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. 2023 Feb 21;15:213–239. doi: 10.2147/CLEP.S392416

A Review of Major Danish Biobanks: Advantages and Possibilities of Health Research in Denmark

Kristina Laugesen 1,, Jonas Mengel-From 2,3, Kaare Christensen 2,3,4, Jørn Olsen 1, David M Hougaard 5,6, Lasse Boding 7, Anja Olsen 8,9, Christian Erikstrup 10, Merete Lund Hetland 11,12, Estrid Høgdall 12,13, Alisa D Kjaergaard 14, Erik Sørensen 15, Anja Brügmann 16, Eva Rabing Brix Petersen 17, Ivan Brandslund 17,18, Børge G Nordestgaard 19, Gorm B Jensen 20, Nils Skajaa 1, Frederikke Schønfeldt Troelsen 1, Cecilia Hvitfeldt Fuglsang 1, Lise Skovgaard Svingel 1, Henrik T Sørensen 1
PMCID: PMC9960719  PMID: 36852012

Abstract

Biobank research may lead to an improved understanding of disease etiology and advance personalized medicine. Denmark (population ~5.9 million) provides a unique setting for population-based health research. The country is a rich source of biobanks and the universal, tax-funded healthcare system delivers routinely collected data to numerous registries and databases. By virtue of the civil registration number (assigned uniquely to all Danish citizens), biological specimens stored in biobanks can be combined with clinical and demographic data from these population-based health registries and databases. In this review, we aim to provide an understanding of advantages and possibilities of biobank research in Denmark. As knowledge about the Danish setting is needed to grasp the full potential, we first introduce the Danish healthcare system, the Civil Registration System, the population-based registries, and the interface with biobanks. We then describe the biobank infrastructures, comprising the Danish National Biobank Initiative, the Bio- and Genome Bank Denmark, and the Danish National Genome Center. Further, we briefly provide an overview of fourteen selected biobanks, including: The Danish Newborn Screening Biobank; The Danish National Birth Cohort; The Danish Twin Registry Biobank; Diet, Cancer and Health; Diet, Cancer and Health – Next generations; Danish Centre for Strategic Research in Type 2 Diabetes; Vejle Diabetes Biobank; The Copenhagen Hospital Biobank; The Copenhagen City Heart Study; The Copenhagen General Population Study; The Danish Cancer Biobank; The Danish Rheumatological Biobank; The Danish Blood Donor Study; and The Danish Pathology Databank. Last, we inform on practical aspects, such as data access, and discuss future implications.

Keywords: biobank, research, healthcare system, registries, epidemiology, precision medicine

Introduction

Biobank research may lead to an improved understanding of disease etiology and advance personalized medicine with the purpose of targeted prevention and diagnostic efforts and more efficient and safe treatment. Human biological specimens, combined with clinical and demographic data from population-based health registries and databases, play an important role in the advances of health research. Denmark provides a unique setting for such research and offers possibilities for studying biomarkers, epigenetics, genome-wide associations, and gene–environment interactions in large study populations.1,2 Furthermore, data from the Danish biobanks are frequently included in multinational projects or consortia.3–17 Denmark has around 5.9 million inhabitants; a universal, tax-funded healthcare system; and a rich source of hundreds of biobanks, registries, and databases available for research.18,19 The unique civil registration number, assigned to all Danish citizens, enables accurate linkage of such resources at the individual level and ensures virtually no loss to follow-up.20

In this review, we provide an overview of advantages and possibilities of biobank research in Denmark. Knowledge about the setting is a necessity to understand the full potential. Therefore, we first describe the Danish healthcare system, the population-based registries and databases, and the interface with biobanks. We then compile information about key infrastructures related to biobank collection and storage and fourteen selected large biobanks. Last, we inform on practical aspects, including data access, and discuss future implications.

Setting

The Danish Healthcare System

Denmark is a country of 5.9 million inhabitants (87% of Danish origin, 8.5% immigrants or descendants from non-Western countries, and 4.8% immigrants or descendants from Western countries).21 The country has a welfare state model where healthcare is tax-funded and mainly free of user payment for all Danish citizens, including free access to general practitioners and hospitals, and partial reimbursement of prescribed medications.18,19 The Danish healthcare sector is divided into the primary healthcare sector, such as general practitioners and other healthcare professionals in private practice (physiotherapists, chiropractors, psychologists, dentists, and private practicing medical specialists), the secondary healthcare sector (general hospitals), and the tertiary healthcare sector (university hospitals). Despite private practice, all general practitioners and the majority of other private practices are reimbursed by the public healthcare system. The hospital sector provides hospital emergency care, inpatient treatment, hospital outpatient clinic care, including psychiatric hospital care.18,19 Less than 2% of the total hospital capacity is private. Except in emergencies, patients need referral from a general practitioner to access the hospital sector and the majority of private medical specialists. Hence, general practitioners (~20% of the total physician work force) play an essential role as gatekeepers.18,19

From an administrative perspective, the Danish healthcare system has three levels: the national level (state), the regional level (five regions united in the interest organization Danish Regions), and the local level (98 municipalities). The government (state), headed by The Ministry of Health, outlines the framework of the healthcare system by legislation, national guidelines, and healthcare monitoring.18,19 The Ministry of Health consists of the ministry and nine agencies, including the Danish Health Authority, the Danish Medicines Agency, Statens Serum Institute (SSI), the Danish Health Data Authority, the Danish Patient Safety Authority, the Danish Agency for Patient Complaints, the National Center of Ethics, and the Danish National Genome Center. The five regions operate and own the public hospitals. Together, the Danish Ministry of Health and the Danish Regions are further responsible for national strategies for personalized medicine, including improvements in Danish biobank infrastructures.22 The municipalities are responsible for social services, primary disease prevention and health promotion, home care and nursing homes, and rehabilitation outside hospitals.18,19

The Danish healthcare system delivers routinely and prospectively collected data to various population-based registries and databases. The universal access to healthcare diminishes selection of specific patient groups into the registries and ensures presentation from all segments of the population.18,19 A detailed description of the Danish healthcare system and the registries is out of the scope of this review. In Table 1, we provide references for key papers that describe the healthcare system and some frequently used population-based registries. In the next section, we briefly describe how Danish registries based on routinely collected data can enrich biobank research.

Table 1.

Overview of Papers About the Danish Healthcare System and Selected Population-Based Registries

References
The Danish healthcare system Schmidt M et al The Danish health care system and epidemiological research: from health care contacts to database records. Clin Epidemiol. 2019.18
Laugesen K et al Nordic Health Registry-Based Research: A Review of Health Care Systems and Key Registries. Clin Epidemiol. 2021.19
The Civil Registration System Schmidt M et al The Danish Civil Registration System as a tool in epidemiology. European journal of epidemiology. 2014.20
The National Patient Registry Schmidt M et al The Danish National Patient Registry: a review of content, data quality, and research potential. Clinical epidemiology. 2015.24
The National Prescription Registry Pottegard A et al Data Resource Profile: The Danish National Prescription Registry. International journal of epidemiology. 2016.26
The Psychiatric Central Research Registry Mors O et al The Danish Psychiatric Central Research Register. Scandinavian Journal of Public Health. 2011.25
The Cancer Registry Gjerstorff ML. The Danish Cancer Registry. Scand J Public Health. 2011.28
The Laboratory information System Arendt JFH et al Existing Data Sources in Clinical Epidemiology: Laboratory Information System Databases in Denmark. Clin Epidemiol. 2020.31
The Medical Birth Registry Bliddal M et al The Danish Medical Birth Register. Eur J Epidemiol. 2018.23
The Cause of Death Registry Helweg-Larsen K. The Danish Register of Causes of Death. Scand J Public Health. 2011.27

The Danish Civil Registration System, the Population-Based Registries and the Interface with Biobanks

The civil registration number is a unique, personal identity number assigned to all Danish residents at birth or upon immigration. The 10-digit number encodes the date of birth and sex and is part of the Danish Civil Registration System established in 1968.19,20 This system covers the entire Danish population and follows each person from assignment of the civil registration number until date of death or emigration, with virtually no loss to follow-up.20 Denmark is therefore a nationwide cohort with an accumulated source population of approximately nine million people (since 1968).19,20 The civil registration number is used in almost all interfaces with the Danish public sector, including all contacts with the healthcare system. The civil registration number represents the key identifier across all Danish registries, databases, and biobanks and allows accurate and easy linkage of data between these (Figure 1). Denmark has hundreds of linkable population-based registries and databases available for research.18,19,23–30 The combination of access to biological materials in biobanks, the features of the Danish healthcare system, the Civil Registration System, and the many registries and databases makes Denmark a unique setting for research with numerous possibilities as displayed in Box 1. The population-based registries can provide additional information, not stored by the biobanks themselves. In some biobank cohorts, they collect detailed information through questionnaires, interviews and clinical examinations when enrolling or following their participants. Still, researchers may lack certain baseline or outcome information. In such circumstances, additional clinical information may be available in registries, such as the National Patient Registry (1977 -),24 the National Cancer Registry (1943 -),28 the National Prescription Registry (1995 -),26 the Psychiatric Central Research Registry (1969 -),25 the Laboratory information systems,31 the clinical quality databases, and in the Medical Birth Registry (1973 -)23 (Table 1 and Box 1). Sociodemographic information, such as income, education level, and employment status is available in the social and demographic registers (1982 -) (Box 1). Moreover, it is possible to characterize participants according to country of origin by linkage to the Civil Registration System. Further, parents, siblings, and offspring can be identified in the Civil Registration System, as the system holds information on the maternal and paternal civil registration number for each index person (Table 1 and Box 1). Although, the routinely collected data are rich in many ways, data availability and quality need consideration before use. Before using these data resources, we recommend to read more thoroughly about the healthcare system and registries (Table 1) and search for data validation papers.

Figure 1.

Figure 1

Danish biobanks can be linked to hundreds of population-based registries and databases by the civil registration number.

