Literature DB >> 32968866

Costs of diabetes complications: hospital-based care and absence from work for 392,200 people with type 2 diabetes and matched control participants in Sweden.

Emelie Andersson1, Sofie Persson1,2, Nino Hallén3, Åsa Ericsson4, Desirée Thielke3, Peter Lindgren1,5, Katarina Steen Carlsson6,7, Johan Jendle8.   

Abstract

AIMS/HYPOTHESIS: The risk of complications and medical consequences of type 2 diabetes are well known. Hospital costs have been identified as a key driver of total costs in studies of the economic burden of type 2 diabetes. Less evidence has been generated on the impact of individual diabetic complications on the overall societal burden. The objective of this study was to analyse costs of hospital-based healthcare (inpatient and outpatient care) and work absence related to individual macrovascular and microvascular complications of type 2 diabetes in Sweden in 2016.
METHODS: Data for 2016 were retrieved from a Swedish national retrospective observational database cross-linking individual-level data for 1997-2016. The database contained information from population-based health, social insurance and socioeconomic registers for 392,200 people with type 2 diabetes and matched control participants (5:1). Presence of type 2 diabetes and of diabetes complications were derived using all years, 1997-2016. Costs of hospital-based care and of absence from work due to diabetes complications were estimated for the year 2016. Regression analysis was used for comparison with control participants to attribute absence from work to individual complications, and to account for joint presence of complications.
RESULTS: Use of hospital care for complications was higher in type 2 diabetes compared with control participants in 2016: 26% vs 12% had ≥1 hospital contact; there were 86,104 vs 24,608 outpatient visits per 100,000 people; and there were 9894 vs 2546 inpatient admissions per 100,000 people (all p < 0.001). The corresponding total costs of hospital-based care for complications were €919 vs €232 per person (p < 0.001), and 74.7% of costs were then directly attributed to diabetes (€687 per person). Regression analyses distributed the costs of days absent from work across diabetes complications per se, basic type 2 diabetes effect and unattributed causes. Diabetes complications amounted to €1317 per person in 2016, accounting for possible complex interactions (25% of total costs of days absent). Key drivers of costs were the macrovascular complications angina pectoris, heart failure and stroke; and the microvascular complications eye diseases, including retinopathy, kidney disease and neuropathy. Early mortality in working ages cost an additional €579 per person and medications used in risk-factor treatment amounted to €418 per person. CONCLUSIONS/
INTERPRETATION: The economic burden of complications in type 2 diabetes is substantial. Costs of absence from work in this study were found to be greater than of hospital-based care, highlighting the need for considering treatment consequences in a societal perspective in research and policy. Graphical abstract.

Entities:  

Keywords:  Costs and cost analysis; Diabetes complications; Diabetes mellitus, type 2; Hospital costs; Insurance, disability; Sick leave

Year:  2020        PMID: 32968866      PMCID: PMC7641955          DOI: 10.1007/s00125-020-05277-3

Source DB:  PubMed          Journal:  Diabetologia        ISSN: 0012-186X            Impact factor:   10.122


Introduction

Type 2 diabetes is a prevalent and costly chronic disease associated with several health complications. Worldwide, the prevalence of diabetes has increased over the last decades [1] and, in 2019, there were about 463 million adults with diabetes according to the International Diabetes Federation [2]. Rising health expenditure in absolute values and as percentage of gross national product, as shown in, for instance, Organisation for Economic Cooperation and Development (OECD) health data [3], is a concern for decision makers in national health systems as well as insurance-based systems. The economic burden of diabetes complications is known to go beyond resource use and costs in the health sector. Previous studies on the cost burden of type 2 diabetes have demonstrated that costs from reduced productivity (including e.g. work days absent, reduced labour force participation, mortality) constitute a substantial part of the total cost burden, as shown by, for instance, the most recent updates on economic costs of diabetes in the USA from 2017 and in the UK from 2012 [4-6]. Less evidence has been generated on the economic impact of individual diabetic complications and little is known about which complications are the key drivers of the overall societal burden. The identification of key cost drivers among complications informs research and policy of where further actions and tools are needed. Such data support clinicians, employers, organisations and society with facts on the value of preventing and postponing the incidence of diabetes complications and the extent of the economic burden falling on the individual where insurance coverage is lacking or inadequate. Studies on the cost of illness combine data from a mix of sources, often using aggregate costs where a part of the costs is attributed to the specific disease. Complications related to type 2 diabetes are conditions that may also occur in the general population, such as cardiovascular diseases. Hence, analyses of the costs of type 2 diabetes usually report the total costs incurred by people with diabetes and the cost attributed to diabetes when applying top-down estimation strategies. For example, the ADA's report on the economic costs of diabetes in 2017 attributed 57% of the hospital inpatient care costs incurred by people with diabetes to diabetes per se (US$70 billion of US$123 billion) [4]. Costs of disease may also be derived from individual-level data with population coverage, preferably holding longitudinal information from multiple administrative registers. A Danish study of number of days absent from work due to diabetes-related complications showed that several of the investigated complications led to more than 3 months of work absence for the average person with diabetes [6]. Recent years have seen an increase in studies using diagnostic codes and administrative registers to identify people with diabetes and conduct epidemiological, clinical and economic research. Some examples include studies on total costs of care for people with diabetes [7-10], on prevalence and incidence of diabetes [11, 12] and on types of glucose-lowering medication and clinical outcomes [13]. Similar topics have also been addressed using patient cohorts registered in quality registers or incidence registers and using outcome data from national health registers in Sweden [14-21]. Sweden has a long tradition of reporting population-based information into registers, and data can be record-linked between registers for research using the Swedish personal identification number. Register-based definitions of diabetes may rely on diabetes diagnosis solely [12] or use a combination of observed healthcare contacts with diabetes diagnosis and filled prescriptions of different types of glucose-lowering medications [8, 13, 22]. This study used the latter strategy with the purpose of estimating costs of hospital (inpatient and outpatient) care and costs of absence from work related to individual macrovascular and microvascular complications of type 2 diabetes in Sweden. Using cross-linked microdata, matched control participants and straight-forward empirical strategies, this study addresses previously identified research gaps in the economic costs of type 2 diabetes and the contributions of individual diabetes complications. It also provides new insights into the balance of costs between the healthcare sector and other sectors.

