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Gender differences in the relationship between depressive symptoms and diabetes associated with cognitive-affective symptoms

Published online by Cambridge University Press:  05 November 2024

Shakila Meshkat
Affiliation:
Interventional Psychiatry Program, St. Michael's Hospital, Toronto, Canada
Vanessa K. Tassone
Affiliation:
Interventional Psychiatry Program, St. Michael's Hospital, Toronto, Canada
Sarah Dunnett
Affiliation:
Interventional Psychiatry Program, St. Michael's Hospital, Toronto, Canada
Hilary Pang
Affiliation:
Department of Psychiatry, University of Toronto, Toronto, Canada
Michelle Wu
Affiliation:
Interventional Psychiatry Program, St. Michael's Hospital, Toronto, Canada
Josheil K. Boparai
Affiliation:
Interventional Psychiatry Program, St. Michael's Hospital, Toronto, Canada
Hyejung Jung
Affiliation:
Department of Biostatistics, Dalla Lana School of Public Health, University of Toronto, Toronto, Canada
Wendy Lou
Affiliation:
Department of Biostatistics, Dalla Lana School of Public Health, University of Toronto, Toronto, Canada
Venkat Bhat*
Affiliation:
Interventional Psychiatry Program, St. Michael's Hospital, Toronto, Canada Department of Psychiatry, University of Toronto, Toronto, Canada Institute of Medical Science, Temerty Faculty of Medicine, University of Toronto, Toronto, Canada Mental Health and Addictions Services, St. Michael's Hospital, Toronto, Canada
*
Correspondence: Venkat Bhat. Email: venkat.bhat@utoronto.ca
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Abstract

Background

Despite the frequent co-occurrence of depression and diabetes, gender differences in their relationship remain unclear.

Aims

This exploratory study examined if gender modifies the association between depressive symptoms, prediabetes and diabetes with cognitive-affective and somatic depressive symptom clusters.

Method

Cross-sectional analyses were conducted on 29 619 participants from the 2007–2018 National Health and Nutrition Examination Survey. Depressive symptoms were measured by the nine-item Patient Health Questionnaire. Multiple logistic regression was used to analyse the relationship between depressive symptoms and diabetes. Multiple linear regression was used to analyse the relationship between depressive symptom clusters and diabetes.

Results

The odds of having depressive symptoms were greater in those with diabetes compared to those without. Similarly, total symptom cluster scores were higher in participants with diabetes. Statistically significant diabetes–gender interactions were found in the cognitive-affective symptom cluster model. Mean cognitive-affective symptom scores were higher for females with diabetes (coefficient = 0.23, CI: 0.10, 0.36, P = 0.001) than males with diabetes (coefficient = −0.05, CI: −0.16, 0.07, P = 0.434) when compared to the non-diabetic groups.

Conclusions

Diabetes was associated with higher cognitive-affective symptom scores in females than in males. Future studies should examine gender differences in causal pathways and how diabetic states interact with gender and influence symptom profiles.

Type
Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © Venkat Bhat, St. Michael's Hospital-Unity Health Toronto, 2024. Published by Cambridge University Press on behalf of Royal College of Psychiatrists

Depression and diabetes are significant contributors to disability globally1 and are frequently comorbid, with 28% of individuals with diabetes also suffering from a depressive disorder.Reference Khaledi, Haghighatdoost, Feizi and Aminorroaya2 When both conditions are present, patients report significantly greater functional impairment than those with either depression or diabetes alone.Reference Egede3 The presence of depression in diabetes can reduce treatment adherence and increase complications and risk of death.Reference Egede and Ellis4 Individuals with prediabetes can reverse their condition through lifestyle modifications.Reference Galaviz, Weber, Suvada, Gujral, Wei and Merchant5 However, when co-occurring with depression, these changes may be more difficult to implement,Reference Sumlin, Garcia, Brown, Winter, García and Brown6 and the two conditions synergistically interact to increase the risk of diabetes.Reference Deschênes, Burns, Graham and Schmitz7

There are significant gender differences in the development, psychological impact and management of diabetes.Reference Kautzky-Willer, Harreiter and Pacini8,Reference Kautzky-Willer, Leutner and Harreiter9 As such, it is essential to examine the relationship between diabetes and depressive symptoms with this in mind. While the prevalence of depression is higher among females with diabetes as compared to males,Reference Ali, Stone, Peters, Davies and Khunti10 meta-analyses that stratify results by gender and include predominantly longitudinal analyses have found greater associations between depression and diabetes in males than in females.Reference Ali, Stone, Peters, Davies and Khunti10,Reference Zhuang, Shen and Ji11 Other research has shown a relationship between depression and diabetes among females but not males,Reference Demmer, Gelb, Suglia, Keyes, Aiello and Colombo12,Reference Zhao, Chen, Lin and Sigal13 or significantly greater odds of depression for females versus males.Reference Deischinger, Dervic, Leutner, Kosi-Trebotic, Klimek and Kautzky14 Moreover, there is evidence for relationships between depression and both insulin resistanceReference Pearson, Schmidt, Patton, Dwyer, Blizzard and Otahal15 and prediabetesReference Krysiak, Szkróbka and Okopień16 in both males and females, though gender-based differences are not clear.

