Breast Cancer among Socioeconomically Vulnerable Women in Vulnerable Places: Historical Evidence of...
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Transcript of Breast Cancer among Socioeconomically Vulnerable Women in Vulnerable Places: Historical Evidence of...
Breast Cancer among Breast Cancer among Socioeconomically Vulnerable Socioeconomically Vulnerable Women in Vulnerable PlacesWomen in Vulnerable Places
Historical Evidence of Better Care in Canada than in the United States
Presenter DisclosuresPresenter Disclosures
No relationships to disclose
Funding source:Canadian Institutes of Health Research
Grant no. 67161-2
Manuscript status:In review for publication consideration in a peer-reviewed scientific journal
AbstractAbstractWe studied the effects of poverty, health insurance and primary care
(PC) on optimum breast cancer care† among women in pre-Affordable Care Act (ACA) California and Ontario.
Canadian advantages in the most disadvantaged places: high poverty neighborhoods (RR = 1.65) and communities that lacked specialist physicians (RR = 1.33) were explained by better health insurance coverage and greater access to PC physicians (PCP).
These protective Canadian effects suggested ways to maximize ACA protections. Ensure the newly insured, public and private, are adequately insured, without having to bare exorbitant out-of-pocket costs. Expand Medicaid across all 50 states. Bolster the supply of PCPs and allied professionals.
† Optimum care: diagnosed early (small, node negative tumor) and received breast conserving surgery (lumpectomy) followed by radiation therapy
BackgroundBackground
Human, Clinical & Scientific ContextsHuman, Clinical & Scientific Contexts
Why study breast cancer?
• Relatively common over the life course• Effective screens exist• Effective treatment regimes exist• Timely diagnoses & best treatments matter• Excellent prognoses can be expected:
Long survival & high quality of life
It is a sentinel health care quality indicator.
Income and Breast Cancer CareIncome and Breast Cancer Care†††† Systematic review and meta-analysis of 100+ study outcomesSystematic review and meta-analysis of 100+ study outcomes
• US-Canada studies that did not account for income found nil to null differences on breast cancer care •“Comparisons of national ‘haystacks’ tend to lose important ‘needles’ of knowledge”
• Studies of breast cancer care in impoverished places in the US and Canada found large Canadian advantages in diagnosis, treatment and survival• The more impoverished the people and places the larger have been the Canadian advantages • Focusing on the experiences of the most vulnerable magnifies clinical, policy and human significance Knowledge gap:• Better health insurance coverage accounted for most, but not all, of observed Canadian advantages
Primary Care and MortalityPrimary Care and Mortality†† †† Review of 35 national/US analyses (cancer, heart disease & all-cause mortality)Review of 35 national/US analyses (cancer, heart disease & all-cause mortality)
• Barbara Starfield, the late, preeminent PC researcher and advocate commented that “insurance is necessary, but not sufficient” to explain these advantages—“Canada’s more PC-orientation probably also plays a significant protective role.”
• PCPs are much more prevalent among the Canadian vs. US physician workforces (47% vs. 27%)• PCP supply-mortality associations were consistently and strongly protective (28 of 35 study outcomes)
Knowledge gap:• We are not aware of any US-Canada study of breast
cancer care that observed the effects of poverty, health insurance and physician supplies, PCPs and specialists.
Study Hypotheses Study Hypotheses 1. Poverty better predicts suboptimum breast cancer
care in the United States.
2. Primary care physician supply better predicts optimum care in Canada.
3. The hypothesized Canadian advantage among women who lived in poverty would be completely explained by their better health insurance coverage and greater access to primary care.
