Suppr超能文献

基于麻醉信息管理系统的近实时决策支持,以管理术中低血压和高血压。

Anesthesia information management system-based near real-time decision support to manage intraoperative hypotension and hypertension.

机构信息

From the *Department of Anesthesiology and Pain Medicine, University of Washington; †Department of Anesthesiology, VA Puget Sound Health Care System, Seattle, Washington; and ‡Department of Applied Mathematics, National Dong Hwa University, Hualien, Taiwan.

出版信息

Anesth Analg. 2014 Jan;118(1):206-14. doi: 10.1213/ANE.0000000000000027.

Abstract

BACKGROUND

Intraoperative hypotension and hypertension are associated with adverse clinical outcomes and morbidity. Clinical decision support mediated through an anesthesia information management system (AIMS) has been shown to improve quality of care. We hypothesized that an AIMS-based clinical decision support system could be used to improve management of intraoperative hypotension and hypertension.

METHODS

A near real-time AIMS-based decision support module, Smart Anesthesia Manager (SAM), was used to detect selected scenarios contributing to hypotension and hypertension. Specifically, hypotension (systolic blood pressure <80 mm Hg) with a concurrent high concentration (>1.25 minimum alveolar concentration [MAC]) of inhaled drug and hypertension (systolic blood pressure >160 mm Hg) with concurrent phenylephrine infusion were detected, and anesthesia providers were notified via "pop-up" computer screen messages. AIMS data were retrospectively analyzed to evaluate the effect of SAM notification messages on hypotensive and hypertensive episodes.

RESULTS

For anesthetic cases 12 months before (N = 16913) and after (N = 17132) institution of SAM messages, the median duration of hypotensive episodes with concurrent high MAC decreased with notifications (Mann Whitney rank sum test, P = 0.031). However, the reduction in the median duration of hypertensive episodes with concurrent phenylephrine infusion was not significant (P = 0.47). The frequency of prolonged episodes that lasted >6 minutes (sampling period of SAM), represented in terms of the number of cases with episodes per 100 surgical cases (or percentage occurrence), declined with notifications for both hypotension with >1.25 MAC inhaled drug episodes (δ = -0.26% [confidence interval, -0.38% to -0.11%], P < 0.001) and hypertension with phenylephrine infusion episodes (δ = -0.92% [confidence interval, -1.79% to -0.04%], P = 0.035). For hypotensive events, the anesthesia providers reduced the inhaled drug concentrations to <1.25 MAC 81% of the time with notifications compared with 59% without notifications (P = 0.003). For hypertensive episodes, although the anesthesia providers' reduction or discontinuation of the phenylephrine infusion increased from 22% to 37% (P = 0.030) with notification messages, the overall response was less consistent than the response to hypotensive episodes.

CONCLUSIONS

With automatic acquisition of arterial blood pressure and inhaled drug concentration variables in an AIMS, near real-time notification was effective in reducing the duration and frequency of hypotension with concurrent >1.25 MAC inhaled drug episodes. However, since phenylephrine infusion is manually documented in an AIMS, the impact of notification messages was less pronounced in reducing episodes of hypertension with concurrent phenylephrine infusion. Automated data capture and a higher frequency of data acquisition in an AIMS can improve the effectiveness of an intraoperative clinical decision support system.

摘要

背景

术中低血压和高血压与不良临床结局和发病率有关。通过麻醉信息管理系统(AIMS)进行的临床决策支持已被证明可以改善护理质量。我们假设基于 AIMS 的临床决策支持系统可用于改善术中低血压和高血压的管理。

方法

使用近实时基于 AIMS 的决策支持模块 Smart Anesthesia Manager(SAM)来检测导致低血压和高血压的选定情况。具体而言,检测到低血压(收缩压 <80mmHg)同时伴有高浓度(>1.25 最低肺泡浓度 [MAC])吸入药物和高血压(收缩压 >160mmHg)同时伴有去氧肾上腺素输注,并通过“弹出”计算机屏幕消息通知麻醉提供者。回顾性分析 AIMS 数据,以评估 SAM 通知消息对低血压和高血压发作的影响。

结果

在 SAM 通知消息实施前(N=16913)和后(N=17132)12 个月的麻醉病例中,同时伴有高 MAC 的低血压发作的中位持续时间随着通知而缩短(Mann-Whitney 秩和检验,P=0.031)。然而,同时伴有去氧肾上腺素输注的高血压发作的中位持续时间减少不显著(P=0.47)。以每 100 例手术病例中出现的病例数(或百分比发生)表示的持续时间超过 6 分钟(SAM 采样期)的发作频率下降,这与同时伴有 >1.25 MAC 吸入药物的低血压发作(δ=-0.26%[置信区间,-0.38%至-0.11%],P<0.001)和伴有去氧肾上腺素输注的高血压发作(δ=-0.92%[置信区间,-1.79%至-0.04%],P=0.035)有关。对于低血压事件,与没有通知相比,通知时麻醉提供者将吸入药物浓度降低至<1.25 MAC 的时间为 81%,而没有通知时为 59%(P=0.003)。对于高血压发作,尽管麻醉提供者减少或停止去氧肾上腺素输注的比例从通知时的 22%增加到 37%(P=0.030),但整体反应不如对低血压发作的反应一致。

结论

在 AIMS 中自动获取动脉血压和吸入药物浓度变量,近实时通知可有效缩短同时伴有>1.25 MAC 吸入药物的低血压发作的持续时间和频率。然而,由于去氧肾上腺素输注是在 AIMS 中手动记录的,通知消息对减少同时伴有去氧肾上腺素输注的高血压发作的影响不太明显。在 AIMS 中自动数据采集和更高的数据采集频率可以提高术中临床决策支持系统的有效性。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验