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National Cancer Institute Cancer Prevalence in the US: An Overview and Applications By Angela Mariotto National Cancer Institute Combining Epidemiology and Economics for Measurement of Cancer Costs U.S. DEPARTMENT OF HEALTH AND HUMAN SERVICES National Institutes of Health September 21-24, 2010 Frascati Acknowledgements Istitute Superiore di Sanità, Rome, Italy Roberta de Angelis, Andrea Tavilla, Arianna Simonetti, Arduino Verdecchia, Riccardo Capocaccia, Lucia Martina National Cancer Institute Rocky Feuer, Robin Yabroff, Joan Warren, Martin Brown, Julia Rowland IMS Steve Scoppa, Mark Hachey, Ken Bishop, Yongwu Shao Outline Overview on cancer prevalence Importance and definitions Methods US prevalence statistics Projections of cancer prevalence and applications Data/Inputs Projections assumptions and method Estimating the demand for oncologists in 2020 Importance Overall Cancer Burden and Survivorship NCI Office of Cancer Survivorship Cancer Advocacy Groups FDA Office of Orphan Drug Products Development Prevalence of less than 200,000 for disease or condition to be treated Health Care Utilization and Costs of Care Health planners and policy makers Prevalence Definitions Complete prevalence: living persons ever diagnosed with cancer (regardless of the current state of their disease) Overall measure of cancer burden and survivorship Limited duration prevalence - prevalence of persons diagnosed with cancer in the last x years. Easier to estimate from cancer registry data Provides prevalence by time since diagnosis E.g. 0-5 years, 5-10 years, etc. Methods to Estimate Prevalence from Cancer Registry Data Method Input Prevalence Output Counting Method (1) Incidence & vital status Limited duration SEER*Stat Complete COMPREV (childhood cancers)4 Limited duration Completeness prevalence, incidence Index (2-4) and survival models Software MIAMOD (5) Mortality data and survival model Complete, limited MIAMOD/PIAMOD duration and projections PIAMOD (6) Incidence data and survival model Complete, limited MIAMOD/PIAMOD duration and projections 1. Feldman et al., N Engl J Med 1986 2. Capocaccia et al. Stat Med 1997 3. Merrill et al., Int J Epidemiol 2000 4. Simonetti et al., Stat Med 2007 5. Verdecchia et al., Stat Med 1989. 6. Verdecchia et al., Stat Med 2002 Cancers Diagnosed in Childhood (age at diagnosis 0-19 yrs) Age distribution of survivors at 1/1/1997 using 1975-1996 data Ages 41+ No Information Estimating Complete Prevalence of Cancers Diagnosed in Childhood Simonetti A, et al. Stat Med. 2008. Estimating Complete Prevalence of Cancers Diagnosed in Childhood Estimated Number Cancer Survivors in the US 1971-2006 12.000.000 10.000.000 8.000.000 6.000.000 4.000.000 2.000.000 0 11.7 million Percent of US cancer survivors at Jan. 1st, 2006. Percent within each age group. Percent (3.8% of the total US population) 35% 30% 25% 20% Males Females 15% 10% 5% 0% Age at Prevalence Projections of the Cancer Prevalence in the US In the past estimation of the costs of cancer care used: SEER data to estimate # patients in each phase of care SEER-Medicare (claims data) to estimate costs of cancer care Projections need modeling: MIAMOD or PIAMOD We used PIAMOD to have more control on projection assumptions Applications What is projected economic burden of cancer care in the US? What is the demand for oncologists in 2020? Project Cancer Prevalence: Data and Methods Overview Projections of the future number of incident and prevalent cancer cases, were derived from survival and incidence data from the nine registries in the SEER program from 1975-2005 (10% of U.S. population). Incidence ratesrates werewere applied Step1: Incidence to US Census Population applied to the US Census projectionsprojections to estimatetothe Population estimate annual number of new cancer the annual No. of new cancer cases in the US. cases in the US Survival and US Step 2: Survival andincidence US incidence rateswere wereused usedto toestimate estimate rates prevalence.using PIAMOD prevalence Step3. Prevalence by phase Step 2: PIAMOD Method Inputs (1975-2020) •US census population and projections •Estimates and projections of US number of cancer cases •US mortality and projections from Berkeley life tables Modeled Input Cancer survival model. Age and year of diagnosis trends. MIAMOD /PIAMOD software Outputs Predicted prevalence by year of diagnosis, age and calendar year Input: US Populations and Projections from the Census Bureau Male US population born 1945-1954 40-49 50-59 60-69 70-79 80-84 Data source: US Census Bureau Input: SEER Age-Adjusted Incidence Rates Projections Observed and projected SEER incidence rates Observed Flat Continuing trend SEER rates are applied to the US population by age and year to obtain US cases Input: Survival Modeling Modeled and observed relative survival by site and year of diagnosis 5-year 10-year 15-year Survival Model Projections: Example Male Colorectal Cancer Observed Base projection Males aged 65-74 years - - - Trend projection 1-year 5-year 10-year Year at diagnosis Step 3: Estimation of Prevalence by Phases of Care in Person-Years Person-years in each phase of care: Last year of life for people dying of cancer and other causes (last 12 months alive) Initial (12 months after diagnosis) Continuing (time between initial and last year of life) Calculations are done by combining prevalence and mortality with survival 1-yr after cancer diagnosis Cancer diagnosis 