Sarasa Cabezuelo Antonio
Department of Computer Systems and Computing, School of Computer Science, Complutensian University of Madrid, 28040 Madrid, Spain.
J Pers Med. 2020 Aug 7;10(3):81. doi: 10.3390/jpm10030081.
The study of the quality of hospital emergency services is based on analyzing a set of indicators such as the average time of first medical attention, the average time spent in the emergency department, degree of completion of the medical report and others. In this paper, an analysis is presented of one of the quality indicators: the rate of return of patients to the emergency service less than 72 h from their discharge. The objective of the analysis was to know the variables that influence the rate of return and which prediction model is the best. In order to do this, the data of the activity of the emergency service of a hospital of a reference population of 290,000 inhabitants were analyzed, and prediction models were created for the binary objective variable (rate of return to emergencies) using the logistic regression techniques, neural networks, random forest, gradient boosting and assembly models. Each of the models was analyzed and the result shows that the best model is achieved through a neural network with activation function tanh, algorithm levmar and three nodes in the hidden layer. This model obtains the lowest mean squared error (MSE) and the best area under the curve (AUC) with respect to the rest of the models used.
医院急诊服务质量研究基于对一系列指标的分析,如首次医疗护理的平均时间、在急诊科花费的平均时间、医疗报告的完成程度等。本文对其中一项质量指标进行了分析:患者出院后不到72小时返回急诊服务的比率。分析的目的是了解影响返回率的变量以及哪种预测模型最佳。为此,分析了一所服务于29万居民参考人群的医院急诊服务活动数据,并使用逻辑回归技术、神经网络、随机森林、梯度提升和集成模型为二元目标变量(返回急诊的比率)创建了预测模型。对每个模型进行了分析,结果表明,通过具有双曲正切激活函数、列文伯格-马夸尔特算法且隐藏层有三个节点的神经网络可实现最佳模型。相对于所使用的其他模型,该模型获得了最低的均方误差(MSE)和最佳的曲线下面积(AUC)。