Gnanasambandam Radhakrishnan, Nielsen Morten S, Nicolai Christopher, Sachs Frederick, Hofgaard Johannes P, Dreyer Jakob K
Department of Physiology and Biophysics, State University of New YorkBuffalo, NY, USA.
Department of Biomedical Sciences and The Danish National Research Foundation Centre for Cardiac Arrhythmia, Faculty of Health and Medical Sciences, University of CopenhagenCopenhagen, Denmark.
Front Neuroinform. 2017 Apr 27;11:31. doi: 10.3389/fninf.2017.00031. eCollection 2017.
Researchers can investigate the mechanistic and molecular basis of many physiological phenomena in cells by analyzing the fundamental properties of single ion channels. These analyses entail recording single channel currents and measuring current amplitudes and transition rates between conductance states. Since most electrophysiological recordings contain noise, the data analysis can proceed by idealizing the recordings to isolate the true currents from the noise. This de-noising can be accomplished with threshold crossing algorithms and Hidden Markov Models, but such procedures generally depend on inputs and supervision by the user, thus requiring some prior knowledge of underlying processes. Channels with unknown gating and/or functional sub-states and the presence in the recording of currents from uncorrelated background channels present substantial challenges to such analyses. Here we describe and characterize an idealization algorithm based on Rissanen's Minimum Description Length (MDL) Principle. This method uses minimal assumptions and idealizes ion channel recordings without requiring a detailed user input or assumptions about channel conductance and kinetics. Furthermore, we demonstrate that correlation analysis of conductance steps can resolve properties of single ion channels in recordings contaminated by signals from multiple channels. We first validated our methods on simulated data defined with a range of different signal-to-noise levels, and then showed that our algorithm can recover channel currents and their substates from recordings with multiple channels, even under conditions of high noise. We then tested the MDL algorithm on real experimental data from human PIEZO1 channels and found that our method revealed the presence of substates with alternate conductances.
研究人员可以通过分析单个离子通道的基本特性,来探究细胞中许多生理现象的机制和分子基础。这些分析需要记录单通道电流,并测量电流幅度以及电导状态之间的转换速率。由于大多数电生理记录都包含噪声,因此数据分析可以通过将记录理想化来进行,以便从噪声中分离出真实电流。这种去噪可以通过阈值穿越算法和隐马尔可夫模型来完成,但此类程序通常依赖于用户的输入和监督,因此需要对潜在过程有一些先验知识。具有未知门控和/或功能亚状态的通道,以及记录中存在来自不相关背景通道的电流,给此类分析带来了重大挑战。在此,我们描述并表征了一种基于里斯annen最小描述长度(MDL)原理的理想化算法。该方法使用的假设最少,并且在不需要详细的用户输入或关于通道电导和动力学的假设的情况下,对离子通道记录进行理想化。此外,我们证明了电导步骤的相关性分析可以解析被来自多个通道的信号污染的记录中的单离子通道特性。我们首先在具有一系列不同信噪比水平的模拟数据上验证了我们的方法,然后表明我们的算法即使在高噪声条件下,也能从具有多个通道的记录中恢复通道电流及其亚状态。然后,我们在来自人类PIEZO1通道的真实实验数据上测试了MDL算法,发现我们的方法揭示了具有交替电导的亚状态的存在。