Computational methods are increasingly being applied to the study of psychiatric disorders. Often, this involves fitting models to the behavior of individuals with subclinical character traits which are known vulnerability factors for the development of psychiatric conditions. Anxiety disorders can be examined with reference to the behavior of individuals high in ‘trait’ anxiety, which is a known vulnerability factor for the development of anxiety and mood disorders. However, it is not clear how this self-report measure relates to neural and behavioral processes captured by computational models. This paper reviews emerging computational approaches to the study of trait anxiety, specifying how interacting processes susceptible to analysis us...
Symptom expression in psychiatric conditions is often linked to altered threat perception, however ...
BACKGROUND: A dominant methodology in contemporary clinical neuroscience is the use of dimensional s...
Pharmaceutical breakthroughs for anxiety have been lackluster in the last half-century. Converging b...
Computational methods are increasingly being applied to the study of psychiatric disorders. Often, t...
Computational algorithms and the use of artificial intelligence (AI) are beginning to venture into c...
Anxiety disorders are the most common mental health disorders and comprise a large number of years l...
This article presents a temporal dynamic model of anxiety states and traits for an individual. Anxie...
This article presents a temporal dynamic model of anxiety states and traits for an individual. Anxie...
BACKGROUND AND OBJECTIVES: For decades, the dominant paradigm in trait anxiety research has regarded...
This paper presents a temporal dynamic model of anxiety states and traits for an individual. Anxiety...
Cognitive alterations have long been reported in patients with mental health disorders, though with ...
The development of "omic"technologies and deep phenotyping may facilitate a systems biology approach...
Individuals who are prone to experiencing high levels of anxiety and depression often exhibit dysfun...
BACKGROUND: Disease trajectories of patients with anxiety disorders are highly diverse and approxima...
Symptom expression in psychiatric conditions is often linked to altered threat perception, however ...
BACKGROUND: A dominant methodology in contemporary clinical neuroscience is the use of dimensional s...
Pharmaceutical breakthroughs for anxiety have been lackluster in the last half-century. Converging b...
Computational methods are increasingly being applied to the study of psychiatric disorders. Often, t...
Computational algorithms and the use of artificial intelligence (AI) are beginning to venture into c...
Anxiety disorders are the most common mental health disorders and comprise a large number of years l...
This article presents a temporal dynamic model of anxiety states and traits for an individual. Anxie...
This article presents a temporal dynamic model of anxiety states and traits for an individual. Anxie...
BACKGROUND AND OBJECTIVES: For decades, the dominant paradigm in trait anxiety research has regarded...
This paper presents a temporal dynamic model of anxiety states and traits for an individual. Anxiety...
Cognitive alterations have long been reported in patients with mental health disorders, though with ...
The development of "omic"technologies and deep phenotyping may facilitate a systems biology approach...
Individuals who are prone to experiencing high levels of anxiety and depression often exhibit dysfun...
BACKGROUND: Disease trajectories of patients with anxiety disorders are highly diverse and approxima...
Symptom expression in psychiatric conditions is often linked to altered threat perception, however ...
BACKGROUND: A dominant methodology in contemporary clinical neuroscience is the use of dimensional s...
Pharmaceutical breakthroughs for anxiety have been lackluster in the last half-century. Converging b...