Detection of evoked resonant neural activity in Parkinson's disease.
Wee-Lih LeeNicole WardMatthew PetoeAshton MoorheadKiaran Kohtaro Katori LawsonSan San XuKristian BullussWesley ThevathasanHugh McDermottThushara PereraPublished in: Journal of neural engineering (2024)
Objective . This study investigated a machine-learning approach to detect the presence of evoked resonant neural activity (ERNA) recorded during deep brain stimulation (DBS) of the subthalamic nucleus (STN) in people with Parkinson's disease. Approach . Seven binary classifiers were trained to distinguish ERNA from the background neural activity using eight different time-domain signal features. Main results . Nested cross-validation revealed a strong classification performance of 99.1% accuracy, with 99.6% specificity and 98.7% sensitivity to detect ERNA. Using a semi-simulated ERNA dataset, the results show that a signal-to-noise ratio of 15 dB is required to maintain a 90% classifier sensitivity. ERNA detection is feasible with an appropriate combination of signal processing, feature extraction and classifier. Future work should consider reducing the computational complexity for use in real-time applications. Significance . The presence of ERNA can be used to indicate the location of a DBS electrode array during implantation surgery. The confidence score of the detector could be useful for assisting clinicians to adjust the position of the DBS electrode array inside/outside the STN.
Keyphrases
- deep brain stimulation
- parkinson disease
- machine learning
- obsessive compulsive disorder
- deep learning
- high throughput
- palliative care
- air pollution
- label free
- loop mediated isothermal amplification
- coronary artery bypass
- carbon nanotubes
- big data
- single cell
- real time pcr
- computed tomography
- ionic liquid
- coronary artery disease
- current status
- magnetic resonance
- surgical site infection
- atomic force microscopy
- single molecule
- monte carlo