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衡量潜在可避免的医院再入院情况。

Measuring potentially avoidable hospital readmissions.

作者信息

Halfon Patricia, Eggli Yves, van Melle Guy, Chevalier Julia, Wasserfallen Jean Blaise, Burnand Bernard

机构信息

Institut Universitaire de Médecine Sociale et Préventive, University of, Lausanne, Switzerland.

出版信息

J Clin Epidemiol. 2002 Jun;55(6):573-87. doi: 10.1016/s0895-4356(01)00521-2.

Abstract

The objectives of this study were to develop a computerized method to screen for potentially avoidable hospital readmissions using routinely collected data and a prediction model to adjust rates for case mix. We studied hospital information system data of a random sample of 3,474 inpatients discharged alive in 1997 from a university hospital and medical records of those (1,115) readmitted within 1 year. The gold standard was set on the basis of the hospital data and medical records: all readmissions were classified as foreseen readmissions, unforeseen readmissions for a new affection, or unforeseen readmissions for a previously known affection. The latter category was submitted to a systematic medical record review to identify the main cause of readmission. Potentially avoidable readmissions were defined as a subgroup of unforeseen readmissions for a previously known affection occurring within an appropriate interval, set to maximize the chance of detecting avoidable readmissions. The computerized screening algorithm was strictly based on routine statistics: diagnosis and procedures coding and admission mode. The prediction was based on a Poisson regression model. There were 454 (13.1%) unforeseen readmissions for a previously known affection within 1 year. Fifty-nine readmissions (1.7%) were judged avoidable, most of them occurring within 1 month, which was the interval used to define potentially avoidable readmissions (n = 174, 5.0%). The intra-sample sensitivity and specificity of the screening algorithm both reached approximately 96%. Higher risk for potentially avoidable readmission was associated with previous hospitalizations, high comorbidity index, and long length of stay; lower risk was associated with surgery and delivery. The model offers satisfactory predictive performance and a good medical plausibility. The proposed measure could be used as an indicator of inpatient care outcome. However, the instrument should be validated using other sets of data from various hospitals.

摘要

本研究的目的是开发一种计算机化方法,利用常规收集的数据筛查潜在可避免的医院再入院情况,并建立一个预测模型来调整病例组合的比率。我们研究了1997年从一家大学医院存活出院的3474名随机抽样住院患者的医院信息系统数据,以及其中1115名在1年内再次入院患者的病历。根据医院数据和病历确定了金标准:所有再入院情况分为可预见的再入院、因新疾病导致的不可预见的再入院或因先前已知疾病导致的不可预见的再入院。后一类情况经过系统的病历审查以确定再入院的主要原因。潜在可避免的再入院被定义为在适当间隔内发生的因先前已知疾病导致的不可预见的再入院的一个亚组,该间隔的设定是为了最大限度地提高检测可避免再入院的机会。计算机化筛查算法严格基于常规统计数据:诊断和手术编码以及入院方式。预测基于泊松回归模型。在1年内,有454例(13.1%)因先前已知疾病导致的不可预见的再入院。59例再入院(1.7%)被判定为可避免的,其中大多数发生在1个月内,这是用于定义潜在可避免再入院的间隔(n = 174,5.0%)。筛查算法的样本内敏感性和特异性均达到约96%。潜在可避免再入院的较高风险与先前住院、高合并症指数和住院时间长有关;较低风险与手术和分娩有关。该模型具有令人满意的预测性能和良好的医学合理性。所提出的措施可作为住院护理结果的一个指标。然而,该工具应使用来自不同医院的其他数据集进行验证。

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