Litcius/Paper detail

An intra-operative feature-based classification of microelectrode recordings to support the subthalamic nucleus functional identification during deep brain stimulation surgery

Stefania Coelli, Vincenzo Levi, Jasmin Del Vecchio Del Vecchio, Enrico Mailland, Sara Rinaldo, Roberto Eleopra, Anna Maria Bianchi

2020Journal of Neural Engineering14 citationsDOI

Abstract

Abstract Objective . The subthalamic nucleus (STN) is the most selected target for the placement of the Deep Brain Stimulation (DBS) electrode to treat Parkinson’s disease. Its identification is a delicate and challenging task which is based on the interpretation of the STN functional activity acquired through microelectrode recordings (MERs). Aim of this work is to explore the potentiality of a set of 25 features to build a classification model for the discrimination of MER signals belonging to the STN. Approach. We explored the use of different sets of spike-dependent and spike-independent features in combination with an ensemble trees classification algorithm on a dataset composed of 13 patients receiving bilateral DBS. We compared results from six subsets of features and two dataset conditions (with and without standardization) using performance metrics on a leave-one-patient-out validation schema. Main results. We obtained statistically better results (i.e. higher accuracy p -value = 0.003) on the RAW dataset than on the standardized one, where the selection of seven features using a minimum redundancy maximum relevance algorithm provided a mean accuracy of 94.1%, comparable with the use of the full set of features. In the same conditions, the spike-dependent features provided the lowest accuracy (86.8%), while a power density-based index was shown to be a good indicator of STN activity (92.3%). Significance. Results suggest that a small and simple set of features can be used for an efficient classification of MERs to implement an intraoperative support for clinical decision during DBS surgery.

Topics & Concepts

Subthalamic nucleusDeep brain stimulationComputer sciencePattern recognition (psychology)Artificial intelligenceParkinson's diseaseMedicinePathologyDiseaseNeurological disorders and treatmentsParkinson's Disease Mechanisms and TreatmentsNeuroscience and Neural Engineering