Department of Computer and Software Engineering, National University of Sciences and Technology, Islamabad 44000, Pakistan.
Int J Environ Res Public Health. 2020 May 26;17(11):3763. doi: 10.3390/ijerph17113763.
Public health management can generate actionable results when diseases are studied in context with other candidate factors contributing to disease dynamics. In order to fully understand the interdependent relationships of multiple geospatial features involved in disease dynamics, it is important to construct an effective representation model that is able to reveal the relationship patterns and trends. The purpose of this work is to combine disease incidence spatio-temporal data with other features of interest in a mutlivariate spatio-temporal model for investigating characteristic disease and feature patterns over identified hotspots. We present an integrated approach in the form of a disease management model for analyzing spatio-temporal dynamics of disease in connection with other determinants. Our approach aligns spatio-temporal profiles of disease with other driving factors in public health context to identify hotspots and patterns of disease and features of interest in the identified locations. We evaluate our model against cholera disease outbreaks from 2015-2019 in Punjab province of Pakistan. The experimental results showed that the presented model effectively address the complex dynamics of disease incidences in the presence of other features of interest over a geographic area representing populations and sub populations during a given time. The presented methodology provides an effective mechanism for identifying disease hotspots in multiple dimensions and relation between the hotspots for cost-effective and optimal resource allocation as well as a sound reference for further predictive and forecasting analysis.
当疾病与其他导致疾病动态变化的候选因素一起在背景下进行研究时,公共卫生管理可以产生可操作的结果。为了充分了解疾病动态变化中涉及的多个地理空间特征的相互依存关系,构建一个能够揭示关系模式和趋势的有效表示模型非常重要。本工作的目的是将疾病发病率时空数据与多变量时空模型中的其他相关特征相结合,以研究确定热点区域内的特征疾病和特征模式。我们提出了一种疾病管理模型,将疾病的时空动态与公共卫生背景下的其他决定因素联系起来,用于分析疾病的时空动态。我们的方法将疾病的时空分布与公共卫生中的其他驱动因素对齐,以识别热点和特征的疾病和特征的模式在确定的位置。我们针对 2015-2019 年巴基斯坦旁遮普省的霍乱疫情对我们的模型进行了评估。实验结果表明,该模型在给定时间内代表人群和子人群的地理区域内,在存在其他相关特征的情况下,有效地解决了疾病发病率的复杂动态问题。所提出的方法为在多个维度上识别疾病热点以及热点之间的关系提供了有效的机制,以便进行具有成本效益和最佳资源分配,并为进一步的预测和预测分析提供了合理的参考。