Combining general and personal models for epilepsy detection with hyperdimensional computing.

Artif Intell Med

Embedded Systems Laboratory (ESL), Ecole Polytechnique Federale de Lausanne (EPFL), Switzerland.

Published: February 2024

AI Article Synopsis

  • Epilepsy is a common neurological disorder that significantly affects patients' daily lives, yet current technological solutions for detection and monitoring are inadequate.
  • Hyperdimensional (HD) computing offers a more efficient approach for epilepsy detection through wearable devices, with advantages like simpler learning processes and lower memory needs compared to traditional methods.
  • The study explores innovative ways to build and enhance HD computing models for epilepsy detection, including the creation of hybrid models that improve detection accuracy and insights into individual epilepsy patterns.

Article Abstract

Epilepsy is a highly prevalent chronic neurological disorder with great negative impact on patients' daily lives. Despite this there is still no adequate technological support to enable epilepsy detection and continuous outpatient monitoring in everyday life. Hyperdimensional (HD) computing is a promising method for epilepsy detection via wearable devices, characterized by a simpler learning process and lower memory requirements compared to other methods. In this work, we demonstrate additional avenues in which HD computing and the manner in which its models are built and stored can be used to better understand, compare and create more advanced machine learning models for epilepsy detection. These possibilities are not feasible with other state-of-the-art models, such as random forests or neural networks. We compare inter-subject model similarity of different classes (seizure and non-seizure), study the process of creating general models from personal ones, and finally posit a method of combining personal and general models to create hybrid models. This results in an improved epilepsy detection performance. We also tested knowledge transfer between models trained on two different datasets. The attained insights are highly interesting not only from an engineering perspective, to create better models for wearables, but also from a neurological perspective, to better understand individual epilepsy patterns.

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Source
http://dx.doi.org/10.1016/j.artmed.2023.102754DOI Listing

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