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一种用于判断冠心病监护病房入院适宜性的工具,适用于实时和回顾性使用。急性心肌缺血的时间不敏感预测工具(TIPI):一项多中心研究。

A tool for judging coronary care unit admission appropriateness, valid for both real-time and retrospective use. A time-insensitive predictive instrument (TIPI) for acute cardiac ischemia: a multicenter study.

作者信息

Selker H P, Griffith J L, D'Agostino R B

机构信息

Center for Cardiovascular Health Services Research, New England Medical Center, Boston, MA 02111.

出版信息

Med Care. 1991 Jul;29(7):610-27. doi: 10.1097/00005650-199107000-00002.

Abstract

This study developed and tested a tool to assess the likelihood of patients having acute cardiac ischemia and thus the appropriateness of admitting them to the coronary care unit (CCU). It is valid both for real-time clinical use and for retrospective review: a time-insensitive predictive instrument (TIPI). The authors' earlier acute ischemia predictive instrument, not designed specifically to support retrospective use, could not offer the advantage of a single tool usable by both clinicians and reviewers of care. Over a two-year period, the authors prospectively collected data on 5,773 emergency room patients seen in six New England hospitals for symptoms suggesting acute cardiac ischemia. In the Developmental Phase, based on 3,453 such patients seen during the first year, the authors developed a logistic regression-based TIPI for acute cardiac ischemia. Using seven clinical features reliably ascertainable both in the emergency room setting and by medical record review, the TIPI expressed a patient's probability of having acute ischemia as between 0-100%. In this phase, a risk category system based on the TIPI scale was also devised, which created four similar-sized groups, by cutting at 10%, 25%, and 55%. In the Test Phase, when prospectively tested on the 2,320 emergency room patients seen during the second year, the TIPI showed excellent diagnostic performance. Its receiver-operating characteristic (ROC) curve area of 0.88 was comparable to the original predictive instrument and the ROC curve path suggested performance comparable to physicians as well. Its slope of the relationship between predicted and observed probabilities of having acute ischemia was 1.11 (R2 = 0.97) with a correlation of 0.99 (P less than 0.0001), suggesting excellent calibration of predictions throughout the probability range. For patients who proved to have acute ischemia, the average TIPI probability was 59%, whereas for those without ischemia, the average TIPI value was 21% (P less than 0.0001). This differentiation was maintained even for those given different (including inappropriate) triage to the CCU, ward, or home (P less than 0.0001 for each disposition). When the performance of the four TIPI-based risk groups was prospectively tested on year-two patients, among the 552 patients in the low probability group, only 1.6% had acute cardiac ischemia, including only 0.7% with acute infarctions. Among the 484 patients in the high probability group, 81.6% had acute ischemia, and 53.3% acute myocardial infarctions, suggesting these to be clinically relevant groups for aiding or assessing emergency room triage.(ABSTRACT TRUNCATED AT 400 WORDS)

摘要

本研究开发并测试了一种工具,用于评估患者发生急性心脏缺血的可能性,从而判断将其收入冠心病监护病房(CCU)的合理性。该工具对于实时临床应用和回顾性审查均有效:一种对时间不敏感的预测工具(TIPI)。作者早期的急性缺血预测工具并非专门为支持回顾性使用而设计,无法提供一种临床医生和护理审查人员均可使用的单一工具的优势。在两年时间里,作者前瞻性地收集了新英格兰六家医院5773例因疑似急性心脏缺血症状而到急诊室就诊患者的数据。在开发阶段,基于第一年就诊的3453例此类患者,作者开发了一种基于逻辑回归的急性心脏缺血TIPI。利用在急诊室环境和病历审查中均可可靠确定的七个临床特征,TIPI将患者发生急性缺血的概率表示为0至100%。在此阶段,还设计了一种基于TIPI量表的风险分类系统,通过在10%、25%和55%处划分,创建了四个规模相似的组。在测试阶段,对第二年就诊的2320例急诊室患者进行前瞻性测试时,TIPI显示出出色的诊断性能。其受试者操作特征(ROC)曲线面积为0.88,与原始预测工具相当,ROC曲线走势也表明其性能与医生相当。其预测的急性缺血概率与观察到的概率之间关系的斜率为1.11(R2 = 0.97),相关性为0.99(P小于0.0001),表明在整个概率范围内预测校准良好。对于经证实有急性缺血的患者,TIPI平均概率为59%,而对于无缺血的患者,TIPI平均值为21%(P小于0.0001)。即使对于那些被分诊到CCU、病房或家中的不同(包括不恰当)患者,这种差异也依然存在(每种处置方式的P均小于0.0001)。当对第二年的患者前瞻性测试基于TIPI的四个风险组的性能时,在低概率组的552例患者中,只有1.6%有急性心脏缺血,其中只有0.7%有急性梗死。在高概率组的484例患者中,81.6%有急性缺血,53.3%有急性心肌梗死,表明这些是有助于或评估急诊室分诊的临床相关组。(摘要截取自400字)

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