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首页> 外文期刊>International journal of nursing studies >Development and validation of an automated delirium risk assessment system (Auto-DelRAS) implemented in the electronic health record system
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Development and validation of an automated delirium risk assessment system (Auto-DelRAS) implemented in the electronic health record system

机译:电子健康记录系统实施自动化谵妄风险评估系统(自动德拉斯)的开发与验证

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Abstract Background A key component of the delirium management is prevention and early detection. Objective To develop an automated delirium risk assessment system (Auto-DelRAS) that automatically alerts health care providers of an intensive care unit (ICU) patient’s delirium risk based only on data collected in an electronic health record (EHR) system, and to evaluate the clinical validity of this system. Design Cohort and system development designs were used. Setting Medical and surgical ICUs in two university hospitals in Seoul, Korea. Participants A total of 3284 patients for the development of Auto-DelRAS, 325 for external validation, 694 for validation after clinical applications. Methods The 4211 data items were extracted from the EHR system and delirium was measured using CAM-ICU (Confusion Assessment Method for Intensive Care Unit). The potential predictors were selected and a logistic regression model was established to create a delirium risk scoring algorithm to construct the Auto-DelRAS. The Auto-DelRAS was evaluated at three months and one year after its application to clinical practice to establish the predictive validity of the system. Results Eleven predictors were finally included in the logistic regression model. The results of the Auto-DelRAS risk assessment were shown as high/moderate/low risk on a Kardex screen. The predictive validity, analyzed after the clinical application of Auto-DelRAS after one year, showed a sensitivity of 0.88, specificity of 0.72, positive predictive value of 0.53, negative predictive value of 0.94, and a Youden index of 0.59. Conclusions A relatively high level of predictive validity was maintained with the Auto-DelRAS system, even one year after it was applied to clinical practice.
机译:摘要背景谵妄管理的关键组成部分是预防和早期检测。目的开发自动化的谵妄风险评估系统(自动德拉斯),自动警告基于电子健康记录(EHR)系统中收集的数据,并评估的数据该系统的临床有效性。使用设计队列和系统开发设计。在韩国首尔的两个大学医院设置医疗和手术德卢布。参与者共有3284名患者开发自动德拉斯,325例外部验证,694例临床应用验证。方法采用EHR系统提取4211个数据项,使用CAM-ICU(集约化监护单元的混乱评估方法)测量谵妄。选择潜在的预测器,建立了逻辑回归模型,以创建谵妄风险评分算法来构建自动删除。自动德拉斯在申请到临床实践后三个月和一年进行评估,以确定系统的预测有效性。结果最终包含在Logistic回归模型中的11个预测因子。 Auto-Delras风险评估的结果显示为Kardex屏幕的高/中/低/低风险。在一年后自动德尔德拉斯临床应用后分析的预测有效性显示出0.88,特异性0.72,阳性预测值0.53,阴性预测值0.94,而且为0.59的阳性指数为0.53。结论甚至在应用于临床实践后一年后维持相对较高的预测有效性。

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