Litcius/Paper detail

Machine learning classifiers for electrode selection in the design of closed-loop neuromodulation devices for episodic memory improvement

David X. Wang, Nicole Ng, Sarah Seger, Arne D. Ekstrom, Jennifer Kriegel, Bradley Lega

2023Cerebral Cortex10 citationsDOIOpen Access PDF

Abstract

Successful neuromodulation approaches to alter episodic memory require closed-loop stimulation predicated on the effective classification of brain states. The practical implementation of such strategies requires prior decisions regarding electrode implantation locations. Using a data-driven approach, we employ support vector machine (SVM) classifiers to identify high-yield brain targets on a large data set of 75 human intracranial electroencephalogram subjects performing the free recall (FR) task. Further, we address whether the conserved brain regions provide effective classification in an alternate (associative) memory paradigm along with FR, as well as testing unsupervised classification methods that may be a useful adjunct to clinical device implementation. Finally, we use random forest models to classify functional brain states, differentiating encoding versus retrieval versus non-memory behavior such as rest and mathematical processing. We then test how regions that exhibit good classification for the likelihood of recall success in the SVM models overlap with regions that differentiate functional brain states in the random forest models. Finally, we lay out how these data may be used in the design of neuromodulation devices.

Topics & Concepts

Computer scienceNeuromodulationSupport vector machineArtificial intelligenceRandom forestRecallMachine learningSet (abstract data type)Encoding (memory)Associative propertyPattern recognition (psychology)NeurosciencePsychologyCognitive psychologyStimulationPure mathematicsMathematicsProgramming languageEEG and Brain-Computer InterfacesNeuroscience and Neural EngineeringFunctional Brain Connectivity Studies