Considering depression as a combination of two symptom clusters (i.e. somatic and cognitive-affective) rather than one uniform condition may aid in understanding how the relationship with diabetes differs by gender. Based on the Diagnostic and Statistical Manual of Mental Disorders, Fifth Edition 17 (DSM) criteria, somatic symptoms relate to sleep, energy, appetite and psychomotor slowing/restlessness, whereas symptoms relating to anhedonia, mood, guilt, concentration and suicidal ideation are cognitive-affective. Analyses that consider such symptom clusters have been shown to provide significant benefits over those that examine total depression only,Reference Elhai, Contractor, Tamburrino, Fine, Prescott and Shirley18 particularly when investigating health outcomes.Reference Stewart, Zielke, Hawkins, Williams, Carnethon and Knox19 The cognitive-affective symptom cluster has been shown to be associated with an individual's perception of their unmet psychological care needs, while somatic symptoms are not.Reference van der Donk, Fleer, Sanderman, Emmelkamp, Links and Tovote20 Without distinguishing by gender, research has found diabetes,Reference Nicolau, Simó, Conchillo, Sanchís, Blanco and Romerosa21 insulin resistanceReference Khambaty, Stewart, Muldoon and Kamarck22 and metabolic syndrome (MetS)Reference Marijnissen, Smits, Schoevers, van den Brink, Holewijn and Franke23 – which are correlated with diabetesReference James, Varghese, Sharma and Chand24 – to be primarily associated with somatic symptoms of depression. Only one study has examined depression symptom clusters by gender, finding that associations were primarily driven by somatic symptoms in both males and females.Reference Marijnissen, Smits, Schoevers, van den Brink, Holewijn and Franke23 However, that study examined MetS and not diabetes or prediabetes. Further, despite research suggesting that the association between diabetes and depression differs according to gender,Reference Ali, Stone, Peters, Davies and Khunti10,Reference Zhuang, Shen and Ji11 no study has examined how depressive symptom clusters may differ by gender in people with diabetes or prediabetes.

To fill these knowledge gaps, this exploratory study examined the associations of depressive symptoms and symptom cluster scores with diabetes status, including gender-based interactions. We hypothesised that (a) individuals with known prediabetes and diabetes would have statistically significantly higher odds of having depressive symptoms than non-diabetic individuals, and that this would occur to a greater extent in females than in males, (b) somatic symptom scores would be statistically significantly higher in prediabetic and diabetic individuals compared to non-diabetic individuals, with no gender differences, and (c) cognitive-affective symptom scores would not be statistically significantly higher in prediabetic and diabetic individuals compared to non-diabetic individuals, but that scores would be statistically significantly higher in females with diabetes and prediabetes than in males.

Method

Study population

This study used data from the 2007–2018 cycles of the National Health and Nutrition Examination Survey (NHANES). NHANES is an annual cross-sectional survey administered by the National Center for Health Statistics (NCHS), part of the Centers for Disease Control and Prevention (CDC). Data were collected from a sample of the non-institutionalised US population. The NHANES data collection protocols are approved each year by the NCHS Ethics Review Board and informed consent is obtained from all participants. More information on the protocols and sampling methods is available on the CDC website (https://www..cdc.gov/nchs/nhanes/analyticguidelines.aspx#). The study sample included males and females aged 20+ years who completed the Mental Health – Depression Screener (items DPQ010 to DPQ090) and the Diabetes Questionnaire (items DIQ010 and/or DIQ160). While NHANES does not differentiate between the type of diabetes, participants who met all of the following criteria were excluded, as type 1 diabetes was likely: (a) diagnosed with diabetes prior to age 30 (DID040), (b) started insulin therapy within 1 year of diabetes diagnosis (i.e. age minus length of time taking insulin [DID060] = within 1 year of age first diagnosed with diabetes [DID040]) and (c) taking insulin when surveyed (DIQ050).Reference Gujral, Mohan, Pradeepa, Deepa, Anjana and Narayan25

Exposure variable

Diabetes status was categorised as (a) no diabetes, (b) known prediabetes or (c) diabetes, assessed through self-report via the questions DIQ010, ‘Other than during pregnancy, have you ever been told by a doctor or health professional that you have diabetes or sugar diabetes?’ and DIQ160, ‘Have you ever been told by a doctor or other health professional that you have any of the following: prediabetes, impaired fasting glucose, impaired glucose tolerance, borderline diabetes or that your blood sugar is higher than normal but not high enough to be called diabetes or sugar diabetes?’ Individuals responding ‘yes’ to DIQ010 were categorised as having diabetes. Those who responded ‘no’ to DIQ010 were asked DIQ160. Individuals responding ‘borderline’ to DIQ010 or ‘yes’ to DIQ160 were categorised as having known prediabetes. Individuals responding ‘no’ to DIQ160 were categorised as non-diabetic.

