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. 2016 Sep 20;8(12):19057–19064. doi: 10.18632/oncotarget.12137

Sitagliptin may reduce prostate cancer risk in male patients with type 2 diabetes

Chin-Hsiao Tseng 1,2,3
PMCID: PMC5386669  PMID: 27661113

Abstract

This retrospective cohort study evaluated the risk of prostate cancer associated with sitagliptin use in Taiwanese male patients with type 2 diabetes mellitus by using the reimbursement databases of the National Health Insurance. Male patients with newly diagnosed type 2 diabetes mellitus at an age ≥25 years between 1999 and 2010 were recruited. A total of 37,924 ever users of sitagliptin and 426,276 never users were followed until December 31, 2011. The treatment effect of sitagliptin (for ever versus never users, and for tertiles of cumulative duration of therapy) was estimated by Cox regression incorporated with the inverse probability of treatment weighting using propensity score. Analyses were also conducted in a 1:1 matched pair cohort based on 8 digits of propensity score. Results showed that during follow-up, 84 ever users and 2,549 never users were diagnosed of prostate cancer, representing an incidence of 140.74 and 240.17 per 100,000 person-years, respectively. The hazard ratio (95% confidence intervals) for ever users versus never users was 0.613 (0.493-0.763). The respective hazard ratio for the first, second, and third tertile of cumulative duration of sitagliptin use <5.9, 5.9-12.7 and >12.7 months was 0.853 (0.601-1.210), 0.840 (0.598-1.179) and 0.304 (0.191-0.483), respectively; and was 0.856 (0.603-1.214), 0.695 (0.475-1.016) and 0.410 (0.277-0.608) for cumulative dose <15,000, 15,000-33,600 and >33,600 mg, respectively. Findings were supported by analyses in the matched cohort. In conclusion, sitagliptin significantly reduces the risk of prostate cancer, especially when the cumulative duration is >12.7 months or the cumulative dose >33,600 mg.

Keywords: incretin, National Health Insurance, prostate cancer, sitagliptin, Taiwan

INTRODUCTION

The incidence of prostate cancer varies among different countries by 25-fold with higher incidence in developed countries in Europe and North America and lower incidence in less developed countries in Asia and Africa [1]. While the temporal trends of prostate cancer incidence are decreasing in developed countries, they are increasing remarkably in the Asian populations [1]. In Taiwan, the age-standardized incidence of [2] and mortality from [3] prostate cancer are both increasing.

Patients with type 2 diabetes mellitus (T2DM) suffer from a higher risk of cancer, which can be related to obesity, insulin resistance, hyperinsulinemia, glycemic control, comorbidities or antidiabetic drugs [411]. Prostate cancer is probably the only cancer that shows a reduced risk in patients with T2DM in studies conducted mainly in the white people [12, 13]. However, studies conducted in Taiwan suggested a significantly higher risk of prostate cancer in patients with T2DM in terms of incidence [2], prevalence [14] and mortality [3]. A recent meta-analysis conducted in the Asian populations also strongly supported a higher risk of prostate cancer in patients with T2DM [15]. The use of antidiabetic drugs may affect the risk of prostate cancer. For example, metformin significantly reduces prostate cancer risk [16], but insulin was neither predictive for its incidence [17] nor for its mortality [18].

Incretin-based therapies by using dipeptidyl peptidase-4 (DPP-4) inhibitors or glucagon-like peptide-1 receptor (GLP-1R) agonists have become a mainstay in the treatment of T2DM. However, the cancer risk associated with these drugs remains to be clarified [19]. Sitagliptin was the first DPP-4 inhibitor approved for clinical use in 2006 and it was approved for reimbursement by the Taiwan's Bureau of National Health Insurance (NHI) on March 1, 2009 [19]. Sitagliptin is probably the most commonly used incretin-based therapy but its association with prostate cancer has not been extensively explored. A pooled analysis of 25 clinical studies including 7,726 users and 6,885 non-sitagliptin treated patients with study durations of 12 weeks to 2 years showed that the incidence of prostate cancer was 0.11 and 0.07 per 100 patient-years, respectively [20]. However, the incidence for metastatic prostate cancer or stage III prostate cancer were both lower in the sitagliptin group (0.00 vs. 0.02 per 100 patient-years) [20]. Because of the small numbers of incident cancer, statistical analyses were not performed in the study.

