Knowledge-Distilled Graph Neural Networks for Personalized Epileptic
Seizure Detection
- URL: http://arxiv.org/abs/2304.06038v1
- Date: Mon, 3 Apr 2023 15:37:40 GMT
- Title: Knowledge-Distilled Graph Neural Networks for Personalized Epileptic
Seizure Detection
- Authors: Qinyue Zheng, Arun Venkitaraman, Simona Petravic, and Pascal Frossard
- Abstract summary: We propose a novel knowledge distillation approach to transfer the knowledge from a sophisticated seizure detector (called the teacher) trained on data from the full set of electrodes to learn new detectors (called the student)
They are both providing lightweight implementations and significantly reducing the number of electrodes needed for recording the EEG.
Our experiments show that both knowledge-distillation and personalization play significant roles in improving performance of seizure detection, particularly for patients with scarce EEG data.
- Score: 43.905374104261014
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Wearable devices for seizure monitoring detection could significantly improve
the quality of life of epileptic patients. However, existing solutions that
mostly rely on full electrode set of electroencephalogram (EEG) measurements
could be inconvenient for every day use. In this paper, we propose a novel
knowledge distillation approach to transfer the knowledge from a sophisticated
seizure detector (called the teacher) trained on data from the full set of
electrodes to learn new detectors (called the student). They are both providing
lightweight implementations and significantly reducing the number of electrodes
needed for recording the EEG. We consider the case where the teacher and the
student seizure detectors are graph neural networks (GNN), since these
architectures actively use the connectivity information. We consider two cases
(a) when a single student is learnt for all the patients using preselected
channels; and (b) when personalized students are learnt for every individual
patient, with personalized channel selection using a Gumbelsoftmax approach.
Our experiments on the publicly available Temple University Hospital EEG
Seizure Data Corpus (TUSZ) show that both knowledge-distillation and
personalization play significant roles in improving performance of seizure
detection, particularly for patients with scarce EEG data. We observe that
using as few as two channels, we are able to obtain competitive seizure
detection performance. This, in turn, shows the potential of our approach in
more realistic scenario of wearable devices for personalized monitoring of
seizures, even with few recordings.
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