Special Issue on Epilepsy and Neural Engineering

Guest Editors

Xiao Hu Duke University, USA
Sheela Toprani UC Davis, USA
Carolina Varon Université Libre de Bruxelles, Belgium
Dezhong Yao University of Electronic Science and Technology of China, China

Introduction

Epilepsy, characterized by an enduring predisposition to seizures, is one of the most common neurological diseases globally. It is a network phenomenon of dynamic circuits, accompanied by neuropsychological symptoms, such as depression and memory loss, which compromise quality of life (QOL). The occurrence of seizures, in its turn, has been associated with factors of daily life, including stress; quality and quantity of sleep; and hydration.

Patients' quality of life can significantly improve with better diagnosis, treatment definitions, and solutions, not only in the hospital setting, but also at home. To achieve this, multiple challenges and opportunities need to be tackled. For instance, surgery is effective in eligible patients, achieving 65-90% seizure freedom, but comes with irreversible loss of parts of the brain. In fact, 4/5 of epilepsy patients worldwide are not eligible for surgical resection. Furthermore, the emergence of tools to measure global and local brain connectivity enable the development of network-guided therapies. Wearable technology and mobile health applications, on the other hand, can monitor patients' seizures and epilepsy effects on autonomic nervous and systemic systems as well as how both are affected by minute-to-minute life changes. This enables tailoring of therapy to the way that patients' unique lifestyles interact with their epilepsy symptoms and can bridge safe transitions following hospital discharge.

The goal of this special joint focus issue between Journal of Neural Engineering and Physiological Measurement is to bring together engineering approaches to epilepsy in urgent hospital settings as well as outpatient and home environments.

Scope

In this special joint issue of Physiological Measurement and Journal of Neural Engineering, we are interested in engineering and data sciences solutions to epilepsy, including monitoring and treatment of severe disease in the hospital as well as improvement of daily life of people living with epilepsy. We invite authors to submit papers solving problems of obtaining and decoding neural signals in hospitalized patients as well as novel treatments derived from engineering solutions to the Journal of Neural Engineering. Authors who are advancing the field of wearable technologies and mobile health systems for new approaches to identifying; quantifying; tracking; and mitigating seizures are encouraged to contribute their work to Physiological Measurement. The scope of the joint special issue includes:

Journal of Neural Engineering:

  • Innovative methods of obtaining EEG intracranially or extracranially in hospital settings
  • Novel algorithms in parsing out and analyzing EEG
  • Novel algorithms for interpreting EEG signals in relation to physiological signals of health and disease
  • Studies on structural and dynamical aspects of EEG that provide insights to dynamic brain networks, how they may be altered in epilepsy, and how wellbeing may be restored
  • Novel treatments, including machine learning techniques, utilizing signal decoding to inform improved seizure reduction

Physiological Measurement:

  • Novel algorithms for screening, diagnosing, and tracking seizures or epilepsy comorbid symptoms, in particular those solely using or incorporating physiological measurements not of an apparent neurological origin
  • Tools for supporting the management of outpatients' epilepsy
  • Develop and validation of novel wearable sensors in the context of epilepsy management
  • Platforms and infrastructure for large scale epilepsy data acquisition, storage, and access
  • Assessment of consumer level devices, and proprietary algorithms compared to benchmark systems for epilepsy
  • Novel algorithms, biosensors, and processes for intelligent remote health monitoring and for the purpose of designing individualized therapy

Physiological Measurement

Seizure forecasting using machine learning models trained by seizure diaries

Ezequiel Gleichgerrcht et al 2022 Physiol. Meas. 43 124003

Open access
Seizures detection using multimodal signals: a scoping review

Fangyi Chen et al 2022 Physiol. Meas. 43 07TR01

Machine learning to support triage of children at risk for epileptic seizures in the pediatric intensive care unit

Raphael Azriel et al 2022 Physiol. Meas. 43 095003

Journal of Neural Engineering

Pairwise and higher-order measures of brain-heart interactions in children with temporal lobe epilepsy

Riccardo Pernice et al 2022 J. Neural Eng. 19 045002

Experimental and simulation studies of localization and decoding of single and double dipoles

Hao Zhang et al 2022 J. Neural Eng. 19 025002

Neuroimaging gradient alterations and epileptogenic prediction in focal cortical dysplasia IIIa

Jiajie Mo et al 2022 J. Neural Eng. 19 025001

Submission process

To submit your article to Journal of Neural Engineering please submit here. In Step 1, where the form asks the article type please select 'Special Issue Article'. At the bottom of the page please then select "Epilepsy and Neural Engineering" in the 'Select Special Issue' drop down box.

To submit your article to Physiological Measurement please submit here. In Step 1, where the form asks the article type please select 'Special Issue Article'. At the bottom of the page please then select "Epilepsy and Neural Engineering" in the 'Select Special Issue' drop down box.

Deadline for submissions

Submissions will be accepted until 30 April 2022 however submissions earlier than this date are encouraged.

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