Abstract
This study estimates the out-of-pocket (OOP) expenditures for different cancer types among survivors with current vs no current cancer condition and across sex, which is understudied in the literature. This is a cross-sectional study of Medical Expenditure Panel Survey data for 2009-2018 where the primary outcome was the average per year OOP expenditure incurred by cancer survivors. Of 189 285 respondents, 15 010 (7.93%) were cancer survivors; among them, 46.28% had a current cancer condition. Average per year OOP expenditure for female survivors with a current condition of breast cancer ($1730), lung cancer ($1679), colon cancer ($1595), melanoma ($1783), non-Hodgkin lymphoma ($1656), nonmelanoma/other skin cancer (NMSC, $2118) and two or more cancers ($2310) were significantly higher than that of women with no history of cancer ($853, all P < .05). Similarly, average per year OOP expenditure for male survivors with a current condition of prostate cancer ($1457), lung cancer ($1131), colon cancer ($1471), melanoma ($1474), non-Hodgkin’s lymphoma ($1653), NMSC ($1789), and bladder cancer ($2157) were significantly higher compared with the men with no history of cancer ($621, all P < .05). These differences persisted in survivors with no current cancer condition for breast cancer among women; prostate, lung, colon, and bladder cancer among men; and melanoma, NMSC, and two or more cancers among both sexes. OOP expenditure varied across cancer types and by sex for survivors with and without a current cancer condition. These findings highlight the need for targeted interventions for cancer survivors.
Keywords: Cancer, Health expenditures, Out-of-pocket expenditure, Cancer survivors, Costs
INTRODUCTION
Cancer is the second leading cause of death in the United States and is projected to cost more than 608 570 lives in 2021.1 Despite the high mortality associated with cancer, substantial progress has been made against cancer in recent decades.1 With improved treatments and newly discovered drugs, the cancer death rate declined by 31% between 1991 and 2018.1 Although substantial progress has been made to improve survivorship and reduce mortality associated with cancer, the additional burden of cancer-related financial distress has emerged as a matter of serious concern.2 The financial toxicity of cancer3 and out-of-pocket (OOP) burden on cancer survivors have garnered considerable attention from researchers, as well as policy makers, in recent times.3–6
Increasing numbers of cancer survivors are now living longer, sometimes without requiring active treatment while in remission.7 However, long-term survivors may report significant symptom burden,8, 9 post-treatment adverse events such as fatigue and pain,9, 10 and treatment-related late toxicities.11 Moreover, psychological distress, anxiety, depression, and insomnia are pronounced among long-term cancer survivors9, 12 and may require additional treatments, resulting in increased costs. Previous studies have examined the costs affecting previously vs recently diagnosed cancer survivors13–15; however, none of these studies specifically examined OOP costs across cancer types. A 2018 study using 2008-2012 Health and Retirement Study data reported significantly higher total costs for recently diagnosed cancer survivors compared with long-term survivors; however, distinctions were not made across cancer types.13 Similarly, 2 studies using 2001-2007 and 2008-2010 Medical Expenditure Panel Survey (MEPS) data reported significantly higher OOP expenses among both recently and previously diagnosed cancer survivors compared with noncancer controls, without examining cancer types.14, 15
The goal of this study is to assess OOP expenditure by cancer status and cancer types across sex. We used the current condition designation of MEPS to stratify cancer survivors between those with a current cancer condition and those with no current cancer condition,16 and examined OOP expenditure by cancer types for these subgroups. We examined OOP expenditure across cancer types because treatment approaches and survival for different cancers vary considerably,7 which may in turn cause variations in OOP expenditure. Additionally, we stratified our analysis by sex because, as demonstrated for other health conditions such as diabetes, disease-specific OOP expenditure may vary across sex.17 Adopting a more granular approach compared with the previous studies, we examined average OOP expenditure by current vs no current cancer condition and by specific cancer types across sex, which will help facilitate health policy discussions and formulate better targeted intervention strategies.
METHODS
Data Source and Study Sample
Data for our study were obtained from MEPS, a nationally representative survey of the noninstitutionalized US population, which collects information on healthcare use and expenditure.18 The survey oversamples minority groups and provides person weights in the released public use data sets.19 The MEPS design and data collection process have been described elsewhere.20, 21 For our study, we pooled multiple years of data (2009-2015 and 2018) and adjusted the survey weights accordingly.22 Among several publicly available MEPS data files, we used the Full Year Consolidated file—which provided information on demographics, socioeconomic status, insurance coverage, health status, ever having cancer, and healthcare expenditure19—and the Medical Conditions file, which provided information on select current clinical conditions, including cancer.16 MEPS data were deidentified and publicly available, therefore, our study was exempt from institutional review board approval.
Definition of Current Cancer Condition, No Current Cancer Condition and No History of Cancer
In the survey, respondents 18 years or older were asked “Have you ever been told by a doctor or other health professional that you had cancer or a malignancy of any kind?”; those responding yes to this question were then asked “what kind of cancer was it?”.19, 23 Based on the responses to these 2 questions, we identified individuals as cancer survivors and those with no history of cancer.
Information about current conditions was obtained from the Clinical Classifications Software (CCS) codes or CCS Refined (CCSR) codes. Among the cancer survivors, those who had a cancer-specific CCS or CCSR code were identified as (1) survivors with a current cancer condition; the rest of the cancer survivors were identified as (2) survivors with no current cancer condition. In MEPS the current condition was defined as “any clinical condition which had an associated healthcare event or which was being actively experienced by the respondent during the survey year”.16 Thus, respondents with a current cancer condition were those who either had a health care event or reported that they actively experienced cancer in the survey year. Respondents who had CCS or CCSR code for more than one type of cancer or responded that they had history of more than one prior cancer were classified under ‘two or more cancers’ category.
MEPS used International Classification of Diseases, Ninth Revision (ICD-9)–based CCS codes to report current conditions until 2015 and transitioned to ICD-10–based CCSR codes in 2018.16 Because neither CCS nor CCSR codes were publicly available for the years 2016 and 2017, we were unable to identify cancer cases with a current condition for 2016 and 2017, and excluded these 2 years. Consequently, our final analytic sample consisted of respondents pooled for the years 2009-2015 and 2018. Cases with mismatched cancer types in the survey response and the current condition designation were excluded.
Primary Outcome Measure
Total OOP expenditure per person per year was the primary outcome variable in our analysis. The total OOP expenditure was the sum of all-cause OOP expenditure incurred per person per year for any healthcare event, including office-based visits, outpatient visits, ER visits, inpatient stays, prescription medication purchases, home health care events, and other medical equipment and services use.19 All dollar values were inflation-adjusted to 2018 US dollars using the Consumer Price Index for Medical Care.24 Expenditure data in MEPS was primarily self-reported with a subset of the responses verified with the healthcare providers.19 Even with the possibility of underestimation of cost in MEPS,25 as established in previous studies, use of MEPS data enabled us to examine OOP burden of cancer at the national level.14, 26
Covariates
The covariates in each of the estimation model were age, cancer types, race/ethnicity, marital status, educational attainment, income level, insurance status, survey year, number of comorbid conditions, and self-reported health status. All covariates except age were categorical variables (Table 1). In the race/ethnicity variable, non-Hispanic White, non-Hispanic Black, and Hispanic were separate categories, while all other race/ethnicities were grouped together into the “Others” category. Marital status was dichotomized to 2 groups: single (which included individuals who never married or were widowed, divorced, or separated) and married. Educational attainment was categorized into: less than high school diploma, high school diploma, college education or higher, and missing. Income level was categorized into: < 200% of federal poverty level, 200% to < 400% of federal poverty level, and ≥ 400% of federal poverty level.27 Insurance status had 5 categories: private (employer sponsored), private (non-employer sponsored), Medicaid/dual eligible, Medicare, and Uninsured. The Medicaid/dual eligible category included the individuals who were covered by both Medicaid and Medicare.
