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Clustered Neural Dynamics Identify Motifs for Chemotaxis in Caenorhabditis elegans

机译:聚集的神经动力学识别秀丽隐杆线虫趋化性的动机。

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Although anatomical connectivity of the nematode Caenorhabditis elegans has been almost completely described, determination of the neurophysiological basis of behavior is just beginning. Here, we performed a stochastic search to determine neural network parameters sufficient for a model worm to exhibit chemotaxis, a form of spatial orientation behavior in which turning probability is modulated by the rate of change of chemical concentration. To better comprehend network solutions, we developed a novel method (Neural Dynamic Clustering) to identify neural dynamic motifs. We identified two types of motifs, one of which had been previously identified, and validated the behavior generated by the motifs against experimental chemotaxis.
机译:尽管几乎完全描述了线虫秀丽隐杆线虫的解剖学连通性,但是行为的神经生理学基础的确定才刚刚开始。在这里,我们进行了随机搜索,以确定足以使模型蠕虫表现出趋化性的神经网络参数,趋化性是一种空间定向行为的形式,其中转向概率由化学浓度的变化率来调节。为了更好地理解网络解决方案,我们开发了一种新颖的方法(神经动态聚类)来识别神经动态图案。我们确定了两种类型的基序,其中一种先前已确定,并验证了基序对实验趋化性产生的行为。

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