ATR Brain Information Communication Research Laboratory Group, Advanced Telecommunications Research Institute International, Kyoto, Japan.
Department of Physics, Kyoto University, Kyoto, Japan.
Sci Rep. 2020 Oct 20;10(1):17844. doi: 10.1038/s41598-020-74672-y.
Two-photon imaging is a major recording technique used in neuroscience. However, it suffers from several limitations, including a low sampling rate, the nonlinearity of calcium responses, the slow dynamics of calcium dyes and a low SNR, all of which severely limit the potential of two-photon imaging to elucidate neuronal dynamics with high temporal resolution. We developed a hyperacuity algorithm (HA_time) based on an approach that combines a generative model and machine learning to improve spike detection and the precision of spike time inference. Bayesian inference was performed to estimate the calcium spike model, assuming constant spike shape and size. A support vector machine using this information and a jittering method maximizing the likelihood of estimated spike times enhanced spike time estimation precision approximately fourfold (range, 2-7; mean, 3.5-4.0; 2SEM, 0.1-0.25) compared to the sampling interval. Benchmark scores of HA_time for biological data from three different brain regions were among the best of the benchmark algorithms. Simulation of broader data conditions indicated that our algorithm performed better than others with high firing rate conditions. Furthermore, HA_time exhibited comparable performance for conditions with and without ground truths. Thus HA_time is a useful tool for spike reconstruction from two-photon imaging.
双光子成像技术是神经科学中主要的记录技术之一。然而,它存在几个限制,包括低采样率、钙响应的非线性、钙染料的动态缓慢和低 SNR,所有这些都严重限制了双光子成像技术以高时间分辨率阐明神经元动力学的潜力。我们开发了一种超分辨率算法(HA_time),该算法基于一种结合生成模型和机器学习的方法,以提高尖峰检测和尖峰时间推断的精度。贝叶斯推断用于估计钙峰模型,假设尖峰形状和大小不变。使用此信息的支持向量机和最大化估计尖峰时间似然性的抖动方法将尖峰时间估计精度提高了大约四倍(范围为 2-7;平均值为 3.5-4.0;2SEM 为 0.1-0.25),与采样间隔相比。来自三个不同脑区的生物数据的 HA_time 的基准分数是基准算法中最好的之一。更广泛的数据条件的模拟表明,我们的算法在高发射率条件下的性能优于其他算法。此外,HA_time 在有和没有真实值的情况下的表现相当。因此,HA_time 是从双光子成像重建尖峰的有用工具。