Outcome variable

The presence of depressive symptoms was measured using the Mental Health – Depression Screener, which asks participants to complete the Patient Health Questionnaire-9 (PHQ-9). The PHQ-9 comprises nine items, which assess the frequency of depressive symptoms experienced over the past 2 weeks, based on diagnostic criteria for major depressive disorder (MDD) from the DSM – Fourth Edition. Reference Kroenke, Spitzer and Williams26 The items on this scale are scored from 0 (experienced no days) to 3 (experienced nearly every day). Answers to items 1–9 on the PHQ-9 were summed and participants were categorised as having depressive symptoms (score ≥ 10) or not (score < 10). Symptom clusters were determined by summing scores to questions within each cluster (questions 1, 2, 6, 7 and 9 for cognitive-affective and questions 3, 4, 5 and 8 for somatic) and were kept as continuous values. Symptom clusters were defined in this way to align with existing diabetes/prediabetes and depression-related studies.Reference Kroenke, Spitzer and Williams26,Reference Krause, Bombardier and Carter27

Statistical analysis

Statistical analyses were performed using R, version 4.2.1 for MacOS, and the package ‘survey’ to account for survey weights. Mobile exam centre survey weights were divided by six to account for the merging of six survey cycles. Categorical variables were described as raw frequency and weighted percent in the study population demographic characteristics table, while continuous variables were described as weighted mean and s.d. A chi-square test of independence was used to check for statistically significant (P-value ≤0.05) differences in categorical demographic characteristics among the gender-dependent diabetes groups, and a t-test was used to test for differences in continuous variables. Multiple logistic regression was conducted to assess the relationship between diabetes status and presence of depressive symptoms (yes/no). A sensitivity analysis with depressive symptoms as a continuous measure, rather than categorical, was run using a multiple linear regression model. Multiple linear regression models were also used to assess the relationship between diabetes status and cognitive-affective or somatic symptom cluster scores. An additional sensitivity analysis was run with item 8 (psychomotor retardation) included in the cognitive-affective symptom cluster rather than the somatic symptom cluster.Reference Krause, Bombardier and Carter27 Next, additional models were run to test the interaction effects between diabetes status and gender for all previous models. Where interaction terms were statistically significant, a subgroup analysis by gender was conducted to further investigate the relationship between presence of depressive symptoms or symptom cluster scores and diabetes status. Statistical significance was set to P < 0.01 to account for multiple testing and reduce Type 1 error for all models.

Shortlisted covariates based on prior literature included age (continuous by year), gender (female or male), body mass index (BMI; <25 kg/m2, ≥25 to <30 kg/m2, ≥30 kg/m2), race (non-Mexican White, non-Mexican Black, Mexican Hispanic, other Hispanic, other [including multi-racial]), poverty-income ratio (PIR; low income ≤1.3, mid-to-high income >1.3),28 and sedentary activity (continuous by minutes per week). Backward stepwise selection was used to validate which covariates would be included in the multiple regression models with a cutoff of P < 0.10. All covariates were selected in all models, with the exception of the cognitive-affective model, which did not include sedentary activity. Symptom cluster models also controlled for the opposite symptom cluster.

Results

Descriptive statistics

The study population included 29 619 participants. Figure 1 shows participants’ inclusion into the study. The mean age of participants was 47.64 years (s.d. = 17) and 15 052 (51.32%) were female. Moreover, 23 224 (82%) participants were non-diabetic, 2548 (8.52%) were prediabetic and 3847 (9.48%) were diabetic (Table 1, Supplementary Table 1 available at https://doi.org/10.1192/bjo.2024.764). The overall prevalence of depressive symptoms in this sample was 8.03%, with a prevalence of 10.12 and 5.82% in females and males, respectively. Across the total sample, mean cognitive-affective symptom scores were 1.20 (s.d. = 2.21) and mean somatic symptom scores were 1.89 (s.d. = 2.31). Respective female and male mean scores were 1.37 (s.d. = 2.35) and 1.02 (s.d. = 2.05) for cognitive-affective symptoms, and 2.19 (s.d. = 2.44) and 1.57 (s.d. = 2.12) for somatic symptoms.

Fig. 1 Flowchart of National Health Examination and Nutrition Examination Survey (NHANES) participants included in the final study population.

Table 1 Demographics of study sample, based on diabetes status and gender

P-values < 0.05 denote statistically significant differences between genders, within each diabetes status group (i.e. no diabetes, prediabetes, diabetes). For statistically significant differences across diabetes status groups, see Supplementary Table 1. Categorical variables presented as unweighted frequencies and weighted percentages. Continuous variables presented as weighted mean and s.d.

PHQ-9, Patient Health Questionnaire-9.

