为早期病原体检测采样点和传播途径提供信息的巴西人口流动模式:网络建模和验证研究。

IF 23.8 1区 医学 Q1 MEDICAL INFORMATICS Lancet Digital Health Pub Date : 2024-08-01 DOI:10.1016/S2589-7500(24)00099-2
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引用次数: 0

摘要

背景:检测和预测病原体的扩散对于预防疾病的广泛传播至关重要。人的流动性是传染病病原体在人际间传播的一个基本问题。通过以流动性数据为驱动的方法,我们旨在确定巴西哪些城市可组成先进的哨点网络,以便及早发现流行病原体及其相关传播途径:在这项建模和验证研究中,我们从巴西地理和统计研究所(2016 年数据)、国家运输联合会(2022 年数据)和国家民航局(2017-23 年数据)中汇编了一个全面的城际交通数据集,涵盖航空、公路和水路运输。我们构建了一个基于图的巴西交通网络表征。我们使用福特-福克森算法,根据巴西 5570 个城市作为哨点地点的适宜性对其进行排序,从而预测出最适合进行早期检测的地点,并追踪新出现病原体的最可能轨迹。为了验证模型,我们还从巴西各城市获得了 SARS-CoV-2 病毒传入初期(2020 年 2 月 25 日至 4 月 30 日)和玛瑙斯出现伽马(P.1)变种(2021 年 1 月 6 日至 3 月 1 日)期间的基因数据:我们发现,在 2017-22 年期间,仅航班每年就在巴西境内运送 7900 万(95% CI 58-300-101-400)人次,季节性高峰出现在春末和夏季,公路和河流网络在 2016 年的最大容量为每周 7800-300 万人次。通过分析源自源节点的 7 746 479 条最可能路径,我们发现 3857 个城市完全覆盖了巴西所有 5570 个城市的流动模式,其中 557 个城市(10-0%)覆盖了我们研究中的 6 313 380 个城市(81-5%)的流动模式。通过战略性地将流动模式纳入巴西现有的流感样疾病监测网络(即把199个哨点中111个哨点的位置转移到不同的城市),我们的模型预测,在不扩大哨点数量的情况下,流动模式的覆盖率将从4 059 155个(52-4%)提高到5 422 535个(70-0%),提高33-6%。我们的研究结果得到了 SARS-CoV-2 大流行期间收集的基因组数据的验证。我们的模型准确绘制了 2020 年 2 月 25 日至 4 月 30 日期间,从圣保罗市扩散的 43 个受 1 支影响城市中的 22 个(51%)和 47 个受 2 支影响城市中的 28 个(60%),以及从里约热内卢市扩散的 41 个受 1 支影响城市中的 20 个(49%)和 48 个受 2 支影响城市中的 28 个(58%)。此外,在马瑙斯出现的病原体的 307 个建议早期检测地点中,有 224 个(73%)与 2021 年 1 月 6 日至 16 日受伽马变异体传播影响的首批城市相对应:我们的研究结果为有效的病原体监测提供了重要线索,有可能为公共卫生政策提供信息,并改善未来的大流行应对工作。我们的研究结果为设计全国范围内的临床样本收集网络提供了以流动性数据为依据的方法,这是一种创新做法,可以改善目前的监测系统:洛克菲勒基金会。
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Human mobility patterns in Brazil to inform sampling sites for early pathogen detection and routes of spread: a network modelling and validation study

Background

Detecting and foreseeing pathogen dispersion is crucial in preventing widespread disease transmission. Human mobility is a fundamental issue in human transmission of infectious agents. Through a mobility data-driven approach, we aimed to identify municipalities in Brazil that could comprise an advanced sentinel network, allowing for early detection of circulating pathogens and their associated transmission routes.

Methods

In this modelling and validation study, we compiled a comprehensive dataset on intercity mobility spanning air, road, and waterway transport from the Brazilian Institute of Geography and Statistics (2016 data), National Transport Confederation (2022), and National Civil Aviation Agency (2017–23). We constructed a graph-based representation of Brazil's mobility network. The Ford–Fulkerson algorithm was used to rank the 5570 Brazilian cities according to their suitability as sentinel locations, allowing us to predict the most suitable locations for early detection and to track the most likely trajectory of a newly emerged pathogen. We also obtained SARS-CoV-2 genetic data from Brazilian municipalities during the early stage (Feb 25–April 30, 2020) of the virus's introduction and the gamma (P.1) variant emergence in Manaus (Jan 6–March 1, 2021), for the purposes of model validation.

Findings

We found that flights alone transported 79·9 million (95% CI 58·3–101·4 million) passengers annually within Brazil during 2017–22, with seasonal peaks occurring in late spring and summer, and road and river networks had a maximum capacity of 78·3 million passengers weekly in 2016. By analysing the 7 746 479 most probable paths originating from source nodes, we found that 3857 cities fully cover the mobility pattern of all 5570 cities in Brazil, 557 (10·0%) of which cover 6 313 380 (81·5%) of the mobility patterns in our study. By strategically incorporating mobility patterns into Brazil's existing influenza-like illness surveillance network (ie, by switching the location of 111 of 199 sentinel sites to different municipalities), our model predicted that mobility coverage would have a 33·6% improvement from 4 059 155 (52·4%) mobility patterns to 5 422 535 (70·0%) without expanding the number of sentinel sites. Our findings are validated with genomic data collected during the SARS-CoV-2 pandemic period. Our model accurately mapped 22 (51%) of 43 clade 1-affected cities and 28 (60%) of 47 clade 2-affected cities spread from São Paulo city, and 20 (49%) of 41 clade 1-affected cities and 28 (58%) of 48 clade 2-affected cities spread from Rio de Janeiro city, Feb 25–April 30, 2020. Additionally, 224 (73%) of the 307 suggested early-detection locations for pathogens emerging in Manaus corresponded with the first cities affected by the transmission of the gamma variant, Jan 6–16, 2021.

Interpretation

By providing essential clues for effective pathogen surveillance, our results have the potential to inform public health policy and improve future pandemic response efforts. Our results unlock the potential of designing country-wide clinical sample collection networks with mobility data-informed approaches, an innovative practice that can improve current surveillance systems.

Funding

Rockefeller Foundation.

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来源期刊
CiteScore
41.20
自引率
1.60%
发文量
232
审稿时长
13 weeks
期刊介绍: The Lancet Digital Health publishes important, innovative, and practice-changing research on any topic connected with digital technology in clinical medicine, public health, and global health. The journal’s open access content crosses subject boundaries, building bridges between health professionals and researchers.By bringing together the most important advances in this multidisciplinary field,The Lancet Digital Health is the most prominent publishing venue in digital health. We publish a range of content types including Articles,Review, Comment, and Correspondence, contributing to promoting digital technologies in health practice worldwide.
期刊最新文献
Correction to Lancet Digit Health 2024; 6: e281-90. Challenges for augmenting intelligence in cardiac imaging. Diagnostic accuracy of a machine learning algorithm using point-of-care high-sensitivity cardiac troponin I for rapid rule-out of myocardial infarction: a retrospective study. Digital technology and new care pathways will redefine the cardiovascular workforce. Digital tools in heart failure: addressing unmet needs.
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