Department of Nutrition, University of North Carolina, Chapel Hill, North Carolina, USA.
Obesity (Silver Spring). 2023 Jul;31(7):1734-1744. doi: 10.1002/oby.23792.
Few reward-based theories address key drivers of susceptibility to food cues and consumption beyond fullness. Decision-making and habit formation are governed by reinforcement-based learning processes that, when overstimulated, can drive unregulated hedonically motivated overeating. Here, a model food reinforcement architecture is proposed that uses fundamental concepts in reinforcement and decision-making to identify maladaptive eating habits that can lead to obesity. This model is unique in that it identifies metabolic drivers of reward and incorporates neuroscience, computational decision-making, and psychology to map overeating and obesity. Food reinforcement architecture identifies two paths to overeating: a propensity for hedonic targeting of food cues contributing to impulsive overeating and lack of satiation that contributes to compulsive overeating. A combination of those paths will result in a conscious and subconscious drive to overeat independent of negative consequences, leading to food abuse and/or obesity. Use of this model to identify aberrant reinforcement learning processes and decision-making systems that can serve as markers of overeating risk may provide an opportunity for early intervention in obesity.
很少有基于奖励的理论能够解决饱腹感以外的食物线索和消费的易感性的关键驱动因素。决策和习惯形成受基于强化的学习过程控制,当过度刺激时,这些过程可能会导致不受调节的享乐性动机过度进食。在这里,提出了一种模型食品强化架构,该架构使用强化和决策的基本概念来识别可能导致肥胖的不良饮食习惯。该模型的独特之处在于它确定了奖励的代谢驱动因素,并结合了神经科学、计算决策和心理学来映射暴饮暴食和肥胖。食品强化架构确定了两种暴饮暴食的途径:一种是对食物线索进行享乐性靶向的倾向,导致冲动性暴饮暴食;另一种是缺乏饱腹感,导致强迫性暴饮暴食。这两种途径的结合将导致一种独立于负面后果的有意识和潜意识的暴饮暴食驱动力,导致食物滥用和/或肥胖。使用该模型识别异常的强化学习过程和决策系统,可以作为暴饮暴食风险的标志物,为肥胖的早期干预提供机会。