Changes in neurotensin signalling drive hedonic devaluation in obesity

被盖腹侧区 神经降压素 伏隔核 内科学 内分泌学 刺激 神经科学 多巴胺 生物 医学 神经肽 受体 多巴胺能
作者
N. Shimoni,Amanda J. Tose,Charlotte Seng,Yihan Jin,Tamás Lukácsovich,Hongbin Yang,Jeroen P. H. Verharen,Christine Liu,Michael Tanios,Eric Hu,Jordan S. Read,Lilly W. Tang,Byung Kook Lim,Lin Tian,Csaba Földy,Stephan Lammel
出处
期刊:Nature [Nature Portfolio]
卷期号:641 (8065): 1238-1247 被引量:12
标识
DOI:10.1038/s41586-025-08748-y
摘要

Calorie-rich foods, particularly those that are high in fat and sugar, evoke pleasure in both humans and animals1. However, prolonged consumption of such foods may reduce their hedonic value, potentially contributing to obesity2-4. Here we investigated this phenomenon in mice on a chronic high-fat diet (HFD). Although these mice preferred high-fat food over regular chow in their home cages, they showed reduced interest in calorie-rich foods in a no-effort setting. This paradoxical decrease in hedonic feeding has been reported previously3-7, but its neurobiological basis remains unclear. We found that in mice on regular diet, neurons in the lateral nucleus accumbens (NAcLat) projecting to the ventral tegmental area (VTA) encoded hedonic feeding behaviours. In HFD mice, this behaviour was reduced and uncoupled from neural activity. Optogenetic stimulation of the NAcLat→VTA pathway increased hedonic feeding in mice on regular diet but not in HFD mice, though this behaviour was restored when HFD mice returned to a regular diet. HFD mice exhibited reduced neurotensin expression and release in the NAcLat→VTA pathway. Furthermore, neurotensin knockout in the NAcLat and neurotensin receptor blockade in the VTA each abolished optogenetically induced hedonic feeding behaviour. Enhancing neurotensin signalling via overexpression normalized aspects of diet-induced obesity, including weight gain and hedonic feeding. Together, our findings identify a neural circuit mechanism that links the devaluation of hedonic foods with obesity.
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