Notes: The Bio- and Genome Bank Denmark includes following individual biobanks: the Danish Cancer Biobank, the Danish Rheumatologic Biobank, the Danish Blood Donor Biobank, the Danish Diabetes Biobank, the Danish Dermatology Biobank, the Danish Screening Biobank, the Danish Pathology Data Bank and Genetics Biobank, the Danish Genetics Biobank, the Danish Research and Whole-Genome Sequencing Biobank, and the Danish COVID-19 Biobank. The time period of coverage for registries is: The Medical Birth Registry 1973 -; The National Patient Registry 1977 -; The Psychiatric Central Research Registry 1969 -; The National Prescription Registry 1995 -; The Registry of Cause of Death 1970 -; The Cancer Registry 1943 -; and the social and demographic registers of Statistics Denmark 1982-. Further, Denmark has ~85 clinical quality databases and numerous disease and procedure registries that typically contain detailed clinical information on selected patient groups or procedures. Information from general practitioners includes recording of services in the Danish National Health Service Registry 1990 -. Yet, the level of details is limited in this registry. Prescriptions issued by general practitioners are recorded in the National Prescription Registry (if redeemed by the patient). Lab tests send from general practitioners to hospital laboratories are recorded in the Laboratory Information Systems.

Box 1.

Biobank Research in Denmark: Advantages and Possibilities

Advantages and Possibilities
  • Participants in biobanks have continuous and virtually complete follow-up with exact information on date of death or emigration by linkage to the Civil Registration System.

  • The many Danish registries and databases can provide clinical and sociodemographic data in addition to the data collected and stored at the biobank itself.

  • It is possible to conduct cohort or case–control studies nested in the biobanks.

  • It is possible to access updated address information on biobank donors, which can increase response to, for example, follow-up questionnaires.

  • For individuals invited into biobanks, it is possible to describe and compare non-participants to participants with respect to clinical and sociodemographic information stored in the Danish population-based registries.

  • It is possible to identify relatives, such as parents and offspring, through the Civil Registration System. As an example, the phenomenon of transgenerational effects (when effects of exposures are inherited by next generations through mechanisms, such as epigenetic changes) can be investigated.

Danish Infrastructures Related to Biobank Research

A biobank is a structured collection of individual-level biological specimens and can be divided into research biobanks, clinical biobanks, or biobanks for other purposes (eg donor biobanks).32 Research biobanks are initiated with the direct purpose of research projects, whereas clinical biobanks are for later diagnostic purposes or treatment decisions on the patient level, but may also contribute to research.32 Before describing some of the large biobanks in Denmark, we here describe some key Danish infrastructures related to biobank research. Denmark has made great efforts to improve biobank research as part of the national strategy for personalized medicine.22 The strategy involves the following aims: 1) to improve biobank infrastructure with the purpose to ensure easy, uniform, and high-quality collection and storage of biological specimens; 2) to facilitate research collaborations on both national and international level and between public and private sectors; and 3) to offer a better overview of available biobank material and application processes. Below we provide an overview of three important infrastructures related to biobank research, including the Danish National Biobank Initiative, the Bio- and Genome Bank Denmark, and the Danish National Genome Center.

The Danish National Biobank Initiative

The Danish National Biobank Initiative consists of three parts:33

  1. The Danish Biobank Register (online tool) that links samples to register information.

  2. The Danish National Biobank (physical biobank).

  3. The Coordinating Centre that handles data applications and secures sample access.

The Danish Biobank Register

The Danish Biobank Register is an online tool that provides an overview of biological samples available for research in some of the Danish biobanks. The Danish Biobank Register combines information on biobank samples with information from administrative and health registries (the Civil Registration System, the National Patient Registry, and the National Pathology Registry) in an online database. Very recently, laboratory test results were added to the search engine, starting with more than 100 million tests in the Copenhagen Primary Care Laboratory Database34 and with the ambition to integrate all laboratory test results performed in Denmark. From a practical point of view, researchers submit a request on the website biobanks.dk. The request may contain information on biobank, sample type, and populations of interest (according to eg sex, age, country of birth, parental country of birth, and diagnosis). Following request submission, an email will return with an aggregated overview of available data.

The Danish National Biobank

The Danish National Biobank (hosted by SSI) is the largest biobank in Denmark containing more than 14 million samples from approximately 5 million individuals (Table 2). This biobank stores samples from different SSI-managed and external biobank-managed data sources.33 Examples of SSI-managed collections are the Danish Newborn Screening Biobank, the Danish National Birth Cohort, the Greenland samples, and various diagnostic samples. Examples of external biobank-managed collections are the two Danish Cancer Society cohorts Diet, Cancer, and Health and “Diet, Cancer and Health – next generations”. Staff employed at the Danish National Biobank is available to advise researchers on study design, sample handling, registration, transportation, analysis, and storage.

Table 2.

Overview of Biological Samples in the Danish National Biobank

Sample Type Number of Samples Number of Individuals
Throat swab 4,321,842 3,135,728
Serum 3,317,536 951,521
Dried blood spot samples 2,565,821 2,091,587
Plasma 1,488,350 442,752
Whole blood 830,524 320,872
DNA 678,237 451,455
Buffy coat  346,033 126,527
Urine 320,456 126,054
Saliva  90,407 42,554
Red blood cells  85,349 41,738
Amniotic fluid  66,407 56,505
Cord blood mononuclear cells 65,032 65,032
Proteins extracted from dried blood spot samples 39,168 38,979
Spinal fluid 28,596 16,498
Other (PBMC, faeces, stem cells, biopsies, etc) 83,430 49,040

Note: Information available from www.danishnationalbiobank.com/biological-samples (Accessed January 2022) with permission from Danish National Biobank.

Abbreviation: PBMC, peripheral blood mononuclear cells.

More recently, the biobank has played a major role in building the Danish COVID-19 test strategy. High-throughput pipelines, already installed in the biobank, were expanded to a capacity of more than 250,000 RT-PCR tests per day. To date, more than 4.2 million throat swab samples are collected in the biobank, including more than 3.3 million COVID-19 positive swab samples. Further, more than 30,000 COVID-19 positive serum or plasma samples are available.

Bio- and Genome Bank Denmark

The Bio- and Genome Bank Denmark is a nationwide cooperation between Danish public hospitals, funded and operated by the Danish Regions (the entities operating the public hospitals in Denmark).35 The Bio- and Genome Bank Denmark includes following individual biobanks, the majority being clinical biobanks: the Danish Cancer Biobank, the Danish Rheumatologic Biobank,36 the Danish Blood Donor Biobank,37,38 the Danish Diabetes Biobank, the Danish Dermatology Biobank, the Danish Screening Biobank, the Danish Genetic Biobank, the Danish Research Biobank, and the Danish COVID-19 Biobank (Figure 2).35 All these biobanks are using the same data registration system. Furthermore, the Danish Pathology Data Bank and Danish Genetics Data Bank are included in the infrastructure.39 The aim of Bio- and Genome Bank Denmark is to ensure biological material for diagnosis or treatment of the patients and to facilitate the use of the expanding infrastructure for both private and public researchers. For example, drug development and research on personalized medicine benefit from collaborative research between the public healthcare sector and the pharmaceutical industry.

Figure 2.

Figure 2

Organization of the Bio- and Genome Bank Denmark.

Notes: Source is with permission from Bio- and Genome Bank Denmark. Available from: https://www.regioner.dk/rbgben/about/organization. The figure shows how the Bio- and Genome Bank Denmark is organized with a Steering Committee, a national secretariat and Scientific Advisory Boards for present and future biobanks. XXX denotes that more and more biobanks are included in the structure.

Abbreviation: RBGB, The Bio- and Genome Bank Denmark.

The collection and storage of biological samples take place at local hospital departments/centers in each region and are facilitated by well-established infrastructures as part of routine procedures. The secretariat is hosted by Department of Pathology at Herlev Hospital, which has the overview of all samples in Denmark and coordinates samples for diagnostic and research together with regional project leaders. The regional centers are responsible for managing materials from their respective region and for making arrangements with the local hospital departments. Bio-and Genome Bank Denmark is headed by the Regional directors of Health in a structure consisting of a National Steering Committee and a National Secretariat, which serves all the biobanks (Figure 2).35 Information on procedures and organization can be found on the homepage (https://www.regioner.dk/rbgb/biobanker). Table 3 provides an overview of material included in the Bio-and Genome Bank Denmark from 2016 to 2021. Inclusion of material is ongoing and the infrastructure is regularly expanding with new biobanks. All blood samples are fractionated in serum, EDTA plasma, whole blood and buffy coat. All tissue samples are fractionated in dry frozen tissue, optimal cutting temperature compound tissue, RNAlater treated tissue and formalin fixed and paraffin embedded tissue. All tissue samples are verified by pathologists.

Table 3.

Number of Unique Biological Samples Included in the Bio- and Genome Bank Denmark from 2016 to 2021

2016 2017 2018 2019 2020 2021
Samples Individuals Samples Individuals Samples Individuals Samples Individuals Samples Individuals Samples Individuals
Blood 17,314 13,137 37,758 32,795 73,653 39,181 59,580 33,187 16,504 10,377 60,250 45,772
Bone marrow 2359 2065 1623 1446 1345 1214 1059 1048 713 685 777 743
DNA 33 33 9 9 8 8 NA NA 29 28 26 17
Synovial fluid NA NA 24 14 38 22 11 7 11 6 9 NA
Tissue 12,012 7520 12,129 7612 11,354 7037 11,944 7239 11,653 7175 11,301 6916
Urine 81 67 234 113 162 107 43 18 33 29 111 101

Notes: The table includes samples from: The Danish Cancer Biobank, The Danish Rheumatological Biobank, The Danish Blood Donor Study (2017 and onwards), The Danish Diabetes Biobank, and The Danish COVID-19 Biobank.

Abbreviation: NA, n <5 (exact number not available due to Danish legislation).