Methods

Data

The analysis of the cost burden of type 2 diabetes complications in 2016 used data from a retrospective observational study database [22]. The database cross-links 20 years of individual-level data, 1997–2016, from three national authorities in Sweden: the National Board of Health and Welfare (NBHW), Försäkringskassan (the Swedish Social Insurance Agency) and Statistics Sweden. The NBHW identified people with diabetes and provided data from the National Patient Register (NPR) on outpatient and inpatient hospital healthcare [23], and from the National Prescribed Drugs Register (NPDR) on filled prescriptions of selected drugs [24]. Further register description is available in electronic supplementary material (ESM) Table 1. Demographic and socioeconomic background characteristics were obtained from Statistics Sweden from the Register of the Total Population and the LISA database (longitudinal integrated database for health insurance and labour market studies [25]). Försäkringskassan supplied data on days absent from work from the MiDAS database (Micro-Data for the Analysis of Social Insurance) covering schemes of sickness and rehabilitation benefits, and sickness and activity compensation [26]. This study calculated costs of complications in the year 2016 based on use of hospital care and absence from work in 2016. To identify the population with type 2 diabetes and presence of diabetes complications, we used the full longitudinal database (1997–2016). People with diabetes of labour market active ages (16–70 years) were selected for the database if they, at any point during 1997–2016, fulfilled at least one of the following criteria: At least one healthcare visit or inpatient stay with diabetes as main or secondary diagnosis by the International Classification of Diseases version 10 (ICD 10; http://apps.who.int/classifications/icd10/browse/2016/en) codes for type 1 diabetes (E10), type 2 diabetes (E11) or unspecified diabetes (E14) in any year in the NPR from 1997 to 2016. At least two dispensed prescriptions of glucose-lowering medication (Anatomic Therapeutic Chemical (ATC) Classification System codes, A10) with dispense dates not more than 6 months apart in the NPDR, from 1 July 2005 to 31 December 2017. Women treated with glucose-lowering medication with a coinciding registration of pregnancy were not included in the study population but were eligible again after 2 years. An index date was defined as the first documented occurrence from 1997 and onwards in the NPR, or the first documentation in the NPDR from 1 July 2005 and onwards, whichever occurred first. For each person with diabetes, Statistics Sweden matched control participants from the general population (5:1) using exact year of birth, sex and region of residence in the index year. This enabled incremental analysis of costs of hospital care and absence from work for people with diabetes compared with control participants. The design allowed control participants to switch to the diabetes group at a later stage if they then fulfilled inclusion criteria for diabetes. Further information on the data sources, retrieval process and control selection can be found in the ESM (pages 2–6). The study database includes background data (demographic and socioeconomic), exposure data (diabetes complications) and outcome data (healthcare use, filled prescriptions, mortality and days absent from work).

Empirical strategies

Selecting the type 2 diabetes population

The empirical definition of type 2 diabetes was similar to previous registry-based diabetes studies [7, 8, 13]. From the study database we omitted people with type 1 diabetes defined as having inpatient and/or outpatient care registered with type 1 diabetes (ICD E10), but no registration of type 2 diabetes (E11) or unspecified diabetes (E14), as main or supplementary diagnosis in the NPR during the study period. All other cases were included as type 2 diabetes (see the ESM for more information on selection process).

Defining diabetes complications

Complications were defined using ICD codes and procedure codes (Classification of Healthcare Interventions [Klassifikation av. vårdåtgärder (KVÅ); NBHW], which holds surgical and non-surgical interventions including diagnostic procedures in line with previous studies, as referenced in ESM Table 2). The incidence and prevalence rates of complications were identified through registrations of main diagnosis in hospital-based care. The empirical strategy was not expected to capture all early stages of complications, non-emergency needs and problems not necessarily needing assistance from medical care, but to have a comprehensive coverage of use of hospital resources. The characteristics of each complication and its expected impact on work capacity guided the empirical strategy for identifying complications as either an event or a chronic state in the estimation of absence from work. Most complications were considered chronic; that is, after the first hospital care contact, they were assumed to remain, with potential impact on absence from work for the remainder of the working life. This work used a dichotomous definition (yes/no) of presence of each complication and thus covered the range of impact through potential progression. Four complications (severe events of hypoglycaemia and hyperglycaemia requiring hospital care, ketoacidosis and coma) were considered events as commonly used in health economic evaluations. See also ESM Linkage of diabetes complications to costs. Chronic state complications were: eye disease and diabetic retinopathy excluding vision loss and blindness (eye disease for short); vision loss and blindness; neuropathy; peripheral vascular disease; amputation; kidney disease; end-stage renal disease (ESRD) with dialysis or kidney transplantation; ischaemic heart disease (IHD); angina pectoris; heart failure; atrial fibrillation; diabetic foot and/or ulcers; and osteoarthritis. Myocardial infarction and stroke allowed both event- and chronic state-related consequences. For these complications, an event was defined as an inpatient care episode including potential readmission within 30 days [14, 15]. Outpatient healthcare use with main diagnosis of myocardial infarction or stroke was considered part of the chronic state of history of the respective events.

