References

Alonso-Moran E, Satylganova A, Orueta JF, Nuno-Solinis R. Prevalence of depression in adults with type 2 diabetes in the Basque Country: relationship with glycaemic control and health care costs. BMC Public Health. 2014; 14 https://doi.org/10.1186/1471-2458-14-769

Aveyard H. Doing a literature review in health and social care, 3rd edn. Maidenhead: McGraw-Hill Education; 2014

Sampling bias: What is it and why does it matter. 2021. https://www.scribbr.com/methodology/sampling-bias (accessed 24 February 2022)

Bo A, Pouwer F, Juul L, Nicolaisen SK, Maindal HT. Prevalence and correlates of diabetes distress, perceived stress and depressive symptoms among adults with early-onset type 2 diabetes: cross-sectional survey results from the Danish DD2 study. Diabet Med. 2020; 37:(10)1679-1687 https://doi.org/10.1111/dme.14087

Caruana E, Roman M, Hernandez-Sanchez J, Solli P. Longitudinal studies. J Thorac Dis. 2015; 7:(11)E537-E540 https://doi.org/0.3978/j.issn.2072-1439.2015.10.63

Cheung KL, ten Klooster PM, Smit C, de Vries H, Pieterse ME. The impact of non-response bias due to sampling in public health studies: A comparison of voluntary versus mandatory recruitment in a Dutch national survey on adolescent health. BMC Public Health. 2017; 17:(1) https://doi.org/10.1186/s12889-017-4189-8

Collaboration for Environmental Evidence. Data coding and data extraction. 2020. https://environmentalevidence.org/information-for-authors/7-data-coding-and-data-extraction (accessed 24 February 2022)

Deischinger C, Dervic E, Leutner M Diabetes mellitus is associated with higher risk for major depressive disorder in women than in men. BMJ Open Diabetes Res Care. 2020; 8:(1) https://doi.org/10.1136/bmjdrc-2020-001430

Foran E, Hannigan A, Glynn L. Prevalence of depression in patients with type 2 diabetes mellitus in Irish primary care and the impact of depression on the control of diabetes. Ir J Med Sci. 2015; 184:(2)319-322 https://doi.org/10.1007/s11845-014-1110-7

Golden SH, Shah N, Naqibuddin M The prevalence and specificity of depression diagnosis in a clinic-based population of adults with type 2 diabetes mellitus. Psychosomatics. 2017; 58:(1)28-37 https://doi.org/10.1016/j.psym.2016.08.003

Habtewold TD, Alemu SM, Haile YG. Sociodemographic, clinical, and psychosocial factors associated with depression among type 2 diabetic outpatients in Black Lion General Specialized Hospital, Addis Ababa, Ethiopia: a cross-sectional study. BMC Psychiatry. 2016; 16 https://doi.org/10.1186/s12888-016-0809-6

Health Foundation. What's getting in the way? Barriers to improvement in the NHS. 2015. https://tinyurl.com/mtna38dm (accessed 24 February 2022)

Hiebl MRW. Sample selection in systematic literature reviews of management research.: Organizational Research Methods; 2021 https://doi.org/10.1177/1094428120986851

International Diabetes Federation. IDF clinical practice recommendations for managing type 2 diabetes in primary care. 2017. https://tinyurl.com/nnanczbc (accessed 24 February 2022)

International Diabetes Federation. IDF diabetes atlas. 2021. https://diabetesatlas.org (accessed 24 February 2022)

Jacob L, Kostev K. Prevalence of depression in type 2 diabetes patients in German primary care practices. J Diabetes Complications. 2016; 30:(3)432-437 https://doi.org/10.1016/j.jdiacomp.2015.12.013

Q methodological study of subjectivity and objectivity. 2014. https://tinyurl.com/yckkdasn (accessed 24 February 2022)

Keeble C, Barber S, Law G, Baxter P. Participation bias assessment in three high-impact journals. SAGE Open. 2013; 3:(4) https://doi.org/10.1177/2158244013511260

Kraemer HC, Neri E, Spiegel D. Wrangling with p-values versus effect sizes to improve medical decision-making: A tutorial. Int J Eat Disord. 2020; 53:(2)302-308 https://doi.org/10.1002/eat.23216

