计算机科学
神经科学
神经传递
推论
突触可塑性
人工智能
对比度(视觉)
传输(电信)
机器学习
心理学
生物
生物化学
电信
受体
作者
Ola Bykowska,Camille Gontier,Anne-Lene Sax,David W. Jia,Milton Llera Montero,Alex D. Bird,Conor Houghton,Jean-Pascal Pfister,Rui Ponte Costa
标识
DOI:10.3389/fnsyn.2019.00021
摘要
Synaptic computation is believed to underlie many forms of animal behaviour. A correct identification of synaptic transmission properties is thus crucial for a better understanding of how the brain processes information, stores memories and learns. Recently, a number of new statistical methods for inferring synaptic transmission parameters have been introduced. Here we review and contrast these developments, with a focus on methods aimed at inferring both synaptic release statistics and synaptic dynamics. Furthermore, based on recent proposals we discuss how such methods can be applied to data across different levels of investigation: from intracellular paired recordings to in vivo network-wide recordings. Overall, these developments open the window to reliably estimating synaptic parameters in behaving animals.
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