Strategy for costing hospital care resource use and medications

We used diagnosis-related group (DRG) codes and the main diagnosis to assign costs to hospital-based care, pricing all NPR healthcare contacts in 2016 using contact-specific weights from the Nordic Diagnosis-Related Group (NordDRG) nomenclature [27] and the national price for a DRG weight in 2016 [28]. The proportion attributed to diabetes was estimated as the increase in costs per 100 people compared with control participants. Incremental costs of prescription medications for preventive type 2 diabetes treatment included glucose-lowering medication, and key preventive anti-hypertensive and lipid-lowering medications were estimated by comparison with control participants, but no attribution to individual complications was attempted.

Strategy for costs of absence from work

We used information from Försäkringskassan on (short-term) sickness and rehabilitation benefits, and (long-term) sickness and activity compensation, in 2016 [29]. Net days absent from work was derived using start and stop dates for periods with sick pay and the degree of sick leave. The cost of absence from work was valued by multiplying net days with age- and sex-specific earnings including payroll taxes [30] from labour market data at Statistics Sweden. The analysis included all individuals <66 years old irrespective of labour market status in 2016. Diagnoses recorded at Försäkringskassan are insufficient as a source for attributing spells of sick leave in 2016 to a specific complication of diabetes. Instead, costs of days absent from work were attributed to listed diabetes complications using regression analyses, including matched control participants and adjusting for level of education (see the Statistical analyses section). Costs of excess mortality in working ages were calculated based on the human capital method [30]. Age- and sex-specific excess mortality in the diabetes group compared with the general population were multiplied by discounted age- and sex-specific net earnings, including pay roll taxes and accounting for mean work force activity up to 65 years of age.

Statistical analyses

Descriptive analyses

The descriptive analyses for diabetic and control participants report demographic and socioeconomic data as number and proportion for categorical variables and as mean and standard deviation, or median and interquartile range, for continuous variables. The univariate analysis used t test for differences between study groups since the central limit theorem guarantees near normality of sample means in large-sample studies like ours [31]. The prevalence rates of complications in 2016 were measured as the rate per 100,000 people to illustrate long-term burden after first onset of the complication, and were compared using standardised differences. The presence of multimorbidity was analysed using cross-tabulation of number of people with diabetes and pairwise combinations of studied diabetes complications in 2016 [8]. The results are presented as a bubble diagram where the size of the bubble indicates the proportion of people with diabetes having each complication, and the lines in between complications indicate the number of people with both complications (Fig. 1).
Fig. 1

Network of comorbidity interactions for people with type 2 diabetes in 2016 (N=392,200)

Network of comorbidity interactions for people with type 2 diabetes in 2016 (N=392,200)

Cost analyses

The total costs of diabetes were calculated by summarising costs for hospital-based care, medication and absence from work in 2016. Ordinary least squares regression analysis investigated the correlation between costs of days absent from work and complication indicators, see Equation (1). Regression analyses have been applied in several studies of diabetes complications [6, 8, 32, 33]; in our study, the large sample size allowed the use of simple methods as the analyses depend on sample means and variances [31]. The empirical model distributed costs of days absent from work across diabetes complications, accounting for potential multiple comorbidities at the individual level, and including education as a confounding factor. It did not include demographic or other socioeconomic characteristics as the aim was to obtain an mean value across individuals irrespective of age, sex or other basic characteristics. Equation (1) shows the empirical model, including interaction effects to explore potential differences in effects of K complications on work absence across study groups (whereby K indicates the number of complications).for individual i. The estimated cost of work absence related to a complication, for an average individual with diabetes and the complication, consisted of four parts: The first term is the regression constant β(, which is a basic mean cost of absence from work in the estimation sample. It averages costs of days absent from work for all individuals, with and without work absence, and with and without complications etc. The second term β( is the basic diabetes effect, which is not attributed to any specific complication but differentiates the diabetes group from control participants, including potential differences in the distribution of other diseases not explored in this study. Of primary interest for the analyses was the part of the costs of absence from work that was associated with complications in type 2 diabetes, which is the sum of the basic complication effect and the interaction effect β( + β(.

Results

Descriptive analysis

The study population contained 392,200 people with type 2 diabetes alive and resident in Sweden in 2016, identified in health data registers since 1997 (index years median 2008), with 1,643,170 matched control participants. The mean age was 63 years in 2016, with 59% men and 41% women (Table 1). Panel attrition after the index year was mainly due to diabetes onset in individuals originally selected as control participants (5:1). It implied that while 51% of people with diabetes still had five control participants in 2016, 0.3% had no control participants and 7.7% had only one or two control participants. This attrition led to small differences in age and sex distribution between type 2 diabetes and control participants. There was generally a lower achieved level of education among people with diabetes compared with control participants (compulsory education only 30% vs 21%, university 22% vs 33%). These data confirm an expected difference in the distribution of socioeconomic characteristics between diabetic and control participants, motivating an inclusion of the level of education in regression analysis to account for these differences.
Table 1

