Literature DB >> 24215312

CARING (CAncer Risk and INsulin analoGues): the association of diabetes mellitus and cancer risk with focus on possible determinants - a systematic review and a meta-analysis.

Jakob Starup-Linde, Oystein Karlstad, Stine Aistrup Eriksen, Peter Vestergaard, Heleen K Bronsveld, Frank de Vries, Morten Andersen, Anssi Auvinen, Jari Haukka, Vidar Hjellvik, Marloes T Bazelier, Anthonius de Boer, Kari Furu, Marie L De Bruin1.   

Abstract

BACKGROUND: Patients suffering from diabetes mellitus (DM) may experience an increased risk of cancer; however, it is not certain whether this effect is due to diabetes per se.
OBJECTIVE: To examine the association between DM and cancers by a systematic review and meta-analysis according to the PRISMA guidelines. DATA SOURCES: The systematic literature search includes Medline at PubMed, Embase, Cinahl, Bibliotek.dk, Cochrane library, Web of Science and SveMed+ with the search terms: "Diabetes mellitus", "Neoplasms", and "Risk of cancer". STUDY ELIGIBILITY CRITERIA: The included studies compared the risk of cancer in diabetic patients versus non-diabetic patients. All types of observational study designs were included.
RESULTS: Diabetes patients were at a substantially increased risk of liver (RR=2.1), and pancreas (RR=2.2) cancer. Modestly elevated significant risks were also found for ovary (RR=1.2), breast (RR=1.1), cervix (RR=1.3), endometrial (RR=1.4), several digestive tract (RR=1.1-1.5), kidney (RR=1.4), and bladder cancer (RR=1.1). The findings were similar for men and women, and unrelated to study design. Meta-regression analyses showed limited effect modification of body mass index, and possible effect modification of age, gender, with some influence of study characteristics (population source, cancer- and diabetes ascertainment). LIMITATIONS: Publication bias seemed to be present. Only published data were used in the analyses.
CONCLUSIONS: The systematic review and meta-analysis confirm the previous results of increased cancer risk in diabetes and extend this to additional cancer sites. Physicians in contact with patients with diabetes should be aware that diabetes patients are at an increased risk of cancer.

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Year:  2013        PMID: 24215312      PMCID: PMC5421136          DOI: 10.2174/15748863113086660071

Source DB:  PubMed          Journal:  Curr Drug Saf        ISSN: 1574-8863


Introduction

Rationale

The CAncer Risk and INsulin analoGues (CARING) project aims to assess the possible carcinogenic effect of insulin. As part of this project evaluation of the background risk of developing cancer in diabetes patients was performed in this systematic review and meta-analysis. Diabetes Mellitus is associated with increased morbidity and mortality. Diabetes is the 8th leading cause of mortality in high-income countries; whereas colorectal and breast cancer are the 7th and 10th leading causes, respectively [1]. Associations between diabetes and cancer have already been established for specific cancer sites in several meta-analyses [2-23], however it is not known whether the observed associations were due to diabetes per sé or caused by competing risks. Associations between diabetes and cancer have been established by several meta-analyses including only studies of an observational design (case control and/or cohort). All meta-analyses reporting a significant increased risk among diabetes patients for pancreatic cancer between 1.8 to 2.1 [2-4] and liver cancer between 1.8 to 3.6 [5-8, 24]. Subgroup analyses stratified by gender or statistical adjustment for Body Mass Index (BMI), smoking and alcohol did not influence the risk for pancreatic cancer [2]. However, results were conflicting on whether a duration of diabetes of 10 years was associated with an increased risk of pancreatic cancer [2, 3], while duration of diabetes appeared not to influence risk of liver cancer [5]. Furthermore, diabetes treatment modulated the risk of liver cancer with greater risk estimates for insulin or sulfonylurea users than for metformin users [5]. Several observational studies have examined the relationship between diabetes and gastrointestinal cancers. Results were conflicting in the meta-analyses on gastric cancer [15,16], while an increased risk of esophageal cancer was reported [13]. In addition, diabetes has been associated with an increased risk of colorectal cancer [17-19, 21-23] after adjustment for BMI and smoking [20]. Both endometrial cancer [7] and breast cancer [25-28] were reported to be increased in diabetes, while prostate cancer was found to be decreased in men with diabetes by 10% [9,10]. The association with prostate cancer was independent of BMI [10]. Diabetes was also associated with increased risk of kidney cancer [11] and bladder cancer [12]; however this last association was not significant when using estimates adjusted for BMI due to wider confidence intervals. Last of all an increased risk among diabetes patients for non-Hodgkin lymphoma and leukemia but not multiple myeloma has also been reported in a meta-analysis [14]. It is uncertain whether the relationship between diabetes and cancer is direct (e.g., due to hyperglycemia), whether diabetes is a marker of underlying biologic factors that alter cancer risk (e.g., insulin resistance and hyperinsulinemia), or whether the association between diabetes and cancer is indirect and due to common risk factors such as obesity. Duration of diabetes has been found to be of importance in the development of cancer among insulin using type 2 diabetes (T2D) patients [29]; however whether cancer risk was influenced by the duration of diabetes is a critical and complex issue and may be complicated further by the multidrug therapy often necessary for diabetes treatment. The incidence of cancer increases with age, and as age increases with duration of diabetes, this may confound the association between diabetes and cancer. However, an association between diabetes and cancer was present for several cancer sites. Few studies take into account duration of diabetes, medication use or age of the participants. Furthermore, a meta-analysis reported an association between obesity and several cancer types including colorectal, kidney, breast and endometrial cancer, and also an independent association between obesity and T2D [30]. Therefore, it is important both to take obesity into account and to distinguish between type 1 diabetes (T1D) and T2D, which have not been done in previous reports. Except from Ge et al. [16] (using three databases), none of the meta-analyses described in the introduction have used more than two databases in their search (Medline at PubMed and Embase/ Medline at PubMed and Cochrane database of systematic reviews), and many only used Medline at PubMed leaving them with a possible publication bias.

Objectives

In an attempt to evaluate the risk of cancer in diabetes patients and taking possible determinants into account this thorough systematic review and meta-analysis was conducted. The primary objective was to study the effects of diabetes per sé, by collating observational studies that compared diabetes patients to non-diabetes. A secondary objective was to examine the effects that type of diabetes, body weight, metabolic control, diet as well as study design had on the risk of cancer.

Methods

Protocol and Registration

The systematic review and meta-analysis was developed according to the Cochrane Collaboration (http://www.cochr ane.org/training/cochrane-handbook), and PRISMA guidelines [31] (http://www.prisma-statement.org/) and was registered on PROSPERO (http://www.crd.york.ac.uk/prospero/) with the registration number: CRD42012002310.

Eligibility Criteria

The eligibility criteria for the studies were those studies that evaluated the association between diabetes and cancer (incidence, odds or prevalence) as the outcomes. Studies evaluating solely cancer mortality were excluded. The studies needed to compare diabetes patients with a non-diabetes reference group. All types of observational study designs (e.g. case control, cohort and cross-sectional studies) were included. Studies assessing the effect of a specific intervention compared to no intervention were excluded. Studies only published as conference abstracts were excluded. Studies were not excluded due to language or publication year.

Information Sources

The systematic literature search included 7 databases: Medline at PubMed, Embase, Cinahl, Bibliotek.dk, Cochrane library, Web of Science, and SveMed+. The first search was performed 11th of January 2012, and updated with the last search on the 9th November 2012. Additional studies were added after assessment of the reference list in meta-analyses and reviews found in the search. Furthermore, studies were retrieved from the literature search of a systematic review of insulin use and cancer risk also performed by the CARING project group (PROSPERO registration number: CRD42012002428).

