Litcius/Paper detail

Altered complexity in resting-state fNIRS signal in autism: a multiscale entropy approach

Tingzhen Zhang, Wen Huang, Xiaoyin Wu, Weiting Sun, Fang Lin, Huiwen Sun, Jun Li

2021Physiological Measurement18 citationsDOI

Abstract

Abstract Objective. Feature extraction and recognition in brain signal processing is of great significance for understanding the neurological mechanism of autism spectrum disorder (ASD). Resting-state (RS) functional near-infrared spectroscopy measurement provides a way to investigate the possible alteration in ASD-related complexity of resting-state (RS) functional near-infrared spectroscopy (fNIRS) signals and to explore the relationship between brain functional connectivity and complexity. Approach. Using the multiscale entropy (MSE) of fNIRS signals recorded from the bilateral temporal lobes (TLs) on 25 children with ASD and 22 typical development (TD) children, the pattern of brain complexity was assessed for both the ASD and TD groups. Main results. The quantitative analysis of MSE revealed the increased complexity in RS-fNIRS in children with ASD, particularly in the left temporal lobe. The complexity in the RS signal and resting state functional connectivity (RSFC) were also observed to exhibit negative correlation in the medium magnitude. Significance. These results indicated that the MSE might serve as a novel measure for RS-fNIRS signals in characterizing and understanding ASD.

Topics & Concepts

Resting state fMRIFunctional near-infrared spectroscopyFunctional connectivityAutism spectrum disorderPattern recognition (psychology)Complexity indexCorrelationSample entropyAutismComputer scienceArtificial intelligencePsychologyNeuroscienceCognitionMathematicsPrefrontal cortexDevelopmental psychologyAlgorithmGeometryBoolean functionOptical Imaging and Spectroscopy TechniquesEEG and Brain-Computer InterfacesHeart Rate Variability and Autonomic Control