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An empirical investigation into factors affecting patient cancellations and no-shows at outpatient clinics

机译:对影响患者取消门诊和不出现门诊的因素进行的实证研究

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摘要

Medical facilities competing in the US Healthcare system must consider the likelihood of patient attendance when scheduling appointments. This paper analyzes a robust, panel style registration data set from 9 outpatient facilities consisting of 5 years of patients' attendance outcomes. The three outcomes, arrivals, cancellations prior to the scheduled appointment and failure to arrive (no-shows), distinguish this paper from prior empirical research that typically treats patient arrivals as a dichotomous outcome by grouping cancellations and no-shows together or excluding cancellations. Distinguishing cancellations from no-shows reveal different effects from patient age and appointment slot day and time. Findings focus on the variables having the greatest impact on attendance and conclude with the difficulty in predicting individual appointment outcomes and the observation that a rather small number of patients represent a disproportionately large percentage of no-shows. Four factors that have the greatest association with patient nonattendance are lead time (call appointment interval), financial payer (typically insurance provider), patient age, and the patient's prior attendance history. Lead time has the greatest impact and is the most addressable, whereas a patient's age, insurance provider and, to some extent, patient behavior cannot be altered. Results reveal quite a paradox that scheduling systems designed to help ensure full utilization on a future date also contribute to underutilization by increasing the chance that patients will not show.
机译:安排约会时,与美国医疗保健系统竞争的医疗机构必须考虑患者出勤的可能性。本文分析了来自9个门诊机构的稳健的面板式注册数据集,其中包括5年的患者出勤结果。三种结果,到达,预定约会之前的取消和未到达(未显示),使本文与以往的经验研究区分开来,后者通常通过将取消和未显示分组在一起或排除取消来将患者的到达视为两分结果。区分未出现的取消显示出与患者年龄和预约空档日期和时间有关的不同影响。研究结果集中在对出勤率影响最大的变量上,并得出难以预测个人约会结果的结论,并且观察到相当少的患者占到缺勤人数的比例过高。与患者缺勤率最大相关的四个因素是交货时间(呼叫预约间隔),财务付款人(通常是保险提供者),患者年龄以及患者的出勤历史。交付时间影响最大​​,而且解决最有效,而患者的年龄,保险提供者以及在某种程度上不能改变患者的行为。结果显示出一个很自相矛盾的事实,即旨在帮助确保将来充分利用的计划系统也通过增加患者不会出现的机会而导致利用率不足。

著录项

  • 来源
    《Decision support systems》 |2014年第1期|428-443|共16页
  • 作者单位

    Purdue University, Krannert Graduate School of Management, 403 West State Street, West Lafayette, IN 47907-2056, USA;

    California State University San Marcos, College of Business Administration, Department of Information Systems and Operations Management, 333 South Twin Oaks Valley Road, San Marcos. CA 92096, USA;

    Purdue University, Krannert Graduate School of Management, 403 West State Street, West Lafayette, IN 47907-2056, USA;

    Purdue University, Krannert Graduate School of Management, 403 West State Street, West Lafayette, IN 47907-2056, USA;

    Purdue University, Krannert Graduate School of Management, 403 West State Street, West Lafayette, IN 47907-2056, USA;

    Indiana University, University Hospital, Indianapolis, IN 46202, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Patient attendance; No-shows; Healthcare; Cancellations; Missed appointments;

    机译:病人出勤;缺席;卫生保健;取消;错过约会;

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