The Danish National Genome Center

In 2019, the Danish National Genome Center (an agency under the Ministry of Health) was launched as a part of the national strategy for personalized medicine.40 The goal of the National Genome Center is to advance personalized medicine by performing genome sequencing in patients for clinical and research purposes. The center has national responsibility for processing, analysis, and secure storage of genome data. As well, the center offers guidance in interpretation of data. During the next four years, the plan is to perform whole-genome sequencing in 60,000 selected patients with financial support from the Novo Nordisk Foundation. Currently, 2166 patients have had such sequencing performed. Furthermore, some patients have genetic analyses performed for diagnostic or treatment purposes as part of routine clinical care. Since 2019, it has been mandatory for clinicians to report these analyses to the Danish National Genome Center. Approximately 1940 genomes have been reported to the center in this manner. Before genetic analysis, the responsible clinicians must ensure informed consent.

Overview and Description of Selected Biobanks

Table 4 shows an overview of selected large Danish biobanks. Fourteen biobanks have been chosen for this review and the list is not comprehensive. In the following sections, we provide a short description of each of the biobanks.

Table 4.

Overview of Fourteen Biobanks (Population, Period of Enrollment, Data Types, and a Study Example). Detailed Information About Data is Presented in Later Tables

Population (N) Types of Data Study Example
The Danish Newborn Screening Biobank Nationwide cohort of all newborns born since 1982 (~2,310,680)a Blood spot filter paper Wray et al Genome-wide association analyses identify 44 risk variants and refine the genetic architecture of major depression. Nature genetics. 2018.14
The Danish National Birth Cohort Nationwide cohort of pregnancies enrolled from general practitioners between 1996 and 2002 (~100,000) Interviews
Questionnaires
Whole blood
Serum
Plasma
Buffy coat
Filter paper
Urine
Semen
DNA
Horikoshi et al Genome-wide associations for birth weight and correlations with adult disease. Nature. 2016.6
The Danish Twin Registry Biobank Nationwide cohort of twins, triplets, or quadruplets (175,518)b Interview questionnaire
Clinical examination
Blood spots
Serum
Plasma
Buccal swabs/ saliva
PBMC/DNA Paxgene/RNA
Other
Mengel-From et al Circulating, Cell-Free Micro-RNA Profiles Reflect Discordant Development of Dementia in Monozygotic Twins. Journal of Alzheimer’s disease: JAD. 2018.62
Diet, Cancer and Health and Diet Cancer and Health – Next generations Individuals aged 50–64 living in Aarhus or Copenhagen in the period from 1993 to 1997 (57,053) and next generations (children, their spouses, and grandchildren) enrolled from 2015 to 2019 (44,864) Interview
Questionnaire
Clinical examination
Whole blood
Serum
Plasma
Buffy coat
Erythrocytes
Urine
Adipose tissue
Toenail clippings
Saliva
Faeces
Kirkegaard et al Association of adherence to lifestyle recommendations and risk of colorectal cancer: a prospective Danish cohort study. BMJ. 2010.72
Danish Centre for Strategic Research in Type 2 Diabetes Nationwide cohort of adults (≥18 years) with type 2 diabetes enrolled from 2010 and onwards (~10,000)b Interview
Clinical examination
Whole blood
Serum
Plasma
DNA
Urine
Gedebjerg et al Mannose-Binding Lectin and Risk of Cardiovascular Events and Mortality in Type 2 Diabetes: A Danish Cohort Study. Diabetes care. 2020.76
Vejle Diabetes Biobank Patients with diabetes (2721 type 2, 599 type 1) and non-diabetic individuals (4255) from the general population living in the former County of Vejle between 2007 and 2010 Questionnaire
Clinical examination
Whole blood
Serum
Plasma
Buffy coat
Urine
Petersen et al Vejle Diabetes Biobank - A resource for studies of the etiologies of diabetes and its comorbidities. Clin Epidemiol. 2016.77
The Copenhagen Hospital Biobank Individuals admitted to hospitals in the Copenhagen area from 2009 and onwards, who had samples drawn for blood type or red cell antibody testing (~425,000)a Whole blood Helgadottir et al Genetic variability in the absorption of dietary sterols affects the risk of coronary artery disease. European heart journal. 2020.79
The Copenhagen City Heart Study Adults (≥20 years) from the central Copenhagen area enrolled in five waves: 1976 to 1978, 1981 to 1983, 1991 to 1994, 2001 to 2003, and 2011 to 2014 (~ 26,000) Questionnaire
Clinical examination
Whole blood
Plasma
Lange P et al A 15-year follow-up study of ventilatory function in adults with asthma. N Engl J Med. 1998.82
The Copenhagen General Population Study Adults (≥20 years) from the Copenhagen area enrolled since 2003 (~160,000)a Questionnaire
Clinical examination
Whole blood
Plasma
Mortensen and Nordestgaard. Elevated LDL cholesterol and increased risk of myocardial infarction and atherosclerotic cardiovascular disease in individuals aged 70–100 years: a contemporary primary prevention cohort. Lancet. 2020.84
The Danish Cancer Biobank Nationwide cohort of individuals who underwent investigation for potential cancer disease enrolled from 2006 and onwards.a The population is part of the Bio- and Genome Bank Denmark Whole blood
Serum
Plasma
Buffy coat
Urine
Tissue
Bone marrow
DNA
Reinert et al Analysis of Plasma Cell-Free DNA by Ultradeep Sequencing in Patients With Stages I to III Colorectal Cancer. JAMA oncology. 2019.87
The Danish Rheumatological Biobank Nationwide cohort of patients with inflammatory rheumatic diseases (8345).a The population is part of the Bio- and Genome Bank Denmark Whole blood
Serum
Plasma
Buffy coat
Paxgene/RNA
Synovial fluid
Synovia
Cartilage
Bone
Bone marrow
Urine
Saevarsdottir et al Multiomics analysis of rheumatoid arthritis yields sequence variants that have large effects on risk of the seropositive subset. Ann Rheum Dis. 2022.91
The Danish Blood Donor Study Nationwide cohort of blood donors enrolled from 2010 and onwards (137,574).a The population is part of the Bio- and Genome Bank Denmark Questionnaire
Whole blood
Plasma
Burgdorf et al Large-scale study of Toxoplasma and Cytomegalovirus shows an association between infection and serious psychiatric disorders. Brain, behavior, and immunity. 2019.95
The Danish Pathology Databank Nationwide cohort of people whom had pathological specimens sent for examination as part of diagnosis or treatment.a,c The population is a part of the Bio- and Genome Bank Denmark Various tissues and cytological specimens Erichsen et al Increased Risk of Colorectal Cancer Development Among Patients With Serrated Polyps. Gastroenterology. 2016.96

Notes: aOngoing enrollment. bThe Danish Twin Registry includes birth cohorts from 1870–2009, but biobank material has been stored since 1997 only. cEstablished in 1999, but updated with retrospective data since the 1970s. The registration of pathological specimens is nationwide complete since 1977.

Abbreviation: PBMC, peripheral blood mononuclear cells.

The Danish Newborn Screening Biobank

The Danish Newborn Screening biobank is a nationwide clinical biobank. Newborn screening for congenital diseases, such as phenylketonuria was implemented nationally in 1975.41 Blood drops from the infant´s heel are collected on filter paper shortly after birth. Following the screening program, the dried blood spot filter paper has been stored in freezers since 1982.41 Annually, an average of 62,000 newborns take part in the screening program. The screening program is voluntary, but more than 99.5% of all parents decide to participate. Hence, the biobank stores blood spot filter paper for almost the entire Danish population born since 1982 (~2,310,680 persons). Because of the virtually complete nationwide coverage of the biobank the distribution of sociodemographic factors, including ethnicity, reflects that of the Danish population at the given time and in the given age span. The Danish Newborn Screening Biobank has, among other projects, contributed with biological samples to the Integrative Psychiatric Research project that aims to investigate genetic and environmental risk factors for mental disorders.42 The Integrative Psychiatric Research project has contributed to a large number of important research projects,43 including genome-wide association studies of psychiatric diseases.14–16 As an example, Wray et al identified 44 genetic loci for major depression.14

The Danish National Birth Cohort

The Danish National Birth Cohort is a nationwide research biobank with data from ~100,000 pregnancies enrolled from 1996 to 2002. Data include biological specimens, primarily blood taken from the mother twice during pregnancy and blood from the umbilical cord taken shortly after birth, and interview and questionnaire data (Table 4). Eligible persons were pregnant women who indicated at their first pregnancy-related visit to their general practitioner that they wished to carry their pregnancy to term and had sufficient Danish language proficiency to complete telephone interviews.44–46 A previous paper has described certain sociodemographic factors in the cohort, including ethnicity.47

Table 5 presents an overview of biological material and Table 6 presents an overview of interview and questionnaire data collected in the Danish National Birth Cohort.46,48–54 The cohort has contributed to more than 600 publications,55 including multinational genome-wide association studies on asthma,3 pubertal timing,4 reproductive behavior,5 and to investigate associations between birth weight and adult disease.6 For instance, Horikoshi et al found that associations between early growth phenotypes and adult cardiometabolic disease were in part the result of shared genetic effects.6

Table 5.

Number of Unique Biological Samples in the Danish National Birth Cohort

Sample Type Number of Unique Samples Number of Unique Individuals
Plasma 224,268 147,587
Buffy coat 192,805 135,632
Filter paper 205,902 139,869
Serum 1038 1037
Whole blood 1042 1041
Urine 1036 1035
Semena 1011 1010
DNAb 3593 2160

Notes: Information available from biobanks.dk (Accessed January 2022). aFrom sons included in the Fetal Programming of Semen Quality Cohort (Keglberg Hærvig K, Bonde JP, Ramlau-Hansen CH et al. Fetal Programming of Semen Quality (FEPOS) Cohort - A DNBC Male-Offspring Cohort. Clin Epidemiol. 2020;12:757–770). bDNA has recently been purified for 65,000 mothers and 65,000 children. This information is not captured in the online registry, yet.

Table 6.

