| Literature DB >> 26540499 |
Sungchul Seo1, Dohyeong Kim2, Soojin Min3, Christopher Paul4, Young Yoo1,5, Ji Tae Choung1,5.
Abstract
PURPOSE: The role of PM10 in the development of allergic diseases remains controversial among epidemiological studies, partly due to the inability to control for spatial variations in large-scale risk factors. This study aims to investigate spatial correspondence between the level of PM10 and allergic diseases at the sub-district level in Seoul, Korea, in order to evaluate whether the impact of PM10 is observable and spatially varies across the subdistricts.Entities:
Keywords: Atopic dermatitis; allergic rhinitis; asthma; particulate matter; spatial analysis
Year: 2015 PMID: 26540499 PMCID: PMC4695406 DOI: 10.4168/aair.2016.8.1.32
Source DB: PubMed Journal: Allergy Asthma Immunol Res ISSN: 2092-7355 Impact factor: 5.764
The Korean Standard Classification of Disease (KCD) codes used for defining three allergic diseases
| Disease codes | ||
|---|---|---|
| Atopic dermatitis | L20 | Atopic dermatitis |
| Asthma | J45 | Allergic asthma |
| J46 | Status asthmaticus with predominantly allergic asthma | |
| Allergic rhinitis | J30 | Allergic rhinitis |
Description of data used (number of patients per 10,000 residents)
| Atopic dermatitis | Asthma | Allergic rhinitis | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Male | Female | All | Male | Female | All | Male | Female | All | ||
| Gangbuk | Joong | 198 | 241 | 219 | 375 | 462 | 419 | 835 | 1,033 | 934 |
| Jongro | 180 | 211 | 196 | 368 | 439 | 404 | 965 | 1,093 | 1,029 | |
| Yongsan | 166 | 197 | 182 | 299 | 331 | 315 | 923 | 1,111 | 1,019 | |
| Gwangjin | 197 | 215 | 206 | 344 | 410 | 377 | 919 | 1,131 | 1,026 | |
| Seongdong | 184 | 210 | 197 | 321 | 378 | 349 | 983 | 1,231 | 1,107 | |
| Joonglang | 180 | 207 | 193 | 344 | 439 | 392 | 998 | 1,255 | 1,126 | |
| Dongdaemun | 184 | 209 | 197 | 348 | 442 | 395 | 1,006 | 1,258 | 1,131 | |
| Seongbuk | 209 | 230 | 220 | 401 | 451 | 426 | 1,061 | 1,245 | 1,154 | |
| Dobong | 188 | 200 | 194 | 403 | 485 | 444 | 875 | 1,026 | 951 | |
| Eunpyeong | 238 | 294 | 266 | 418 | 504 | 462 | 1,045 | 1,286 | 1,168 | |
| Seodaemun | 258 | 304 | 282 | 469 | 586 | 528 | 1,051 | 1,262 | 1,158 | |
| Mapo | 206 | 230 | 218 | 318 | 369 | 344 | 946 | 1,121 | 1,036 | |
| Gangbuk | 192 | 200 | 196 | 445 | 563 | 505 | 953 | 1,203 | 1,079 | |
| Nowon | 189 | 198 | 194 | 462 | 525 | 494 | 1,020 | 1,177 | 1,100 | |
| Gangnam | Gangseo | 178 | 194 | 186 | 386 | 469 | 428 | 986 | 1,176 | 1,082 |
| Guro | 195 | 209 | 202 | 352 | 428 | 390 | 966 | 1,177 | 1,071 | |
| Youngdeungpo | 190 | 226 | 208 | 391 | 461 | 426 | 891 | 1,096 | 993 | |
| Dongjak | 200 | 224 | 212 | 321 | 352 | 337 | 986 | 1,186 | 1,088 | |
| Gwanak | 179 | 199 | 189 | 266 | 306 | 286 | 1,034 | 1,332 | 1,181 | |
| Gangnam | 211 | 231 | 221 | 286 | 298 | 292 | 1,014 | 1,103 | 1,060 | |
