It is currently difficult to successfully choose the correct type of antidepressant for individual patients. To discover patterns in patient characteristics, treatment choices and outcomes, we performed retrospective Bayesian network analysis combined with natural language processing (NLP). This study was conducted at two mental healthcare facilities in the Netherlands. Adult patients admitted and treated with antidepressants between 2014 and 2020 were included. Outcome measures were antidepressant continuation, prescription duration and four treatment outcome topics: core complaints, social functioning, general well-being and patient experience, extracted through NLP of clinical notes. Combined with patient and treatment characteristics, B...
The current polythetic and operational criteria for major depression inevitably contribute to the he...
BACKGROUND: The outcomes of psychological therapies for anxiety and depression vary across individua...
Objective: We aimed to predict antipsychotic prescription patterns for people with schizophrenia usi...
Mental health has received increased focus in recent years, with a larger emphasis on treatment and ...
Network meta-analysis can synthesize evidence from studies comparing multiple treatments for the sam...
Abstract Major depressive disorder (MDD) is complex and multifactorial, posing a major challenge of ...
[[abstract]]In the wake of recent advances in machine learning research, the study of pharmacogenomi...
Background: Persistent depressive disorder is prevalent, disabling, and often difficult to treat. Th...
BACKGROUND Persistent depressive disorder is prevalent, disabling, and often difficult to treat. ...
Background: Major depressive disorder (MDD) is a highly prevalent, chronic and disabling condition. ...
Background: Persistent depressive disorder is prevalent, disabling, and often difficult to treat. Th...
There are large health, societal, and economic costs associated with attrition from psychological se...
Background: Deep learning has utility in predicting differential antidepressant treatment response a...
Bayesian Networks are probabilistic graphical models that represent conditional independence relatio...
Many variables have been linked to different course trajectories of depression. These findings, howe...
The current polythetic and operational criteria for major depression inevitably contribute to the he...
BACKGROUND: The outcomes of psychological therapies for anxiety and depression vary across individua...
Objective: We aimed to predict antipsychotic prescription patterns for people with schizophrenia usi...
Mental health has received increased focus in recent years, with a larger emphasis on treatment and ...
Network meta-analysis can synthesize evidence from studies comparing multiple treatments for the sam...
Abstract Major depressive disorder (MDD) is complex and multifactorial, posing a major challenge of ...
[[abstract]]In the wake of recent advances in machine learning research, the study of pharmacogenomi...
Background: Persistent depressive disorder is prevalent, disabling, and often difficult to treat. Th...
BACKGROUND Persistent depressive disorder is prevalent, disabling, and often difficult to treat. ...
Background: Major depressive disorder (MDD) is a highly prevalent, chronic and disabling condition. ...
Background: Persistent depressive disorder is prevalent, disabling, and often difficult to treat. Th...
There are large health, societal, and economic costs associated with attrition from psychological se...
Background: Deep learning has utility in predicting differential antidepressant treatment response a...
Bayesian Networks are probabilistic graphical models that represent conditional independence relatio...
Many variables have been linked to different course trajectories of depression. These findings, howe...
The current polythetic and operational criteria for major depression inevitably contribute to the he...
BACKGROUND: The outcomes of psychological therapies for anxiety and depression vary across individua...
Objective: We aimed to predict antipsychotic prescription patterns for people with schizophrenia usi...