Kroenke K, Spitzer RL, Williams JB. The Patient Health Questionnaire-2: validity of a two-item depression screener. Medical Care. 2003; 41:(11)1284-1292 https://doi.org/10.1097/01.mlr.0000093487.78664.3c

Lloyd CE, Nouwen A, Sartorius N Prevalence and correlates of depressive disorders in people with type 2 diabetes: results from the International Prevalence and Treatment of Diabetes and Depression (INTERPRET-DD) study, a collaborative study carried out in 14 countries. Diabet Med. 2018; 35:(6)760-769 https://doi.org/10.1111/dme.13611

Lopez-de-Andres A, Jimenez-Trujillo MI, Hernandez-Barrera V Trends in the prevalence of depression in hospitalized patients with type 2 diabetes in spain: analysis of hospital discharge data from 2001 to 2011. PLoS One. 2015; 10:(2) https://doi.org/10.1371/journal.pone.0117346

Lunghi C, Moisan J, Gregoire J-P, Guenette L. Incidence of depression and associated factors in patients with type 2 diabetes in Quebec, Canada: A population-based cohort study. Medicine (Baltimore). 2016; 95:(21) https://doi.org/10.1097/MD.0000000000003514

Ma Y, Li X, Zhao D Association between cognitive vulnerability to depression-dysfunctional attitudes and glycaemic control among in-patients with type 2 diabetes in a hospital in Beijing: a multivariate regression analysis. Psychol Health Med. 2018; 23:(2)189-197 https://doi.org/10.1080/13548506.2017.1339894

Maxwell M, Harris F, Hibberd C A qualitative study of primary care professionals' views of case finding for depression in patients with diabetes or coronary heart disease in the UK. BMC Fam Pract. 2013; 14 https://doi.org/10.1186/1471-2296-14-46

Murad MH, Katabi A, Benkhadra R, Montori VM. External validity, generalisability, applicability and directness: a brief primer. BMJ Evid Based Med. 2018; 23:(1)17-19 https://doi.org/10.1136/ebmed-2017-110800

Nursing and Midwifery Council. The code. 2018. https://www.nmc.org.uk/globalassets/sitedocuments/nmc-publications/nmc-code.pdf (accessed 24 February 2022)

Owens-Gary MD, Zhang X, Jawanda S, Bullard KM, Allweiss P, Smith BD. The importance of addressing depression and diabetes distress in adults with Type 2 Diabetes. J Gen Intern Med. 2019; 34:(2) https://doi.org/10.1007/s11606-018-4705-2

Public Health England. Health matters: preventing type 2 diabetes. 2018. https://tinyurl.com/ms8mtc26 (accessed 3 March 2022)

Roberts NW, Christenson RH, Price CP. Searching for evidence: a guide to finding the evidence in laboratory medicine. Ann Clin Biochem. 2014; 51:(Pt 3)326-334 https://doi.org/10.1177/0004563214521161

Roessner V. Large sample size in child and adolescent psychiatric research: the way of salvation?. Eur Child Adolesc Psychiatry. 2014; 23:(11)1003-1004 https://doi.org/10.1007/s00787-014-0635-7

Royal College of Nursing. Education, prevention and the role of the nursing team. 2020. https://tinyurl.com/ymz32h3y (accessed 28 February 2022)

Salinero-Fort MA, Gomez-Campelo P, San Andres-Rebollo FJ Prevalence of depression in patients with type 2 diabetes mellitus in Spain (the DIADEMA Study): results from the MADIABETES cohort. BMJ Open. 2018; 8:(9) https://doi.org/10.1136/bmjopen-2017-020768

Sandelowski M, Voils CI, Leeman J, Crandell JL. Mapping the mixed methods–mixed research synthesis terrain. Journal of Mixed Methods Research. 2012; 6:(4)317-331 https://doi.org/10.1177/1558689811427913

Santos E, Eslabão A. Auditing practices in the Brazilian unified health system: an integrative literature review. Revista de Pesquisa Cuidado é Fundamental Online. 2019; 11:(3) https://doi.org/10.9789/2175-5361.2019.v11i3.792-800

Schmitz N, Gariepy G, Smith K Recurrent subthreshold depression in type 2 diabetes: an important risk factor for poor health outcomes. Diabetes Care. 2014; 37:(4)970-978 https://doi.org/10.2337/dc13-1832

