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Medical service demand forecasting using a hybrid model based on ARIMA and self-adaptive filtering method

机译:基于Arima和自适应滤波法的混合模型使用医疗服务需求预测

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Accurate forecasting of medical service demand is beneficial for the reasonable healthcare resource planning and allocation. The daily outpatient volume is characterized by randomness, periodicity and trend, and the time series methods, like ARIMA are often used for short-term outpatient visits forecasting. Therefore, to further enlarge the prediction horizon and improve the prediction accuracy, a hybrid prediction model integrating ARIMA and self-adaptive filtering method is proposed. The ARIMA model is first used to identify the features like cyclicity and trend of the time series data and to estimate the model parameters. The parameters are then adjusted by the steepest descent algorithm in the adaptive filtering method to reduce the prediction error. The hybrid model is validated and compared with traditional ARIMA by several test sets from the Time Series Data Library (TSDL), a weekly emergency department (ED) visit case from literature study, and the real cases of prenatal examinations and B-ultrasounds in a maternal and child health care center (MCHCC) in Ningbo. For TSDL cases the prediction accuracy of the hybrid prediction is improved by 80–99% compared with the ARIMA model. For the weekly ED visit case, the forecasting results of the hybrid model are better than those of both traditional ARIMA and ANN model, and similar to the ANN combined data decomposition model mentioned in the literature. For the actual data of MCHCC in Ningbo, the MAPE predicted by the ARIMA model in the two departments was 18.53 and 27.69%, respectively, and the hybrid models were 2.79 and 1.25%, respectively. The hybrid prediction model outperforms the traditional ARIMA model in both accurate predicting result with smaller average relative error and the applicability for short-term and medium-term prediction.
机译:准确的医疗服务需求预测有利于合理的医疗资源规划和分配。每日门诊体积的特征在于随机性,周期性和趋势,以及时序序列方法,如Arima通常用于短期门诊预测。因此,为了进一步扩大预测地平线并提高预测准确性,提出了集成Arima和自适应滤波方法的混合预测模型。 ARIMA模型首先用于识别时序数据的循环性和趋势等特征,并估计模型参数。然后通过自适应滤波方法中的速下降算法调整参数,以减少预测误差。通过从时间序列数据库(TSDL),一周的急诊部门(ED)访问案例,从文学研究中获得了几个测试集,与传统的Arima进行了验证并与传统Arima进行了验证,并与传统的急救课程进行比较。宁波的妇幼保健中心(MCHCC)。对于TSDL案例,与ARIMA模型相比,混合预测的预测精度提高了80-99%。对于每周ED访问案例,混合模型的预测结果优于传统的ARIMA和ANN模型,并且类似于文献中提到的ANN组合数据分解模型。对于宁波MCHCC的实际数据,两部门中ARIMA模型预测的MAPE分别为18.53和27.69%,分别为2.79和1.25%。混合预测模型在具有较小平均相对误差的准确预测结果中的传统ARIMA模型具有较小的平均相对误差和短期和中期预测的适用性。

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