Iqbal Muhammad, Al-Obeidat Feras, Maqbool Fahad, Razzaq Saad, Anwar Sajid, Tubaishat Abdallah, Khan Muhammad Shahrose, Shah Babar
Department of Computer Science and Information TechnologyUniversity of Sargodha Sargodha 40100 Pakistan.
College of Technological InnovationZayed University Abu Dhabi United Arab Emirates.
IEEE Trans Comput Soc Syst. 2021 Feb 19;8(4):974-981. doi: 10.1109/TCSS.2021.3056769. eCollection 2021 Aug.
In December 2019, a pandemic named COVID-19 broke out in Wuhan, China, and in a few weeks, it spread to more than 200 countries worldwide. Every country infected with the disease started taking necessary measures to stop the spread and provide the best possible medical facilities to infected patients and take precautionary measures to control the spread. As the infection spread was exponential, there arose a need to model infection spread patterns to estimate the patient volume computationally. Such patients' estimation is the key to the necessary actions that local governments may take to counter the spread, control hospital load, and resource allocations. This article has used long short-term memory (LSTM) to predict the volume of COVID-19 patients in Pakistan. LSTM is a particular type of recurrent neural network (RNN) used for classification, prediction, and regression tasks. We have trained the RNN model on Covid-19 data (March 2020 to May 2020) of Pakistan and predict the Covid-19 Percentage of Positive Patients for June 2020. Finally, we have calculated the mean absolute percentage error (MAPE) to find the model's prediction effectiveness on different LSTM units, batch size, and epochs. Predicted patients are also compared with a prediction model for the same duration, and results revealed that the predicted patients' count of the proposed model is much closer to the actual patient count.
2019年12月,一场名为COVID-19的大流行病在中国武汉爆发,几周内便蔓延至全球200多个国家。每个感染该疾病的国家都开始采取必要措施来阻止传播,为感染患者提供尽可能好的医疗设施,并采取预防措施来控制传播。由于感染传播呈指数级增长,因此需要对感染传播模式进行建模,以便通过计算估计患者数量。这种患者数量的估计是地方政府为应对传播、控制医院负荷和资源分配而可能采取的必要行动的关键。本文使用长短期记忆网络(LSTM)来预测巴基斯坦的COVID-19患者数量。LSTM是循环神经网络(RNN)的一种特殊类型,用于分类、预测和回归任务。我们使用巴基斯坦的COVID-19数据(2020年3月至2020年5月)对RNN模型进行了训练,并预测了2020年6月COVID-19阳性患者的百分比。最后,我们计算了平均绝对百分比误差(MAPE),以确定该模型在不同LSTM单元、批量大小和轮次下的预测效果。还将预测的患者数量与同一时间段的预测模型进行了比较,结果表明,所提出模型预测的患者数量与实际患者数量更为接近。