Literature DB >> 31185995

The impact of cancer on diabetes outcomes.

Anne Beiter Arreskov1, Maria Å Olsen2, Sandra Sinius Pouplier2, Volkert Siersma2, Christen L Andersen2, Søren Friis3, Niels de Fine Olivarius2.   

Abstract

BACKGROUND: Survival from many cancer types is steadily increasing, and as a result, a growing number of cancer patients will live with other chronic diseases, of which diabetes is one of the most prevalent. This study aims to describe the impact of cancer on health outcomes in patients with type 2 diabetes and to compare the effectiveness of a multifactorial intervention in diabetes patients with and without cancer.
METHODS: The randomized controlled trial Diabetes Care in General Practice (DCGP) included 1381 patients newly diagnosed with type 2 diabetes. Patients were randomized to either six years of structured personal diabetes care or routine care. In a post hoc analysis, we followed patients for 19 years in Danish national registries for the occurrence of diabetes-related outcomes. We used Cox regression models to estimate hazard ratios for outcomes.
RESULTS: At diagnosis 48 patients had cancer, and 243 patients were diagnosed with cancer during follow up. Patients with diabetes and cancer had excess all-cause mortality (HR 3.33; 95%CI 2.72-4.06), as well as an increased incidence of myocardial infarction (HR 1.76; 95%CI 1.29-2.39) and any diabetes-related outcome (HR 1.36; 95%CI 1.07-1.71). The intervention reduced the risk of both these endpoints in patients without cancer. Furthermore, there was no statistically significant difference in the effectiveness of the intervention among patients with and without cancer.
CONCLUSIONS: Diabetes patients with cancer had an increased risk of myocardial infarction and any diabetes-related outcome. The observed positive effect of structured personal diabetes care on clinical outcomes did not differ between patients with and without cancer. Attention to and prevention of diabetes complications in patients with both type 2 diabetes and cancer is warranted. TRIAL REGISTRATION: ClinicalTrials.gov NCT01074762 (February 24, 2010).

Entities:  

Keywords:  All-cause mortality; Cancer; Diabetes care; Diabetes complication; Primary care; Randomized controlled trial; Type 2 diabetes

Mesh:

Year:  2019        PMID: 31185995      PMCID: PMC6560822          DOI: 10.1186/s12902-019-0377-0

Source DB:  PubMed          Journal:  BMC Endocr Disord        ISSN: 1472-6823            Impact factor:   2.763


Background

Survival from many cancer types is steadily increasing [1]. As a result, a growing number of patients with cancer will live with other chronic diseases, of which diabetes is one of the most prevalent [2]. Besides giving rise to diabetes-related complications and death [3], type 2 diabetes in itself represents a risk factor for developing several types of cancer, e.g., pancreatic, liver, colorectal, breast, urinary tract, and female reproductive cancers [4]. Therefore, the number of cancer patients with diabetes will increase disproportionately [5]. Treating patients with both cancer and diabetes to diminish symptoms and improve quality of life is important. However, the management of diabetes in cancer patients is often complicated [6, 7]. For instance, the diagnosis and treatment of cancer may distract both patients, and health care providers form the appropriate management of diabetes. E.g., older studies show that regular chronic care of, e.g., DM. COPD and CVD is less common in patients who have completed primary cancer treatment compared to patients with no cancer [8-11], implying that for cancer patients with diabetes, both mortality and incidence of complications are increased compared to cancer patients without diabetes [12, 13]. Increased focus on improving the diabetes management of patients with both diabetes and cancer could lower the incidence of diabetes-related complications and mortality among these patients. However, while many studies describe how diabetes affects the incidence and mortality of cancer [14, 15], studies on the impact of cancer on diabetes-related outcomes are rare [8, 9]. Therefore, we studied the influence of a cancer diagnosis on the outcomes of diabetes management in the population-based cohort from the Diabetes Care in General Practice (DCGP) trial [16]. In this trial patients with newly diagnosed type 2 diabetes were randomized to receive either structured personal diabetes care or routine care. The intervention period lasted 6 years and patients were managed by their general practitioners (GPs). Results from this study showed that the intervention had a long-term effect on myocardial infarction (MI) and on the aggregate endpoint any diabetes-related outcomes. The present analysis is a 19-year follow-up and observational post hoc analysis. The aim was to document the impact of a cancer diagnosis on various outcomes in patients with type 2 diabetes, who took part in the DCGP trial. In addition, we compared the effectiveness of structured personal diabetes care in patients with and without cancer. Outcomes were all-cause mortality, diabetes-related mortality, as well as cardiovascular and microvascular complications.