Table 1.
Variable | Women |
Men |
||||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
No history of cancer (raw n=92 437) |
Current cancer condition (raw n=3716) |
No-current cancer condition (raw n=5186) |
No history of cancer (raw n=81 838) |
Current cancer condition (raw n=3230) |
No-current cancer condition (raw n=2878) |
|||||||||||||
Raw n | Weighted n | Weighted % | Raw n | Weighted n | Weighted % | Raw n | Weighted n | Weighted % | Raw n | Weighted n | Weighted % | Raw n | Weighted n | Weighted % | Raw n | Weighted n | Weighted % | |
Cancer status and type | ||||||||||||||||||
No history of cancer | 92 437 | 107 371 495 | 100.00 | NA | NA | NA | NA | NA | NA | 81 838 | 103 218 167 | 100.00 | NA | NA | NA | NA | NA | NA |
Cervical cancer | NA | NA | NA | 150 | 161 247 | 2.97 | 847 | 1 068 884 | 14.28 | NA | NA | NA | NA | NA | NA | NA | NA | NA |
Breast cancer | NA | NA | NA | 1271 | 1 786 934 | 32.95 | 972 | 1 405 370 | 18.77 | NA | NA | NA | NA | NA | NA | NA | NA | NA |
Prostate cancer | NA | NA | NA | NA | NA | NA | NA | NA | NA | NA | NA | NA | 892 | 1 230 541 | 24.16 | 672 | 976 012 | 21.09 |
Lung cancer | NA | NA | NA | 99 | 131 137 | 2.42 | 39 | 43 084 | 0.58 | NA | NA | NA | 99 | 126 382 | 2.48 | 39 | 55 176 | 1.19 |
Colon cancer | NA | NA | NA | 134 | 151 486 | 2.79 | 199 | 253 695 | 3.39 | NA | NA | NA | 163 | 218 424 | 4.29 | 191 | 263 248 | 5.69 |
Melanoma | NA | NA | NA | 149 | 270819 | 4.99 | 295 | 507 968 | 6.78 | NA | NA | NA | 166 | 295 379 | 5.80 | 248 | 461 994 | 9.98 |
Non-Hodgkin’s lymphoma | NA | NA | NA | 83 | 119 854 | 2.21 | 64 | 95 426 | 1.27 | NA | NA | NA | 83 | 134 315 | 2.64 | 69 | 103 116 | 2.23 |
Nonmelanoma/other skin cancer | NA | NA | NA | 724 | 1 300 171 | 23.97 | 1181 | 2 127 129 | 28.41 | NA | NA | NA | 898 | 1 617 101 | 31.75 | 981 | 172 6733 | 37.31 |
Bladder cancer | NA | NA | NA | 38 | 48 612 | 0.90 | 23 | 33 447 | 0.45 | NA | NA | NA | 104 | 179 228 | 3.52 | 62 | 93 110 | 2.01 |
Other/unspecified | NA | NA | NA | 851 | 1 130 565 | 20.85 | 1356 | 1 658 538 | 22.15 | NA | NA | NA | 608 | 926 017 | 18.18 | 526 | 798 044 | 17.24 |
≥ Two cancers | NA | NA | NA | 217 | 322 232 | 5.94 | 210 | 293 971 | 3.93 | NA | NA | NA | 217 | 366 050 | 7.19 | 90 | 15 0533 | 3.25 |
Race/ethnicity | ||||||||||||||||||
non-Hispanic white | 36 805 | 67 006 708 | 62.41 | 2484 | 4 456 563 | 82.18 | 3622 | 6 320 396 | 84.41 | 34 777 | 65 120 015 | 63.09 | 2336 | 4365 836 | 85.71 | 2210 | 404 3615 | 87.37 |
non-Hispanic black | 20 168 | 14 273 103 | 13.29 | 519 | 374 965 | 6.91 | 651 | 435 528 | 5.82 | 14 699 | 11 908 462 | 11.54 | 468 | 352 109 | 6.91 | 311 | 238 988 | 5.16 |
Hispanic | 25 959 | 16 859 054 | 15.70 | 495 | 367 796 | 6.78 | 667 | 474 097 | 6.33 | 23 649 | 17 621 623 | 17.07 | 288 | 232 927 | 4.57 | 259 | 234 196 | 5.06 |
Others | 9505 | 9 232 630 | 8.60 | 218 | 223 735 | 4.13 | 246 | 257 492 | 3.44 | 8713 | 8 568 067 | 8.30 | 138 | 142 565 | 2.80 | 98 | 111 167 | 2.40 |
Marital status | ||||||||||||||||||
Single a | 50 269 | 52 977 458 | 49.34 | 1865 | 2 462 367 | 45.41 | 2869 | 3 779 027 | 50.47 | 39 927 | 49 057 238 | 47.53 | 1044 | 1 499 100 | 29.43 | 1043 | 160 4065 | 34.66 |
Married | 42 168 | 54 394 037 | 50.66 | 1851 | 2 960 691 | 54.59 | 2317 | 3 708 486 | 49.53 | 41 911 | 54 160 928 | 52.47 | 2186 | 3 594 337 | 70.57 | 1835 | 302 3901 | 65.34 |
Educational attainment | ||||||||||||||||||
< High school diploma | 18 137 | 13 981 852 | 13.02 | 536 | 542 368 | 10.00 | 834 | 841 358 | 11.24 | 16 775 | 14 706 007 | 14.25 | 500 | 527 786 | 10.36 | 405 | 481 082 | 10.40 |
High school diploma | 33 485 | 38 078 908 | 35.46 | 1452 | 2 052 912 | 37.86 | 2114 | 2 988 776 | 39.92 | 30 792 | 39 191 175 | 37.97 | 1163 | 1 807 971 | 35.50 | 1033 | 156 9773 | 33.92 |
≥ College education | 33 566 | 47 822 870 | 44.54 | 1479 | 2 430 228 | 44.81 | 1909 | 3 169 802 | 42.33 | 27 720 | 42 109 400 | 40.80 | 1371 | 2 462 559 | 48.35 | 1249 | 225 6183 | 48.75 |
Missing | 7249 | 7 487 865 | 6.97 | 249 | 397 550 | 7.33 | 329 | 487 577 | 6.51 | 6551 | 7 211 584 | 6.99 | 196 | 295 121 | 5.79 | 191 | 320 927 | 6.93 |
Income level | ||||||||||||||||||
<200% of federal poverty level | 41 495 | 35 260 388 | 32.84 | 1370 | 1 592 859 | 29.37 | 2121 | 2 450 842 | 32.73 | 30 005 | 28 462 518 | 27.58 | 1026 | 1 220 191 | 23.96 | 866 | 1 133 669 | 24.50 |
200% to <400% of federal poverty level | 26 579 | 31 742 313 | 29.56 | 1052 | 1 493 071 | 27.53 | 1488 | 2 117 417 | 28.28 | 25 853 | 31 372 342 | 30.39 | 859 | 1 244 921 | 24.44 | 787 | 1 170 785 | 25.30 |
≥400% of federal poverty level | 24 363 | 40 368 794 | 37.60 | 1294 | 2 337 128 | 43.10 | 1577 | 2 919 253 | 38.99 | 25 980 | 43 383 306 | 42.03 | 1345 | 2 628 325 | 51.60 | 1225 | 2 323 512 | 50.21 |
Insurance status | ||||||||||||||||||