Setia MS. Methodology series module 3: Cross-sectional studies. Indian J Dermatol. 2016a; 61:(3)261-264 https://doi.org/10.4103/0019-5154.182410

Setia MS. Methodology series module 1: Cohort studies. Indian J Dermatol. 2016b; 61:(1)21-25 https://doi.org/10.4103/0019-5154.174011

How to conduct a systematic search for a systematic literature review. 2020. https://ioh.org.uk/wp-content/uploads/2020/03/Charlotte-Whiffin-OH-Today-Winter-2020.pdf (accessed 24 February 2022)

World Health Organization. Depression (fact sheet). 2021. https://www.who.int/news-room/fact-sheets/detail/depression (accessed 24 February 2022)

Are adults diagnosed with type 2 diabetes at a greater risk of developing depression? Integrative literature review

10 March 2022
Volume 31 · Issue 5

Abstract

Background:

The aim of this integrative literature review was to investigate the prevalence of depression in adults diagnosed with type 2 diabetes within Europe and to examine the link between adults with type 2 diabetes and the risk of developing depression.

Methods:

An integrative literature review using the databases CINAHL, Medline and PsycInfo to retrieve the most relevant articles on adults with type 2 diabetes and the risk of developing depression.

Results:

Gender, age and socio-economic status may increase the risk of an adult with type 2 diabetes developing depression.

Conclusion:

Adults with type 2 diabetes are at a greater risk of developing depression, and factors such as age, gender and socio-economics also play a role in predicting whether a person with type 2 diabetes will develop depression. Screening tools such as Patient Health Questionnaire-2 (PHQ-2) may be used to assess for depression within GP surgeries at the time of diagnosis with type 2 diabetes.

Depression is a prevalent mental health condition that affects more than 280 million individuals worldwide (World Health Organization, 2021). According to the International Diabetes Federation (2021), around 537 million adults aged 20–79 years are living with diabetes worldwide, and the proportion of individuals diagnosed with type 2 diabetes is increasing in most countries. Golden et al (2017) found that, globally, 43 million people who have diabetes also have symptoms of depression. Similarly, Public Health England (2018) noted that depression is more common among people living with type 2 diabetes, compared with those who are not.

In addition, depression may have negative implications for those with type 2 diabetes in relation to diabetes management. Schmitz et al (2014) suggested that adults with diabetes and depression have been shown to have more problems with self-management of their diabetes—in terms of following a healthy diet, exercising, adherence to medication, blood glucose monitoring and not smoking—which can increase the risk of macrovascular and microvascular complications. Ma et al (2018) argued that people with depression are prone to have a poor quality of life, poor treatment compliance and suboptimal glycaemic control. Furthermore, Lunghi et al (2016) identified that establishing the risk factors for developing depression in this patient group could help health professionals to identify those diabetic patients at high risk of developing depression and thus prevent or treat depression in people with type 2 diabetes.

This integrative literature review explored the prevalence of depression in individuals with type 2 diabetes. An integrative literature review is a systematic way of carrying out research that synthesises the findings from different types of previously conducted studies, to gain a deeper theoretical understanding of the research topic (Santos and Eslabao, 2019). An integrative review is also useful as it helps to summarise the literature that is available on a particular topic (Aveyard, 2014).

Methods

This review used the framework of population, intervention/issue and outcome (PIO) to generate the research question (Table 1). Whiffin (2020) suggested that a well-designed research question can be framed using a PIO model because it allows key concepts in a question to be identified and a search strategy developed that will generate as many search terms as possible. In addition, key words were searched in combination rather than alone to develop a focused search strategy using Boolean operators such as ‘AND’ to narrow down the search by combing different concepts as well as using ‘OR’ to broaden the search by including alternative words (Roberts et al, 2014) as shown in Table 1.


Table 1. PIO framework and key words
PIO: Key words
Population Adults (aged over 18 years) Young adults, middle-aged adults, older adults
Intervention/issue Diagnosed with type 2 diabetes Type 2 diabetes mellitus, T2DM, adult-onset diabetes, non-insulin dependent diabetes, diagnosis, diagnosed
Outcome Risk of developing depression Depressive symptoms, depressive disorders, depressive status, likelihood, possibility, prevalence of depression, associations

Inclusion and exclusion criteria were used to help select relevant articles for the integrative literature review. This is reinforced by Hiebl (2021) who argued that these criteria should help to reveal the precise explanations of why a specific piece of research was included or not included within the review. Table 2 shows the inclusion and exclusion criteria.


