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首页> 外文期刊>Journal of biological rhythms >Model-based Inference of a Directed Network of Circadian Neurons
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Model-based Inference of a Directed Network of Circadian Neurons

机译:基于模型的昼夜昼夜神经元网络推断

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The suprachiasmatic nucleus (SCN) is the master clock of the brain. It is a network of neurons that behave like biological oscillators, capable of synchronizing and maintaining daily rhythms. The detailed structure of this network is still unknown, and the role that the connectivity pattern plays in the network's ability to generate robust oscillations has yet to be fully elucidated. In recent work, we used an information theory-based technique to infer the structure of the functional network for synchronization, from bioluminescence reporter data. Here, we propose a computational method to determine the directionality of the connections between the neurons. We find that most SCN neurons have a similar number of incoming connections, but the number of outgoing connections per neuron varies widely, with the most highly connected neurons residing preferentially in the core.
机译:suprachiasmatic nucleus(scn)是大脑的主时钟。 它是一种神经元网络,其表现得像生物振荡器,能够同步和维持日常节奏。 该网络的详细结构仍然是未知的,并且在网络生成鲁棒振荡能力中的连接模式播放的角色尚未得到完全阐明。 在最近的工作中,我们使用了一种基于信息理论的技术来推断功能网络的结构,从生物发光报告器数据中推断出同步的功能网络。 这里,我们提出了一种计算方法来确定神经元之间的连接的方向性。 我们发现大多数SCN神经元具有相似数量的进入连接,但每个神经元的传出连接的数量广泛变化,最高度连接的神经元在核心中优先居住。

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