首页> 外文期刊>Emergency medicine journal: EMJ >PP15?Predicting variations of calls to an ambulance service in the UK caused by circulating infections using-deep learning methods
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PP15?Predicting variations of calls to an ambulance service in the UK caused by circulating infections using-deep learning methods

机译:PP15?通过深入学习方法循环感染导致英国救护服务的呼叫呼叫变化

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Digital patient records in the ambulance service have opened up new opportunities for prehospital care. Previously it was demonstrated that prehospital pyrexia numbers are linked to an increase in overall calls to the ambulance service. This study aims to predict the future number of calls using deep-learning methods.Temperature readings for 280,447 patients were generously provided by the South Western Ambulance Service Trust. The data covered the time between 05/01/2016 and 30/04/2017 with overall 44,472 patients being pyretic. A rolling window of 10 days was applied to daily sums for both pyretic and apyretic patients. These windows were used as input features to train machine-learning algorithms predicting the number of calls 10 days ahead. Algorithms tested include Linear Regression (LR), basic Recurrent Neural Networks (RNN), Long Short Term Memory (LSTM) and Gated Recurrent Unit (GRU) architectures. A genetic approach was used to optimise the architecture, in which parameters were randomly modified and over several generations the best performing algorithm will be selected to be further manipulated. To assess performance the Mean Average Percentage Error (MAPE) was used.The initial analysis showed that the total patient number and pyretic patient numbers are correlated. The best performing algorithms with varying numbers of hidden units had the following MAPE in comparison to simple LR: LR=19.4%, LSTM (104 units) = 6.1%, RNN (79 units)=6.01%, GRU (80 units)=5.97%.These preliminary results suggest that deep-learning methods allow to predict the variations in total number of calls caused by circulating infections. Further investigations will aim to confirm these findings. Once fully verified these algorithms could play a major role in operational planning of any ambulance service by predicting increases in demand.
机译:救护车服务中的数字患者记录已经开辟了新的预科护理机会。此前,它有人证明了预孢子虫点数与对救护车服务的整体呼叫的增加有关。本研究旨在预测使用深度学习方法的未来呼叫数量。由南方西方救护业务信任慷慨提供280,447名患者的温度读数。这些数据在05/01/2016和30/04/2017之间的时间涵盖了总体44,472名患者的热量。将10天的滚动窗口应用于热情和糊析患者的每日总和。这些窗口被用作输入特征,以培训预测10天提前通话数量的机器学习算法。测试的算法包括线性回归(LR),基本复发性神经网络(RNN),长短期存储器(LSTM)和门控复发单元(GRU)架构。用于优化遗传方法来优化架构,其中将参数随机修改,并且在几代上,将选择最佳的执行算法以进一步操纵。为了评估性能,使用平均平均百分比误差(MAPE)。初始分析显示总患者数量和患者患者数量相关。与简单LR:LR = 19.4%,LSTM(104单位)= 6.1%,RNN(79单位)= 6.01%,GRU(80单位)= 6.01%(80单位)= 6.01%(80单位)= 5.97 %。初步结果表明,深度学习方法允许预测通过循环感染引起的呼叫总数的变化。进一步的调查旨在确认这些调查结果。一旦完全验证,这些算法可以通过预测需求的增加来发挥任何救护服务的运营计划中的主要作用。

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