Overview of Interviews and Questionnaires in the Danish National Birth Cohort

Time of Collection Number Invited Response Information
During pregnancy
Gestational week 18 101,042 92% Computer-assisted telephone interviews:
Earlier pregnancies and childbirths, in-vitro fertility treatment, health in general and during pregnancy, medical pregnancy examinations, medication use, work and home environment,
diet, vitamins and dietary supplements,
alcohol consumption and tobacco use, sleep, exercise, socioeconomics factors, psycho-social stress
Gestational week 30 101,042 87%
Gestational week 25 101,042 72% Paper questionnaire by ordinary mail:
360-item Food Frequency Questionnaire on dietary habits during the four weeks prior to completion of the questionnaire and on changes in dietary habits during pregnancy
Follow-up after birth
6 months 101,042 69% Computer-assisted telephone interviews:
Child diet and development, vaccinations, and follow-up on prenatal questions
18 months 101,042 65%
7 years 91,256 63% Online or paper version questionnaire:
Focus on child:
Health and medication use, vaccinations, diet, vitamins, physical activity, anthropometric measures, motor skills, the child Strengths and Difficulties Questionnaires (SDQ) containing 25 questions on emotional symptoms, conduct problems, hyperactivity/inattention, peer relationship problems and prosocial behavior.
Focus on parents:
Life style, physical and mental health, social relations, mobile phone use
11 years 90,986 55% Online questionnaire:
Questionnaire for parents:
Parents’ health, lifestyle and anthropometric measures;
Child health’ lifestyle, vaccinations, mobile phone use, living situation, indoor environment, anthropometric measures, disease in nearest family, and SDQ
Questionnaire for child (Club11):
Family structure, social relations and wellbeing, school achievement, health, medicine use, lifestyle, sleep, sex, mobile phone use, and body and look
Questionnaire for teachers:
Child SDQ
14 years 78,651 Online questionnaire:
150-item Food Frequency Questionnaire
Puberty follow-up 22,439 70% Online questionnaires:
Repeated questionnaires every six months with questions on height, weight, and pubertal milestones as pubic and axillary hair growth, acne. Girls: breast development, age at menarche. Boys: first ejaculation of semen, voice change, and genital development
18 years (ongoing) 53,377 50% Information not available
Maternal follow-up 78,010 55% Online questionnaire in 2013/2014:
Physical and mental wellbeing, work environment, challenges of motherhood and private life, diet, exercise, weight, reproductive history, and urogynecological issues
COVID-19a
1st data wave (March 30th to April 7th 2020) 107,291 Online questionnaire:
Living situation, family and cohabitation status, educational level, occupation, self-reported mental and physical health, smoking, social relations and mental wellbeing, effects of the Covid-19 pandemic on occupational status, positive test for Covid-19, symptoms related to potential Covid-19, visits to foreign countries, health care utilization, worries due to the Covid-19 pandemic, information sources and precautions, positive aspects of the shutdown of Denmark
2nd data wave (April 8th to 15th 2020) 25,898
3rd data wave (April 16th to 22nd 2020) 16,741
4th data wave (April 23rd to 29th 2020) 12,034
5th data wave (April 30th to May 6th 2020) 9529
6th data wave (May 7th to May 13th 2020) 7848
7th data wave (May 14th to June 17th 2020) 6540 90%

Notes: aA total of 107,291 were invited to the first data collection wave. The participants were asked to complete the first questionnaire no later than April 7th, in order to be invited to the 2nd wave. If participants completed the questionnaire before midnight the following Wednesday (April 15th, 22nd, 29th, May 6th and 13th), they were invited to an additional data wave the following morning. Sources: The Danish National Birth Cohort. About the DNBC. Available at: https://www.dnbc.dk/about-The-dnbc. Accessed April 3, 2021.

The Danish Twin Registry and Biobank

The Danish Twin Registry is a nationwide registry established in the 1950s. The registry includes birth cohorts from 1870 to 2009, comprises 175,518 individuals (86,402 pairs of twins, 874 sets of triplets, and 23 sets of quadruplets), and includes questionnaire, interview and clinical examination data (Table 4).56 Ascertainment methods have varied over time (please see Pedersen et al for more details).56 Table 7 provides an overview of questionnaires and interviews conducted from 1994 to 2012.56,57 The Danish Twin Biobank is a nationwide research biobank established in 1997 as part of the second wave of the “Longitudinal Study of Aging Danish Twins” (LSADT) and the first wave of the “Importance of Genes, Familiar and Common Environment for the Development of Insulin Resistance, Abdominal Adiposity and Cardiovascular Risk Factors” (GENIMAKAR) (Table 7). Table 8 shows an overview of biological specimens and molecular data in the Danish Twin Registry and Biobank.56,58–61 The Danish Twin Registry and Biobank has contributed with numerous studies, including studies on the heritability of cancer,7–9 biomarkers for dementia,62 genome-wide association studies of intelligence,10 and epigenetic studies on aging,63,64 cognitive function,65 and mortality.66 For example, Mengel-From et al found new circulating miRNAs linked to dementia.62

Table 7.

Overview of Questionnaires, Interviews, or Clinical Examinations in the Danish Twin Registry and Biobank

Survey Year of Survey Birth Cohorts (Year of Birth) Number of Participants Information
Omnibus I 1994 1953–1982 29,433 Questionnaire on health and diseases such as diabetes, asthma or other symptoms related to the airways, eczema, hay fever, rheumatic diseases, headaches, migraine, epilepsy, fever cramps, back pain, inflammatory bowel diseases, thyroid disorders, anorexia, other long lasting diseases, fertility, and medication use. Lifestyle related factors such as physical activity, eating habits, weight, height, and body figure Family relations and sociodemographic factors
Omnibus II 2002 1931–1982 34,943 Questionnaire on health and diseases such as diabetes, osteoporosis, thyroid disorders, rheumatic disorders, epilepsy, heart diseases, migraine, back pain and disorders of the back, asthma and other symptoms from the airways, eczema and other allergic disorders, disorders of the ear, and speech disorders. Lifestyle related factors such as physical activity, weight, height, body figure, smoking, and alcohol consumption. Family relations and sociodemographic factors
LSADT 1995 1892–1919 2401 Interview on health such as diabetes, osteoporosis, osteoarthritis, rheumatoid arthritis, gout, chronic bronchitis, tuberculosis, asthma or other symptoms from the airways, disorders of the eye, meningitis, Parkinson´s disease, epilepsy, migraine, cancer, cardiovascular diseases, kidney diseases, thyroid disorders, fractures, gallstones, jaundice, mental disorders, symptoms of depression, problems with urination, fainting, back pain, menopause, sleep, physical abilities and medication use. Lifestyle related factors such as activities of daily living, weight, height, smoking, and alcohol consumption. Personality, mental wellbeing, family and social relations and sociodemographic factors. Cognitive tests (Mini Mental State Examination). From 1999 onwards, a short physical performance test involving measurements of chair stand, handgrip strength and lung function was included
1997a (follow-up) 1896–1923 2172
1999a (follow-up) 1899–1928 2709
2001a (follow-up) 1901–1930 2448
2003 (follow-up) 1901–1930 1844
2005 (follow-up) 1901–1930 1372
2007 (follow-up) 1910–1923 121
MADT 1998 193–1952 4314 Same questionnaires and examinations as LSADT (with a some exceptions)
2008–2011 (follow-up) 1931–1952 2400 Follow-up questionnaire and examination
MIDT 2008–2011 1931–1969 (who were not in MADT) 10,276 Same questionnaires and examinations as LSADT (with a some exceptions)
GENIMAKAR 1998 1931–1952 1512 Questionnaire on diseases in the family, prenatal smoking exposure, and birth characteristics. Health such as symptoms or diseases of the airways, eyes, nose, neck, ears, cardiovascular system and medication use. Lifestyle related factors such as physical activity, weight, and smoking. Family relations and sociodemographic factors. Clinical examination including an oral glucose tolerance test, a maximal bicycle test, body composition determined by bio impedance, electrocardiogram, test of lung function, blood pressure, waist and hip circumference, weight, and height
2010–2012 (follow-up) 1931–1952 1145 Questionnaire on health and diseases such as diabetes, cardiovascular diseases, menstruation, menopause, and medication use. Lifestyle related factors such as physical activity, weight, and smoking. Family relations, education, work, and well-being. Clinical examination including electrocardiogram, blood pressure, body composition, test of lung function, and various anthropometric measures

Notes: Modified table from Pedersen DA, Larsen LA, Nygaard M et al. The Danish Twin Registry: An Updated Overview. Twin research and human genetics: the official journal of the International Society for Twin Studies. 2019;22(6):499–507. © The Author(s) 2019. Adapted with permission.56 Abbreviations: GENIMAKAR, the Importance of Genes, Familiar and Common Environment for the Development of Insulin Resistance, Abdominal Adiposity and Cardiovascular Risk Factors; LSADT, Longitudinal Study of Aging Danish Twins; MADT, Middle Age Danish Twins; MIDT, MIddle age Danish Twins. aAdditional cohorts were added in 1997, 1999 and 2001; twins aged 73–76 years were enrolled in 1997 and twins aged >70 years at the beginning of 1999 and 2001 were enrolled in these years.

Table 8.

Overview of Biobank Material and Molecular Data in the Danish Twin Registry and Biobank

Survey Year of Survey Individuals with Samples Blood Spots Buccal Swabs/Saliva Plasma (EDTA) Serum PBMC/ DNA Paxgene/RNA Other Genome-Wide SNP Genome-Wide Methylation Genome-Wide Expression
LSADT 1997 689 617 - 689 - 687 - - 554 310 -
1999 2319 2053 265 - - - - - - - -
2001 2185 2023 163 - - - - - - - -
2003 1734 1559 124 - - - - 1709 (hair) - - -
2005 1255 1154 105 - - - - - - - -
2007 121 - - 121 - 121 119 72 (viable cells) 96 86 119
MADT 1998 4202 3972 246 - - - - - - - -
2008–2011 2337 - 2303 2319 2317 2312 2212 - 1465 492 520
MIDT 2008–2011 10,054 - 40 10,030 10,002 10,029 - - - - -
GENIMAKAR 1998 1408 - - - 1407 1407 - - 173 428 -
2010–2012 1139 - 1133 1136 1112 1136 1113 1138 (urine) - 428 -

Notes: Modified table from Pedersen DA, Larsen LA, Nygaard M et al. The Danish Twin Registry: An Updated Overview. Twin research and human genetics: the official journal of the International Society for Twin Studies. 2019;22(6):499–507. © The Author(s) 2019. Adapted with permission.56

Abbreviations: EDTA, ethylenediaminetetraacetic acid, GENIMAKAR, the Importance of Genes, Familiar and Common Environment for the Development of Insulin Resistance, Abdominal Adiposity and Cardiovascular Risk Factors; LSADT, Longitudinal Study of Aging Danish Twins; MADT, Middle Age Danish Twins; MIDT, MIddle age Danish Twins; PBMC, peripheral blood mononuclear cells; SNP, single nucleotide polymorphism.

