StrokeSight: A Novel EEG-Based Diagnostic System for Strokes Using Spectral Analysis and Deep Learning
Rohan Kalahasty, Lakshmi Sritan Motati

TL;DR
StrokeSight is an innovative EEG-based system that rapidly diagnoses stroke types, locations, and severity using spectral analysis and deep learning, potentially transforming stroke diagnosis by making it faster, cheaper, and more accessible.
Contribution
The paper introduces StrokeSight, a novel open-source web application that uses spectral analysis and deep learning to diagnose strokes from EEG data within 50 seconds, outperforming traditional methods.
Findings
Achieved 97.5% accuracy in stroke type prediction
Achieved 94.4% accuracy in stroke location prediction
Achieved 100% accuracy in stroke severity classification
Abstract
A stroke is defined as a neurologic deficit arising from an interruption in blood supply to the brain. According to the World Health Organization, over 15 million people suffer from strokes annually, of which almost 70% die or are permanently disabled. Effective treatment must be administered within one hour to prevent irreversible brain damage. Unfortunately, the current gold standards for diagnosis, CT and MRI, are time-consuming, expensive, and immobile. Electroencephalograms reveal biomarkers of strokes while being inexpensive and available for remote use, but no system exists that utilizes them for this purpose. To address this issue, we created StrokeSight, a novel, open-source web application that automatically provides a full diagnosis and visualization of ischemic and hemorrhagic strokes in under 50 seconds using 60-second electroencephalograms. We first calculated the averaged…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Brain Tumor Detection and Classification · ECG Monitoring and Analysis