Depressive symptoms

Individuals with known prediabetes (adjusted odds ratio (aOR): 1.63, 95% CI: 1.30, 2.04, P < 0.001) or diabetes (aOR: 1.85, CI: 1.58, 2.17, P < 0.001) had statistically significantly higher odds of having depressive symptoms compared to those without diabetes (Table 2, Supplementary Table 2). There was no interaction effect between diabetes status and gender for prediabetes (Table 3, Supplementary Table 3). The interaction between diabetes status and gender was not statistically significant for diabetes in the main analysis based on our threshold for statistical significance (P = 0.036) (Table 3). However, in the sensitivity analysis wherein depressive symptoms were treated continuously, this interaction was statistically significant (Supplementary Table 3). Females with diabetes had an average total depressive symptom score that was 1.44 points greater than females without diabetes (adjusted coefficient (aCoeff.) = 1.44, CI: 1.10, 1.78, P < 0.001), whereas males with diabetes showed a smaller difference in mean scores than their non-diabetic counterparts (aCoeff. = 0.71, CI: 0.44, 0.98, P < 0.001) (Supplementary Table 4). As such, subsequent subgroup analyses by gender were conducted for the main analysis based on the overall trend of results and its potential clinical relevance in suggesting that the association between diabetes status and depressive symptoms may differ by gender. In the main analysis, the odds of depressive symptoms for females with diabetes were more than two times the odds of depressive symptoms for females without diabetes (aOR: 2.05, CI: 1.65, 2.54, P < 0.001), whereas the odds of depressive symptoms for males with diabetes was 52% higher than males without diabetes (aOR: 1.52, CI: 1.19, 1.93, P = 0.001) (Table 4, Supplementary Table 4).

Table 2 Results of main effect multiple logistic and linear regressions

aOR, adjusted odds ratio; aCoeff., adjusted coefficient; ref, reference. P-values < 0.01 (shown in bold) denote statistical significance. Depressive symptom and somatic symptom cluster models adjusted for age, gender, body mass index, race, poverty-income ratio, sedentary activity; cognitive-affective symptom cluster model adjusted for the same variables with the exception of sedentary activity; somatic and cognitive-affective symptom cluster models additionally controlled for the opposite symptom cluster.

Table 3 Results of multiple logistic and linear regressions with interaction effects

aOR, adjusted odds ratio; aCoeff., adjusted coefficient; ref, reference. P-values < 0.01 (shown in bold) denote statistical significance. Depressive symptom and somatic symptom cluster models adjusted for age, body mass index, race, poverty-income ratio, sedentary activity; cognitive-affective symptom cluster model adjusted for the same variables with the exception of sedentary activity; somatic and cognitive-affective symptom cluster models additionally controlled for the opposite symptom cluster.

Table 4 Subgroup models following statistically significant interaction between diabetes status and gender

Note: aOR, adjusted odds ratio; aCoeff., adjusted coefficient; ref, reference. P-values < 0.01 (shown in bold) denote statistical significance. Depressive symptom model adjusted for age, body mass index (BMI), race, povery-income ratio (PIR), sedentary activity; cognitive-affective symptom model adjusted for age, BMI, race, PIR, somatic symptom cluster.

Cognitive-affective symptom cluster score

Based on our threshold for statistical significance, neither individuals with diabetes (aCoeff. = 0.09, CI: 0.00, 0.18, P = 0.039) or known prediabetes (aCoeff. = 0.07, CI: −0.07, 0.22, P = 0.315) had statistically significantly higher mean cognitive-affective symptom cluster scores than non-diabetic individuals in the main analysis; this became significant for diabetes in the sensitivity analysis wherein psychomotor retardation was included in the cognitive-affective symptom cluster (Table 2, Supplementary Table 2). The interaction between diabetes status and gender was statistically significant for diabetes (P = 0.001), but not known prediabetes (Table 3), which was consistent in the sensitivity analysis with psychomotor retardation included in the cognitive-affective cluster (Supplementary Table 3). In adjusted subgroup analyses, females with diabetes had a mean cognitive-affective score that was statistically significant, at 0.23 points higher compared to females without diabetes (CI: 0.10, 0.36, P = 0.001), whereas males with diabetes had a mean cognitive-affective score that was 0.05 points lower than non-diabetic males (CI: −0.16, 0.07, P = 0.434). The association in males was statistically insignificant (Table 4, Supplementary Table 4).

Somatic symptom cluster score

Individuals with known prediabetes (aCoeff. = 0.24, CI: 0.13, 0.35, P < 0.001) and diabetes (aCoeff. = 0.30, CI: 0.19, 0.41, P < 0.001) had statistically significantly higher mean somatic symptom cluster scores than non-diabetic individuals (Table 2). Similarly, in the model including an interaction term between gender and known prediabetes or diabetes, the mean somatic symptom scores were statistically significantly higher for the individuals with known prediabetes and diabetes than those with no diabetes; however, these associations did not differ by gender (Table 3). The sensitivity analysis wherein psychomotor retardation was included in the cognitive-affective symptom cluster yielded the same finding (Supplementary Table 3).

Discussion

Using a population-based sample, the current study investigated the association between diabetes status and depressive symptoms (total overall and subset into clusters) in males and females. Statistically significant interactions between gender and diabetes were found in the total depressive symptom (when treated as a continuous measure) and cognitive-affective symptom analyses, but not in the somatic symptom analysis. Compared to participants without diabetes, females with diabetes had higher mean total depressive symptom scores and cognitive-affective symptom scores than males with diabetes, though cognitive-affective symptom scores were not statistically significantly related to diabetes in males. Gender did not modify the relationship between known prediabetes and depressive symptoms or symptom cluster scores.

