Simulation of Neural Responses to Classical Music Using Organoid Intelligence Methods
Daniel Szelogowski

TL;DR
This paper introduces PyOrganoid, a novel library for simulating neural responses to classical music using biologically inspired organoid models and deep learning, advancing computational neuroscience research.
Contribution
The study presents the development of the Pianoid deep organoid learning model and the PyOrganoid library, integrating machine learning with organoid simulations for neural response prediction.
Findings
The Pianoid model accurately predicts EEG responses to classical music.
PyOrganoid facilitates complex neural response simulations in silico.
Synthetic models can provide insights into music perception and cognition.
Abstract
Music is a complex auditory stimulus capable of eliciting significant changes in brain activity, influencing cognitive processes such as memory, attention, and emotional regulation. However, the underlying mechanisms of music-induced cognitive processes remain largely unknown. Organoid intelligence and deep learning models show promise for simulating and analyzing these neural responses to classical music, an area significantly unexplored in computational neuroscience. Hence, we present the PyOrganoid library, an innovative tool that facilitates the simulation of organoid learning models, integrating sophisticated machine learning techniques with biologically inspired organoid simulations. Our study features the development of the Pianoid model, a "deep organoid learning" model that utilizes a Bidirectional LSTM network to predict EEG responses based on audio features from classical…
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Taxonomy
TopicsMusic and Audio Processing · Neural Networks and Applications
MethodsSigmoid Activation · Tanh Activation · Long Short-Term Memory
