Carreras-García Danae, Delgado-Gómez David, Llorente-Fernández Fernando, Arribas-Gil Ana
Department of Statistics, University Carlos III of Madrid, 28911 Leganés, Spain.
UC3M-Santander Big Data Institute, University Carlos III of Madrid, 28903 Getafe, Spain.
Entropy (Basel). 2020 Jun 17;22(6):675. doi: 10.3390/e22060675.
Nowadays, across the most important problems faced by health centers are those caused by the existence of patients who do not attend their appointments. Among others, these patients cause loss of revenue to the health centers and increase the patients' waiting list. In order to tackle these problems, several scheduling systems have been developed. Many of them require predicting whether a patient will show up for an appointment. However, obtaining these estimates accurately is currently a challenging problem. In this work, a systematic review of the literature on predicting patient no-shows is conducted aiming at establishing the current state-of-the-art. Based on a systematic review following the PRISMA methodology, 50 articles were found and analyzed. Of these articles, 82% were published in the last 10 years and the most used technique was logistic regression. In addition, there is significant growth in the size of the databases used to build the classifiers. An important finding is that only two studies achieved an accuracy higher than the show rate. Moreover, a single study attained an area under the curve greater than the 0.9 value. These facts indicate the difficulty of this problem and the need for further research.
如今,健康中心面临的最重要问题之一是由未如约就诊的患者所导致的问题。其中,这些患者给健康中心造成了收入损失,并增加了患者的候诊名单。为了解决这些问题,已经开发了几种调度系统。其中许多系统需要预测患者是否会如约就诊。然而,准确获得这些预测目前是一个具有挑战性的问题。在这项工作中,对关于预测患者爽约的文献进行了系统综述,旨在确立当前的技术水平。基于遵循PRISMA方法的系统综述,共找到并分析了50篇文章。在这些文章中,82%是在过去10年发表的,最常用的技术是逻辑回归。此外,用于构建分类器的数据库规模有显著增长。一个重要发现是,只有两项研究的准确率高于就诊率。而且,只有一项研究的曲线下面积大于0.9。这些事实表明了这个问题的难度以及进一步研究的必要性。