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. Author manuscript; available in PMC: 2014 Jul 14.
Published in final edited form as: J Am Coll Surg. 2013 Feb 13;216(4):774–781. doi: 10.1016/j.jamcollsurg.2012.12.036

Does Enrollment in Cancer Trials Improve Survival?

Christopher J Chow 1,*, Elizabeth B Habermann 2, Anasooya Abraham 1, Yanrong Zhu 1, Selwyn M Vickers 1, David A Rothenberger 1, Waddah B Al-Refaie 3
PMCID: PMC4096556  NIHMSID: NIHMS459424  PMID: 23415510

Abstract

Background

Stakeholders derive many benefits from cancer clinical trials, including guidance for future oncologic treatment decisions. However, whether enrollment in cancer trials also improves patient survival independently of trial outcomes remains under-investigated. We hypothesized that cancer trial enrollment is not associated with patient survival outcomes.

Methods

Using the 2002–2008 California Cancer Registry, we identified 555,469 patients with stage I–IV solid organ tumors. Baseline characteristics were compared by trial participation status. Logistic regression determined predictors of trial enrollment. Multivariate Cox proportional hazards regression examined the impact of trial participation on overall and cancer specific mortality with adjustment for covariates.

Results

Only 0.33% of our cohort was enrolled in clinical trials. Trial participants were likely to be younger than 65 (OR 2.13; 95% CI 1.90–2.38), Hispanic rather than non-Hispanic white (OR 0.78; 95% CI 0.67–0.90) and have breast cancer (OR 3.14; 95% CI 2.62–3.77). Multivariate survival analyses demonstrated that enrollment in cancer trials predicted a lower hazard of death. However, when stratified by disease site, this survival benefit was only observed in lung, colon and breast cancers (Table). Sensitivity and interaction analyses confirmed these relationships.

Conclusions

In this first population-based study examining trial effect in solid organ cancers, enrollment into cancer trials predicted lower overall and cancer specific mortality among common cancer sites. While these findings may demonstrate a survival benefit due to trial enrollment, they likely also reflect the favorable attributes of trial enrollees. Once corroborated, stakeholders must consider broader cancer trial designs representative of the cancer burden treated in the real world.

INTRODUCTION

Randomized clinical trials (RCTs) provide superior evidence to help establish which treatments will benefit cancer patients. By their design, they help minimize the impact that both confounding and certain types of bias can have on reported results. RCTs remain the gold standard method to evaluate whether novel treatments are efficacious, and therefore, tremendous resources are devoted to their conduct. The ultimate goal of these efforts is to improve the survival of all cancer patients, but this requires generalizability and the implementation of trial findings into everyday practice.

To date, cancer clinical trials in the United States are faced with significant challenges. Accrual to clinical trials remains quite poor, and trial enrollees tend to be white, younger in age, insured and breast cancer patients 15. As a result, the generalizability of cancer clinical trials to real world settings has been questioned68. Proponents of clinical trials often encourage patient participation due to perception of enrollment benefit. However, whether enrollment in cancer trials actually improves patient survival independently of treatment outcomes remains under-investigated. Some investigations have observed a cancer clinical trial effect 912 while others have not 1316. Unfortunately, this question of trial effect does not lend itself to be tested in a direct experimental manner due to ethical concerns 17.

Informed by both our previous work and that of others, we hypothesized that cancer trial enrollment was not associated with a patient’s survival outcomes. The aim of our study was to examine the independent contribution of enrollment to cancer trials on survival rates in a large and diverse cohort of patients with stage I–IV of various solid tumors.

METHODS

Study Design and Data Source

To test our hypothesis, we conducted a retrospective cohort study using the California Cancer Registry (CCR), one of the largest population-based cancer registries in the US 18. As of December 2009, case reporting for cases diagnosed in 2008 were estimated to be 97% complete 19. Information regarding data abstraction by the registrars as well as reporting standards have been previously published 2022.

