Department of Statistics & Computer Science, Faculty of Science, University of Kelaniya, Sri Lanka.
Research & Development Centre for Mathematical Modelling, Department of Mathematics, Faculty of Science, University of Colombo, Sri Lanka.
Biomed Res Int. 2020 Dec 3;2020:8850199. doi: 10.1155/2020/8850199. eCollection 2020.
COVID-19 is a pandemic which has spread to more than 200 countries. Its high transmission rate makes it difficult to control. To date, no specific treatment has been found as a cure for the disease. Therefore, prediction of COVID-19 cases provides a useful insight to mitigate the disease. This study aims to model and predict COVID-19 cases. Eight countries: Italy, New Zealand, the USA, Brazil, India, Pakistan, Spain, and South Africa which are in different phases of COVID-19 distribution as well as in different socioeconomic and geographical characteristics were selected as test cases. The Alpha-Sutte Indicator approach was utilized as the modelling strategy. The capability of the approach in modelling COVID-19 cases over the ARIMA method was tested in the study. Data consist of accumulated COVID-19 cases present in the selected countries from the first day of the presence of cases to September 26, 2020. Ten percent of the data were used to validate the modelling approach. The analysis disclosed that the Alpha-Sutte modelling approach is appropriate in modelling cumulative COVID-19 cases over ARIMA by reporting 0.11%, 0.33%, 0.08%, 0.72%, 0.12%, 0.03%, 1.28%, and 0.08% of the mean absolute percentage error (MAPE) for the USA, Brazil, Italy, India, New Zealand, Pakistan, Spain, and South Africa, respectively. Differences between forecasted and real cases of COVID-19 in the validation set were tested using the paired -test. The differences were not statistically significant, revealing the effectiveness of the modelling approach. Thus, predictions were generated using the Alpha-Sutte approach for each country. Therefore, the Alpha-Sutte method can be recommended for short-term forecasting of cumulative COVID-19 incidences. The authorities in the health care sector and other administrators may use the predictions to control and manage the COVID-19 cases.
新型冠状病毒肺炎(COVID-19)是一种已传播到 200 多个国家的大流行病,其高传播率使其难以控制。迄今为止,尚未找到针对该疾病的特定治疗方法。因此,对 COVID-19 病例的预测提供了一种有用的见解,可以减轻疾病的影响。本研究旨在对 COVID-19 病例进行建模和预测。选择了八个国家作为测试案例,这些国家处于 COVID-19 分布的不同阶段,具有不同的社会经济和地理特征:意大利、新西兰、美国、巴西、印度、巴基斯坦、西班牙和南非。该研究使用 Alpha-Sutte 指标方法作为建模策略,测试了该方法在 ARIMA 方法中对 COVID-19 病例建模的能力。数据由从选定国家/地区 COVID-19 病例出现的第一天到 2020 年 9 月 26 日的累计病例组成。该研究使用了 10%的数据来验证建模方法。分析表明,Alpha-Sutte 建模方法通过报告美国、巴西、意大利、印度、新西兰、巴基斯坦、西班牙和南非的平均绝对百分比误差(MAPE)分别为 0.11%、0.33%、0.08%、0.72%、0.12%、0.03%、1.28%和 0.08%,在 ARIMA 上对累积 COVID-19 病例进行建模是合适的。使用配对 t 检验测试验证集中预测病例与实际病例之间的差异。差异不具有统计学意义,这表明该建模方法有效。因此,使用 Alpha-Sutte 方法为每个国家生成了预测结果。因此,建议使用 Alpha-Sutte 方法对 COVID-19 累计发病率进行短期预测。医疗保健部门的主管和其他管理人员可以使用预测结果来控制和管理 COVID-19 病例。