Canine EEG Helps Human: Cross-Species and Cross-Modality Epileptic Seizure Detection via Multi-Space Alignment
- URL: http://arxiv.org/abs/2412.17842v2
- Date: Sat, 08 Feb 2025 02:43:05 GMT
- Title: Canine EEG Helps Human: Cross-Species and Cross-Modality Epileptic Seizure Detection via Multi-Space Alignment
- Authors: Z. Wang, S. Li, Dongrui Wu,
- Abstract summary: Epilepsy significantly impacts global health, affecting about 65 million people worldwide, along with various animal species.<n>Here we propose a multi-space alignment approach based on cross-species and cross-modality electroencephalogram (EEG) data to enhance the detection capabilities and understanding of epileptic seizures.
- Score: 16.44245071161907
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Epilepsy significantly impacts global health, affecting about 65 million people worldwide, along with various animal species. The diagnostic processes of epilepsy are often hindered by the transient and unpredictable nature of seizures. Here we propose a multi-space alignment approach based on cross-species and cross-modality electroencephalogram (EEG) data to enhance the detection capabilities and understanding of epileptic seizures. By employing deep learning techniques, including domain adaptation and knowledge distillation, our framework aligns cross-species and cross-modality EEG signals to enhance the detection capability beyond traditional within-species and with-modality models. Experiments on multiple surface and intracranial EEG datasets of humans and canines demonstrated substantial improvements in the detection accuracy, achieving over 90% AUC scores for cross-species and cross-modality seizure detection with extremely limited labeled data from the target species/modality. To our knowledge, this is the first study that demonstrates the effectiveness of integrating heterogeneous data from different species and modalities to improve EEG-based seizure detection performance. The approach may also be generalizable to different brain-computer interface paradigms, and suggests the possibility to combine data from different species/modalities to increase the amount of training data for large EEG models.
Related papers
- GEPD:GAN-Enhanced Generalizable Model for EEG-Based Detection of Parkinson's Disease [16.529161997551867]
This paper proposes a GAN-enhanced generalizable model, named GEPD, specifically for EEG-based cross-dataset classification of Parkinson's disease.<n>We design a generative network that creates fusion EEG data by controlling the distribution similarity between generated data and real data.<n>We also design a classification network that utilizes a combination of multiple convolutional neural networks to effectively capture the time-frequency characteristics of EEG signals.
arXiv Detail & Related papers (2025-08-12T08:37:14Z) - CognitionCapturer: Decoding Visual Stimuli From Human EEG Signal With Multimodal Information [61.1904164368732]
We propose CognitionCapturer, a unified framework that fully leverages multimodal data to represent EEG signals.
Specifically, CognitionCapturer trains Modality Experts for each modality to extract cross-modal information from the EEG modality.
The framework does not require any fine-tuning of the generative models and can be extended to incorporate more modalities.
arXiv Detail & Related papers (2024-12-13T16:27:54Z) - Quantity versus Diversity: Influence of Data on Detecting EEG Pathology with Advanced ML Models [0.0]
This study investigates the impact of quantity and diversity of data on the performance of various machine-learning models for detecting general EEG pathology.<n>We utilize an EEG dataset of 2,993 recordings from Temple University Hospital and a dataset of 55,787 recordings from Elmiko Biosignals sp. z o.o.<n>Our findings show that small and consistent datasets enable a wide range of models to achieve high accuracy; however, variations in pathological conditions, recording protocols, and labeling standards lead to significant performance degradation.
arXiv Detail & Related papers (2024-11-13T16:15:48Z) - 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) - Enhancing Angular Resolution via Directionality Encoding and Geometric Constraints in Brain Diffusion Tensor Imaging [70.66500060987312]
Diffusion-weighted imaging (DWI) is a type of Magnetic Resonance Imaging (MRI) technique sensitised to the diffusivity of water molecules.
This work proposes DirGeo-DTI, a deep learning-based method to estimate reliable DTI metrics even from a set of DWIs acquired with the minimum theoretical number (6) of gradient directions.
arXiv Detail & Related papers (2024-09-11T11:12:26Z) - Reducing Intraspecies and Interspecies Covariate Shift in Traumatic
Brain Injury EEG of Humans and Mice Using Transfer Euclidean Alignment [4.264615907591813]
High variability across subjects poses a significant challenge when it comes to deploying machine learning models for classification tasks in the real world.
In such instances, machine learning models that exhibit exceptional performance on a specific dataset may not necessarily demonstrate similar proficiency when applied to a distinct dataset for the same task.
