Staging Epileptogenesis with Deep Neural Networks
- URL: http://arxiv.org/abs/2006.09885v1
- Date: Wed, 17 Jun 2020 14:08:12 GMT
- Title: Staging Epileptogenesis with Deep Neural Networks
- Authors: Diyuan Lu, Sebastian Bauer, Valentin Neubert, Lara Sophie Costard,
Felix Rosenow, Jochen Triesch
- Abstract summary: The process of structural and functional brain alterations leading to increased seizure susceptibility is called epileptogenesis (EPG)
We propose an approach for staging EPG using deep neural networks and identify potential electroencephalography (EEG) biomarkers to distinguish different phases of EPG.
- Score: 4.958589793470847
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Epilepsy is a common neurological disorder characterized by recurrent
seizures accompanied by excessive synchronous brain activity. The process of
structural and functional brain alterations leading to increased seizure
susceptibility and eventually spontaneous seizures is called epileptogenesis
(EPG) and can span months or even years. Detecting and monitoring the
progression of EPG could allow for targeted early interventions that could slow
down disease progression or even halt its development. Here, we propose an
approach for staging EPG using deep neural networks and identify potential
electroencephalography (EEG) biomarkers to distinguish different phases of EPG.
Specifically, continuous intracranial EEG recordings were collected from a
rodent model where epilepsy is induced by electrical perforant pathway
stimulation (PPS). A deep neural network (DNN) is trained to distinguish EEG
signals from before stimulation (baseline), shortly after the PPS and long
after the PPS but before the first spontaneous seizure (FSS). Experimental
results show that our proposed method can classify EEG signals from the three
phases with an average area under the curve (AUC) of 0.93, 0.89, and 0.86. To
the best of our knowledge, this represents the first successful attempt to
stage EPG prior to the FSS using DNNs.
Related papers
- From Epilepsy Seizures Classification to Detection: A Deep Learning-based Approach for Raw EEG Signals [0.8182812460605992]
One-third of people suffering from mesial temporal lobe epilepsy exhibit drug resistance.
Key part in anti-seizure medication development is the capability of detecting and quantifying epileptic seizures.
In this study, we introduced a seizure detection pipeline based on deep learning models applied to raw EEG signals.
arXiv Detail & Related papers (2024-10-04T12:52:37Z) - BrainNet: Epileptic Wave Detection from SEEG with Hierarchical Graph
Diffusion Learning [21.689503325383253]
We propose the first data-driven study to detect epileptic waves in a real-world SEEG dataset.
In clinical practice, epileptic wave activities are considered to propagate between different regions in the brain.
The question of how to extract an exact epileptogenic network for each patient remains an open problem in the field of neuroscience.
arXiv Detail & Related papers (2023-06-15T08:29:10Z) - Supervised and Unsupervised Deep Learning Approaches for EEG Seizure
Prediction [2.3096751699592137]
Epilepsy affects more than 50 million people worldwide, making it one of the world's most prevalent neurological diseases.
The ability to predict the occurrence of an epileptic seizure could alleviate many risks and stresses people with epilepsy face.
We formulate the problem of detecting preictal (or pre-seizure) with reference to normal EEG as a precursor to incoming seizure.
arXiv Detail & Related papers (2023-04-24T05:21:10Z) - fMRI from EEG is only Deep Learning away: the use of interpretable DL to
unravel EEG-fMRI relationships [68.8204255655161]
We present an interpretable domain grounded solution to recover the activity of several subcortical regions from multichannel EEG data.
We recover individual spatial and time-frequency patterns of scalp EEG predictive of the hemodynamic signal in the subcortical nuclei.
arXiv Detail & Related papers (2022-10-23T15:11:37Z) - Task-oriented Self-supervised Learning for Anomaly Detection in
Electroencephalography [51.45515911920534]
A task-oriented self-supervised learning approach is proposed to train a more effective anomaly detector.
A specific two branch convolutional neural network with larger kernels is designed as the feature extractor.
The effectively designed and trained feature extractor has shown to be able to extract better feature representations from EEGs.
arXiv Detail & Related papers (2022-07-04T13:15:08Z) - DriPP: Driven Point Processes to Model Stimuli Induced Patterns in M/EEG
Signals [62.997667081978825]
We develop a novel statistical point process model-called driven temporal point processes (DriPP)
We derive a fast and principled expectation-maximization (EM) algorithm to estimate the parameters of this model.
Results on standard MEG datasets demonstrate that our methodology reveals event-related neural responses.
arXiv Detail & Related papers (2021-12-08T13:07:21Z) - SOUL: An Energy-Efficient Unsupervised Online Learning Seizure Detection
Classifier [68.8204255655161]
Implantable devices that record neural activity and detect seizures have been adopted to issue warnings or trigger neurostimulation to suppress seizures.
For an implantable seizure detection system, a low power, at-the-edge, online learning algorithm can be employed to dynamically adapt to neural signal drifts.
SOUL was fabricated in TSMC's 28 nm process occupying 0.1 mm2 and achieves 1.5 nJ/classification energy efficiency, which is at least 24x more efficient than state-of-the-art.
arXiv Detail & Related papers (2021-10-01T23:01:20Z) - EEG-GCNN: Augmenting Electroencephalogram-based Neurological Disease
Diagnosis using a Domain-guided Graph Convolutional Neural Network [0.21756081703275995]
This paper presents a novel graph convolutional neural network (GCNN)-based approach for improving the diagnosis of neurological diseases using scalp-electroencephalograms (EEGs)
We present EEG-GCNN, a novel GCNN model for EEG data that captures both the spatial and functional connectivity between the scalp electrodes.
We demonstrate that EEG-GCNN significantly outperforms the human baseline and classical machine learning (ML) baselines, with an AUC of 0.90.
arXiv Detail & Related papers (2020-11-17T20:25:28Z) - Towards Early Diagnosis of Epilepsy from EEG Data [4.958589793470847]
Epilepsy is one of the most common neurological disorders, affecting about 1% of the population at all ages.
Here, we investigate if modern machine learning (ML) techniques can detect epileptogenesis (EPG) prior to the occurrence of any seizures.
We propose a ML framework for EPG identification, which combines a deep convolutional neural network (CNN) with a prediction aggregation method to obtain the final classification decision.
arXiv Detail & Related papers (2020-06-11T21:04:54Z) - Detecting Parkinsonian Tremor from IMU Data Collected In-The-Wild using
Deep Multiple-Instance Learning [59.74684475991192]
Parkinson's Disease (PD) is a slowly evolving neuro-logical disease that affects about 1% of the population above 60 years old.
PD symptoms include tremor, rigidity and braykinesia.
We present a method for automatically identifying tremorous episodes related to PD, based on IMU signals captured via a smartphone device.
arXiv Detail & Related papers (2020-05-06T09:02:30Z) - Equilibrium Propagation with Continual Weight Updates [69.87491240509485]
We propose a learning algorithm that bridges Machine Learning and Neuroscience, by computing gradients closely matching those of Backpropagation Through Time (BPTT)
We prove theoretically that, provided the learning rates are sufficiently small, at each time step of the second phase the dynamics of neurons and synapses follow the gradients of the loss given by BPTT.
These results bring EP a step closer to biology by better complying with hardware constraints while maintaining its intimate link with backpropagation.
arXiv Detail & Related papers (2020-04-29T14:54:30Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.