Issue 37, 2018

Estimation of diffusive states from single-particle trajectory in heterogeneous medium using machine-learning methods

Abstract

We propose a novel approach to analyze random walks in heterogeneous medium using a hybrid machine-learning method based on a gamma mixture and a hidden Markov model. A gamma mixture and a hidden Markov model respectively provide the number and the most probable sequence of diffusive states from the time series position data of particles/molecules obtained by single-particle/molecule tracking (SPT/SMT) method. We evaluate the performance of our proposed method for numerically generated trajectories. It is shown that our proposed method can correctly extract the number of diffusive states when each trajectory is long enough to be frame averaged. We also indicate that our method can provide an indicator whether the assumption of a medium consisting of discrete diffusive states is appropriate or not based on the available amount of trajectory data. Then, we demonstrate an application of our method to the analysis of experimentally obtained SPT data.

Graphical abstract: Estimation of diffusive states from single-particle trajectory in heterogeneous medium using machine-learning methods

Article information

Article type
Paper
Submitted
23 Apr 2018
Accepted
24 Aug 2018
First published
11 Sep 2018
This article is Open Access
Creative Commons BY-NC license

Phys. Chem. Chem. Phys., 2018,20, 24099-24108

Estimation of diffusive states from single-particle trajectory in heterogeneous medium using machine-learning methods

Y. Matsuda, I. Hanasaki, R. Iwao, H. Yamaguchi and T. Niimi, Phys. Chem. Chem. Phys., 2018, 20, 24099 DOI: 10.1039/C8CP02566E

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