Methods

A description of the study design has also been reported earlier [16-18]. The DCGP study was a cluster-randomized, open, controlled trial of the effect of intensified diabetes management (ClinicalTrials.gov NCT01074762), and the study adheres to CONSORT guidelines. A total number of 474 GPs volunteered to participate. Practices were randomly allocated to provide either routine care or structured personal care to their patients, who were newly diagnosed with type 2 diabetes.

Patients

The GPs included all of their patients who were 40 years or older and diagnosed with diabetes during the inclusion period. At a major laboratory, the diabetes diagnosis was confirmed by a single fasting whole blood/plasma glucose concentration (≥7.0/8.0 mmol/l). The protocol-based exclusion criteria were: unwillingness to participate, severe psychiatric disease or life-threatening somatic disease (Additional file 1: Figure S1). As previously reported, the randomization was balanced [16, 17]. In total 1369 (99.1%) of 1381 patients in the final study population were of Western European descent. Approximately 97.5% of the patients were classified as type 2 diabetes patients, which was based on the onset of insulin treatment. The Frederiksberg and Copenhagen Research Ethics Committee approved the study.

Intervention

The follow-up of patients in the intervention group consisted of examinations every three months and annual screening for diabetes complications. These examinations were facilitated by a questionnaire forwarded to the GP one month before the next expected consultation. The GP together with the patient was asked to define optimal goals for controlling important risk factors within three categories: ‘good,’ ‘acceptable,’ and ‘poor’ control. The emphasis was on glycemic control. At each quarterly consultation, GPs should compare the patient’s achievements with the goal and consider changing either goal or treatment accordingly. In overweight patients, the GP was prompted to agree with the patient on a small, realistic weight reduction, and this agreement should be recorded and followed up. However, participants were not required to target a particular body weight [16]. Through folders and leaflets for both physicians and patients, annual descriptive feedback reports on individual patients as well as six annual half-day seminars, GPs were introduced to possible solutions to therapeutic problems in the intervention group. Generally, the importance of diet was stressed, and if possible, the GPs were recommended to postpone the start of glucose-lowering drugs until at least three months after diabetes diagnosis, to observe the effect of any weight loss. Further, the GPs were also prompted to recommend increased physical exercise and simple dietary rules [16, 17]. In cases of persistent hyperglycemia, metformin was recommended for patients who were overweight by clinical judgment. Glipizide or glibenclamide was suggested for patients of normal weight, and tolbutamide was recommended in patients older than 70 years. If the goal for blood glucose was not achieved and before starting insulin, a combination of metformin and a sulfonylurea was suggested as the last step. The preferred treatments for patients with hypertension were ACE-inhibitors or β-blockers; however, for patients with heart failure furosemide was preferred, and for patients older than 70 years thiazides were recommended. In cases of diet-resistant dyslipidemia, lipid-lowering drugs were recommended. To individualize the treatment, the GPs were allowed to deviate from the recommendations. During the intervention phase, the GPs in the routine care group were free to choose any treatment and also to revise it [16]. The intervention was terminated on 26 September 1995, and the six-year examination was initiated. The study coordinators did not contact routine care practices during the intervention period after recruitment was completed and no attempt was made to maintain patients in randomized groups or to influence their therapy in the post-intervention period.

Clinical and registry-based follow-up

A description of all variables and definitions has previously been published [16-19]. After median (IQR) 5.57 (4.96–6.16) years in the structured personal care group and after 5.85 (5.30–6.45) years in the routine care group, a clinical follow-up examination was completed for 970 (93.4%) of 1039 surviving patients (Additional file 1: Figure S1). Using the unique identification number assigned to all Danish residents in the Danish Civil Registration System, emigration and vital status of all patients were ascertained. This enabled unambiguous linkage between the study population and the Danish national registries [20]. On 31 December 2008, all surviving patients were censored. The Danish Register of Causes of Death supplied information about possible and underlying contributory causes of death [21]. In four patients, the cause of death was not recorded. Information on cancer diagnoses was obtained from The Danish Cancer Registry [22], however non-melanoma skin cancer and some ill-defined cancers were not included in our cancer diagnosis (Additional file 1: Table S1). The Danish National Patient Register gave information on contacts with hospitals in Denmark, e.g., surgical procedures performed and discharge diagnoses [23]. These registries provided information on the predefined outcomes: all-cause mortality, diabetes-related deaths, any diabetes-related endpoint, stroke, myocardial infarction, microvascular disease, and peripheral vascular disease [16] (Additional file 1: Table S2).

