Clinical correlates of age at onset distribution in bipolar disorder: a comparison between diagnostic subgroups
Articolo
Data di Pubblicazione:
2017
Abstract:
BACKGROUND:
Admixture analysis of age at onset (AAO) has helped delineating the clinical profile of early onset (EO) bipolar disorder (BD). However, there is scarce evidence comparing the distributional properties of AAO as well as the clinical features of EO BD type 1 (BD1) with EO BD type 2 (BD2). To this end, we studied 515 BD patients (224 BD1, 279 BD2, and 12 BD not otherwise specified [NOS]) diagnosed according to DSM-IV-TR criteria.
METHODS:
AAO was defined as the first reliably diagnosed hypo/manic or depressive episode according to diagnostic criteria. We used normal distribution mixture analysis to identify subgroups of patients according to AAO. Models were chosen according to the Schwarz's Bayesian information criteria (BIC). Clinical correlates of EO were analysed using univariate tests and multivariate logistic regression models.
RESULTS:
A two normal components model best fitted the observed distribution of AAO in BD1 (BIC = -1599.3), BD2 (BIC = -2158.4), and in the whole sample (BIC = -3854.9). A higher number of EO BD2 patients had a depression-(hypo)mania-free interval (DMI) course, while a higher rate of (hypo)mania-depression-free interval (MDI) course was found in EO BD1. EO BD2 had also a higher rate of comorbidity with alcohol dependence compared to EO BD1. The latter finding was confirmed by multivariate logistic regression analysis.
CONCLUSIONS:
In conclusion, both BD1 and BD2 had bimodal AAO distributions, but EO subgroups had a diagnostic-specific clinical delineation.
Tipologia CRIS:
03A-Articolo su Rivista
Keywords:
Admixture analysis; Diagnostic subtypes; Early onset; Mood disorders; Retrospective study
Elenco autori:
Manchia, Mirko; Maina, Giuseppe; Carpiniello, Bernardo; Pinna, Federica; Steardo, Luca; D'Ambrosio, Virginia; Salvi, Virginio; Alda, Martin; Tortorella, Alfonso; Albert, Umberto
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