Shabani H, Sadeghi Mahdi, Zrenner E, Rathbun D L, Hosseinzadeh Z
Institute for Ophthalmic Research, Centre for Ophthalmology, Eberhard Karls University, Tübingen, Germany.
Werner Reichardt Centre for Integrative Neuroscience (CIN), Tübingen, Germany.
Vis Neurosci. 2021 Nov 10;38:E016. doi: 10.1017/S0952523821000158.
Recently, a detailed catalog of 32 retinal ganglion cell (RGC) visual response patterns in mouse has emerged. However, the 10,000 samples required for this catalog-based on fluorescent signals from a calcium indicator dye-are much harder to acquire from the extracellular spike train recordings underlying our bionic vision research. Therefore, we sought to convert spike trains into pseudocalcium signals so that our data could be directly matched to the 32 predefined, calcium signal-based groups. A microelectrode array (MEA) was used to record spike trains from mouse RGCs of 29 retinas. Visual stimuli were adapted from the Baden et al. study; including moving bars, full-field contrast and temporal frequency chirps, and black-white and UV-green color flashes. Spike train histograms were converted into pseudocalcium traces with an OGB-1 convolution kernel. Response features were extracted using sparse principal components analysis to match each RGC to one of the 32 RGC groups. These responses mapped onto of the 32 previously described groups; however, some of the groups remained unmatched. Thus, adaptation of the Baden et al. methodology for MEA recordings of spike trains instead of calcium recordings was partially successful. Different classification methods, however, will be needed to define clear RGC groups from MEA data for our bionic vision research. Nevertheless, others may pursue a pseudocalcium approach to reconcile spike trains with calcium signals. This work will help to guide them on the limitations and potential pitfalls of such an approach.
最近,一份关于小鼠32种视网膜神经节细胞(RGC)视觉反应模式的详细目录已经出现。然而,基于钙指示剂染料的荧光信号生成该目录所需的10000个样本,从我们仿生视觉研究的细胞外尖峰序列记录中获取要困难得多。因此,我们试图将尖峰序列转换为伪钙信号,以便我们的数据能够直接与32个预定义的、基于钙信号的组相匹配。使用微电极阵列(MEA)记录来自29个视网膜的小鼠RGC的尖峰序列。视觉刺激改编自巴登等人的研究;包括移动条纹、全场对比度和时间频率啁啾,以及黑白和紫外-绿色颜色闪光。尖峰序列直方图通过OGB-1卷积核转换为伪钙痕迹。使用稀疏主成分分析提取反应特征,以将每个RGC与32个RGC组中的一个进行匹配。这些反应映射到先前描述的32个组中;然而,一些组仍然无法匹配。因此,将巴登等人的方法改编用于MEA尖峰序列记录而非钙记录仅取得了部分成功。然而,对于我们的仿生视觉研究,需要不同的分类方法来从MEA数据中定义清晰的RGC组。尽管如此,其他人可能会采用伪钙方法来使尖峰序列与钙信号相协调。这项工作将有助于指导他们了解这种方法的局限性和潜在陷阱。