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Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT EIP, NYC DOHMH

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Page 1: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Use of Area-based Poverty as a Demographic Variable for Routine

Surveillance Data AnalysisCT and NYC

CSTE Annual Conference

June 10, 2013

J Hadler

CT EIP, NYC DOHMH

Page 2: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Outline

Rationale

Public Health Disparities Geocoding Project (PHDGP)• Recommended standard Area-based SES measure

Connecticut EIP• Influenza hospitalizations, bacterial foodborne

pathogens, HPV

New York City• Workgroup formation and recommendations• All cause mortality, TB

Conclusions

Page 3: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Rationale 1

• Describing health disparities and monitoring progress in reducing them has been a national priority (HP 2010 and 2020).

• Major variable used to describe health disparities has been race-ethnicity.

• Use of race/ethnicity as a major means to describe disparities has some severe limitations– not always available– >20 official race/ethnic groups– difficult to interpret – disparities are only sometimes genetic or

cultural; mostly race-ethnic disparities reflect SES differences

Page 4: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Rationale for use of area-based SES (ABSES) measure for data analysis

• US has no recommended SES measure for routine collection, analysis and display of surveillance data – race-ethnicity is a very unsatisfying surrogate.

• Geocoding accessibility and ease have made it possible to use area-based SES measures where have street address or ZIP code.

• PHDGP already laid groundwork

Page 5: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Public Health Disparities Geocoding Project 1

• Harvard-based lead by Nancy Krieger, ~1998 - 2004

• Recognized potential in public health data for analysis using ABSES

• Explored wide range of health outcomes using MA and RI data from 1990 using different area sizes and SES indices

• Found ABSES measures described disparities as big or bigger than those by race/ethnicity and usually described disparities within race/ethnic groups.

Page 6: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Public Health Disparities Geocoding Project 2

• Recommended use of census tract level percentage of residents living below federal poverty level for routine data analysis. – <5%, 5-9.9%, 10-19.9%, >20%

• “Painting a truer picture of US socioeconomic and racial/ethnic health inequalities: The PHDGProject”. Am J Public Health 2005; 95: 312-323.

• http://www.hsph.harvard.edu/thegeocodingproject/

Page 7: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Connecticut

Objectives• Gain experience using census tract poverty

level to describe health disparities• Began to analyze surveillance data routinely

as part of the EIP in ~2009. – Invasive pneumococcal disease*– Influenza hospitalizations (pediatric*, adult**)– Cervical cancer precursors (CIN 2,3; AIS)*– Foodborne bacterial pathogens (campylobacter**,

STEC, salmonella)

* published; ** submitted

Page 8: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Incidence of influenza-associated hospitalizations by census tract poverty

level, Children 0-17 years, NH County, CT, 2003/04 -2009/10

0

10

20

30

40

50

60

70

80

Inci

den

ce p

er 1

00,0

00

per

son-

yea

rs

Census tract poverty level

<5% 5-9.9% 10-19.9% 20+%

AJPH 2011;101:1785

Page 9: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Ratio of highest to lowest census tract-level poverty incidence of influenza-associated

hospitalizations by year, Children 0-17 yrs, CT, 2003/04 – 2009/10

0

1

2

3

4

5

6

7

8

9

2003 2004 2005 2006 2007 2008 2009

Inci

den

ce r

atio

H1N1

AJPH 2011;101:1785

Page 10: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Age-adjusted incidence of influenza-associated hospitalizations of adults 18+ yrs

by selected ABSES measures, NH County, CT, 2005-2011

0

20

40

60

80

100

Poverty Crowding No highschool

diploma

No Englishin

household

Medianincome

Highest SES Less high Lower Lowest SES

Inci

den

ce p

er 1

00,0

00

per

son-

yea

rs

Page 11: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Ratio of highest to lowest census tract-level poverty incidence of influenza-associated

hospitalizations by year, Adults 18+ yrs, CT, 2005-2011

0

0.5

1

1.5

2

2.5

3

3.5

4

4.5

2005 2006 2007 2008 2009 2010

Inci

den

ce r

atio

H1N1

Page 12: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Age-adjusted incidence of influenza-associated hospitalizations of adults 18+ yrs

