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利用韩国的实证数据分析预测新冠肺炎确诊病例

Forecasting COVID-19 Confirmed Cases Using Empirical Data Analysis in Korea.

作者信息

Lee Da Hye, Kim Youn Su, Koh Young Youp, Song Kwang Yoon, Chang In Hong

机构信息

Department of Computer Science and Statistics, Chosun University, Gwangju, 61452, Korea.

Department of Internal Medicine, College of Medicine and Medical School, Chosun University, Gwangju 61452, Korea.

出版信息

Healthcare (Basel). 2021 Mar 1;9(3):254. doi: 10.3390/healthcare9030254.

Abstract

From November to December 2020, the third wave of COVID-19 cases in Korea is ongoing. The government increased Seoul's social distancing to the 2.5 level, and the number of confirmed cases is increasing daily. Due to a shortage of hospital beds, treatment is difficult. Furthermore, gatherings at the end of the year and the beginning of next year are expected to worsen the effects. The purpose of this paper is to emphasize the importance of prediction timing rather than prediction of the number of confirmed cases. Thus, in this study, five groups were set according to minimum, maximum, and high variability. Through empirical data analysis, the groups were subdivided into a total of 19 cases. The cumulative number of COVID-19 confirmed cases is predicted using the auto regressive integrated moving average (ARIMA) model and compared with the actual number of confirmed cases. Through group and case-by-case prediction, forecasts can accurately determine decreasing and increasing trends. To prevent further spread of COVID-19, urgent and strong government restrictions are needed. This study will help the government and the Korea Disease Control and Prevention Agency (KDCA) to respond systematically to a future surge in confirmed cases.

摘要

2020年11月至12月,韩国第三波新冠疫情正在持续。政府将首尔的社交距离限制提升至2.5级,确诊病例数每日都在增加。由于病床短缺,治疗面临困难。此外,预计年末和明年年初的聚会将使情况恶化。本文的目的是强调预测时机而非确诊病例数预测的重要性。因此,在本研究中,根据最小值、最大值和高变异性设置了五组。通过实证数据分析,这些组被细分为总共19种情况。使用自回归积分滑动平均(ARIMA)模型预测新冠确诊病例的累计数量,并与实际确诊病例数进行比较。通过分组和逐例预测,预测能够准确确定下降和上升趋势。为防止新冠疫情进一步蔓延,政府需要采取紧急且有力的限制措施。本研究将有助于政府和韩国疾病控制与预防机构(KDCA)系统应对未来确诊病例的激增。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c92d/7998453/233b78cdc877/healthcare-09-00254-g001.jpg

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