HEALTH CO-BENEFITS AND TRANSPORTATION-RELATED REDUCTIONS IN GREENHOUSE GAS EMISSIONS IN THE SAN FRANCISCO BAY AREA 1 Sean Co Transportation planner Metropolitan.

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Presentation transcript:

HEALTH CO-BENEFITS AND TRANSPORTATION-RELATED REDUCTIONS IN GREENHOUSE GAS EMISSIONS IN THE SAN FRANCISCO BAY AREA 1 Sean Co Transportation planner Metropolitan transportation commission Neil Maizlish, PhD, MPH, Epidemiologist California Department of Public Health Office of Health Equity

Public Health Crisis 83 percent of men will be overweight or obese by Women are right behind them, with 72 percent projected to be overweight or obese by then Reductions in smoking, high cholesterol and high blood pressure since 1988 have been offset by weight gain, diabetes, and pre-diabetes. Number of minutes of driving and obesity closely linked The observed obesity lags VMT increases by 6 years Jacobson, S.H., et al., A note on the relationship between obesity and driving. Transport Policy (2011)

2000 Obesity Trends Among U.S. Adults BRFSS, 1990, 2000, 2010 (*BMI 30, or about 30 lbs. overweight for 5’4” person) No Data <10% 10%–14% 15%–19% 20%–24% 25%–29% ≥30% CA 24%

Attributable Fraction of Disease Burden Due to... 9 What percentage of this disease burden is related to individual risk factors like smoking, alcohol, diet, physical inactivity, violence, etc.? Source: Mokad et al. Actual Causes of Death in the United States, JAMA. 2004;291: Causes of Death, U.S., 2000 Number PAF, % Tobacco 435, Poor diet and physical inactivity 400, Alcohol consumption 85, Microbial agents 75, Toxic agents 55, Motor vehicle 43, Firearms 29, Sexual behavior 20, Illicit drug use 17, Other environmental causes 109, Total of known risk factors 1,159,

Climate Change and Public Health Climate change no. 1 public health threat in 21 st Century California 12 th largest greenhouse gas emitter in world Transportation is the largest source of GHGs in California – 38% of total (179 MMT CO 2 E in 2003) Personal passenger vehicles account for 30% (79% of 38%) How can we reduce GHG emissions in transportation? Increase efficiency of vehicles and fuels Reduce vehicle miles traveled (less trips, mode switching (SOV to mass transport), walking/bicycling (active transport) 10

Smart Strategies Solve Multiple Problems Strategies to reduce GHG emissions impact health Do the strategies generate health co-benefits? Chronic Disease/ GHGsObesity Epidemic Do the strategies generate harms? What strategies yield significant health co-benefits? How do we measure this? 11

Groundbreaking Health Co-Benefits Research 2009 London Study: estimated the health impacts of alternative strategies for reducing carbon dioxide emissions from transport. Lower carbon driving Lower carbon emission motor vehicles/fuels Increased active travel Replacing urban car and motorcycle trips with walking or bicycling Shift from 10 to 30 minutes/day of walking and bicycling:  19% Cardiovascular Disease  15% Diabetes  13% Breast Cancer =  8% Dementia  38% CO 2 Emissions 12 __________________ * Woodcock J, Edwards P, Tonne C, Armstrong BG, Ashiru O, Banister D, et al. Public health benefits of strategies to reduce greenhouse-gas emissions: urban land transport. The Lancet 2009;374:

Can the London Active Transport Model Be Adapted for Regional Transportation Plans in California? California Department of Public Health Partner with MTC (regional MPO) and BAAQMD to apply the London model (aka ITHIM) to the Bay Area Test the feasibility Develop a tool kit and technical resources to assist other MPOs apply the model to their geographic area 13 Dr. James Woodcock Dr. Bart Ostro

The Model Integrates Bay Area Data on Health and Travel ITHIM Health Survey Vehicle Emissions Model Air Shed Model U.S. Census Scenarios Scenario vs. BAU Health Statistics Traffic Collisions Travel Demand Model Travel Survey 14  Premature Deaths  Years of Life Lost  Years Living with Disability Physical Activity Traffic Injuries Air Pollution

Active Transport and Low Carbon Driving Scenarios 1. Bay Area Benchmarks Scenario: All Bay Area cities achieve by 2035 the walking and biking levels of the 2009 Bay Area leaders (SF, Oakland, Palo Alto, Berkeley, Mtn. View, Rohnert Park, Morgan Hill) 2. Replace short car trips with active transport Scenario: 1/2 of trips <1.5 miles walked and 1/2 of trips 1.5 to 5 miles bicycled 3. Attaining Carbon and Physical Activity Goals Back cast the amount of active transport time and distance to reduce car VMT and increase active transport to optimum levels (no more than average commute time to work ~25 minutes); land use and infrastructure exit to support changes 4. Low Carbon Driving Fuel efficiency increases, low carbon fuels and low/no emissions cars and light trucks become more widespread, but there are no changes in physical activity or driving patterns 15

Key Indicators for Transport Scenarios for a Typical Bay Area Resident 16 BAU = Business-as-Usual VMT %  0%(33.5%) 3.9% 6.8% 14.7%

Comparative Risk Assessment 17

Health Impacts of Active Transport Scenarios 18 Change in disease burden Change in premature deaths Cardiovascular Dis.6-15% * Diabetes 6-15% Depression 2-6%<2 Dementia 3-10% Breast cancer 2-5%15-48 Colon Cancer 2-6%17-53 Road traffic crashes 10-19% * Range reflects range of physical activity in scenarios

(Scenario 3: Active transport Scenario 4 15% of miles traveled) Source of Health Benefit or Harm Annual Health Benefits of Active Transport and Low Carbon Driving in the Bay Area: Predictions from the ITHIM Model 19

Summary & Conclusion A shift in active transport from 4.5 to 22 minutes/day: Major reductions in chronic disease Major public health impact $ billion annual Bay Area health cost savings Adds about 9.5 months of life expectancy Injuries to pedestrians and bicyclists significant concern 15% reductions in CO 2 emissions Low carbon driving is not as important as physical activity for generating health co-benefits  Together, low carbon driving and active transport can achieve California’s carbon reduction goals and optimize the health of the population + = 20

Acknowledgments The Team Linda Rudolph, formerly CDPH (conceived the project), Sacramento Neil Maizlish, CDPH, Richmond James Woodcock, UKCRC Centre for Diet and Activity Research (CEDAR), UK Sean Co, Metropolitan Transportation Commission, Oakland Bart Ostro, Centre for Research in Environmental Epidemiology (CREAL), Spain Amir Fanai and David Fairley, Bay Area Air Quality Management District, San Francisco Other Contributors Caroline Rodier, Urban Land Use & Transportation Program, UC Davis Dr. Phil Edwards and Dr. Zaid Chalabi, London School of Hygiene and Tropical Medicine Colin Mathers, World Health Organization, Geneva Other staff from MTC, UCD, CDPH, Mike Zdeb (University at Albany, NY) Partial funding and grant support The California Endowment, Oakland Kaiser Permanente – Northern California Community Benefits Programs, Oakland Public Health Law and Policy, Oakland, CA Public Health Institute, Oakland 21

Contact Information 22 Sean Co Neil Maizlish Report available at: American Journal of Public Health N Maizlish – 10/24/11