Demographics of the study population

DemographicType 2 diabetesN=392,200ControlN=1,643,170
Index year (median; IQR)2008 (2005; 2013)2009 (2005; 2013)
Control participants available in 2016
  5200,214 (51.0)
  4106,126 (27.1)
  354,781 (14.0)
  223,202 (5.9)
  16849 (1.7)
  01028 (0.3)
Year of birth
  <194039,312 (10)123,819 (7.5)
  1940–1949139,491 (35.6)541,711 (33)
  1950–1959109,537 (27.9)484,661 (29.5)
  1960–196962,681 (16)295,487 (18)
  1970–197925,786 (6.6)123,517 (7.5)
  1980–198911,007 (2.8)52,559 (3.2)
  ≥19904386 (1.1)21,416 (1.3)
Age in 2016, mean (SD)62.8 (12.3)61.5 (12.3)
Age in index year, mean (SD)55.1 (11.5)54.4 (11.9)
Sex
  Men230,539 (58.8)931,598 (56.7)
  Women161,661 (41.2)711,572 (43.3)
Education
  Compulsory117,989 (30.1)351,786 (21.4)
  Upper secondary182,173 (46.5)738,437 (44.9)
  University86,825 (22.1)541,910 (33)
  Missing5213 (1.3)11,037 (0.7)

Data are number (proportion) unless otherwise stated

Demographics of the study population Data are number (proportion) unless otherwise stated Table 2 shows a higher morbidity among people with type 2 diabetes. The prevalence rates for ten out of 15 complications were higher in the diabetes group based on standardised differences, even though mean values were different in all complications. The largest standardised differences were found for kidney disease, eye disease and angina pectoris.
Table 2

Prevalence of diabetes complications in type 2 diabetic (N = 392,200) and control participants (N = 1,643,170) 2016: number of individuals with complication per 100,000 in population

Diabetes complication and concomitant conditionsRate per 100,000 individualsp valueStd diff
Type 2 diabetesControl
Macrovascular complication
  IHD96193288<0.001–0.260
  Angina pectoris10,9773733<0.001–0.280
  Acute myocardial infarction86403058<0.001–0.240
  Stroke59942504<0.001–0.174
  Heart failure51181430<0.001–0.208
  Atrial fibrillation71454261<0.001–0.086
  Other sudden death, cause unknown100.0277–0.004
Microvascular complication
  Eye disease and diabetic retinopathya43,14928,295<0.001–0.337
  Vision loss or blindness374211<0.001–0.039
  Lower extremity disease
    Neuropathy61673316<0.001–0.162
    Peripheral vascular disease4479764<0.001–0.190
    Amputation79734<0.001–0.093
  Kidney disease16,3572260<0.001–0.465
  ESRDb1391316<0.001–0.129
Other complications and events
  Hypoglycaemia7075<0.001–0.117
  Hyperglycaemia6193<0.001–0.118
  Ketoacidosis1430<0.001–0.061
  Coma9213<0.001–0.036
  Diabetic foot and ulcer48741445<0.001–0.182
  Osteoarthritis4001544<0.001–0.158

aNot vision loss and blindness

bESRD with dialysis or kidney transplantation

Std diff, standardised difference

Prevalence of diabetes complications in type 2 diabetic (N = 392,200) and control participants (N = 1,643,170) 2016: number of individuals with complication per 100,000 in population aNot vision loss and blindness bESRD with dialysis or kidney transplantation Std diff, standardised difference Figure 1 shows the diabetes-related comorbidity by describing the most prevalent diabetes complications and pairwise links of the most frequent interactions. Eye disease (43%) and kidney disease (16%) had the highest prevalence, and 43,000 individuals (11%) had both of these complications. The second most common interaction (n = 24,000; 6%) was between angina pectoris (11%) and eye disease. Other frequent interactions were IHD in combination with current or previous myocardial infarction (23,300; 6%), angina pectoris (22,900; 6%) and eye disease (19,800; 5%). People with myocardial infarction also had eye disease (17,400; 4%) and angina pectoris (16,300; 4%). Heart failure (n = 20,100; 5.1%) showed the most complexity with multiple complications: more than 4000 individuals had heart failure and at least one other of six studied complications (eye disease, kidney disease, IHD, angina pectoris, myocardial infarction and atrial fibrillation). Fewer interactions were found for the major cardiovascular complications of stroke (n = 23,500; 2.3%; where 5300 also had eye disease) and myocardial infarction (n = 33,900; 8.6%; where 8300 also had kidney disease).

Costs of diabetes complications in 2016

People with type 2 diabetes and complications had high hospital care consumption and absence from work in 2016 (Table 3). The total costs of hospital-based care were €360 million, of which 74.7% (€269.3 million; €687 per person with diabetes) were attributed to type 2 diabetes from comparison with corresponding mean costs among control participants. Table 3 presents two alternative estimates of the total costs for days absent from work for people with complications. By the high-level analysis accounting for having at least one recorded complication event and state, respectively, absence from work amounted to €1744 million, of which 51% (€884 million; €2254 per person with diabetes) was attributed to complications (total of event and chronic state). The total costs of hospital-based care and of absence from work related to diabetes complications in 2016 were €1153 million (€2943 per person with diabetes).
Table 3

 Diabetes complications and costs in euros in 2016: hospital-based care costs and total costs of days absent from work in 2016