Table 2. Inclusion and exclusion criteria for search
Inclusion criteria Exclusion criteria
Individuals aged over 18 years Individuals under the age of 18
Type 2 diabetes Type 1 diabetes
Primary research Secondary research
Articles published from 2011 to 2021 Articles published more than 10 years ago
Articles published in the English language Articles not published in the English language
Depression Other mental health conditions (such as anxiety, schizophrenia, and post-traumatic distress disorder)
Full text articles Reviews, commentaries, articles only displaying the abstract and discussion papers, opinions and editorials
Research articles carried out in Europe Research articles not carried out within Europe

Electronic databases that were used to retrieve the articles were CINAHL (Cumulative Index of Nursing and Allied Health Literature) (871 hits), Medline (168 hits) and PsycInfo (34 hits), applying the inclusion and exclusion criteria to all three databases. The most relevant articles that met the criteria for this review were then selected. In total, there were seven quantitative studies, three of which were retrieved from CINAHL and four from Medline, with no articles retrieved from PsycInfo.

A data extraction table was used to help systematically extract relevant information (Collaboration for Environmental Evidence, 2020) (Table 3), and a data extraction table also helped to draw out themes. Sandelowski et al (2012) discussed how aggregating findings into themes is used to confirm findings and enable the researcher to answer the research question.


Table 3. Data extraction table
Author/Year Study aim(s) Study design method Data collection method Research results/findings
Lloyd et al (2018) To evaluate the incidence as well as management of depressive disorders in individuals with type 2 diabetes across 14 countries
  • Primary research
  • Quantitative
  • Collaborative study
  • Sample: 2783 participants (ages 18–65) attending outpatient clinics between 2013 and 2015
  • 92.3% response rate
  • Individuals with type 2 diabetes and current major depressive disorder (MDD) and moderate or severe depressive symptomatology were more likely to be female (P<0.0001)
  • Age did not vary significantly when comparing patients with or without current MDD or with or without depressive symptomatology
  • Current MDD was linked with a lower level of education (P<0.05)
Alonso-Moran et al (2014) To evaluate the occurrence of depression in adults with a diagnosis of type 2 diabetes, and to analyse the hypothesis of whether depression is linked with poor glycaemic management and increased healthcare costs
  • Primary research
  • Quantitative
  • Cross-sectional analysis
  • Diagnoses and procedures according to ICD 9 CM system
Database of the population stratification programme of the Basque Health Service known as Osakidetza. All individuals within the Basque Country aged 35 years and above were included in the study (sample size 126 894 participants)
  • 9.8% (12 392) participants with type 2 diabetes had depression (CI 95%; 9.6–9.9)
  • For each individual aged under 65 years, 1.5 individuals aged 65 or over with type 2 diabetes suffered with depression (OR-1.5; CI 95%: 1.4–1.6)
  • The prevalence of depression in men was 5.2% and 15.1% in women
Salinero-Fort et al (2018) To evaluate the occurrence of depression in those with a diagnosis of type 2 diabetes, as well as to recognise sociodemographic, psychological and clinical determinants
  • Primary research
  • Quantitative
  • Prospective cohort study
  • The Madrid Diabetes Study (MADIABETES Study) included 2955 patients
  • Individuals chosen using simple random sampling, carried out by a participating GP
  • Patients were invited to undertake telephone interviews annually
  • Age group: 30 years or older
  • 20.03% (n=592) of patients with type 2 diabetes were found to have depression
  • Individuals with depression were more likely to have a lower level of education (P<0.001) and more unlikely to be categorised as employed (P<0.001) compared with individuals without depression
  • Patients with depression self-reported a fair or poor health status, tended to be women (P<0.001) and to be older (P=0.017) compared with those without depression
Lopez-de-Andres et al (2015) Describe the trends in the occurrence of depression among patients in hospital diagnosed with type 2 diabetes within Spain from 2001 to 2011
  • Primary research
  • Quantitative
  • Retrospective observational study
  • Depression categorised based on ICD 9 codes
Sampling method:
  • Via a Spanish National Hospital Database that included 95% of discharges from hospital
  • 4 723 338 discharges with type 2 diabetes in 2001–2011
  • Patients admitted to hospital aged 35 years and older selected
  • The incidence of depression was most prevalent among younger diabetic adults (aged 35–59 years)
  • Women were more likely to suffer with depression compared with men each year (P<0.01)
Foran et al (2015) To establish whether the incidence of depression is more prominent in patients aged over 50 with type 2 diabetes within the West of Ireland and if depression is an independent predictor of diabetes management
  • Primary research
  • Quantitative
  • Cross-sectional study
  • Anonymised database including 9698 individuals aged over 50 years
  • Participants selected from primary care centres included in the Western Research and Education Network (WestREN)
  • Postal questionnaire, Hospital Anxiety Depression Scale (HADS), used to estimate the presence and severity of depression
  • 283 participants (response rate 34%)
  • 63 (22%) of the respondents with type 2 diabetes and 45 (16%) without suffered from depression
  • Patients with type 2 diabetes were most likely to be severely depressed than patients without diabetes (P=0.03)
  • Age and gender were not found to be statistically significant predictors for depression (P>0.05)
Jacob and Kostev (2016) To investigate depression in German patients with type 2 diabetes (with or without diabetes complications).
  • Primary research
  • Quantitative
  • Longitudinal study
  • Disease Analyzer database used to obtain data on drug prescriptions, diagnosis, basic medical and demographic information from GP surgeries
  • Patients with a diagnosis of type 2 diabetes (ICD 10: E11) 2004–2013, detected by 1202 GPs
  • Patients aged over 40 years
  • 90 412 available for analysis
  • Age did not have an influence on the incidence of depression in younger or older people (aged over 65 years)
  • The incidence of depression was more prominent in females compared with males (33.7% versus 26.8%)
Bo et al (2020) To demonstrate the incidence of depressive symptoms, diabetes distress and perceived stress among adults with early-onset type 2 diabetes, as well as to assess their link with sociodemographic and clinical traits
  • Primary research
  • Quantitative data
  • Cross-sectional study
  • Sub-sample of participants (20–45 years) within the Danish centre for Strategic Research in Type 2 Diabetes (DD2) cohort, 2010–2016
  • 216 respondents, 48% women
  • Depressive symptoms evaluated via 10-item questionnaire: Center for Epidemiological Studies Depression Scale Revised
  • 41% of participants reported increased symptoms of depression
  • Individuals with a low education level or who were unemployed had greater levels of depressive symptoms
  • Depressive symptoms were lower among older people