Search

The search terms included: “Diabetes mellitus”, “diabetes”, “Neoplasms”, “cancer”, “Prospective study”, “statistics”, “cancer statistics”, and “Risk of cancer”. Other search terms such as statistics and cancer statistics were also used but gave to few results and were not used as the final result. The search was performed using the thesaurus if available in the respective databases. Limitations were used to refine the search if available in the databases (“biochemistry”, “cancer”, ”physiology and endocrinology”, ”cochrane review”, “controlled clinical trial”, “systematic review”, “clinical trial”, “randomized controlled trial”, “review”, “meta-analysis”), qualifiers (“analysis”, “blood”, “classification”, “epidemiology”, “statistics and numerical data”), categories (“endocrinology metabolism”, “oncology”) and research areas (“endocrinology metabolism”, “oncology”, “biochemistry molecular biology”). Search terms, limitations, qualifiers, categories and research areas used differently by database dependent on the functions available at the database. The search from Embase is listed below. The results from #9 in the Embase search were used in this study. Search from the 09th of November 2012 No. No. Query Results #1 ‘Diabetes Mellitus’/exp 526,730 #2 ‘Neoplasm’/exp 3,165,370 #3 #1 AND #2 34,949 #4 #1 AND #2 ([biochemistry]/lim 15,064 OR [cancer]/lim OR [physiology and endocrinology]/lim) #5 ‘Cancer statistics’/exp 2,034 #6 #4 AND #5 7 #7 ‘Cancer statistics’/exp 272,379 #8 #4 AND #5 36 #9 #1 AND #2([biochemistry]/lim 634 OR [cancer]/lim OR [physiology and endocrinology]/lim) AND ([cochrane review]/lim OR [controlled clinical trial]/lim OR [systematic review]/lim))

Study Selection and Data Collection Process

Studies were assessed for eligibility using the criteria above. Reviewer one (JSL) performed the literature search in collaboration with a research librarian. Reviewer one and reviewer two (ØK) added additional studies from the insulin and cancer literature search, and studies were added from other meta-analyses and reviews by reviewer one. Reviewer one and reviewer two examined all studies by screening title and abstract. Studies passing this round were retrieved in full text and independently assessed for eligibility by reviewer one and two. Records for which both reviewers agreed on were included in the systematic review and meta-analysis. Disagreement were settled by discussion or if necessary by reviewer three (PV). No supplementary data were collected from the authors of the studies.

Data Items

From each study information was extracted on cancer risk (prevalence ratio, risk ratio, odds ratio, incidence ratio, standardized incidence ratio, hazard ratio), cancer site, patient characteristics including type of diabetes mellitus (type 1, type 2 or unspecified), age (mean/median/not reported), duration of diabetes (mean/median/not reported), HbA1c level (mean/median/not reported), BMI (mean/median/not reported), follow up years (mean/median/not reported), and on study design (case control/cohort/cross-sectional), population (population based/hospital based), confounders used to adjust for, and specific comorbidities. Data was extracted by reviewer one and validated by reviewer two. Any disagreement was solved by discussion. Studies that used the same study population as other studies were excluded by reviewer one and reviewer two to secure that no duplicate estimates were used in the meta-analysis.

Risk of Bias in Individual Studies

The risk of bias in individual studies was assessed using the Newcastle Ottawa Scale (NOS) [32]. The user-defined items required in the NOS score were defined as follows: age was the most important adjustment factor; the exposed patients in cohorts should be representative of the average “diabetic population”, minimum follow up time as 5 years, and loss to follow-up less than 10%. A scale modified for cross-sectional studies were produced for the quality score of these studies (the NOS are available in the Supplementary Material 1). Reviewer one and reviewer two scored the studies based on the NOS. If the reviewers scored differently it was solved by discussion and if this was not possible reviewer three decided the score.

Summary Measures and Synthesis of Results

Prevalence ratios, risk ratios (RR), odds ratios, incidence ratios, standardized incidence ratios (in general standardized by age and sex using a reference population from same cancer registry, same district or the entire population of a country) and hazard ratios including 95% CI comparing the risk of cancer in diabetes patients compared to a non-diabetes group were the summary measures. A random effects model, Der Simonian and Laird, was used in all analyses [33]. The random effects model considers both in study and between study variability. As all the measures are common effect estimates the pooled result can be interpreted as a risk ratio. Only estimates based on two or more populations were included in the meta-analysis. χ2 tests were used to test for heterogeneity across studies. All analyses were performed in STATA 8 (StataCorp. 2003. Stata Statistical Software: Release 8. College Station, TX: StataCorp LP).

Risk of Bias Across Studies

Risk of publication bias across studies was assessed using Egger’s regression analysis [34] in STATA 8.

Additional Analyses

Subgroup analyses were performed for cancer sites, study design and gender. Meta-regression analyses were performed to assess whether any of the extracted characteristics were determinants of cancer risk. For the meta-regression the covariates were coded as follows: gender (0 = female, 1 = male), diabetes type (0 = unspecified, 1 = T1D, 2 = T2D), study design (0= case control, 1 = cohort, 2 = cross-sectional), source (1=population, 2=hospital, 3=other), adjustment factor (0= no age adjustment, 1= age + other, 2= BMI / obesity / waist hip ratio + other, 3 = Age, BMI +other, 4= Age, Sex, BMI, Smoking + other) 5= Age, BMI and duration of diabetes), diabetes ascertainment (1 = registry, 2 = questionnaire / interview, 3 = biochemical analysis or criteria, 4 = other), cancer ascertainment (1 = registry with confirmation, 2 = questionnaire / interview, 3 = pathology / histology/ imaging / criteria, 4=other) and NOS (0-9). Other covers mixed ascertainments and other types of ascertainment. Age (years) was calculated as the difference of the age between cases and controls in case control studies and between diabetes cohort and non-diabetes cohort in cohort studies. The same applied for BMI (kg/m2). Sub analysis for age and BMI were performed by study design. For age, BMI and follow up years only mean or median estimates were used in the meta-regression. Age BMI and follow up years where treated as numerical outcomes in the meta-regression, whereas other variables were treated as categorical outcomes. Only analyses with the use of three or more populations were included in the meta-regression. HbA1c and duration of diabetes were extracted from the records, but too few values (two studies report on mean HbA1c and 4 studies report mean duration of diabetes) were available to perform a meaningful analysis.

Results

Study Selection

The selection process is depicted in Fig. (. 1,849 records were identified from the database search. An additional 172 records were identified from the reference list in meta-analyses and reviews identified in the search, and from the systematic literature search (PROSPERO registration number: CRD42012002428) on insulin and cancer also performed by the CARING group. In total 2,021 records were identified. The RefWorks (RefWorks, RefWorks-COS, ProQuest RefWorks 2.0, 2010) functions exact duplicates and close duplicates were used to remove duplicates. In total 1,785 unique records were retrieved. Screening by title and abstract by reviewer one and two excluded 1,534 records, thus 251 records remained. Of these records, 193 records (106 cohort studies, 80 case-control studies, 6 cross-sectional studies and 1 combined case-control and cross-sectional study [35]) were included in the systematic review, while 66 records were excluded after assessing for full text eligibility (21 were excluded due to duplicate data with other studies, 3 were excluded due to lack of data, 11 were excluded because diabetes was not the exposure, 4 were excluded because they did not compare to a non-diabetes reference, 1 record was excluded due to interventional study design and 16 studies were excluded because the outcome was not incident or prevalent cancer). 190 records were included in the meta-analysis. Two studies were excluded from this analysis due to lack of information on the outcome to an extent that made analysis impossible [36, 37]. One study was the only to report on head and neck cancer [38] and was not included in the meta-analysis.
Fig. (1)

PRISMA flow diagram.

Study Characteristics and Risk of Bias within Studies

Tables present the study characteristics and NOS score of the included studies in the systematic review for cohort and cross-sectional studies and case-control studies, respectively. Additional study information is available in the electronic Supplementary Material 2. The study quality ranged from as low as 3 to the highest score of 9, although most of studies (84%) were of fair quality (NOS 6-9). NOS is part of the meta-regression presented below.

Results of Individual Studies

The results of the individual studies are presented in the electronic Supplementary Material 3. Stott-Miller et al. [38] was the only study specifically addressing head and neck cancer, and they presented an odds ratio of 1.09 (0.95-1.24) for head and neck cancer for diabetes patients compared to a non-diabetes reference. Thus it was not used in the included in the meta-analysis.

