scholarly journals Effect of Diet on Depression in Adolescents

2015 ◽  
Vol 2 (3) ◽  
Author(s):  
Suneeta Pant ◽  
Dr. Madhulata Naya

The present study investigated the influence of dietary pattern on depression and also gender effects of depression. A sample of 300 adolescent (150 boys and 150 girls) from Kumaun hills of Uttrakhand state were selected who were taking traditional and mixed food comprise of traditional food with processed food. Dietary pattern were assessed by FFQ and symptoms of depression was tested by IPAT Depression Scale of Krug & Laughlin. Analysis of data indicates that the dietary pattern do not affect the depression symptom, though gender difference for depressive symptoms was significant. Dietary pattern comprised of local millets and vegetables where the study conducted was the reason for less depressed adolescents

1980 ◽  
Vol 14 (1) ◽  
pp. 65-71 ◽  
Author(s):  
D. G. Byrne

The prevalence of depressive symptoms was estimated in a random sample of an Australian general population by administration of the Zung Self-Rating Depression Scale (S.D.S.). Rates, calculated according to criteria derived from a previously studied clinical sample, were somewhat higher in this population than had been reported in similar studies elsewhere. It was reasoned that this finding related to the relative laxity of criteria employed in the present study. Socio-demographic influences on the reporting of depressive symptoms were evident, the most prominent of these being the sex of the subject. It was suggested that these influences may underlie socio-demographic differences in rates of recognized depressive states occurring within clinical samples.


2015 ◽  
Vol 28 (1) ◽  
pp. 71-81 ◽  
Author(s):  
Jane McCusker ◽  
Martin G. Cole ◽  
Philippe Voyer ◽  
Johanne Monette ◽  
Nathalie Champoux ◽  
...  

ABSTRACTBackground:Depression is a common problem in long-term care (LTC) settings. We sought to characterize depression symptom trajectories over six months among older residents, and to identify resident characteristics at baseline that predict symptom trajectory.Methods:This study was a secondary analysis of data from a six-month prospective, observational, and multi-site study. Severity of depressive symptoms was assessed with the 15-item Geriatric Depression Scale (GDS) at baseline and with up to six monthly follow-up assessments. Participants were 130 residents with a Mini-Mental State Examination score of 15 or more at baseline and of at least two of the six monthly follow-up assessments. Individual resident GDS trajectories were grouped using hierarchical clustering. The baseline predictors of a more severe trajectory were identified using the Proportional Odds Model.Results:Three clusters of depression symptom trajectory were found that described “lower,” “intermediate,” and “higher” levels of depressive symptoms over time (mean GDS scores for three clusters at baseline were 2.2, 4.9, and 9.0 respectively). The GDS scores in all groups were generally stable over time. Baseline predictors of a more severe trajectory were as follows: Initial GDS score of 7 or more, female sex, LTC residence for less than 12 months, and corrected visual impairment.Conclusions:The six-month course of depressive symptoms in LTC is generally stable. Most residents who experience a more severe symptom trajectory can be identified at baseline.


2014 ◽  
Vol 10 (1) ◽  
pp. 6-13
Author(s):  
Christopher F. Sharpley ◽  
Vicki Bitsika ◽  
David R. H. Christie

The incidence and contribution to total depression of the depressive symptoms of cognitive deficit and cognitive bias in prostate cancer (PCa) patients were compared from cohorts sampled during the first 2 years after diagnosis. Survey data were collected from 394 patients with PCa, including background information, treatments, and disease status, plus total scores of depression and scores for subscales of the depressive symptoms of cognitive bias and cognitive deficit via the Zung Self-Rating Depression Scale. The sample was divided into eight 3-monthly time-since-diagnosis cohorts and according to depression severity. Mean scores for the depressive symptoms of cognitive deficit were significantly higher than those for cognitive bias for the whole sample, but the contribution of cognitive bias to total depression was stronger than that for cognitive deficit. When divided according to overall depression severity, patients with clinically significant depression showed reversed patterns of association between the two subsets of cognitive symptoms of depression and total depression compared with those patients who reported less severe depression. Differences in the incidence and contribution of these two different aspects of the cognitive symptoms of depression for patients with more severe depression argue for consideration of them when assessing and diagnosing depression in patients with PCa. Treatment requirements are also different between the two types of cognitive symptoms of depression, and several suggestions for matching treatment to illness via a personalized medicine approach are discussed.