by poverty level* and race/ethnicity, NH County, CT, 2005-2011

0

20

40

60

80

100

White Black Hispanic

<5% 5-9% 10-19% 20+%

Inci

den

ce p

er 1

00,0

00

per

son-

yea

rs

non-Hispanic non-Hispanic

Page 13: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Incidence of Cervical Intraepithelial Neoplasia Grade 2+

by census tract poverty level, Women 20-39 years, NH County, CT, 2008-2009

0

100

200

300

400

500

600

Inci

den

ce p

er 1

00,0

00

per

son-

yea

rs

Census tract poverty level

<5% 5-9.9% 10-19.9% 20+%

AJPH 2012;103:156

Page 14: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Incidence of CIN2+ by census tract poverty and age group, Women 20-39 years, NH

County, CT, 2008-2009

0

200

400

600

800

1000

20-24 yrs 25-29 yrs 30-39 yrs

<5% 5-9% 10-19% 20+%

Inci

den

ce p

er 1

00,0

00

per

son-

yea

rs

AJPH 2012;103:156

Page 15: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Foodborne bacterial pathogen age-adjusted incidence by census tract poverty level and

pathogen, CT, 1999-2011

0

5

10

15

20

<5% 5-9.9% 10-19.9% 20+%

Inci

den

ce p

er 1

00,0

00

per

son-

yea

rs

Campylobacter Salmonella STEC

Page 16: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Foodborne bacterial pathogen risk in children by census tract poverty level, CT,

1999-2011

0

10

20

30

40

50

Campy 0-9 yrs Salmonella 0-4 years STEC 0-4 yrs

<5% 5-9.9% 10-19.9% 20+%

Inci

den

ce p

er 1

00,0

00

per

son-

yea

rs

Age Group

Page 17: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Implications of identified SES disparities

• Influenza – target efforts to improve vaccination rates to neighborhoods with high rates of neighborhood poverty

• HPV vaccination – needed for all, not just a subset of the population. Very high rates of cervical cancer precursors in neighborhoods with low poverty levels.

• Bacterial foodborne pathogens – Focus prevention and prevention research efforts on high SES populations. – More research needed to understand risk factors in children –

why children in high poverty neighborhoods have higher risk of campy/salmonella but not STEC.

Page 18: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

New York City

Page 19: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Background 2010

• NYC has had long-standing emphasis on describing and minimizing health disparities.

• Most programs used race/ethnicity; some programs used SES measures: income, neighborhood poverty

• No standardization of measures, neighborhood size, cut-points

Page 20: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Background (cont)

• Has cross-cutting “Data Task Force” as forum for discussion of data issues agency-wide

• Following presentation of PHDGP recommendations for standard area-based SES measure, workgroup set up to explore NYC-specific issues and make recommendations.

Page 21: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Challenges for a NYC standard

• Population distribution not the same as MA and RI

• “Neighborhoods” used have been UHF areas, not census tracts

• With higher cost of living than most of rest of US, is federal poverty level the best level to use?

Page 22: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Poverty Measure Workgroup 1

• Poverty measure workgroup formed to explore these issues and develop recommendations re: a standard neighborhood SES measure.

• Composed of volunteers from Communicable disease, Epi Services, HIV, Immunizations, STD, TB, Vital Statistics

Page 23: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Poverty Measure Workgroup 2

• Agreed early on to the following:– Important to have a standard measure that can be

used and compared to other public health jurisdictions (cities, states)

– Accept the background work of the PHDGP and use a neighborhood poverty measure

– May need different neighborhood poverty cut points than those recommended based on work in MA & RI

– Need to explore NYC data to determine best cut points and neighborhood size to use.