| Seocho | 256 | 266 | 261 | 314 | 337 | 326 | 1,098 | 1,217 | 1,159 | |
| Songpa | 220 | 252 | 236 | 359 | 385 | 372 | 1,032 | 1,173 | 1,104 | |
| Gangdong | 225 | 243 | 234 | 314 | 375 | 345 | 1,098 | 1,346 | 1,222 | |
| Geumcheon | 144 | 165 | 154 | 361 | 458 | 409 | 642 | 840 | 739 | |
| Yangcheon | 196 | 216 | 206 | 366 | 420 | 393 | 1,070 | 1,239 | 1,155 | |
| City of Seoul (overall) | 201 | 224 | 213 | 361 | 423 | 392 | 993 | 1,188 | 1,092 | |
Descriptive statistics for variables used in our study (N=424)
| Variables | Mean (SD) | |
|---|---|---|
| PM10 pollution | PM10 observed at the district level (µg/m3) | 46.8 (3.1) |
| PM10 interpolated at the sub-district level (µg/m3) | 46.7 (0.9) | |
| Weather factors | Temperature (℃; annual average) | 12.3 (0.7) |
| Wind speed (m/sec; annual average) | 1.7 (0.3) | |
| Precipitation (cm; annual average) | 185 (15.3) | |
| Socioeconomic factors | Average land value (KRW/m2) | 3.7 million (2.6 million) |
| % households relying on welfare subsidy | 3.6 (2.9) | |
| % household heads with college education | 47.5 (11.1) | |
| Apartment rate (%) | 52.1 (30.6) | |
| Population density (person/km2) | 25,498 (13,728) | |
| Number of clinics and hospitals within the sub-district | 38.3 (53.2) |
Fig. 1Sub-district level patient counts with PM10 contour in Seoul (per 10,000). (A) atopic dermatitis, (B) asthma, (C) allergic rhinitis.
Results of ordinary least square regression model for each disease (N=424)
| Atopic dermatitis | Asthma | Allergic rhinitis | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Model 1 | Model 2 | Model 3 | Model 1 | Model 2 | Model 3 | Model 1 | Model 2 | Model 3 | ||
| PM10 pollution | PM10 observed at the district level (µg/m3) | 0.012‡ | -0.010† | 0.006 | ||||||
| PM10 interpolated at the sub-district level | 0.052‡ | 0.051‡ | -0.061‡ | -0.022 | 0.006 | 0.006 | ||||
| Weather factors | Temperature (annual average) | 0.002 | -0.015 | -0.036* | -0.043† | -0.019 | -0.011 | 0.010 | 0.011 | -0.009 |
| Wind speed (annual average) | -0.169‡ | -0.146‡ | -0.078* | 0.061 | 0.036 | 0.036 | -0.184‡ | -0.180‡ | -0.103† | |
| Precipitation (annual average) | -0.0006 | -0.0002 | 0.0002 | -0.0015 | -0.0021† | -0.0012 | 0.0008 | 0.0008 | 0.0013* | |
| Socioeconomic factors | Log of average land value (KRW/m3) | 0.016 | -0.044 | 0.002 | ||||||
| % households relying on welfare subsidy | -0.025‡ | -0.006 | -0.016‡ | |||||||
| % household heads with college education | -0.002 | -0.005‡ | -0.001 | |||||||
| Apartment rate (%) | 0.002‡ | 0.002‡ | 0.002‡ | |||||||
| Population density (person/m2) | -1.168 | 0.967 | -0.594 | |||||||
| Log of number of clinics and hospitals within the sub-district | 0.024* | 0.004 | 0.023 | |||||||
| Model fit | Constant | 5.18‡ | 3.42‡ | 3.30‡ | 7.14‡ | 9.36‡ | 8.05‡ | 6.70‡ | 6.68‡ | 6.56‡ |
| Adjusted R square | 0.05 | 0.06 | 0.21 | 0.02 | 0.04 | 0.11 | 0.04 | 0.04 | 0.17 | |
*P<0.1; †P<0.05; ‡P<0.01.