Salud Mental ◽  
2021 ◽  
Vol 44 (3) ◽  
pp. 127-134
Author(s):  
Héctor Rubén Bravo-Andrade

Introduction. Between 27.3% and 31.5% of adolescents in Mexico may present symptoms of depression. This issue has been studied from both family and resilience perspectives, although few studies have examined their interaction. Objective. In this study, we evaluated the influence of intrafamily relations and resilience on depressive symptoms in Mexican high school students, for which an analysis by sex was conducted. Method. For this correlation cross-sectional study, we evaluated 511 adolescents using the Revised Depression Scale of the Center for Epidemiological Studies, the short version of the Intrafamily Relation Evaluation Scale, and the Revised Resilience Questionnaire for Children and Adolescents. We performed multiple linear regression analyzes by sex using the stepwise method. Results. For young men, the predictor variables were expression, difficulties, and problem-solving (R2a = .34), whereas for young women the variables were union and support, difficulties, and empathy (R2a = .25). Discussion and conclusion. This study indicates specific aspects of intrafamily relations and resilience to develop sex-sensitive interventions to prevent depression in high school students.


2016 ◽  
Vol 33 (S1) ◽  
pp. S623-S623
Author(s):  
H. Karakula-Juchnowicz ◽  
P. Lukasik ◽  
J. Morylowska-Topolska ◽  
D. Juchnowicz ◽  
P. Krukow ◽  
...  

IntroductionThere is an evidence indicating that women experiencing intimate partner violence (IPV) quite common suffer from anxiety and depression, but predictors and protective factors are not well known in this group of patients.AimThe aim of the study was to try to find factor that are connected with higher rates of anxiety and depressive symptoms in the group of female patients experiencing IPV.MethodThe study was conducted in six randomly selected centers of primary health care (PHCs) in Lublin province. One hundred and two female patients experiencing IPV were administered a structured questionnaire and the Hospital Anxiety and Depression Scale (HADS). The sequential models were created with using backward stepwise multiple regression to investigate potential risk and protective factors connected with higher rates of anxiety and depression symptom in the group.ResultsIn a study group, 68% in Anxiety Subscale(A) and 56% in Depression Subscale of HADS (D) had positive scores. Living in the country (P = 0.003) was connected with higher scores in HADS-A (P = 0.003) but not in HADS-D. Experiencing physical violence was connected with higher score in HADS-D (P = 0.005), but not in HADS-A. Chronic physical illness (A P = 0.013; D P = 0.015), being unemployed (A P = 0.024; B P = 0.008), and experiencing economic violence (A P < 0.001; D P = 0.001) were connected with higher stores in both Subscales of HADS. Taking financial support (A P = 0.002, D P = 0.003) was the protective factor for both kinds of symptoms.ConclusionsSocio-economic factors have stronger influence on anxiety and depressive symptoms in women experiencing IPV than demographic factors.Disclosure of interestThe authors have not supplied their declaration of competing interest.


2008 ◽  
Vol 10 (2) ◽  
pp. 128-133 ◽  
Author(s):  
Elizabeth J. Corwin ◽  
Nancy Johnston ◽  
Linda Pugh

Postpartum depression (PPD) is a devastating disorder that may carry lifetime consequences. Although several psychosocial risks for PPD have been identified, biological contributors are unclear. Elevated inflammatory cytokines contribute to depression in nonpregnant, nonpostpartum populations; yet, their role in PPD has been minimally studied. The objective of this study is to determine whether inflammatory cytokines early in the postpartum period contribute to the development of PPD. Women were recruited within 24 hr of delivery, and 26 provided urine for analysis of interleukin-1 beta (IL-1β) and interleukin-6 (IL-6) on postpartum days 7, 14, and 28. Participants completed a depression symptom survey (Centers for Epidemiologic Studies Depression Scale; CES-D) on Day 28. An increase in IL-1β was seen on Day 14 in women with symptoms of depression (CES-D ! 11) on Day 28 compared to levels in women without depressive symptoms (F = 4.50, p = .045). These preliminary findings suggest elevated IL-1β early in the postpartum period may increase the risk of PPD. Further studies involving a larger sample of women, including those clinically diagnosed with PPD, are required.


Author(s):  
Md Zia Uddin ◽  
Kim Kristoffer Dysthe ◽  
Asbjørn Følstad ◽  
Petter Bae Brandtzaeg