Diabetes complication and concomitant conditionsHospital-based care costs (inpatient admissions and outpatient visits) due to diabetes complicationsCosts of absence from work due to diabetes complications
Total cost of hospital-based care (€)Attributed to diabetes complication (%)aTotal costs of days absent from work (€)Attributed to diabetes complication (%)b
High-level analysis—complications aggregated
  Hospital-based care (admissions and visits)360,335,00075
  Absence from work by regression analysis
    Event448,026,00021
    State1,296,035,00061
Detailed analysis—by individual complication
  Macrovascular complications
    IHD13,549,00071100,425,0000
    Angina pectoris22,992,00072146,949,00031
    Acute myocardial infarction32,248,00068
      Event12,588,00011
      State102,118,00011
    Stroke27,529,00058
      Event4,812,0000
      State119,867,00059
    Heart failure34,269,0008074,623,00043
    Atrial fibrillation14,586,0003355,305,0005
    Other sudden death, cause unknown143931
  Microvascular complications
    Eye disease and diabetic retinopathyc53,187,00057654,577,00016
    Vision loss or blindness108,0005911,558,00048
    Lower extremity disease
    Neuropathy2,992,00051169,134,00033
    Peripheral vascular disease20,383,0008758,233,00030
    Amputation7,493,0009511,410,00030
    Kidney disease44,526,00085307,539,00024
    ESRDd46,531,0008950,858,00051
  Other complications and events
    Hypoglycaemia5,606,0009915,123,00021
    Hyperglycaemia2,379,00010019,605,00038
    Ketoacidosis2,947,0001004,168,00022
    Coma951,000963,071,00051
    Diabetic foot and ulcer12,052,00091115,173,00036
    Osteoarthritis16,005,0008643,217,00034

aResults from Table 5 columns (1) and (2): percentage calculated as [(1)−(2)]/(1). See also ESM Table 4

bResults from regression analysis in ESM Table 3 columns (1) and (2): percentage calculated as (2)/(1)

cNot vision loss and blindness

dESRD with dialysis or kidney transplantation

Diabetes complications and costs in euros in 2016: hospital-based care costs and total costs of days absent from work in 2016 aResults from Table 5 columns (1) and (2): percentage calculated as [(1)−(2)]/(1). See also ESM Table 4 bResults from regression analysis in ESM Table 3 columns (1) and (2): percentage calculated as (2)/(1) cNot vision loss and blindness dESRD with dialysis or kidney transplantation The analysis of costs of absence from work by individual complications (Table 3; Detailed analysis—by individual complication) gave a higher estimate of the total costs of absence from work (€2080 million), but the costs attributed to the diabetes complications were lower (25%; €516.4 million, €1317 per person with diabetes). By this estimate, the total costs of hospital-based care and absence from work related to diabetes complications in 2016 were €785.7 million, corresponding to €2003 per person with diabetes. IHD conditions angina pectoris and myocardial infarction generated absence from work, while the regression analysis (Table 3) did not attribute additional days absent to remaining IHD conditions. A similar pattern was seen for the event of stroke, although the state of stroke caused additional absence from work indicating long-term effects. See ESM Table 3 for more details on estimations of costs related to absence from work. Two additional cost items from the data were not distributed across complications but are included as points of reference. First, we observed 1100 additional deaths before age 66 years compared with general age-related mortality. The loss of working-age years was valued at €227 million from lost production (€579 per person). Second, insulin and other glucose-lowering medications cost €135 million in 2016. People with type 2 diabetes had 924,902 registered prescriptions of other risk-factor medications, including drugs used for the treatment or prevention of hypertension, dyslipidaemia, eye disease and neuropathy, costing a total of €45 million of which €29 million (65%) was a diabetes increment (ESM Table 4). The total added costs for diabetes related medications were €164 million (€418 per person). Combining results in Tables 3 and 4 shows that common complications may induce high total costs, although cost per person is low. People with type 2 diabetes used more hospital care as a group: 86,104 vs 24,608 per 100,000 outpatient visits and 9894 vs 2546 per 100,000 inpatient admissions (both p < 0.001) (Table 4). Moreover, 26% of people with type 2 diabetes had at least one hospital contact compared with 12% for control participants (p < 0.001; ESM Table 5). More than half of these (15%) had ≥1 registration of eye disease, accounting altogether for 1372 inpatient admissions and 141,631 outpatient visits. The largest differences between type 2 diabetic and control participants were found among complications common in diabetes, such as kidney disease and diabetic foot and ulcers. Heart failure and kidney disease generated most inpatient admissions among people with type 2 diabetes. Atrial fibrillation had the highest rate among control participants (578 per 100,000 control participants) but this was still a lower level than in type 2 diabetes (847 per 100,000). Total costs of hospital-based care were estimated at €919 per person for the diabetes population and at €232 for the control group (Table 5 shows results per 100 people). Inpatient admissions related to complications were key drivers. Two complications also generated sizable outpatient costs: eye disease and ESRD (Table 5).
Table 4

Number of outpatient visits and inpatient admissions per 100,000 people for the population of type 2 diabetic (N = 392,200) and control participants (N = 1,643,170) in 2016