MethodsMethods
Comparison of Pre-ACA Historical Cohorts:High Poverty Neighborhoods Oversampled in
California and Ontario, Women with Breast Cancer Diagnosed
Between 1996 & 2000 Followed to 2011
Sampling High Poverty NeighborhoodsSampling High Poverty NeighborhoodsEnhanced California and Ontario cancer registries
• Comprehensive, reliable and valid• Diverse places well represented
Random samples stratified by poverty: > 30% & < 30% poor• Respectively, 6,300 & 950 women (multi-“controls”)
Comparably poor places defined by Census Bureaus• CT poverty prevalence of 30+% (US, 2000)
• Poorest CTs, Stats Can’s low-income criterion (2001)• Mdn incomes, purchasing power-adjusted in USD: $23,175 (California) & $23,800 (Ontario)
Note. CT = census tract, Mdn = median, Stats Can = Statistics Canada, USD = US dollar
Measuring Community PCP SupplyMeasuring Community PCP Supply
Participants joined to county-level active physician data • AMA and CIHI databases (2000/2001)
• The threshold effect, above which participants were more likely to receive optimum care, was identified by exploring increments (0.25 physicians / 10,000): > 7 PCPs per 10,000 community inhabitants
• PCPs reported specialty as general or family practice• General internists in the US and emergency family
medicine physicians in Canada were also included
Note. AMA = American Medical Association, CIHI = Canadian Institute for Health Information
Practical Statistical AnalysesPractical Statistical AnalysesOptimum care: diagnosed early, had lumpectomy & RT
(NCCN guideline-based). Clinically valid: those not 3-times more likely to have died over 10 years
• Rates were directly and internally adjusted for age and place: large or small urban or rural • Rates reported per 100 participants (percentages)
Standardized rate ratio (RR) comparisons with (95% CIs)
Logistic (care) or Cox (survival) regression models adjusted for multiple predictive and potentially confounding factors
NotesNotes. CI = confidence interval, NCCN = National Comprehensive Cancer Network, RT = radiation therapy. Key study variables had < 3% missing data which was not confounding. Covariates: age, place, tumor grade and hormone receptor status.
ResultsResults
Effect of Neighborhood Poverty on Rate Effect of Neighborhood Poverty on Rate of Optimum Breast Cancer Care of Optimum Breast Cancer Care Within-CountryWithin-Country Adjusted Rates (%) Adjusted Rates (%)California
Lower poverty33.6High poverty (30+% poor)23.1
RR = 0.69 (0.63, 0.75) Ontario
Lower poverty34.8High poverty38.1
RR = 1.09 (0.92, 1.30)
Between-Canada/US within High Poverty Neighborhoods Between-Canada/US within High Poverty Neighborhoods RR = 1.65 (1.39, 1.96)US Subsample (Un- or Publicly-Insured [Rate = 18.0%])US Subsample (Un- or Publicly-Insured [Rate = 18.0%])
RR = 2.12 (1.76, 2.56)
Effect of Community PCP Density on Effect of Community PCP Density on Rate of Optimum Breast Cancer Care Rate of Optimum Breast Cancer Care
Within-CountryWithin-Country Adjusted Rates (%) Adjusted Rates (%)California
Lower PCP density29.2High PCP density (7+ PCPs/10,000)31.2
RR = 1.07 (1.00, 1.14) Ontario
Lower PCP density29.9High PCP density42.9
RR = 1.43 (1.20, 1.70)
Between-Can/US within High PCP Density Communities Between-Can/US within High PCP Density Communities RR = 1.38 (1.20, 1.58)
Health Insurance & PC Explained Breast Cancer Care & Health Insurance & PC Explained Breast Cancer Care & Ultimately Survival Differences Between-CountriesUltimately Survival Differences Between-Countries
When the main and interacting effects of poverty, PCP supply and country were accounted for with a logistic regression there was no main effect of country on optimum care.
When the main and interacting effects of poverty, health insurance, PCP supply, optimum care
and country were accounted for with a Cox regression there was no main effect of country on survival.
Specialist Physician (SP) Density & Specialist Physician (SP) Density & Optimum Breast Cancer Care: Addendum Optimum Breast Cancer Care: Addendum Within-CountryWithin-Country Adjusted Rates (%) Adjusted Rates (%)California (CA)
Lower SP density (< 13 SPs/10,000)25.8High SP density (72.5%) 32.4
RR = 1.26 (1.15, 1.38) Ontario (ON)
Lower SP density34.2High SP density (18.8%) 36.0
RR = 1.05 (0.88, 1.25)
Between-Canada/US within Lower SP CommunitiesBetween-Canada/US within Lower SP Communities†† RR = 1.33 (1.17, 1.51)
† † SP-underserved communities in ON (M = 6.7, SD = 1.3) had, on average, nearly 2 more PCPs per 10,000 inhabitants than similarly underserved communities in CA (M = 4.9, SD = 0.9); F = 1,447.73, p < 001.
DiscussionDiscussion
SummarySummaryAll three study hypotheses were supported.