Cohort Selection

Cases included all tumors of the breast, lung, stomach, esophagus, liver, biliary tree, pancreas and skin as defined by ICD-O-3 site codes. Patients younger than age 18 or older than 94 years were excluded. Cases with histologic types consistent with Kaposi’s sarcoma, leukemia and lymphoma were also excluded. Although CCR case data were available beginning in 1988, reporting of patient trial enrollment was not available until after 2001. Therefore, our final cohort was composed of patients diagnosed between 2002 and 2008 (n=553,688).

Trial Participation

Trial participation was designated by the registry based on a patient’s enrollment in national, regional or institutional study protocols for cancer care. For the purposes of this study, any protocol participation was considered trial enrollment regardless of the sponsoring organization.

Unadjusted Analyses

Patient- , tumor- and treatment-related factors (age, gender, marital status, race, insurance status, tumor stage, and tumor grade, treatment modality, hospital CoC status) were compared by enrollment status using chi squared analysis. Age was categorized into the following groups: 18–65 and 65+. Payers were grouped by similar payment sources: private, underinsured/other, military and uninsured. Each case’s treatment modality (surgery, radiation, chemotherapy) was dichotomized into received versus not received. These then were categorized into the following groups: no treatment, chemotherapy only, radiotherapy only, surgery only, chemoradiotherapy, combined surgery and chemotherapy, combined surgery and radiotherapy and a combination of surgery, chemotherapy and radiotherapy. Patients with missing treatment modality data were considered not to have received that particular modality.

Adjusted Analyses

To better understand the trend of enrollees into clinical trials, we conducted multivariate analyses of predictors of enrollment into clinical trials. To examine the impact of trial participation on cancer specific survival, multivariate Cox proportional hazards regression analyses were performed adjusting for covariates. These covariates included age, gender, marital status, race, payer, rural residence, CoC facility, treatment modality, tumor grade, tumor stage and year of diagnosis. We also performed interaction analyses between enrollment status and race, payer, age and stage. Finally, we performed sensitivity analyses as described in the results section below. All statistical analyses were performed using SAS 9.2 (Cary, NC).

The University of Minnesota Institutional Review board reviewed this study (HSC# 1206E15881) and deemed it exempt from further review.

RESULTS

Bivariate Analysis

Of the entire cohort of 553,688 patients, only 1846 (0.33%) were enrolled in a trial protocol. Trial participants were more likely to differ from non-participants by age, gender, residence, marital status, race, insurance status, tumor grade, tumor stage and treatment modality (for all, p<0.0001) (TABLE 1).

Table 1.

Patient, Tumor and Treatment Factors, by Trial Participation

Factors Not Enrolled Enrolled χ2 p-value

Age <0.0001
 18–64 253707 (45.9%) 1276 (69.1%)
 65+ 298135 (54.0%) 570 (30.9%)

Sex <0.0001
 Male 197754 (35.8%) 494 (26.8%)
 Female 354088 (64.2%) 1342 (73.24%)

Residence <0.0001
 Rural 87961 (15.9%) 240 (13%)
 Urban 464151 (84.1%) 1606 (87%)

Marital Status <0.0001
 Single 74092 (13.4%) 264 (14.3%)
 Married 301276 (54.5%) 1171 (63.4%)
 Separated/Divorced/Widowed 147882 (26.9) 404 (21.9%)
 Unknown 28592 (5.2%) 7 (0.4%)

Race/ethnicity <0.0001
 Non-Hispanic White 380635 (69.0%) 1390 (75.3%)
 Non-Hispanic Black 32368 (5.9%) 79 (4.3%)
 Hispanic 73214 (13.3%) 218 (11.8%)
 Asian/Pacific Islander 54358 (9.9%) 152 (8.2%)
 Non-Hispanic American Indian 1726 (0.3%) 5 (0.3%)
 Other/Unknown 9541 (1.7%) 2 (0.1%)

