基于压缩感知和峰值检测方法的三态微管动态失稳参数估计

Shantia Yarahmadian, V. Menon, V. Rezania
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引用次数: 6

摘要

最近的研究表明,微管(MTs)表现出生长、收缩和暂停三种过渡状态。本文以三分马尔可夫噪声(TMN)为框架,研究了mt3个过渡态的动力学。然后,我们将压缩感知(CS)应用于MT长度的实验数据,并在小波域应用峰值检测来有效地检测MT的三种过渡状态。我们的方法的新颖之处在于在小波域同时检测峰值并对其进行编码,而无需在解码阶段后进行进一步处理。实验结果表明,与传统的采样方案相比,CS与小波联合使用具有更好的压缩和重构性能。估计了MT的动态不稳定参数,并表明在较低的采样率下,MT的动态不稳定参数与原始MT数据非常接近。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On using Compressed Sensing and peak detection method for the Dynamic Instability parameters estimation for Microtubules modeled in three states
Recent studies has revealed that Microtubules (MTs) exhibit three transition states of growth, shrinkage and pause states. In this paper, we use Trichotomous Markov Noise (TMN) as a framework for studying MTs dynamics in its three transition states. We then apply Compressed Sensing (CS) to the experimental data of MT length and apply peak detection in the wavelet domain to efficiently detect the three transition states of MTs. One of the novelties of our method is in detecting the peaks and encoding them simultaneously in the wavelet domain without having the need to do further processing after decoding stage. Experimental results show that using CS in conjunction with wavelets provides better compression and reconstruction performance comparing to the traditional sampling schemes. Dynamic Instability parameters of MTs are estimated and are shown to closely approximate original MT data for lower sampling rates.
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