Results

Based on the seven articles selected, the themes gender, age, and socio-economic circumstances were chosen.

Gender

Foran et al (2015) carried out a quantitative study using a cross-sectional design to find out the prevalence of depression in individuals with type 2 diabetes within Irish primary care centres. They found that gender was not a statistically significant predictor of having depression (P>0.05) among this cohort. A critique of this study could be that the study sample only included 283 patients (34% response rate). Therefore, the results may be at risk of non-response bias, as Cheung et al (2017) have argued that non-response bias may affect the validity of prevalence estimates within a population. Hence, the results of this study may not be reliable or valid to draw concrete conclusions about the relationship between type 2 diabetes, gender and depression. The use of a cross-sectional design may also be a weakness of the study, as it hinders any conclusions regarding causal relationships (Bo et al, 2020). However, Setia (2016a) has argued that cross-sectional studies are useful for designing cohort studies and can help to provide information about the prevalence of outcomes or exposures.

Lloyd et al (2018) carried out a collaborative study across 14 countries using quantitative data for 2013–2015 to find out the occurrence of depressive disorders in adults with type 2 diabetes. Unlike Foran et al (2015), Lloyd et al discovered that individuals with type 2 diabetes, current major depressive disorder and moderate or severe depressive symptomatology were more likely to be linked to being female (P<0.0001). The P value, used to determine statistical significance, reflects the reliability and choice of analytic measures, trustworthiness of the protocol within the study, quality of design and, most importantly, the sample size (Kraemer et al, 2020). Lloyd et al (2018) further uncovered that more women participated in the study compared with men (93.7 vs 90.8%; P=0.003), which could lead to participation bias. Participation bias may cause the sample to not be representative of the population being studied, which can affect the overall findings and conclusions drawn (Keeble et al, 2013). Deischinger et al (2020) argued that men may under-report their depressive symptoms and are less likely to seek help, thus depression in men may not be as recognised by health professionals compared with that in women.