The present study aimed at evaluating whether sitagliptin use in male patients with T2DM would affect the risk of prostate cancer by using the Taiwan's NHI reimbursement database. Other incretins (i.e., saxagliptin, vildagliptin and linagliptin for DPP-4 inhibitors; and exenatide and liraglutide for GLP-1R agonists) currently available in Taiwan were not evaluated because they were not approved until after 2009 and had not been used commonly during the study period. A new-user design was applied to minimize the potential “prevalent user bias” [21]. To reduce the “immortal time bias” (the initial period of follow-up during which the outcome can not occur) [22], patients should have been prescribed antidiabetic drugs for at least two times, and those who were followed up for a short period of time (i.e., <180 days) were excluded. To address the imbalance in characteristics associated with treatment allocation in non-random observational studies, Cox regression models were created by incorporation with the inverse probability of treatment weighting (IPTW) using propensity score (PS) [23] and analyses were also conducted in a 1:1 matched cohort [24].

RESULTS

Table 1 compares the characteristics between ever and never users of sitagliptin in the original cohort and the matched cohort, respectively. In the original cohort, except for stroke, dipyridamole and examination of prostate-specific antigen (PSA), all variables differed significantly. Ever users were younger in age, had longer duration of diabetes, and characterized by higher proportions of hypertension, nephropathy, ischemic heart disease, peripheral arterial disease, eye disease, obesity, dyslipidemia and acute pancreatitis. On the other hand, lower proportions of chronic obstructive pulmonary disease, and benign prostatic hyperplasia were observed in ever users. Ever users were more likely to use other medications. Among the covariates, 19 of the 28 had values of standardized difference >10%. In the matched cohort, only diabetes duration, and use of metformin and rosiglitazone were different significantly. However, while examining the standardized differences, none of them had a value >10%.

Table 1. Comparison of characteristics between sitagliptin never and ever users in the original cohort and the matched cohort, respectively.

