1. Human fear extinction and return of fear using reconsolidation update mechanisms: The contribution of on-line expectancy ratings.
- Author
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Warren, Victor Taylor, Anderson, Kemp M., Kwon, Cliffe, Bosshardt, Lauren, Jovanovic, Tanja, Bradley, Bekh, and Norrholm, Seth Davin
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FEAR , *EXTINCTION (Psychology) , *CONDITIONED response , *MEMORY , *FOLLOW-up studies (Medicine) , *GALVANIC skin response , *LEARNING - Abstract
Abstract: Disruption of the reconsolidation of conditioned fear memories has been suggested as a non-pharmacological means of preventing the return of learned fear in human populations. A reconsolidation update paradigm was developed in which a reconsolidation window is opened by a single isolated retrieval trial of a previously reinforced CS+ which is then followed by Extinction Training within that window. However, follow-up studies in humans using multi-methods fear conditioning indices (e.g., fear-potentiated startle, skin conductance, US-expectancy) have failed to replicate the retrieval+extinction effects. In the present study, we further investigated the retrieval+extinction reconsolidation update paradigm by directly comparing the acquisition, extinction, and return of fear-potentiated startle in the absence or presence of US-expectancy measures (using a trial-by-trial response keypad) with and without retrieval of a previously acquired CS-US association. Participants were fear conditioned to two visual cue CS+’s, one of which was presented as a single, isolated retrieval trial before Extinction Training and one that was extinguished as usual. The results show that the inclusion of US-expectancy measures strengthens the CS–US association to provide enhanced fear conditioning and maintenance of fear memories over the experimental sessions. In addition, in the groups that used on-line US-expectancy measures, the retrieval+extinction procedure reduced reinstatement of fear-potentiated startle to both previously reinforced CS+’s, as compared to the extinction as usual group. [Copyright &y& Elsevier]
- Published
- 2014
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