Christina E Wierenga, Carina S Brown, Erin E Reilly
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引用次数: 0
Abstract
Purpose of review: We review recent literature on instrumental reinforcement learning involving decision-making in anorexia nervosa (AN) to understand mechanisms underlying symptoms of AN, such as rigid pursuit of weight loss despite negative consequences.
Recent findings: Relatively consistent findings indicate worse reward- and punishment-based feedback learning in the ill and weight-recovered states that is not observed in remitted samples. Initial studies suggest decreased goal-directed learning in AN, although this needs replication. Similarly, research is needed to clarify mixed findings related to learning under changing rules and the role of fear versus avoidance learning in AN. Growing evidence supports altered reinforcement learning in AN. Most studies examined the impact of outcome valence, changing rules, and habitual vs goal-directed control on learning. Computational modeling approaches can provide nuanced characterization of cognitive processes related to reinforcement learning and contribute to precision medicine efforts that may improve outcomes.
期刊介绍:
This journal aims to review the most important, recently published research in psychiatry. By providing clear, insightful, balanced contributions by international experts, the journal intends to serve all those involved in the care of those affected by psychiatric disorders.
We accomplish this aim by appointing international authorities to serve as Section Editors in key subject areas, such as anxiety, medicopsychiatric disorders, and schizophrenia and other related psychotic disorders. Section Editors, in turn, select topics for which leading experts contribute comprehensive review articles that emphasize new developments and recently published papers of major importance, highlighted by annotated reference lists. An international Editorial Board reviews the annual table of contents, suggests articles of special interest to their country/region, and ensures that topics are current and include emerging research. Commentaries from well-known figures in the field are also provided.