Private (employer sponsored) | 44 042 | 61 143 226 | 56.95 | 1728 | 2 759 370 | 50.88 | 2142 | 3 514 924 | 46.94 | 41 839 | 60 785 918 | 58.89 | 1412 | 2 486 515 | 48.82 | 1367 | 2385 802 | 51.55 |
Private (non-employer sponsored) | 7639 | 11 184 108 | 10.42 | 531 | 916 883 | 16.91 | 698 | 1 153 696 | 15.41 | 6534 | 9 976 135 | 9.67 | 569 | 970 337 | 19.05 | 450 | 770 487 | 16.65 |
Medicaid/dual eligible | 18 273 | 14 259 959 | 13.28 | 618 | 565 611 | 10.43 | 921 | 898 364 | 12.00 | 9696 | 8 718 953 | 8.45 | 362 | 345 920 | 6.79 | 248 | 264 938 | 5.72 |
Medicare | 6585 | 8 131 888 | 7.57 | 698 | 1 030 552 | 19.00 | 980 | 1 425 841 | 19.04 | 4946 | 6 176 535 | 5.98 | 808 | 1 179 316 | 23.15 | 670 | 1024 278 | 22.13 |
Uninsured | 15 898 | 12 652 313 | 11.78 | 141 | 150 641 | 2.78 | 445 | 494 688 | 6.61 | 18 823 | 17 560 626 | 17.01 | 79 | 111 348 | 2.19 | 143 | 182 460 | 3.94 |
Survey year | ||||||||||||||||||
2009 | 11 928 | 12 885 970 | 12.00 | 461 | 644 034 | 11.88 | 667 | 918 562 | 12.27 | 10 476 | 12 533 478 | 12.14 | 410 | 632 270 | 12.41 | 309 | 467 412 | 10.10 |
2010 | 10 752 | 13 019 930 | 12.13 | 430 | 613 064 | 11.30 | 604 | 937 259 | 12.52 | 9502 | 12 652 110 | 12.26 | 352 | 565 708 | 11.11 | 316 | 510 220 | 11.02 |
2011 | 11 569 | 13 257 408 | 12.35 | 482 | 706 518 | 13.03 | 605 | 832 032 | 11.11 | 10 208 | 12 642 315 | 12.25 | 409 | 648 623 | 12.73 | 343 | 551 007 | 11.91 |
2012 | 12 789 | 13 426 056 | 12.50 | 521 | 738 766 | 13.62 | 658 | 869 926 | 11.62 | 11 401 | 12 800 383 | 12.40 | 416 | 607 623 | 11.93 | 375 | 580 938 | 12.55 |
2013 | 12 077 | 13 453 874 | 12.53 | 455 | 676 793 | 12.48 | 605 | 960 243 | 12.82 | 10 718 | 12 929 583 | 12.53 | 360 | 596 691 | 11.71 | 354 | 642 027 | 13.87 |
2014 | 11 411 | 13 572 148 | 12.64 | 431 | 693 692 | 12.79 | 616 | 953 366 | 12.73 | 10 096 | 13 068 864 | 12.66 | 385 | 701 512 | 13.77 | 320 | 562 359 | 12.15 |
2015 | 11691 | 13 701 065 | 12.76 | 461 | 709 879 | 13.09 | 657 | 948 653 | 12.67 | 10 462 | 13 207 538 | 12.80 | 434 | 713 102 | 14.00 | 357 | 593 829 | 12.83 |
2018 | 10 220 | 14 055 044 | 13.09 | 475 | 640 312 | 11.81 | 774 | 1 067 471 | 14.26 | 8975 | 13 383 895 | 12.97 | 464 | 627 908 | 12.33 | 504 | 720 174 | 15.56 |
Number of comorbid conditions | ||||||||||||||||||
Zero | 37 082 | 41 266 220 | 38.43 | 463 | 635 535 | 11.72 | 686 | 1 036 269 | 13.84 | 34 072 | 39 686 930 | 38.45 | 243 | 338 627 | 6.65 | 304 | 490 832 | 10.61 |
One | 19 589 | 23 438 807 | 21.83 | 549 | 815 282 | 15.03 | 813 | 1 169 529 | 15.62 | 18 877 | 24 652 945 | 23.88 | 388 | 644 884 | 12.66 | 431 | 741 033 | 16.01 |
Two | 12 780 | 15 595 161 | 14.52 | 646 | 985 335 | 18.17 | 899 | 1 313 735 | 17.55 | 11 689 | 15 829 467 | 15.34 | 630 | 1 023 200 | 20.09 | 527 | 845 984 | 18.28 |
Three | 9382 | 11 465 780 | 10.68 | 647 | 987 588 | 18.21 | 903 | 1 355 629 | 18.11 | 7744 | 10 537 546 | 10.21 | 629 | 953 679 | 18.72 | 565 | 880 799 | 19.03 |
≥Four | 13 604 | 15 605 527 | 14.53 | 1411 | 1 999 317 | 36.87 | 1885 | 2 612 350 | 34.89 | 9456 | 12 511 279 | 12.12 | 1340 | 2 133 047 | 41.88 | 1051 | 1 669 318 | 36.07 |
Health status | ||||||||||||||||||
Fair/poor | 13 988 | 13 648 439 | 12.71 | 1071 | 1 310 864 | 24.17 | 1287 | 1 595 559 | 21.31 | 10 120 | 11 358 664 | 11.00 | 1005 | 1 391 303 | 27.32 | 633 | 939 360 | 20.30 |
Good | 28 319 | 30 347 707 | 28.26 | 1169 | 1 685 116 | 31.07 | 1656 | 2 268 204 | 30.29 | 23 425 | 27 903 465 | 27.03 | 1037 | 1 654 293 | 32.48 | 928 | 1 419 364 | 30.67 |
Very good/excellent | 50 130 | 63 375 348 | 59.02 | 1476 | 2 427 078 | 44.75 | 2243 | 3 623 750 | 48.40 | 48 293 | 63 956 038 | 61.96 | 1188 | 2 047 840 | 40.21 | 1317 | 2 269 241 | 49.03 |
The “single” category includes individuals who never married or were widowed, divorced or separated.
Abbreviations: NA, not applicable.
Statistical Analysis
Because our data consists of 3 types of participants (1) those without cancer (2) survivors with current cancer condition and (3) survivors with no current cancer condition, a substantial number of survey respondents had zero OOP expenditure. To account for the heterogeneous samples and zero inflation, we adopted a 2-part regression model. We used logistic regression as the first part to model the probability of incurring any expenditure and used generalized linear model regression with log link and gamma distribution as the second part to model the non-zero expenditure.28 This technique was used in the second part because the gamma distribution models the non-negative and right-skewed expenditure data appropriately, whereas the log link helps avoid retransformation.28 Also, we stratified the analyses by those with current cancers and those with no current cancer. Within each analysis, types of cancer were used as covariate.