Variables Original cohort Matched cohort
Sitagliptin P value SD Sitagliptin P value SD
Never users Ever users Never users Ever users
n % n % n % n %
426276 37924 37792 37792
Age* (years) 54.23 12.92 51.49 11.49 <0.0001 −12.37 51.61 11.50 51.51 11.49 0.2263 −1.05
Diabetes duration* (years) 4.36 3.29 6.25 3.29 <0.0001 24.14 6.14 2.98 6.24 3.29 <0.0001 2.80
Hypertension 313104 73.45 30095 79.36 <0.0001 15.83 29935 79.21 29984 79.34 0.6601 0.16
COPD 206970 48.55 16663 43.94 <0.0001 −19.46 16457 43.55 16618 43.97 0.2378 0.81
Stroke 116894 27.42 10319 27.21 0.3741 −6.23 10281 27.20 10280 27.20 0.9935 −0.08
Nephropathy 108153 25.37 10086 26.60 <0.0001 −2.91 9999 26.46 10059 26.62 0.6211 0.26
Ischemic heart disease 173371 40.67 16590 43.75 <0.0001 −1.63 16314 43.17 16508 43.68 0.1545 0.93
Peripheral arterial disease 80906 18.98 8213 21.66 <0.0001 1.76 8163 21.60 8185 21.66 0.8459 0.10
Eye disease 55643 13.05 11466 30.23 <0.0001 48.12 11492 30.41 11377 30.10 0.3625 −0.72
Obesity 14747 3.46 2050 5.41 <0.0001 10.15 1974 5.22 2026 5.36 0.3982 0.62
Dyslipidemia 304825 71.51 31233 82.36 <0.0001 25.27 31030 82.11 31110 82.32 0.4467 0.48
Acute pancreatitis 8758 2.05 940 2.48 <0.0001 −0.22 904 2.39 936 2.48 0.4501 0.56
BPH 152951 35.88 12034 31.73 <0.0001 −14.16 12083 31.97 12009 31.78 0.5635 −0.47
Statin 198784 46.63 26274 69.28 <0.0001 57.83 26082 69.01 26145 69.18 0.6200 0.21
Fibrate 136135 31.94 16872 44.49 <0.0001 34.02 16629 44.00 16792 44.43 0.2326 0.77
ACEI/ARB 256351 60.14 28041 73.94 <0.0001 36.20 27895 73.81 27914 73.86 0.8751 −0.06
Calcium channel blocker 215115 50.46 20603 54.33 <0.0001 8.94 20416 54.02 20518 54.29 0.4565 0.44
Sulfonylurea 245724 57.64 34906 92.04 <0.0001 120.00 34926 92.42 34774 92.01 0.0391 −1.85
Metformin 266158 62.44 36615 96.55 <0.0001 140.88 36719 97.16 36483 96.54 <0.0001 −3.69
Insulin 52413 12.30 11676 30.79 <0.0001 50.21 11655 30.84 11570 30.61 0.5028 −0.45
Acarbose 67324 15.79 17572 46.33 <0.0001 63.43 17527 46.38 17441 46.15 0.5304 −0.63
Pioglitazone 48007 11.26 15071 39.74 <0.0001 56.45 14918 39.47 14941 39.53 0.8641 0.05
Rosiglitazone 27902 6.55 10939 28.84 <0.0001 44.40 10541 27.89 10809 28.60 0.0304 1.44
Aspirin 223344 52.39 23075 60.85 <0.0001 13.41 22878 60.54 22964 60.76 0.5220 0.32
Ticlopidine 19177 4.50 1921 5.07 <0.0001 0.67 1970 5.21 1905 5.04 0.2837 −0.82
Clopidogrel 36830 8.64 5297 13.97 <0.0001 16.37 5227 13.83 5232 13.84 0.9580 0.00
Dipyridamole 139326 32.68 12517 33.01 0.2016 −2.04 12371 32.73 12485 33.04 0.3774 0.52
Prostate-specific antigen 63539 14.91 5526 14.57 0.0795 0.33 5472 14.48 5497 14.55 0.7963 0.16

*Age and diabetes duration are expressed as mean and standard deviation

COPD: chronic obstructive pulmonary disease, BPH: benign prostatic hyperplasia, ACEI/ARB: angiotensin converting enzyme inhibitor/angiotensin receptor blocker, SD: standardized difference

Table 2 shows the incidences and hazard ratios of prostate cancer with regards to sitagliptin exposure. During follow-up, 84 ever users and 2549 never users in the original cohort developed prostate cancer, with respective incidence of 140.74 and 240.17 per 100,000 person-years, and an overall hazard ratio of 0.613 (95% confidence interval: 0.493-0.763). Although the hazard ratios were not significant for the first and second tertiles of cumulative duration and cumulative dose, the risk was significantly reduced in the third tertiles. Analyses conducted in the matched cohort showed similar results.

Table 2. Sitagliptin and incidence of prostate cancer and hazard ratios comparing exposed to unexposed.