1-yr prior to death Cancer death Priority order: Last year of life, initial and continuing Mariotto et al. Cancer Causes and Control, 2006. Projections of US cancer prevalence by phases of care, 2010-2020. Cancer Prevalence (Number of people in thousands) Population Year All ages 65+ years Total Initial 2010 2015 2020 308,936 322,366 335,805 40,244 46,791 54,632 13,772 15,829 18,071 1,080 1,187 1,306 % increase 2010-2020 9% 36% 31% 21% Continuing 11,791 13,601 15,548 32% End Year of Life Other cause Cancer 603 704 835 298 337 381 38% 28% Prevalence Projections 2010 and 2020 Under Different Assumptions Prevalence (No. of People) 2020 Site 2010 All Sites Female Breast Prostate Melanoma Colorectal Lymphoma Uterus Bladder Lung Kidney Head & Neck Cervix Leukemia Ovary Brain Stomach Esophagus Pancreas 13,772,000 3,461,000 2,311,000 1,225,000 1,216,000 639,000 586,000 514,000 374,000 308,000 283,000 281,000 263,000 238,000 139,000 74,000 35,000 30,000 Base Incidence Survival Both 18,071,000 17,465,000 18,878,000 18,229,000 4,538,000 4,275,000 4,597,000 4,329,000 3,265,000 3,108,000 3,291,000 3,132,000 1,714,000 1,971,000 1,724,000 1,983,000 1,517,000 1,327,000 1,575,000 1,376,000 812,000 803,000 841,000 831,000 672,000 638,000 667,000 634,000 629,000 576,000 640,000 587,000 457,000 392,000 481,000 412,000 426,000 487,000 446,000 511,000 340,000 308,000 346,000 313,000 276,000 245,000 277,000 245,000 340,000 328,000 356,000 342,000 282,000 232,000 296,000 241,000 176,000 174,000 185,000 182,000 93,000 80,000 103,000 88,000 50,000 48,000 62,000 60,000 40,000 40,000 50,000 50,000 Continuing trends in Base= population change only Percent of Survivors in Each Phase of Care in 2010 Pancreas Lung Esophagus Stomach Head & Neck Kidney Colorectal Prostate Leukemia Bladder Lymphoma All Sites Brain Melanoma Breast Ovary Uterus Other sites Cervix 0% Initial Continuing End of life 20% 40% 60% 80% 100% Examples of Applications of Cancer Prevalence Estimates by Phases of Care Total expenditure of cancer care (Robin Yabroff) By combining with average annual costs Estimates of the future demand for oncologists’ services through 2020 By combining with estimates of the use of oncologists’ services among current cancer patients Warren et al. (JCO, 2008) Estimates of the future demand for oncologists’ services through 2020 American Association of Medical Colleges Center for Workforce Studies, initiated a project to estimate the future demand for oncologists’ services through 2020 These estimates were derived by combining two pieces of information: Estimates of the use of oncologists’ services among current cancer patients Projections of the future # of cancer cases Use of Oncologists’ Services Estimated from SEER-Medicare Data Federal health insurance plan that offers health insurance for the 65 years and older US population. Medicare data contains enrollment and “claims data” associated with health care paid by Medicare plan. Hospitalization, clinic visit, outpatient tests bills Information on date, diagnosis codes, procedure codes, and cost. 94% of the 65 years and older US population has inpatient and outpatient coverage In this study we only retained claims from oncologists in this study Use of Oncologists’ Services Among Current Cancer Patients We calculated the proportion of people who had at least one visit with an oncologist. For persons who had at least one visit, we calculated the mean number of visits. Utilization estimates from the Medicare population were applied to the projected prevalent cases for the total U.S. population to determine future demand for oncologists’ services. Utilization of oncologists’ services among Medicare beneficiaries diagnosed with cancer in SEER areas % Patients seeing an oncologist 100% 80% 60% 40% 20% 0% Initialof visits among Continuing Last oncologist year of life Mean number those who saw an 25 20 15 10 5 0 Initial Total Continuing 65-69 70-84 Last year of life 85+ Projected Number of Oncology Visits by Phase Among Persons in the U.S. with Cancer, 2005-2020 Table 2. Total Number of Annual Oncology Vistits, 2005-2020 Year 2,005 2,010 2,015 2,020 Total Annual Oncology Visits (in Millions) 38.4 44.2 50.6 57.5 Millions Figure 3. Total Annual Oncologists Visits by Phases of Care (in Millions) 50 45 40 35 30 25 20 15 10 5 0 2005 2010 2015 2020 Initial Continuing Last year of life Estimating Cure, non-Cure and Recurrence Prevalence Cancer Diagnosis Cure: C(t) In recurrence R(t) Not-cured {1-C(t)} Non in recurrence {1-R(t)} Mixture survival cure model to estimate the proportion cured For those “destined” to die of their cancer estimate recurrence and recurrence free prevalence Percent of 29-years survivors in each prevalence category, 1/1/2004 100% 50% 0% Cured Not cured/recurrence-free Not cured in recurrence Discussions/Conclusions Changes of population have the largest effect on prevalence projections compared to incidence and survival. The growing number of cases will place a major burden on the U.S. health care system. The demand for oncologists will increase significantly within the next 15 years. Other health professionals may serve as substitutes for oncologists, especially in the last year of life. Conclusions CISNET models may provide prevalence projections based on assumptions of future trends for particular interventions Projecting prevalence has proven useful to project costs and utilization of cancer care Thank you!!!! http://srab.cancer.gov/prevalence/ [email protected]