Results of geographically weighted regression (GWR) of inpatient or outpatient visits for each allergic disease (N=424)
| Atopic dermatitis | Asthma | Allergic rhinitis | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| GWR coefficient | % of sub-districts by significance of | GWR coefficient | % of sub-districts by significance of | GWR coefficient | % of sub-districts by significance of | |||||||
| Lower quartile | Upper quartile | Lower quartile | Upper quartile | Lower quartile | Upper quartile | |||||||
| PM10 interpolated at the sub-district level | 0.040 | 0.157 | 0% | 39.4% | -0.122 | 0.023 | 35.6% | 10.4% | -0.026 | 0.013 | 0% | 0% |
| Temperature (annual average) | -0.055 | -0.010 | 34.2% | 0 | -0.028 | 0.047 | 8.3% | 7.1% | -0.027 | 0.027 | 20.3% | 11.5% |
| Wind speed (annual average) | -0.481 | -0.008 | 17.9% | 0% | -0.319 | 0.542 | 17.2% | 23.3% | -0.529 | -0.028 | 58.7% | 0% |
| Precipitation (annual average) | -0.048 | 0.001 | 9.7% | 1.7% | -0.045 | 0.028 | 23.3% | 8.5% | 0.0006 | 0.0041 | 0 | 29.5% |
| Log of average land value (KRW/ m3) | -0.027 | 0.037 | 14.4% | 1.6% | -0.017 | 0.032 | 0% | 0% | -0.016 | 0.022 | 3.10% | 0% |
| % HH relying on welfare subsidy | -0.099 | -0.047 | 71.0% | 0% | -0.053 | -0.016 | 25.9% | 0% | -0.058 | -0.040 | 89.2% | 0% |
| % HH heads with college education | -0.071 | 0.018 | 19.3% | 1.7% | -0.102 | -0.006 | 26.4% | 0.01% | -0.016 | 0.018 | 2.10% | 4.5% |
| Apartment rate (%) | 0.040 | 0.092 | 0% | 63.4% | 0.069 | 0.101 | 0% | 83.0% | 0.071 | 0.085 | 0% | 100% |
| Population density (person/m2) | -0.029 | 0.007 | 6.6% | 0% | 0.001 | 0.032 | 3.3% | 8.5% | -0.019 | -0.004 | 0% | 0% |
| Log of number of clinics and hospitals within sub-district | 0.004 | 0.029 | 0 | 14.2% | -0.032 | 0.011 | 0.01% | 0 | -0.002 | 0.030 | 0% | 21.2% |
| Constant | 5.294 | 5.389 | 0% | 100% | 5.938 | 6.011 | 0% | 100% | 6.898 | 6.926 | 0% | 94.3% |
| Adjusted R square | 0.41 | 0.32 | 0.24 | |||||||||
Fig. 2Map of the residuals of GWR model for atopic dermatitis by sub-districts in Seoul.
Fig. 3Map of t-statistics for the PM10 coefficient in the atopic dermatitis model by sub-district in Seoul.
Comparison of OLS results for the atopic dermatitis model between Gangnam and Gangbuk regions in Seoul
| Gangnam region (N=84) | Gangbuk region (N=223) | |
|---|---|---|
| PM10 interpolated at the sub-district level | N.S. | 0.149† |
| Temperature (annual average) | N.S. | -0.133† |
| Wind speed (annual average) | N.S. | N.S. |
| Precipitation (annual average) | N.S. | N.S. |
| Log of average land value (KRW/m3) | N.S. | -0.125† |
| % households relying on welfare subsidy | -0.034† | -0.027† |
| % household heads with college education | N.S. | -0.009† |
| Apartment rate (%) | N.S. | 0.003† |
| Population density (person/m2) | -3.404† | N.S. |
| Log of number of clinics and hospitals within sub-district | N.S. | N.S. |
| Constant | N.S. | 2.002* |
| Adjusted R square | 0.34 | 0.30 |
*P<0.1; †P<0.01.
N.S., Not significant.