Sitagliptin use Cases followed Incident cases of prostate cancer Person-years Incidence rate (per 100,000 person-years) HR 95% CI P value
I. Original cohort
 Never users 426276 2549 1061318.16 240.17 1.000
 Ever users 37924 84 59682.53 140.74 0.613 (0.493-0.763) <0.0001
Cumulative duration (months)
 Never users 426276 2549 1061318.16 240.17 1.000
 <5.9 12471 32 16380.28 195.36 0.853 (0.601-1.210) 0.3728
 5.9-12.7 12565 34 17697.14 192.12 0.840 (0.598-1.179) 0.3136
 >12.7 12888 18 25605.11 70.30 0.304 (0.191-0.483) <0.0001
Cumulative dose (mg)
 Never users 426276 2549 1061318.16 240.17 1.000
 <15,000 12493 32 16340.74 195.83 0.856 (0.603-1.214) 0.3820
 15,000-33,600 11927 27 16987.84 158.94 0.695 (0.475-1.016) 0.0602
 >33,600 13504 25 26353.96 94.86 0.410 (0.277-0.608) <0.0001
II. Matched cohort
 Never users 37792 174 95836.67 181.56 1.000
 Ever users 37792 84 59473.09 141.24 0.793 (0.607-1.037) 0.0898
Cumulative duration (months)
 Never users 37792 174 95836.67 181.56 1.000
 <5.9 12427 32 16324.61 196.02 1.083 (0.735-1.595) 0.6876
 5.9-12.7 12524 34 17637.17 192.77 1.068 (0.733-1.556) 0.7338
 >12.7 12841 18 25511.31 70.56 0.383 (0.235-0.623) 0.0001
Cumulative dose (mg)
 Never users 37792 174 95836.67 181.56 1.000
 <15,000 12453 32 16288.73 196.45 1.093 (0.742-1.611) 0.6524
 15,000-33,600 11884 27 16929.47 159.49 0.867 (0.573-1.311) 0.4977
 >33,600 13455 25 26254.88 95.22 0.517 (0.339-0.788) 0.0022

Cox regression models were created by incorporation with the inverse probability of treatment weighting using propensity score created from variables in Table 1 HR: hazard ratio, CI: confidence interval

Table 3 shows the overall hazard ratios comparing ever to never users of sitagliptin in sensitivity analyses after excluding patients with various clinical conditions in the original cohort. A significantly reduced risk was observed in all analyses.

Table 3. Sensitivity analyses estimating hazard ratios for prostate cancer for ever versus never users of sitagliptin in the original cohort.

Model HR 95% CI P value
I.   Excluding cumulative duration of sitagliptin use <180 days 0.613 (0.493-0.763) <0.0001
II. Excluding patients who had been screened by prostate-specific antigen before prostate cancer diagnosis 0.353 (0.218-0.571) <0.0001
III. Excluding patients with a diagnosis of other cancers during follow-up 0.612 (0.492-0.761) <0.0001
IV. Excluding patients with a diagnosis of acute pancreatitis during follow-up 0.623 (0.501-0.775) <0.0001
V. Excluding patients with a diagnosis of acute pancreatitis and/or other cancers during follow-up 0.621 (0.499-0.773) <0.0001
VI. Excluding patients aged <45 years 0.683 (0.549-0.849) 0.0006

HR: hazard ratio, CI: confidence interval

DISCUSSION

The results support an overall reduced risk of prostate cancer in sitagliptin users. The reduced risk is significantly observed in patients treated with sitagliptin for more than one year or with a cumulative dose >33,600 mg (Table 2). The matched cohort analyses (Table 2) and the sensitivity analyses (Table 3) supported the finding.

It is interesting that such a reduced risk of prostate cancer related to incretin-based therapies is also observed in a recent clinical trial on liraglutide, a GLP-1R agonist, showing a hazard ratio (95% confidence interval) of 0.54 (0.34-0.88) [25]. Though with a slightly smaller magnitude of risk reduction, the overall hazard ratio (95% confidence interval) of 0.613 (0.493-0.763) estimated for sitagliptin in the present study (Table 2) was very close to the observed hazard ratio for liraglutide in the clinical trial [25].

Recent studies from Japan may provide some explanations for the potential mechanisms. The Japanese investigators showed that GLP-1R is expressed in human prostate cancer tissue and exendin-4 (a GLP-1R agonist) significantly decreased the proliferation of prostate cancer cells that expressed GLP-1R [26, 27]. Such antiproliferative effect of exendin-4 on prostate cancer was not via androgen receptor, but through the inhibition of extracellular signal–regulated kinase-mitogen-activated protein kinase (ERK-MAPK) phosphorylation via GLP-1R [26]. This inhibitory effect on ERK-MAPK was mediated by the cyclic adenosine 3′,5′-monophosphate-protein kinase A pathway and was not dependent on adenosine monophosphate activated protein kinase activation or Akt phosphorylation [26]. In an in vivo study, exendin-4 also attenuated the growth of prostate cancer cells transplanted to athymic mice via the inhibition of ERK-MAPK activation [26]. In humans, administration of sitagliptin 50 mg per day for 3 days significantly increased active GLP-1 level by 2.5–fold [28]. Therefore, sitagliptin may exert an anti-cancer effect on the prostate by increasing the acitve GLP-1 levels.