We estimated the adjusted average OOP expenditure for several cancer types.29 A permutation test was used to estimate the P-values for the OOP expenditure difference for each category compared with the “No history of cancer” reference category.30 The permutation test is a nonparametric method which allowed us to construct the empirical null distribution of the incremental mean values for each cancer category with respect to the “No history of cancer” reference. P-values represent the statistical significance obtained using 1000 permutated replicates to test the hypothesis that the estimated average OOP expenditure for each cancer category is different than the “No history of cancer” category (2-sided P-value).30 We conducted the permutation test in several steps. First, we permuted the outcome variable (i.e., OOP expenditure) 1000 times. Then we estimated the average OOP expenditure for all 1000 permutated outcome variables by applying the 2-part model, which formed the empirical null distribution. Finally, 2-sided P-values were obtained by comparing the estimated OOP expenditure from the actual data with the empirical null distribution generated through permutation. We conducted analyses by stratifying our sample by “current cancer condition” and “no current cancer condition” status. All analyses for male and female survivors were conducted separately.
To compare the differences in cancer-attributable OOP expenditure between female and male survivors, we first subtracted the estimated OOP expenditure for the “No history of cancer” category from each cancer type for women and men separately. Subtracting these cancer-attributable OOP expenditure values for men from the respective values for women yielded the incremental cancer-attributable OOP expenditures for each cancer type. The P-values were obtained by comparing these differences in estimated OOP expenditures between women and men to the respective differences in 1000 replicate data.
All analyses were conducted in SAS 9.4 (SAS Institute, Cary, NC; RRID:SCR_008567) and Stata15 (StataCorp, College Station, TX; RRID:SCR_012763) software, and 2-sided P < 0.05 was considered statistically significant. We incorporated survey weights in all our descriptive and covariate adjusted analyses and employed survey specific commands (i.e., svyset and svy: prefix) in Stata.
Data Availability
MEPS data analyzed in this study are publicly available from the Agency for Healthcare Research and Quality website at: https://meps.ahrq.gov/data_stats/download_data_files.jsp.
RESULTS
Characteristics of the Study Sample
Our study sample included 189 285 adult individuals (weighted N = 233 221 635) with an average age of 46.61 years. The weighted percentage of non-Hispanic White, non-Hispanic Black, Hispanic, and other race/ethnicity was 64.88%, 11.83%, 15.35%, and 7.95%, respectively. The study sample included 15 010 cancer survivors (weighted n = 22 631 973) with average age of 63.99 years. Among the cancer survivors, the weighted percentage of non-Hispanic White, non-Hispanic Black, Hispanic, and other race/ethnicity was 84.78%, 6.19%, 5.78%, and 3.25%, respectively. Of the cancer survivors, 10.57% (weighted percentage) did not have any high school diploma and 28.27% lived below 200% of the federal poverty level.
The average age of the female cancer survivors (62.44 years) was lower than the average age of the male survivors (66.06 years). Among the 8902 (weighted n = 12 910 571) female survivors, 42% had a current cancer condition; among the 6108 (weighted n = 9 721 402) male survivors, 52.39% had a current cancer condition.
Table 1 illustrates the sociodemographic characteristics of the study sample stratified by sex and cancer status (i.e., no history of cancer, current cancer condition, no current cancer condition). The percentage of non-Hispanic White respondents was similar between survivors with a current cancer condition (female 82.18%, male 85.71%) and survivors with no current cancer condition (female 84.41%, male 87.37%), whereas it was lower among those with no history of cancer (female 62.41%, male 63.09%). There was no substantial difference in educational attainment between respondents with a current cancer condition vs no current cancer condition among either female or male cancer survivors. Most cancer survivors had income ≥ 400% of the federal poverty level, with a higher percentage of male survivors (current cancer condition 51.60%, no current cancer condition 50.21%) in this category compared with female survivors (current cancer condition 43.10%, no current cancer condition 38.99%). Although the uninsured rate was similar among female and male survivors with a current cancer condition, among the survivors with no current cancer condition, more women (6.61%) were uninsured than men (3.94%).
Estimated Out-of-Pocket Expenditure Among Female Cancer Survivors
Among female cancer survivors with a current cancer condition, those with breast cancer ($1730, P <0.001), lung cancer ($1679, P = 0.009), colon cancer ($1595, P = 0.010), melanoma ($1783, P = 0.002), non-Hodgkin’s lymphoma ($1656, P = 0.018), nonmelanoma skin cancer (NMSC)/other skin cancer ($2118, P <0.001), and two or more cancers ($2310, P <0.001) had statistically significantly higher OOP expenditures compared to the females with no history of cancer ($853); however, the difference was not statistically significant for females with a current cervical cancer condition ($882, P = 0.855) (Table 2).
Table 2.
Cancer Status and Type | Current Cancer Condition |
No Current Cancer Condition |
||
---|---|---|---|---|
Average out-of-pocket expenditures, $USb | P c | Average out-of-pocket expenditures, $USb | P c | |
No history of cancer [Reference] | 853 | 857 | ||
Cervical cancer | 882 | .855 | 1207 | .007 |
Breast cancer | 1730 | <.001 | 1364 | <.001 |
Lung cancer | 1679 | .009 | 1131c | .322 |
Colon cancer | 1595 | .010 | 1142 | .083 |
Melanoma | 1783 | .002 | 1396 | .015 |
Non-Hodgkin’s lymphoma | 1656 | .018 | 1216 | .126 |
Nonmelanoma/other skin cancer | 2118 | <.001 | 1506 | <.001 |
Bladder cancer | 1848d | .024 | 1015c | .650 |
Other/unspecified | 1621 | <.001 | 1106 | .008 |
≥Two cancers | 2310 | <.001 | 1578 | .007 |
Estimates were obtained from survey weighted and covariate-adjusted analysis of pooled Medical Expenditure Panel Survey data for the years 2009-2015 and 2018. The dollar values were inflation-adjusted to 2018 US dollars using the Consumer Price Index (CPI).
Estimated average out-of-pocket expenditure by applying the 2-part regression model to specific cancer subtypes. Each model was adjusted for age, cancer status and type, race/ethnicity, marital status, educational attainment, income level, insurance status, survey year, number of comorbid conditions, and self-reported health status.
P-value represents the statistical significance obtained using 1000 permutated replicates to test the hypothesis that the estimated average out-of-pocket expenditure for each cancer category is different than the “‘No history of cancer” category (2-sided P-value). Each replicate model was adjusted for the same set of predictors as the base model, and the dependent variable, out-of-pocket expenditure, was permuted for each replicate analyses.
Unweighted sample size less than 60
Among female cancer survivors with no current cancer condition, those with cervical cancer ($1207, P = 0.007), breast cancer ($1364, P <0.001), melanoma ($1396, P = 0.015), NMSC/other skin cancer ($1506, P <0.001), and two or more cancers ($1578, P = 0.007) had significantly higher OOP expenditures compared with the females with no history of cancer ($857) (Table 2).
Estimated Out-of-Pocket Expenditure Among Male Cancer Survivors
Among male cancer survivors with a current cancer condition, those with prostate cancer ($1457, P <0.001), lung cancer ($1131, P = 0.027), colon cancer ($1471, P = 0.001), melanoma ($1474, P <0.001), non-Hodgkin’s lymphoma ($1653, P = 0.005), NMSC/other skin cancer ($1789, P <0.001), bladder cancer ($2157, P <0.001), and two or more cancers ($2641, P <0.001) had statistically significantly higher OOP expenditures than men with no history of cancer ($621) (Table 3).