Depressive symptoms were statistically significantly greater in females than in males with diabetes, which is in line with previous research.Reference Zhao, Chen, Lin and Sigal13,Reference Deischinger, Dervic, Leutner, Kosi-Trebotic, Klimek and Kautzky14 Several mechanisms can explain this finding, including gender dimorphic risk factors that influence both diabetes and depression. For example, depression risk factors such as lower decision latitude and higher job strain,Reference Theorell, Hammarström, Aronsson, Träskman Bendz, Grape and Hogstedt29 lower education levelReference Chang-Quan, Zheng-Rong, Yong-Hong, Yi-Zhou and Qing-Xiu30 and lower socioeconomic status in childhoodReference Gilman, Kawachi, Fitzmaurice and Buka31 have been found to be associated with diabetes in females than in males.Reference Kautzky-Willer, Harreiter and Pacini8 Sociocultural gender differences in coping with such stressors may be one explanation behind the higher depressive symptom scores found in females compared to males, as it has been suggested that men are more likely to cope by becoming aggressive and participating in activities while women are more likely to ruminate, decrease physical activity and eat more.Reference Demmer, Gelb, Suglia, Keyes, Aiello and Colombo12 Menopause and associated hormone changes also confer a unique risk for both diabetes and depression on females.Reference Demmer, Gelb, Suglia, Keyes, Aiello and Colombo12 Both factors may play a role in gender-based associations between diabetes and depression, as research has found that this relationship differs by age.Reference Zhao, Chen, Lin and Sigal13,Reference Deischinger, Dervic, Leutner, Kosi-Trebotic, Klimek and Kautzky14,Reference Chen, Chan, Chen, Ko and Li32,Reference Berge, Riise, Tell, Iversen, Østbye and Lund33 In contrast with the results presented in this study, meta-analyses including predominantly longitudinal studies examined depression as a predictor of diabetes and found greater associations between the two conditions in males.Reference Zhuang, Shen and Ji11 This suggests that heterogeneity in gender-based associations between depressive symptoms and diabetes may in part stem from variations in study design and from which condition is examined as the precipitating factor. This is supported by a longitudinal study that found a greater positive association in females when diabetes predicted the development of depressed mood than when depressed mood predicted the development of diabetes.Reference Polonsky, Anderson, Lohrer, Welch, Jacobson and Aponte34 Future research should consider how gender dimorphic risk factors play into gender differences in the diabetes–depression relationship, as well as how causal directions in this relationship may differ.

Previous research has suggested that cognitive-affective symptoms of depression, independent of somatic symptoms, are not associated with diabetesReference Wiltink, Michal, Wild, Schneider, König and Blettner35 or insulin resistance.Reference Khambaty, Stewart, Muldoon and Kamarck22 While this was the case for males in our sample, we found that females with diabetes had statistically significantly higher mean cognitive-affective scores than females without diabetes. This may be explained by the psychological impact of the complications or burdens that can accompany a diabetes diagnosis, known as ‘diabetes distress’. Measures of diabetes distress, including feelings of worry, guilt and frustration with the diagnosis,Reference Polonsky, Anderson, Lohrer, Welch, Jacobson and Aponte34 are more aligned with cognitive-affective symptoms of depression than somatic symptoms. Existing research supports a greater magnitude of this effect in females than in males.Reference Brooks and Roxburgh36,Reference Kausar, Awan and Khan37 Further, the lack of significance for females with known prediabetes in our sample suggests that known prediabetes is not associated with the same cognitive distress, perhaps because the condition can be reversed. The psychological burden of awareness of diabetes may also explain why our results differ from previous research using similar methods. Specifically, Wiltink et al.Reference Wiltink, Michal, Wild, Schneider, König and Blettner35 found no significant association between cognitive-affective symptoms and diabetes; however, both those with known (identified through self-report) and unknown (identified through blood tests as part of the study) diabetes were included in the diabetic group. In contrast, the present study examined only known diabetes or prediabetes, suggesting that knowledge of diabetes might be a key factor influencing cognitive-affective symptoms of depression.

Somatic depressive symptoms did not differ between males or females with either known prediabetes or diabetes when compared to their non-diabetic counterparts. Research suggests that females with depression may be more likely than males to exhibit somatic symptoms as part of MDDReference Delisle, Beck, Dobson, Dozois and Thombs38,Reference Kroenke and Spitzer39 and endorse somatic symptoms at a greater rate.Reference Kroenke and Spitzer39 Our results suggest that the presence of diabetes or known prediabetes does not statistically significantly alter this pattern.

Study findings did not support our hypothesis that the relationship between depressive symptoms and prediabetes would mirror that of diabetes. Results showed a trend in the opposite direction, with males experiencing greater odds of having depressive symptoms and higher mean cognitive-affective scores, though the associations themselves and the interactions did not reach significance. This may be due to differential types of prediabetes experienced across genders, where males more commonly experience combined impaired glucose tolerance and impaired fasting glucose type prediabetes,Reference Bhowmik, Binte Munir, Ara Hossain, Siddiquee, Diep and Mahmood40,Reference Færch, Borch-Johnsen, Vaag, Jørgensen and Witte41 which is most strongly associated with depression.Reference Krysiak, Szkróbka and Okopień16 However, further research is needed to investigate the role of gender in the relationship between prediabetes and depressive symptoms and how this relationship may differ from that of diabetes.