In addition to more prevalent optimum care in communities that were well supplied and served by PCPs, women with breast cancer in Ontario were particularly advantaged in the most disadvantaged places: high poverty neighborhoods and underserved communities that lacked specialist physicians.
Canadian advantages in care and survival among those who lived in poverty were fully explained by their better health insurance coverage and greater access to primary care.
Interpretation: Human SignificanceInterpretation: Human Significance
Applying this study’s effects to US population parameters on breast cancer among the inadequately insured and impoverished we estimate that over the course of a generation more than 200,000 American women who lived in poverty with breast cancer were cared for less optimally than had they had access to a universally accessible, primary care-oriented health care system.
Conclusions Conclusions This study’s historical observations of Canadian health care
protections suggested ways to maximize ACA protections.
Policy makers ought to ensure that the newly insured, whether through private insurance exchanges or public insurance expansions, are indeed, adequately insured. No one should have to bare exorbitant out-of-pocket costs for medically necessary cancer care or any other, and the Medicaid program should be equitably expanded across all 50 states.
In concert with ultimately insuring all Americans, policies that expand the supply of PCPs hold the promise of eradicating remaining barriers to the provision of high quality health care for all.
Policy Recommendations Policy Recommendations
The United States ought to institute single payer reform and strengthen its primary care system.
To the extent that single payer reform is not politically feasible, strengthening primary care is probably the best way to maximize the ACA’s benefits.
Potential LimitationsPotential Limitations1. 1. Race/Ethnicity Alternative ExplanationRace/Ethnicity Alternative Explanation
• Findings replicated among the subsample of non-Hispanic white women in California vs. the entire ethnically diverse Ontario sample
2.2. Income Differences (US poor are poorer on average than Income Differences (US poor are poorer on average than Canadian poor)Canadian poor)• Findings replicated among California-Ontario subsamples with nearly identically low incomes
• Even granting this: It is instructive to know that women who live in Canada’s poorest neighborhoods are so much better insured and cared for than women who live in America’s poorest neighborhoods.
Future ResearchFuture ResearchTo optimize breast cancer care with an adequate PC workforce of at
least 7 PCPs per 10,000 community residents we estimated that another 1,700 PCPs are needed in California. Though PC was more effective in Ontario, a PCP supply gap of 325 PCPs was estimated there as well.
Systematic replications are needed to identify current evidence-based gaps in PC across other states, provinces and health outcomes.
Social workers work with PCPs and others, often leading primary care efforts in diverse health and mental health field’s of practice. This study allowed for observation of the role of PCPs (availability of administrative data), but not of social workers. Future studies ought to incorporate the value of social work roles and their protective effects.
Co-InvestigatorsCo-Investigators
Investigator Affiliation __________Kevin Gorey School of Social Work, University of
Windsor, Ontario, Canada
Caroline Hamm† Department of OncologyIsaac Luginaah Department of GeographyGuangyong Zou‡Dept. Epidemiology & Biostatistics
Western University, London, ON
Eric Holowaty Dalla Lana School of Public HealthUniversity of Toronto, Ontario
† & Oncology Department, Windsor Regional Cancer Center, Ontario‡ & Robarts Research Institute, London, Ontario
Acknowledged Administrative, Acknowledged Administrative, Logistical or Research Support Logistical or Research Support Supporter Affiliation _________________Kurt Snipes Cancer Surveillance and ResearchJanet Bates Branch, California Department ofGretchen Agha Public Health
Dee West Cancer Registry of Greater CaliforniaMarti InduniGlen HalvorsonDonald FungArti Parikh-Patel
Madhan Balagurusamy School of Social WorkNancy Richter University of Windsor
Charles Sagoe Cancer Care Ontario
John David Stanway Canadian Institute for Health Information
DisclaimerDisclaimerOther Agencies Involved in Data Management:
National Cancer Institute (United States), Cancer Prevention and Public Health Institutes of California, Centers for Disease Control and Prevention, University of Southern California
The ideas and opinions expressed herein are those of the presenters and endorsement by any affiliated or data-supportive agencies or their contractors and subcontractors are not intended nor should they be inferred.
Principal InvestigatorPrincipal Investigator
Kevin GoreyKevin Gorey
For more information about our research see my academic website at:www.uwindsor.ca/gorey
For any additional information, including reprint requests, feel free to contact me at:[email protected]