Literature DB >> 35104499

Machine learning based brain signal decoding for intelligent adaptive deep brain stimulation.

Timon Merk1, Victoria Peterson2, Richard Köhler1, Stefan Haufe3, R Mark Richardson2, Wolf-Julian Neumann4.   

Abstract

Sensing enabled implantable devices and next-generation neurotechnology allow real-time adjustments of invasive neuromodulation. The identification of symptom and disease-specific biomarkers in invasive brain signal recordings has inspired the idea of demand dependent adaptive deep brain stimulation (aDBS). Expanding the clinical utility of aDBS with machine learning may hold the potential for the next breakthrough in the therapeutic success of clinical brain computer interfaces. To this end, sophisticated machine learning algorithms optimized for decoding of brain states from neural time-series must be developed. To support this venture, this review summarizes the current state of machine learning studies for invasive neurophysiology. After a brief introduction to the machine learning terminology, the transformation of brain recordings into meaningful features for decoding of symptoms and behavior is described. Commonly used machine learning models are explained and analyzed from the perspective of utility for aDBS. This is followed by a critical review on good practices for training and testing to ensure conceptual and practical generalizability for real-time adaptation in clinical settings. Finally, first studies combining machine learning with aDBS are highlighted. This review takes a glimpse into the promising future of intelligent adaptive DBS (iDBS) and concludes by identifying four key ingredients on the road for successful clinical adoption: i) multidisciplinary research teams, ii) publicly available datasets, iii) open-source algorithmic solutions and iv) strong world-wide research collaborations.
Copyright © 2022 The Authors. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Adaptive deep brain stimulation; Brain-computer interface; Closed-loop DBS; Movement disorders; Neural decoding; Real-time classification

Mesh:

Year:  2022        PMID: 35104499     DOI: 10.1016/j.expneurol.2022.113993

Source DB:  PubMed          Journal:  Exp Neurol        ISSN: 0014-4886            Impact factor:   5.330


  3 in total

1.  Electrocorticography is superior to subthalamic local field potentials for movement decoding in Parkinson's disease.

Authors:  Robert Mark Richardson; Wolf-Julian Neumann; Timon Merk; Victoria Peterson; Witold J Lipski; Benjamin Blankertz; Robert S Turner; Ningfei Li; Andreas Horn
Journal:  Elife       Date:  2022-05-27       Impact factor: 8.713

2.  Automatic extraction of upper-limb kinematic activity using deep learning-based markerless tracking during deep brain stimulation implantation for Parkinson's disease: A proof of concept study.

Authors:  Sunderland Baker; Anand Tekriwal; Gidon Felsen; Elijah Christensen; Lisa Hirt; Steven G Ojemann; Daniel R Kramer; Drew S Kern; John A Thompson
Journal:  PLoS One       Date:  2022-10-20       Impact factor: 3.752

Review 3.  Clinical neurophysiology of Parkinson's disease and parkinsonism.

Authors:  Robert Chen; Alfredo Berardelli; Amitabh Bhattacharya; Matteo Bologna; Kai-Hsiang Stanley Chen; Alfonso Fasano; Rick C Helmich; William D Hutchison; Nitish Kamble; Andrea A Kühn; Antonella Macerollo; Wolf-Julian Neumann; Pramod Kumar Pal; Giulia Paparella; Antonio Suppa; Kaviraja Udupa
Journal:  Clin Neurophysiol Pract       Date:  2022-06-30
  3 in total

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