Diet, Cancer, and Health and Diet, Cancer, and Health – Next Generations

Diet, Cancer, and Health is a cohort and research biobank consisting of 57,053 participants, recruited between 1993 and 1997, including questionnaires, clinical examination data, and biological material (Table 4).67 The primary aim of the cohort is to investigate associations of diet and lifestyle with the risk of cancer and other chronic diseases. From 1993 to 1997, 160,725 individuals aged 50 to 64 years from the Copenhagen and Aarhus areas were invited to participate (19% of the total Danish population in that age group). The eligibility criteria were ages 50 to 64 years, birth in Denmark, and no previous diagnosis of cancer (according to the Danish Cancer Registry). Of 160,725 invited individuals, 57,053 (35%) participated. Sociodemographic characteristics of participants and non-participants are described elsewhere.67 Data collected by Diet, Cancer, and Health are shown in Table 9.67–69 Five years after baseline, 54,379 participants were eligible for follow-up questionnaire on diet, lifestyle, social network, and health (Table 9). Among the eligible, 44,904 (83%) responded.

Table 9.

Overview of Data in Diet, Cancer, and Health

Type of Data Time of Collection Information
Questionnaires Baseline Self-reported frequency and semi-quantity of food consumption (192 items), type of fat used on bread/in cooking, and use of dietary supplements.
Smoking (including passive smoking), alcohol consumption, skin type, leisure-time physical activity, physical activity at work, medical history, weight history, use of analgesics, educational and occupational history, and family history of cancer.
Women: Reproductive history, use of oral contraceptives, and use of hormone replacement therapy during menopause.
Men: Number of children and sterilization
Clinical examination Baseline Anthropometric measures such as height, weight, waist and hip circumference, sitting height, and bioelectrical impedance. Blood pressure
Biological specimens Baseline Whole blood, serum, plasma, buffy coat, erythrocytes, urine, adipose tissue samples, and toenail clippings
Biochemical analyses Baseline Total cholesterol, urine dipstick for sugar, blood, and protein
Follow-up questionnaires 5 year follow-up Food frequency questionnaire
Lifestyle questionnaire
Social network and self-rated health (SF36)

Notes: Source: Tjønneland A, Olsen A, Boll K et al. Study design, exposure variables, and socioeconomic determinants of participation in Diet, Cancer and Health: a population-based prospective cohort study of 57,053 men and women in Denmark. Scand J Public Health. 2007;35(4):432–441. Copyright © 2007 by (SAGE Publications). Reprinted by Permission of SAGE Publications.67

Diet, Cancer, and Health – Next Generations is a multigenerational extension of the original Diet, Cancer and Health cohort consisting of 44,869 participants recruited between 2015 and 2019 with questionnaire information, clinical examination data, and collection of biological material.70 Children, their spouses, and grandchildren of the original cohort were identified though the Civil Registration System, and 23,269 (30%) of 78,767 eligible children, 8399 (23%) of 35,977 eligible spouses, and 13,201 (19%) of 69,020 eligible grandchildren participated.70 Sociodemographic characteristics of participants and non-participants are described elsewhere.70 Table 10 provides an overview of data in Diet, Cancer, and Health – Next Generations.70

Table 10.

Overview of Data in Diet, Cancer, and Health – Next Generations

Type of Data Time of Collection Information
Questionnaires Baseline Marital status, household composition, nationality, highest attained education, educational history, occupation, shift work, night work, hazardous occupations, 366-item Food Frequency Questionnaire, alcohol consumption, history of alcohol consumption, leisure-time activity, sports, sedentary activities, transportation to/from work, activity level at work, smoking history, passive smoking, use of e-cigarettes, water pipe and snuff, sleep pattern, quality of sleep, disturbances, indoor environment during childhood and the past year including use of cooker hood, candle lighting, use of wood stove, noise from bedroom window, air pollution, medical history, use of analgesics and other non-prescription medication, use of antibiotics, family history of disease, bowel movement pattern, Bristol Stool Scale, bowel diseases, weight, height, weight history, weight losses, birth delivery method, birth weight, self-rated health (SF-36), stress (Perceived Stress Scale), health motivation, and health consciousness.
Men: Sperm quality, sterilization, number of children, smoking habits of children’s mother before and during pregnancy.
Women: Reproductive history including use of contraceptives and use of hormone replacement therapy during menopause, smoking and alcohol consumption during pregnancy, delivery method, and breastfeeding
Clinical examination Baseline Height, weight, waist and hip circumference, blood pressure, pulse rate, fat-free mass, fat mass, skeletal muscle mass, visceral adipose tissue, extracellular water, total body water, hydration, energy stored body, total energy expenditure, fat-free mass index, fat mass index, resting energy expenditure, impedance, phase angle, reactance, resistance
Biological specimens Baseline Plasma (lithium heparin and K2EDTA), serum, buffy coat, erythrocytes, PAXgene/RNA, saliva, urine, and faeces
Biochemical analyses Baseline HbA1c, triglycerides, total cholesterol, HDL cholesterol, LDL cholesterol, hs-CRP, and creatinine

Notes: Reproduced from Eur J Epidemiol. Petersen KEN, Halkjær J, Loft S, Tjønneland A, Olsen A. Cohort profile and representativeness of participants in the Diet, Cancer and Health-Next Generations cohort study. Springer Nature. 2022;37(1):117–127. Reproduced with permission from SNCSC.70

Abbreviations: HDL, High Density Lipoprotein cholesterol; HbA1c, Haemoglobin A1c; hs-CRP, High-sensitive C-Reactive Protein; LDL, Low Density Lipoprotein cholesterol.

Diet, Cancer, and Health has contributed to more than 1000 publications.71 For instance, Kirkegaard et al showed that adherence to the recommendations by the World Health Organization, World Cancer Research Fund, and the Nordic Nutrition Recommendations for physical activity, waist circumference, smoking, alcohol consumption, and diet reduced colorectal cancer risk considerably.72 Further, the cohort is coordinated with a number of similar international cohorts by the International Agency for Research on Cancer. As example Diet, Cancer, and Health is an associated cohort of the European Prospective Investigation into Cancer and Nutrition (EPIC).12

Danish Centre for Strategic Research in Type 2 Diabetes

The Danish Centre for Strategic Research in Type 2 Diabetes is a nationwide cohort and research biobank with enrollment from 2010.73,74 Currently, the cohort contains interview and questionnaire data, clinical examination data, and biological samples from ~10,000 patients with diagnosed type 2 diabetes (Table 4). The cohort continues to enroll patients from both general practitioners and outpatient hospital clinics. Eligible patients are ≥18 years of age and diagnosed within two years prior to the time of enrollment. Approximately 1000 to 1200 patients are enrolled annually, corresponding to 5% of incident type 2 diabetes patients nationwide.73 Clinical and sociodemographic characteristics of the cohort are described elsewhere.73 Table 11 shows an overview of data in the Danish Centre for Strategic Research in Type 2 Diabetes cohort.73,74 Supplemental individual-level baseline and follow-up data are provided by the Danish Diabetes Database for Adults; a clinical quality database, containing annually or biannually collected data from general practitioners or outpatient clinics from 2005 onwards (Table 11).75 An example of research using this biobank is Gedebjerg et al who showed that serum MBL and MBL expression genotype had a U-shaped association with cardiovascular disease risk in individuals with type 2 diabetes, suggesting that serum MBL is a risk factor for cardiovascular disease in this population.76

Table 11.

Overview of Data in the Danish Centre for Strategic Research in Type 2 Diabetes Cohort and the Danish Diabetes Database for Adults

The Danish Centre for Strategic Research in Type 2 Diabetes Cohort
Type of Data Time of Collection Information
Interview Baseline Physical activity, alcohol consumption, maximum weight reached in life, body weight at 20 years of age, family history of diabetes, and self-reported date of type 2 diabetes diagnosis
Clinical examination Baseline Resting heart rate, waist and hip circumference, and waist-hip ratio
Biological specimens Baseline Whole blood, plasma, serum, purified DNA, and urine
Biochemical analyses Fasting glucose, C-peptide, GAD65 antibodies, alanine-aminotransferases, amylase, and C reactive protein. GWAS performed in ~3000 patients with more to come
Follow-up questionnaire Follow-up every second year Short form health survey (SF-12)
Follow-up questionnaire Follow-up in 2016 Neuropathy-related questions, including the Michigan Neuropathy Screening Instrument questionnaire, the Douleur Neuropathique 4 questionnaire and other pain-related questions. Physical activity, alcohol consumption, smoking, quality of life, quality of sleep, and mood
The Danish Diabetes Database for Adults
Type of data Time of collection Information
Disease and lifestyle information Annually or biannually Date of first type 2 diagnosis recorded in the healthcare system, smoking, examinations for diabetic foot and eye disease (yes/no), height, weight, body mass index, blood pressure, and physician-reported treatment
Routine laboratory measurements Annually or biannually HbA1c, plasma lipids, and albuminuria

Notes: Data from Christensen DH, Nicolaisen SK, Berencsi K et al. Danish Centre for Strategic Research in Type 2 Diabetes (DD2) project cohort of newly diagnosed patients with type 2 diabetes: a cohort profile. BMJ Open. 2018;8(4): e017273.73 Thomsen RW, Friborg S, Nielsen JS, Schroll H, Johnsen SP. The Danish Centre for Strategic Research in Type 2 Diabetes (DD2): organization of diabetes care in Denmark and supplementary data sources for data collection among DD2 study participants. Clin Epidemiol. 2012;4(Suppl 1):15–19.75

Abbreviations: GAD, glutamic acid decarboxylase; GWAS, Genome-wide association studies; HbA1c, Haemoglobin A1c.

