Department of Computer Science and Informatics, University of Energy and Natural Resources, Sunyani, P O Box 214, Ghana.
School of Information and Software Engineering, University of Electronic Science and Technology of China, Chengdu, 610054, China.
BMC Med Inform Decis Mak. 2020 Sep 29;20(1):245. doi: 10.1186/s12911-020-01258-z.
A pandemic affects healthcare delivery and consequently leads to socioeconomic complications. During a pandemic, a community where there lives an asymptomatic patient (AP) becomes a potential endemic zone. Assuming we want to monitor the travel and/or activity of an AP in a community where there is a pandemic. Presently, most monitoring algorithms are relatively less efficient to find a suitable solution as they overlook the continuous mobility instances and activities of the AP over time. Conversely, this paper proposes an EDDAMAP as a compelling data-dependent technique and/or algorithm towards efficient continuous monitoring of the travel and/or activity of an AP.
In this paper, it is assumed that an AP is infected with a contagious disease in which the EDDAMAP technique exploits a GPS-enabled mobile device by tagging it to the AP along with its travel within a community. The technique further examines the Spatio-temporal trajectory of the AP to infer its spatial time-bounded activity. The technique aims to learn the travels of the AP and correlates them to its activities to derive some classes of point of interests (POIs) in a location. Further, the technique explores the natural occurring POIs via modelling to identify some regular stay places (SP) and present them as endemic zones. The technique adopts concurrent object feature localization and recognition, branch and bound formalism and graph theory to cater for the worst error-guaranteed approximation to obtain a valid and efficient query solution and also experiments with a real-world GeoLife dataset to confirm its performance.
The EDDAMAP technique proofs a compelling technique towards efficient monitoring of an AP in case of a pandemic.
The EDDAMAP technique will promote the discovery of endemic zones and hence some public healthcare facilities can rely on it to facilitate the design of patient monitoring system applications to curtail a global pandemic.
大流行会影响医疗保健的提供,进而导致社会经济并发症。在大流行期间,无症状患者(AP)居住的社区成为潜在的地方性区域。假设我们想要监测大流行期间社区中 AP 的旅行和/或活动。目前,大多数监测算法相对效率较低,无法找到合适的解决方案,因为它们忽略了 AP 随时间的连续移动实例和活动。相反,本文提出了 EDDAMAP 作为一种强制性的数据依赖技术和/或算法,以实现对 AP 旅行和/或活动的有效连续监测。
在本文中,假设 AP 感染了传染病,EDDAMAP 技术通过在社区内为 AP 及其旅行贴上 GPS 启用的移动设备标签来利用该技术。该技术进一步检查 AP 的时空轨迹,以推断其时空时间受限的活动。该技术旨在学习 AP 的旅行,并将其与活动相关联,以在一个位置上得出一些兴趣点 (POI) 类。此外,该技术通过建模探索自然发生的 POI,以识别一些常规停留地点 (SP) 并将其表示为地方性区域。该技术采用并发对象特征定位和识别、分支和界限形式主义和图论来满足最坏错误保证的近似,以获得有效的查询解决方案,并使用真实世界的 GeoLife 数据集进行实验以确认其性能。
EDDAMAP 技术在大流行期间证明了一种有效的 AP 监测技术。
EDDAMAP 技术将促进地方性区域的发现,因此一些公共医疗设施可以依靠它来促进患者监测系统应用程序的设计,以遏制全球大流行。