This study is not without limitations. While the nationally representative sample allows for the inclusion of individuals who are not seeking care for diabetes or depressive symptoms, the self-report of diabetes status limits diabetes and prediabetes groups to those who are aware of their condition. However, the awareness of diabetes status is associated with depression regardless of metabolic status, and self-report measures of diabetes have been shown to have high sensitivity and specificity.Reference Seligman, Bindman, Vittinghoff, Kanaya and Kushel42 Moreover, the measurement of depressive symptoms was based solely on total PHQ-9 scores. Using a self-report scale, rather than a semi-structured interview or confirmed clinical diagnosis, limits our study to investigating the association of diabetes and prediabetes with presence of depressive symptoms rather than MDD. Several other conditions (e.g. bereavement, adjustment disorder and substance use disorder) may be associated with elevated PHQ-9 scores, and, as such, it is possible that participants who were categorised as having depressive symptoms were experiencing a condition other than MDD. Finally, the use of cross-sectional data limits the conclusions that can be drawn to correlation and presents the possibility of non-response bias. This study is also limited by the lack of comorbidity analysis.

Results from this study suggest that diabetes is associated with higher total depressive symptom scores and cognitive-affective symptom scores in females. Future studies should examine causal pathways in the diabetes-depressive symptom relationship, while also considering gender to determine how differing trajectories explain the heterogeneity of research in this area. Further, studies should examine gender differences in the distinction between diabetes distress and depressive symptoms. Studies that examine depression symptom profiles and diabetes status should consider how results may differ across genders, as well as how prediabetic or diabetic state and diagnosed or undiagnosed diabetes influence these symptom profiles.

Supplementary material

Supplementary material is available online at https://doi.org/10.1192/bjo.2024.764

Data availability

The data that support the findings of this study are available from the corresponding author, V.B., upon reasonable request.

Author contributions

V.B. conceptualised the study along with the rest of the team. The investigation was led by S.M., S.D., V.K.T. and M.W. who were also responsible for writing the original draft. M.W. was responsible for the methodology, data curation, formal analysis and visualisation. W.L. and H.J. supervised formal analysis. Study conceptualisation and manuscript writing were supervised by V.B. All authors provided critical revisions to the manuscript for intellectual content and contributed to editing. All authors read and approved the final manuscript.

Funding

This research did not receive any specific grant from funding agencies in the public, commercial or non-for-profit sectors.

Declaration of interest

V.B. is supported by an Academic Scholar Award from the Department of Psychiatry, University of Toronto, Canada, and has received research support from the Canadian Institutes of Health Research, Brain & Behavior Foundation (USA), Ministry of Health Innovation Funds (Canada), Royal College of Physicians and Surgeons of Canada, Department of National Defence (Canada) and an investigator-initiated trial from Roche Canada.

Ethics and consent statement

The National Health and Nutrition Examination Survey (NHANES) data collection protocols are approved each year by the National Center for Health Statistics (NCHS) Ethics Review Board and informed consent is obtained from all participants

Footnotes

Joint first authors.