We introduce Transfer Euclidean Alignment - a transfer learning technique to tackle the problem of the robustness of human biomedical data for training deep learning models.
arXiv Detail & Related papers (2023-10-03T19:48:02Z) - The effect of data augmentation and 3D-CNN depth on Alzheimer's Disease
detection [51.697248252191265]
This work summarizes and strictly observes best practices regarding data handling, experimental design, and model evaluation.
We focus on Alzheimer's Disease (AD) detection, which serves as a paradigmatic example of challenging problem in healthcare.
Within this framework, we train predictive 15 models, considering three different data augmentation strategies and five distinct 3D CNN architectures.
arXiv Detail & Related papers (2023-09-13T10:40:41Z) - Incomplete Multimodal Learning for Complex Brain Disorders Prediction [65.95783479249745]
We propose a new incomplete multimodal data integration approach that employs transformers and generative adversarial networks.
We apply our new method to predict cognitive degeneration and disease outcomes using the multimodal imaging genetic data from Alzheimer's Disease Neuroimaging Initiative cohort.
arXiv Detail & Related papers (2023-05-25T16:29:16Z) - CLCLSA: Cross-omics Linked embedding with Contrastive Learning and Self
Attention for multi-omics integration with incomplete multi-omics data [47.2764293508916]
Integration of heterogeneous and high-dimensional multi-omics data is becoming increasingly important in understanding genetic data.
One obstacle faced when performing multi-omics data integration is the existence of unpaired multi-omics data due to instrument sensitivity and cost.
We propose a deep learning method for multi-omics integration with incomplete data by Cross-omics Linked unified embedding with Contrastive Learning and Self Attention.
arXiv Detail & Related papers (2023-04-12T00:22:18Z) - Scalable Pathogen Detection from Next Generation DNA Sequencing with
Deep Learning [3.8175773487333857]
We propose MG2Vec, a deep learning-based solution that uses the transformer network as its backbone.
We show that the proposed approach can help detect pathogens from uncurated, real-world clinical samples.
We provide a comprehensive evaluation of a novel representation learning framework for metagenome-based disease diagnostics with deep learning.
arXiv Detail & Related papers (2022-11-30T00:13:59Z) - Differentiable Agent-based Epidemiology [71.81552021144589]
We introduce GradABM: a scalable, differentiable design for agent-based modeling that is amenable to gradient-based learning with automatic differentiation.
GradABM can quickly simulate million-size populations in few seconds on commodity hardware, integrate with deep neural networks and ingest heterogeneous data sources.
arXiv Detail & Related papers (2022-07-20T07:32:02Z) - Persistent Animal Identification Leveraging Non-Visual Markers [71.14999745312626]
We aim to locate and provide a unique identifier for each mouse in a cluttered home-cage environment through time.
This is a very challenging problem due to (i) the lack of distinguishing visual features for each mouse, and (ii) the close confines of the scene with constant occlusion.
Our approach achieves 77% accuracy on this animal identification problem, and is able to reject spurious detections when the animals are hidden.
arXiv Detail & Related papers (2021-12-13T17:11:32Z) - A Novel TSK Fuzzy System Incorporating Multi-view Collaborative Transfer
Learning for Personalized Epileptic EEG Detection [20.11589208667256]
We propose a TSK fuzzy system-based epilepsy detection algorithm that integrates multi-view collaborative transfer learning.
The proposed method has the potential to detect epileptic EEG signals effectively.
arXiv Detail & Related papers (2021-11-11T12:15:55Z) - Bootstrapping Your Own Positive Sample: Contrastive Learning With
Electronic Health Record Data [62.29031007761901]
This paper proposes a novel contrastive regularized clinical classification model.
We introduce two unique positive sampling strategies specifically tailored for EHR data.
Our framework yields highly competitive experimental results in predicting the mortality risk on real-world COVID-19 EHR data.
arXiv Detail & Related papers (2021-04-07T06:02:04Z) - Select-ProtoNet: Learning to Select for Few-Shot Disease Subtype
Prediction [55.94378672172967]
We focus on few-shot disease subtype prediction problem, identifying subgroups of similar patients.
We introduce meta learning techniques to develop a new model, which can extract the common experience or knowledge from interrelated clinical tasks.
Our new model is built upon a carefully designed meta-learner, called Prototypical Network, that is a simple yet effective meta learning machine for few-shot image classification.
arXiv Detail & Related papers (2020-09-02T02:50:30Z) - Uncovering the structure of clinical EEG signals with self-supervised
learning [64.4754948595556]
Supervised learning paradigms are often limited by the amount of labeled data that is available.
This phenomenon is particularly problematic in clinically-relevant data, such as electroencephalography (EEG)
By extracting information from unlabeled data, it might be possible to reach competitive performance with deep neural networks.
arXiv Detail & Related papers (2020-07-31T14:34:47Z)
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.