Statistical analysis

A description of the study design has also been reported earlier [16-18]. The incidence rates of the outcomes defined above were compared between structured care and routine care with hazard ratios (HRs) from Cox regression models on time from diagnosis to the first occurrence of the outcome; death and end of follow-up were censoring events. In these models, the accrual of a cancer diagnosis was modeled as a time-varying covariate. These comparisons were performed for patients with and without a cancer diagnosis separately to be able to assess whether there is a differential effect. Concurrently, in an auxiliary Cox regression analysis, the incidence rates for cancer were compared between structured care and routine care; these incidences are visualized in Kaplan-Meier curves. If a patient had an occurrence of an outcome before the diabetes diagnosis, this patient was excluded from the analyses about that outcome. In all assessments, we used a robust sandwich estimator to determine 95% CIs and P values to adjust for the clustering of patients within practices [24]. We further adjusted the comparisons for the following variables, assessed at diagnosis: sex, age, body mass index, hypertension, diagnostic fasting plasma glucose, total cholesterol, living alone, basic school education, sedentary physical activity, and current smoking. Incidence rates were calculated as the number of patients experiencing the corresponding outcome divided by the total person-time at risk. Patients with missing values in one or more variables were omitted from analyses where these variables were included. Comparisons between structured care and routine care were done according to the intention-to-treat principle. Analyses were done using SAS (version 9.4). The level of statistical significance was 5%.

Results

At diabetes diagnosis, 48 of 1381 patients had a cancer diagnosis and the distribution of several characteristics, e.g., gender, fasting triglycerides, and current smoking seem to be unbalanced in relation to randomization arm in this small group (Tables 1 and 2). At the end of the intervention period, on average six years after the diagnosis of type 2 diabetes, 67 of 970 surviving and re-examined patients had cancer. At this point, levels of many of the clinical characteristics in these 67 patients (e.g., HbA1c and blood pressures) was similar to those of the whole study population [16, 17] (Tables 1 and 2). This indicates that the effect of the intervention on intermediate outcomes was similar for patients with and without concomitant cancer. During the entire follow-up period of 19 years, including 13 years of post-intervention follow up, 243 patients were diagnosed with cancer (Additional file 1: Table S1). The occurrence of cancer diagnoses in the two arms of the trial over the study period is shown in Fig. 1. The rate of new cases of cancer does not differ between the two arms (log-rank test P = 0.28). Also, in a Cox regression model comparing the cancer incidences in the two arms, adjusted for the same variables as in Table 3, there is no evidence for a difference: HR for structured personal care (95% CI) is 1.10 (0.84–1.43), P = 0.50.
Table 1

Characteristics of patients with cancer at diabetes diagnosis and after 6 years of intervention