Table 3.
Cancer Status and Type | Current Cancer Condition |
No Current Cancer Condition |
||
---|---|---|---|---|
Average out-of-pocket expenditures, $USb | P c | Average out-of-pocket expenditures, $USb | P c | |
No history of cancer [Reference] | 621 | 621 | ||
Prostate cancer | 1457 | <.001 | 1152 | .002 |
Lung cancer | 1131 | .027 | 1323d | .031 |
Colon cancer | 1471 | .001 | 966 | .028 |
Melanoma | 1474 | <.001 | 1351 | .001 |
Non-Hodgkin’s lymphoma | 1653 | .005 | 646 | .916 |
Nonmelanoma/other skin cancer | 1789 | <.001 | 1478 | <.001 |
Bladder cancer | 2157 | <.001 | 1321 | .019 |
Other/unspecified | 2255 | <.001 | 1080 | .003 |
≥ Two cancers | 2642 | <.001 | 1433 | .009 |
Estimates were obtained from survey weighted and covariate adjusted analysis of pooled Medical Expenditure Panel Survey data for the years 2009-2015 and 2018. The dollar values were inflation-adjusted to 2018 US dollars using the Consumer Price Index (CPI).
Estimated average out-of-pocket expenditure by applying the 2-part regression model to specific cancer subtypes. Each model was adjusted for age, cancer status and types, race/ethnicity, marital status, educational attainment, income level, insurance status, survey year, number of comorbid conditions, and self-reported health status.
P-value represents the statistical significance obtained using 1000 permutated replicates to test the hypothesis that the estimated average out-of-pocket expenditure for each cancer category is different than “‘No history of cancer” category (2-sided P-value). Each replicate model was adjusted for the same set of predictors as the base model, and the dependent variable, out-of-pocket expenditure, was permuted for each replicate analyses.
Unweighted sample size less than 60
Among male cancer survivors with no current cancer condition, those with prostate cancer ($1152, P = 0.002), colon cancer ($966, P = 0.028), melanoma ($1351, P <0.001), NMSC/other skin cancer ($1478, P <0.001), bladder cancer ($1321, P = 0.019), and two or more cancers ($1433, P = 0.009) had significantly higher OOP expenditures compared with men with no history of cancer ($621) (Table 3).
Differences in Cancer-Attributable Out-of-Pocket Expenditures Among Female Cancer Survivors Compared with Male Cancer Survivors
Table 4 shows incremental cancer-attributable OOP expenditures for female cancer survivors compared with male cancer survivors. Among survivors with current cancer condition, cancer-attributable OOP expenditures for females with two or more cancers was significantly lower than for males with two or more cancers (difference in cancer attributable OOP = −$564, P = 0.021). Among cancer survivors with no current cancer condition, cancer-attributable OOP expenditures for females with NMSC/other skin cancer was significantly lower than for males with NMSC/other skin cancer (difference in cancer attributable OOP = −$208, P = 0.044) (Table 4).
Table 4.
Cancer Status and Type | Current Cancer Condition |
No Current Cancer Condition |
||
---|---|---|---|---|
Incremental cancer-attributable average out-of-pocket expenditure, $USa | P b | Incremental cancer-attributable average out-of-pocket expenditure, $USa | P b | |
Lung cancer | 316 | 236 | −428 | .264 |
Colon cancer | −108 | 638 | −60 | .765 |
Melanoma | 77 | 693 | −191 | .263 |
Non-Hodgkin’s lymphoma | −229 | .368 | 334 | .271 |
Nonmelanoma/other skin cancer | 97 | .364 | −208 | .044 |
Bladder cancer | −541 | .119 | −542 | .180 |
Other/unspecified | −866 | <.001 | −210 | .061 |
≥ Two cancers | −564 | .021 | −91 | .669 |
Cancer attributable incremental per year out-of-pocket (OOP) expenditure values were obtained by deducting cancer attributable OOP expenditure values for males from the respective values for women for each cancer type. Negative sing means that the cancer attributable OOP expenditure for women was lower than for men.
P-value represents the statistical significance obtained using 1000 permutated replicates to test the hypothesis that for each specific cancer type the cancer attributable average OOP expenditures for female survivors are different from those of male survivors.
DISCUSSION
In this nationally representative study, we estimated average total per year OOP expenditures for several common cancer types among survivors with current and no current cancer conditions. Our results show that the OOP expenditures among survivors with a current cancer condition of breast cancer (female only), prostate cancer (male only), lung cancer, colon cancer, melanoma, non-Hodgkin’s lymphoma, NMSC/other skin cancer, bladder cancer, and two or more cancers were significantly higher than the OOP expenditures among individuals with no history of cancer of respective sex. These differences were observed in female survivors with breast cancer; male survivors with prostate, lung, colon and bladder cancer; and survivors of both sexes with melanoma, NMSC/other skin cancer, and two or more cancers even when survivors had no current cancer condition. Among women with cervical cancer, average OOP expenditure was not significantly higher for those with a current cancer condition compared to women with no history of cancer; however, it was higher for those with no current cancer condition compared to women with no history of cancer.
As expected, we observed higher OOP expenditure among survivors with a current cancer condition compared with those with no current cancer for most cancer types (except cervical cancer). The higher OOP estimates are likely attributable to the greater healthcare needs among individuals recently diagnosed with cancer.31, 32 Cancer treatment incurs its highest costs in the initial and terminal phases of care, and the cost is usually lower in the continuing phase. In addition to cancer-related care, additional health service needs, such as home healthcare and mental healthcare, are elevated among recently diagnosed survivors. According to Chesney et al, home healthcare is utilized by 43.7% of elderly cancer survivors in the first month after surgery, and the percentage decreases to 12.6% 5 years after surgery.33 The initial treatment cost, coupled with the elevated supportive healthcare needs, may have resulted in the higher OOP expenditures reported in our study among those with a current cancer condition.
One notable finding in our study is that the OOP expenditures for survivors with no current cancer condition for several cancer types (breast cancer among women; prostate, lung, colon, and bladder cancers among men; and melanoma, NMSC/other skin cancer, and two or more cancers among both sexes) were significantly higher compared to those with no cancer history. This finding highlights the persistence of higher healthcare spending among survivors who do not currently experience cancer or actively receive treatment for cancer. Although the maintenance phase of cancer care may incur lower costs than the initial phase,31 long-term cancer survivors may still experience heightened health needs due to several persistent psychological and physiological conditions. Compared with the general population, significantly higher depression and anxiety have been reported among younger (<60 years) long-term cancer survivors.34 Although the literature on depression and anxiety related to OOP burden in cancer survivors is lacking, total financial burden is well reported.35, 36 Diagnosis of depression results in around 32% higher total expenditures among cancer survivors,35 which may be associated with higher OOP expenditure. In addition to mental healthcare, supportive services such as home healthcare are used by more than 12% of long-term cancer survivors.33 The persistent mental and home healthcare needs are possible reasons for the higher OOP expenditures among long-term survivors with no current cancer condition.
