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Emergence of Adaptive Computation by Single Neurons in the Developing Cortex

机译:发育中皮层中单个神经元的自适应计算的出现

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摘要

Adaptation is a fundamental computational motif in neural processing. To maintain stable perception in the face of rapidly shifting input, neural systems must extract relevant information from background fluctuations under many different contexts. Many neural systems are able to adjust their input–output properties such that an input's ability to trigger a response depends on the size of that input relative to its local statistical context. This “gain-scaling” strategy has been shown to be an efficient coding strategy. We report here that this property emerges during early development as an intrinsic property of single neurons in mouse sensorimotor cortex, coinciding with the disappearance of spontaneous waves of network activity, and can be modulated by changing the balance of spike-generating currents. Simultaneously, developing neurons move toward a common intrinsic operating point and a stable ratio of spike-generating currents. This developmental trajectory occurs in the absence of sensory input or spontaneous network activity. Through a combination of electrophysiology and modeling, we demonstrate that developing cortical neurons develop the ability to perform nearly perfect gain scaling by virtue of the maturing spike-generating currents alone. We use reduced single neuron models to identify the conditions for this property to hold.
机译:适应是神经处理中的基本计算主题。为了在输入快速变化的情况下保持稳定的感知,神经系统必须从许多不同情况下的背景波动中提取相关信息。许多神经系统能够调整其输入-输出属性,以使输入触发响应的能力取决于该输入相对于其本地统计上下文的大小。这种“缩放”策略已被证明是一种有效的编码策略。我们在这里报告此属性出现在早期发展过程中作为鼠标感觉运动皮层中的单个神经元的固有属性,与网络活动的自发波的消失相吻合,并且可以通过更改峰值生成电流的平衡来进行调节。同时,发育中的神经元朝着共同的固有工作点和稳定的尖峰生成电流比例移动。这种发展轨迹发生在没有感觉输入或自发网络活动的情况下。通过电生理学和建模的结合,我们证明了发展中的皮层神经元仅依靠成熟的产生尖峰的电流就能够进行近乎完美的增益缩放。我们使用简化的单神经元模型来确定保持该属性的条件。

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