Title :
Linear and non-linear autoregressive modeling in subthalamic nucleus for patients with movement disorders. Comparison and critical analysis
Author :
Roldan-Vasco, S.
Author_Institution :
Res. Group in Adv. Mater. & Energy, Inst. Tecnol. Metropolitano, Medellin, Colombia
Abstract :
The Deep Brain Stimulation is a surgical procedure in which an electrode is implanted, used by functional neurosurgeons to control the discharge rates of motor units (basal ganglia) in patients with movement disorders. The success of the procedure depends on exactly localization of surgical target, conventionally the subthalamic nucleus, thalamus or globus pallidus internus, which have a particular voltage profile. In this work, two kind of parametric structures, non-linear ARX and linear AR, have been used for modeling the intracerebral signals in patients with Parkinson disease. This work evaluates the fitness with both modeling techniques and their dependence of the linearity regressors and the prediction horizon. The author found that the signals without Gaussian behavior were strongly sensitive of the prediction horizon. On the other hand, both AR and NLARX had good enough precision that guarantees an accurate simulation. This work aims to establish the better modeling criteria trough an a comparison between fitness for AR and NLARX structures and the final model of subthalamic nucleus signals for an oblique coordinate system.
Keywords :
Gaussian processes; autoregressive processes; bioelectric potentials; biomechanics; biomedical electrodes; biomedical measurement; brain models; diseases; linear systems; medical disorders; medical signal processing; neurophysiology; nonlinear systems; prosthetics; surgery; AR precision; AR structure fitness; NLARX precision; NLARX structure fitness; Parkinson disease patient; basal ganglia discharge rate control; critical analysis; deep brain stimulation; electrode implant; functional neurosurgeon; globus pallidus internus; intracerebral signal modeling; linearity regressor; modeling criteria; motor unit discharge rate control; movement disorder patients; nonlinear ARX; nonlinear autoregressive modeling; oblique coordinate system; parametric structure; prediction horizon; signal Gaussian behavior; simulation accuracy; subthalamic nucleus signal model; surgical procedure success; surgical target localization; thalamus; voltage profile; Brain models; Computational modeling; Discharges (electric); Mathematical model; Solid modeling; Surgery; Parkinson disease; autoregressive modeling; biomedical signal processing; non-linear modeling; parametric modeling; subthalamic nucleus;
Conference_Titel :
Image, Signal Processing and Artificial Vision (STSIVA), 2014 XIX Symposium on
Conference_Location :
Armenia
DOI :
10.1109/STSIVA.2014.7010179