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Geriatric depression (GD) is associated with significant medical comorbidity, cognitive impairment, brain atrophy, premature mortality, and suboptimal treatment response. While apathy and anxiety are common comorbidities, resilience is a protective factor. Understanding the relationships between brain morphometry, depression, and resilience in GD could inform clinical treatment. Only few studies have addressed gray matter volume (GMV) associations with mood and resilience.
Participants:
Forty-nine adults aged >60 years (38 women) with major depressive disorder undergoing concurrent antidepressant treatment participated in the study.
Measurements:
Anatomical T1-weighted scans, apathy, anxiety, and resilience data were collected. Freesurfer 6.0 was used to preprocess T1-weighted images and qdec to perform voxel-wise whole-brain analyses. Partial Spearman correlations controlling for age and sex tested the associations between clinical scores, and general linear models identified clusters of associations between GMV and clinical scores, with age and sex as covariates. Cluster correction and Monte-Carlo simulations were applied (corrected alpha = 0.05).
Results:
Greater depression severity was associated with greater anxiety (r = 0.53, p = 0.0001), lower resilience (r = −0.33, p = 0.03), and greater apathy (r = 0.39, p = 0.01). Greater GMV in widespread, partially overlapping clusters across the brain was associated with reduced anxiety and apathy, as well as increased resilience.
Conclusion:
Our results suggest that greater GMV in extended brain regions is a potential marker for resilience in GD, while GMV in more focal and overlapping regions may be markers for depression and anxiety. Interventions focused on improving symptoms in GD may seek to examine their effects on these brain regions.
To investigate the relationship between lean muscle mass and treatment response in treatment-resistant late-life depression (TR-LLD). We hypothesized that lower lean muscle mass would be associated with older age, higher physical comorbidities, higher depressive symptom severity, and poorer treatment response.
Design:
Secondary analysis of a randomized, placebo-controlled trial.
Setting:
Three academic hospitals in the United States and Canada.
Participants:
Adults aged 60+ years with major depressive disorder who did not remit following open treatment with venlafaxine extended-release (XR) (n = 178).
Measurements:
We estimated lean muscle mass using dual-energy X-ray absorptiometry (DEXA) scans prior to and following randomized treatment with aripiprazole or placebo added to venlafaxine XR. Multivariate regressions estimated influence of demographic and clinical factors on baseline lean muscle mass, and whether baseline lean muscle mass was associated with treatment response, adjusted for treatment arm.
Results:
Low lean muscle mass was present in 22 (12.4%) participants. Older age and female sex, but not depressive symptom severity, were independently associated with lower lean muscle mass at baseline. Marital status, baseline depressive symptom severity, and treatment group were associated with improvement of depressive symptoms in the randomized treatment phase. Baseline lean muscle mass was not associated with improvement, regardless of treatment group.
Conclusion:
As expected, older age and female sex were associated with lower lean muscle mass in TR-LLD. However, contrary to prior results in LLD, lean muscle mass was not associated with depression severity or outcome. This suggests that aripiprazole augmentation may be useful for TR-LLD, even in the presence of anomalous body composition.
Frailty and late-life depression (LLD) often coexist and share several structural brain changes. We aimed to study the joint effect LLD and frailty have on brain structure.
Design:
Cross-sectional study
Setting:
Academic Health Center
Participants:
Thirty-one participants (14 LLD+Frail and 17 Never-depressed+Robust)
Measurement:
LLD was diagnosed by a geriatric psychiatrist according to the Diagnostic and Statistical Manual of Mental Disorders 5th edition for single episode or recurrent major depressive disorder without psychotic features. Frailty was assessed using the FRAIL scale (0–5), classifying subjects as robust (0), prefrail (1–2), and frail (3–5). Participants underwent T1-weighted magnetic resonance imaging in which covariance analysis of subcortical volumes and vertex-wise analysis of cortical thickness values were performed to access changes in grey matter. Participants also underwent diffusion tensor imaging in which tract-based spatial statistics was used with voxel-wise statistical analysis on fractional anisotropy and mean diffusion values to assess changes in white matter (WM).
Results:
We found a significant difference in mean diffusion values (48,225 voxels; peak voxel: pFWER=0.005, MINI coord. (X,Y,Z) = −26,−11,27) between the LLD-Frail group and comparison group. The corresponding effect size (f=0.808) was large.
Conclusion:
We showed the LLD+Frailty group is associated with significant microstructural changes within WM tracts compared to Never-depressed+Robust individuals. Our findings indicate the possibility of a heightened neuroinflammatory burden as a potential mechanism underlying the co-occurrence of both conditions and the possibility of a depression–frailty phenotype in older adults.
To characterize the features of aged care users who died by suicide and examine the use of mental health services and psychopharmacotherapy in the year before death.
Design:
Population-based, retrospective exploratory study
Setting and participants:
Individuals who died while accessing or waiting for permanent residential aged care (PRAC) or home care packages in Australia between 2008 and 2017.
Measurements:
Linked datasets describing aged care use, date and cause of death, health care use, medication use, and state-based hospital data collections.
Results:
Of 532,507 people who died, 354 (0.07%) died by suicide, including 81 receiving a home care package (0.17% of all home care package deaths), 129 in PRAC (0.03% of all deaths in PRAC), and 144 approved for but awaiting care (0.23% of all deaths while awaiting care). Factors associated with death by suicide compared to death by another cause were male sex, having a mental health condition, not having dementia, less frailty, and a hospitalization for self-injury in the year before death. Among those who were awaiting care, being born outside Australia, living alone, and not having a carer were associated with death by suicide. Those who died by suicide more often accessed Government-subsidized mental health services in the year before their death than those who died by another cause.
Conclusions:
Older men, those with diagnosed mental health conditions, those living alone and without an informal carer, and those hospitalized for self-injury are key targets for suicide prevention efforts.
This study examines whether transition to caregiving within or outside the household is associated with changes in suicidal ideation and whether this depends on the type of caregiver relationship, the age or gender of the caregiver, or the welfare system.
Design:
Longitudinal study.
Setting:
Ten European countries.
Participants:
Data from the Survey of Health, Ageing, and Retirement in Europe were used (waves 1, 2, 4, 5, and 6) including participants aged ≥40 years (pooled Observations = 171,848).
Measurements:
Suicidal ideation was measured using the Euro-D scale. Caregiving was measured as care inside and outside the household, and for different recipients. Fixed effects logistic regression analyses, adjusted for health and sociodemographic factors, were used.
Results:
Transitioning into caregiving inside the household was associated with higher odds of suicidal ideation, in particular if they transitioned into care for partners or parents and within Southern and Bismarckian welfare systems. Transitioning into caregiving outside the household was not associated with suicidal ideation, except among those transitioning into caregiving for non-relatives (higher odds of suicidal ideation), and among male and older caregivers (lower odds of suicidal ideation). Suicide ideation was higher among caregivers in Southern compared to Bismarckian or Scandinavian welfare systems.
Conclusion:
Informal caregiving is associated with suicidal ideation among caregivers inside but not among all caregivers outside the household. The caregiver’s characteristics, the care relationship, and the welfare system play an important role. Preventing suicidal ideation requires interventions that focus on informal caregivers and consider their individual and contextual factors.