Parente Chiara Anna, Salvatore Domenico, Gallo Giampiero Maria, Cipollini Fabrizio
IRCCS SDN, Napoli, Via E. Gianturco 113, 80143, Naples, Italy.
Department of Accounting, Management and Economics, University of Naples Parthenope, Via Generale Parisi, 13, 80132, Naples, Italy.
BMC Health Serv Res. 2018 Mar 15;18(1):185. doi: 10.1186/s12913-018-2979-z.
In almost all healthcare systems, no-shows (scheduled appointments missed without any notice from patients) have a negative impact on waiting lists, costs and resource utilization, impairing the quality and quantity of cares that could be provided, as well as the revenues from the corresponding activity. Overbooking is a tool healthcare providers can resort to reduce the impact of no-shows.
We develop an overbooking algorithm, and we assess its effectiveness using two methods: an analysis of the data coming from a practical implementation in an healthcare center; a simulation experiment to check the robustness and the potential of the strategy under different conditions. The data of the study, which includes personal and administrative information of patients, together with their scheduled and attended examinations, was taken from the electronic database of a big outpatient center. The attention was focused on the Magnetic Resonance (MR) ward because it uses expensive equipment, its services need long execution times, and the center has actually used it to implement an overbooking strategy aimed at reducing the impact of no-shows. We propose a statistical model for the patient's show/no-show behavior and we evaluate the ensuing overbooking procedure implemented in the MR ward. Finally, a simulation study investigates the effects of the overbooking strategy under different scenarios.
The first contribution is a list of variables to identify the factors performing the best to predict no-shows. We classified the variables in three groups: "Patient's intrinsic factors", "Exogenous factors" and "Factors associated with the examination". The second contribution is a predictive model of no-shows, which is estimated on context-specific data using the variables just discussed. Such a model represents a fundamental ingredient of the overbooking strategy we propose to reduce the negative effects of no-shows. The third contribution is the assessment of that strategy by means of a simulation study under different scenarios in terms of number of resources and no-show rates. The same overbooking strategy was also implemented in practice (giving the opportunity to consider it as a quasi-experiment) to reduce the negative impact caused by non attendance in the MR ward. Both the quasi-experiment and the simulation study demonstrated that the strategy improved the center's productivity and reduced idle time of resources, although it increased slightly the patient's waiting time and the staff's overtime. This represents an evidence that overbooking can be suitable to improve the management of healthcare centers without adversely affecting their costs and the quality of cares offered.
We shown that a well designed overbooking procedure can improve the management of medical centers, in terms of a significant increase of revenue, while keeping patient's waiting time and overtime under control. This was demonstrated by the results of a quasi-experiment (practical implementation of the strategy in the MR ward) and a simulation study (under different scenarios). Such positive results took advantage from a predictive model of no-show carefully designed around the medical center data.
在几乎所有的医疗体系中,爽约(患者未提前通知就错过预约就诊)会对候诊名单、成本及资源利用产生负面影响,损害可提供的医疗服务的质量和数量,以及相应业务的收入。超额预约是医疗服务提供者可用来减少爽约影响的一种手段。
我们开发了一种超额预约算法,并使用两种方法评估其有效性:对来自一家医疗中心实际应用的数据进行分析;进行模拟实验,以检验该策略在不同条件下的稳健性和潜力。本研究的数据包括患者的个人和管理信息,以及他们的预约和实际就诊检查信息,取自一家大型门诊中心的电子数据库。研究重点关注磁共振(MR)科室,因为该科室使用昂贵设备,其服务执行时间长,且该中心实际上已利用它实施了一项旨在减少爽约影响的超额预约策略。我们提出了一个关于患者就诊/爽约行为的统计模型,并评估了在MR科室实施的后续超额预约程序。最后,一项模拟研究调查了超额预约策略在不同场景下的效果。
第一个贡献是列出一系列变量,以识别预测爽约效果最佳的因素。我们将这些变量分为三组:“患者内在因素”、“外部因素”和“与检查相关的因素”。第二个贡献是一个爽约预测模型,它使用刚刚讨论的变量,根据特定背景数据进行估计。这样一个模型是我们提出的用于减少爽约负面影响的超额预约策略的一个基本要素。第三个贡献是通过在不同资源数量和爽约率场景下的模拟研究对该策略进行评估。同样的超额预约策略也在实际中实施(使其有机会被视为一项准实验),以减少MR科室因患者未就诊造成的负面影响。准实验和模拟研究均表明,该策略提高了中心的生产率,减少了资源的闲置时间,尽管它略微增加了患者的等待时间和工作人员的加班时间。这表明超额预约适合改善医疗中心的管理,而不会对其成本和提供的医疗服务质量产生不利影响。
我们表明,精心设计的超额预约程序可以改善医疗中心的管理,在显著增加收入的同时,将患者等待时间和加班时间控制在合理范围内。这在一项准实验(该策略在MR科室的实际实施)和一项模拟研究(在不同场景下)的结果中得到了证明。这些积极结果得益于围绕医疗中心数据精心设计的爽约预测模型。