Synthesis of Results

Table presents the pooled analysis of the studies and the pooled results are depicted in Fig. (. All available cancer types were included. Diabetes patients have a significant increased risk of any cancer, biliary and gallbladder cancer, bladder cancer, bone cancer, breast cancer, colon cancer, colorectal cancer, rectal cancer, esophagus cancer, liver cancer, lung cancer, leukemia, lymphoma, non-Hodgkin lymphoma, pancreas cancer, kidney cancer, small intestine cancer, stomach cancer and thyroid cancer. Female diabetes patients were also at increased risk for breast, cervix, endometrial and ovary
Fig. (2)

Plot of the pooled analysis of all populations of the risk of cancer among diabetes patients compared to a non-diabetes population.

cancer. However; diabetes patients have a lower risk of prostate cancer and skin cancer than non-diabetic subjects. In these analyses, only bone and thyroid cancer did not display significant heterogeneity by chi square testing. For the remaining cancer types (testes cancer, myeloma, melanoma, lung, larynx, bone cancer and nervous system cancers) no significantly in- or decreased association between diabetes patients and non-diabetes was observed. Subgroup analyses were performed on study design (cohort/case control) and gender (male/female). Figs. (-) illustrates the results of the analyses. Cohort studies found among diabetes patients an increased risk of any, biliary, breast, cervix, colon, colorectal, endometrial, kidney, liver, ovary, pancreas, rectum, small intestine, stomach, and thyroid cancer, as well as leukemia, all lymphomas, and non-Hodgkin lymphoma, while the risks of prostate, and skin cancer were decreased. Case control studies show similar results as cohort studies including an increased risk of larynx cancer; however the pooled estimates for cervix-, kidney-, leukemia-, non Hodgkin lymphoma-, prostate-, stomach-, and thyroid cancer were without significance. Males with diabetes were at an increased risk of all cancers combined, biliary, colon, colorectal, kidney, liver, pancreas, rectum, small intestine, and thyroid cancer and leukemia, while the risk of prostate cancer was decreased. Females with diabetes were at an increased risk of any, breast, cervix, colon, colorectal, endometrial, kidney, leukemia, liver, ovary, and pancreas cancer.
Fig. (3)

Plot of the pooled analysis of all cohort populations of the risk of cancer among diabetes patients compared to a non-diabetes population.

Fig. (6)

Plot of the pooled analysis of all populations only consisting of females of the risk of cancer among diabetes patients compared to a non-diabetes population.

Egger’s regression test revealed significant publication bias for any cancer (p=0.048), colorectal cancer (p=0.024), esophagus cancer (p=0.022), larynx cancer (p=0.041), lymphoma (p=0.041) and lung cancer (p=0.015). The graphical depictions of the bias test for these cancer types are available in the electronic Supplementary Material 5. All these publication biases have a positive intercept value indicating higher effect size in smaller studies. None of the other cancer types displayed publication bias.

Meta-Regression

Table present results from the meta-analysis. These results reflect the effect modification of the variables on the measured cancer risk in the studies. A positive determinant increases the risk ratio for cancer among diabetes patients, whereas a negative determinant decreases the risk ratio for cancer among diabetes patients. The coefficient is the beta-coefficient from the regression. Not all variables were available for all of the specific cancer analyses. In the following only specific parts will be highlighted. Male gender was a significant negative determinant of the risk of leukemia in (β = -1.52) and reduces the risk of leukemia among diabetes patients. Age difference may both be a significantly positive, negative and no determinant depending on cancer type. BMI differences was no determinant of breast-, colorectal-, endometrial-, kidney-, liver-, pancreas-, and prostate-cancer risk, however it was a negative determinant (β = -0.08) for lung cancer. Diabetes type was only a significantly negative determinant in colon Age and BMI are provided by means if nothing else is specified. Follow up years are provided by means, medians or follow up period. *Comobidity in the population examined. Body mass index (BMI), diabetes mellitus (DM), digital rectal examination (DRE), general practicioner (GP), hepatitis C virus (HCV),. Total: For the whole group or the complete study period. Age and BMI are provided by means if nothing else is specified. Follow up years are provided by means, medians or follow up period. *Comobidity in the population examined. Body mass index (BMI), diabetes mellitus (DM), digital rectal examination (DRE), general practicioner (GP), Total: For the whole group or the complete study period. Age and BMI are provided by means if nothing else is specified. Follow up years are provided by means, medians or follow up period. *Comobidity in the population examined. Body mass index (BMI), diabetes mellitus (DM), digital rectal examination (DRE), general practicioner (GP), hepatitis C virus (HCV),. Total: For the whole group or the complete study period. Non Hodgkin lymphoma (NHL), Nervous system (Brain), RR (risk ratio) Non Hodgkin lymphoma (NHL), Nervous system (Brain), RR (Risk ratio) Non Hodgkin lymphoma (NHL), RR (Risk ratio) Non Hodgkin lymphoma (NHL), RR (Risk ratio) Non Hodgkin lymphoma (NHL), Nervous system (Brain), RR (Risk ratio)

Discussion

Summary of Evidence

This systematic review and meta-analysis confirms the previous findings of an increased cancer risk among diabetes patients. The addition of several databases to the literature search compared to previous meta-analyses did not change the associations previously found. Diabetes patients were especially susceptible to liver cancer (RR= 2.13; 95% CI 1.81-2.50), pancreas cancer (RR= 2.21; 95%CI 1.93-2.54), and endometrial cancer (RR= 1.81; 95% CI 1.63-2.01). In addition, new cancer sites have been investigated: risks of cervix (RR=1.34; 95% CI 1.10-1.63)), ovary cancer (RR= 1.20; 95% CI 1.03-1.40), and small intestinal cancer was reported (RR=1.47; 95% CI 1.03-2.11) were also slightly increased in diabetes patients. In addition female diabetes patients were at increased risk of breast (RR= 1.13 95% CI 1.07-1.18). Thus females with diabetes were at increased risk of gender specific and hormone related cancers compared to their non-diabetic counterparts. However, male diabetes patients seem to be have a reduced risk of prostate cancer (RR= 0.85; 95% CI 0.80-0.91), which support the previous findings [9,10]. Furthermore, our findings support an increased risk of gastric and stomach cancer (RR=1.13; 95% CI 1.02-1.24), whereas former reports have been conflicting [15,16]. An elevation in thyroid cancer (RR=1.27; 95% CI 1.12-1.43) was also present among diabetes patients. A single study reported on head and neck cancer, which found that cancer risk, was not significantly increased among diabetes patients [38]. Neither study design nor gender appears to modulate the overall increase in cancer risk among diabetes patients. Duration of diabetes was not available for analyses, which may influence results. The increased risk of pancreas cancer in diabetes may be due to cancer diagnosis in the following years after diabetes diagnosis, where the risk especially was increased [207]. Normalization of the cancer risk occurs10 years after diabetes diagnosis [207], and may be a result of detection bias or indicate that diabetes diagnosis was a symptom of pancreatic cancer. Johnson et al. [131] investigated time dependent factors in cancer risk and diabetes and conclude that the increased cancer risk may be due to increased ascertainment after diabetes diagnosis. Obesity may be a confounder when assessing cancer risk in diabetes patients [30]. This was not supported by the meta-regression conducted. BMI was a negative determinant for risk of lung cancer, while no other cancer risk was determined by BMI; hence effect modification was only apparent when looking at lung cancer. When looking at the adjustment performed by the studies in the meta-analysis; adjustment by BMI and age were positive determinants of cancer risk in comparison to adjustment for age alone. These results indicate that obesity among diabetes patients was not an effect modifier on the risk of cancer in diabetes, and obesity may not be the explanation for the increased cancer risk for the types rectum, thyroid, biliary tract and gallbladder, ovary, non-Hodgkin lymphoma, myeloma and cervix cancer (adjustment by BMI and age was a positive determinant for these cancer types). Unsurprisingly, age differences may also affect the outcome (Table ). The limited analyses on follow up time were inconclusive. Male gender was a significantly negative determinant of risk of leukemia, which was in accordance with the fact that risk of leukemia was increased in female diabetes patients (RR= 1.45, 95% CI 1.06-1.99) and only slightly increased in male diabetes patients (RR= 1.12, 95% CI 1.00-1.26). From the present literature, it was impossible to distinguish the cancer risk between T1D and T2D. Only a single study report of T1D [39], whereas some studies report of T2D. Some of the studies classified as diabetes unspecified in Table claim to report only of T2D, however exclude T1D by age at diagnosis: excluding diabetes diagnosed at younger age than 18 [45], 20 [97], 21 [56], 25 [65] or 30 [68,71,115,139]. Nevertheless, the investigated population may consist of both T1D and T2D. Diabetes ascertainment and cancer ascertainment (available in the electronic Supplementary Material 2) varied between studies and may, based on the meta-regression, be a determinant of the study outcome. Whether the study was hospital or population based may also affect the outcome (Table ). These methodological differences, which may bias the results, raise the question of the necessity of uniform standards to reduce bias. In general the study quality did not determine the outcome of the pooled analysis (Table ), however study quality based on NOS score was a significantly negative determinant risk of lung cancer and a significantly positive determinant of prostate cancer; meaning that the risk ratios drew closer towards 1 for both cancers. Adjustment for the NOS score only changed the outcome little. Some publication bias was present, with an underreporting of non-significant results from small studies. This may also affect the outcomes. Also only published data as age and BMI were collected, whereas not all studies reported these factors. This may affect the results of the meta-regression. These restrictions and limitations may affect the results, but it is implausible to be the explanation of the increased risk of cancer among diabetes patients.