Insurance Status <0.0001
 Private 264097 (47.9%) 1071 (58%)
 Underinsured/Other 274807 (49.8%) 737 (39.9%)
 Uninsured 8752 (1.6%) 29 (1.6%)
 Military 4184 (0.8%) 9 (0.5%)

CoC Hospital <0.0001
 Approved 197172 (35.7%) 1194 (58.8%)
 Not Approved 348292 (63.1%) 732 (39.7%)
 Unknown 6378 (1.2%) 10 (0.5%)

Grade <0.0001
 Low 208143 (37.7%) 819 (44.4%)
 High 130331 (23.6%) 514 (28.8%)
 Unknown 213368 (38.7%) 513 (27.8%)

Stage <0.0001
 I 203508 (36.9%) 618 (33.5%)
 II 90897 (16.5%) 504(27.3%)
 III 71205 (12.9%) 290 (15.7%)
 IV 92985 (16.9%) 187 (10.1%)
 Unknown 93247 (16.9%) 247 (13.4%)

Organ Site <0.0001
 Lung 116727 (21.2%) 167 (9.1%)
 Colon 104482 (18.9%) 186 (10.1%)
 Melanoma 73544 (13.3%) 327 (17.7%)
 Breast 188884 (34.2%) 1031 (55.9%)
 Stomach/Esophagus 26828 (4.9%) 40 (2.2%)
 HPB 41337 (7.5%) 85 (5.2%)

Treatment <0.0001
 None 99567 (18.0%) 30 (1.6%)
 Chemo Only 35073 (6.4%) 143 (7.6%)
 Radiation Only 15978 (2.9%) 8 (0.4%)
 Surgery Only 228881 (41.5%) 461 (25.0%)
 Chemo + Radiation 27392 (5.0%) 87 (4.7%)
 Chemo + Surgery 50144 (9.1%) 359 (19.5%)
 Radiation + Surgery 51346 (9.3%) 295 (16.0%)
 Chemo + Surgery + Radiation 43461 (7.9%) 463 (25.1%)

Multivariate Logistic Regression of Predictors of Trial Enrollment

Enrollees were more likely to be non-Hispanic whites than non-Hispanic Black, Hispanic, or Asian/Pacific Islanders (TABLE 2). Patients younger than 65 were more likely to be trial participants (OR 2.13; 95% CI 1.90–2.38). Payer type did not predict enrollment. However, persons with tumors of certain organ sites were more likely to be trial participants: breast, melanomas, biliary tree/liver and pancreas (see TABLE 2).

Table 2.

Logistic Regression Predicting Trial Enrollment (n=553688, c=0.770)

Factor Adjusted OR* 95% CI p-value

Age
18–64 vs 65+ 2.125 1.896–2.382 <0.001

Gender
Female vs Male 0.849 0.738–0.977 0.022

Marital Status
Married vs Single 1.184 1.033–1.357 0.015
Divorced/Separated/Widowed vs Single 1.078 0.917–1.266 0.363
Unknown vs Single 0.110 0.052–0.235 <0.001

Race
Non-Hispanic Blacks vs Non-Hispanic White 0.735 0.583–0.926 0.009
Hispanic vs Non-Hispanic White 0.778 0.671–0.901 <0.001
Asian/Pacific Islander vs Non-Hispanic White 0.763 0.643–0.907 0.002
American Indian vs Non-Hispanic White 0.849 0.351–2.052 0.716
Unknown vs Non-Hispanic White 0.121 0.030–0.487 0.003

Payer
Underinsured vs Private 1.037 0.933–1.152 0.504
Military vs Private 0.578 0.299–1.118 0.103
Uninsured vs Private 0.948 0.933–1.152 0.779

Grade
High vs Low Grade 0.885 0.789–0.993 0.037
Unassessed vs Low Grade 0.519 0.435–0.619 <0.001

CoC Hospital
CoC Approved vs Not Approved 3.147 2.851–3.473 <0.001
Unknown vs Not Approved 0.722 0.385–1.351 0.308