Diabetes complication and concomitant conditionsOutpatient visitsInpatient admissions
Type 2 diabetesControl participantsp valueType 2 diabetesControl participantsp value
Any event (hospital visit, admission)86,10424,608<0.00198942546<0.001
Macrovascular
  IHD2450813<0.00137199<0.001
  Angina pectoris1183396<0.001859245<0.001
  Acute myocardial infarction20879<0.001963316<0.001
  Stroke327142<0.001753333<0.001
  Heart failure2482656<0.0011588291<0.001
  Atrial fibrillation28682409<0.001847578<0.001
  Other sudden death, cause unknown100.014000.625
Microvascular
  Eye disease and diabetic retinopathya36,11216,776<0.001350151<0.001
  Vision loss or blindness9335<0.00131<0.001
  Lower extremity disease
    Neuropathy1295689<0.001258<0.001
    Peripheral vascular   disease1932292<0.00162390<0.001
    Amputation421<0.0011709<0.001
  Kidney disease93812015<0.0011450307<0.001
  ESRDb22,899183<0.00134728<0.001
Other complications and events
  Hypoglycaemia9735<0.0012702<0.001
  Hyperglycaemia6563<0.0011520<0.001
  Ketoacidosis970<0.0011590<0.001
  Coma6512<0.001473<0.001
  Diabetic foot and ulcer2795278<0.00141242<0.001
  Osteoarthritis24742<0.00150371<0.001

aNot vision loss and blindness

bESRD with dialysis or kidney transplantation

Table 5

Hospital care costs in euros per 100 people for participants with type 2 diabetes and control participants in 2016

Diabetes complication and concomitant conditionsHospital care costs (€)Costs of outpatient visits (€)Costs of inpatient admissions (€)
(1)Type 2 diabetes(2)Control(3)p value(4)Type 2 diabetes(5)Control(6)p value(7)Type 2 diabetes(8)Control(9)p value
Any hospital care utilisation91,87523,222<0.00132,3999104<0.000159,47714,118<0.001
Macrovascular complications
  IHD3453982<0.0011045338<0.0012408644<0.001
  Angina pectoris58601668<0.001771264<0.00150901404<0.001
  Acute myocardial infarction82262587<0.0019532<0.00181312555<0.001
  Stroke70222935<0.00114863<0.00168742872<0.001
  Heart failure87321711<0.001982275<0.00177501436<0.001
  Atrial fibrillation37172492<0.0011045898<0.00126821594<0.001
  Other sudden death, cause unknown<0.1<0.10.749<0.1<0.10.014<0.1<0.10.625
Microvascular complications
  Eye disease and diabetic retinopathya13,5585808<0.00112,2705258<0.0011299539<0.001
  Vision loss or blindness3211<0.0012111<0.00111<0.1<0.001
  Lower extremity disease
    Neuropathy760370<0.001623338<0.00113742<0.001
    Peripheral vascular disease5195686<0.001697106<0.0014498581<0.001
    Amputation1911106<0.00163<0.1<0.0011848106<0.001
  Kidney disease11,3511668<0.0013653412<0.00176981267<0.001
  ESRDb11,8691320<0.00196301024<0.0012239296<0.001
Other complications and events
  Hypoglycaemia142511<0.001296<0.1<0.001113011<0.001
  Hyperglycaemia602<0.1<0.001106<0.1<0.001507<0.1<0.001
  Ketoacidosis750<0.1<0.001<0.1<0.1<0.001750<0.1<0.001
  Coma24311<0.00111<0.1<0.00123211<0.001
  Diabetic foot and ulcer3073285<0.00188784<0.0012186211<0.001
  Osteoarthritis4076581<0.0017411<0.0014013570<0.001

aNot vision loss and blindness

bESRD with dialysis or kidney transplantation

Number of outpatient visits and inpatient admissions per 100,000 people for the population of type 2 diabetic (N = 392,200) and control participants (N = 1,643,170) in 2016 aNot vision loss and blindness bESRD with dialysis or kidney transplantation Hospital care costs in euros per 100 people for participants with type 2 diabetes and control participants in 2016 aNot vision loss and blindness bESRD with dialysis or kidney transplantation

