| Literature DB >> 35128388 |
Rezwana Rafiq1, Tanjeeb Ahmed1, Md Yusuf Sarwar Uddin2.
Abstract
Human mobility is considered as one of the prominent non-pharmaceutical interventions to control the spread of the pandemic (positive effect from mobility to infection). Conversely, the spread of the pandemic triggered massive changes to people's daily schedules by limiting their movement (negative effect from infection to mobility). The purpose of this study is to investigate this bi-directional relationship between human mobility and COVID-19 spread across U.S. counties during the early phase of the pandemic when infection rates were stabilizing and activity-travel behavior reflected a fairly steady return to normal following the drastic changes observed during the pandemic's initial shock. In particular, we applied Structural Regression (SR) model to investigate a bi-directional relationship between COVID-19 infection rate and the degree of human mobility in a county in association with socio-demographic and location characteristics of that county, and state-wide COVID-19 policies. Combining U.S. county-level cross-sectional data from multiple sources, our model results suggested that during the study period, human mobility and infection rate in a county both influenced each other, but in an opposite direction. Metropolitan counties experienced higher infection and lower mobility than non-metropolitan counties in the early stage of the pandemic. Counties with highly infected neighboring counties and more external trips had a higher infection rate. During the study period, community mitigation strategies, such as stay at home order, emergency declaration, and non-essential business closure significantly reduced mobility whereas public mask mandate significantly reduced infection rates. The findings of this study will provide important insights to policy makers in understanding the two-way relationship between human mobility and COVID-19 spread and to derive mobility-driven policy actions accordingly.Entities:
Keywords: Big data; COVID-19 pandemic; COVID-19 policies; Human mobility; Infection rate; Latent factor; SEM; Spatial effect
Year: 2021 PMID: 35128388 PMCID: PMC8806672 DOI: 10.1016/j.trip.2021.100528
Source DB: PubMed Journal: Transp Res Interdiscip Perspect ISSN: 2590-1982
Description of the variables and summary statistics (N = 3, 140).
| Variable | Source | Description | Min | Max | Mean | Std. dev |
|---|---|---|---|---|---|---|
| Age 18 – 24 yrs. | Percentage of people aged 18 to 24 years | 0.52 | 46.98 | 8.69 | 3.45 | |
| Age 25 – 44 yrs. | Percentage of people aged 25 to 44 years | 11.43 | 41.18 | 23.43 | 3.29 | |
| Age 45 – 64 yrs. | Percentage of people aged 44 to 64 years | 10.80 | 42.99 | 26.84 | 2.86 | |
| Age 65 or above yrs. | Percentage of people aged 65 or above years | 3.20 | 56.71 | 18.79 | 4.66 | |
| African-Americans | Percentage of African-Americans | 0.00 | 87.40 | 8.93 | 14.47 | |
| Male | Percentage of male people | 41.39 | 79.00 | 50.08 | 2.37 | |
| Labor force | Percentage of population in labor force | 14.18 | 71.27 | 46.81 | 6.10 | |
| HH with Internet | Percentage of HH having internet connection | 35.15 | 96.27 | 75.98 | 8.78 | |
| Metropolitan status | Metropolitan status indicator based on 2013 NCHS urban–rural classification scheme: metro = 1, nonmetro = 0 | 0 | 1 | 0.37 | 0.48 | |
| Presence of airport | Presence of an airport in a county: yes = 1, no = 0 | 0 | 1 | 0.15 | 0.35 | |
| Points of interests | Number of points of interests in a county for crowd gathering per 1000 people. | 8 | 699 | 131.47 | 42.10 | |
| Stay at home | Daily percentage of residents staying at home (i.e., no trips with a non-home trip end more than one mile away from home). In the model, we considered the daily percentage of residents "going out of home" for various purposes, which was calculated as the complement of the percentage of residents staying at home. | 2 | 61 | 20.99 | 4.94 | |