On the other hand, DPP-4 may inhibit the malignant phenotype of prostate cancer cells via the blockade of the signaling pathway of basic fibroblast growth factor [29] and the serum activity of DPP-4 is reduced in patients with metastatic prostate cancer [30]. Therefore, inhibition of DPP-4 may potentially trigger prostate cancer cell growth and metastasis, as shown in an in vitro and in vivo metastasis study [31]. The dual effects of DPP-4 inhibition by sitagliptin may explain the slightly smaller magnitude of risk reduction for sitagliptin (Table 2) than that observed in the liraglutide trial [25].

Our previous analyses of the same database suggested that sitagliptin may increase the risk of acute pancreatitis [32], pancreatic cancer [33] and thyroid cancer [34]. Competing risk due to the development of other cancers and/or acute pancreatitis related to sitagliptin exposure during follow-up would not affect the finding (Table 3). Furthermore, detection bias due to PSA screening could not explain the reduced risk related to sitagliptin because the examination of PSA did not differ significantly between ever and never users (Table 1) and the finding was not changed after excluding patients who had been screened by PSA (Table 3).

There are several strengths in this study. First, a special request was made to include longitudinal data of all patients, covering a period from 1996 when the NHI database was available. Second, the study enrolled a large sample size representing the whole nation. Third, information bias related to self-reporting could be reduced by the use of medical records. Fourth, because the NHI covers almost the entire population, the results could be readily generalized to the whole population.

There are some limitations. First, we did not have biochemical data such as blood levels of glucose and lipid profiles for evaluating their impacts. Second, this study could not evaluate the effects of other DPP-4 inhibitors and GLP-1R agonists because of the limited sample sizes of users of these medications during the study period. Third, it was not possible to fully adjust for potential confounders such as obesity, smoking, alcohol drinking, family history, life-style, dietary factors, hormonal profiles and genetic parameters.

In summary, this study supports an overall reduced risk of prostate cancer in male patients with T2DM who have been treated with sitagliptin. The risk is significantly reduced when the cumulative duration is >12.7 months or the cumulative dose >33,600 mg.

MATERIALS AND METHODS

This study was approved by an ethic review board of the National Health Research Institutes (NHRI, approval number 99274). The compulsory and universal health care system of NHI has been implemented since March 1995. It covers more than 99% of the Taiwanese population and has contracts with over 98% of the hospitals nationwide. Detailed records including outpatient visits, emergency department visits, and hospital admission are kept in the database, and the information of principal and secondary diagnostic codes, prescription orders, and claimed expenses can be retrieved. According to local regulations, written informed consent was not required because the identification information had already been scrambled prior to the release of the database.

Figure 1 shows the procedures followed in creating the cohort of newly diagnosed T2DM patients with onset age ≥25 years for the study. The NHRI created a cohort of 120,000 newly diagnosed diabetic patients in each calendar year for a 12-year period from 1999 to 2010. The longitudinal reimbursement records of these patients from 1996 to 2011 can be provided for academic research after approval. A patient should not have a diagnosis of diabetes in the preceding years when he/she was randomly selected into the cohort for each specific year. The definition of diabetes was based on one of the following two criteria: 1) Diagnosis of diabetes during an admission to the hospital or having been prescribed with antidiabetic drugs during hospitalization; or 2) In an outpatient setting within one year, a patient has been diagnosed as having diabetes for two or more times, or diagnosed as having diabetes for one time plus prescribed with antidiabetic drugs for one time. As a result, a total of 1,440,000 patients with newly diagnosed diabetes were available within these 12 years.

Figure 1. Flowchart showing the procedures followed in creating the unmatched original cohort of male patients with type 2 diabetes mellitus and the 1:1 matched pairs used in the study.

