Provencher S W
Biophys J. 1976 Jan;16(1):27-41. doi: 10.1016/S0006-3495(76)85660-3.
A method based on the Fourier convolution theorem is developed for the analysis of data composed of random noise, plus an unknown constant "base line," plus a sum of (or an integral over a continuous spectrum of) exponential decay functions. The Fourier method's usual serious practical limitation of needing high accuracy data over a very wide range is eliminated by the introduction of convergence parameters and a Gaussian taper window. A computer program is described for the analysis of discrete spectra, where the data involves only a sum of exponentials. The program is completely automatic in that the only necessary inputs are the raw data (not necessarily in equal intervals of time); no potentially biased initial guesses concerning either the number or the values of the components are needed. The outputs include the number of components, the amplitudes and time constants together with their estimated errors, and a spectral plot of the solution. The limiting resolving power of the method is studied by analyzing a wide range of simulated two-, three-, and four-component data. The results seem to indicate that the method is applicable over a considerably wider range of conditions than nonlinear least squares or the method of moments.
开发了一种基于傅里叶卷积定理的方法,用于分析由随机噪声、未知常数“基线”以及指数衰减函数之和(或连续谱上的积分)组成的数据。通过引入收敛参数和高斯渐缩窗口,消除了傅里叶方法通常在很宽范围内需要高精度数据这一严重的实际限制。描述了一个用于分析离散谱的计算机程序,其中数据仅涉及指数之和。该程序是完全自动的,唯一必要的输入是原始数据(不一定是等时间间隔的);不需要关于分量的数量或值的潜在有偏差的初始猜测。输出包括分量的数量、幅度和时间常数及其估计误差,以及解的频谱图。通过分析广泛的模拟二分量、三分量和四分量数据,研究了该方法的极限分辨能力。结果似乎表明,该方法比非线性最小二乘法或矩量法适用于更广泛的条件范围。