학술논문

Autonomous State Inference for Data-Driven Optimization of Neural Modulation
Document Type
Conference
Source
2021 10th International IEEE/EMBS Conference on Neural Engineering (NER) Neural Engineering (NER), 2021 10th International IEEE/EMBS Conference on. :950-953 May, 2021
Subject
Bioengineering
Signal Processing and Analysis
Neurological diseases
Modulation
Optimization methods
Neural engineering
Tools
Data models
Bayes methods
Language
ISSN
1948-3554
Abstract
Neural modulation is a fundamental tool for treating neurological diseases and understanding their mechanisms. One of the challenges in neural modulation includes selecting stimulation parameters, as parameter spaces are very large and their induced effects can exhibit complex behavior. Moreover, the effect of stimulation may depend on the underlying neural state, which can be difficult or impossible to quantify a priori. In this study, we first use an unsupervised learning approach to demonstrate that the effect of medial septum optogenetic stimulation on hippocampal activity differs between awake and anesthetized behavioral states. We then use these data to construct a simulation model of a neural modulation experiment and demonstrate a novel Bayesian optimization method that automatically learns the subject-specific relationship between neural state and its effect on modulation. This approach outperformed standard Bayesian optimization and identified ground-truth optimal parameters of the simulation model, suggesting that this method can efficiently explore complex state-dependent relationships of parameter spaces to improve neural modulation.