| Literature DB >> 32357874 |
Laura Forastiere1,2, Michele Carugno3, Michela Baccini4.
Abstract
BACKGROUND: The shape of the exposure-response curve describing the effects of air pollution on population health has crucial regulatory implications, and it is important in assessing causal impacts of hypothetical policies of air pollution reduction.Entities:
Keywords: Attributable deaths; Exposure-response function; Generalized propensity score; Health impact assessment; Potential outcomes; Short-term effects of air pollution
Year: 2020 PMID: 32357874 PMCID: PMC7193397 DOI: 10.1186/s12940-020-00599-6
Source DB: PubMed Journal: Environ Health ISSN: 1476-069X Impact factor: 5.984
Summary statistics for daily counts of deaths, PM10 concentrations and temperatures, Milan (2003-2006)
| Variable | Mean | Std. Dev. | Median | Min | 90 | Max |
|---|---|---|---|---|---|---|
| Natural Deaths | 28.0 | 7.0 | 28 | 9 | 37 | 69 |
| Cardiovascular Deaths | 10.3 | 3.9 | 10 | 0 | 15 | 27 |
| Respiratory Deaths | 2.5 | 1.7 | 2 | 0 | 5 | 11 |
| PM10 ( | 52.5 | 32.9 | 43.5 | 3.5 | 99.5 | 227.1 |
| Temperature (∘C) | 14.5 | 8.4 | 14.3 | -2.0 | 26.0 | 31.8 |
Results of the balancing check for the generalized propensity score (GPS)
| Covariate | Class of exposure | Marginal | GPS-adjusted |
|---|---|---|---|
| Temperature (lag 0-3) | (0, 20) | 5.60 | -2.57 |
| [20, 40) | 14.15 | 1.68 | |
| [40, 70) | -0.39 | -0.26 | |
| [70+) | -20.78 | -3.00 | |
| Influenza epidemics | (0, 20) | -2.80 | -0.44 |
| [20, 40) | -7.47 | -2.87 | |
| [40, 70) | 1.32 | 3.43 | |
| [70+) | 8.92 | 0.47 | |
| Summer indicator | (0, 20) | 7.93 | -2.19 |
| [20, 40) | 14.30 | 2.39 | |
| [40, 70) | -3.09 | -0.77 | |
| [70+) | -18.46 | -2.48 | |
| Holidays indicator | (0, 20) | 1.91 | -0.07 |
| [20, 40) | 0.02 | -0.05 | |
| [40, 70) | -2.74 | -2.81 | |
| [70+) | 1.97 | 2.58 | |
| Humidity (lag 0) | (0, 20) | -5.78 | -0.13 |
| [20, 40) | -5.91 | 1.05 | |
| [40, 70) | -0.15 | -2.78 | |
| [70+) | 10.69 | 1.78 | |
| Weekend indicator | (0, 20) | 4.92 | 2.27 |
| [20, 40) | 1.79 | -1.33 | |
| [40, 70) | -1.39 | -1.13 | |
| [70+) | -3.35 | 0.64 | |
| Heat episodes | (0, 20) | -2.25 | -0.96 |
| [20, 40) | 1.77 | -0.15 | |
| [40, 70) | 3.48 | 2.43 | |
| [70+) | -4.73 | -1.99 |
Marginal and GPS-adjusted t statistics for the mean difference between one class of exposure and the others as a whole, for a set of selected covariates
Fig. 1Average Dose-Response Function for natural mortality. Average dose-response function (90% pointwise confidence band) of the causal relationship between PM10 exposure at lag 0-1 and average daily mortality from natural causes
Fig. 2Average Dose-Response Function for respiratory mortality. Average Dose-Response Function (90% pointwise confidence band) of the causal relationship between PM10 exposure at lag 0-1 and average daily mortality from respiratory causes
Fig. 3Average Dose-Response Function for cardiovascular mortality. Average Dose-Response Function (90% pointwise confidence band) of the causal relationship between PM10 exposure at lag 0-1 and average daily mortality from cardiovascular causes
Fig. 4Average Dose-Response Function for natural mortality by temperature level. Scatterplot and average Dose-Response Functions (90% pointwise confidence bands) of the causal relationship between PM10 exposure at lag 0-1 and average daily mortality from natural causes, by level of temperature at lag 0-3: up to 10∘C (blue), 10/23∘C (green), over 23∘C (red)
Attributable deaths in Milan for natural, respiratory and cardiovascular causes from 2003 to 2006: estimates and 90% confidence intervals calculated according to different counterfactual scenarios of PM10 reduction
| Estimand | Natural Deaths | Respiratory Deaths | Cardiovascular Deaths | |||
|---|---|---|---|---|---|---|
| Estimate | 90% CI | Estimate | 90% CI | Estimate | 90% CI | |
| 2537 | (1273, 3655) | 577 | (226, 900) | 1000 | (464, 1488) | |
| 1157 | (689, 1645) | 312 | (210, 418) | 771 | (580, 961) | |
| 1857 | (1479, 2233) | 403 | (293, 504) | 1014 | (815, 1221) | |
| 1481 | (1212, 1735) | 325 | (251, 398) | 828 | (690, 960) | |
AD(20): deaths attributable to daily exposure levels above 20 μg/m3, setting the counterfactual exactly to 20 μg/m3.
AD(40): deaths attributable to daily exposure levels above 40 μg/m3, setting the counterfactual exactly to 40 μg/m3.
DAD(40): deaths attributable to daily exposure levels above 40 μg/m3, sampling the counterfactuals from the exposure distribution below 40 μg/m3.
DAD(50): deaths attributable to daily exposure levels above 50 μg/m3, sampling the counterfactuals from the exposure distribution below 50 μg/m3
Attributable deaths in Milan, Italy (2003-2006) calculated using different approaches
| Source | Natural Deaths | Respiratory Deaths | Cardiovascular Deaths | |||
|---|---|---|---|---|---|---|
| Estimate | 90% CI | Estimate | 90% CI | Estimate | 90% CI | |
| GPS- | 1157 | (689, 1645) | 312 | (210, 418) | 771 | (580, 961) |
| GPS- | 1857 | (1479, 2233) | 403 | (293, 504) | 1014 | (815, 1221) |
| 1079 | (116, 2042) | 305 | (17, 593) | 716 | (117, 1315) | |
| 358 | (156, 560) | |||||
GPS- AD(40): deaths attributable to daily exposure levels above 40 μg/m3, setting the counterfactual exactly to 40 μg/m3.
GPS- DAD(40)): deaths attributable to daily exposure levels above 40 μg/m3, sampling the counterfactuals from the exposure distribution below 40 μg/m3.
PS matching 40: from Baccini et al. [25], deaths attributable to daily exposure levels above 40 μg/m3, calculated according to a PS matching.
Regression 40: from Baccini et al. [37], deaths attributable to exceeding the limit of 40 μg/m3 for the annual average level of exposure, calculated from a regression approach