Stage
I vs IV 0.612 0.508–0.737 <0.001
II vs IV 1.073 0.887–1.297 0.468
III vs IV 1.351 1.116–1.636 0.002
Unknown vs IV 0.685 0.550–0.852 <0.001

Residence
Rural vs Urban 0.864 0.752–0.992 0.039

Organ Site
HPB vs Colon 1.903 1.460–2.482 <0.001
Breast vs Colon 3.144 2.620–3.773 <0.001
Lung vs Colon 1.011 0.809–1.262 0.924
Melanoma vs Colon 6.539 5.089–8.402 <0.001
Stomach/Esophagus vs Colon 1.040 0.739–1.480 0.829

Multivariate Cox Proportional Hazards Regression of Mortality

After adjusting for covariates, trial enrollment predicted lower cancer specific death (HR 0.74; 95% CI 0.66–0.83) and overall death (HR 0.74; 95% CI 0.67–0.81) (TABLE 3). Because of individual impact of a disease site on its care and survival, further organ-specific stratification was performed. When stratified by organ site, the positive impact of trial enrollment on cancer specific mortality and overall mortality was only seen in lung, colon and breast cancer sites (TABLE 3). However, enrollment into cancer trial did not impact mortality for persons treated for melanoma, esophagus/stomach or liver/biliary/pancreas cancers. Other predictors of cancer specific death are shown in TABLE 4.

Table 3.

Cancer Trial Enrollment and Mortality

Trial Enrollment Overall Mortality Enrolled vs Not Enrolled HR* (95% CI) Cancer Specific Mortality Enrolled vs Not Enrolled HR* (95% CI)
All Sites Included 0.74 (0.67–0.81) 0.74 (0.66–0.83)
Stratified By Disease Site
 Lung 0.74 (0.62–0.88) 0.73 (0.60–0.87)
 Colon 0.59 (0.45–0.78) 0.57 (0.42–0.77)
 Breast 0.75 (0.59–0.94) 0.69 (0.52–0.90)
 Melanoma 0.83 (0.61–1.12) 0.97 (0.69–1.37)
 Esophagus/Stomach 0.86 (0.53–1.39) 0.77 (0.46–1.30)
 Liver/Biliary/Pancreas 1.01 (0.82–1.26) 1.03 (0.82–1.28)
*

Adjusted for age, gender, marital status, race, payor, rurality of residence, year of diagnosis, organ site, tumor stage, tumor grade, care at a CoC hospital and treatment modalities received.

Table 4.

Predictors of Cancer Specific Mortality

Factor Overall Mortality HR* (95% CI)

Trial Enrollment
Enrolled vs Not Enrolled 0.74 (0.66–0.83)

Gender
Female vs Male 0.86 (0.85–0.87)

Marital Status
Married vs Single 0.88 (0.87–0.89)
Divorced/Separated/Widowed vs Single 1.06 (1.04–1.08)
Unknown vs Single 0.71 (0.69–0.74)

Race
Non-Hispanic Blacks vs Non-Hispanic White 1.03 (1.01–1.05)
Hispanic vs Non-Hispanic White 0.93 (0.91–0.94)
Asian/Pacific Islander vs Non-Hispanic White 0.81 (0.79–0.82)
American Indian vs Non-Hispanic White 1.07 (0.99–1.15)
Unknown vs Non-Hispanic White 0.39 (0.36–0.43)

Payer
Underinsured vs Private 1.11 (1.10–1.13)
Military vs Private 1.12 (1.06–1.18)
Uninsured vs Private 1.15 (1.11–1.19)

Grade
High vs Low Grade 1.55 (1.53–1.57)
Unassessed vs Low Grade 1.29 (1.27–1.30)

CoC Hospital
CoC Approved vs Not Approved 0.92 (0.91–0.93)
Unknown vs Not Approved 1.09 (1.04–1.13)

Stage
I vs IV 0.16 (0.15–0.16)
II vs IV 0.32 (0.31–0.32)
III vs IV 0.55 (0.54–0.56)
Unknown vs IV 0.47 (0.46–0.47)

Residence
Rural vs Urban 1.02 (1.00–1.031)
*

Adjusted for age, year of diagnosis, organ site, tumor grade, and treatment modalities received.

