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Comorbidity-Adjusted Life Tables: A Tool for Assessing Other Causes Mortality in Cancer Patients Angela Mariotto, Zhuoqiao Wang, Carrie Klabunde, Eric J. Feuer Methods and Applications for Population Based Survival Frascati, September 20-21, 2010 Outline Background motivation Data: SEER, SEER-Medicare and 5% non-cancer sample Methods Step I: Estimating comorbidity index Step II: Estimating survival by comorbidity index Step III: Estimating health-adjusted age Results Discussion Motivation More accurate estimate of competing non-cancer survival taking into account health status. Tool to improve informed decisions regarding: Treatment choices. Age to stop screening. SEER Data The Surveillance, Epidemiology, and End Results (SEER)program collects data on clinical, demographic, and cause of death information for persons with cancer. Data from 11 registries (1992-2005) Representing 14 % of the US population Medicare Program 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 SEER-Medicare and the 5% Sample Data SEER-Medicare: Medicare claims linked to Medicare eligible cancer patients in the SEER database There is a 93% match 5% sample (non-cancer): At the time of the linking, NCI creates a file that contains claims, demographic characteristics and life status information for a 5 % random sample of Medicare beneficiaries residing in the SEER areas who do not have cancer. The 5% non-cancer sample can be used as controls Medicare claims data is the same for cancer and non-cancer cases Measuring Comorbidity in SEER-Medicare: Cancer Patients SEER-Medicare: ICD-9-CM codes recorded in claims during the 12 months prior to the cancer diagnosis were used to identify 16 comorbid conditions used by Charlson et al. (J. Chronic Disease, 1987). Algorithm similar to Klabunde et al. (Annals of Epidemiology, 2007) Survival time Cancer diagnosis X 1 year prior, claims are evaluated to indentify 16 comorbid conditions Non-cancer death ● Measuring Comorbidity in the 5% Sample Data: NonCancer Comorbidity identified prior to each birthday Multiple records for each person but each record contributes to 1 survival curve Same algorithm as for cancer patients 69 survival … 66 Birthday 67 Birthday 68 Birthday 69 Birthday X X X X Claims are evaluated to indentify 16 conditions prior to each birthday 67 survival 66 survival End of follow-up Data characteristics: Age, Sex, Race and Life Status SEER- Medicare Cancer Patients No. % Age 5% sample (non-cancer) Multiple records No. % 66-69 70-74 75-79 80-84 85-89 90+ 211,849 293,324 269,384 188,485 99,993 45,050 19 26 24 17 9 4 673,786 821,570 689,356 486,045 273,705 155,371 22 27 22 16 9 5 Sex Females Males 524,625 583,460 47 53 1,966,271 1,133,562 63 37 978,633 79,921 49,531 88 7 4 2,639,759 223,353 236,721 85 7 8 81 19 100 2,249,854 849,979 3,099,833 73 27 100 Race Life Status White Black Other Alive 897,368 Dead 210,717 Total 1,108,085 Comorbidities Frequencies SEER-Medicare Cancer Patients Multiple records % 1.3 0.0 5.9 2.1 9.6 15.3 1.5 15.5 3.0 0.6 0.2 2.0 0.7 2.0 1.8 4.3 No. 30,653 430 159,874 43,948 207,307 277,638 60,806 408,201 80,461 7,475 2,407 44,584 19,456 59,259 37,923 101,248 % 1.0 0.0 5.2 1.4 6.7 9.0 2.0 13.2 2.6 0.2 0.1 1.4 0.6 1.9 1.2 3.3 No Comorbidity 665,135 60.0 2,125,944 68.6 Total 1,108,085 100.0 3,099,833 100.0 Acute myocardial infarction AIDS Cerebrovascular disease Chronic renal failure Congestive heart failure COPD Dementia Diabetes Diabetes with sequelae Liver disease mild Liver disease mod/severe Myocardial infarction Paralysis Rheumathologic disease Ulcer disease Vascular Disease No. 14,466 279 65,711 22,952 106,067 169,780 16,305 171,688 33,743 6,430 2,171 22,270 8,000 22,606 20,218 47,195 5% sample (non-cancer) Step I: Estimating the