An interesting finding in our study was that OOP expenditure among women with a current cervical cancer condition was not significantly higher than women without a history of cancer. A possible explanation for this finding may be the way the treatment-related cost is transferred to the survivors by the insurers. Although extensive treatment may be required for cervical cancer,37, 38 the insurers transfer only a fraction of the total treatment-related costs to the patients.39 Blanco et al reported that the median OOP cost for commercially insured women with cervical cancer in the first 12 months after diagnosis was $2253, which was only 3.9% of the total treatment-related cost.39 This lower cost transfer to recently diagnosed cervical cancer patients may help explain the reduced OOP burden on this subgroup.
In contrast, we found that OOP expenditure for cervical cancer survivors with no current cancer was significantly higher than the OOP expenditure for women without a cancer history. Substantial physiological and psychological needs40–43 demonstrated by long-term cervical cancer survivors may explain this finding. Long-term cervical cancer survivors experience several physiological issues, many of which are associated with treatment interventions in the pelvic region.40 Treatment-related adverse events include bladder dysfunction, gastrointestinal complications, sexual dysfunction, and lymphedema.40–43 Bladder symptoms are very common, with 96.2% of cervical and endometrial cancer survivors reporting bladder storage issues and 82.7% reporting incontinence issues 1 year after treatment, and these percentages are significantly higher than in people with no cancer history.40, 41 In addition, lymphedema, chronic radiation proctitis with late onset, and sexual dysfunction may affect long-term cervical cancer survivors.40, 42 The clinical care related to these physiological conditions is the most likely cause of higher OOP burden observed in this subgroup. This finding underscores the need to provide financial support to cervical cancer survivors even when they are a few years removed from their cancer diagnosis.
Similar to cervical cancer, lymphedema is observed in more than 40% of breast cancer survivors and in lower percentages among several other cancers.44 Additionally, chronic radiation proctitis is observed in prostate, urinary bladder, uterine, and anal cancers, where radiation therapy poses a risk of rectum injury.45 In our study, some of these cancer types, namely breast cancer (women) and prostate and bladder cancers (men), among survivors with no current cancer condition demonstrated significantly higher OOP expenditures compared with individuals without a cancer history. This is an indication that the long-term adverse effects related to cancer treatment may prevent cancer survivors’ OOP costs from returning to their pre-cancer level. Specific aspects of these long-term adverse effects causing higher OOP costs should be investigated further in future research.
In addition to total OOP expenses incurred by female and male survivors separately, we investigated incremental cancer-attributable costs for female survivors compared with male survivors. We observed significantly lower cancer-attributable OOP expenditures for female survivors only among those with two or more cancers (among survivors with current cancer) and NMSC/other skin cancer (among survivors with no current cancer). These results suggest that sex does not play a significant role in OOP expenditure variations across most cancer types.
Significance of Findings/Policy Implications
Cancer is physically and psychologically debilitating, and it reduces survivor’s ability and engagement to work. Considering this aspect of cancer, it is vitally important to adopt policy actions targeting the most vulnerable survivors. A good example of a federal initiative to alleviate financial distress related to cancer screening and diagnosis is the National Breast and Cervical Cancer Early Detection Program (NBCCEDP). This program reduces financial barriers related to breast and cervical cancer screening and diagnosis among underserved women and provides Medicaid access after diagnosis. Public health interventions similar to the NBCCEDP for other cancer types could lessen the financial burden on a substantial number of cancer survivors. To implement such interventions for other cancers in a cost-efficient manner, providing targeted assistance to the individuals with most in need is of vital importance. Targeting long-term survivors with financial intervention is equally important as targeting the survivors with current cancer because both groups may experience high OOP burden depending on the cancer type. To that extent, our study reports the specific cancer types with high OOP expenditures among survivors with current and no current cancer across both sexes, which may help identify the most financially vulnerable cancer survivors.
Strengths and Limitations
Our study was conducted using nationally representative data, which is a strength of this study. Despite this strength of our study, there are a few limitations. First, although based on nationally representative general adult population, the study may not be representative of cancer survivors because survey participants are usually a self-selected group in the general population and they are generally healthier than the non-participants.46 The self-reported nature of MEPS carries a possibility of recall bias;47 however, possibilities of self-selection bias prevalent in web surveys48 is potentially reduced through the implementation of personal interviews49 with a population-representative complex survey design in MEPS. Second, the cost amounts might also be underestimated in MEPS due to the self-reported nature of the survey;50, 51 however, a subset of the responses were verified by MEPS with healthcare providers data.19 , Third, we were unable to incorporate cancer-related clinical information (e.g., age at diagnosis, time since diagnosis, stage) in our analyses due to the unavailability of those variables in MEPS. Finally, we had to exclude 2016 and 2017 data because CCS codes were not available for those years. Despite these limitations, MEPS is a valuable data source because it is the only nationally representative survey that collects healthcare utilization and expenditure data in the United States.50–52
CONCLUSION
We estimated the OOP expenditures for female and male survivors for several cancer types across current vs no current cancer conditions. Financial distress affects all aspects of life for cancer survivors, from negatively affecting the purchase of basic necessities like food to contributing as a risk factor for mortality.53 Amidst an ongoing discussion on financial toxicity of cancer, several interventions to alleviate the OOP burden on the survivors have been suggested.54, 55 Our study highlights that the financial distress varies across cancer types among the survivors with and without a current cancer condition. This highlights the need for targeted intervention to alleviate the burden on most financially vulnerable cancer survivors. Our findings will inform policy discussions around the financial toxicity of cancer and help formulate targeted interventions.
Statement of significance.
Our study found that out-of-pocket expenditures among survivors with a current cancer condition for several cancers were significantly higher than that of individuals without a cancer history. These differences persisted in female with breast cancer; male with prostate, lung, colon and bladder cancer; and survivors of both sexes with melanoma, and nonmelanoma/other skin cancer, even after there was no current cancer condition.
AKNOWLEDGEMENT
This study was supported by the National Cancer Institute grant 5P30CA016672 (Sanjay Shete, PhD), the Duncan Family Institute for Cancer Prevention and Risk Assessment (Sanjay Shete, PhD), the Betty B. Marcus Chair in Cancer Prevention (Sanjay Shete, PhD) and a Cancer Prevention Fellowship supported by the Cancer Prevention and Research Institute of Texas (CPRIT) grant award, RP170259 (to Mohammad A. Karim, PhD; PI: Shine Chang, PhD and Sanjay Shete, PhD). The study funders had no role in the design and conduct of the study; collection, management, analysis, and interpretation of the data; preparation, review, or approval of the manuscript; and decision to submit the manuscript for publication.
No other financial disclosures were reported by authors.
Editorial support was provided by Bryan Tutt, Scientific Editor, Research Medical Library, The University of Texas MD Anderson Cancer Center
Footnotes
Conflict of Interest statement: The authors declare no potential conflicts of interest.
