review as the reference standard. The most accurate algorithms validated at the MUHC will then be applied to TOH data (cohort 2), and their accuracy will be assessed using a reference standard assessment of the medical chart.
There is a need for more accurate, timely and efficient measures of adverse events in acute care hospitals. This is a critical requirement for evaluating the effectiveness of preventive interventions and for tracking progress in patient safety through time.
不良事件与住院患者的高发病率、死亡率及成本相关。为改善医疗质量,测量不良事件很有必要,但当前的检测方法不准确、不及时且成本高昂。电子健康记录的出现以及诸如自然语言处理等用于对电子叙述性数据进行编码和分类的自动化方法的发展,为识别可能更好的方法提供了契机。本研究的目的是确定使用自动化方法检测三种高度常见不良事件的准确性:a)医院获得性肺炎,b)导管相关血流感染,以及c)院内跌倒。
方法/设计:这项验证研究将在加拿大的两个大型学术医疗中心进行:麦吉尔大学健康中心(MUHC)和渥太华医院(TOH)。研究人群包括2008年至2014年间入住这些中心的所有内科、外科和重症监护病房患者。将使用从多个临床数据库提取的电子数据,针对三种不良事件中的每一种开发并验证一种自动化检测算法。MUHC患者的随机样本将用于开发自动化检测算法(队列1,开发集)。将使用病历审查作为参考标准来评估这些算法的准确性。然后,将使用受试者工作特征曲线来确定每个数据源的最佳切点。多变量逻辑回归和曲线下面积(AUC)将用于确定能使不良事件检测准确性最大化的数据源的最佳组合。然后,将最准确的算法在MUHC患者的第二个随机样本(队列1,验证集)上进行验证,并使用病历审查作为参考标准来测量准确性。在MUHC验证的最准确算法随后将应用于TOH数据(队列2),并使用病历的参考标准评估来评估其准确性。
急性护理医院需要更准确、及时和有效的不良事件测量方法。这是评估预防干预措施有效性以及随时间跟踪患者安全进展的关键要求。