Diabetes diagnosis (n = 48)After 6 years of intervention (n = 67)
n (structured care/routine)Structured personal careRoutine caren (structured care/routine)Structured personal careRoutine care
Sociodemographic
 Age (years)32/1670.3 (8.4)70.8 (7.7)37/2374.9 (7.8)72.9 (9.9)
 Male gender32/1613 (40.6)10 (62.5)40/2717 (42.5)13 (48.2)
 Live alonea32/1614 (43.8)5 (31.3)34/2218 (52.9)10 (45.5)
 Basic School educationa32/1430 (93.8)13 (92.9)39/2532 (82.1)19 (76.0)
Clinical
 Body mass index (kg/m2)31/1628.9 (4.4)28.9 (3.9)35/2327.7 (5.0)28.9 (4.7)
 Hypertension32/1623 (71.9)14 (87.5)37/2326 (70.3)21 (91.3)
 Systolic blood pressure (mmHg)31/16153.2 (25.5)152.4 (16.0)36/23147.1 (20.7)153.3 (15.3)
 Diastolic blood pressure (mmHg)31/1683.7 (8.7)85.8 (12.3)36/2378.2 (11.0)84.1 (9.2)
 Anti-diabetes treatment37/23
 Diet only11 (29.7)9 (39.1)
 Oral anti-diabetes treatment23 (62.2)9 (39.1)
 Insulin3 (8.1)5 (21.7)
Biochemical
 Fasting plasma glucose# (mmol/l)32/1613.1 (4.9)12.2 (3.2)30/179.3 (3.8)11.1 (7.0)
 Haemoglobin A1c (%)b23/159.8 (2.5)9.8 (1.7)35/218.4 (1.5)9.0 (2.0)
 Total cholesterol (mmol/l)30/166.3 (1.7)6.1 (1.2)35/216.2 (1.2)6.1 (1.3)
 Fasting triglycerides (mmol/l)30/163.14 (6.4)1.76 (0.7)33/182.21 (1.3)2.24 (1.2)
 Serum creatinine (μmol/l)30/1698.5 (29.5)104.3 (25.4)35/2198.4 (36.2)99.0 (31.7)
 Urinary albumin28/1633/19
 Normal19 (67.9)10 (62.5)20 (60.6)11 (57.9)
 Microalbuminuria9 (32.1)6 (37.5)11 (33.3)8 (42.1)
 Proteinuria0 (0.0)0 (0.0)2 (6.1)0 (0.0)
Behaviorala
 Sedentary physical activity32/169 (28.1)4 (25.0)34/2215 (44.1)8 (36.4)
 Current smoking32/169 (28.1)1 (6.3)34/2211 (32.4)4 (18.2)
Patient attitudesa
 Self-rated health32/1634/22
 Excellent3 (9.4)1 (6.3)5 (14.7)3 (13.6)
 Good9 (28.1)4 (25.0)7 (20.6)12 (54.6)
 Fair15 (46.9)10 (62.5)19 (55.9)6 (27.3)
 Poor/very poor5 (15.6)1 (6.3)3 (8.8)1 (4.6)
Process of carea
 No. of consultations last year37/238.54 (4.7)9.30 (6.2)
 No. of diabetes-related consultations last year37/234.19 (2.3)4.26 (2.4)

Values are means (SD) or numbers (percentages of group). After 6 years of intervention, 27 of 48 patients with cancer at diagnosis were still alive and were re-examined together with 40 patients who were diagnosed with cancer during the intervention period. aData from questionnaires to patients (behavioral) or their general practitioners (process of care). bThe diagnostic value is limited to measurements from within 45 days of diabetes diagnosis. Reference range: 5.4–7.4%

Table 2

Characteristics of diabetes patients without cancer at diabetes diagnosis and after 6 years of intervention

Diabetes diagnosis (n = 1333)After 6 years of intervention (n = 1002)
n (structured care/routine)Structured personal careRoutine caren (structured care/routine)Structured personal careRoutine care
Sociodemographic
 Age (years)729/60464.5 (11.6)64.2 (11.4)512/39867.9 (11.0)68.2 (10.9)
 Male gender729/604391 (53.6)319 (52.8)556/44617 (42.5)13 (48.2)
 Live alonea711/590222 (31.2)193 (32.7)472/382163 (19.1)132 (15.5)
 Basic School educationa691/574544 (78.7)446 (77.9)531/427412 (43.0)329 (34.3)
Clinical
 Body mass index (kg/m2)722/60329. (5.2)29.5 (5.4)502/38729.0 (5.0)28.8 (4.9)
 Hypertension729/604545 (74.8)444 (73.5)512/398371 (40.8)291 (32.0)
 Systolic blood pressure (mmHg)724/603149.2 (22.8)147.3 (21.5)510/392146.8 (20.3)151.4 (21.7)
 Diastolic blood pressure (mmHg)724/60385.0 (10.9)84.7 (10.8)510/39282.9 (9.4)83.0 (10.7)
 Anti-diabetes treatment511/398
  Diet only148 (29.0)122 (30.6)
  Oral anti-diabetes treatment303 (59.3)222 (55.8)
  Insulin60 (11.7)54 (13.6)
Biochemical
 Fasting plasma glucose (mmol/l)729/60414.5 (5.4)14.8 (5.9)396/2838.7 (3.4)9.7 (3.7)
 Hemoglobin A1c (%)b601/49710.3 (2.1)10.3 (2.1)504/3938.7 (1.5)9.2 (1.7)
 Total cholesterol (mmol/l)710/5946.3 (1.5)6.5 (1.7)503/3936.0 (1.4)6.2 (1.2)
 Fasting triglycerides (mmol/l)706/5942.6 (2.3)2.9 (4.4)470/3382.2 (2.4)2.3 (1.6)
 Serum creatinine (μmol/l)710/59592.2 (19.1)92.3 (21.9)503/39397.0 (51.8)96.4 (29.5)
 Urinary albumin695/579480/375
  Normal400 (57.6)331 (57.2)298 (34.9)218 (25.5)
  Microalbuminuria259 (37.3)219 (37.8)162 (19.0)135 (15.8)
  Proteinuria36 (5.2)29 (5.0)20 (2.3)22 (2.57)
Behaviorala
 Sedentary physical activity709/588201 (28.4)158 (26.9)466/379128 (15.2)120 (14.2)
 Current smoking710/588255 (36.0)207 (35.2)470/377151 (17.9)112 (13.2)
Patient attitudesa
 Self-rated health712/590472/381
  Excellent81 (11.4)74 (12.5)83 (9.73)80 (9.4)
  Good243 (34.1)192 (35.5)206 (24.2)141 (16.5)
  Fair321 (45.1)259 (43.9)158 (18.5)144 (16.9)
  Poor/very poor67 (9.41)65 (11.0)25 (2.9)16 (1.9)
Process of carea
  No. of consultations last year512/3978.2 (6.5)7.2 (5.5)
  No. of diabetes-related consultations last year512/3975.2 (3.4)4.4 (3.6)

