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Computational Analysis of the Hypothalamic Control of Food Intake

机译:下丘脑控制食物摄入量的计算分析

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摘要

Food-intake control is mediated by a heterogeneous network of different neural subtypes, distributed over various hypothalamic nuclei and other brain structures, in which each subtype can release more than one neurotransmitter or neurohormone. The complexity of the interactions of these subtypes poses a challenge to understanding their specific contributions to food-intake control, and apparent consistencies in the dataset can be contradicted by new findings. For example, the growing consensus that arcuate nucleus neurons expressing Agouti-related peptide (AgRP neurons) promote feeding, while those expressing pro-opiomelanocortin (POMC neurons) suppress feeding, is contradicted by findings that low AgRP neuron activity and high POMC neuron activity can be associated with high levels of food intake. Similarly, the growing consensus that GABAergic neurons in the lateral hypothalamus suppress feeding is contradicted by findings suggesting the opposite. Yet the complexity of the food-intake control network admits many different network behaviors. It is possible that anomalous associations between the responses of certain neural subtypes and feeding are actually consistent with known interactions, but their effect on feeding depends on the responses of the other neural subtypes in the network. We explored this possibility through computational analysis. We made a computer model of the interactions between the hypothalamic and other neural subtypes known to be involved in food-intake control, and optimized its parameters so that model behavior matched observed behavior over an extensive test battery. We then used specialized computational techniques to search the entire model state space, where each state represents a different configuration of the responses of the units (model neural subtypes) in the network. We found that the anomalous associations between the responses of certain hypothalamic neural subtypes and feeding are actually consistent with the known structure of the food-intake control network, and we could specify the ways in which the anomalous configurations differed from the expected ones. By analyzing the temporal relationships between different states we identified the conditions under which the anomalous associations can occur, and these stand as model predictions.
机译:食物摄入控制是由分布在各种下丘脑核和其他脑结构上的不同神经亚型的异质网络介导的,其中每个亚型可以释放一种以上的神经递质或神经激素。这些亚型相互作用的复杂性给理解它们对食物摄入控制的具体贡献提出了挑战,新发现可能与数据集中明显的一致性相矛盾。例如,越来越多的共识认为表达Agouti相关肽的弓形核神经元(AgRP神经元)可以促进进食,而表达前opiomelanocortin(POMC神经元)的神经元抑制进食,这与低AgRP神经元活性和高POMC神经元活性可以与高水平的食物摄入有关。类似地,发现下丘脑外侧的GABA能神经元抑制进食的共识与发现相反。然而,食物摄入控制网络的复杂性允许许多不同的网络行为。某些神经亚型与进食之间的反常关联实际上可能与已知的相互作用一致,但它们对进食的影响取决于网络中其他神经亚型的反应。我们通过计算分析探索了这种可能性。我们制作了下丘脑与其他已知参与食物摄入控制的神经亚型之间相互作用的计算机模型,并优化了其参数,以使模型行为与在大量测试电池上观察到的行为相匹配。然后,我们使用专门的计算技术来搜索整个模型状态空间,其中每个状态代表网络中单元(模型神经亚型)响应的不同配置。我们发现某些下丘脑神经亚型的反应与进食之间的异常关联实际上与食物摄入控制网络的已知结构一致,并且我们可以指定异常构型与预期构型不同的方式。通过分析不同状态之间的时间关系,我们确定了异常关联可能发生的条件,并将其作为模型预测。

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