Age

Alonso-Moran et al (2014) in their cross-sectional study using quantitative data found that for each individual aged under 65 years, 1.5 individuals aged 65 or over with type 2 diabetes suffered with depression (OR-1.5; CI 95%: 1.4-1.6). However, all participants who took part in the study were aged 35 years and over, which may mean that the results cannot be generalised to the entire type 2 diabetes population, potentially affecting the external validity of the results, according to Bhandari (2021).

Lopez-de-Andres et al (2015) used quantitative data for their retrospective observational study on the trends in the occurrence of depression among patients in hospital with a diagnosis of type 2 diabetes in Spain during 2001-2011. In contrast with Alonso-Moran et al (2014), Lopez-de-Andres et al found that depression was most prevalent among young adults and found that the lower expectation of experiencing chronic disease at an early age negatively affected their ability to deal with health problems and life stressors compared with older adults. A strength recognised by the authors was the large sample size. Roessner (2014) pointed out that a large sample size allows for an easier assessment of representativeness of a sample and the generalisability of results achieved—how confidently the results from the sample of the study can be extended to the rest of the research population (Murad et al, 2018).

However, a study by Jacob and Kostev (2016), using a longitudinal design over a 10-year period (2004-2013), found that age had no effect on the incidence of depression in younger or older people. Caruana et al (2015) have emphasised that longitudinal studies are beneficial for evaluating relationships between risk factors and the development of disease, along with the results of treatments over different periods of time. Jacob and Kostev (2016) revealed that the relationship between depression and age is not well understood and that numerous studies have produced contradictory results, which suggests the results may be unreliable. This implies it may be difficult to estimate the specific age range within which depression is more likely to develop in those with type 2 diabetes.

Socio-economic circumstances

A cross-sectional study using quantitative data by Bo et al (2020) found that those with a medium to high level of education had lower levels of depressive symptoms compared with those with a low education level, and that levels of depression were higher among unemployed people by 5.69 compared with people in employment (95% CI 3.32 to 8.06). Similarly, Salinero-Fort et al (2018) conducted a prospective cohort study using quantitative data and uncovered that type 2 diabetes patients with depression were more likely to have a lower educational level compared with those without depression (P<0.001). Salinero-Fort et al further found that those with type 2 diabetes and depression were also less likely to be categorised as employed compared with those without depression (P<0.001). Unemployment was linked with depression, which suggests that working may have a protective role due to social support from colleagues (Salinero-Fort et al, 2018). Therefore, socio-economic circumstances such as a lower level of education and unemployment may increase the risk of depression in those with type 2 diabetes.

Within the study by Bo et al (2020) the participants were invited to be a part of the Danish Centre for Strategic Research in Type 2 Diabetes (DD2) cohort study once a GP or hospital physician diagnosed them with type 2 diabetes as part of routine clinical practice. This suggests the study promoted objectivity: the researcher did not choose which patients were invited to the study, so it was based purely on the diagnosis of type 2 diabetes. However, achieving absolute objectivity in research might not be possible. Karimova (2014) argued that objectivity is an unreachable goal that can never truly be achieved as all knowledge is subjective or partial in some way—everything is observed and reported by humans, therefore human error is inevitable. Consequently, it might not be possible to have absolute objectivity, but the participants involved in the study had not been selected by the researcher, which may have helped promote objectivity within this study.

A disadvantage for the design of the study by Salinero-Fort et al (2018) was the short time between telephone interviews (12 months), meaning it could be hard to compare cumulative incident rates with other studies. This point is supported by Setia (2016b), who stated that these types of studies help to estimate cumulative incidence and incident rates, and that a benefit of a cohort study is its longitudinal nature. However, Salinero-Fort et al argued that a prospective design for their study helped to reduce the risk of selection bias.

