Inception networks, Data Augmentation and Transfer Learning in EEG-based photosensitivity diagnosis
Fernando Moncada Martins, V\'ictor M. Gonz\'alez, Jos\'e R. Villar,, Beatriz Garc\'ia L\'opez, and Ana Isabel G\'omez-Men\'endez

TL;DR
This paper introduces an Inception-based deep learning approach with transfer learning and data augmentation to improve automatic detection of photosensitivity responses in EEG data, outperforming existing methods.
Contribution
It presents a novel application of Inception neural networks combined with transfer learning and data augmentation for PPR detection in EEG, addressing class imbalance and improving performance.
Findings
Data augmentation significantly increased sensitivity.
The proposed model outperformed state-of-the-art methods.
Transfer learning improved model training efficiency.
Abstract
Photosensitivity refers to a neurophysiological condition in which the brain generates epileptic discharges known as Photoparoxysmal Responses (PPR) in response to light flashes.In severe cases, these PPR can lead to epileptic seizures. The standardized diagnostic procedure for this condition is called Intermittent Photic Stimulation. During this procedure, the patient is exposed to a flashing light, aiming to trigger these epileptic reactions while preventing their full development. Meanwhile, brain activity is monitored using Electroencephalography, which is visually analyzed by clinical staff to identify these responses. Hence, the automatic detection of PPR becomes a highly unbalanced problem that has been barely studied in the literature due to photosensitivity's low prevalence. This research tackles this problem and proposes using Inception-based Deep Learning (DL) neural networks…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Advanced Computing and Algorithms · Advanced Chemical Sensor Technologies
