Title: Pregnancy, Health and AIR Pollution PHAIR Exposure Study
1Pregnancy, Health and AIR Pollution (PHAIR)
Exposure Study
- Air Pollution Model Evaluation Study
Elizabeth NetheryJune 26, 2006
2Today
- PHAIR Study
- Methods
- Sampling Campaign Current Status
- Results
- LUR to measured
- Seasonal adjustments
- Postal Code to Address Geocoding
- Combined HomeWork
- Gas Stoves
- Activity Data Comparison to CHAPS
3Sampling
- 62 women, 3 excluded or left study
- 59 women for analysis (to date).
- 117 sampling sessions completed
Subject Demographics
- Mean age 32 yrs
- 11 women will complete 3 samples 48, 2 samples
- 19 with at least 1 other child 39 no children
- 22 Rent/other 37 Own (housing status)
- 38 (64) working FT 16 (28) working PT 5 (9)
Not working - Mean home (building) age 49 years.
4Results - June 2006
- 107 Ogawa Samples analyzed
- Equipment delays with Absorbance (47 samples) and
PM sample analysis (85 samples) - 110 Activity logs
- 83 GPS routes of moderate-high quality.
5Data
- Measured personal exposure (NO/NOx/NO2,
Absorbance, PM2.1) - Modelled (LUR) exposure at home and work
- Measured mobility data (GPS)
- Measured Activity data (time-activity diaries)
- Measured building information, personal
characteristics/demographics - Comparison 1 Measured vs. Modelled Home
- Comparison 2 Measured vs. HomeWork (times from
4.) - Comparison 3 Measured vs. Modeled estimates
using GPS route (to be completed)
6Continuous Correlations between Home
Predicted(seasonally adjusted) (LUR) and Personal
Measurements
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7Route Data - Sample
- Red is Work Location Green is Home
- first analysis with just HOME location
- second analysis with Home Work using
- time spent Indoors_home and Indoors_work
8Continuous Correlations between WorkHome
COMBINEDEstimate (LUR) and Personal Measurements
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NB. Insensitive to presence of Gas Stove mean
cooking time2 hours (4.5 total time)
9Stratified by GAS STOVE Presence Continuous
Correlations between COMBINEDEstimate (LUR) and
Personal Measurements
pgt.01
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12Postal Code vs. Address Geocoding
- Traffic data for (Home and work locations)
- Extracted using Geocoded addresses
- OR
- Extracted using Postal Code locations
13Postal Code to Address Geocoding
14Activity Results Summary Stats
- Mean age 32.4 (range 23-40)
- N110 (Activity Logs)
15Activity Logs Compare to CHAPS
16Conclusions to date..
- Important to include seasonal effect
- LUR predicted (home) and measured personal sample
for NO and NOx show some trend Means increase
across quartiles and group differences are
significant. - Improvement in the trend (for NO2) when including
work and time-spent at work - Postal code and address geocoding are highly
correlated little change on overall results
using either - Some outliers include those with high time in
traffic, or cooking (preliminary)
17Future plans..
- Use GPS data to estimate exact traffic exposure
from walking over LUR - More analysis with other methods (mixed models)
- Compare personal measurements to GVRD Monitoring
data (use methods similar to BAQS cohort
approach).
18Thank-youComments/Questions?
Acknowledgements Micheal Smith Foundation for
Health Research BAQS Group Sara Leckie, Katherine
Woolbert and all participants! Dr. Brauer, SOEH
19Subject Demographics
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