Vejle Diabetes Biobank

The Vejle Diabetes Biobank is a regional research biobank established between 2007 and 2010.77 The biobank contains questionnaire, clinical examination data and biobank material from 3320 patients with diabetes (N = 2721 with type 2 diabetes and N = 599 with type 1 diabetes) and 4255 non-diabetic individuals from the general population (Table 4).77 As of December 31th 2006, all eligible individuals, were alive, aged between 25 and 75, and living in the former County of Vejle area, and had a Danish first and last name. Potential patients with diabetes were identified through Danish registries and defined as having fulfilled at least one of the following criteria: i) At least one glycated hemoglobin (HbA1c) value ≥48.6 mmol/mol (≥6.6%) in the Clinical Laboratory Information System (period from 1996 to 2006); ii) At least three HbA1c values <48.6 mmol/mol (<6.6%) in the Clinical Laboratory Information System (2002 to 2006); iii) At least one record in the Danish National Prescription Registry for an oral antidiabetic agent or insulin (2006); or iiii) At least one in- or outpatient hospital contact with diabetes recorded in the Danish National Patient Registry (1977 to 2006). Of 14,831 potential diabetes patients, 3345 individuals were excluded due to age (<25 or >75 years) and 1078 were excluded due to non-Danish names. Further, only individuals who acknowledged having diabetes were included. From 10,408 eligible patients, 3320 (32%) were included in the biobank (6234 did not respond and 854 did not acknowledge having diabetes). Non-diabetic individuals were sampled from the general population of the former County of Vejle through the Civil Registration System and matched by sex and age. Following, N = 11,065 received a request to participate and N = 4290 accepted (response of 39%). The final non-diabetic population constituted 4255 individuals (N = 35 acknowledged having diabetes without fulfilling the diabetes inclusion criteria above). Table 12 provides an overview of data in the Vejle Diabetes Biobank.77 Using this biobank, Petersen et al reported that 56% of the T2D and 25% of T1D patients reached target for glycaemic regulation (HbA1c < 53 mmol/mol) at the time of inclusion, 28% of the T2D and 48% of the T1D patients reached target for blood pressure (<140/mmHg), and 34% of the T2D and 55% of the T1D patients reached treatment target for lipids (triglycerides <1.7 mmol/L, LDL <2.6 mmol/L, HDL ≥1.0 mmol/L for men and ≥1.3 mmol/L for women, and total cholesterol <4.5 mmol/L).77

Table 12.

Overview of Data in the Vejle Diabetes Biobank

Type of Data Time of Collection Information
Questionnaire Baseline Smoking status, alcohol consumption, exercise, gestational diabetes, age at onset of diabetes, heart diseases, cerebral diseases, late diabetic complications, diabetes in parents, siblings or children, diabetes medication, and other medication
Clinical examination Baseline Weight, height, waist and hip circumference, body fat percentage, and systolic and diastolic blood pressure
Biological specimens Baseline Whole blood, plasma (EDTA, heparin), serum, buffy coat, and urine
Biochemical analyses Baseline HbA1c, fasting plasma glucose, C-peptide, triglycerides, total cholesterol, HDL, LDL, CRP, plasma-albumin, calcium, alanine aminotransferase, and plasma-creatinine
In the diabetes patients: Urine-albumin, urine-creatinine, and urine-creatinine/albumin ratio.
Samples from the entire diabetes population underwent GWAS analyses and samples from selected patients have been exome sequenced

Notes: Data from Petersen ER, Nielsen AA, Christensen H et al. Vejle Diabetes Biobank - A resource for studies of the etiologies of diabetes and its comorbidities. Clin Epidemiol. 2016;8:393–413.77

Abbreviations: GWAS, Genome-wide association studies; HDL, High Density Lipoprotein cholesterol; HbA1c, Haemoglobin A1c; CRP, C-Reactive Protein; LDL, Low Density Lipoprotein cholesterol.

The Copenhagen Hospital Biobank

The Copenhagen Hospital Biobank is a research biobank, which started in 2009 at Copenhagen University Hospital (Rigshospitalet) and expanded in 2012 to include all hospitals in the Capital Region of Denmark.78 At present, the biobank counts ~425,000 patients (Table 4). Each patient is included only once, ie, the biobank has no repetitive blood sampling. Inclusion continues for as long as funding is available.78 The biobank is based on surplus EDTA whole blood from patients admitted to Danish hospitals in the Copenhagen area for diagnostic or treatment purposes who have samples drawn for blood type testing or red cell antibody screening. This patient group is diverse, no exclusion criteria apply, and the distribution of sociodemographic factors in biobank participants, including ethnicity, reflect that of the underlying patient population.78 The samples are primarily suitable for DNA extraction. For more information on collection procedures, storage, and quality assessment please visit Sørensen et al78 DNA extraction and genetic analyses have been carried out on samples from selected patients and genome-wide genotype data are available for ∼330,000 patients (January 2022).78 Genotyping is performed at deCODE Genetics, Iceland, using an array that examines more than 660,000 SNPs.78 The Copenhagen Hospital Biobank has contributed with research. For instance, Helgadottir et al showed that genetic variation in cholesterol absorption affected levels of circulating non-HDL-C and risk of coronary artery disease.79

The Copenhagen City Heart Study

The Copenhagen City Heart Study (Østerbroundersøgelsen) is a cohort and research biobank consisting of individuals randomly selected to reflect the adult Danish general population. The data collected include questionnaires, clinical examinations, and blood samples (Table 13).

Table 13.

Overview of Data in the Copenhagen City Heart Study and the Copenhagen General Population Study

Type of Data Information
Questionnaire Health-related questions, medication use, smoking, alcohol consumption, physical activity, diet, socioeconomic factors, social relations, and mental health
Clinical examination Height and weight, waist and hip circumference, blood pressure, pulse, ECG, echocardiography, and spirometry
Biological specimens Plasma and whole blood
Biochemical analyses Creatinine, hematology, lipids and lipoproteins, liver function tests, vitamin D, CRP and others totaling up to >80 measurements

Notes: The specific data collected differed from wave to wave in the two studies and between the two studies. However, key information was kept identical in both examinations and in the different waves to also allow understanding of change in risk factors over time.

Abbreviations: CRP, C-reactive protein; ECG, electrocardiography.

Originally, the aim of the Copenhagen City Heart Study was to investigate etiology and prevention of cardiovascular disease; the study was designed like the pioneering Framingham Heart Study. However, many other aspects have been added to the study over the years.80 The Copenhagen City Heart Study totals more than 25,000 participants. A random sample of the census population in the central Copenhagen area (Østerbro) was invited to participate in five examination waves: 1976 to 1978, 1981 to 1983, 1991 to 1994, 2001 to 2003, and 2011 to 2014, with a sixth wave for 2022 to 2025. The original cohort (1976 to 1978) comprised a random sample of 19,329 individuals drawn from a population of roughly 90,000 individuals using the Civil Registration System. The random sample was stratified into 5-year age groups ranging from 20 to 93 years, with the emphasis on those aged 35 to 70 years.81 Of those invited, 74% (N = 14,223) participated. For each subsequent examination, all previous participants were re-invited, and the cohort was additionally supplemented with younger individuals (20 to 49 year-olds) due to the otherwise inevitable increase in age and, thus, mortality. Participation declined over time from 74% to 50%. Of the 14,223 individuals participating in the first examination, 22% (3092) participated in all of the first four examinations.80 In the first two examinations, all the blood samples were immediately analyzed for plasma levels of glucose, total cholesterol, high-density lipoprotein cholesterol (HDL) cholesterol, and triglycerides. From the third examination and onwards, all the blood samples were immediately analyzed for additional biochemical parameters (eg, hematology, liver function tests, hormones, etc), and plasma and whole blood samples were stored for later biochemical and DNA analyses. Lange et al used the Copenhagen City Heart Study to describe changes over time in the forced expiratory volume (FEV1) in adults with and without asthma.82

The Copenhagen General Population Study

Modelled on the Copenhagen City Heart Study design, the Copenhagen General Population Study (Herlev/Østerbroundersøgelsen) was initiated in 2003. During 2003 to 2015, a total of almost 110,000 individuals were included (Table 4). All individuals aged 40 years and above, and 25% of individuals aged 20 to 39 years from the greater Copenhagen area (municipalities of Herlev, Ballerup, Gladsaxe, Gentofte, Rødovre, Furesø, Lyngby-Tårbæk, Copenhagen, Egedal, Rudersdal, Allerød, Glostrup, Albertslund, Hørsholm, and Frederikssund) were invited to participate. Of invites, 43% agreed to participate. Originally, only individuals of Danish descent were invited to ensure a homogenous study population for genetic studies. Further, all individuals of Pakistani descent from the capital region of Denmark were also invited, but only 6% agreed to participate. A follow-up examination began in 2014 and is still ongoing. By 2022, more than 50,000 individuals have been re-examined. The re-examination was designed exactly like the first wave in 2003–2015, that is, all individuals aged 40 years and above and 25% of individuals aged 20 to 39 years were invited from the greater Copenhagen area in the same municipalities as listed above. To secure as many reexamined individuals as possible, all those examined in the first wave, but no longer living in the same municipality of Copenhagen were also re-invited.

