How can imaginal retraining for modifying food craving be improved?
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Publication year
2024Number of pages
6 p.
Source
Appetite, 202, (2024), article 107639ISSN
Publication type
Article / Letter to editor
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Organization
SW OZ BSI OGG
SW OZ BSI SCP
Journal title
Appetite
Volume
vol. 202
Languages used
English (eng)
Subject
Behaviour Change and Well-being; Developmental PsychopathologyAbstract
Imaginal retraining (IR) is an emerging intervention technique in which people imagine avoidance behaviors towards imagined foods or other substances, such as throwing them away. Although IR shows promise in reducing initial craving for a range of substances, including alcohol and tobacco, effects appear less robust for craving for energy-dense foods. This raises the question of how IR for food craving can be improved. Here, we address this question informed by emerging findings from IR dismantling studies and the field of regular cognitive bias modification training paradigms. Based on current insights, we suggest the most optimal ‘craving-reduction' effects for energy-dense food can likely be expected for IR that includes an overt motor movement. While it is not yet clear what movement works best for food, we suggest a tailored movement or Go/No-Go-based stop movement has the potential to be most effective. The most likely mechanism in reducing craving is cue-devaluation of trained vivid craving images regarding specific energy-dense food products. Future work is needed that investigates and assess the underlying mechanisms (e.g., updating beliefs; cue-devaluation), task characteristics (e.g., IR instructions; specific motor movements) and individual characteristics (e.g., perceived craving; vividness of food imagination) that determine IR effects.
This item appears in the following Collection(s)
- Academic publications [243859]
- Electronic publications [130610]
- Faculty of Social Sciences [30014]
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