Conclusion

The present systematic review and meta-analysis confirms the previous findings of an increased cancer risk in diabetes and extends these findings to additional cancer types. The results indicate that the risk was not modified by obesity and was thus either due to diabetes per se or other confounders. Unfortunately, important covariates as HbA1c and duration of diabetes were not available in a sufficient number of studies. It is thus difficult to determine whether the increased cancer risk was due to diabetes per se or other prognostic factors like anti-diabetic treatment. Nevertheless, the clinical implications of this and previous studies are of importance. It is recommendable that physicians in contact with patients with diabetes are attentive to the increased cancer risk associated with diabetes. Whether the awareness should be aimed at a diabetes group receiving a specific treatment is unknown and the future results of the CARING project are awaited.

Patient consent

Declared none.
Table 1

Study Table of Included Cohort Studies Divided by Diabetes Type

Authors Data Source Cancer Site Follow Up Years Source DM (n) Age BMI Non- DM (n) Age BMI Co Morbidity NOS-Score (0-9)
Cohort Studies
Type 1 diabetes
Zendehdel 2003 Sweden [39]Swedish inpatient registrySeveral14.4Population29,18717.1-External standard population---8
Type 2 diabetes
Kao 2012 Taiwan [40]NHIRDAll2001-2009Population22,91056.5-91,63656.5--8
Bowker 2011 Canada [41]BCLHD (1996-2006)Breast4.4Population84,50661.8-84,50661.8--6
Michels 2003 US [42]Nurses health study (1976-1998)Breast22 (total)Nurses6,12059.130.7110,36852.125.06
Campbell 2010 [43]Cancer prevention study II Nutrition cohortColorectal1992-2007Population11,33563-143,64064--7
Ren 2009 China [44]Nan-Hu districtColorectal-Population7,93861.123.6External standard population---6
Lai 2006 Taiwan [45]KCIS (1999-2003)Liver2.78Population5,732--49,184---5
Wang 2009 Taiwan [46]A-Lein TownshipLiver8 (total)Viral hepatitis screened.352--5,37753.9 (total)--9
Joh 2011 US [47]Nurses Health studyKidney1976-2008Nurses6,42457,030,5107,71456.825,56
Hemminiki 2010 Sweden [48]Nationwide hospital discharge 1964-2007Several13 medianPopulation125,126--External standard population---9
Hense 2011 Germany [49]SHI 2003-2008Several3.5 medianDisease management programme26,74264♂ 29.7♀ 31.0External standard population---6
Lee 2012 Taiwan [50]NHI programme (1999-2009)Several11 (total)Population104,343--985,815 (Total)---9
Ogunleye 2009 UK [51]TaysideSeveral3.9Population (RISCH primary care)9,577--19,15462 (total)--6
Diabetes type unspecified
Fillenbaum 2000 US [52]EPESEAny6 (total)Population4034 total73.45
Larsson 2008 Sweden [53]COSMBladder9.3Population2,83564.527.443,07160.125.7-8
Tripathi 2002 US [54]IWHSBladder13 (total)Population6%--37,459 (total)---7
Bosco 2012 US [55]Black women’s health studyBreast10.5Population1,90049,172 (total)6
Chlebowski 2012 US [56]WHIBreast11.8PostmenopausalPopulation based sample3,40162.6-64,61864.0--7
De Waard 1974 (36)GP NetherlandsBreast5,4Population7,259 women4
Goodman 1997 Japan [57]LSS CohortBreast8.31Population (atomic bomb survivors)---22,200 (total)---6
Lipscombe 2006 [58] CanadaOntario 1995-2002Breast4.5 medianPopulation73,79666.2-391,71464.9--7
Mink 2002 US [59]ARICBreast7.1Population---7,894 (total)---8
Reeves 2012 US [60]SOFBreast14,4Population6077,7727
Sellers 1994 US [61]IWHSBreast5 (total)Population---36,603(total)---5
Weiderpass 1997 Sweden [62]Swedish in patient registryBreast, endometrial6.7Population♂ 63,988♀ 70,110♂ 59.2♀ 64.2-External standard population---6
Lambe 2011 Sweden [63]AMORISBreast, endometrial, ovarian11.7Population5,61558.526.7225,12246.623.9-7
Bowers 2006 Finland [64]Alpha-Tocopherol, Beta-Carotene Cancer PreventionStudyColorectal14.1 medianPopulation1,226--27,757---7
Flood 2010 UK [65]BCDDPColorectal8.4Individuals with breast affection and matched healthy individuals (gives no statement on how these were determined).-64.328.043,07861.824.5-6
Hartz 2012 US [66]WHIColorectal8 medianPostmenopausalPopulation based sample4.5% of total--150,912(total)63.11(Total)--7
He 2010 US [67]Multiethnic cohortColorectal1993-2006Population♂15,060♀ 16,271--♂74,418♀93,393♂60.2♀ 59.7--7
Hu 1999 US [68]NHSColorectal18 (total)Nurses7,0694528111,0034224-5
Khaw 2004 UK [69]NorfolkColorectal6Population---25,623 (total)45-79--7
Larsson 2005 [70] SwedenCOSMColorectal6.2Population45,550 men (total)6
Limburg 2005 US [71]IWHSColorectal14 (total)Population1,90062.330.633,07261.526.8-7
Nilsen 2001, Norway [72]Nord-trøndelagColorectal10.8 medianPopulation---75,219 (total)♂48.5♀49.8--7
Schoen 1999 US [73]CHS 1989-1990Colorectal6.6Population---5,20172.8 (without cancer)--6
Seow 2006 Singapore [74]Singapore Chinese health studyColorectal7.1Population5,4696024.155,85156.023-7
Sturmer 2006 US [75]The Physicians’ Health StudyColorectal19 medianphysicians9%--22,70154--6
Will 1998 US [76]Cancer prevention studyColorectal1959-197225 states15,487♂57.4♀57.8♂25.4♀26.2850,946♂52.9♀51.7♂25.2♀24.2-6
Anderson 2001 US [77]IWHSEndometrial1986-1997Population1,32562.630.523,15061.826.8-7
Friberg 2007 Sweden [78]UppsalaEndometrial7Population1,62866.527.535,14561.724.9-8
Lindemann 2008 Norway [79]HUNT studyEndometrial15.7Population1,010--35,75149 (total)--7
Lin 2011 US [80]NIH-AARP studyEsophagus, gastric7.96Population41,38862.8129.83428,06061.9026.83-8
Chuma 2008 Japan [81]Hokkaido University hospitalLiver10.2Hospital19104 (total)50.5 (median)Chronic hepatitis or cirrhosis. Hepatitis C virus positive7
Di constanzo 2008 Italy [82]Naples (1994-2004)Liver7 medianHospital41--138 (total)63.3-Hepatitis C virus cirrhosis4
El-Serag 2004 US [83]PTF 1985-1990Liver8.6Hospital (Veteran Affairs (VA))173,64361.7-650,62054.5--6
Hung 2011 Taiwan [84]Chang Gung Memorial HospitalLiver4.4Hospital253 (T2D)56 median25 median1,21752 median24 medianInteferon therapy for hepatitis c7
Ionnau 2007 US [85]VA 1994-2005Liver3.6Veterans452--1,668--Cirrhosis6
Kavamura 2010 Japan [86]Toronamon hospital, TokyoLiver6.7 medianHospital104--1,95450 (total)-Inteferon therapy for hepatitis c7
N’kontchou2006 France [87]-Liver4.2Screened for HCC231--54061.4 total25.4 totalalcoholic or viral C cirrhosis6
Ohata 2003 Japan [88]Nagasaki university hospitalLiver6.4Hospital26--161 (total)5322.70.24Chronic HCV infection7
Ohki 2008 Japan [89]University of Tokyo Hospital 1994-2004Liver6.1Hospital---1,43160.1-Chronic HCV infection7
Tazawa 2002 Japan [90]Tsuchiura Kyodo General HospitalLiver5.4Hospital23--279 (all)49.4-Hepatitis C infection5
Veldt 2008 Europe and Canada [91]Hepatology UnitsLiver4.0Hospital8551 (median)27 (median)45649 median25 (median)Hepatitis C and fibrosis or cirrhosis6
Adami 1996 Sweden [92]Swedish in patient registerLiver and biliary tract6.7Hospital153,852♂60.5♀65.2-External standard population---8
Chen 2010 Taiwan [93]NHILiver and biliary tract6.9 medianPopulation615,53260.1-614,87160.0--9
Ehrlich 2010 US [94]Kaiser PermanenteMedical Care Program Northern CaliforniaLung1996- 2005Medical Care Program70,64560 median29.8051,24151 median26.06-7
Hall 2005 UK [95]GPRDLung3.95Population (primary care)66,84860.8-267,27260.7--8
Lai 2012 Taiwan [96]NHI Taiwan 1 million random sample cohortLung2000-2008Population1962456.478,49656.58
Luo 2012 US [97]WHILung11PostmenopausalPopulation8,15464.332.1137,61163.027.7-7
Cerhan 1997 US [98]IWHSNHL1986-1992Population---37, 934 (total)61.5 (total)--6
Erber 2009 US [99]Multiethnic cohort (MEC) studyNHL10 medianPopulation13%--♂87,078♀105,972(total)---6
Khan 2008 Europe [100]EPICNHL and multiple myeloma8.5Population♂5,111♀6,028♂58%♀56.8%-♂134,320♀248,018♂51.9%♀50.1%--7
Gapstur 2012 US [101]Cancer PreventionStudy-II Nutrition CohortOvary1992-2007Population3,57763.6-59,86362.2--7
Chen 2011 Taiwan [102]NHIPancreas6.9 medianPopulation615,53260.1-614,87160.0--9
Chow 1995 Sweden [103]Swedish in patient registerPancreas6.8Hospital♂63,987♀70,109--External standard population---5
Gupta 2006 US [104]Veterans Health AdministrationPancreas1999-2004Veterans (developed diabetes)36,63161.8-1,385,16363.6--7
Larsson 2005 Sweden [105]COSM and SMCPancreas1997-2004Population---♀37,147♂ 45,906(total)♀62 ♂ 60 (total)♀25 ♂25.8(total)-8
Liao 2012 Taiwan [106]NHIPancreas1998-2007Population49,80355.92-199,21255.92--8
Shibata 1994 US [107]Laguna HillsPancreas9 (total)Retirement community---13,976 (total)74--6
Stevens 2009 UK [108]Breast cancer screeningPancreas7.2Population2,7%--1,290,00055.926.2-7
Stolzenberg-Solomon 2002 Finland [109]ATBCPancreas10.2 medianPopulation---29,0485726.0Smokers8
Yun 2006 Korea [110]NHICPancreas10 (total)Population---446407---8
Jamal 2009 US [111]VAPancreas and gallbladder1990-2000Hospital278,761 (diabetes patients)65.8-836,283 (non diabetes patients)64.8--7
Giovannuci 1998 US [112]Health professionals follow up studyProstate1986-1994Health professionals2,551--45,230---6
Leitzmann 2008 US [113]PLCOProstate8.9 (total)From a randomized controlled trial, where participants were randomized to cancer screening.3,02464.028.730,06462.026.8-7
Li 2010 Japan [114]Ohsaki CohortProstate1995-2003Population1,64562.4123.7420,81359.0723.327
Rodriguez 2005 US [115]Cancer prevention study II nutrition cohortProstate1992-2001Population10,05362,6177
Thompson 1989 US [116]Rancho bernardoProstate14 (total)Population---1,776 (all)65.925.62-7
Velicer 2007 US [117]VITALProstate2000-2004Population (mailing list)2,87864.330.532,36161.527.4-6
Waters 2009 US [118]The Multiethnic CohortProstate1993-2005Population10,825--86,303 total59.9--7
Weiderpass 2002 Sweden [119]Swedish In-Patient RegisterProstate5.6Population135,95061.7-External standard population---6
Will 1999 US [120]25 states1959-1972Prostate13 (total)Population6,086--298,979---5
Nicodemus 2004 US [121]IWHS 1986-2000Kidney15 totalPopulation (drivers license list)---34,637 (total)---6
Adami 1991 Sweden [122]Uppsala In patient registrySeveral1965-1984Hospital51,008--Expected---5
Atchison 2010, US [123]VA hospitalsSeveral10.5 (median)Veterans (male)594,81557.5-3,906,76351.5--7
Carstensen 2012 Denmark [124]Central personal registerSeveral1995-2009The entire Danish Population-------7
Chodick 2010 Israel [125]MaccabiHealthcare ServicesSeveral8Population16,72161.6-83,87461.6--8
Dankner 2007 Israel [126]Population registrySeveral20 (total)Population43757.6-1,74051.9--8
Folsom 2008 [127]ARIC 1987-1989Several1987-2000Population---13,117 (total)---8
Hjalgrim 1997 Denmark [128]All men born1949-1964 with DM before age 20Several1968-1992Population1,659--External standard population---3
Hjalgrim 1997 Denmark [128]funen countySeveral1973-1992Population1,499--External standard population---4
Inoue 2006 Japan [129]Japan Public Health Center–Based ProspectiveStudySeveral10.7Population♂3,097♀ 1,571♂54♀ 56-♂43,451♀ 49,652♂51.2♀ 51.6--7
Jee 2005 Korea [130]NHICSeveral10 totalgovernment employees, teachers and dependents (10.7% of total population)♂5.1%♀4.5%--♂829,770♀468,615(total)♂45.3♀49.6♂23.2♀23.2-7
Johnson 2011 [131] CanadaBCLHDSeveral4,3Population185,10060.7185,10060.78
Joshu 2012 US [132]ARIC (1990-2006)Several15 medianPopulation♀ 626♂ 499♀ 58.5♂ 58.8♀ 31.5♂ 30.011,667---6
Khan 2006 Japan [133]JACCSeveral1988-1997Population3,30740-79-53,57440-79--7
Ragozzino 1982 US [134]Rochester, MinnesotaSeveral-Population1,135--External standard population---4
Rapp 2006 Austria [135]VHM&PPSeveral8.4Population3.4%--140,81343--8
Steenland 1995 US [136]NHANES ISeveral7.7Civilian population---14,40760 (cases) 48 (non-cases)--7
Swerdlow 2005 UK [137]The diabetes uk cohortSeveral1972-2003Population29,7010-49-External standard population---6
Wideroff 1997 [138] DenmarkDanish Central HospitalDischarge RegisterSeveral1977-1993Hospital109, 581♂ 64♀69median-External standard population---6
Wotton 2011 UK [139]ORLS 1Several1963-1998Hospital15,898--275,564---7
Wotton 2011 UK [139]ORLS 2Several1999-2008Hospital7,771--185,123---7
Yeh 2012 US [140]CLUE IISeveral1989-2006Population59961.829.517,68151.526.3-7
Aschebrook-kilfoy 2011 US [141]NIH-AARP studyThyroid10Population44,69362.929.9451,85561.926.8-7
Kitahara 2012 US [142]Pooled analysis of 5 cohort studiesThyroid10.5 medianPrevious studies8%--674,491 (total)59.8--7
Meinhold 2010 US [143]US Radiologic TechnologistsStudyThyroid15.8Radiologic technologists---♀69,506♂21,207 (total)♂43.3 ♀39.3--6
Table 2

