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HFO Ehfo

Developed by roychowdhuryresearch
A set of machine learning models specifically designed for classifying high-frequency oscillations (HFOs) in neural signals, used in epilepsy and brain function research.
Downloads 18
Release Time : 1/25/2025

Model Overview

This model includes three sub-models for artifact detection, spkHFO detection, and eHFO detection, aiming to assist researchers and clinicians in efficiently analyzing HFOs.

Model Features

End-to-End Classification Pipeline
Covers artifact removal, spkHFO detection, and eHFO detection, simplifying the HFO analysis process.
Cutting-Edge Model Architecture
Built with advanced deep learning techniques to ensure high accuracy and robustness.
User-Friendly API Interface
Models can be directly loaded via Hugging Face's transformers library, seamlessly integrating into research pipelines.

Model Capabilities

Neural Signal Classification
Artifact Detection
Specific HFO Subtype Identification

Use Cases

Medical Research
Epilepsy Research
Identifying epileptogenic brain regions by detecting eHFOs
Brain Function Analysis
Analyzing brain functional activity through spkHFOs
Clinical Diagnosis
Epilepsy Auxiliary Diagnosis
Assisting epilepsy diagnosis through HFOs analysis
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