Discussion

This integrative literature review has shown that individuals with type 2 diabetes are at a greater risk of developing depression, and factors such as age, gender and socio-economics also play a role in predicting whether a person with type 2 diabetes will develop depression. This demonstrates the importance of identifying depression in these higher risk groups. Therefore, the findings indicate that it would be beneficial to implement screening tools for depression within GP surgeries to screen for depression at the time of diagnosis of type 2 diabetes, and ensure that patients have annual follow-up appointments. This is because screening for depression in those with type 2 diabetes may help to ensure that risk factors are not overlooked. Habtewold et al (2016) found that a major barrier in diagnosing depression in those with type 2 diabetes was lack of screening tools. Depression is linked with a higher risk of mortality, absenteeism, poor disease management, and poor health outcomes (Owens-Gary et al, 2019). Hence, it seems logical that early recognition through screening for depression in those with type 2 diabetes could have a positive impact by ensuring that an appropriate treatment/management plan is put in place.

Practice nurses have a crucial role in supporting, screening, and maintaining those with diabetes, as well as having an awareness of how mental health can affect individuals with diabetes (Royal College of Nursing, 2020). Therefore, practice nurses are in an ideal position to implement regular depression screening in patients diagnosed with diabetes within GP surgeries. Implementing this change also helps nurses to adhere to the Nursing and Midwifery Council (2018)Code, which states that registered nurses must encourage the wellbeing of individuals, prevent ill health, as well as keep up with the changing healthcare needs of individuals through all stages of their life.

Alonso-Moran et al (2014) highlighted the need for more accurate identification of depression among the diabetic population and periodical screening and monitoring for depression among those with type 2 diabetes. Furthermore, the International Diabetes Federation (2017) clinical practice recommendations for primary care, which took into account a wide range of guidelines from other sources, state that some of these guidelines recommend using validated screening tools for depression such as the Patient Health Questionnaire-2 (PHQ-2) (Kroenke et al, 2003): if the probability of a depressive disorder is 75% or above, then the primary care physician should consider referral to a specialist for evaluation. Thus, the evidence suggests that validated screening tools are beneficial for patients with type 2 diabetes by recognising early signs of depression to ensure patients are referred to the appropriate specialists to ensure the condition is managed or treated early.

There could be various facilitators and barriers to implementing the PHQ-2 screening tool in order to improve the recognition of depression in those with diabetes. One these barriers could be staff attitudes (Health Foundation, 2015), for example, they may be resistant to change, not agree that the change is required, or not agree that a particular change is the best way to improve care. This may be because staff members may not understand why a change is needed. A facilitator to overcome this could be education and training, for example, Maxwell et al (2013) suggested that, if screening for mental health conditions is to be encouraged, then primary care nurses need training to improve their confidence in dealing with mental health conditions.

Conclusion

This integrative literature review has revealed that those with type 2 diabetes are at a greater risk of developing depression, and factors such as age, gender, and socio-economic status also play a role in predicting whether a person with diabetes will develop depression. One suggestion emerging from the findings of the review is that it would be beneficial for practice nurses to use screening tools such as PHQ-2 to assess for depression within GP surgeries at the time of diagnosis of type 2 diabetes and ensure patients have annual follow-up appointments.

A strength of this suggestion is that there is supporting evidence from Alonso-Moran et al (2014) for a need for more accurate identification of depression in the diabetic population, as well as periodical screening and monitoring for depression among those with type 2 diabetes. However, a potential weakness of the suggestion may be the barriers to implementing it into practice, such as staff attitudes, which may need to be overcome, possibly through training to increase confidence in mental health screening in order to achieve this change in practice.

Even though age was identified as a potential risk factor of depression in those with type 2 diabetes, there was still contradictory evidence in relation to what influence age has on depression in individuals with type 2 diabetes. More research is needed to fully understand the association between different age cohorts in relation to the development of depression in people with diabetes.

KEY POINTS

  • People with type 2 diabetes are at a greater risk of developing depression
  • Gender, age, and socioeconomic factors may increase the risk of adults with type 2 diabetes developing depression
  • A major barrier in diagnosing depression in those with type 2 diabetes is a lack of screening tools
  • Screening tool such as the Patient Health Questionnaire-2 (PHQ-2) may be used to identify depression within GP surgeries

CPD reflective questions

  • Is depression considered one of the risk prognoses that develops in people with type 2 diabetes? Why?
  • Are there any screening tools in your clinical area used to identify depression in people with type 2 diabetes?
  • Where do you think people with type 2 diabetes could have this screening, and who would be best placed to undertake it?