Herasevich Vitaly, Yilmaz Murat, Khan Hasrat, Hubmayr Rolf D, Gajic Ognjen
Division of Pulmonary and Critical Care Medicine, Department of Internal Medicine, Mayo Clinic College of Medicine, 200 First Street SW, Rochester, MN 55905, USA.
Intensive Care Med. 2009 Jun;35(6):1018-23. doi: 10.1007/s00134-009-1460-1. Epub 2009 Mar 12.
Early detection of acute lung injury (ALI) is essential for timely implementation of evidence-based therapies and enrollment into clinical trials. We aimed to determine the accuracy of computerized syndrome surveillance for detection of ALI in hospitalized patients and compare it with routine clinical assessment.
Using a near-real time copy of the electronic medical records, we developed and validated a custom ALI electronic alert (ALI "sniffer") based on the European-American Consensus Conference Definition and compared its performance against provider-derived documentation.
A total of 3,795 consecutive critically ill patients admitted to nine multidisciplinary intensive care units (ICUs) of a tertiary care teaching institution were included.
ALI developed in 325 patients and was recognized by bedside clinicians in only 86 (26.5%). Under-recognition of ALI was associated with not implementing protective mechanical ventilation (median tidal volumes of 9.2 vs. 8.0 ml/kg predicted body weight, P < 0.001). ALI "sniffer" demonstrated excellent sensitivity of 96% (95% CI 94-98) and moderate specificity of 89% (95% CI 88-90) with a positive predictive value ranging from 24% (95% CI 13-40) in the heart-lung transplant ICU to 64% (95% CI 55-71) in the medical ICU.
The computerized surveillance system accurately identifies critically ill patients who develop ALI syndrome. Since the lack of ALI recognition is a barrier to the timely implementation of best practices and enrollment into research studies, computerized syndrome surveillance could be a useful tool to enhance patient safety and clinical research.
急性肺损伤(ALI)的早期检测对于及时实施循证治疗和纳入临床试验至关重要。我们旨在确定计算机化综合征监测在检测住院患者ALI方面的准确性,并将其与常规临床评估进行比较。
利用电子病历的近实时副本,我们基于欧美共识会议定义开发并验证了一种定制的ALI电子警报(ALI“嗅探器”),并将其性能与医护人员提供的记录进行比较。
纳入了一所三级护理教学机构的9个多学科重症监护病房(ICU)连续收治的3795例重症患者。
325例患者发生ALI,而床边临床医生仅识别出86例(26.5%)。ALI识别不足与未实施保护性机械通气有关(预测体重下的中位潮气量分别为9.2和8.0 ml/kg,P<0.001)。ALI“嗅探器”显示出96%(95%CI 94-98)的出色敏感性和89%(95%CI 88-90)的中等特异性,阳性预测值范围从心肺移植ICU的24%(95%CI 13-40)到内科ICU的64%(95%CI 55-71)。
计算机化监测系统能准确识别发生ALI综合征的重症患者。由于缺乏对ALI的识别是及时实施最佳实践和纳入研究的障碍,计算机化综合征监测可能是提高患者安全性和临床研究的有用工具。