Comorbidity Index SEER-Medicare data on cancer patients only Cancer patients with more than one cancer are excluded Comorbid conditions measured in the year prior to diagnosis Cox proportional hazard method having sex, age, race and 16 conditions Event: death for non-cancer causes Censoring events: cancer death and lost or end of follow-up Results from Cox proportional hazards model Variable Estimate Std.Err. Hazard Ratio 0.09 0.000 1.1 Age Female Male Race: White Black Other 0.23 0.004 1.3 0.15 -0.09 0.008 0.011 1.2 0.9 Acute myocardial infarction AIDS Cerebrovascular disease Chronic renal failure Congestive heart failure COPD Dementia Diabetes Diabetes with sequelae Liver disease Liver disease mod./severe Myocardial infarction Paralysis Rheumathologic disease Ulcer disease Vascular Disease 0.15 0.54 0.35 0.68 0.74 0.56 0.72 0.34 0.24 0.87 0.66 0.06 0.38 0.26 0.09 0.31 0.015 0.154 0.008 0.012 0.006 0.006 0.013 0.006 0.012 0.026 0.042 0.014 0.020 0.014 0.014 0.009 1.2 1.7 1.4 2.0 2.1 1.8 2.1 1.4 1.3 2.4 1.9 1.1 1.5 1.3 1.1 1.4 Comorbidity Index Calculation (CI) 1. Diabetes + Congestive heart failure CI=0.34+0.74=1.08 2. Diabetes + COPD CI=034+0.56=0.88 3. COPD+ Congestive heart failure + Liver: CI= 0.56+0.74+0.87= 2.17 Step II: Estimating age- and sex- specific survival by comorbidity index Both data: SEER-Medicare and 5% non-cancer sample For each age and sex we fit a Cox proportional hazard model using comorbidity Index as cubic-spline linear at the tails, cancer status, and race as covariates People in the 5% sample are included once in each survival curve Step II: Estimating age- and sex-survival by comorbidity index (continued) For each age and sex we fit a Cox proportional hazard model where z is a vector of covariates Sage,sex (t | z) Sage,sex (t ) exp( βz ) βz 00 01 cancer 02 black 03 Other race CI spline Comorbidity index (CI) is modeled with a restricted cubic spline with 4 knots at the 5%, 35% , 65% and 95% percentile of each individual age : k1, k2 k3, and k4. CI spline 10 CI 11 CI1 12 CI 2 where CI1 and CI2 are two function of CI and knots. (CI k3 )3 (k4 k j ) (CI k4 )3 (k4 k j ) CI j (CI k j ) , j 1, 2. u (k4 k3 ) (k4 k3 ) 0 if u 0 u if u 0 Parameters Estimates Set of 7 parameters for each age (66-95) and sex (males and females) Summarize parameters graphically Hazard ratios of dying of other causes by age due to: Diabetes vs. healthy Cancer vs. non cancer Race For selected ages we show the effect of comorbidity index on the risk of dying of other causes for white women. Hazard ratio estimates of dying of other causes than cancer due to diabetes (CI=0.34) 3.0 3.0 Males 2.5 2.5 2.0 2.0 Relative Risk Hazard Ratio Females Comorbidity: Diabetes CI=0.34 1.5 1.0 1.5 1.0 0.5 0.5 0.0 0.0 65 75 85 Age 95 Comorbidity: Diabetes CI=0.34 65 75 85 Age Reference is whites, no-comorbidities and no-cancer: Hazard Ratio=1 95 Hazard ratio estimates of dying of other causes than cancer due to diabetes (CI=0.34), race and cancer status. 3.0 3.0 Males 2.5 2.5 2.0 2.0 Relative Risk Hazard Ratio Females Comorbidity: Diabetes CI=0.34 Cancer 1.5 1.0 1.5 0.5 0.0 0.0 75 85 Age 95 Cancer 1.0 0.5 65 Comorbidity: Diabetes CI=0.34 65 75 85 Age Reference is whites, no-comorbidities and no-cancer: Hazard Ratio=1 95 Hazard ratio estimates of dying of other causes than cancer due to diabetes (CI=0.34), race and cancer status. 