Page 24: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Results

Page 25: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Percentage of population by census tract

poverty level, NYC, 2000 & PHDGP 1990

0

10

20

30

40

50

<5% 5-9% 10-19% 20+%

NYC PHDGP

Pe

rce

nta

ge

of p

op

ula

tion

Percent below poverty in census tract

46%

Page 26: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Percentage of population by % of residents in census tract, zip code and UHF area who

live below poverty, NYC, 2000

0

10

20

30

40

50

<5% 5-9% 10-19% 20-29% 30-39% 40+%

Census Zipcode UHF area

Pe

rce

nta

ge

of P

op

ula

tion

Percent below poverty in census tract

Page 27: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Age-adjusted Mortality Rate by % in census tract who live below poverty,

NYC, 2000

0

2

4

6

8

10

12

<5% 5-9% 10-19% 20-29% 30-39% 40+%

De

ath

Ra

te p

er 1

000

Percent below poverty in census tract

Page 28: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Age-adjusted Mortality Rate by % in census tract who live below poverty

by race/ethnicity, NYC, 2000

0

2

4

6

8

10

12

14

White (non-H) Black (non-H) Hispanic Asian

<5% 5-9% 10-19% 20-29% 30-39% 40+%

De

ath

Ra

te p

er 1

000

Percent below poverty in census tract

Page 29: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Age-adjusted Mortality Rateby % in census tract who live below poverty,

NYC, 1990 and 2000

0

2

4

6

8

10

12

14

16

<5% 5-9% 10-19% 20-29% 30-39% 40*%

1990 2000

De

ath

Ra

te p

er 1

000

Percent below poverty in census tract

Page 30: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Age-adjusted TB Rate by % of residents in census tract who live

below poverty, NYC, 2000

0

5

10

15

20

25

30

<5% 5-9% 10-19% 20-29% 30-39% 40+%

Ra

te o

f TB

pe

r 1

00,0

00

Percent below poverty in neighborhood

Page 31: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Age-adjusted TB Rate by % in census tract who live below poverty

by race/ethnicity, NYC, 2000

0102030405060708090

White (non-H) Black (non-H) Hispanic Asian

<5% 5-9% 10-19% 20-29% 30-39% 40+%

Ra

te o

f TB

pe

r 1

00,0

00

Percent below poverty in census tract

Page 32: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Age-adjusted TB rate by % of residents in census tract who live below poverty, NYC,

2000 and 2008

0

5

10

15

20

25

30

<5% 5-9% 10-19% 20-29% 30-39% 40+%

2000 2008

Ra

te o

f TB

pe

r 1

00,0

00

Percent below poverty in census tract

Page 33: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Key Recommendations

1. All routinely collected surveillance data with geolocating info should be analyzed using neighborhood poverty as a standard variable

2. Standard Measure• % in neighborhood who live below federal poverty

level• 6 categories for analysis:

<5%, 5-9%, 10-19%, 20-29%, 30-39%, 40+%• 4 categories as needed for small numerators or

display: <10%, 10-19%, 20-29%, 30+%

• Use census tract when possible (rather than ZIP, UHF)

Page 34: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Conclusions

1. Analysis of data using census tract poverty (CTP) is a meaningful way to describe disparities for some diseases and provides new insights relevant to control

– Find disparities within race/ethnic groups– Some diseases more common among those of higher SES– Can be used regardless of whether have race/ethnicity data– Targeting groups for intervention based on SES more attractive

than based solely on race/ethnicity

2. Use of CTP level is gaining traction– Increasing experience using it, CSTE involved

Page 35: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Where do we go from here?

1. Up to state and local health dep’t epidemiologists and CSTE to bring SES measures to the data we collect – to take the lead.

– We are the experts in analyzing and using the info we collect.

– Academia has shown the way – is best suited to studying the mechanisms related to SES disparities.

– CDC is interested, but is slower to move than state and local jurisdictions – and doesn’t have address data.

continued ….

Page 36: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Where do we go from here? (cont)

2. Take advantage of the PHDGP work:

– Begin to routinely include ABSES measures in surveillance data analyses, ideally, including the recommended “standard”

– Help CSTE move ABSES, esp. census tract poverty level, into the national dialogue about measuring and addressing health disparities.

Page 37: Use of Area-based Poverty as a Demographic Variable for Routine Surveillance Data Analysis CT and NYC CSTE Annual Conference June 10, 2013 J Hadler CT

Thanks!