Background Depression causes significant physical and psychosocial morbidity. Predicting persistence of depressive symptoms could permit targeted prevention, and lessen the burden of depression. Machine learning is a rapidly expanding field, and such approaches offer powerful predictive abilities. We investigated the utility of a machine learning approach to predict the persistence of depressive symptoms in older adults. Method Baseline demographic and psychometric data from 284 patients were used to predict the likelihood of older adults having persistent depressive symptoms after 12 months, using a machine learning approach (‘extreme gradient boosting’). Predictive performance was compared to a conventional statistical approach (logistic ...
none13siObjective: The study objective was to generate a prediction model for treatment-resistant de...
Objectives: Comorbid depression is a highly prevalent and debilitating condition in middle-aged and ...
The study aimed to: (1) Identify distinct trajectories of change in depressive symptoms by mid-treat...
Maintaining good mental health such as the prevention of severe depressive symptoms is critical for ...
Background: Depression is currently underdiagnosed among older adults. As part of the Novel Assessme...
BACKGROUND: Although geriatric depression is prevalent, diagnosis using self-reporting instruments h...
Background: Depression is currently underdiagnosed among older adults. As part of the Novel Asses...
Predicting depression can mitigate tragedies. Numerous works have been proposed so far using machine...
Background: Recent evidence suggests that integration of multi-modal data improves performance in ma...
Background: Recent evidence suggests that integration of multi-modal data improves performance in ma...
Heterogeneity of major depressive disorder (MDD) illness course complicates clinical decision-making...
Under-diagnosis of depression and anxiety is common in older adults. This project took a mixed metho...
Background: Course of illness in major depression (MD) is highly varied, which might lead to both un...
According to the National Institutes of Mental Health (NIMH), depressive disorders (or major depress...
Depression is a common illness worldwide with potentially severe implications. Early identification ...
none13siObjective: The study objective was to generate a prediction model for treatment-resistant de...
Objectives: Comorbid depression is a highly prevalent and debilitating condition in middle-aged and ...
The study aimed to: (1) Identify distinct trajectories of change in depressive symptoms by mid-treat...
Maintaining good mental health such as the prevention of severe depressive symptoms is critical for ...
Background: Depression is currently underdiagnosed among older adults. As part of the Novel Assessme...
BACKGROUND: Although geriatric depression is prevalent, diagnosis using self-reporting instruments h...
Background: Depression is currently underdiagnosed among older adults. As part of the Novel Asses...
Predicting depression can mitigate tragedies. Numerous works have been proposed so far using machine...
Background: Recent evidence suggests that integration of multi-modal data improves performance in ma...
Background: Recent evidence suggests that integration of multi-modal data improves performance in ma...
Heterogeneity of major depressive disorder (MDD) illness course complicates clinical decision-making...
Under-diagnosis of depression and anxiety is common in older adults. This project took a mixed metho...
Background: Course of illness in major depression (MD) is highly varied, which might lead to both un...
According to the National Institutes of Mental Health (NIMH), depressive disorders (or major depress...
Depression is a common illness worldwide with potentially severe implications. Early identification ...
none13siObjective: The study objective was to generate a prediction model for treatment-resistant de...
Objectives: Comorbid depression is a highly prevalent and debilitating condition in middle-aged and ...
The study aimed to: (1) Identify distinct trajectories of change in depressive symptoms by mid-treat...