REFERENCES
- 1.Siegel RL, Miller KD, Fuchs HE, Jemal A. Cancer statistics, 2021. CA Cancer J Clin. Jan 2021;71(1):7–33. doi: 10.3322/caac.21654 [DOI] [PubMed] [Google Scholar]
- 2.Zafar SY, Peppercorn JM, Schrag D, et al. The financial toxicity of cancer treatment: a pilot study assessing out-of-pocket expenses and the insured cancer patient’s experience. Oncologist. 2013;18(4):381–90. doi: 10.1634/theoncologist.2012-0279 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 3.Carrera PM, Kantarjian HM, Blinder VS. The financial burden and distress of patients with cancer: Understanding and stepping-up action on the financial toxicity of cancer treatment. CA Cancer J Clin. Mar 2018;68(2):153–165. doi: 10.3322/caac.21443 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 4.Chino F, Peppercorn JM, Rushing C, et al. Out-of-pocket costs, financial distress, and underinsurance in cancer care. JAMA oncology. Nov 1 2017;3(11):1582–1584. doi: 10.1001/jamaoncol.2017.2148 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 5.Karim MA, Singal AG, Ohsfeldt RL, Morrisey MA, Kum H-C. Health services utilization, out-of-pocket expenditure, and underinsurance among insured non-elderly cancer survivors in the United States, 2011–2015. Cancer Medicine. 2021;10(16):5513–5523. doi: 10.1002/cam4.4103 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 6.Ekwueme DU, Zhao J, Rim SH, et al. Annual out-of-pocket expenditures and financial hardship among cancer survivors aged 18–64 years - United States, 2011–2016. MMWR Morbidity and mortality weekly report. Jun 7 2019;68(22):494–499. doi: 10.15585/mmwr.mm6822a2 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 7.Miller KD, Nogueira L, Mariotto AB, et al. Cancer treatment and survivorship statistics, 2019. CA Cancer J Clin. Sep 2019;69(5):363–385. doi: 10.3322/caac.21565 [DOI] [PubMed] [Google Scholar]
- 8.Bernat JK, Wittman DA, Hawley ST, et al. Symptom burden and information needs in prostate cancer survivors: a case for tailored long-term survivorship care. BJU Int. Sep 2016;118(3):372–8. doi: 10.1111/bju.13329 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 9.Arndt V, Koch-Gallenkamp L, Jansen L, et al. Quality of life in long-term and very long-term cancer survivors versus population controls in Germany. Acta Oncol. Feb 2017;56(2):190–197. doi: 10.1080/0284186X.2016.1266089 [DOI] [PubMed] [Google Scholar]
- 10.Cramer JD, Johnson JT, Nilsen ML. Pain in head and neck cancer survivors: prevalence, predictors, and quality-of-life impact. Otolaryngol Head Neck Surg. Nov 2018;159(5):853–858. doi: 10.1177/0194599818783964 [DOI] [PubMed] [Google Scholar]
- 11.McDowell LJ, Rock K, Xu W, et al. Long-term late toxicity, quality of life, and emotional distress in patients with nasopharyngeal carcinoma treated with intensity modulated radiation therapy. Int J Radiat Oncol Biol Phys. Oct 1 2018;102(2):340–352. doi: 10.1016/j.ijrobp.2018.05.060 [DOI] [PubMed] [Google Scholar]
- 12.Yi JC, Syrjala KL. Anxiety and depression in cancer survivors. Med Clin North Am. Nov 2017;101(6):1099–1113. doi: 10.1016/j.mcna.2017.06.005 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 13.Sullivan J, Thornton Snider J, van Eijndhoven E, Okoro T, Batt K, DeLeire T. The well-being of long-term cancer survivors. Am J Manag Care. Apr 2018;24(4):188–195. [PubMed] [Google Scholar]
- 14.Guy GP Jr., Ekwueme DU, Yabroff KR, et al. Economic burden of cancer survivorship among adults in the United States. J Clin Oncol. Oct 20 2013;31(30):3749–57. doi: 10.1200/JCO.2013.49.1241 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 15.Short PF, Moran JR, Punekar R. Medical expenditures of adult cancer survivors aged <65 years in the United States. Cancer. Jun 15 2011;117(12):2791–800. doi: 10.1002/cncr.25835 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 16.Agency for Healthcare Research and Quality. MEPS HC-207: 2018 Medical Conditions. Updated August 2020. Accessed January 19, 2021, https://meps.ahrq.gov/data_stats/download_data/pufs/h207/h207doc.shtml
- 17.Williams JS, Bishu K, Dismuke CE, Egede LE. Sex differences in healthcare expenditures among adults with diabetes: evidence from the medical expenditure panel survey, 2002–2011. BMC Health Serv Res. Apr 11 2017;17(1):259. doi: 10.1186/s12913-017-2178-3 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 18.Cohen JW, Cohen SB, Banthin JS. The medical expenditure panel survey: a national information resource to support healthcare cost research and inform policy and practice. Medical care. 2009:S44–S50. [DOI] [PubMed] [Google Scholar]
- 19.Agency for Healthcare Research and Quality. MEPS HC-209: 2018 Full Year Consolidated Data File. Updated August 2020. Accessed January 19, 2021, https://meps.ahrq.gov/data_stats/download_data/pufs/h209/h209doc.shtml
- 20.Agency for Healthcare Research and Quality. MEPS-HC Panel Design and Collection Process. Updated n.d. Accessed March 25, 2021, https://www.meps.ahrq.gov/survey_comp/hc_data_collection.jsp
- 21.Chowdhury SR, Machlin SR, Gwet KL. Methodology Report# 33: Sample Designs of the Medical Expenditure Panel Survey Household Component, 1996-2006 and 2007-2016. Updated n.d. Accessed September 21, 2021, https://meps.ahrq.gov/data_files/publications/mr33/mr33.shtml
- 22.Agency for Healthcare Research and Quality. MEPS HC-036: 1996–2018 Pooled Linkage File for Common Variance Structure. Updated July 2020. Accessed January 27, 2021, https://www.meps.ahrq.gov/data_stats/download_data/pufs/h36/h36u18doc.pdf
- 23.Agency for Healthcare Research and Quality. MEPS Priority Condition Enumeration (PE) Section - 2018. Updated n.d. Accessed January 27, 2021, https://meps.ahrq.gov/survey_comp/hc_survey/2018/PE-2018.pdf
- 24.Dunn A, Grosse SD, Zuvekas SH. Adjusting health expenditures for inflation: a review of measures for health services research in the United States. Health Serv Res. Feb 2018;53(1):175–196. doi: 10.1111/1475-6773.12612 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 25.Aizcorbe A, Liebman E, Pack S, Cutler DM, Chernew ME, Rosen AB. Measuring health care costs of individuals with employer-sponsored health insurance in the U.S.: A comparison of survey and claims data. Stat J IAOS. 2012;28(1–2):43–51. doi: 10.3233/SJI-2012-0743 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 26.Park J, Look KA. Health Care Expenditure Burden of Cancer Care in the United States. Inquiry. Jan-Dec 2019;56:1–8. doi: 10.1177/0046958019880696 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 27.Bernard DS, Farr SL, Fang Z. National estimates of out-of-pocket health care expenditure burdens among nonelderly adults with cancer: 2001 to 2008. J Clin Oncol. Jul 10 2011;29(20):2821–6. doi: 10.1200/JCO.2010.33.0522 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 28.Deb P, Norton EC. Modeling health care expenditures and use. Annu Rev Public Health. 2018/04/01 2018;39(1):489–505. doi: 10.1146/annurev-publhealth-040617-013517 [DOI] [PubMed] [Google Scholar]
