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Modeling Patient No-Show History and Predicting Future Outpatient Appointment Behavior in the Veterans Health Administration

机译:建模患者缺口历史,并预测退伍军人健康管理局的未来门诊行为

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Background: Missed appointments reduce the efficiency of the health care system and negatively impact access to care for all patients. Identifying patients at risk for missing an appointment could help health care systems and providers better target interventions to reduce patient no-shows. Objectives: Our aim was to develop and test a predictive model that identifies patients that have a high probability of missing their outpatient appointments. Methods: Demographic information, appointment characteristics, and attendance history were drawn from the existing data sets from four Veterans Affairs health care facilities within six separate service areas. Past attendance behavior was modeled using an empirical Markov model based on up to 10 previous appointments. Using logistic regression, we developed 24 unique predictive models. We implemented the models and tested an intervention strategy using live reminder calls placed 24, 48, and 72 hours ahead of time. The pilot study targeted 1,754 high-risk patients, whose probability of missing an appointment was predicted to be at least 0.2. Results: Our results indicate that three variables were consistently related to a patient's no-show probability in all 24 models: past attendance behavior, the age of the appointment, and having multiple appointments scheduled on that day. After the intervention was implemented, the no-show rate in the pilot group was reduced from the expected value of 35% to 12.16% (p value < 0.0001). Conclusions: The predictive model accurately identified patients who were more likely to miss their appointments. Applying the model in practice enables clinics to apply more intensive intervention measures to high-risk patients.
机译:背景:错过约会降低了医疗保健系统的效率,对所有患者的照顾负面影响。识别失踪预约风险的患者可以帮助医疗保健系统和提供者更好地进行治疗,以减少患者的禁令。目的:我们的目标是开发和测试一种预测模型,该模型识别患者,患者具有缺少其门诊约会的概率。方法:从六名独立服务领域的四名退伍军人事务保健机构的现有数据集中绘制人口统计信息,约会特征和出勤历史。过去10个以前约会使用经验马尔可夫模型进行建模过去的出勤行为。使用Logistic回归,我们开发了24个独特的预测模型。我们实施了模型,并使用了提前的24,48和72小时的实时提醒电话测试了干预策略。试点研究靶向1,754名高风险患者,其缺失预约的可能性至少为0.2。结果:我们的结果表明,在所有24种型号中,三个变量一直与患者的缺点概率一致:过去的出勤行为,预约年龄,并在那一天安排了多个任命。实施干预后,试验组中的缺口率从预期值为35%至12.16%(P值<0.0001)。结论:预测模型准确鉴定了更有可能错过其约会的患者。在实践中应用模型使诊所能够对高风险患者施加更强烈的干预措施。

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