References

GBD 2015 DALYs and HALE Collaborators. Global, regional, and national disability-adjusted life-years (DALYs) for 315 diseases and injuries and healthy life expectancy (HALE), 1990–2015: a systematic analysis for the global burden of disease study 2015. Lancet Lond Engl 2016; 388(10053): 1603–58.CrossRefGoogle Scholar
Khaledi, M, Haghighatdoost, F, Feizi, A, Aminorroaya, A. The prevalence of comorbid depression in patients with type 2 diabetes: an updated systematic review and meta-analysis on huge number of observational studies. Acta Diabetol 2019; 56(6): 631–50.CrossRefGoogle ScholarPubMed
Egede, LE. Diabetes, major depression, and functional disability among U.S. Adults. Diabetes Care 2004; 27(2): 421–8.CrossRefGoogle Scholar
Egede, LE, Ellis, C. Diabetes and depression: global perspectives. Diabetes Res Clin Pract 2010; 87(3): 302–12.CrossRefGoogle ScholarPubMed
Galaviz, KI, Weber, MB, Suvada, K, Gujral, UP, Wei, J, Merchant, R, et al. Interventions for reversing prediabetes: a systematic review and meta-analysis. Am J Prev Med 2022; 62(4): 614–25.CrossRefGoogle ScholarPubMed
Sumlin, LL, Garcia, TJ, Brown, SA, Winter, MA, García, AA, Brown, A, et al. Depression and adherence to lifestyle changes in type 2 diabetes: a systematic review. Diabetes Educ 2014; 40(6): 731–44.CrossRefGoogle ScholarPubMed
Deschênes, SS, Burns, RJ, Graham, E, Schmitz, N. Prediabetes, depressive and anxiety symptoms, and risk of type 2 diabetes: a community-based cohort study. J Psychosom Res 2016; 89: 8590.CrossRefGoogle ScholarPubMed
Kautzky-Willer, A, Harreiter, J, Pacini, G. Sex and gender differences in risk, pathophysiology and complications of type 2 diabetes Mellitus. Endocr Rev 2016; 37(3): 278316.CrossRefGoogle ScholarPubMed
Kautzky-Willer, A, Leutner, M, Harreiter, J. Sex differences in type 2 diabetes. Diabetologia 2023; 66(6): 9861002.CrossRefGoogle ScholarPubMed
Ali, S, Stone, MA, Peters, JL, Davies, MJ, Khunti, K. The prevalence of co-morbid depression in adults with type 2 diabetes: a systematic review and meta-analysis. Diabet Med 2006; 23(11): 1165–73.CrossRefGoogle ScholarPubMed
Zhuang, QS, Shen, L, Ji, HF. Quantitative assessment of the bidirectional relationships between diabetes and depression. Oncotarget 2017; 8(14): 23389–400.CrossRefGoogle ScholarPubMed
Demmer, RT, Gelb, S, Suglia, SF, Keyes, KM, Aiello, AE, Colombo, PC, et al. Sex differences in the association between depression, anxiety, and type 2 diabetes Mellitus. Psychosom Med 2015; 77(4): 467–77.CrossRefGoogle ScholarPubMed
Zhao, W, Chen, Y, Lin, M, Sigal, RJ. Association between diabetes and depression: sex and age differences. Public Health 2006; 120(8): 696704.CrossRefGoogle ScholarPubMed
Deischinger, C, Dervic, E, Leutner, M, Kosi-Trebotic, L, Klimek, P, Kautzky, A, et al. Diabetes mellitus is associated with a higher risk for major depressive disorder in women than in men. BMJ Open Diabetes Res Care 2020; 8(1): e001430.CrossRefGoogle ScholarPubMed
Pearson, S, Schmidt, M, Patton, G, Dwyer, T, Blizzard, L, Otahal, P, et al. Depression and insulin resistance. Diabetes Care 2010; 33(5): 1128–33.CrossRefGoogle ScholarPubMed
Krysiak, R, Szkróbka, W, Okopień, B. Sexual functioning and depressive symptoms in men with various types of prediabetes: a pilot study. Int J Impot Res 2018; 30(6): 327–34.CrossRefGoogle ScholarPubMed
American Psychiatric Association. Diagnostic and Statistical Manual of Mental Disorders (5th ed.). American Psychiatric Publishing, 2013.Google Scholar
Elhai, JD, Contractor, AA, Tamburrino, M, Fine, TH, Prescott, MR, Shirley, E, et al. The factor structure of major depression symptoms: a test of four competing models using the patient health questionnaire-9. Psychiatry Res 2012; 199(3): 169–73.CrossRefGoogle ScholarPubMed
Stewart, JC, Zielke, DJ, Hawkins, MA, Williams, DR, Carnethon, MR, Knox, SS, et al. Depressive symptom clusters and 5-year incidence of coronary artery calcification: the CARDIA study. Circulation 2012; 126(4): 410–7.CrossRefGoogle Scholar
van der Donk, LJ, Fleer, J, Sanderman, R, Emmelkamp, PMG, Links, TP, Tovote, KA, et al. Is type of depressive symptoms associated with patient-perceived need for professional psychological care in depressed individuals with diabetes? PLoS One 2019; 14(2): e0212304.CrossRefGoogle ScholarPubMed
Nicolau, J, Simó, R, Conchillo, C, Sanchís, P, Blanco, J, Romerosa, JM, et al. Differences in the cluster of depressive symptoms between subjects with type 2 diabetes and individuals with a major depressive disorder and without diabetes. J Endocrinol Invest 2019; 42(8): 881–8.CrossRefGoogle Scholar
Khambaty, T, Stewart, JC, Muldoon, MF, Kamarck, TW. Depressive symptom clusters as predictors of 6-year increases in insulin resistance: data from the Pittsburgh healthy heart project. Psychosom Med 2014; 76(5): 363–9.CrossRefGoogle ScholarPubMed
Marijnissen, RM, Smits, JE, Schoevers, RA, van den Brink, RH, Holewijn, S, Franke, B, et al. Association between metabolic syndrome and depressive symptom profiles—Sex-specific? J Affect Disord 2013; 151(3): 1138–42.CrossRefGoogle ScholarPubMed