Study Table of Cross-Sectional Studies by Diabetes Type

Authors Data Source Cancer Site Follow Up Years Source DM (n) Age BMI Non- DM (n) Age BMI Co Morbidity NOS-Score (0-9)
Cross-Sectional Studies
Type 2 diabetes
Baur 2011 Germany [144]DETECT studyAny-Population1,30870.4(with cancer)66.6(without cancer)28.3 (with cancer)29.8 (without cancer)6,21165.5 (with cancer)55.5 (without cancer)26.7 (with cancer)26.6(without cancer)-7
Diabetes type unspecified
Lawlor 2004 UK [145]The British Women’s Heart and Health StudyBreast-Randomly from GP147 women with cancer68.528.13,890 women without cancer68.927.6-6
Sandhu 2001 UK [146]NorfolkColorectal-Population (GP lists)56145-74-28,78245-74--6
Tung 2010 Taiwan [35]TainanLiverPopulation7268.4-56,193---6
Moreira 2011 US [147]Durham VAProstate-Hospital (performed prostate biopsy, high risk patient population (referred for biopsy because of elevated PSA or Abnomral DRE)))2846430,47146327,7-5
Moses 2012 US [148]Hospital(high risk population (referred to biopsy for elevated PSA or abnormal DRE))ProstateHospital1,045--1,265---5
Li 2011US [149]BRFSSSeveral-Population---397,783 total46.8--4
Table 3

