Abstract

Mental imagery behaviors of various modalities include visual, auditory, and motor behaviors. Their alterations are pathologically involved in various psychiatric disorders. Results of earlier studies suggest that imagery behaviors are correlated with the modulated activities of the respective modality-specific regions and the additional activities of supramodal imagery-related regions. Additionally, despite the availability of complexity analysis in the neuroimaging field, it has not been used for neural decoding approaches. Therefore, we sought to characterize neural oscillation related to multimodal imagery through complexity-based neural decoding. For this study, we modified existing complexity measures to characterize the time evolution of temporal complexity. We took magnetoencephalography (MEG) data of eight healthy subjects as they performed multimodal imagery and non-imagery tasks. The MEG data were decomposed into amplitude and phase of sub-band frequencies by Hilbert–Huang transform. Subsequently, we calculated the complexity values of each reconstructed time series, along with raw data and band power for comparison, and applied these results as inputs to decode visual perception (VP), visual imagery (VI), motor execution (ME), and motor imagery (MI) functions. Consequently, intra-subject decoding with the complexity yielded a characteristic sensitivity map for each task with high decoding accuracy. The map is inverted in the occipital regions between VP and VI and in the central regions between ME and MI. Additionally, replacement of the labels into two classes as imagery and non-imagery also yielded better classification performance and characteristic sensitivity with the complexity. It is particularly interesting that some subjects showed characteristic sensitivities not only in modality-specific regions, but also in supramodal regions. These analyses indicate that two-class and four-class classifications each provided better performance when using complexity than when using raw data or band power as input. When inter-subject decoding was used with the same model, characteristic sensitivity maps were also obtained, although their decoding performance was lower. Results of this study underscore the availability of complexity measures in neural decoding approaches and suggest the possibility of a modality-independent imagery-related mechanism. The use of time evolution of temporal complexity in neural decoding might extend our knowledge of the neural bases of hierarchical functions in the human brain.

Highlights

  • In recent years, neural decoding research has progressed along with the expansion of machine learning (ML)

  • In inter-subject decoding, the expMSE showed higher performance than band power. In both intra-subject and inter-subject decoding with the expMSE, negative sensitivities in the gamma and beta band and positive sensitivities in the alpha band were observed in modality-specific regions (VP, occipital regions; ME, central regions) in non-imagery tasks (VP and ME, black filled arrows in Figures 3B and 4B and Supplementary Figure 3)

  • Inverted sensitivities were found with band power

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Summary

Introduction

Neural decoding research has progressed along with the expansion of machine learning (ML). Neural decoding has been applied for interpreting mental states [1, 2] and for treating various psychiatric disorders with neurofeedback [3,4,5,6,7,8,9,10,11,12]. CNN progressed in the image recognition field, but it has been applied recently in the neuroimaging field [13, 14]. Growing interest exists in interpreting trained models [15]. This avenue of research is extremely important for neuroimaging because it helps to elucidate features that the model uses to distinguish the classes. Electroencephalography (EEG) and magnetoencephalography (MEG) directly measure brain activity with excellent temporal resolution, thereby yielding insight into temporal dynamics within physiologically relevant frequency ranges

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