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Estimating the posterior probability of LTP failure by sequential Bayesian analysis of an imperfect Bernoulli trial model

机译:通过不完善的伯努利试验模型的顺序贝叶斯分析估计LTP失败的后验概率

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摘要

A tetanically stimulated (TS) neuron is said to have failed to fire if its voltage-clamped excitatory postsynaptic current (EPSC) measurement is devoid of a long-term potentiation (LTP) response. This paper provides a method for evaluating the posterior probability of "failure" for TS neurons. A sequential Bayes algorithm is employed on an imperfect Bernoulli trial model to refine the posterior with each EPSC data record processed. The method is applied to both real and simulated LTP data and is shown to be consistent with the theoretical Beta-distributed posterior and the reported in vitro voltage-damped EPSC failure rates.
机译:如果其电压钳位的兴奋性突触后电流(EPSC)测量缺乏长期增强(LTP)响应,则据说被强直刺激(TS)的神经元无法激发。本文提供了一种评估TS神经元“失败”的后验概率的方法。在不完善的伯努利试验模型上采用顺序贝叶斯算法,以对处理了每个EPSC数据记录的后验数据进行细化。该方法适用于实际和模拟的LTP数据,并被证明与理论Beta分布后验和所报道的体外电压衰减EPSC故障率一致。

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