The relationship between frequency content and representational dynamics in the decoding of neurophysiological data
Citation
Cameron Higgins , Mats W.J. van Es, Andrew Quinn , Diego Vidaurre and Mark Woolrich. The relationship between frequency content and representational dynamics in the decoding of neurophysiological data. bioRxiv preprint
Abstract
Decoding of high temporal resolution, stimulus-evoked neurophysiological data is
increasingly used to test theories about how the brain processes information. However, a
fundamental relationship between the frequency spectra of the neural signal and the
subsequent decoding accuracy timecourse is not widely recognised. We show that, in
commonly used instantaneous signal decoding paradigms, each sinusoidal component of
35 the evoked response is translated to double its original frequency in the subsequent
decoding accuracy timecourses. We therefore recommend, where researchers use
instantaneous signal decoding paradigms, that more aggressive low pass filtering is applied
with a cut-off at one quarter of the sampling rate, to eliminate representational alias
artefacts. However, this does not negate the accompanying interpretational challenges. We
40 show that these can be resolved by decoding paradigms that utilise both a signal’s
instantaneous magnitude and its local gradient information as features for decoding. On a
publicly available MEG dataset, this results in decoding accuracy metrics that are higher,
more stable over time, and free of the technical and interpretational challenges previously
characterised. We anticipate that a broader awareness of these fundamental relationships
will enable stronger interpretations of decoding results by linking them more clearly to the
underlying signal characteristics that drive them.
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