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使用电子病历信息验证谵妄风险评估。

Validation of a Delirium Risk Assessment Using Electronic Medical Record Information.

机构信息

Center of Innovation in Long-term Services/Supports, Providence VA Medical Center, Providence, RI; Delirium Patient Safety Center of Inquiry, VA Boston Healthcare System, Boston, MA; Geriatric Research, Education, and Clinical Center, VA Boston Healthcare System, Boston, MA; Division of Aging, Brigham and Women's Hospital, Boston, MA; Harvard Medical School, Boston, MA.

Delirium Patient Safety Center of Inquiry, VA Boston Healthcare System, Boston, MA.

出版信息

J Am Med Dir Assoc. 2016 Mar 1;17(3):244-8. doi: 10.1016/j.jamda.2015.10.020. Epub 2015 Dec 15.

Abstract

OBJECTIVE

Identifying patients at risk for delirium allows prompt application of prevention, diagnostic, and treatment strategies; but is rarely done. Once delirium develops, patients are more likely to need posthospitalization skilled care. This study developed an a priori electronic prediction rule using independent risk factors identified in a National Center of Clinical Excellence meta-analysis and validated the ability to predict delirium in 2 cohorts.

DESIGN

Retrospective analysis followed by prospective validation.

SETTING

Tertiary VA Hospital in New England.

PARTICIPANTS

A total of 27,625 medical records of hospitalized patients and 246 prospectively enrolled patients admitted to the hospital.

MEASUREMENTS

The electronic delirium risk prediction rule was created using data obtained from the patient electronic medical record (EMR). The primary outcome, delirium, was identified 2 ways: (1) from the EMR (retrospective cohort) and (2) clinical assessment on enrollment and daily thereafter (prospective participants). We assessed discrimination of the delirium prediction rule with the C-statistic. Secondary outcomes were length of stay and discharge to rehabilitation.

RESULTS

Retrospectively, delirium was identified in 8% of medical records (n = 2343); prospectively, delirium during hospitalization was present in 26% of participants (n = 64). In the retrospective cohort, medical record delirium was identified in 2%, 3%, 11%, and 38% of the low, intermediate, high, and very high-risk groups, respectively (C-statistic = 0.81; 95% confidence interval 0.80-0.82). Prospectively, the electronic prediction rule identified delirium in 15%, 18%, 31%, and 55% of these groups (C-statistic = 0.69; 95% confidence interval 0.61-0.77). Compared with low-risk patients, those at high- or very high delirium risk had increased length of stay (5.7 ± 5.6 vs 3.7 ± 2.7 days; P = .001) and higher rates of discharge to rehabilitation (8.9% vs 20.8%; P = .02).

CONCLUSIONS

Automatic calculation of delirium risk using an EMR algorithm identifies patients at risk for delirium, which creates a critical opportunity for gaining clinical efficiencies and improving delirium identification, including those needing skilled care.

摘要

目的

识别出患有谵妄的高危患者,以便及时采取预防、诊断和治疗策略;但这种情况很少发生。一旦发生谵妄,患者更有可能需要在出院后接受专业护理。本研究使用英国国家临床卓越中心荟萃分析中确定的独立风险因素,制定了一个事先的电子预测规则,并在两个队列中验证了预测谵妄的能力。

设计

回顾性分析后进行前瞻性验证。

地点

新英格兰的一家三级退伍军人事务医院。

参与者

共有 27625 名住院患者的病历和 246 名住院患者的前瞻性入组患者。

测量方法

电子谵妄风险预测规则是使用从患者电子病历(EMR)中获得的数据创建的。主要结局是谵妄,通过 2 种方式确定:(1)从 EMR(回顾性队列)和(2)入院时的临床评估和此后的每日评估(前瞻性参与者)。我们使用 C 统计量评估了谵妄预测规则的判别能力。次要结局是住院时间和康复出院。

结果

在回顾性队列中,8%的病历(n=2343)中发现了谵妄;在前瞻性队列中,26%的参与者(n=64)在住院期间发生了谵妄。在回顾性队列中,低、中、高和极高风险组中分别有 2%、3%、11%和 38%的患者在病历中出现了谵妄(C 统计量=0.81;95%置信区间 0.80-0.82)。前瞻性地,电子预测规则在这些组中分别识别出 15%、18%、31%和 55%的患者患有谵妄(C 统计量=0.69;95%置信区间 0.61-0.77)。与低危患者相比,高危或极高危患者的住院时间延长(5.7±5.6 比 3.7±2.7 天;P=0.001),康复出院率更高(8.9%比 20.8%;P=0.02)。

结论

使用 EMR 算法自动计算谵妄风险可以识别出患有谵妄的高危患者,这为提高临床效率和改善谵妄识别提供了一个关键机会,包括识别需要专业护理的患者。

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