- 29.Williams R Using the margins command to estimate and interpret adjusted predictions and marginal effects. Stata Journal. 2012;12(2):308–331. doi: [DOI] [Google Scholar]
- 30.Anderson MJ. Permutation tests for univariate or multivariate analysis of variance and regression. Can J Fish Aquat Sci. 2001;58(3):626–639. doi: 10.1139/cjfas-58-3-626 [DOI] [Google Scholar]
- 31.Yabroff KR, Lund J, Kepka D, Mariotto A. Economic burden of cancer in the United States: estimates, projections, and future research. Cancer Epidemiol Biomarkers Prev. Oct 2011;20(10):2006–14. doi: 10.1158/1055-9965.EPI-11-0650 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 32.Jacobson JO, Rotenstein LS, Berry LL. New Diagnosis Bundle: Improving Care Delivery for Patients With Newly Diagnosed Cancer. Journal of oncology practice. May 2016;12(5):404–6. doi: 10.1200/JOP.2016.011163 [DOI] [PubMed] [Google Scholar]
- 33.Chesney TR, Haas B, Coburn NG, et al. Immediate and Long-Term Health Care Support Needs of Older Adults Undergoing Cancer Surgery: A Population-Based Analysis of Postoperative Homecare Utilization. Ann Surg Oncol. Mar 2021;28(3):1298–1310. doi: 10.1245/s10434-020-08992-8 [DOI] [PubMed] [Google Scholar]
- 34.Gotze H, Friedrich M, Taubenheim S, Dietz A, Lordick F, Mehnert A. Depression and anxiety in long-term survivors 5 and 10 years after cancer diagnosis. Support Care Cancer. Jan 2020;28(1):211–220. doi: 10.1007/s00520-019-04805-1 [DOI] [PubMed] [Google Scholar]
- 35.Pan X, Sambamoorthi U. Health care expenditures associated with depression in adults with cancer. J Community Support Oncol. Jul 2015;13(7):240–7. doi: 10.12788/jcso.0150 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 36.Jeffery DD, Linton A. The impact of depression as a cancer comorbidity: rates, health care utilization, and associated costs. Community Oncol. 2012;9(7):216–221. doi: 10.1016/j.cmonc.2012.06.002 [DOI] [Google Scholar]
- 37.Cho O, Chun M. Management for locally advanced cervical cancer: new trends and controversial issues. Radiat Oncol J. Dec 2018;36(4):254–264. doi: 10.3857/roj.2018.00500 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 38.Melamed A, Ramirez PT. Changing treatment landscape for early cervical cancer: outcomes reported with minimally invasive surgery compared with an open approach. Curr Opin Obstet Gynecol. Feb 2020;32(1):22–27. doi: 10.1097/GCO.0000000000000598 [DOI] [PubMed] [Google Scholar]
- 39.Blanco M, Chen L, Melamed A, et al. Cost of care for the initial management of cervical cancer in women with commercial insurance. Am J Obstet Gynecol. Mar 2021;224(3):286 e1–286 e11. doi: 10.1016/j.ajog.2020.08.039 [DOI] [PubMed] [Google Scholar]
- 40.Pfaendler KS, Wenzel L, Mechanic MB, Penner KR. Cervical cancer survivorship: long-term quality of life and social support. Clin Ther. Jan 1 2015;37(1):39–48. doi: 10.1016/j.clinthera.2014.11.013 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 41.Donovan KA, Boyington AR, Judson PL, Wyman JF. Bladder and bowel symptoms in cervical and endometrial cancer survivors. Psycho-Oncology. 2014;23(6):672–678. doi: 10.1002/pon.3461 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 42.Mirabeau-Beale KL, Viswanathan AN. Quality of life (QOL) in women treated for gynecologic malignancies with radiation therapy: A literature review of patient - reported outcomes. Gynecol Oncol. 2014/08/01/ 2014;134(2):403–409. doi: 10.1016/j.ygyno.2014.05.008 [DOI] [PubMed] [Google Scholar]
- 43.Osann K, Hsieh S, Nelson EL, et al. Factors associated with poor quality of life among cervical cancer survivors: implications for clinical care and clinical trials. Gynecol Oncol. Nov 2014;135(2):266–72. doi: 10.1016/j.ygyno.2014.08.036 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 44.Shaitelman SF, Cromwell KD, Rasmussen JC, et al. Recent progress in the treatment and prevention of cancer-related lymphedema. CA Cancer J Clin. Jan-Feb 2015;65(1):55–81. doi: 10.3322/caac.21253 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 45.Vanneste BG, Van De Voorde L, de Ridder RJ, Van Limbergen EJ, Lambin P, van Lin EN. Chronic radiation proctitis: tricks to prevent and treat. Int J Colorectal Dis. Oct 2015;30(10):1293–303. doi: 10.1007/s00384-015-2289-4 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 46.Keyes KM, Rutherford C, Popham F, Martins SS, Gray L. How Healthy Are Survey Respondents Compared with the General Population?: Using Survey-linked Death Records to Compare Mortality Outcomes. Epidemiology (Cambridge, Mass). Mar 2018;29(2):299–307. doi: 10.1097/EDE.0000000000000775 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 47.Althubaiti A Information bias in health research: definition, pitfalls, and adjustment methods. J Multidiscip Healthc. 2016;9:211–7. doi: 10.2147/JMDH.S104807 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 48.Bethlehem J Selection Bias in Web Surveys. International Statistical Review. 2010;78(2):161–188. doi: 10.1111/j.1751-5823.2010.00112.x [DOI] [Google Scholar]
- 49.Szolnoki G, Hoffmann D. Online, face-to-face and telephone surveys—Comparing different sampling methods in wine consumer research. Wine Economics and Policy. 2013/12/01/ 2013;2(2):57–66. doi: 10.1016/j.wep.2013.10.001 [DOI] [Google Scholar]
- 50.Zuvekas SH, Olin GL. Accuracy of Medicare expenditures in the medical expenditure panel survey. Inquiry. Spring 2009;46(1):92–108. doi: 10.5034/inquiryjrnl_46.01.92 [DOI] [PubMed] [Google Scholar]
- 51.Hill SC, Zuvekas SH, Zodet MW. Implications of the accuracy of MEPS prescription drug data for health services research. Inquiry. Fall 2011;48(3):242–59. doi: 10.5034/inquiryjrnl_48.03.04 [DOI] [PubMed] [Google Scholar]
- 52.Agency for Healthcare Research and Quality. Medical Expenditure Panel Survey (MEPS). Updated August 2021. Accessed September 21, 2021, https://www.ahrq.gov/data/meps.html
- 53.Ramsey SD, Bansal A, Fedorenko CR, et al. Financial insolvency as a risk factor for early mortality among patients with cancer. J Clin Oncol. Mar 20 2016;34(9):980–6. doi: 10.1200/JCO.2015.64.6620 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 54.Shankaran V, Ramsey S. Addressing the financial burden of cancer treatment: from copay to can’t pay. JAMA oncology. Jun 2015;1(3):273–4. doi: 10.1001/jamaoncol.2015.0423 [DOI] [PubMed] [Google Scholar]
- 55.Zafar SY, Newcomer LN, McCarthy J, Fuld Nasso S, Saltz LB. How Should We Intervene on the Financial Toxicity of Cancer Care? One Shot, Four Perspectives. Am Soc Clin Oncol Educ Book. 2017;37:35–39. doi: 10.1200/EDBK_174893 [DOI] [PubMed] [Google Scholar]
Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Data Availability Statement
MEPS data analyzed in this study are publicly available from the Agency for Healthcare Research and Quality website at: https://meps.ahrq.gov/data_stats/download_data_files.jsp.