MLNCJul 21, 2015

Kernel convolution model for decoding sounds from time-varying neural responses

arXiv:1507.05869v16 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of understanding neural representation of sounds for neuroscience, but it is incremental as it builds on existing convolution models with specific parameter evaluations.

The study tackled decoding natural sounds from time-varying neural responses using a kernel convolution model, achieving 70% accuracy in distinguishing unseen sounds by decoding stimulus frequencies from MEG recordings.

In this study we present a kernel based convolution model to characterize neural responses to natural sounds by decoding their time-varying acoustic features. The model allows to decode natural sounds from high-dimensional neural recordings, such as magnetoencephalography (MEG), that track timing and location of human cortical signalling noninvasively across multiple channels. We used the MEG responses recorded from subjects listening to acoustically different environmental sounds. By decoding the stimulus frequencies from the responses, our model was able to accurately distinguish between two different sounds that it had never encountered before with 70% accuracy. Convolution models typically decode frequencies that appear at a certain time point in the sound signal by using neural responses from that time point until a certain fixed duration of the response. Using our model, we evaluated several fixed durations (time-lags) of the neural responses and observed auditory MEG responses to be most sensitive to spectral content of the sounds at time-lags of 250 ms to 500 ms. The proposed model should be useful for determining what aspects of natural sounds are represented by high-dimensional neural responses and may reveal novel properties of neural signals.

Foundations

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