Figure 1

NHRI: National Health Research Institutes, NHI: National Health Insurance.

Some patients might have been given insulin or oral antidiabetic drugs temporarily during hospitalization for some medical conditions but they might not be real cases of diabetes. Therefore, patients who were recruited in the yearly established cohorts based on the first criterion but did not have records of follow-up afterward with a diagnosis of diabetes or having been prescribed antidiabetic drugs at the outpatient clinics were excluded. This resulted in a sample size of 1,183,187 patients.

After further exclusion of ineligible patients as shown in the figure (linagliptin and liraglutide were not available in Taiwan during the study period), there were 464,200 patients left. Among them, 37,924 had been prescribed sitagliptin (ever users) and 426,276 had never been treated with sitagliptin (never users).

The International Classification of Diseases, Ninth Revision, Clinical Modification (ICD-9-CM) has been used during the study period and diabetes was coded 250.XX, and prostate cancer 185. A number of comorbidities and covariates were determined as a status/diagnosis at the time of censor. The ICD-9-CM codes for the comorbidities were: hypertension 401-405, chronic obstructive pulmonary disease (a surrogate for smoking) 490-496, stroke 430-438, nephropathy 580-589, ischemic heart disease 410-414, peripheral arterial disease 250.7, 785.4, 443.81 and 440-448, eye disease 250.5, 362.0, 369, 366.41 and 365.44, obesity 278, dyslipidemia 272.0-272.4, acute pancreatitis 577.0, and benign prostatic hyperplasia 600. Medications included sulfonylurea, metformin, insulin, acarbose, pioglitazone, rosiglitazone, statin, fibrate, angiotensin-converting enzyme inhibitor and/or angiotensin receptor blocker, calcium channel blocker, aspirin, ticlopidine, clopidogrel, and dipyridamole. Examination of PSA was also considered.

The above characteristics of sitagliptin never users and ever users were compared by Student's t test for age and diabetes duration and by Chi-square test for the others. The crude incidence density of prostate cancer was calculated for sitagliptin ever users and never users and for the tertiles of cumulative duration (months) and cumulative dose (mg). The numerator for the incidence was the number of patients with incident prostate cancer during follow-up, and the denominator was the person-years of follow-up. Follow-up ended on December 31, 2011, at the time of a new diagnosis of prostate cancer, or on the date of the last reimbursement record.

Logistic regression was used to create PS from all the covariate listed in Table 1. To obtained unbiased estimates, Cox regression models were created by incorporation with IPTW using PS as recommended by Austin [23].

To avoid the imbalance of characteristics associated with treatment allocation in non-random observational studies, a 1:1 matched-pair sample based on 8 digits of PS was also used for analyses, with calculation of standardized difference for each characteristic. A standardized difference >10% suggests a potential residual confounding. These methods have been adopted and described in detail in our previous studies [3437].

The following sensitivity analyses were conducted to estimate the hazard ratios for ever versus never users of sitagliptin in the original cohort by excluding: 1) cumulative duration of sitagliptin use <180 days; 2) patients who had been screened by PSA before prostate cancer diagnosis; 3) patients with a diagnosis of other cancers during follow-up; 4) patients with a diagnosis of acute pancreatitis during follow-up; 5) patients with a diagnosis of acute pancreatitis and/or other cancers during follow-up; and 6) patients aged <45 years.

Analyses were conducted using SAS statistical software, version 9.3 (SAS Institute, Cary, NC). P<0.05 was considered statistically significant.

Acknowledgments

The study is based in part on data from the National Health Insurance Research Database provided by the Bureau of National Health Insurance, Department of Health and managed by National Health Research Institutes (Registered number 99274). The interpretation and conclusions contained herein do not represent those of Bureau of National Health Insurance, Department of Health or National Health Research Institutes.

Footnotes

CONFLICTS OF INTEREST

The authors declare no conflicts of interest.

FUNDINGS

The study was supported by the Ministry of Science and Technology (MOST 103-2314-B-002-187-MY3) of Taiwan. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

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