Maghdid Halgurd S, Ghafoor Kayhan Zrar
Department of Software Engineering, Faculty of Engineering, Koya University, Koysinjaq, 4400 Kurdistan Region-F.R. Iraq.
Department of Software Engineering, Salahaddin University-Erbil, Erbil, 4500 Iraq.
SN Comput Sci. 2020;1(5):271. doi: 10.1007/s42979-020-00290-0. Epub 2020 Aug 14.
The emergence of novel COVID-19 causes an over-load in health system and high mortality rate. The key priority is to contain the epidemic and prevent the infection rate. In this context, many countries are now in some degree of lockdown to ensure extreme social distancing of entire population and hence slowing down the epidemic spread. Furthermore, authorities use case quarantine strategy and manual second/third contact-tracing to contain the COVID-19 disease. However, manual contact-tracing is time-consuming and labor-intensive task which tremendously over-load public health systems. In this paper, we developed a smartphone-based approach to automatically and widely trace the contacts for confirmed COVID-19 cases. Particularly, contact-tracing approach creates a list of individuals in the vicinity and notifying contacts or officials of confirmed COVID-19 cases. This approach is not only providing awareness to individuals they are in the proximity to the infected area, but also tracks the incidental contacts that the COVID-19 carrier might not recall. Thereafter, we developed a dashboard to provide a plan for policymakers on how lockdown/mass quarantine can be safely lifted, and hence tackling the economic crisis. The dashboard used to predict the level of lockdown area based on collected positions and distance measurements of the registered users in the vicinity. The prediction model uses k-means algorithm as an unsupervised machine learning technique for lockdown management.
新型冠状病毒肺炎(COVID-19)的出现给卫生系统带来了超负荷压力,并导致了高死亡率。当务之急是控制疫情并防止感染率上升。在此背景下,许多国家目前都处于某种程度的封锁状态,以确保全体人口保持最大限度的社交距离,从而减缓疫情传播。此外,当局采用病例隔离策略和人工进行二级/三级接触者追踪来控制COVID-19疫情。然而,人工接触者追踪是一项耗时且劳动强度大的任务,极大地加重了公共卫生系统的负担。在本文中,我们开发了一种基于智能手机的方法,用于自动且广泛地追踪确诊COVID-19病例的接触者。具体而言,接触者追踪方法会创建附近人员的列表,并将确诊COVID-19病例的情况通知接触者或相关官员。这种方法不仅能让个人意识到自己身处感染区域附近,还能追踪COVID-19携带者可能记不起来的偶然接触者。此后,我们开发了一个仪表盘,为政策制定者提供关于如何安全解除封锁/大规模隔离的计划,从而应对经济危机。该仪表盘用于根据收集到的附近注册用户的位置和距离测量数据来预测封锁区域的级别。预测模型使用k均值算法作为一种无监督机器学习技术来进行封锁管理。