| Non-work trips per person | Daily average number of nonwork trips per person. Total number of identified and weighted trips on each day in each county divided by the county population (trip lengths lower than 300 m are dropped). | 1.20 | 4.66 | 2.91 | 0.34 | |
| Person-miles traveled | Daily average person-miles traveled. Total weighted person-miles traveled on each day in each county across all travel modes (car, train, bus, plane, bike, walk, etc.) divided by the county population. | 9.90 | 124.90 | 40.37 | 10.25 | |
| Johns Hopkins Univ. data repository ( | Number of COVID-19 daily new cases per 100K people (three-day moving average). Natural log form was used in the model. | 0.00 | 117.75 | 1.70 | 3.99 | |
| Active cases | Number of active COVID-19 cases per 1000 people | 0.08 | 7.35 | 1.93 | 1.36 | |
| Imported cases | Number of daily external trips by infectious persons from out of state/county | 0 | 247829 | 4062 | 13508 | |
| Stay at home order | Number of days from the first enactment of stay at home order until May 1, 2020 | 25 | 73 | 46.07 | 16.43 | |
| Public mask mandate | Number of days from the first enactment of public mask mandate until May 1, 2020 | 0 | 60 | 28.21 | 19.10 | |
| Quarantine mandate | Number of days from the first enactment of quarantine mandate until May 1, 2020 | 0 | 68 | 45.79 | 23.11 | |
| Gathering restrictions | Number of days from the first enactment of gathering restrictions until May 1, 2020 | 22 | 80 | 64.35 | 13.86 | |
| Emergency declarations | Number of days from the first enactment of emergency declarations until May 1, 2020 | 76 | 92 | 81.09 | 3.01 | |
| Non-essential business closure | Number of days from the first enactment of non-essential business closure until May 1, 2020 | 49 | 73 | 65.28 | 5.41 | |
Fig. 1Daily new COVID cases from January to November 2020 in the U.S. and study time frame.
Fig. 2Daily new COVID-19 cases and changes in mobility characteristics in 2020.
Fig. 3Conceptual structural regression model.
Fig. 4SEM model estimation.
Estimated factor loadings for the latent measure of human mobility (N = 3,140).
| Latent factor: Human mobility | ||
| Indicators | ||
| Percentage going out of homea | 1*** | 0.671*** |
| Avg. non-work trips made | 0.132*** | 0.127*** |
| Person-miles traveled | 2.102*** | 0.679*** |
Note: a refers to fixed parameter and *** indicates statistical significance at 1%.
Direct and total effects of variables on COVID infection rate (N = 3,140).
| Outcome: COVID-19 infection rate | ||||
| Predictors | ||||
| 20.116*** | 18.191*** | 0.273*** | 0.246*** | |
| Age 18–24 years | 6.388*** | 1.060 | 0.090*** | 0.015 |
| Age 25–44 years | 16.377*** | 5.752*** | 0.220*** | 0.077*** |
| Age 45–64 years | −1.437 | −3.358* | −0.017 | −0.039* |
| Age 65 years and older | −4.117** | −7.411*** | −0.078** | −0.141*** |
| African-Americans | 1.936*** | 2.275*** | 0.115*** | 0.135*** |
| Male | −13.115*** | −4.604** | −0.128*** | −0.045** |
| People in labor force | --- | 1.408*** | --- | 0.035*** |
| HH with internet access | --- | −1.607*** | --- | −0.058*** |
| Number of points of interest | --- | −0.002*** | --- | −0.039*** |
| Presence of airport | --- | −0.266*** | --- | −0.039*** |
| Metropolitan status | 0.500*** | 0.332*** | 0.099*** | 0.066*** |
| 0.0003*** | 0.0002*** | 0.150*** | 0.136*** | |
| 0.051*** | 0.046** | 0.314*** | 0.284** | |
| Emergency declaration | --- | −1.406*** | --- | −0.017*** |
| Gathering restriction | --- | −0.029*** | --- | −0.002*** |
| Stay at home order | 2.942*** | 1.856*** | 0.198*** | 0.125*** |
| Non-essential business closure | --- | −0.606** | --- | −0.013** |
| Public mask mandate | −0.477* | −0.431* | −0.037* | −0.034* |
| Quarantine mandate | 0.145 | 0.132 | 0.013 | 0.012 |
Notes: --- denotes no direct connections. *, **, and *** indicate statistical significance at 10%, 5%, and 1% respectively.
