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一种用于预测初级保健中心爽约行为的多变量方法。

A multivariate approach to the prediction of no-show behavior in a primary care center.

作者信息

Goldman L, Freidin R, Cook E F, Eigner J, Grich P

出版信息

Arch Intern Med. 1982 Mar;142(3):563-7.

PMID:7065791
Abstract

To predict no-show behavior in a primary care center, we analyzed a wide range of factors in 376 patients. Of 1,181 appointments that were scheduled during a six-month follow-up period and that were not cancelled in advance, 968 (82%) were kept and 213 (18%) were no-shows. By multivariate logistic regression analysis based on two thirds of the patient sample, no-show behavior was independently correlated with the following four factors: the patient's age and race, the presence of any physician-identified psychosocial problems, and the percent of noncancelled and appointments that were kept during the prior 12 months. Neither patient satisfaction nor patient-physician concordance in problem identification were independent correlates of appointment keeping. When our four-factor logistic regression equation was independently tested on the other one third of the patients, it accurately predicted no-show behavior. We suggest that our predicted probability of no-show behavior can be used to guide changes in scheduling patterns or to recognize patients appropriate for interventions to change behavior.

摘要

为预测初级保健中心的爽约行为,我们分析了376名患者的多种因素。在为期六个月的随访期内安排的、未提前取消的1181次预约中,968次(82%)患者如约就诊,213次(18%)患者爽约。基于三分之二的患者样本进行多因素逻辑回归分析,结果显示,爽约行为与以下四个因素独立相关:患者的年龄和种族、医生认定的任何社会心理问题、前12个月内未取消且如约就诊的预约比例。患者满意度和医患在问题识别上的一致性均不是如约就诊的独立相关因素。当我们的四因素逻辑回归方程在另外三分之一的患者中进行独立测试时,它准确地预测了爽约行为。我们建议,我们预测的爽约行为概率可用于指导预约模式的改变,或识别适合采取行为改变干预措施的患者。

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