局部场电位
刺激(心理学)
人工智能
模式识别(心理学)
丘脑底核
减法
计算机科学
脑深部刺激
计算机视觉
数学
神经科学
心理学
帕金森病
医学
算术
病理
心理治疗师
疾病
作者
Tzu-Chi Liu,Yi‐Chieh Chen,Po‐Lin Chen,Po‐Hsun Tu,Chih‐Hua Yeh,Mun-Chun Yeap,Yi-Hui Wu,Chiung-Chu Chen,Hau‐Tieng Wu
标识
DOI:10.1016/j.jneumeth.2023.110038
摘要
Deep brain stimulation (DBS) is an effective treatment for movement disorders such as Parkinson's disease (PD). However, local field potentials (LFPs) recorded through lead externalization during high-frequency stimulation (HFS) are contaminated by stimulus artifacts, which require to be removed before further analysis.In this study, a novel stimulus artifact removal algorithm based on manifold denoising, termed Shrinkage and Manifold-based Artifact Removal using Template Adaptation (SMARTA), was proposed to remove artifacts by deriving a template for each stimulus artifact and subtracting it from the signal. Under a low-dimensional manifold assumption, a matrix denoising technique called optimal shrinkage was applied to design a similarity metric such that the template for stimulus artifacts could be accurately recovered.SMARTA was evaluated using semirealistic signals, which were the combination of semirealistic stimulus artifacts recorded in an agar brain model and LFPs of PD patients with no stimulation, and realistic LFP signals recorded in patients with PD during HFS. The results indicated that SMARTA removes stimulus artifacts with a modest distortion in LFP estimates.SMARTA was compared with moving-average subtraction, sample-and-interpolate technique, and Hampel filtering.The proposed SMARTA algorithm helps the exploration of the neurophysiological mechanisms of DBS effects.
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