[[abstract]]In the wake of recent advances in scientific research, personalized medicine using deep learning techniques represents a new paradigm. In this work, our goal was to establish deep learning models which distinguish responders from non-responders, and also to predict possible antidepressant treatment outcomes in major depressive disorder (MDD). To uncover relationships between the responsiveness of antidepressant treatment and biomarkers, we developed a deep learning prediction approach resulting from the analysis of genetic and clinical factors such as single nucleotide polymorphisms (SNPs), age, sex, baseline Hamilton Rating Scale for Depression score, depressive episodes, marital status, and suicide attempt status of MDD patien...
none11siObjective: Despite a broad arsenal of antidepressants, about a third of patients suffering f...
[[abstract]]BACKGROUND: Antidepressants are a first-line treatment for depression. However, only a t...
Major depressive disorder (MDD) is a debilitating psychiatric disorder characterised by a complex un...
[[abstract]]In the wake of recent advances in scientific research, personalized medicine using deep ...
In the wake of recent advances in scientific research, personalized medicine using deep learning tec...
Background: Mood disorders are characterized by heterogeneity in severity, symptoms and treatment re...
Background: Deep learning has utility in predicting differential antidepressant treatment response a...
We set out to determine whether machine learning-based algorithms that included functionally validat...
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: Major depressive disorder (MDD) is a highly prevalent, chronic and disabling condition. ...
ObjectivesAntidepressants are first-line treatments for major depressive disorder (MDD), but 40-60% ...
Psychiatric disorders (PD) are found to have a profound impact on individuals and society. Even if a...
[[abstract]]Background: Antidepressants are considered one of the first-line intervention for major ...
Abstract Background Major Depressive Disorder (MDD) i...
none11siObjective: Despite a broad arsenal of antidepressants, about a third of patients suffering f...
[[abstract]]BACKGROUND: Antidepressants are a first-line treatment for depression. However, only a t...
Major depressive disorder (MDD) is a debilitating psychiatric disorder characterised by a complex un...
[[abstract]]In the wake of recent advances in scientific research, personalized medicine using deep ...
In the wake of recent advances in scientific research, personalized medicine using deep learning tec...
Background: Mood disorders are characterized by heterogeneity in severity, symptoms and treatment re...
Background: Deep learning has utility in predicting differential antidepressant treatment response a...
We set out to determine whether machine learning-based algorithms that included functionally validat...
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: Major depressive disorder (MDD) is a highly prevalent, chronic and disabling condition. ...
ObjectivesAntidepressants are first-line treatments for major depressive disorder (MDD), but 40-60% ...
Psychiatric disorders (PD) are found to have a profound impact on individuals and society. Even if a...
[[abstract]]Background: Antidepressants are considered one of the first-line intervention for major ...
Abstract Background Major Depressive Disorder (MDD) i...
none11siObjective: Despite a broad arsenal of antidepressants, about a third of patients suffering f...
[[abstract]]BACKGROUND: Antidepressants are a first-line treatment for depression. However, only a t...
Major depressive disorder (MDD) is a debilitating psychiatric disorder characterised by a complex un...