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Get Free AccessPoorer baseline cognition emerged as the most reliable predictor of greater cognitive improvement across interventions. More rigorous, well-powered studies are needed to replicate these findings and identify robust predictors to guide personalized pro-cognitive treatment approaches in mood disorders.
Dimosthenis Tsapekos, Michail Kalfas, Johanna Mariegaard Schandorff, Caterina del Mar Bonnín, Christopher R. Bowie, Vicent Balanzá‐Martínez, Katherine E. Burdick, André F. Carvalho, Annemiek Dols, Katie M. Douglas, Peter Gallagher, Gregor Hasler, Lars Vedel Kessing, Hanne Lie Kjærstad, Beny Lafer, Kathryn E. Lewandowski, Carlos López‐Jaramillo, Anabel Martínez‐Arán, Roger S. McIntyre, Richard Porter, Scot E. Purdon, Ayal Schaffer, Paul Stokes, Tomiki Sumiyoshi, Ivan J. Torres, Tamsyn E. Van Rheenen, Lakshmi N. Yatham, Jeff Zarp Petersen, Allan H. Young, Eduard Vieta, Kamilla Woznica Miskowiak (2025). Predicting Response to Pro‐Cognitive Interventions in Mood Disorders: A Systematic Review by the International Society for Bipolar Disorders Targeting Cognition Task Force. , 153(5), DOI: https://doi.org/10.1111/acps.70038.
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Type
Article
Year
2025
Authors
31
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1111/acps.70038
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