The combined cohorts (the Copenhagen City Heart Study and the Copenhagen General Population Study) have currently contributed with more than 1000 publications on many subjects,83 covering scientific areas within healthy lifestyle, cardiovascular disease, cancer, chronic lung disease, psychiatry, gastroenterology, hepatology, endocrinology, rheumatology, etc. For instance, Mortensen and Nordestgaard showed that elevated low-density lipoprotein cholesterol was associated with myocardial infarction and other atherosclerotic disease in a primary prevention cohort. People aged 70–100 vs 20–69 years with elevated low-density lipoprotein cholesterol had the highest absolute risks and the lowest estimated number to treat in five years to prevent one event.84

The Danish Cancer Biobank

The Danish Cancer Biobank (part of the Bio- and Genome Bank Denmark) is a clinical biobank, which was established in 2009 and has centers at six hospitals in Denmark.85 The biobank contains samples from patients who have undergone clinical examination and investigation for potential cancer disease (Table 4). Biological material is collected during procedures for diagnostic or treatment purposes and enrollment is ongoing. With approvals, the material can be used for research after ensuring that the patient is not included in the Tissue Utilization Registry (few).86 No exclusion criteria apply and the distribution of sociodemographic factors in biobank participant, including ethnicity, mirror that of the underlying patient population. Table 14 shows an overview of biological material included in the biobank from 2016 to 2020. Using the Danish Cancer Biobank, Reinert et al showed that circulating tumor DNA served as a biomarker for postoperative and post-adjuvant chemotherapy risk stratification, monitoring of adjuvant chemotherapy effectiveness, detection of clinical actionable mutations, and early detection of recurrence in stages I–III colorectal cancer.87

Table 14.

Number of Unique Biological Samples Included in the Danish Cancer Biobank from 2016 to 2020

2016 2017 2018 2019 2020
Samples Individuals Samples Individuals Samples Individuals Samples Individuals Samples Individuals
Blood 12,529 10,110 13,107 9721 13,107 9721 14,505 9830 13,404 8323
Bone marrow 2359 2055 1345 1214 1345 1214 1059 1048 713 685
DNA 33 33 8 8 8 8 NA NA 29 28
Tissue 12,012 7520 11,354 7037 11,354 7037 11,944 7239 11,653 7175
Urine 7 7 69 65 69 65 0 0 20 20

Notes: All blood samples are processed to serum, EDTA plasma, whole blood, and buffy coat. Tissue samples are processed to dry frozen tissue, OCT, RNAlater treated tissue and formalin fixed and paraffin embedded tissue. All tissue samples are verified by pathologists.

Abbreviation: NA, n <5 (exact number not available due to Danish legislation).

The Danish Rheumatologic Biobank

The Danish Rheumatologic Biobank (part of the Bio- and Genome Bank Denmark) is a nationwide collaboration between Danish departments of rheumatology and departments of clinical biochemistry.36,88 This clinical biobank was established in 2015 and contained 8346 patients with inflammatory rheumatic diseases as of September 2021 (rheumatoid arthritis [4455 patients], axial spondyloarthritis [1299 patients], psoriatic arthritis [1223 patients], and others [1369 patients]), and recruitment is ongoing (Table 4). The aim of this biobank is to ensure material for patients own diagnosis and treatment and to support research in personalized medicine of inflammatory rheumatic diseases. Patients are eligible for inclusion if they are followed in routine care for one of the inflammatory diseases above, are ≥ 18 years of age, and are able to give informed consent. No exclusion criteria apply. Patients contribute with one or more of the following samples: i) cross-sectional blood samples when they meet for a scheduled routine clinical visits, ii) longitudinal blood samples collected at initiation of new disease-modifying anti-rheumatic drugs (DMARD) and at specific time points during treatment and at cessation, iii) other biological materials collected when accessible and relevant (ie, during diagnostic or treatment procedures) (Table 15 and Table 16).36 Detailed information on patient demographics, disease characteristics, comorbidities, and lifestyle factors can be obtained from the clinical database DANBIO, which has existed since 2000 and been electronic since 2006 (Table 15).89,90 Several studies use the biobank. A recent study by Saevarsdottir et al performed multiomics analyses of rheumatoid arthritis, and its seropositive and seronegative subsets. The study identified new rheumatoid arthritis risk loci and candidate causal genes. Most sequence variants had impact on the risk of seropositive, but not seronegative disease. Findings pointed to candidate causal genes encoding proteins in the network of interferon alpha/beta and IL-12/IL-23 that signal through the JAK/STAT pathway.91

Table 15.

Overview of Data in the Danish Rheumatologic Biobank and DANBIO

The Danish Rheumatologic Biobank
Type of Data Time of Collection Sample Types
Cross-sectional blood samples Collected at routine clinical visits (at any disease stage and at any time point during treatment) Whole blood
Buffy coat
Plasma
Serum
Whole blood in PAXgene RNA tubes
Longitudinal blood samples Collected at start of treatment with a new DMARD (baseline)a, after 3, 6, 12, 24, 36, 48 and 60 months of treatment, and at cessation Whole blood
Buffy coat
Plasma
Serum
Whole blood in PAXgene RNA tubes
Other biological material Only when accessible and relevant, such as after scheduled joint puncture, surgery, or biopsy Synovial fluid
Synovia
Cartilage
Bone
Bone marrow
DANBIO
Type of data Time of collection Information
Demographics Baseline Age, sex, marital status, and educational level
Treatment Previous treatment at inclusion and current treatment at each visit Previous and current treatment with glucocorticoids, NSAID, conventional synthetic DMARD, biological and targeted synthetic DMARD; including dosing schedule, start and stop date, and reason for treatment cessation
Disease characteristics Baseline Diagnosis, disease duration, serum CRP, radiographic status, anti-CCP, and IgM-RF status 
Patient-reported outcomes Each visit VAS for pain, fatigue, and patient and physician’s global scores. HAQ, DAS28, BASDAI, BASFI, and BASMI
Comorbidities Diabetes, heart disease, etc
Lifestyle-related factor At baseline and once per year Smoking (annually), alcohol consumption, and exercise
Other measures BMI, blood pressure, and serum lipids

Notes: Data from Kringelbach TM, Glintborg B, Hogdall EV, Johansen JS, Hetland ML. Identification of new biomarkers to promote personalised treatment of patients with inflammatory rheumatic disease: protocol for an open cohort study. BMJ Open. 2018;8(2): e019325.36

aSwitching from conventional synthetic DMARD to biological DMARD or from one biological DMARD to another biological DMARD indicates a new baseline.

Abbreviations: Anti-CCP, anti-cyclic citrullinated peptide; BASDAI, Bath Ankylosing Spondylitis scores for Disease Activity Index; BASFI, Bath Ankylosing Spondylitis scores for Function Index; BASMI, Bath Ankylosing Spondylitis scores for Metrology Index; BMI, Body mass index; CRP, C-reactive protein; DAS28, Disease Activity Score 28-joints including swollen and tender joints, patient global score and CRP; DMARD, disease-modifying anti-rheumatic drugs; HAQ, Health Assessment Questionnaire Disability Index; IgM-RF, Immunoglobulin M Rheumatic Factor; NSAIDs, non-steroidal anti-inflammatory drugs; VAS, Visual Analogue Scales.

Table 16.

Number of Unique Biological Samples Included the Danish Rheumatologic Biobank from 2015 to 2020

2015 2016 2017 2018 2019 2020
Number Samples Individuals Samples Individuals Samples Individuals Samples Individuals Samples Individuals Samples Individuals
Blood 1282 854 4785 3037 3986 2712 3445 2132 4333 2607 3100 2061
Synovial fluid NA NA 24 14 38 22 11 7 11 6
Urine 74 60 196 76 93 42 43 18 13 9

Note: All blood samples are processed to serum, EDTA plasma, whole blood, and buffy coat.

Abbreviation: NA: n <5 (exact number not available due to Danish legislation).

The Danish Blood Donor Study and the Danish Blood Donor Biobank

The Danish Blood Donor Study is a cohort and biobank launched in 2010 with data from 137,574 blood donors (Table 4). The cohort contains questionnaire-based information on health and lifestyle and plasma, and whole blood for DNA extraction.37,38,92 Enrollment is ongoing with inclusion of blood donors in most blood donation facilities nationwide. From 2017, the biobank material has been part of the Bio- and Genome Bank Denmark (named the Danish Blood Donor Biobank).93 Eligible persons are adults aged 18 to 74 years, who donate blood at the Danish blood donation facilities.38,92 Approximately 95% of invited blood donors choose to participate in the biobank. The blood centers are part of the public Danish healthcare system and blood donation is voluntary and unpaid. The Danish Blood Donor Study uses existing blood bank infrastructure for data collection, handling, and storage of samples. Danish blood donors fill out a questionnaire at every donation to assess their health status. Donors must be physically well, weigh more than 50 kilograms, have a civil registration number, and speak and understand Danish. Reasons for permanent exclusion include chronic infections, current or prior cancer, and most autoimmune, neurological, or cardiovascular diseases. Donors are deferred if having an acute infection, or hemoglobin <8.4 mmol/L in male donors and 7.8 mmol/L in female donors. A detailed sociodemographic description of Danish blood donors, including age, sex, education, employment status, and ethnicity, is found elsewhere.94 When giving informed consent, participants grant permission to future contact for acquisition of additional information, to use past and future blood samples for research, and to collect data from Danish registries. Many participants donate blood several times annually. It is therefore possible to collect consecutive biological and questionnaire data.38,92

Table 17 shows an overview of questionnaire-based information on health and lifestyle collected by the Danish Blood Donor Study. The questionnaires have developed over time in content and technology from paper- to a digital-based form.38,92 From March 2010 to July 2015, participants completed a paper-based questionnaire on self-reported physical and mental health and some lifestyle factors. The first follow-up, digital-based questionnaire was used from July 2015 until May 2018. It contained some of the same questions as in the first questionnaire as well as some new additional questions. A new digital-based questionnaire was launched in June 2018 and a smartphone-based questionnaire was introduced in November 2020.

Table 17.

