| Literature DB >> 32713351 |
Leon S Robertson1, Lian Zhou2, Kai Chen3.
Abstract
BACKGROUND: The correlation of unintentional injury mortality to rising temperatures found in several studies could result from changes in behavior that increases exposure to hazards or risk when exposed. Temperature, precipitation and air pollutants may contribute to symptoms and distractions that increase risk or avoidance behavior that reduces risk. This study examines data that allows estimates of the relation of daily maximum temperature, precipitation and ozone pollution to injury mortality risk, each corrected statistically for the correlation with the others.Entities:
Keywords: Air pollution; Avoidance behavior; Temperature; Unintentional injury mortality
Year: 2020 PMID: 32713351 PMCID: PMC7384214 DOI: 10.1186/s40621-020-00268-9
Source DB: PubMed Journal: Inj Epidemiol ISSN: 2197-1714
Annual Transport and Other Fatal Unintentional Injuries Per Million Inhabitants Among Cities in Jiangsu Province, China, 2015–2017
| Transport | Other Injury | Total | |||||||
|---|---|---|---|---|---|---|---|---|---|
| 2015 | 2016 | 2017 | 2015 | 2016 | 2017 | 2015 | 2016 | 2017 | |
| Nanjing | 81 | 79 | 80 | 120 | 147 | 138 | 202 | 226 | 218 |
| Wuxi | 115 | 115 | 112 | 273 | 315 | 314 | 387 | 430 | 426 |
| Xuzhou | 228 | 224 | 221 | 183 | 197 | 231 | 411 | 421 | 452 |
| Changzhou | 150 | 168 | 170 | 246 | 295 | 301 | 395 | 463 | 471 |
| Nantong | 187 | 214 | 232 | 274 | 365 | 380 | 461 | 579 | 612 |
| Lianyungang | 212 | 212 | 227 | 295 | 320 | 338 | 507 | 532 | 565 |
| Huaian | 210 | 196 | 189 | 218 | 241 | 244 | 428 | 437 | 433 |
| Yancheng | 206 | 218 | 261 | 199 | 289 | 282 | 404 | 508 | 543 |
| Suqian | 162 | 179 | 183 | 137 | 151 | 180 | 299 | 330 | 364 |
Totals may not add exactly because of rounding
Means and Standard Deviations of Transformed Predictor Variables
| Temperature (°C) | Precipitation (mm) | Ozone (μg/m3) | |
|---|---|---|---|
| Mean (SD) | Mean (SD) | Mean (SD) | |
| Nanjing | 21.2 (9.1) | 1.3 (2.7) | 4.6 (0.4) |
| Wuxi | 21.5 (9.1) | 0.4 (2.6) | 4.6 (0.5) |
| Xuzhou | 20.5 (9.6) | 0.9 (1.9) | 4.5 (0.4) |
| Changzhou | 21.4 (9.2) | 1.5 (2.6) | 4.5 (0.5) |
| Nantong | 20.9 (8.9) | 1.4 (2.6) | 4.5 (0.5) |
| Lianyungang | 19.6 (9.4) | 0.8 (1.9) | 4.6 (0.4) |
| Huaian | 20.3 (9.2) | 1.1 (2.2) | 4.6 (0.4) |
| Yancheng | 20.0 (9.1) | 1.2 (2.4) | 4.6 (0.4) |
| Suqian | 20.4 (9.3) | 0.9 (2.1) | 4.6 (0.3) |
Fig. 1Maximum Daily Temperature (C) and Transport Deaths Per Billion Person Days of Exposure, Jiangsu Province, China, 2015–2017
Fig. 2Maximum Daily Temperature (C) and Unintentional Injury Deaths Other Than Transport Per Billion Person Days of Exposure, Jiangsu Province, China, 2015–2017
Poisson Regression Coefficients beta and 95 Percent Confidence Intervals (CI): Unintentional Injury Fatalities Per Day
| Transport Deaths | ||||||
| Temperature | Cool (< 25 °C) | Moderate (25–34 °C) | Hot (> 34 °C) | |||
| Beta | 95% CI | beta | 95% CI | beta | 95% CI | |
| Temperature | −. 0077 | (.0050, .0104) | −. 0074 | (−.0145,−.0003) | −. 0796 | (−.1202, −.0334) |
| √Precipitation | −.0189 | (−.0260, −.0118) | −.0129 | (−0.0209, −.0049) | −.0031 | (−.0365, .0303) |
| Log (ozone) | −.1263 | (−.1681, −.0845) | 0.0563 | (.0000, .1126) | −.1995 | (−.0061, −.3929) |
| Weekend | −.0531 | (−.0862, −.0120) | −.0534 | (−.0959,−.0109) | −.1793 | (−.3019, −.0567) |
| Holiday | −.0863 | (−.1441, −.0285) | .0765 | (.0094, .1435) | −.3979 | (−.7640, −.0318) |
| Nanjing | −.8241 | (−.8827, −.7655) | −.9118 | (.9898, −.8338) | −.7803 | (−.9695, −.5911) |
| Intercept | −13.9409 | −14.4360 | −12.6328 | |||
| Deviance/df | 1.35 | 1.37 | 1.39 | |||
| Other Unintentional Injury Deaths | ||||||
| Temperature | Cool (< 25 °C) | Moderate (25–34 °C) | Hot (> 34 °C) | |||
| beta | 95% CI | beta | 95% CI | beta | 95% CI | |
| Temperature | −.0045 | (−.0068, −.0021) | .0314 | (.0251, .0377) | .2277 | (.2037, .2517) |
| √Precipitation | −.0170 | (−.0233, −.0107) | .0095 | (.0026, .0164) | .0101 | (−.0313, .0111) |
| Log (ozone) | −.1586 | (−.1945, −.1227) | .0248 | (−.0248, .0744) | .1788 | (.0536, .3040) |
| Weekend | −.0051 | (−.0337, .0235) | −.0146 | (−.0524, .0232) | −.0325 | (−.1034, .0384) |
| Holiday | −.0269 | (−.0211, −.0749) | .0208 | (−.0415, .0831) | .2220 | (−.4780, .0380) |
| Nanjing | −.6288 | (−.6758, −.5817) | −.6376 | (−.6996, −.5756) | −.6667 | (−.7728, −.5606) |
| Intercept | −13.3868 | − 15.2458 | −22.6963 | |||
| Deviance/df | 1.35 | 1.40 | 3.18 | |||
The criteria for goodness of fit are near 1 indicating good fit of the models
Squared OLS Correlation Coefficients Among Transformed Daily Weather and Pollution Predictor Variables At Cool, Moderate and Hot Temperatures, Jiangsu Province, China. 2015–2017
| Cool | Moderate | Hot | ||||
|---|---|---|---|---|---|---|
| Precipitation | Ozone | Precipitation | Ozone | Precipitation | Ozone | |
| Temperature | 0.04 | 0.21 | < 0.01 | 0.01 | < 0.01 | 0.04 |
| Precipitation | < 0.0 | 0.11 | 0.02 |