Literature DB >> 25052269

[Development of an algorithm to predict the incidence of major depression among primary care consultants].

Sandra Saldivia, Benjamin Vicente, Louise Marston, Roberto Melipillán, Irwin Nazareth, Juan Bellón-Saameño, Miguel Xavier, Heidi Ingrid Maaroos, Igor Svab, M-I Geerlings, Michael King.   

Abstract

BACKGROUND: The reduction of major depression incidence is a public health challenge. AIM: To develop an algorithm to estimate the risk of occurrence of major depression in patients attending primary health centers (PHC).
MATERIAL AND METHODS: Prospective cohort study of a random sample of 2832 patients attending PHC centers in Concepción, Chile, with evaluations at baseline, six and twelve months. Thirty nine known risk factors for depression were measured to build a model, using a logistic regression. The algorithm was developed in 2,133 patients not depressed at baseline and compared with risk algorithms developed in a sample of 5,216 European primary care attenders. The main outcome was the incidence of major depression in the follow-up period.
RESULTS: The cumulative incidence of depression during the 12 months follow up in Chile was 12%. Eight variables were identified. Four corresponded to the patient (gender, age, depression background and educational level) and four to patients' current situation (physical and mental health, satisfaction with their situation at home and satisfaction with the relationship with their partner). The C-Index, used to assess the discriminating power of the final model, was 0.746 (95% confidence intervals (CI = 0,707-0,785), slightly lower than the equation obtained in European (0.790 95% CI = 0.767-0.813) and Spanish attenders (0.82; 95% CI = 0.79-0.84).
CONCLUSIONS: Four of the factors identified in the risk algorithm are not modifiable. The other two factors are directly associated with the primary support network (family and partner). This risk algorithm for the incidence of major depression provides a tool that can guide efforts towards design, implementation and evaluation of effectiveness of interventions to prevent major depression.

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Year:  2014        PMID: 25052269     DOI: 10.4067/S0034-98872014000300006

Source DB:  PubMed          Journal:  Rev Med Chil        ISSN: 0034-9887            Impact factor:   0.553


  2 in total

1.  Family physicians' views on participating in prevention of major depression. The predictD-EVAL qualitative study.

Authors:  Patricia Moreno-Peral; Sonia Conejo-Cerón; Anna Fernández; Carlos Martín-Pérez; Carmen Fernández-Alonso; Antonina Rodríguez-Bayón; María Isabel Ballesta-Rodríguez; José María Aiarzagüena; Carmen Montón-Franco; Michael King; Irwin Nazareth; Juan Ángel Bellón
Journal:  PLoS One       Date:  2019-05-30       Impact factor: 3.240

2.  Effectiveness of a group-based psychosocial program to prevent depression and anxiety in older people attending primary health care centres: a randomised controlled trial.

Authors:  Sandra Saldivia; Carolina Inostroza; Claudio Bustos; Paulina Rincón; Joseph Aslan; Vasily Bühring; Maryam Farhang; Michael King; Félix Cova
Journal:  BMC Geriatr       Date:  2019-08-29       Impact factor: 3.921

  2 in total

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