AbstractDepression is a common illness worldwide with potentially severe implications. Early identification of depressive symptoms is a crucial first step towards assessment, intervention, and relapse prevention. With an increase in data sets with relevance for depression, and the advancement of machine learning, there is a potential to develop intelligent systems to detect symptoms of depression in written material. This work proposes an efficient approach using Long Short-Term Memory (LSTM)-based Recurrent Neural Network (RNN) to identify texts describing self-perceived symptoms of depression. The approach is applied on a large dataset from a public online information channel for young people in Norway. The dataset consists of youth’s own text-based questions on this information channel. Features are then provided from a one-hot process on robust features extracted from the reflection of possible symptoms of depression pre-defined by medical and psychological experts. The features are better than conventional approaches, which are mostly based on the word frequencies (i.e., some topmost frequent words are chosen as features from the whole text dataset and applied to model the underlying events in any text message) rather than symptoms. Then, a deep learning approach is applied (i.e., RNN) to train the time-sequential features discriminating texts describing depression symptoms from posts with no such descriptions (non-depression posts). Finally, the trained RNN is used to automatically predict depression posts. The system is compared against conventional approaches where it achieved superior performance than others. The linear discriminant space clearly reveals the robustness of the features by generating better clustering than other traditional features. Besides, since the features are based on the possible symptoms of depression, the system may generate meaningful explanations of the decision from machine learning models using an explainable Artificial Intelligence (XAI) algorithm called Local Interpretable Model-Agnostic Explanations (LIME). The proposed depression symptom feature-based approach shows superior performance compared to the traditional general word frequency-based approaches where frequency of the features gets more importance than the specific symptoms of depression. Although the proposed approach is applied on a Norwegian dataset, a similar robust approach can be applied on other depression datasets developed in other languages with proper annotations and symptom-based feature extraction. Thus, the depression prediction approach can be adopted to contribute to develop better mental health care technologies such as intelligent chatbots.


Author(s):  
Anna M. Gogola ◽  
Paweł Dębski ◽  
Agnieszka Goryczka ◽  
Piotr Gorczyca ◽  
Magdalena Piegza

The outbreak of the COVID-19 pandemic forced everyone to comply with rules of a sanitary regime and social distancing on a daily basis. The aim of our research was to assess the differences in the levels of Dark Triad traits between people who obeyed and disobeyed the pandemic restrictions. Additionally, we considered the possible correlation between the Dark Triad and the intensity of symptoms of depression and anxiety. A total of 604 Polish participants, whose average age was 28.95 ± 11.27 years, completed an online survey which measured Dark Triad traits using the Polish version of the Dirty Dozen test. Anxiety and depression were assessed using the Hospital Anxiety and Depression Scale (HADS). The results revealed a possible relationship between personality traits and compliance with pandemic restrictions. Individuals with higher levels of psychopathy tended to disobey newly introduced rules. On the other hand, a higher level of subclinical narcissism might have contributed to a better civil compliance. The results showed a significant positive correlation between the intensity of the Dark Triad and the occurrence of depressive symptoms. Furthermore, narcissism was linked to anxiety symptoms. These results can contribute to a better understanding of behavioural patterns during the COVID-19 pandemic within the group of individuals who exhibit the Dark Triad traits. Our conclusions might help to identify individuals who are particularly vulnerable to mental health problems.


1989 ◽  
Vol 64 (3_suppl) ◽  
pp. 1245-1246 ◽  
Author(s):  
Wesley E. Hawkins ◽  
Robert J. McDermott ◽  
Laurene Sheilds ◽  
S. Marie Harvey

The present study examined symptoms of depression among university students. On the Center for Epidemiologic Studies Depression Scale, 96 men and 138 women did not differ in over-all reporting of depressive symptoms, but women were significantly more prone to experience symptoms measured by a scale factor known as “depressed affect.”


2019 ◽  
Vol 38 (4) ◽  
pp. 301-320 ◽  
Author(s):  
Sara A. Moss ◽  
Jennifer S. Cheavens

Introduction: Symptoms of depression are associated with difficulty achieving personal goals. Empirical investigations suggest that depressed individuals do not differ from healthy controls in their commitment to personal goals (i.e., goal commitment), though they express less confidence in their abilities to achieve goals (i.e., goal-related confidence). Despite the relevance of motivational constructs, including goal commitment and confidence, to both depression and goal striving, there is a dearth of research examining these variables as they relate to depressive symptoms and goal progress across time. Method: To address this gap, we tracked the goal pursuits of 139 undergraduate participants oversampled for elevated symptoms of depression at a large, Midwestern university at three time-points. Participants completed a baseline assessment that included The Center for Epidemiologic Studies—Depression Scale (CES-D; Radloff, 1977) and a free-response goal-setting activity. They were asked to report goal progress and re-rate commitment and confidence for any not-yet-attained goals 2 weeks later and, finally, to report on goal attainment at a 2-month follow-up. Results: As predicted, the association between depressive symptoms and concurrently-reported goal commitment was not significant. However, less goal progress and early decreases in goal commitment and confidence reported at 2-week follow-up acted as indirect paths through which baseline depressive symptoms predicted poor longer-term goal outcomes. Discussion: Future investigators could experimentally test the associations between these variables to better understand the ways in which manipulating one aspect of goal striving might causally influence the others.


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