All the COVID-19 policy variables represent the number of days from the first enactment of policies until May 1, 2020
Susceptible Infected (SI) = number of susceptible people (people who have not been infected with the virus yet) × number of currently infected people in that population (current active cases).
Spatial effect = number of average COVID-19 daily new cases per 100 K population in neighboring counties × average number of daily external trips by infectious persons from out of state or county (Imported cases)
Fig. 5Relationships between age and infection rate across counties by four age groups: (a) 18 – 24 yrs. (b) 25 – 44 yrs. (c) 45 – 64 yrs. (d) 65 yrs. or above.
Direct and total effects of variables on human mobility (N = 3,140).
| Outcome: Human Mobility | ||||
| Predictors | ||||
| −0.005*** | −0.005*** | −0.388*** | −0.351*** | |
| Age 18–24 years | −0.259*** | −0.265*** | −0.270*** | −0.276*** |
| Age 25–44 years | −0.498*** | −0.528*** | −0.495*** | −0.525*** |
| Age 45–64 years | −0.113*** | −0.095*** | −0.098*** | −0.083*** |
| Age 65 years and older | −0.203*** | −0.164*** | −0.285*** | −0.230*** |
| African-Americans | 0.029*** | 0.017*** | 0.126*** | 0.074*** |
| Male | 0.399*** | 0.423*** | 0.287*** | 0.304*** |
| People in labor force | 0.077*** | 0.070*** | 0.143*** | 0.129*** |
| HH with internet access | −0.088*** | −0.080*** | −0.234*** | −0.212*** |
| Number of points of interest | −0.0001*** | −0.0001*** | −0.158*** | −0.143*** |
| Presence of airport | −0.015*** | −0.013*** | −0.156*** | −0.141*** |
| Metropolitan status | −0.007*** | −0.008*** | −0.096*** | −0.122*** |
| --- | −1.290e-6 | --- | −0.053 | |
| --- | −0.0002*** | --- | −0.110*** | |
| Emergency declaration | −0.077*** | −0.070*** | −0.070*** | −0.063*** |
| Gathering restriction | −0.002 | −0.001 | −0.007 | −0.006 |
| Stay at home order | −0.044*** | −0.054*** | −0.220*** | −0.269*** |
| Non-essential business closure | −0.033** | −0.030** | −0.051** | −0.046** |
| Public mask mandate | --- | 0.002* | --- | 0.013* |
| Quarantine mandate | --- | −0.001 | --- | −0.005 |
Notes: --- denotes no direct connections. *, **, and *** indicate statistical significance at 10%, 5%, and 1% respectively.
All the COVID-19 policy variables represent the number of days from the first enactment of policies until May 1, 2020.
Susceptible Infected (SI) = number of susceptible people (people who have not been infected with the virus yet) × number of currently infected people in that population (current active cases).
Spatial effect = number of average COVID-19 daily new cases per 100 K population in neighboring counties × average number of daily external trips by infectious persons from out of state or county (Imported cases).
Total effects of variables on mobility indicators (N = 3,140).
