IST Austria (Institute of Science and Technology Austria), Am Campus 1, A-3400, Klosterneuburg, Austria.
IST Austria (Institute of Science and Technology Austria), Am Campus 1, A-3400, Klosterneuburg, Austria.
J Neurosci Methods. 2021 Jun 1;357:109125. doi: 10.1016/j.jneumeth.2021.109125. Epub 2021 Mar 9.
To understand information coding in single neurons, it is necessary to analyze subthreshold synaptic events, action potentials (APs), and their interrelation in different behavioral states. However, detecting excitatory postsynaptic potentials (EPSPs) or currents (EPSCs) in behaving animals remains challenging, because of unfavorable signal-to-noise ratio, high frequency, fluctuating amplitude, and variable time course of synaptic events.
We developed a method for synaptic event detection, termed MOD (Machine-learning Optimal-filtering Detection-procedure), which combines concepts of supervised machine learning and optimal Wiener filtering. Experts were asked to manually score short epochs of data. The algorithm was trained to obtain the optimal filter coefficients of a Wiener filter and the optimal detection threshold. Scored and unscored data were then processed with the optimal filter, and events were detected as peaks above threshold.
We challenged MOD with EPSP traces in vivo in mice during spatial navigation and EPSC traces in vitro in slices under conditions of enhanced transmitter release. The area under the curve (AUC) of the receiver operating characteristics (ROC) curve was, on average, 0.894 for in vivo and 0.969 for in vitro data sets, indicating high detection accuracy and efficiency.
When benchmarked using a (1 - AUC) metric, MOD outperformed previous methods (template-fit, deconvolution, and Bayesian methods) by an average factor of 3.13 for in vivo data sets, but showed comparable (template-fit, deconvolution) or higher (Bayesian) computational efficacy.
MOD may become an important new tool for large-scale, real-time analysis of synaptic activity.
为了理解单个神经元中的信息编码,有必要分析亚阈突触事件、动作电位 (AP) 及其在不同行为状态下的相互关系。然而,由于信号噪声比、高频、幅度波动和突触事件的时程变化不利,在行为动物中检测兴奋性突触后电位 (EPSP) 或电流 (EPSC) 仍然具有挑战性。
我们开发了一种称为 MOD(机器学习最优滤波检测程序)的突触事件检测方法,该方法结合了监督机器学习和最优维纳滤波的概念。专家被要求手动对短数据段进行评分。该算法经过训练,以获得维纳滤波器的最优滤波器系数和最优检测阈值。然后用最优滤波器处理评分和未评分的数据,并将阈值以上的峰值检测为事件。
我们在空间导航过程中用体内的 EPSP 痕迹和增强递质释放条件下的体外切片中的 EPSC 痕迹对 MOD 进行了挑战。接收器工作特性 (ROC) 曲线的曲线下面积 (AUC) 平均为体内数据集的 0.894 和体外数据集的 0.969,表明检测精度和效率高。
使用(1 - AUC)指标进行基准测试时,MOD 优于以前的方法(模板拟合、反卷积和贝叶斯方法),体内数据集的平均因子为 3.13,但显示出可比的(模板拟合、反卷积)或更高的(贝叶斯)计算效率。
MOD 可能成为大规模、实时分析突触活动的重要新工具。