Closing the Loop in ICU Decision Support: Physiologic Event Detection, Alerts, and Documentation

Patrick R. Norris, B. Dawant
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引用次数: 22

Abstract

Automated physiologic event detection and alerting is a challenging task in the ICU. Ideally care providers should be alerted only when events are clinically significant and there is opportunity for corrective action. However, the concepts of clinical significance and opportunity are difficult to define in automated systems, and effectiveness of alerting algorithms is difficult to measure. This paper describes recent efforts on the Simon project to capture information from ICU care providers about patient state and therapy in response to alerts, in order to assess the value of event definitions and progressively refine alerting algorithms. Event definitions for intracranial pressure and cerebral perfusion pressure were studied by implementing a reliable system to automatically deliver alerts to clinical users alphanumeric pagers, and to capture associated documentation about patient state and therapy when the alerts occurred. During a 6-month test period in the trauma ICU at Vanderbilt University Medical Center, 530 alerts were detected in 2280 hours of data spanning 14 patients. Clinical users electronically documented 81% of these alerts as they occurred. Retrospectively classifying documentation based on therapeutic actions taken, or reasons why actions were not taken, provided useful information about ways to potentially improve event definitions and enhance system utility.
ICU决策支持的闭环:生理事件检测、警报和记录
在ICU中,自动生理事件检测和报警是一项具有挑战性的任务。理想情况下,只有当事件具有临床意义并且有机会采取纠正措施时,才应提醒护理提供者。然而,在自动化系统中,临床意义和机会的概念难以定义,警报算法的有效性难以衡量。本文描述了Simon项目最近的努力,从ICU护理提供者那里获取有关患者状态和治疗的信息,以响应警报,以评估事件定义的价值并逐步改进警报算法。通过实现一个可靠的系统来研究颅内压和脑灌注压的事件定义,该系统自动向临床用户发送字母数字呼机警报,并在警报发生时捕获有关患者状态和治疗的相关文档。在范德比尔特大学医学中心的创伤重症监护室进行的为期6个月的测试期间,在14名患者的2280小时数据中检测到530次警报。临床用户以电子方式记录了81%的这些警报。根据所采取的治疗措施或未采取措施的原因对文件进行回顾性分类,提供了有关潜在改进事件定义和增强系统效用的方法的有用信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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