Values are means (SD) or numbers (percentages of group)

aData from questionnaires to patients (behavioral) or their general practitioners (process of care)

bThe diagnostic value is limited to measurements from within 45 days of diabetes diagnosis. Reference range: 5.4–7.4%

Fig. 1

The cumulative incidence of cancer during 20 years after diabetes diagnosis according to randomization arm. Kaplan–Meier curves. Solid line: structured personal care; dotted line: routine care

Table 3

Mortality and other outcomes during 19 years of follow up

OutcomeIncidence rate (events per 1000 patient years, 95% CI)Hazard ratio (95% CI)a for cancer versus no cancerbP valuec
No cancerCancer
All-cause mortality48.3 (44.8–51.9)226.7 (199.3–256.7)3.33 (2.72–4.06)< 0.0001
Diabetes-related deaths34.2 (31.3–37.3)87.7 (71.1–107.2)1.81 (1.41–2.32)<.0.0001
Any diabetes-related endpoint64.3 (59.4–69.5)418.7 (351.5–495.1)1.36 (1.07–1.71)0.011
Myocardial infarction26.3 (23.6–29.2)90.3 (71.2–113.1)1.76 (1.29–2.39)0.0003
Stroke19.2 (16.9–21.7)47.5 (34.3–64.3)1.04 (0.68–1.57)0.87
Peripheral vascular disease4.16 (3.18–5.35)7.54 (3.22–14.9)0.92 (0.35–2.44)0.86
Microvascular disease10.4 (8.80–12.2)33.4 (23.0–46.9)1.44 (0.87–2.38)0.16

aThe hazard ratio (HR) is calculated in a Cox proportional hazard regression model where the first cancer diagnosis is a time-varying covariate. The corresponding 95% CI and P values are determined using a sandwich estimator for the variance to account for clustering of patients within practices

bAdjusted for age, sex and clustering, as well as for the following variables at diagnosis: live alone, basic school education, body mass index, hypertension, diagnostic fasting plasma glucose, total cholesterol, sedentary physical activity, and current smoking

cTests the effect of cancer versus no cancer within patients with type 2 diabetes mellitus

The influence of prevalent or incident cancer

Characteristics of patients with cancer at diabetes diagnosis and after 6 years of intervention Values are means (SD) or numbers (percentages of group). After 6 years of intervention, 27 of 48 patients with cancer at diagnosis were still alive and were re-examined together with 40 patients who were diagnosed with cancer during the intervention period. aData from questionnaires to patients (behavioral) or their general practitioners (process of care). bThe diagnostic value is limited to measurements from within 45 days of diabetes diagnosis. Reference range: 5.4–7.4% Characteristics of diabetes patients without cancer at diabetes diagnosis and after 6 years of intervention Values are means (SD) or numbers (percentages of group) aData from questionnaires to patients (behavioral) or their general practitioners (process of care) bThe diagnostic value is limited to measurements from within 45 days of diabetes diagnosis. Reference range: 5.4–7.4% The cumulative incidence of cancer during 20 years after diabetes diagnosis according to randomization arm. Kaplan–Meier curves. Solid line: structured personal care; dotted line: routine care Mortality and other outcomes during 19 years of follow up aThe hazard ratio (HR) is calculated in a Cox proportional hazard regression model where the first cancer diagnosis is a time-varying covariate. The corresponding 95% CI and P values are determined using a sandwich estimator for the variance to account for clustering of patients within practices bAdjusted for age, sex and clustering, as well as for the following variables at diagnosis: live alone, basic school education, body mass index, hypertension, diagnostic fasting plasma glucose, total cholesterol, sedentary physical activity, and current smoking cTests the effect of cancer versus no cancer within patients with type 2 diabetes mellitus The influence of prevalent or incident cancer Independent of the randomization group, the incidence rate for each individual outcome was greater among cancer patients than among non-cancer patients during the 19 years of follow-up (Table 3). In multivariable-adjusted analyses, the excess all-cause mortality (HR 3.33) and diabetes-related mortality (HR 1.81) for cancer patients were confirmed. However, among the five remaining predefined outcomes, only the difference for MI (HR 1.76) and the aggregate outcome of any diabetes-related outcome (HR 1.36) were statistically significant (Table 3). Among patients without cancer, the intervention reduced the risk of MI and any diabetes-related outcome, a result that is consistent with the findings in the main trial [16] (Table 4). We found no statistically significant difference in the effectiveness of the intervention between patients with and without cancer. Furthermore, there was no clear trend as to whether the intervention effect was larger or smaller among cancer patients.
Table 4

