Background: Course of illness in major depression (MD) is highly varied, which might lead to both under- and overtreatment if clinicians adhere to a 'one-size-fits-all' approach. Novel opportunities in data mining could lead to prediction models that can assist clinicians in treatment decisions tailored to the individual patient. This study assesses the performance of a previously developed data mining algorithm to predict future episodes of MD based on clinical information in new data.Methods: We applied a prediction model utilizing baseline clinical characteristics in subjects who reported lifetime MD to two independent test samples (total n = 4226). We assessed the model's performance to predict future episodes of MD, anxiety disorders, ...
Contains fulltext : 208597.pdf (publisher's version ) (Open Access)Many variables ...
Backgrounds. Clinicians need guidance to address the heterogeneity of treatment responses of patient...
AbstractBackgroundTo develop and validate sex specific prediction algorithms for 4-year risk of majo...
Background: Course of illness in major depression (MD) is highly varied, which might lead to both un...
Heterogeneity of major depressive disorder (MDD) illness course complicates clinical decision-making...
Depression is a disorder characterized by misery and gloominess felt over a period of time. Some sym...
Objective: Despite a broad arsenal of antidepressants, about a third of patients suffering from majo...
Objective: The study objective was to generate a prediction model for treatment-resistant depression...
Many variables have been linked to different course trajectories of depression. These findings, howe...
ObjectivesAntidepressants are first-line treatments for major depressive disorder (MDD), but 40-60% ...
Generalized anxiety disorder (GAD) and major depressive disorder (MDD) are highly prevalent and impa...
BACKGROUND: Although variation in the long-term course of major depressive disorder (MDD) is not str...
Background: Recent evidence suggests that integration of multi-modal data improves performance in ma...
Contains fulltext : 208597.pdf (publisher's version ) (Open Access)Many variables ...
Backgrounds. Clinicians need guidance to address the heterogeneity of treatment responses of patient...
AbstractBackgroundTo develop and validate sex specific prediction algorithms for 4-year risk of majo...
Background: Course of illness in major depression (MD) is highly varied, which might lead to both un...
Heterogeneity of major depressive disorder (MDD) illness course complicates clinical decision-making...
Depression is a disorder characterized by misery and gloominess felt over a period of time. Some sym...
Objective: Despite a broad arsenal of antidepressants, about a third of patients suffering from majo...
Objective: The study objective was to generate a prediction model for treatment-resistant depression...
Many variables have been linked to different course trajectories of depression. These findings, howe...
ObjectivesAntidepressants are first-line treatments for major depressive disorder (MDD), but 40-60% ...
Generalized anxiety disorder (GAD) and major depressive disorder (MDD) are highly prevalent and impa...
BACKGROUND: Although variation in the long-term course of major depressive disorder (MDD) is not str...
Background: Recent evidence suggests that integration of multi-modal data improves performance in ma...
Contains fulltext : 208597.pdf (publisher's version ) (Open Access)Many variables ...
Backgrounds. Clinicians need guidance to address the heterogeneity of treatment responses of patient...
AbstractBackgroundTo develop and validate sex specific prediction algorithms for 4-year risk of majo...