Discussion

This study points to substantial costs of complications in hospital care for type 2 diabetes: the incremental costs of hospital-based care, about 75% of the total costs of complications, corresponded to €687 per person with diabetes. Costs outside the health sector were even higher in a societal perspective. With two alternative specifications of the analysis, costs of workdays absent attributed to diabetes complications were estimated at €1317 or €2254 per person, respectively. By both specifications, costs of absence from work were higher than costs of hospital-based care, indicating a significant contribution to overall societal burden of complications. Production loss related to excess mortality among people with type 2 diabetes of labour market active ages added further to total costs. Detailed analyses of costs of complications indicated that the levels of costs of hospital-based care and absence from work for macrovascular complications were €96 million and €164 million, respectively. Microvascular complications had higher costs for hospital-based care (€136 million), and costs of absence from work were nearly twice as large as those for macrovascular complications (€287 million). The data presented underline the fact that common complications may add up to high societal costs even though the cost per person is low. Two examples of this are the observed costs for eye disease and kidney disease. Data allowed for separating of severe vision loss from earlier stages of eye disease and account for dialysis or kidney transplantation in kidney disease, but do not allow for further categorising. The estimates provide an indication of the mean value of potentially heterogeneous groups. ‘Other complications’ was a mixed group where the chronic conditions diabetic foot and ulcers and osteoarthritis were key drivers of societal costs. The results point at a remaining unmet need for risk-factor treatment as diabetes complications continue to generate substantial costs of hospital-based care and absence from work. A further observation was that the percentage of total costs of hospital-based care attributed to type 2 diabetes and the percentage of total costs of work absence attributed to diabetes complications varied between complications (Table 3). For instance, the regression analysis did not attribute any of the costs of work absence to the IHD complication, while 71% of hospital costs were attributed to type 2 diabetes. Figure 1 shows that comorbidities were common among people with IHD. Both angina pectoris and myocardial infarctions were common in people with IHD and were associated with considerable costs of work absence attributed to the complication. Previous estimates of the economic burden of diabetes differ from this study in objectives and design but provide relevant points of reference. A British study from 2012 estimated current and future costs of type 1 and type 2 diabetes, respectively, using aggregated data and assumptions from the literature. The results showed that diabetes accounted for 10% of total health resource expenditure in 2010/2011 in the UK, where costs of production loss exceed direct healthcare costs [5]. The investigators reported total costs and did not compare them with corresponding costs in the general population. On the other hand, the diabetes increment was estimated in the US study by the ADA from 2017, which reported that people with diabetes had 2.3 times higher medical expenditures compared with people with no diabetes [4]. This study included both type 1 and type 2 diabetes and did not report costs by individual diabetes complications. A German study from 2018 explored the economic impact of diabetes complications and their interactions using nation-wide statutory health insurance data. The results showed that an increased number of complications was associated with higher total costs [7, 8]. The German study, as well as two recent studies from Sweden [9, 10], reported total healthcare costs for people with type 2 diabetes but did not account for the fact that several complications are increasingly prevalent with age in the general population. Using the estimated costs of complications among control participants, we show that the fraction attributed to diabetes varies substantially between complications (Table 3). The presence of diabetes complications was sourced from 20 years of individual-level longitudinal NPR data capturing complications serious enough to require outpatient physician care or an inpatient admission. Compared with studies with more limited follow-up [6, 7], this study is expected to provide a more comprehensive perspective on the long-term burden of diabetes complications. The record-linking between health data and social insurance registers for people with type 2 diabetes and their matched control participants provided a foundation for analyses of absence from work related to diabetes complications, which makes results more robust as they do not rely on recall in surveys or combination of results from many different sources as, for example, in the cited US and UK studies [4, 5]. Addressing the impact of all complications at the same time implied that our results were less vulnerable to double counting, especially considering multiple comorbidities. The study design also implied that we avoided double counting of burden of diabetes complications since we used the main diagnosis in hospital care. Still, this was a conservative approach as we might underestimate the costs since diabetes complications registered as secondary diagnosis with diabetes as main diagnosis were not included. A further strength of the analysis was that it also captured the long-term consequences of complications through data from the sickness and activity compensation scheme available for people with permanent loss of work capacity. The study has limitations. It lacks national data on use of primary care related to diabetes complications and information about reduced productivity at work (‘presenteeism’) due to diabetes complications. Furthermore, the study design did not cover all people with diabetes but only those with diabetes indication in the working-age population. However, state of complication and use of hospital-based care were captured up to age 79 years. The Swedish National Diabetes Register (NDR), with an estimated coverage of 91.5%, reported that about 363,000 individuals with type 2 diabetes were registered in 2016 [34]. This indicates that, while the study design does not include people aged 80 years and older, the study population of 392,200 individuals still represents most of all cases of type 2 diabetes in Sweden. Moreover, the incremental costs of diabetes compared with the general population diminish with age [35]. Therefore, underestimation of the costs of complications in Sweden from onset of type 2 diabetes beyond study inclusion criteria was limited.

Conclusion

This study shows that the burden of complications in type 2 diabetes is substantial, and costs due to absence from work are even greater than costs of hospital-based healthcare. This poses a challenge to society in terms of loss of work capacity, and more research and emphasis on guideline implementation are needed in the field of preventive treatment of type 2 diabetes complications.
  24 in total

1.  Prevalence and incidence of diabetes mellitus: a nationwide population-based pharmaco-epidemiological study in Sweden.

Authors:  S P O Jansson; K Fall; O Brus; A Magnuson; P Wändell; C J Östgren; O Rolandsson
Journal:  Diabet Med       Date:  2015-02-20       Impact factor: 4.359

2.  Estimating the current and future costs of Type 1 and Type 2 diabetes in the UK, including direct health costs and indirect societal and productivity costs.

Authors:  N Hex; C Bartlett; D Wright; M Taylor; D Varley
Journal:  Diabet Med       Date:  2012-07       Impact factor: 4.359

3.  Days absent from work as a result of complications associated with type 2 diabetes: Evidence from 20 years of linked national registry data in Sweden.

Authors:  Sofie Persson; Pierre Johansen; Emelie Andersson; Peter Lindgren; Desirée Thielke; Brian L Thorsted; Johan Jendle; Katarina Steen Carlsson
Journal:  Diabetes Obes Metab       Date:  2020-05-22       Impact factor: 6.577

4.  Long-term detrimental consequences of the onset of type 1 diabetes on annual earnings--evidence from annual registry data in 1990-2005.

Authors:  K Steen Carlsson; M Landin-Olsson; L Nyström; H J Arnqvist; J Bolinder; J Ostman; S Gudbjörnsdóttir
Journal:  Diabetologia       Date:  2009-12-18       Impact factor: 10.122

5.  Real-World Costs of Continuous Insulin Pump Therapy and Multiple Daily Injections for Type 1 Diabetes: A Population-Based and Propensity-Matched Cohort From the Swedish National Diabetes Register.

Authors:  Emilie Toresson Grip; Ann-Marie Svensson; Mervete Miftaraj; Björn Eliasson; Stefan Franzén; Soffia Gudbjörnsdottir; Katarina Steen Carlsson
Journal:  Diabetes Care       Date:  2019-01-31       Impact factor: 19.112

6.  Exploring Different Strategies of Assessing the Economic Impact of Multiple Diabetes-Associated Complications and Their Interactions: A Large Claims-Based Study in Germany.