Mortality and other outcomes for patients with and without cancer in patients receiving structured or routine care during 19 years of follow up

No. of patients with outcome during 19 years of follow up (n (%))Incidence rate (events per 1000 patient years, 95% CI)Hazard ratioa (95% CI) for structured care versus routine carebP valuecInter-ac-tion P valued
Structured personal careRoutine careStructured personal careRoutine care
All-cause mortality
 Cancer147 (84.5)101 (86.3)220.1 (185.9–258.7)237.0 (193.1–288.1)0.97 (0.67–1.41)0.890.65
 No cancer375 (63.9)343 (68.2)45.8 (41.3–50.7)51.2 (45.9–56.9)0.89 (0.76–1.03)0.12
Diabetes-related deaths
 Cancer58 (33.5)38 (32.5)86.8 (65.9–112.3)89.2 (63.1–122.5)1.01 (0.63–1.63)0.960.75
 No cancer269 (45.9)240 (47.9)32.8 (29.0–37.0)35.8 (31.4–40.6)0.93 (0.77–1.13)0.46
Any diabetes-related endpoint
 Cancer79 (53.4)58 (61.1)339.8 (269.0–423.6)612.5 (465.0–792.2)0.75 (0.49–1.16)0.190.81
 No cancer331 (70.6)314 (75.3)58.9 (52.8–65.7)71.1 (63.5–79.4)0.80 (0.68–0.93)0.005
Myocardial infarction
 Cancer42 (25.2)34 (31.2)77.0 (55.5–104.1)114.9 (79.5–160.7)0.94 (0.53–1.69)0.840.50
 No cancer177 (33.5)176 (38.8)23.7 (20.3–27.5)29.5 (25.3–34.2)0.76 (0.62–0.94)0.011
Stroke
 Cancer23 (13.9)19 (17.6)43.4 (27.4–65.1)53.9 (32.4–84.3)0.65 (0.30–1.41)0.270.38
 No cancer133 (23.7)127 (26.3)17.8 (14.9–21.1)21.0 (17.5–25.0)0.94 (0.74–1.11)0.60
Peripheral vascular disease
 Cancer4 (2.3)4 (3.5)6.1 (1.6–15.8)9.8 (2.6–25.4)0.85 (0.49–1.48)0.990.88
 No cancer31 (5.3)30 (6.0)3.8 (2.6–5.5)4.6 (3.1–6.5)0.99 (0.16–6.13)0.57
Microvascular disease
 Cancer20 (11.6)13 (11.1)33.4 (20.4–51.7)33.3 (17.7–56.2)1.35 (0.51–3.57)0.370.39
 No cancer78 (13.3)70 (13.9)9.9 (7.8–12.4)11.0 (8.6–13.9)0.85 (0.60–1.21)0.55

aThe hazard ratio (HR) is calculated in a Cox proportional hazard regression model where the first cancer diagnosis is a time-varying covariate. The corresponding 95% CI and P values are determined using a sandwich estimator for the variance to account for clustering of patients within practices

bAdjusted for age, sex and clustering, as well as for the following variables at diagnosis: live alone, basic school education, body mass index, hypertension, diagnostic fasting plasma glucose, total cholesterol, sedentary physical activity, and current smoking

cTests the effect of randomization within patient groups with and without cancer. dTests whether the effect of randomization is different between patient groups with and without cancer

