| Literature DB >> 30959783 |
Bo Xu1,2, Huaiyu Tian3, Clive Eric Sabel4, Bing Xu5,6.
Abstract
The 2009 pandemic influenza virus caused the majority of the influenza A virus infections in China in 2009. It arrived in several Chinese cities from imported cases and then spread as people travelled domestically by all means of transportation, among which road traffic was the most commonly used for daily commuting. Spatial variation in socioeconomic status not only accelerates migration across regions but also partly induces the differences in epidemic processes and in responses to epidemics across regions. However, the roles of both road travel and socioeconomic factors have not received the attention they deserve. Here, we constructed a national highway network for and between 333 cities in mainland China and extracted epidemiological variables and socioeconomic factors for each city. We calculated classic centrality measures for each city in the network and proposed two new measures (SumRatio and Multicenter Distance). We evaluated the correlation between the centrality measures and epidemiological features and conducted a spatial autoregression to quantify the impacts of road network and socioeconomic factors during the outbreak. The results showed that epidemics had more significant relationships with both our new measures than the classic ones. Higher population density, higher per person income, larger SumRatio and Multicenter Distance, more hospitals and college students, and lower per person GDP were associated with higher cumulative incidence. Higher population density and number of slaughtered pigs were found to advance epidemic arrival time. Higher population density, more colleges and slaughtered pigs, and lower Multicenter Distance were associated with longer epidemic duration. In conclusion, road transport and socioeconomic status had significant impacts and should be considered for the prevention and control of future pandemics.Entities:
Keywords: 2009 H1N1 pandemic; gravity model; highway network; mainland China; network node centrality; socioeconomic factors; spatial autoregressive model; spatiotemporal transmission
Mesh:
Year: 2019 PMID: 30959783 PMCID: PMC6480969 DOI: 10.3390/ijerph16071223
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1The spatial distribution of the epidemic onset week in each city: The points and triangles represent cities. Different colors correspond to different onset weeks. The gray lines represent national highways. The eight center cities are labeled with their names.
Figure 2The development of the influenza pandemic in mainland China in 2009: (a) The weekly incidence (red) and cumulative incidence (black) from May 10 to December 27 and (b) the weekly number (blue) and cumulative number (black) of cities where cases were reported from May 10 to December 27.
Figure 3The characteristics of the national highway network: Histograms of the road passenger volumes (a), SumRatio (b), and Multicenter Distance (c) of all the cities in the national highway network.
The statistical significance of the correlations between epidemiological features and network node centrality measures and the number of pigs slaughtered.
| EF | Deg1 | Deg2 | Deg3 | Betw | Close | Eigen | SumR | McDis | Pig |
|---|---|---|---|---|---|---|---|---|---|
|
| NS | NS | NS | NS | NS | NS | 0.354 *** | 0.258 *** | NS |
|
| NS | NS | NS | NS | 0.208 *** | NS | −0.348 *** | 0.320 *** | −0.259 *** |
|
| NS | NS | NS | NS | −0.126 * | NS | 0.265 *** | −0.369 *** | 0.271 *** |
Abbreviations: EF, epidemiological features; CumInc, cumulative incidence; Deg1, degree in 1 step; Deg2, degree in 2 steps; Deg3, degree in 3 steps; Betw, betweenness centrality; Close, closeness centrality; Eigen, eigenvector centrality; SumR, SumRatio; McDis, Multicenter Distance; Pig, number of pigs slaughtered; NS, not significant. *, **, and ***: The correlation coefficients are significant at the 0.05 level, at the 0.01 level, and at the 0.001 level, respectively.
The variance inflation factor (VIF) of explanatory variables and the regression coefficients of spatial autoregressive models.
| VIF | Coefficient | |||
|---|---|---|---|---|
| CumInc a | Onset week | Duration | ||
| Spatial dependence | ||||
|
| 0.104 *** | 0.216 *** | 0.237 *** | |
|
| 0.177 | 0.055 | 0.292 ** | |
| Effects | ||||
| const | −0.071 ** | 0.625 *** | 0.300 *** | |
| Urban ratio | 2.644 | −0.001 | −0.036 | −0.014 |
| PopDensity | 2.375 | 0.205 * | −0.413 * | 0.803 *** |
| PGDP | 4.047 | −0.140 * | −0.152 | −0.126 |
| Income | 3.246 | 0.286 *** | −0.112 | 0.042 |
| Hospital | 1.416 | 0.141 ** | 0.160 | −0.136 |
| Hos-bed | 5.370 | −0.047 | −0.180 | 0.290 |
| Doctor | 3.364 | −0.019 | −0.034 | −0.008 |
| College | 6.281 | −0.001 | −0.277 | 0.541 ** |
| MidSchool | 9.418 | −0.060 | 0.281 | −0.581 |
| PriSchool | 7.165 | −0.056 | −0.070 | 0.235 |
| CollegeStu | 3.917 | 0.147 ** | −0.130 | −0.022 |
| MidSchoolStu | 2.398 | −0.084 | −0.218 | 0.179 |
| PriSchoolStu | 3.017 | 0.137 | 0.331 | −0.123 |
| Pig | 2.980 | −0.510 ** | 0.472 ** | |
| closeness b | 17.128 | |||
| SumRatio | 1.815 | 0.190 *** | −0.015 | −0.131 |
| McDistance | 7.084 | 0.326 *** | 0.158 | −0.277 ** |
|
| 0.423 | 0.462 | 0.454 | |
|
| 0.390 | 0.416 | 0.407 | |
| Log-likelihood | 388.970 | 121.302 | 122.541 | |
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a CumInc is the same as that in Table 1. b The closeness centrality was not included in the models as an explanatory variable because its VIF was larger than 10. c is the adjacent matrix A in the Materials and Methods Section. *, **, and *** The regression coefficients are significant at the 0.05 level, at the 0.01 level, and at the 0.001 level, respectively.