Department of Cellular Cardiology, Institute of Experimental Endocrinology, Biomedical Research Center, Slovak Academy of Sciences, Bratislava, Slovakia.
Department of Cellular Cardiology, Institute of Experimental Endocrinology, Biomedical Research Center, Slovak Academy of Sciences, Bratislava, Slovakia.
Biophys J. 2023 Feb 7;122(3):451-459. doi: 10.1016/j.bpj.2023.01.003. Epub 2023 Jan 6.
Dynamic systems such as cells or tissues generate, either spontaneously or in response to stimuli, transient signals that carry information about the system. Characterization of recorded transients is often hampered by a low signal-to-noise ratio (SNR). Reduction of the noise by filtering has limited use due to partial signal distortion. Occasionally, transients can be approximated by a mathematical function, but such a function may not hold correctly if recording conditions change. We introduce here the model-independent approximation method for general noisy transient signals based on the Gaussian process regression. The method was implemented in the software TransientAnalyzer, which detects transients in a record, finds their best approximation by the Gaussian process, constructs a surrogate spline function, and estimates specified signal parameters. The method and software were tested on a cellular model of the calcium concentration transient corrupted by various SNR levels and recorded at a low sampling frequency. Statistical analysis of the model data sets provided the error of estimation <7.5% and the coefficient of variation of estimates <17% for peak SNR = 5. The performance of Gaussian process regression on signals of diverse experimental origin was even better than fitting by a function. The software and its description are available on GitHub.
动态系统,如细胞或组织,自发或响应刺激产生携带系统信息的瞬态信号。记录的瞬态信号的特征通常受到低信噪比(SNR)的限制。由于信号的部分失真,通过滤波降低噪声的方法的用途有限。偶尔,瞬态信号可以通过数学函数来近似,但如果记录条件发生变化,该函数可能无法正确保持。我们在这里引入了一种基于高斯过程回归的通用噪声瞬态信号的无模型逼近方法。该方法在 TransientAnalyzer 软件中实现,该软件可以检测记录中的瞬态,通过高斯过程找到它们的最佳逼近,构建替代样条函数,并估计指定的信号参数。该方法和软件已在受各种 SNR 水平影响并以低采样频率记录的钙浓度瞬态细胞模型上进行了测试。对模型数据集的统计分析表明,在峰值 SNR = 5 时,估计误差<7.5%,估计值的变异系数<17%。高斯过程回归在不同实验来源的信号上的性能甚至优于函数拟合。该软件及其说明可在 GitHub 上获得。