The effectiveness of the intervention

Mortality and other outcomes for patients with and without cancer in patients receiving structured or routine care during 19 years of follow up aThe hazard ratio (HR) is calculated in a Cox proportional hazard regression model where the first cancer diagnosis is a time-varying covariate. The corresponding 95% CI and P values are determined using a sandwich estimator for the variance to account for clustering of patients within practices bAdjusted for age, sex and clustering, as well as for the following variables at diagnosis: live alone, basic school education, body mass index, hypertension, diagnostic fasting plasma glucose, total cholesterol, sedentary physical activity, and current smoking cTests the effect of randomization within patient groups with and without cancer. dTests whether the effect of randomization is different between patient groups with and without cancer The effectiveness of the intervention

Discussion

To our knowledge, this is the first study to compare the effect of a diabetes intervention in diabetes patients with and without cancer. In this post hoc observational analysis with 19 years of follow up, we examined the effectiveness of structured personal diabetes care versus routine diabetes care in diabetes patients with and without cancer. Also, we evaluated the overall impact of cancer in these patients with newly diagnosed type 2 diabetes. Our results demonstrate that compared to diabetes patients without cancer, patients with both diabetes and cancer had significantly increased all-cause and diabetes-related mortality as well as increased incidence of any diabetes-related endpoint and MI. In the original report from the DCGP trial, as well as in the current study, the intervention was associated with a significantly reduced risk of MI and any diabetes-related endpoint in patients with type 2 diabetes [16]. However, diabetes patients with cancer benefitted neither more nor less from structured personal diabetes care compared to diabetes patients without cancer. It is well documented that cancer patients with diabetes have higher mortality than cancer patients without diabetes [12, 25]. A Danish study found that for all cancers combined and diabetes duration of 2 years at cancer diagnosis, patients treated with insulin experienced the highest mortality rate ratios starting from 3.7 for men and 4.4 for women one year after the cancer diagnosis [12]. Our HR (3.3) for all-cause mortality is comparable with these results. Similarly, other studies have shown that patients with both cancer and diabetes have an increased risk of death from MI, compared to cancer patients without diabetes [26]. The interaction between diabetes and cancer is complex [27]. There is good evidence for biologic mechanisms (e.g., hyperinsulinemia, hyperglycemia, inflammatory pathways, oxidative stress, and changes in hormones) contributing to the increased mortality risk when the diseases occur simultaneously [28]. Further, certain shared risk factors may be involved, such as age, sex, body weight, diet, physical activity, alcohol, and smoking, as these risk factors are likely to influence diabetes treatment as well as diabetes-related outcomes. In addition, cardiovascular complications of cancer chemotherapy and radiation are common [29], as well as glucocorticoids used in cancer treatment may also interfere with glucose metabolism and cause diabetes, or worsen pre-existing diabetes. Further, some antidiabetic drugs have been under scrutiny because of their potential influences on cancer development in a population already at risk [30]. Biologic mechanisms, shared risk factors, as well as factors associated with treatment, may, therefore, contribute to the increased mortality in patients with diabetes and cancer. Other factors, such as changes in priorities in the management of comorbidities in cancer patients, could also play a role in excess mortality. For instance, Sabatino et al. [10] found that many providers may miss opportunities to counsel cancer survivors about important behaviors regarding diet, exercise, and smoking, even though these behaviors may influence the prognosis of these patients. In like manner, patient priorities might also change, as patients focus on new, competing demands, while pre-existing conditions attain a lower priority [31]. E.g., studies have found that having a comorbid disease or receiving chemotherapy is likely to reduce patients’ prioritization and self-management of diabetes [32, 33]. Further, management of chronic diseases in patients with cancer is connected with lower testing rates [11] and lower adherence to medication [34, 35] resulting in difficulties meeting treatment goals for HbA1c, LDL-cholesterol and blood pressure targets [36]. In contrast, Chiao et al. compared diabetes outcomes one year before and after a colorectal cancer diagnosis in American veterans with diabetes [37]. They found that blood pressure and cholesterol levels remained unchanged, whereas HbA1c levels showed a tendency to improve. In addition, other studies [38-41] showed that diabetes patients with cancer received diabetes care of generally similar quality compared to diabetes patients without cancer. In the present study, the number of consultations among cancer patients in the two study arms showed no significant difference after six years of intervention.

