Clements J D, Bekkers J M
John Curtin School of Medical Research, Australian National University, Canberra, Australia.
Biophys J. 1997 Jul;73(1):220-9. doi: 10.1016/S0006-3495(97)78062-7.
Spontaneous synaptic events can be difficult to detect when their amplitudes are close to the background noise level. Here we report a sensitive new technique for automatic detection of small asynchronous events. A waveform with the time course of a typical synaptic event (a template) is slid along the current or voltage trace and optimally scaled to fit the data at each position. A detection criterion is calculated based on the optimum scaling factor and the quality of the fit. An event is detected when this criterion crosses a threshold level. The algorithm automatically compensates for changes in recording noise. The sensitivity and selectivity of the method were tested using real and simulated data, and the influence of the template parameter settings was investigated. Its performance was comparable to that obtained by visual event detection, and it was more sensitive than previously described threshold detection techniques. Under typical recording conditions, all fast synaptic events with amplitudes of at least three times the noise standard deviation (3 sigma) could be detected, as could 75% of events with amplitudes of 2 sigma. The scaled template technique is implemented within a commercial data analysis application and can be applied to many standard electrophysiological data file formats.
当自发突触事件的幅度接近背景噪声水平时,可能很难检测到。在此,我们报告一种用于自动检测小的异步事件的灵敏新技术。一个具有典型突触事件时间进程的波形(一个模板)沿着电流或电压轨迹滑动,并进行最佳缩放以拟合每个位置的数据。基于最佳缩放因子和拟合质量计算检测标准。当该标准超过阈值水平时,检测到一个事件。该算法会自动补偿记录噪声的变化。使用真实数据和模拟数据测试了该方法的灵敏度和选择性,并研究了模板参数设置的影响。其性能与通过视觉事件检测获得的性能相当,并且比先前描述的阈值检测技术更灵敏。在典型的记录条件下,所有幅度至少为噪声标准偏差三倍(3σ)的快速突触事件都可以被检测到,幅度为2σ的事件也有75% 可以被检测到。缩放模板技术在商业数据分析应用程序中实现,并且可以应用于许多标准电生理数据文件格式。