Study Table of Case Control Studies by Diabetes Type

Authors Data Source Cancer Site Source Cases (n) Age BMI Controls (n) Age BMI Co Morbidity* NOS-Score (0-9)
Case Control Studies
Type 2 diabetes
Khachatryan 2011 Armenia [150]-BreastPopulation15055.7929.0315251.1127.67-6
Rollison 20078US [151]4 corners breast cancer studyBreastPopulation2,324--2,52356--6
Li 2012 China [152]-LiverHospital1,10553.8-5,17044.9-Chronic hepatitis B6
Diabetes type unspecified
Grainge 2009 UK [153]GPRD 1987-2002Biliary tractPopulation61171.3(at diagnosis)-5,760---8
Khan 1999 US [154]CPMC 1980-1994Biliary tractHospital69--138---6
Shaib 2007 US [155]M.D.Anderson Cancer CenterBiliary tractHospital83 ICC163 ECCICC 59.8ECC 61.1-23658.1--5
Shebl 2010 ChinaShanghai, ChinaBiliary tractPopulation627--959---7
Tao 2010 China [156]PUMCHBiliary tractHospital190(total)61 ICC129 ECC58.6 ECC58.7 ICC38059.75
Welzel 2007 US [157]SEERBiliary tractPopulationECC 549ICC 535ECC 78.7ICC 79-102,78277.1--7
Kantor 1984 US [158]SEERBladderPopulation2,982--5,782---6
Kravchick 2001, Israel [159]BladderHospital252♂71.5♀ 73-549---4
Mackenzie 2012 US [160]New EnglandBladderPopulation3316228.02636027,0-6
Ng 2003 UK [161]Bedford General HospitalBladderHospital125--80---5
Risch 1988 Canada [162]Edmonton, Calgary, Toronto, and KingstonBladderPopulation83535-79-792---6
Baron 2001 US [163]Wisconsin and New HampshireBreastPopulation5,65965.3-5,92864.1--6
Beji 2007 Turkey [164]BreastHospital405--1050---3
Cleveland 2012 US [165]Long Island Breast Cancer study projectBreastPopulation1,49563.630.91,54357.426.16
Garmendia 2007 Chile [166]BreastHospital (mammography service)17056.528.5917055.1829.23-5
Jordan 2009 Thailand [167]Thai CohortBreastUniversity students4339 median-860---4
Weiss 1999 US [168]New Jersey, Atlanta, SeattleBreastPopulation2,173--1,990---5
Wu 2007 US [169]Los AngelesCounty Cancer Surveillance ProgramBreastPopulation1,248--1,148---6
Kune 1988 Australia [170]Melbourne 1980-1981ColorectalPopulation71565-72765--6
Le Marchand 1997 US [171]ColorectalPopulation1,192♂67 ♀65 (median)-1,192♂65 ♀65 (median)--7
Rinaldi 2008 European countries [172]EPIC (8 countries)ColorectalPopulation1,02659.1 (CC) 58.2 (RC)27.3 (CC) 27.0 (RC)1,02659.1 (Control CC) 58.2 (control RC)26.9 (Control CC) 26.6 (control RC)8
Safaee 2009 Iran [173]Shahid Beheshti University ofMedical Sciences, Tehran, IranColorectalPopulation (cases: cancer registry. Controls: health survey)862--862---4
Vinikoor 2009 US [174]NCCCS1ColorectalPopulation63763.691,04466.066
Vinikoor 2009 US [174]NCCCS2ColorectalPopulation1,00761.8898863.866
Yang 2005 UK [175]GPRDColorectalPopulation10,447--104,429---8
Fortuny 2009 US [176]EDGE studyEndometrialPopulation46961.7-46763.6 (all)--6
Inoue 1994 Japan [177]Osaka University Medical SchoolEndometrialHospital14353.6-14353.2--5
Saltzman 2008 US [178]Washington StateEndometrialPopulation1,3031,7797
Yamazawa 2003 Japan [179]Chiba UniversityHospitalEndometrialHospital41--123---5
Neale 2009 Australia [180]Queensland 2001-2005EsophagusPopulation1,102--1,580---6
Reavis 2004 US [181]Portland VA Medical CenterEsophagusHospital (and dental clinic)6369.6-50 +50 +5663.764.758.9--5
Rubenstein 2005 US [182]Veterans database 1995-2003Esophagus and gastric cardiaVeterans31171.2 median-10,15466.3 median-GERD7
Vineis 2000 Italy [183]11 Italian areasHaemapoieticPopulation2,66956.1-1,71854.9--6
Stott-Miller 2012 (38)Pooled analysisHead and neckMixed6.448--13.747---4
Davila 2005 US [184]Surveillance Epidemiology and End-Results Program (SEER)LiverPopulation2,06176.1-6,18376.4--8
El-Serag 2001 US [185]1997-1999 VALiverHospital (veterans)82362-3,45960--4
Hassan 2002 US [186]MD Anderson Cancer center 1994-1995LiverHospital11559.5-23059.1--7
Hassan 2010 US [187]MD Anderson Cancer center 2000-2008LiverHospital42063-1,10460--7
Matsuo 2003 Japan [188]KyushuLiverPopulation222♂63.6.♀ 64.3222♂ 63.5.♀ 64.16
Tung 2010 Taiwan [35]TainanLiverPopulation7268.4-14468.2--7
Tung 2010 Taiwan [35]TainanLiverPopulation7268.4-14467.7-Hepatitis C infection7
Yuan 2004 US [189]Los Angeles county 1984-2001LiverPopulation29560.6-43560.1--5
Fortuny 2005 Spain [190]LymphomaHospital565--60159 (total)--6
Cartwright 1988 UK [191]1979-1984 YorkshireNHLHospital437--724---4
Cerhan 2005 US [192]Detroit, LA, Seattle 1998-2000NHLPopulation75956.627.758956.927.7-6
Lin 2007 Taiwan [193]CGMHNHLPopulation24259 median at diagnosis-71,379---6
Smedby 2006 Denmark, Sweden [194]SCALENHLPopulation3,05560 median-3,18759 median--6
Bonelli 2003 Italy [195]Northern Italy 1992-1996PancreasHospital202--404---6
Bueno de mesquita 1992 Netherlands [196]1984-1987PancreasPopulation17435-7948735-796
Cuzick 1989 UK [197]Leeds, London, Oxford (1983-1986)PancreasHospital216--279---7
Ekoe 1992 Canada [198]QuebecPancreasPopulation17963,923962,17
Friedman 1993 US [199]Kaiser Permanente Medical Care ProgramPancreasKaiser Permanente Medical Care Program (inpatient and outpatient)45054.6-2,68754.4--6
Frye 2000 New Zeeland [200]Canterbury Health case mix databasePancreasHospital11670.1-11670.2-Controls: Fracture of femur neck6
Grote 2011 [201]EPIC (10 countries)PancreasPopulation4665826.64665825.95
Gullo 1994 Italy [202]14 Italian university and community hospitals (1987-1989)pancreasHospital72062.6-720---6
Hassan 2007 US [203]PancreasHospital80861.9-80860.2--7
Hiatt 1988 US [204]KPMPC (1960-1984)PancreasMember of medical care program4967.6-12,104---6
Jain 1991 Canada [205]Toronto 1983-1986PancreasPopulation24964.6-50564.8--6
Kalapothaki 1993 Greece [206]Athens 1991-1992PancreasPopulation181--181; 818 (2 control groups)---5
Li 2011 US [207]Three previous studies- pooled analysisPancreasPopulation2,192635,113637
Maisonnueve 2010 Australia, Canada, Poland [208] NetherlandsMulticenter (pooled analysis)PancreasPopulation823--1,679---5
Matsubayashi 2011 Japan [209]Shizuoka Cancer centerPancreasHospital57764.957764.95
Mizuno 1992 Japan [210]Japanese university hospitalsPancreasHospital124--124---6
Baradaran 2009 Iran [211]MulticenterProstateHospital19471.0626.331766.526.8-4
Coker 2004 US [212]South CarolinaCentral Cancer Registry (SCCCR) (1999-2001)ProstatePopulation40765-79-39365-79--6
Gong 2006 [213]PCPTProstatePrevious study1,93663.727.68,32262.627.77
Gonzales-Perez 2005 UK [214]GPRD 1995-2001ProstatePopulation2,18372 median-10,00072 median--8
Lightfoot 2004 Canada [215]Ontario 1995-1999ProstatePopulation760--1,632---5
Rosenberg 2002 US [216]UniversityMedical Center in New York CityProstateHospital32069.6-18968.1--6
Tavani 2002 Italy and Greece [217]Milan Pordenoneand Athens, GreeceProstatehospital608--1,008---6
Turner 2011 UK [218]Protect studyProstatePopulation1,29162.226.76,47962.026.9-7
Zhu 2004 US [219]US Physicians’ Health StudyProstatePhysicians1,110-24.91,110-24.9-6
Attner 2012 Sweden [220]Swedish cancer registry (2003-2007)SeveralPopulation19,75645-84-147,32445-84--7
Bosetti 2011 Italy and Switzerland [221]1991-2009SeveralHospital230- 2390 depending on cancer type56-66 depending on cancer type12,06056-65 depending on cancer type7
Jorgensen 2012 Denmark [222]Funen countySeveralPopulation6,32578 median-25,29978 Median--7
Kuriki 2007 Japan [223]HERPACC 1989-2000SeveralHospital♂5,341♀6,331♂65.3♀60.6♂22.7♀22.4♂14,199♀ 33,569♂60.6♀57.0♂23.0♀22.1-6
La Vecchia 1994 Italy [224]Milan 1983-1992SeveralHospital9,991--7,834---5
O Mara 1985US(37)Roswell Park Memorial Institute (RPMI) (1957-1965)SeveralHospital14,910--4,838---3
Rousseau 2006 Canada [225]Montreal 1979-1985SeveralPopulation3,107--50959.658.2%BMI>25-6

