*Scale-Free Music of the Brain*

Dan Wu 1, Chao-Yi Li 1,2, De-Zhong Yao 1

*1* Key Laboratory for NeuroInformation of Ministry of Education, School of
Life Science and Technology, University of Electronic Science and Technology
of China, Chengdu, China, *
**2* Center for Life Sciences, Shanghai Institutes for Biological Sciences,
Chinese Academy of Sciences, Shanghai, China
 Abstract Background

There is growing interest in the relation between the brain and music. The
appealing similarity between brainwaves and the rhythms of music has
motivated many scientists to seek a connection between them. A variety of
transferring rules has been utilized to convert the brainwaves into music;
and most of them are mainly based on spectra feature of EEG.
Methodology/Principal Findings

In this study, audibly recognizable scale-free music was deduced from
individual Electroencephalogram (EEG) waveforms. The translation rules
include the direct mapping from the period of an EEG waveform to the
duration of a note, the logarithmic mapping of the change of average power
of EEG to music intensity according to the Fechner's law, and a scale-free
based mapping from the amplitude of EEG to music pitch according to the
power law. *To show the actual effect, we applied the deduced sonification
rules to EEG segments recorded during rapid-eye movement sleep (REM) and
slow-wave sleep (SWS). The resulting music is vivid and different between
the two mental states; the melody during REM sleep sounds fast and lively,
whereas that in SWS sleep is slow and tranquil. *60 volunteers evaluated 25
music pieces, 10 from REM, 10 from SWS and 5 from white noise (WN), 74.3%
experienced a happy emotion from REM and felt boring and drowsy when
listening to SWS, and the average accuracy for all the music pieces
identification is 86.8%(*κ* = 0.800, P<0.001). We also applied the method to
the EEG data from eyes closed, eyes open and epileptic EEG, and the results
showed these mental states can be identified by listeners.
Conclusions/Significance

The sonification rules may identify the mental states of the brain, which
provide a real-time strategy for monitoring brain activities and are
potentially useful to *neurofeedback therapy.*

Source: PLoS One [Open Access] [Inlcudes Six Audio recordings]
http://www.plosone.org/article/info:doi/10.1371/journal.pone.0005915

Posted by
Robert Karl Stonjek
 

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