6533b870fe1ef96bd12cf951
RESEARCH PRODUCT
STN area detection using K-NN classifiers for MER recordings in Parkinson patients during neurostimulator implant surgery
Y D R KohanJ. Francés VilloraJ. Guerrero MartínezAna GutiérrezI. Martínez TorresA. Rosado MunozLuciano Schiaffinosubject
HistoryDeep brain stimulationWilcoxon signed-rank testbusiness.industrySpeech recognitionmedicine.medical_treatmentSupervised learning02 engineering and technologyImplant surgerynervous system diseasesComputer Science ApplicationsEducation03 medical and health sciencesSubthalamic nucleussurgical procedures operative0302 clinical medicinenervous system0202 electrical engineering electronic engineering information engineeringmedicine020201 artificial intelligence & image processingK nearest neighbourbusinesstherapeutics030217 neurology & neurosurgerydescription
Deep Brain Stimulation (DBS) applies electric pulses into the subthalamic nucleus (STN) improving tremor and other symptoms associated to Parkinson's disease. Accurate STN detection for proper location and implant of the stimulating electrodes is a complex task and surgeons are not always certain about final location. Signals from the STN acquired during DBS surgery are obtained with microelectrodes, having specific characteristics differing from other brain areas. Using supervised learning, a trained model based on previous microelectrode recordings (MER) can be obtained, being able to successfully classify the STN area for new MER signals. The K Nearest Neighbours (K-NN) algorithm has been successfully applied to STN detection. However, the use of the fuzzy form of the K-NN algorithm (KNN-F) has not been reported. This work compares the STN detection algorithm of K-NN and KNN-F. Real MER recordings from eight patients where previously classified by neurophysiologists, defining 15 features. Sensitivity and specificity for the classifiers are obtained, Wilcoxon signed rank non-parametric test is used as statistical hypothesis validation. We conclude that the performance of KNN-F classifier is higher than K-NN with p<0.01 in STN specificity.
year | journal | country | edition | language |
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2016-04-01 | Journal of Physics: Conference Series |