(β =-0.23) and colorectal (β =-0.23) cancer and otherwise not a determinant like follow up years was not a determinant. Compared to adjustment of age, adjustment of both age and BMI was a significantly positive determinant in the risk of biliary tract and gallbladder cancer (β =0.79), cervix cancer (β =0.37), myeloma (β =0.49), non Hodgkin lymphoma (β =0.39), ovary-(β =0.52), prostate cancer (β =0.11), rectum cancer (β =0.40) and thyroid cancer (β =0.47), while it was a significantly negative determinant of larynx cancer (β =-0.23). In addition adjustment of age, diabetes and smoking was a positive determinant of risk ratio in colorectal- (β =0.11), ovary-(β =0.51), and skin cancer (β =0.69) compared to adjustment by age. Furthermore some specific cancer risks may be determined by diabetes ascertainment, cancer ascertainment, and data source. In the electronic Supplementary Material 4 the results of the meta-regression are available.

Table 4

Results of the Pooled Analysis by Random Effects Model for All Included Studies on Any Cancer and Specific Cancer Sites

Cancer Site RR (95% Confidence Interval) Number of Populations Test for Heterogeneity
Any1.15 (1.06-1.25)42P < 0.001
Biliary tract and gall bladder*1.69 (1.41-2.03)26P < 0.001
Bladder1.14 (1.05-1.22)35P < 0.001
Bone1.00 (0.69-1.45)7P = 0.895
Breast1.14 (1.08-1.19)62P < 0.001
Cervix1.34 (1.10-1.63)19P < 0.001
Colon1.29 (1.21-1.36)41P < 0.001
Colorectal1.27 (1.21-1.34)51P < 0.001
Endometrial1.81 (1.63-2.01)29P < 0.001
Esophagus1.20 (1.02-1.41)29P < 0.001
Kidney1.37 (1.18-1.59)33P < 0.001
Larynx1.10 (0.84-1.43)11P < 0.001
Leukemia1.25 (1.08-1.45)20P < 0.001
Liver2.13 (1.81-2.50)61P < 0.001
Lung1.07 (0.97-1.17)44P < 0.001
Lymphoma**1.39 (1.17-1.64)18P < 0.001
Melanoma1.00 (0.91-1.10)18P = 0.002
Myeloma1.11 (0.92-1.34)11P < 0.001
Nervous system1.19 (0.97-1.46)19P < 0.001
Non-Hodgkin lymfoma1.19 (1.05-1.36)28P < 0.001
Ovary1.20 (1.03-1.40)21P < 0.001
Pancreas2.21 (1.93-2.54)65P < 0.001
Prostate0.85 (0.80-0.91)27P < 0.001
Rectum1.17 (1.08-1.27)37P < 0.001
Skin***0.91 (0.83-0.99)18P < 0.001
Small intestine1.47 (1.03-2.11)6P = 0.005
Stomach1.13 (1.02-1.24)37P < 0.001
Testes0.88 (0.71-1.09)6P = 0.924
Thyroid1.27 (1.12-1.43)21P = 0.076

Significance is indicated by bold. Number of populations covers the number of populations used in the pooled analysis, this may not be the same as the number of records used in the analysis, thus some records have multiple populations. RR: Risk ratio, CI: Confidence interval. * In this category studies estimating the risk of biliary tract extra- and intra hepatic, gallbladder cancer and cholangiocarcinoma were pooled ** In this category estimates of lymphoma, Hodgkin lymphoma and combined estimates of lymphoma including Non-Hodgkin lymphoma were pooled. *** Some estimates used in skin cancer cover both non-melanoma skin cancer and melanoma.

Table 5

Results of the Meta-Regression on the Specific Cancer Types

Cancer Site Gender* Age (Years)* BMI (kg/m2)* Diabetes Type* Follow Up (Years) * Source£ Adjustment (Adjustment for Age vs Adjustment for Age and BMI)£ Diabetes Ascertainment£ Cancer Ascertainment£ NOS*
Any0 (5)- (5)0 (42)0 (42)0 (42)0 (42)- (5)
Biliary tract and gall bladder0 (7)0 (7)- (25)+ (25)0 (25)0 (25)0 (7)
Bladder0 (5)- (5)0 (33)0 (33)0 (33)0 (33)0 (5)
Bone0 (4)0 (7)0 (7)0 (4)
Breast0 (7)0 (7)0 (7)0 (60)0 (60)0 (60)0 (60)0 (7)
Cervix0 (6)0 (6)0 (17)+ (17)0 (17)0 (17)0 (6)
Colon0 (13)0 (13)- (13)0 (40)0 (40)0 (40)0 (40)0 (13)
Colorectal0 (7)0 (7)0 (7)- (9)**0 (47)0 (47)0 (47)0 (47)0 (7)
Endometrial0 (5)**0 (4)0 (5)**0 (26)0 (26)0 (26)0 (26)0 (5)**
Esophagus0 (5)- (5) C0 (27)0 (27)0 (27)0 (27)- (5)
Kidney0 (5)0 (5)0 (4)0 (31)0 (31)+ (31)0 (31)0 (5)
Larynx0 (6)0 (10)- (10)+ (10)0 (10)0 (6)
Leukemia- (5)0 (5)0 (18)0 (18)0 (18)0 (18)0 (5)
Liver0 (7)**- (10)**CC0 (4)0 (58)0 (58)0 (58)0 (58)0 (7)**
Lung0 (6)**0 (6)**- (5)0 (42)0 (42)0 (42)0 (42)- (6)**
Lymphoma0 (9)- (18)0 (18)0 (18)0 (18)0 (9)
Melanoma0 (12)0 (16)0 (16)0 (16)0 (12)
Myeloma0 (6)- (11)+ (11)0(11)0 (11)0 (6)
Nervous system0 (12)0 (17)0 (17)0 (17)0 (17)0 (12)
NHL0 (13)- (26)+ (26)0 (26)0 (26)0 (13)
Ovary0 (7)0 (19)+ (19)0 (19)- (19)0 (7)
Pancreas0 (7)**0 (7)**0 (4)0 (63)0 (63)0 (63)0 (63)0 (7)**
Prostate+ (5)***00 (5)***0 (12)0 (26)+ (26)0 (26)- (26)+ (5)***
Rectum0 (11)**0 (11)**0 (3)0 (11)**0 (35)+ (35)0 (35)0 (35)0 (11)**
Skin0 (10)0 (18)0 (18)0 (18)0 (18)- (10)
Small intestine0 (5)- (6)0 (6)0 (5)
Stomach0 (7)- (7) C0 (6)0 (35)0 (35)0 (35)0 (35)0 (7)
Testes0 (6)
Thyroid0 (6)0 (6)0 (5)0 (20)+ (20)0 (20)0 (20)0 (6)

+: statistically significant positive determinant, -: statistically significant negative determinant, 0: no statistical significance, blank: could not be performed and not included in the meta-regression). The () marks how many populations were available for the regression results. Number of populations covers the number of populations used in the pooled analysis, this may not be the same as the number of records used in the analysis, thus some records have multiple populations. Some estimates used in skin cancer cover both non melanoma skin cancer and melanoma. Gender, diabetes type, source, diabetes ascertainment, cancer ascertainment, adjustment and NOS were all coded as categorical values, * regression analysis included age, gender, NOS and BMI if available. £ regression analyses included study design, source, diabetes ascertainment, adjustment factors and cancer ascertainment. ** Regression performed without BMI. *** Regression performed without diabetes type. BMI: Body Mass Index, NHL: Non Hodgkin lymphoma, NOS: Newcastle Ottawa Scale score. C: significance only applies to cohort studies not case control studies. CC: significance only apply to case control studies. Variables were entered in the categories as described in the methods section.