Strengths and limitations

The results from this post hoc analysis of a randomized controlled trial should be interpreted as observational, as the presence of cancer was not accounted for in the randomization procedure. In the period following a diabetes diagnosis, the enhanced medical examination could lead to increased detection of cancer, which has been reported in some studies [42] and rejected in another study [43]. However, in the present study, the intervention did not influence the detection of cancer (Fig. 1), as the rate of new cases of cancer did not differ between the two arms. The distribution of types of cancers resulted in relatively small numbers of patients in different sub-classes of cancer (Additional file 1: Table S1), which prevented us from making subgroup analyses according to cancer type and stage. An observational study did not find any effect of tumor stage and site on diabetes quality indicators among cancer patients [38]. Nevertheless, it seems reasonable to assume that aggressive lung cancer or pancreatic cancer has a larger impact on the course of diabetes than limited skin cancers, which are not included in this study. The group of patients who had cancer recorded before the diabetes diagnosis included only patients who had survived this cancer, and it did not include patients with terminal cancers as this was an explicit exclusion criterion. The group of patients who got a cancer diagnosis after the diabetes diagnosis did include more aggressive type of cancers. It is, therefore, a limitation of the present study that the effect of cancer was modeled without taking the timing of the cancer diagnosis into account. People who did not survive probably had more severe conditions and could have been treated less intensively as regards their diabetes and diabetic complications. The cancer diagnoses were identified in the Danish Cancer Registry, which has been documented to have high completeness and accuracy [22, 44] (Additional file 1: Table S1).

Conclusions

In this post hoc analysis of the DCGP trial, diabetes patients with cancer had significantly increased mortality, an increased incidence of myocardial infarction, as well as an increased incidence of the aggregate endpoint any diabetes-related outcome, compared to patients without cancer. The intervention reduced the risk of MI and any diabetes-related outcome in patients without cancer, and there were no statistically significant differences in the effectiveness of the intervention between patients with and without cancer. The observed high risk of cardiovascular disease among patients with both diabetes and cancer suggests that this late complication should receive extra attention in this group of high-risk patients. Table S1. Categorization of all patients from the Diabetes Care in General Practice (DCGP) study with ICD-10 diagnoses in the Danish Cancer Register (DCR). Table S2. Definition of clinical outcomes in the 19-year registry-based monitoring of the Diabetes Care in General Practice (DCGP) study. Figure S1. Patient flow through study. (DOCX 110 kb)
  42 in total

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Authors:  Elizabeth Y Chiao; Preethi V Nambi; Aanand D Naik
Journal:  J Cancer Surviv       Date:  2010-08-19       Impact factor: 4.442

2.  The effect of incident cancer, depression and pulmonary disease exacerbations on type 2 diabetes control.

Authors:  Elizabeth A Bayliss; Patrick J Blatchford; Sophia R Newcomer; John F Steiner; Diane L Fairclough
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Journal:  Dan Med Bull       Date:  2006-11

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Journal:  Med Care       Date:  2007-09       Impact factor: 2.983

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Journal:  Cancer       Date:  2004-10-15       Impact factor: 6.860

Review 7.  Long-term all-cause mortality in cancer patients with preexisting diabetes mellitus: a systematic review and meta-analysis.

Authors:  Bethany B Barone; Hsin-Chieh Yeh; Claire F Snyder; Kimberly S Peairs; Kelly B Stein; Rachel L Derr; Antonio C Wolff; Frederick L Brancati
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Authors:  Susan A Sabatino; Ralph J Coates; Robert J Uhler; Lori A Pollack; Linda G Alley; Laura J Zauderer
Journal:  J Clin Oncol       Date:  2007-05-20       Impact factor: 44.544

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Authors:  Eve A Kerr; Michele Heisler; Sarah L Krein; Mohammed Kabeto; Kenneth M Langa; David Weir; John D Piette
Journal:  J Gen Intern Med       Date:  2007-07-24       Impact factor: 5.128

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2.  General practitioners' perspectives on chronic care consultations for patients with a history of cancer: a qualitative interview study.

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Review 3.  Cardiometabolic Comorbidities in Cancer Survivors: JACC: CardioOncology State-of-the-Art Review.

Authors:  Leah L Zullig; Anthony D Sung; Michel G Khouri; Shelley Jazowski; Nishant P Shah; Andrea Sitlinger; Dan V Blalock; Colette Whitney; Robin Kikuchi; Hayden B Bosworth; Matthew J Crowley; Karen M Goldstein; Igor Klem; Kevin C Oeffinger; Susan Dent
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