首页> 外文会议>Neural Engineering, 2009. NER '09 >Particle filtering of point processes observation with application on the modeling of visual cortex neural spiking activity
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Particle filtering of point processes observation with application on the modeling of visual cortex neural spiking activity

机译:点过程观测的粒子滤波及其在视觉皮层神经突刺活动建模中的应用

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Recording of neural response to specific stimulus in a repeated trial is very common in neuroscience protocol. The perstimulus time histogram (PSTH) is a standard tool for analysis of neural response. However it could not capture the non-deterministic properties of the neuron especially in higher level cortical area such as inferior temporal cortex. The stochastic state point process filter theory is used for the estimation of the conditional intensity of the point process observation as a time varying firing rate and the particle filter is used to numerically estimate this density in time. The particle filters were applied to the results of the point process observation for compensating the Gaussian assumption. The results of applying point process modeling on a real data from inferior temporal cortex of macaque monkey indicates that, based on the assessment of goodness-of-fit, the neural spiking activity and biophysical property of neuron could be captured more accurately in compare to conventional methods.
机译:在重复试验中记录对特定刺激的神经反应在神经科学方案中非常普遍。刺激时间直方图(PSTH)是分析神经反应的标准工具。但是,它不能捕获神经元的不确定性,尤其是在较高水平的皮质区域(如颞下皮质)中。随机状态点过程过滤器理论用于估计点过程观测的条件强度(随时间变化的发射速率),而粒子过滤器用于对时间上的密度进行数字估计。将粒子滤波器应用于点过程观察的结果,以补偿高斯假设。对来自猕猴下颞叶皮层的真实数据进行点过程建模的结果表明,与传统方法相比,基于拟合优度的评估,可以更准确地捕获神经元的神经突增活动和生物物理特性。方法。

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