  222 in total

1.  History of diabetes and risk of head and neck cancer: a pooled analysis from the international head and neck cancer epidemiology consortium.

Authors:  Marni Stott-Miller; Chu Chen; Shu-Chun Chuang; Yuan-Chin Amy Lee; Stefania Boccia; Hermann Brenner; Gabriela Cadoni; Luigino Dal Maso; Carlo La Vecchia; Philip Lazarus; Fabio Levi; Keitaro Matsuo; Hal Morgenstern; Heiko Müller; Joshua Muscat; Andrew F Olshan; Mark P Purdue; Diego Serraino; Thomas L Vaughan; Zuo-Feng Zhang; Paolo Boffetta; Mia Hashibe; Stephen M Schwartz
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2011-12-05       Impact factor: 4.254

2.  Diabetes mellitus and subsite-specific colorectal cancer risks in the Iowa Women's Health Study.

Authors:  Paul J Limburg; Kristin E Anderson; Trista W Johnson; David R Jacobs; Deann Lazovich; Ching-Ping Hong; Kristin K Nicodemus; Aaron R Folsom
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2005-01       Impact factor: 4.254

3.  Diabetes mellitus and risk of colorectal cancer: a meta-analysis.

Authors:  Susanna C Larsson; Nicola Orsini; Alicja Wolk
Journal:  J Natl Cancer Inst       Date:  2005-11-16       Impact factor: 13.506

4.  Associations of sedentary lifestyle, obesity, smoking, alcohol use, and diabetes with the risk of colorectal cancer.

Authors:  L Le Marchand; L R Wilkens; L N Kolonel; J H Hankin; L C Lyu
Journal:  Cancer Res       Date:  1997-11-01       Impact factor: 12.701

5.  Type 2 diabetes mellitus and medications for type 2 diabetes mellitus are associated with risk for and mortality from cancer in a German primary care cohort.

Authors:  Dorothee M Baur; Jens Klotsche; Ole-Petter R Hamnvik; Caroline Sievers; Lars Pieper; Hans-Ulrich Wittchen; Günter K Stalla; Roland M Schmid; Stefanos N Kales; Christos S Mantzoros
Journal:  Metabolism       Date:  2010-11-16       Impact factor: 8.694

6.  Synergism of alcohol, diabetes, and viral hepatitis on the risk of hepatocellular carcinoma in blacks and whites in the U.S.

Authors:  Jian-Min Yuan; Sugantha Govindarajan; Kazuko Arakawa; Mimi C Yu
Journal:  Cancer       Date:  2004-09-01       Impact factor: 6.860

7.  Association between diabetes mellitus and hepatocellular carcinoma: results of a hospital- and community-based case-control study.

Authors:  Michiyo Matsuo
Journal:  Kurume Med J       Date:  2003

8.  The association between diabetes, insulin use, and colorectal cancer among Whites and African Americans.

Authors:  Lisa C Vinikoor; Millie D Long; Temitope O Keku; Christopher F Martin; Joseph A Galanko; Robert S Sandler
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2009-03-31       Impact factor: 4.254

9.  Diabetes mellitus as a risk factor for pancreatic cancer. A meta-analysis.

Authors:  J Everhart; D Wright
Journal:  JAMA       Date:  1995 May 24-31       Impact factor: 56.272

10.  Diabetes mellitus and risk of colorectal cancer in the Singapore Chinese Health Study.

Authors:  Adeline Seow; Jian-Min Yuan; Woon-Puay Koh; Hin-Peng Lee; Mimi C Yu
Journal:  J Natl Cancer Inst       Date:  2006-01-18       Impact factor: 13.506

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  12 in total

1.  Risk of bladder cancer in patients with diabetes: a retrospective cohort study.

Authors:  Maria E Goossens; Maurice P Zeegers; Marloes T Bazelier; Marie L De Bruin; Frank Buntinx; Frank de Vries
Journal:  BMJ Open       Date:  2015-06-01       Impact factor: 2.692

2.  Development and validation of risk prediction algorithms to estimate future risk of common cancers in men and women: prospective cohort study.

Authors:  Julia Hippisley-Cox; Carol Coupland
Journal:  BMJ Open       Date:  2015-03-17       Impact factor: 2.692

3.  Diabetes and Breast Cancer Subtypes.

Authors:  Heleen K Bronsveld; Vibeke Jensen; Pernille Vahl; Marie L De Bruin; Sten Cornelissen; Joyce Sanders; Anssi Auvinen; Jari Haukka; Morten Andersen; Peter Vestergaard; Marjanka K Schmidt
Journal:  PLoS One       Date:  2017-01-11       Impact factor: 3.240

4.  Cancer risk among insulin users: comparing analogues with human insulin in the CARING five-country cohort study.

Authors:  Anna But; Marie L De Bruin; Marloes T Bazelier; Vidar Hjellvik; Morten Andersen; Anssi Auvinen; Jakob Starup-Linde; Marjanka K Schmidt; Kari Furu; Frank de Vries; Øystein Karlstad; Nils Ekström; Jari Haukka
Journal:  Diabetologia       Date:  2017-06-01       Impact factor: 10.122

5.  Associations between self-reported diabetes and 78 circulating markers of inflammation, immunity, and metabolism among adults in the United States.

Authors:  Alison L Van Dyke; Krystle A Lang Kuhs; Meredith S Shiels; Jill Koshiol; Britton Trabert; Erikka Loftfield; Mark P Purdue; Nicolas Wentzensen; Ruth M Pfeiffer; Hormuzd A Katki; Allan Hildesheim; Troy J Kemp; Ligia A Pinto; Anil K Chaturvedi; Mahboobeh Safaeian
Journal:  PLoS One       Date:  2017-07-28       Impact factor: 3.240

6.  Glucagon promotes colon cancer cell growth via regulating AMPK and MAPK pathways.

Authors:  Takashi Yagi; Eiji Kubota; Hiroyuki Koyama; Tomohiro Tanaka; Hiromi Kataoka; Kenro Imaeda; Takashi Joh
Journal:  Oncotarget       Date:  2018-01-31

7.  High Glucose Represses the Anti-Proliferative and Pro-Apoptotic Effect of Metformin in Triple Negative Breast Cancer Cells.

Authors:  Sharon Varghese; Samson Mathews Samuel; Elizabeth Varghese; Peter Kubatka; Dietrich Büsselberg
Journal:  Biomolecules       Date:  2019-01-08

Review 8.  Use of insulin and insulin analogs and risk of cancer - systematic review and meta-analysis of observational studies.

Authors:  Oystein Karlstad; Jacob Starup-Linde; Peter Vestergaard; Vidar Hjellvik; Marloes T Bazelier; Marjanka K Schmidt; Morten Andersen; Anssi Auvinen; Jari Haukka; Kari Furu; Frank de Vries; Marie L De Bruin
Journal:  Curr Drug Saf       Date:  2013-11

Review 9.  Type 2 diabetes mellitus increases the risk of hepatocellular carcinoma in subjects with chronic hepatitis B virus infection: a meta-analysis and systematic review.

Authors:  Yifei Tan; Shiyou Wei; Wei Zhang; Jian Yang; Jiayin Yang; Lunan Yan
Journal:  Cancer Manag Res       Date:  2019-01-14       Impact factor: 3.989

10.  Glycosylated Hemoglobin A1c Is Associated with Anthropometric Measurements and Tumor Characteristics in Breast Cancer Patients.

Authors:  Nehad M Ayoub; Sara K Jaradat; Ahmed Alhusban; Linda Tahaineh
Journal:  Int J Womens Health       Date:  2020-03-06
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