基于数据挖掘的门诊焦虑症时间序列预测

Q3 Agricultural and Biological Sciences Asia-Pacific Journal of Science and Technology Pub Date : 2015-06-01 DOI:10.14456/KKURJ.2015.19
et.al Vatinee Sukmak
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引用次数: 3

摘要

本研究旨在通过比较两种人工神经网络(ANN)模型,并选择最强大的模型,预测2011年在门诊就诊的焦虑症患者数量。数据收集自Prasrimahabhodi精神病医院的数据库。为了建立预测模型,我们使用2007年1月至2010年12月4年的数据构建需求预测模型,并使用次年(2011年1月至12月)的数据对模型进行评估。采用径向基函数(RBF)和多层感知器网络(MLP)两种神经网络模型构建预测模型。模型的预测精度通过平均绝对百分比误差(MAPE)进行评估。选择RBF作为最终模型。结果表明,在时间序列分析中,由于MAPE低于20%,使用RBF模型技术可以很好地预测焦虑症患者的月就诊次数。大多数患者为女性,已婚,农民,年龄在40-59岁之间,并被诊断患有其他焦虑症(F41)。每个月平均有150名不同年龄的病人到门诊就诊,其中最高的244人,最低的76人。20 ~ 39岁年龄组预测病例数高于实际临床病例数。门诊就诊的准确预测可以在医疗保健系统的管理中发挥重要作用。
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Time series forecasting in anxiety disorders of outpatient visits using data mining
This study aims to forecast the number of anxiety disorders patients who would be seeking treatment at an outpatient clinic in 2011 by comparing two Artificial Neural Network (ANN) models and selecting the most powerful model. Data were collected from the Prasrimahabhodi Psychiatric Hospital database. In order to develop a forecasting model, we used 4 years of data from January 2007 to December 2010 to construct the demand forecast model, whereas those from the following year (January to December 2011) were used to evaluate the model. Forecasted models were constructed with two ANN models: Radial Basis Function (RBF) and Multi-Layer Perceptron networks (MLP). The forecast accuracies for the models were evaluated via Mean Absolute Percentage Error (MAPE). The RBF was selected as the final model. The results demonstrated that monthly anxiety disorders patient visits can be predicted with good accuracy using the RBF model technique in time series analysis since the MAPE is below 20%. The majority of patients was female, married, farmers, aged between 40-59 years old and diagnosed with other anxiety disorders (F41). An average of one hundred and fifty patients of all ages attended each month at outpatient services with the highest being 244 and the lowest 76. The forecast cases exceeded the actual clinical cases in the 20-39 age groups. Accurate forecasting of outpatient visits can play a significant role in the management of a health care system.
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来源期刊
Asia-Pacific Journal of Science and Technology
Asia-Pacific Journal of Science and Technology Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
CiteScore
0.90
自引率
0.00%
发文量
0
审稿时长
8 weeks
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