James, M, Varghese, TP, Sharma, R, Chand, S. Association between metabolic syndrome and diabetes Mellitus according to international diabetic federation and national cholesterol education program adult treatment panel III criteria: a cross-sectional study. J Diabetes Metab Disord 2020; 19(1): 437.CrossRefGoogle ScholarPubMed
Gujral, UP, Mohan, V, Pradeepa, R, Deepa, M, Anjana, RM, Narayan, KV. Ethnic differences in the prevalence of diabetes in underweight and normal weight individuals: the CARRS and NHANES studies. Diabetes Res Clin Pract 2018; 146: 3440.CrossRefGoogle ScholarPubMed
Kroenke, K, Spitzer, RL, Williams, JB. The PHQ-9: validity of a brief depression severity measure. J Gen Intern Med 2001; 16(9): 606–13.CrossRefGoogle ScholarPubMed
Krause, JS, Bombardier, C, Carter, RE. Assessment of depressive symptoms during inpatient rehabilitation for spinal cord injury: is there an underlying somatic factor when using the PHQ? Rehabil Psychol 2008; 53: 513–20.CrossRefGoogle Scholar
Center on Budget and Policy Priorities. Policy Basics: The Supplemental Nutrition Assistance Program (SNAP). Center on Budget and Policy Priorities, 2008.Google Scholar
Theorell, T, Hammarström, A, Aronsson, G, Träskman Bendz, L, Grape, T, Hogstedt, C, et al. A systematic review including meta-analysis of work environment and depressive symptoms. BMC Public Health 2015; 15(1): 738.CrossRefGoogle ScholarPubMed
Chang-Quan, H, Zheng-Rong, W, Yong-Hong, L, Yi-Zhou, X, Qing-Xiu, L. Education and risk for late life depression: a meta-analysis of published literature. Int J Psychiatry Med 2010; 40(1): 109–24.CrossRefGoogle ScholarPubMed
Gilman, SE, Kawachi, I, Fitzmaurice, GM, Buka, SL. Socioeconomic status in childhood and the lifetime risk of major depression. Int J Epidemiol 2002; 31(2): 359–67.CrossRefGoogle ScholarPubMed
Chen, PC, Chan, YT, Chen, HF, Ko, MC, Li, CY. Population-Based cohort analyses of the bidirectional relationship between type 2 diabetes and depression. Diabetes Care 2013; 36(2): 376–82.CrossRefGoogle ScholarPubMed
Berge, LI, Riise, T, Tell, GS, Iversen, MM, Østbye, T, Lund, A, et al. Depression in persons with diabetes by age and antidiabetic treatment: a cross-sectional analysis with data from the Hordaland Health Study. PLoS One 2015; 10(5): e0127161.CrossRefGoogle ScholarPubMed
Polonsky, WH, Anderson, BJ, Lohrer, PA, Welch, G, Jacobson, AM, Aponte, JE, et al. Assessment of diabetes-related distress. Diabetes Care 1995; 18(6): 754–60.CrossRefGoogle ScholarPubMed
Wiltink, J, Michal, M, Wild, PS, Schneider, A, König, J, Blettner, M, et al. Associations between depression and diabetes in the community: do symptom dimensions matter? Results from the Gutenberg Health Study. PLoS One; 9(8): e105499.CrossRefGoogle Scholar
Brooks, RJ, Roxburgh, S. Gender differences in the effect of the subjective experience of diabetes and sense of control on distress. Health (N Y) 1999; 3(4): 399420.Google Scholar
Kausar, R, Awan, B, Khan, N. Gender differences in risk perception and emotional distress in patients with type 2 diabetes. J Indian Acad Appl Psychol 2013; 39: 222–7.Google Scholar
Delisle, VC, Beck, AT, Dobson, KS, Dozois, DJA, Thombs, BD. Revisiting gender differences in somatic symptoms of depression: much Ado about nothing? PLoS One 2012; 7(2): e32490.CrossRefGoogle ScholarPubMed
Kroenke, K, Spitzer, RL. Gender differences in the reporting of physical and somatoform symptoms. Psychosom Med 1998; 60(2): 150.CrossRefGoogle ScholarPubMed
Bhowmik, B, Binte Munir, S, Ara Hossain, I, Siddiquee, T, Diep, LM, Mahmood, S, et al. Prevalence of type 2 diabetes and impaired glucose regulation with associated cardiometabolic risk factors and depression in an urbanizing rural community in Bangladesh: a population-based cross-sectional study. Diabetes Metab J 2012; 36(6): 422–32.CrossRefGoogle Scholar
Færch, K, Borch-Johnsen, K, Vaag, A, Jørgensen, T, Witte, DR. Sex differences in glucose levels: a consequence of physiology or methodological convenience? The Inter99 study. Diabetologia 2010; 53(5): 858–65.CrossRefGoogle ScholarPubMed
Seligman, HK, Bindman, AB, Vittinghoff, E, Kanaya, AM, Kushel, MB. Food insecurity is associated with diabetes Mellitus: results from the National Health Examination and Nutrition Examination Survey (NHANES) 1999–2002. J Gen Intern Med 2007; 22(7): 1018–23.CrossRefGoogle ScholarPubMed
Figure 0

Fig. 1 Flowchart of National Health Examination and Nutrition Examination Survey (NHANES) participants included in the final study population.

Figure 1

Table 1 Demographics of study sample, based on diabetes status and gender

Figure 2

Table 2 Results of main effect multiple logistic and linear regressions

Figure 3

Table 3 Results of multiple logistic and linear regressions with interaction effects

Figure 4

Table 4 Subgroup models following statistically significant interaction between diabetes status and gender

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