Authors:  Katharina Kähm; Michael Laxy; Udo Schneider; Rolf Holle
Journal:  Pharmacoeconomics       Date:  2019-01       Impact factor: 4.981

7.  Health Care Costs Associated With Incident Complications in Patients With Type 2 Diabetes in Germany.

Authors:  Katharina Kähm; Michael Laxy; Udo Schneider; Wolf H Rogowski; Stefan K Lhachimi; Rolf Holle
Journal:  Diabetes Care       Date:  2018-01-18       Impact factor: 19.112

8.  Insulin pump therapy, multiple daily injections, and cardiovascular mortality in 18,168 people with type 1 diabetes: observational study.

Authors:  Isabelle Steineck; Jan Cederholm; Björn Eliasson; Araz Rawshani; Katarina Eeg-Olofsson; Ann-Marie Svensson; Björn Zethelius; Tarik Avdic; Mona Landin-Olsson; Johan Jendle; Soffia Gudbjörnsdóttir
Journal:  BMJ       Date:  2015-06-22

9.  Risk of future microvascular and macrovascular disease in people with Type 1 diabetes of very long duration: a national study with 10-year follow-up.

Authors:  S Adamsson Eryd; A-M Svensson; S Franzén; B Eliasson; P M Nilsson; S Gudbjörnsdottir
Journal:  Diabet Med       Date:  2016-10-19       Impact factor: 4.359

10.  Worldwide trends in diabetes since 1980: a pooled analysis of 751 population-based studies with 4.4 million participants.

Authors: 
Journal:  Lancet       Date:  2016-04-06       Impact factor: 79.321

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  11 in total

Review 1.  Adherence to and persistence with antidiabetic medications and associations with clinical and economic outcomes in people with type 2 diabetes mellitus: A systematic literature review.

Authors:  Marc Evans; Susanne Engberg; Mads Faurby; João Diogo Da Rocha Fernandes; Pollyanna Hudson; William Polonsky
Journal:  Diabetes Obes Metab       Date:  2021-12-09       Impact factor: 6.408

Review 2.  Type 2 diabetes burden among migrants in Europe: unravelling the causal pathways.

Authors:  Charles Agyemang; Eva L van der Linden; Louise Bennet
Journal:  Diabetologia       Date:  2021-10-16       Impact factor: 10.122

3.  Hospital treatment costs associated with incident complications in patients with type 2 diabetes-real-world study based on electronic patient information systems.

Authors:  Reijo Sund; Tuomas Peltonen; Aku-Ville Lehtimäki; Janne Martikainen
Journal:  BMC Health Serv Res       Date:  2022-04-09       Impact factor: 2.655

4.  Cost-Effectiveness Evaluation of a Remote Monitoring Programme Including Lifestyle Education Software in Type 2 Diabetes: Results of the Educ@dom Study.

Authors:  Michael Mounié; Nadège Costa; Pierre Gourdy; Christelle Latorre; Solène Schirr-Bonnans; Jean-Marc Lagarrigue; Henri Roussel; Jacques Martini; Jean-Christophe Buisson; Marie-Christine Chauchard; Jacqueline Delaunay; Soumia Taoui; Marie-France Poncet; Valeria Cosma; Sandrine Lablanche; Magali Coustols-Valat; Lucie Chaillous; Charles Thivolet; Caroline Sanz; Alfred Penfornis; Benoît Lepage; Hélène Colineaux; Hélène Hanaire; Laurent Molinier; Marie-Christine Turnin
Journal:  Diabetes Ther       Date:  2022-02-08       Impact factor: 2.945

5.  Individual goal-based plan based on nursing theory for adults with type 2 diabetes and self-care deficits: a study protocol of a randomised controlled trial.

Authors:  Jessica Rosman; Jan W Eriksson; Mats Martinell; Anna Lindholm Olinder; Janeth Leksell
Journal:  BMJ Open       Date:  2022-03-29       Impact factor: 2.692

6.  The public economic burden of suboptimal type 2 diabetes control upon taxpayers in Sweden: Looking beyond health costs.

Authors:  Nikolaos Kotsopoulos; Mark P Connolly; Michael Willis; Andreas Nilsson; Åsa Ericsson; James Baker-Knight
Journal:  Diabetes Obes Metab       Date:  2022-03-06       Impact factor: 6.408

7.  Healthcare costs and hospitalizations in US patients with type 2 diabetes and cardiovascular disease: A retrospective database study (OFFSET).

Authors:  Marc Evans; Abhishek Shankar Chandramouli; Mads Faurby; Kasper Sommer Matthiessen; Phillip Bredahl Mogensen; Subodh Verma
Journal:  Diabetes Obes Metab       Date:  2022-05-03       Impact factor: 6.408

8.  Length of Hospital Stay, Hospitalization Costs, and Their Drivers in Adults with Diabetes in the Romanian Public Hospital System.

Authors:  Cornelia Bala; Adriana Rusu; Dana Ciobanu; Gabriela Roman
Journal:  Int J Environ Res Public Health       Date:  2022-08-14       Impact factor: 4.614

9.  Long-Term Cost Effectiveness of Oral Semaglutide Versus Empagliflozin and Sitagliptin for the Treatment of Type 2 Diabetes in the Swedish Setting.

Authors:  Björn Eliasson; Åsa Ericsson; Adam Fridhammar; Andreas Nilsson; Sofie Persson; Barrie Chubb
Journal:  Pharmacoecon Open       Date:  2022-01-21

10.  Mortality rates and cardiovascular disease burden in type 2 diabetes by occupation, results from all Swedish employees in 2002-2015.

Authors:  Sofia Carlsson; Tomas Andersson; Mats Talbäck; Maria Feychting
Journal:  Cardiovasc Diabetol       Date:  2021-06-26       Impact factor: 9.951

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