Overview of Questionnaires in the Danish Blood Donor Study

Year of Collection Information
2010–2015 Self-reported physical and mental health including the 12-item short form (SF-12) standardized health survey, smoking, alcohol consumption, exercise, food consumption, supplemental iron intake, height, weight, and waist circumference
2015–2018 The SF-12 standardized health survey, smoking, alcohol consumption, weight, height, and questions related to allergy, attention deficit hyperactivity disorders, migraine, hidradenitis, depression, and Restless Legs Syndrome
2018- Sleep patterns, anxiety, migraine, stress, skin diseases, endometriosis, pain, learning difficulties, SF-12, smoking, alcohol consumption, height, and weight
2020- Gastrointestinal symptoms, sleep, dermatological symptoms, SF-12, smoking, height, and weight
December 2020 and May 2021 COVID-19 related questions on how the epidemic has affected physical and mental wellbeing, including sleep, stress, symptoms of anxiety or depression, conditions at the workplace or in the family and general physical health

Notes: Data from Hansen TF, Banasik K, Erikstrup C et al. DBDS Genomic Cohort, a prospective and comprehensive resource for integrative and temporal analysis of genetic, environmental and lifestyle factors affecting health of blood donors. BMJ Open. 2019;9(6): e028401.38

The majority of participants (~110,000 donors) in the Danish Blood Donor Study have been genotyped for >650,000 SNPs in collaboration with deCODE Genetics, Iceland. For more information on collection procedures, storage, analysis, and quality assessment please see Hansen et al.38 Several studies have been published using the Danish Blood Donor Study and Biobank. For instance, Burgdorf et al found a temporal association between infections with cytomegalovirus or Toxoplasma gondii on human behaviour and mental disease.95

Specimens Recorded in the Danish Pathology Data Bank

The Danish pathology departments provide diagnostic services on tissue and cytological specimens from all hospitals, general practitioners, and specialist clinics. Following immediate clinical use, these specimens are stored in the archives at the local pathology departments. The tissue specimens are paraffin embedded blocks and cytology specimens and are all stored for later clinical use or research purposes. Electronic recording of pathological specimens began in the 1970s and has been nationwide complete since 1997, when all pathology departments started to record national uniform data on all specimens.39 It is mandatory for all pathology departments to report the electronic data. Because of the virtually complete nationwide coverage, data reflect the underlying patient population (who had specimens examined) with respect to sociodemographic characteristics, including ethnicity. Electronic recording paved the way for two national electronic systems; the Danish Pathology Data Bank and the Danish National Pathology Registry, described below. These data sources allow valid and efficient localization of relevant specimens, thus facilitating clinical research.

The Danish National Pathology Registry and the Danish Pathology Data Bank

The Danish National Pathology Registry was established in 1997 and holds nationwide complete records of all pathology diagnoses. In addition, the registry holds historical incomplete records of specimens from some pathology departments dating back to the 1970s.39 The Danish Pathology Data Bank was established in 1999 with the primary purpose to act as a nationwide online registry for pathology diagnoses. All specimens are registered by the examining pathology department and all previous pathology examinations can be retrieved. Further, information on new analyses is automatically sent to update the data bank. Thus, this data bank holds updated information on pathology diagnoses.39 From 2015, the data bank has been part of the Bio- and Genome Bank Denmark. Box 2 shows an overview of variables in the Danish National Pathology Registry.39 A key variable in both the Danish Pathology Data Bank and the Danish National Pathology Registry is the Danish version of Systematized Nomenclature of Medicine (SNOMED) codes. SNOMED codes are structured on six axes: Topography (T), morphology (M), etiology (Æ), function (F), disease (S), and procedure (P). The first two are mandatory in all records and the latter are optional, but generally used in a structured manner. A study example that uses pathological specimens is Erichsen et al, who showed that patients with sessile serrated adenomas/polyps or traditional serrated adenomas were at increased risk of colorectal cancer compared to a cohort matched by sex and age. The risk was similar to or higher than that of conventional adenomas.96

Box 2.

Variables in the Danish National Pathology Registry

Variables
The investigating authority (the pathology department or the practicing pathologist)
Unique ID-number for the requisition/specimen
Civil registration number
Requesting unit (hospital department or clinic)
The hospital department responsible for treatment
Dates of request, reception, and sign out
Specimen type and number
Gross and microscopy descriptions including analyses performed (eg, paraffin block, tissue slide immunohistochemical staining, RNA and DNA-analysis)
Diagnoses based on the Danish SNOMED (Systematized Nomenclature of Medicine) codes and free text

Practical Aspects

Biological material can be handed out to Danish public or non-profit researchers or specialists. Private (eg the pharmaceutical industry) or non-Danish investigators must seek such collaboration before initiating a research project. Data transfer to another country might be possible (with appropriate approvals), but the situation depends on type of data and recipient country.

Danish research projects using human biological material typically need the approvals stated below (other types of approvals can be necessary).

  1. Approval from the Danish Health Research Ethics Committee System.

  2. Approval from the Danish Data Protection Agency.

  3. Approval from the respective biobank committees.

The Danish Health Research Ethics Committee System consists of the National Committee and thirteen regional committees (six committees in the Capital Region, two committees in the Region of Southern Denmark, one committee in the Region Zealand, two committees in the Central Denmark Region, one committee in the Northern Denmark Region, and one committee at the Faroe Islands).97 Most projects need approval from one of the regional committees in the region where the responsible investigator works.97 Approval from the Danish Data Protection Agency is obtained by reporting the study to local authorities with data responsibility (universities or regions). Table 18 provides an overview of where to apply for data at the respective biobank committees. Please visit the Supplementary for more detailed information on how to apply. As biobank and registry data are stored at different platforms, linkage of data can be challenging from a practical point of view. To provide guidance for such logistic issues, the Danish Regions and universities have established regional data support centers.98 Clinicians and researchers can request free guidance on practical and logistic issues from these support centers.

Table 18.

Where to Apply for Data

Email Webpage
The Danish National Biobank mail@nationalbiobank.dk danishnationalbiobank.com/access
The Danish National Birth Cohort dnbc-research@ssi.dk dnbc.dk/access-to-dnbc-data
The Danish Twin Registry and Biobank tvilling@health.sdu.dk sdu.dk/en/om_sdu/institutter_centre/ist_sundhedstjenesteforsk/centre/dtr/researcher/guidelines
Diet, Cancer and Health dchdata@cancer.dk cancer.dk/research/dcrc-research/diet-cancer-and-health/
Danish Centre for Strategic Research in Type 2 Diabetes kurt.hoejlund@rsyd.dk
jsn@rsyd.dk
dd2.dk/forskning/ansoeg-om-data
Vejle Diabetes Biobank eva.rabing.brix.petersen@rsyd.dk
Ivan.Brandslund@rsyd.dk
NA
The Copenhagen Hospital Biobank 2034.rigshospitalet@regionh.dk regionh.dk/forskning-og-innovation/Region-Hovedstadens-biobank/Sider/default.aspx
The Copenhagen City Heart Study/ the Copenhagen General Population Study anders.marcuslund-reuss.01@regionh.dk frederiksberghospital.dk/afdelinger-og-klinikker/oesterbroundersoegelsen/om-undersoegelsen/Sider/default.aspx
cgps.dk
The Danish Cancer Biobank RBGB.sekretariat.herlev-og-gentofte-hospital@regionh.dk rbgb.dk/cancer/fagfolk/anvendelse-af-materialer/
The Danish Rheumatologic Biobank RBGB.sekretariat.herlev-og-gentofte-hospital@regionh.dk rbgb.dk/reuma/anvendelse-af-materialer/
The Danish Blood Donor Biobank RBGB.sekretariat.herlev-og-gentofte-hospital@regionh.dk rbgb.dk/bloddonor/anvendelse-af-materialer/
Pathological specimens recorded in the Danish Pathology Data Bank Access to registry data in the Danish Pathology Data Bank: lone.bojesen.02@regionh.dk
For access to pathological specimens, the application should be directed to the local pathology departments
patobank.dk/ansoeg-om-data/ansoegningsskema/

Note: Detailed information regarding the application processes is described in the Supplementary.

Future Implications

Biobanks will be a cornerstone in future health research. Biobank research can provide the basis for personalized medicine, including targeted prevention, diagnostic efforts, and treatment with the purpose of more efficient, safe, and cost-effective healthcare. In the future, the combination of biomarkers and clinical characteristics may be an integrated part of predicting disease risk, prognosis, or treatment response. Personalized medicine is already applied in the field of oncology, where clinical characteristics and biomarkers are used to guide the most optimal treatment strategy for certain cancers.99 Other medical fields may be less advanced, but have great potential for future research with few examples presented next. Current clinical guidelines for treatment of rheumatic autoimmune and inflammatory diseases revolve around clinical characteristics only. A large number of patients have poor treatment response and/or severe side effects. Consequently, patients must try out several drugs before finding the most ideal, leading to negative patient experience and less cost-effective healthcare. Tailored treatment, including biomarkers, can have great implications for this group of patients.36 Diabetes is another growing field within personalized medicine. For instance, subclassification of type 2 diabetes may associate with individual prognosis and treatment response.100 Moreover, novel biomarkers for prediction of late diabetic complications could be a valuable clinical tool. Prenatal programming is also gaining more attention. Biobanks can play a key role in understanding how prenatal exposures influence later risk of diseases, including how exposures may interact with genetic factors.

In conclusion, the setting in Denmark provides several advantages and possibilities for biobank health research. Biobanks can be linked to population-based registries and databases with the advantage of complete follow-up and the possibility to gain additional clinical and sociodemographic information not stored by the biobanks themselves. Last, Denmark has made great efforts to ensure high-quality biobank infrastructures and offers great expertise in such matters. The future implications of Danish biobank research are promising.

Funding Statement

There is no funding to report.

Disclosure

MLH reports grants from AbbVie, Biogen, BMS, Celltrion, Eli Lilly, Janssen Biologics B.V., Lundbeck Foundation, MSD, Pfizer, Roche, Samsung Bioepis, Sandoz, Novartis; also reports payment/honoraria for lectures, presentations or similar. No personal income but paid to institution from Pfizer, Medac, and Sandoz; participation in a Data Safety Monitoring Board or Advisory Board. No personal income but paid to institution from AbbVie, outside the submitted work. MLH also has chaired the steering committee of the Danish Rheumatology Quality Registry (DANBIO, DRQ), which receives public funding from the hospital owners and funding from pharmaceutical companies. MLH co-chairs EuroSpA, which generates real-world evidence of treatment of psoriatic arthritis and axial spondyloarthritis based on secondary data and is partly funded by Novartis. LSS reports The Department Clinical Epidemiology is involved in studies with funding from various companies as research grants to and administered by Aarhus University. None of these studies are related to the current study. The authors report no other conflicts of interest in this work.

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