| Literature DB >> 28280739 |
Nannan Yu1, Lingling Wu1, Dexuan Zou1, Ying Chen1, Hanbing Lu2.
Abstract
In this paper, we propose a novel method for solving the single-trial evoked potential (EP) estimation problem. In this method, the single-trial EP is considered as a complex containing many components, which may originate from different functional brain sites; these components can be distinguished according to their respective latencies and amplitudes and are extracted simultaneously by multiple-input single-output autoregressive modeling with exogenous input (MISO-ARX). The extraction process is performed in three stages: first, we use a reference EP as a template and decompose it into a set of components, which serve as subtemplates for the remaining steps. Then, a dictionary is constructed with these subtemplates, and EPs are preliminarily extracted by sparse coding in order to roughly estimate the latency of each component. Finally, the single-trial measurement is parametrically modeled by MISO-ARX while characterizing spontaneous electroencephalographic activity as an autoregression model driven by white noise and with each component of the EP modeled by autoregressive-moving-average filtering of the subtemplates. Once optimized, all components of the EP can be extracted. Compared with ARX, our method has greater tracking capabilities of specific components of the EP complex as each component is modeled individually in MISO-ARX. We provide exhaustive experimental results to show the effectiveness and feasibility of our method.Entities:
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Year: 2017 PMID: 28280739 PMCID: PMC5320388 DOI: 10.1155/2017/7395385
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Figure 1The reference signal extracted from the AREP.
Figure 2The waves of the reference signals in l = 0 and l = 3.
Figure 3Performance evaluation of four methods with different SNR and l values.
Figure 4Latency tracking of the third wave using ARX and MISO-ARX.
Figure 5Estimation performance.
Figure 6Average of the estimated VEPs and the average of the measurements.
Figure 7Estimation of latencies of P100 by MISO-ARX.