| Predictors | Outcome variables | |||||
|---|---|---|---|---|---|---|
| Going out of home | Non-work trips | Person-miles traveled | Going out of home | Non-work trips | Person-miles traveled | |
| Unstandardized Coefficient | Standardized Coefficient | |||||
| −0.005*** | −0.001*** | −0.010*** | −0.236*** | −0.045*** | −0.238 | |
| 0.904*** | 0.119*** | 1.901*** | 0.607*** | 0.115*** | 0.614 | |
| Age 18–24 years | −0.265*** | −0.035*** | −0.557*** | −0.185*** | −0.035*** | −0.188 |
| Age 25–44 years | −0.528*** | −0.070*** | −1.110*** | −0.352*** | −0.067*** | −0.356 |
| Age 45–64 years | −0.095*** | −0.013*** | −0.201*** | −0.055*** | −0.011*** | −0.056 |
| Age 65 years and older | −0.164*** | −0.022*** | −0.344*** | −0.154*** | −0.029*** | −0.156 |
| African-Americans | 0.017*** | 0.002*** | 0.035*** | 0.049*** | 0.009*** | 0.050 |
| Male | 0.423*** | 0.056*** | 0.889*** | 0.204*** | 0.039*** | 0.206 |
| People in labor force | 0.070*** | 0.009*** | 0.147*** | 0.087*** | 0.016*** | 0.088 |
| HH with internet access | −0.080*** | −0.011*** | −0.168*** | −0.142*** | −0.027*** | −0.144 |
| Number of points of interest | −0.0001*** | −1.48e5*** | −0.0002*** | −0.096*** | −0.018*** | −0.097 |
| Presence of airport | −0.013*** | −0.002*** | −0.028*** | −0.095*** | −0.018*** | −0.096 |
| Metropolitan status | −0.008*** | −0.001*** | −0.018*** | −0.082*** | −0.016*** | −0.083 |
| −1.290e-6 | −1.700e-7 | −2.71e6*** | −0.035 | −0.007 | −0.036 | |
| −0.0002*** | −3.19e5*** | −0.001*** | −0.074*** | −0.014*** | −0.075 | |
| Emergency declaration | −0.070*** | −0.009*** | −0.147*** | −0.043*** | −0.008*** | −0.043 |
| Gathering restriction | −0.001 | −0.0002 | −0.003 | −0.004 | −0.001 | −0.004 |
| Stay at home order | −0.054*** | −0.007*** | −0.113*** | −0.180*** | −0.034*** | −0.182 |
| Non-essential business closure | −0.030** | −0.004** | −0.063** | −0.031** | −0.006** | −0.031 |
| Public mask mandate | 0.002* | 0.0003* | 0.005* | 0.009* | 0.002* | 0.008 |
| Quarantine mandate | −0.001 | −9.140e-5 | −0.001 | −0.003 | −0.001 | −0.003 |
Notes: *, **, and *** indicate statistical significance at 10%, 5%, and 1% respectively.
All the COVID-19 policy variables represent the number of days from the first enactment of policies until May 1, 2020.
Susceptible Infected (SI) = number of susceptible people (people who have not been infected with the virus yet) × number of currently infected people in that population (current active cases).
Spatial effect = number of average COVID-19 daily new cases per 100 K population in neighboring counties × average number of daily external trips by infectious persons from out of state or county (Imported cases).
Interactions between human mobility and COVID infection (N = 3,140).
| Outcome: COVID infection rate | ||||
| Predictors: Human mobility | 20.116*** | 18.191*** | 0.273*** | 0.246*** |
| Outcome: Human mobility | ||||
| Predictors: COVID infection rate | −0.005*** | −0.005*** | −0.388*** | −0.351*** |
Note: *, **, and *** indicate statistical significance at 10%, 5%, and 1% respectively.
Fig. 6County distribution based on human mobility and infection rate by metropolitan status (dotted lines are the median lines).
Four groups of counties with varying interactions between mobility and infection.
| These counties had a lower infection as well as lower mobility indicating a proactive restriction on mobility as a precaution. They belonged to mostly East and West coast regions (e.g., northern portion of California, Oregon, Washington, Vermont, Maine, New Mexico) and are mostly metropolitan counties (54% of them). | ||
| These counties experienced a higher number of infections and at the same time, a higher degree of mobility, suggesting that they might be behind activating mobility restrictions. These were mostly rural counties spanning mostly in the Southeast region. Notably, counties from Georgia, Alabama, and Mississippi were included here and these states did not continue ‘stay at home’ order after April 30. | ||
| These counties had a lower infection but with higher mobility. That means, no mobility restriction was in place in those counties (or people perhaps did not comply with them as there were fewer reported cases). These were mostly rural counties located in the U.S. Midwest, West and Southwest regions. | ||
| These coastal areas metro counties experienced higher infection and lower mobility. They got severe infection rate by the pandemic and mobility restrictions were realized. |
Note: Values for degree of mobility were estimated by the model
Fig. 7Distribution of four groups of U.S. counties in May 2020.
Fig. 8SEM model validation.
Fig. 9Baseline and predicted infection rate for Scenario 1 in SCAG region.
Fig. 10Predicted changes in mobility indicators for Scenario 2 in Clay County, Iowa.