Finally, we performed various sets of interaction and sensitivity analyses. First, we identified no significant interaction between trial enrollment as a variable and race (p=0.23), payer type (p=0.10), age (p=0.12) or stage (p=0.53). Second, our estimates remained unchanged during our repeated sensitivity analyses using different age groupings or payer categorizations. Third, we found that our estimates remained unchanged when stage IV patients were excluded.

DISCUSSION

In this large and diverse population-based study of cancer patients, enrollment in a clinical trial predicted improved overall and cancer-specific survival. The current findings represent one of the first studies examining the impact of cancer trial enrollment on survival at the population level. While these findings may demonstrate a survival benefit due to trial enrollment, they likely also reflect the otherwise known favorable attributes of trial enrollees.

The literature exploring the role of trial enrollment on survival is conflicting, largely due to variation in confounder adjustment. Investigators who performed unadjusted analyses frequently found no survival benefit to trial enrollment in small cell lung, local breast or rectal cancers 1316. On the other hand, others who did perform adjusted analyses found that survival benefits to trial enrollment sometimes disappeared after adjustment for socioeconomic status or treatments received 912. In our present study, we were able to adjust for multiple patient, tumor and treatment characteristics and still demonstrate cancer specific survival benefit with patient enrollment.

Despite the known relationship between underinsurance and enrollment into clinical trials1,23,24 and cancer specific mortality 25,26 our current study found that payer was not a significant independent predictor of trial enrollment or of cancer specific death. We speculate that our study may have been underpowered to delineate these specific relationships seen elsewhere in the literature.

The impact of organ site on trial benefit is worthy of discussion. Our study found that when stratified by organ site, the protective effect of trial enrollment was seen only in three sites: breast, lung and colon. This may be due to enrollment of more advanced stage melanoma, pancreatic and hepatobiliary cancers--patients who already have poor prognoses.

We acknowledge several limitations to our study inherent to the use of large tumor registry data. First, our study design compared trial enrollees to non enrollees. We did not have information for whether our non-enrollees refused clinical trial participation, were ineligible for participation or even had access to trial enrollment. Second, the CCR does not compile information on patient performance status or comorbidities, which certainly can influence eligibility for trial enrollment. Third, although the CCR provides information regarding the sponsoring organization for a given case’s treatment protocol, it does not provide information about the type of study was enrolled in. Finally, the CCR does not compile detailed information about provider or hospital attributes that may influence enrollment patterns.

Despite these limitations, our study has several positive aspects. First, the use of the California Cancer Registry allowed for assessment of cases from a large and diverse population based registry with a comparison group that included all cancer patients in the state of California during the study period. Second, the ability to examine a wide spectrum of common and complex cancer sites from early to advanced cancer stage is an additional strength given the NCI’s initiatives for larger and broader cancer clinical trials.

The implications of our work are as follows: First, future clinical trials should be designed to investigate cancer treatment modalities for the cancer burden that occurs in the community: the cancer population is expected to be older and increasingly of minority ethnicity over the next twenty years 27. Second, it will be increasingly critical to involve cancer patients in all stages of trial development in order to provide these crucial stakeholders with insight into the need for participation. Finally, while cancer clinical trials are crucial in guiding the practice of oncology, the promotion of clinical trials due to survival benefit must be done with caution.

CONCLUSION

In this first US population-based study, enrollment into cancer trials predicted lower overall and cancer specific mortality for patients with common cancers. While these findings demonstrate a survival benefit due to trial enrollment, they likely also reflect the favorable attributes of trial enrollees. Once corroborated, stakeholders must consider broader cancer trial designs representative of the cancer burden treated in the real world.

Footnotes

Presented at the Southern Surgical Association, 124th Annual Meeting, Palm Beach, 2012

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