| Literature DB >> 28738805 |
Man Sing Wong1, Hung Chak Ho2, Lin Yang3, Wenzhong Shi1, Jinxin Yang1, Ta-Chien Chan4.
Abstract
BACKGROUND: Dust events have long been recognized to be associated with a higher mortality risk. However, no study has investigated how prolonged dust events affect the spatial variability of mortality across districts in a downwind city.Entities:
Keywords: Community vulnerability; Dust mortality; Extreme weather event; Geospatial modelling; Spatial analytics; Spatial variability
Mesh:
Substances:
Year: 2017 PMID: 28738805 PMCID: PMC5525373 DOI: 10.1186/s12942-017-0099-3
Source DB: PubMed Journal: Int J Health Geogr ISSN: 1476-072X Impact factor: 3.918
Fig. 1Average sky view factor of each TPU in Hong Kong
Fig. 2Average vegetation cover of each TPU in Hong Kong
Fig. 3Average land surface temperature of each TPU in Hong Kong
Fig. 4Percentage of low-education population (primary school graduate or below) of each TPU in Hong Kong
Fig. 5Percentage of low-income population (monthly income lower than HKD $10,000) of each TPU in Hong Kong
Fig. 6Percentage of elderly (age ≥65) of each TPU in Hong Kong
Fig. 7Flow diagram of the model development and risk estimation
Influences of community factors on excess mortality
| Variables | Predicted total mortality | ||
|---|---|---|---|
| Change in number of deaths on days with prolonged dust events (95% confidence intervals) | Baseline: number of deaths on days without prolonged dust events (95% confidence intervals) | Excess mortality (%) | |
| SVF (in 10%) | −2.0 [−2.6, −1.3]* | −1.9 [−2.5, −1.3]* | −5.3 |
| % vegetation (in 10%) | 0.0 [−0.4, 0.4] | 0.0 [−0.3, 0.4] | 0 |
| LST (in 1 °C) | −0.1 [−0.6, 0.4] | −0.1 [−0.5, 0.3] | 0 |
| % low education (in 10%) | 1.7 [0.8, 2.5]* | 1.6 [0.9, 2.3]* | 6.3 |
| % low income (in 10%) | 0.9 [0.2, 1.6]* | 0.8 [0.2, 1.4]* | 12.5 |
| % elderly (in 10%) | −2.4 [−3.6, −1.1]* | −2.2 [−3.2, −1.1]* | −9.1 |
* Are the results with significant p values (<0.05)
Comparison of spatial and non-spatial models for predicting total mortality during days with prolonged dust events
| Variables | Multivariate linear: predicted mortality on dusty days (95% confidence intervals) | Spatial error (lag 1): predicted mortality on dusty days (95% confidence intervals) | Spatial error (lag 2): predicted mortality on dusty days (95% confidence intervals) | Spatial error (lag 3): predicted mortality on dusty days (95% confidence intervals) |
|---|---|---|---|---|
| SVF (in 10%) | −1.8 [−2.2, −1.4]* | −2.0 [−2.5, −1.5]* | −2.0 [−2.5, −1.6]* | −1.8 [−2.2, −1.4]* |
| % low education (in 10%) | 1.6 [0.8, 2.4]* | 1.6 [0.7, 2.5]* | 1.5 [0.7, 2.4]* | 1.5 [0.7, 2.4]* |
| % low income (in 10%) | 0.9 [0.2, 1.6]* | 0.7 [0.0, 1.4] | 0.8 [0.1, 1.5]* | 0.9 [0.2, 1.6]* |
| % elderly (in 10%) | −2.3 [−3.5, −1.1]* | −2.1 [−0.8, −3.4]* | −2.1 [−3.3, −0.9]* | −2.2 [−3.4, −1.0]* |
| Lambda | N/A | 0.3 [0.1, 0.4]* | 0.4 [0.1, 0.6]* | 0.1 [−0.2, 0.4] |
| AIC | 1689.6 | 1679.97 | 1682.95 | 1689.03 |
* Are the results with significant p values (<0.05)
Comparison of spatial and non-spatial models for predicting total mortality during days without prolonged dust events
| Variables | Multivariate linear: predicted mortality on non-dusty days (95% confidence intervals) | Spatial error (lag 1): predicted mortality on non-dusty days (95% confidence intervals) | Spatial error (lag 2): predicted mortality on non-dusty days (95% confidence intervals) | Spatial error (lag 3): predicted mortality on non-dusty days (95% confidence intervals) |
|---|---|---|---|---|
| SVF (in 10%) | −1.7 [−2.1, −1.4]* | −1.9 [−2.3, −1.5]* | −2.0 [−2.4, −1.6]* | −1.8 [−2.1, −1.4]* |
| % low education (in 10%) | 1.5 [0.8, 2.2]* | 1.5 [0.7, 2.2]* | 1.4 [0.7, 2.2]* | 1.4 [0.7, 2.1]* |
| % low income (in 10%) | 0.8 [0.2, 1.4]* | 0.6 [0.0, 1.2] | 0.7 [0.1, 0.3]* | 0.8 [0.2, 1.4]* |
| % elderly (in 10%) | −2.1 [−3.1, −1.1]* | −1.8 [−2.9, −0.7]* | −1.9 [−2.9, −0.9]* | −1.9 [−3.0, −0.9]* |
| Lambda | N/A | 0.3 [0.2, 0.5]* | 0.4 [0.2, 0.6]* | 0.2 [−0.1, 0.5] |
| AIC | 1612.48 | 1582.04 | 1585.25 | 1610.28 |
* Are the results with significant p values (<0.05)
Influences on excess mortality based on the best spatial regression models
| Variables | Spatial error (lag 1): predicted total mortality on dusty day (95% confidence intervals) | Spatial error (lag 1): predicted total mortality on non-dusty day (95% confidence intervals) | Excess mortality (%) |
|---|---|---|---|
| SVF (in 10%) | −2.0 [−2.5, −1.5]* | −1.9 [−2.3, −1.5]* | −5.3 |
| % low education (in 10%) | 1.6 [0.7, 2.5]* | 1.5 [0.7, 2.2]* | 6.7 |
| % low income (in 10%) | 0.7 [0.0, 1.4] | 0.6 [0.0, 1.2] | 16.7 |
| % elderly (in 10%) | −2.1 [−3.4, −0.8]* | −1.8 [−2.9, −0.7]* | −16.7 |
* Are the results with significant p values (<0.05)
Fig. 8Mortality risk of each TPU during prolonged dust events in Hong Kong. Blue circles are the areas with a high-density environment and high socioeconomic deprivation (Tuen Mun, Sham Shui Po, Wong Tai Sin and Kwun Tong)