3.0 3.0 Males 2.5 2.5 2.0 2.0 Relative Risk Relative Risk Females Comorbidity: Diabetes CI=0.34 Cancer 1.5 Black 1.0 Other race 0.5 Comorbidity: Diabetes CI=0.34 1.5 Cancer 1.0 Other race 0.5 0.0 Black 0.0 65 75 85 Age 95 65 75 85 Age Reference is whites, no-comorbidities and no-cancer: Hazard Ratio=1 95 Estimating Health-Adjusted Age or Physiologic Age Motivation: usually doctors subjectively assign a physiological age to patients depending on their health status and health behaviors People in good health and with healthy: lower physiological age People in poor health: higher physiological age By comparing each age and comorbidity specific survival curve with US life tables we will more “objectively” try to calculate physiological age Life tables represent all causes mortality in the US population. Estimating health-adjusted age: physiologic age Example: White women age 66 with no comorbidity S66,CI 0 (t ) P(t | x) is the estimated cumulative probability of surviving age t for a white women diagnosed with cancer at age 66 and no comorbidities P (t ) is the cumulative probability of surviving age t obtained from the 2000 life tables for white women in the US P(t ) P( x) is the cumulative probability of surviving age t, conditional on being alive at age x. Health- Adjusted age is the age x that minimizes distance between S66,CI 0 (t ) and P(t | x) 10 min{ 50 x75 } | S66 ,CI 0 ( t ) P( t | x )| . t 1 White women diagnosed with cancer at 70 years of age and selected comorbidity indexes (solid) to the best fitted US life table (dashed lines). 1 US LT Age=65 Age=70, Comorb.=0 0.8 Proportion surviving US LT, Age=70 Age=70, Comorb.=0.2 0.6 US LT Age=76 Acute myocardial infarction COPD Age=70, Comorb.=0.5 0.4 US LT, Age=83 Age=70, Comorb.=1.0 Diabetes + COPD, Diabetes+ CHF 0.2 US LT Age=88 Dementia + COPD +CHF US LT Age=92 Age=70, Comorb.=1.5 Age=70, Comorb.=2.0 0 0 2 4 6 Years 8 10 Diabetes + COPD + CHF Limitations Comorbidities measured from claims data Estimates for ages 66+ only 2 step analysis: Cancer patients to estimate comorbidity index Cancer patients + cancer free people to estimate survival by comorbidities In one analysis we would have to take into account of the correlation of comorbidities before consecutive birthdays on the cancer free population Discussion and Conclusions Comorbidity, cancer status, sex and race are important predictors of other cause mortality, however their effect is attenuated as age increases. Not clear why cancer status is a predictor of worse other causes survival Misclassification of cause of death? Future analysis: restrict analysis to women with early breast cancer and do matching with 5% cancer random sample to investigate if their other causes survival is still worse. Discussion and Conclusions This tool will paired with cancer prognosis (net cancer survival) to provide more individualized probabilities of dying from cancer and of dying of other causes Inclusion of other cause mortality in decision of cancer treatment and screening are particularly important for patients diagnosed at older ages and with more indolent tumors (e.g. prostate cancer) Health-adjusted age might be a useful tool for clinicians in general One Dataset Cox Model 1 Net probability of dying of Cancer Cox Model 2 Net probability of dying of Other Causes Dataset 1 Cancer Patients Cox Model 1 Net probability of dying of Cancer Dataset 2 Non-cancer Cox Model 2 Net probability of dying of Other Causes Equations are the same Crude probabilities dying of Cancer and Other Causes No need for independence assumption Minjung used a continuous time model where estimates are computed using counting process* Estimates and SE’s of cumulative incidence are identical if independence is assumed or not (Nonidentifiability: Tsiatis,1975) *Cheng SC, Fine JP, Wei LJ, “Prediction of the Cumulative Incidence Function under the Proportional Hazards Model”, Biometrics, 54, 1998. Crude probabilities dying of Cancer and Other Causes Needs independence assumption of competing risk and that populations are similar* Can take advantage of the richness of alternative different data sources. Use discrete time model – CI’s of cumulative incidence computed using delta method Thank you!!! Villa Mondragone