Department of Environmental Studies, Emory University, Atlanta, Georgia, USA.
PLoS One. 2013;8(4):e58802. doi: 10.1371/journal.pone.0058802. Epub 2013 Apr 8.
Empiric quantification of human mobility patterns is paramount for better urban planning, understanding social network structure and responding to infectious disease threats, especially in light of rapid growth in urbanization and globalization. This need is of particular relevance for developing countries, since they host the majority of the global urban population and are disproportionally affected by the burden of disease. We used Global Positioning System (GPS) data-loggers to track the fine-scale (within city) mobility patterns of 582 residents from two neighborhoods from the city of Iquitos, Peru. We used ∼2.3 million GPS data-points to quantify age-specific mobility parameters and dynamic co-location networks among all tracked individuals. Geographic space significantly affected human mobility, giving rise to highly local mobility kernels. Most (∼80%) movements occurred within 1 km of an individual's home. Potential hourly contacts among individuals were highly irregular and temporally unstructured. Only up to 38% of the tracked participants showed a regular and predictable mobility routine, a sharp contrast to the situation in the developed world. As a case study, we quantified the impact of spatially and temporally unstructured routines on the dynamics of transmission of an influenza-like pathogen within an Iquitos neighborhood. Temporally unstructured daily routines (e.g., not dominated by a single location, such as a workplace, where an individual repeatedly spent significant amount of time) increased an epidemic's final size and effective reproduction number by 20% in comparison to scenarios modeling temporally structured contacts. Our findings provide a mechanistic description of the basic rules that shape human mobility within a resource-poor urban center, and contribute to the understanding of the role of fine-scale patterns of individual movement and co-location in infectious disease dynamics. More generally, this study emphasizes the need for careful consideration of human social interactions when designing infectious disease mitigation strategies, particularly within resource-poor urban environments.
量化人类移动模式是更好地进行城市规划、理解社交网络结构和应对传染病威胁的关键,尤其是在城市化和全球化快速发展的背景下。这种需求对于发展中国家尤为重要,因为发展中国家拥有全球大部分城市人口,并且受到疾病负担的不成比例的影响。我们使用全球定位系统 (GPS) 数据记录器来跟踪来自秘鲁伊基托斯市两个街区的 582 名居民的精细尺度(城市内)移动模式。我们使用了大约 230 万个 GPS 数据点来量化特定年龄的移动参数和所有跟踪个体之间的动态共定位网络。地理空间显著影响人类移动,产生了高度本地化的移动核。大多数(约 80%)移动发生在个体家附近 1 公里范围内。个体之间的潜在每小时接触非常不规则且时间上无结构。只有高达 38%的跟踪参与者表现出规律且可预测的移动模式,这与发达国家的情况形成鲜明对比。作为一个案例研究,我们量化了时空非结构化日常生活对伊基托斯街区内流感样病原体传播动力学的影响。与模拟时空结构化接触的情况相比,时空非结构化的日常活动(例如,不受单个地点支配,例如工作场所,个体在该地点花费大量时间)使流行病的最终规模和有效繁殖数增加了 20%。我们的研究结果提供了一种机制描述,说明了在资源匮乏的城市中心内塑造人类移动的基本规则,并有助于理解个体运动和共定位的细粒度模式在传染病动力学中的作用。更广泛地说,这项研究强调了在设计传染病缓解策略时,特别是在资源匮乏的城市环境中,需要仔细考虑人类社会互动。