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建模患者失约史并预测退伍军人事务部门诊心理健康诊所的未来预约行为:NIRMO-2。

Modeling Patient No-Show History and Predicting Future Appointment Behavior at the Veterans Administration's Outpatient Mental Health Clinics: NIRMO-2.

机构信息

Joseph M. Katz Graduate School of Business, University of Pittsburgh, 2809 Posvar Hall 230 S Bouquet St, Pittsburgh, PA 15213.

Office of Strategic Integration, Veterans Engineering Resource Center, 1010 Delafield Road, 001VERC-A, Bldg. 70, Room BA014, Pittsburgh, PA 15215.

出版信息

Mil Med. 2020 Aug 14;185(7-8):e988-e994. doi: 10.1093/milmed/usaa095.

Abstract

INTRODUCTION

No-shows are detrimental to both patients' health and health care systems. Literature documents no-show rates ranging from 10% in primary care clinics to over 60% in mental health clinics. Our model predicts the probability that a mental health clinic outpatient appointment will not be completed and identifies actionable variables associated with lowering the probability of no-show.

MATERIALS AND METHODS

We were granted access to de-identified administrative data from the Veterans Administration Corporate Data Warehouse related to appointments at 13 Veterans Administration Medical Centers. Our modeling data set included 1,206,271 unique appointment records scheduled to occur between January 1, 2013 and February 28, 2017. The training set included 846,668 appointment records scheduled between January 1, 2013 and December 31, 2015. The testing set included 359,603 appointment records scheduled between January 1, 2016 and February 28, 2017. The dependent binary variable was whether the appointment was completed or not. Independent variables were categorized into seven clusters: patient's demographics, appointment characteristics, patient's attendance history, alcohol use screening score, medications and medication possession ratios, prior diagnoses, and past utilization of Veterans Health Administration services. We used a forward stepwise selection, based on the likelihood ratio, to choose the variables in the model. The predictive model was built using the SAS HPLOGISTIC procedure.

RESULTS

The best indicator of whether someone will miss an appointment is their historical attendance behavior. The top three variables associated with higher probabilities of a no-show were: the no-show rate over the previous 2 years before the current appointment, the no-show probability derived from the Markov model, and the age of the appointment. The top three variables that decrease the chance of no-showing were: the appointment was a new consult, the appointment was an overbook, and the patient had multiple appointments on the same day. The average of the areas under the receiver operating characteristic curves was 0.7577 for the training dataset, and 0.7513 for the test set.

CONCLUSIONS

The National Initiative to Reduce Missed Opportunities-2 confirmed findings that previous patient attendance is one of the key predictors of a future attendance and provides an additional layer of complexity for analyzing the effect of a patient's past behavior on future attendance. The National Initiative to Reduce Missed Opportunities-2 establishes that appointment attendance is related to medication adherence, particularly for medications used for treatment of mood disorders or to block the effects of opioids. However, there is no way to confirm whether a patient is actually taking medications as prescribed. Thus, a low medication possession ratio is an informative, albeit not a perfect, measure. It is our intention to further explore how diagnosis and medications can be better captured and used in predictive modeling of no-shows. Our findings on the effects of different factors on no-show rates can be used to predict individual no-show probabilities, and to identify patients who are high risk for missing appointments. The ability to predict a patient's risk of missing an appointment would allow for both advanced interventions to decrease no-shows and for more efficient scheduling.

摘要

简介

失约对患者健康和医疗保健系统都有不利影响。文献记录的失约率从初级保健诊所的 10%到心理健康诊所的 60%以上不等。我们的模型预测了心理健康诊所门诊预约未完成的概率,并确定了与降低失约概率相关的可操作变量。

材料与方法

我们获得了退伍军人事务部企业数据仓库中与 13 家退伍军人事务部医疗中心预约相关的去识别行政数据的访问权限。我们的建模数据集包括 2013 年 1 月 1 日至 2017 年 2 月 28 日期间发生的 1,206,271 个独特预约记录。训练集包括 2013 年 1 月 1 日至 2015 年 12 月 31 日期间安排的 846,668 个预约记录。测试集包括 2016 年 1 月 1 日至 2017 年 2 月 28 日期间安排的 359,603 个预约记录。因变量是预约是否完成。自变量分为七个聚类:患者人口统计学特征、预约特征、患者出勤记录、酒精使用筛查评分、药物和药物占有比、既往诊断和过去使用退伍军人健康管理局服务。我们使用基于似然比的向前逐步选择来选择模型中的变量。预测模型使用 SAS HPLOGISTIC 过程构建。

结果

预测某人是否会失约的最佳指标是他们过去的出勤行为。与较高失约概率相关的前三个变量是:当前预约前过去 2 年的失约率、来自马尔可夫模型的失约概率和预约的年龄。降低失约机会的前三个变量是:预约是新咨询、预约是超额预约和患者在同一天有多个预约。训练数据集的受试者工作特征曲线下面积的平均值为 0.7577,测试集的平均值为 0.7513。

结论

减少错失机会国家倡议-2 证实了以前的患者出勤是未来出勤的关键预测因素之一,并为分析患者过去行为对未来出勤的影响提供了额外的复杂性。减少错失机会国家倡议-2 表明,预约出勤与药物依从性有关,特别是对于用于治疗情绪障碍或阻断阿片类药物作用的药物。然而,无法确认患者是否实际按规定服用药物。因此,低药物占有比是一个信息丰富的指标,尽管不是一个完美的指标。我们打算进一步探索如何更好地捕获和使用诊断和药物来对失约进行预测建模。我们关于不同因素对失约率影响的发现可以用来预测个体失约概率,并识别出高失约风险的患者。预测患者失约风险的能力将允许进行先进的干预以减少失约,并实现更高效的预约安排。

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