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COVID-19 区域感染扩张风险指数:使用移动性数据的移动方向熵研究及其在东京的应用。

Risk Index of Regional Infection Expansion of COVID-19: Moving Direction Entropy Study Using Mobility Data and Its Application to Tokyo.

机构信息

School of Engineering, The University of Tokyo, Tokyo, Japan.

School of Engineering, Mie University, Tsu, Japan.

出版信息

JMIR Public Health Surveill. 2024 Aug 21;10:e57742. doi: 10.2196/57742.

Abstract

BACKGROUND

Policies, such as stay home, bubbling, and stay with your community, recommending that individuals reduce contact with diverse communities, including families and schools, have been introduced to mitigate the spread of the COVID-19 pandemic. However, these policies are violated if individuals from various communities gather, which is a latent risk in a real society where people move among various unreported communities.

OBJECTIVE

We aimed to create a physical index to assess the possibility of contact between individuals from diverse communities, which serves as an indicator of the potential risk of SARS-CoV-2 spread when considered and combined with existing indices.

METHODS

Moving direction entropy (MDE), which quantifies the diversity of moving directions of individuals in each local region, is proposed as an index to evaluate a region's risk of contact of individuals from diverse communities. MDE was computed for each inland municipality in Tokyo using mobility data collected from smartphones before and during the COVID-19 pandemic. To validate the hypothesis that the impact of intercommunity contact on infection expansion becomes larger for a virus with larger infectivity, we compared the correlations of the expansion of infectious diseases with indices, including MDE and the densities of supermarkets, restaurants, etc. In addition, we analyzed the temporal changes in MDE in municipalities.

RESULTS

This study had 4 important findings. First, the MDE values for local regions showed significant invariance between different periods according to the Spearman rank correlation coefficient (>0.9). Second, MDE was found to correlate with the rate of infection cases of COVID-19 among local populations in 53 inland regions (average of 0.76 during the period of expansion). The density of restaurants had a similar correlation with COVID-19. The correlation between MDE and the rate of infection was smaller for influenza than for COVID-19, and tended to be even smaller for sexually transmitted diseases (order of infectivity). These findings support the hypothesis. Third, the spread of COVID-19 was accelerated in regions with high-rank MDE values compared to those with high-rank restaurant densities during and after the period of the governmental declaration of emergency (P<.001). Fourth, the MDE values tended to be high and increased during the pandemic period in regions where influx or daytime movement was present. A possible explanation for the third and fourth findings is that policymakers and living people have been overlooking MDE.

CONCLUSIONS

We recommend monitoring the regional values of MDE to reduce the risk of infection spread. To aid in this monitoring, we present a method to create a heatmap of MDE values, thereby drawing public attention to behaviors that facilitate contact between communities during a highly infectious disease pandemic.

摘要

背景

为了减轻 COVID-19 大流行的传播,已出台政策,例如居家、社交隔离、留在所在社区,建议个人减少与不同社区(包括家庭和学校)的接触。但是,如果不同社区的人聚集在一起,这些政策就会被违反,这是现实社会中人们在各个未报告社区之间移动的一个潜在风险。

目的

我们旨在创建一个物理指标来评估来自不同社区的个人之间接触的可能性,该指标可用作考虑与现有指标相结合时 SARS-CoV-2 传播潜在风险的指标。

方法

提出移动方向熵(MDE)作为评估个人来自不同社区接触风险的区域指标,该指标量化了每个本地区域中个人移动方向的多样性。使用在 COVID-19 大流行之前和期间从智能手机收集的移动数据,为东京的每个内陆城市计算 MDE。为了验证人际接触对感染扩大的影响对于传染性更强的病毒会更大的假设,我们比较了 MDE 和超市、餐馆等密度等指数与传染病扩张的相关性。此外,我们分析了城市 MDE 的时间变化。

结果

这项研究有 4 个重要发现。首先,根据 Spearman 秩相关系数(>0.9),不同时期本地区域的 MDE 值显示出显著的不变性。其次,发现 MDE 与 53 个内陆地区当地人口的 COVID-19 感染病例率相关(扩展期的平均值为 0.76)。餐馆密度与 COVID-19 具有相似的相关性。MDE 与流感的感染率的相关性比 COVID-19 小,并且对于性传播疾病(传染性顺序)的相关性甚至更小。这些发现支持了假设。第三,与紧急状态期间和之后的高 MDE 值地区相比,高 MDE 值地区的 COVID-19 传播速度加快(P<.001)。第四,在大流行期间,流入或白天移动较多的地区的 MDE 值往往较高且呈上升趋势。第三个和第四个发现的一个可能解释是,政策制定者和生活中的人忽略了 MDE。

结论

我们建议监测 MDE 的区域值以降低感染传播的风险。为了帮助进行这种监测,我们提出了一种创建 MDE 值热图的方法,从而引起公众对大流行期间促进社区之间接触的行为的关注。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6e09/11375397/346b3251eb07/publichealth_v10i1e57742_fig1.jpg

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