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Conditional firing probabilities in cultured neuronal networks: a stable underlying structure in widely varying spontaneous activity patterns

机译:培养的神经元网络中的条件激发概率:自发活动模式广泛变化的稳定基础结构

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To properly observe induced connectivity changes after training sessions, one needs a network model that describes individual relationships in sufficient detail to enable observation of induced changes and yet reveals some kind of stability in these relationships. We analyzed spontaneous firing activity in dissociated rat cortical networks cultured on multi-electrode arrays by means of the conditional firing probability. For all pairs (i,j) of the 60 electrodes, we calculated conditional firing probability (CFP_(i,j)[τ]) as the probability of an action potential at electrode j at t = τ, given that one was detected at electrode i at t = 0. If a CFP_(i,j) [τ] distribution clearly deviated from a flat one, electrodes i and j were considered to be related. For all related electrode pairs, a function was fitted to the CFP-curve to obtain parameters for 'strength' and 'delay' (i.e. maximum and latency of the maximum of the curve) of each relationship. In young cultures the set of identified relationships changed rather quickly. At 16 days in vitro (DIV) 50% of the set changed within 2 days. Beyond 25 DIV this set stabilized: during a week more than 50% of the set remained intact. Most individual relationships developed rather gradually. Moreover, beyond 25 DIV relational strength appeared quite stable, with coefficients of variation (100 x SD/mean) around 25% in periods of ≈10 h. CFP analysis provides a robust method to describe the underlying probabilistic structure of highly varying spontaneous activity in cultured cortical networks. It may offer a suitable basis for plasticity studies, in the case of changes in the probabilistic structure. CFP analysis monitors all pairs of electrodes instead of just a selected one. Still, it is likely to describe the network in sufficient detail to detect subtle changes in individual relationships.
机译:为了在训练课程后正确观察诱导的连接性变化,需要一种网络模型,该模型足够详细地描述各个关系,以便能够观察诱导的变化,同时揭示这些关系中的某种稳定性。我们通过条件发射概率分析了在多电极阵列上培养的离体大鼠皮质网络中的自发发射活性。对于60个电极的所有对(i,j),我们假设条件电极放电概率(CFP_(i,j)[τ])被计算为t =τ时在电极j处的动作电位的概率,假设在电极i在t = 0时。如果CFP_(i,j)[τ]分布明显偏离平坦的电极,则认为电极i和j是相关的。对于所有相关的电极对,将函数拟合到CFP曲线以获得每个关系的“强度”和“延迟”参数(即曲线的最大值和最大值的等待时间)。在年轻文化中,已确定的关系集变化很快。在体外(DIV)16天时,两组的50%在2天之内发生了变化。超过25 DIV时,此集合稳定了:一周内超过50%的集合保持完整。大多数个人关系是逐渐发展的。此外,超过25 DIV的关系强度似乎相当稳定,在≈10h的时间内,变异系数(100 x SD /平均值)约为25%。 CFP分析提供了一种可靠的方法来描述培养的皮质网络中自发活动高度变化的潜在概率结构。如果概率结构发生变化,它可能为可塑性研究提供合适的基础。 CFP分析可监控所有电极对,而不只是选定的一对。尽管如此,仍然有可能足够详细地描述网络,以检测个体关系中的细微变化。

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