Publications by authors named "U Pale"

Article Synopsis
  • There is an increasing demand for effective automated seizure detection algorithms using EEG data due to the rise of long-term monitoring needs.
  • This paper introduces a unified framework to standardize validation methods for these algorithms, addressing the inconsistencies in datasets, methodologies, and performance measures.
  • The authors also present the EEG 10-20 seizure detection benchmark, along with an open-source software library, to help evaluate existing algorithms and enhance research in seizure detection for better outcomes for individuals with epilepsy.*
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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.
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Epilepsy is a chronic neurological disorder that affects a significant portion of the human population and imposes serious risks in the daily life. Despite advances in machine learning and IoT, small, non-stigmatizing wearable devices for continuous monitoring and detection in outpatient environments are not yet widely available. Part of the reason is the complexity of epilepsy itself, including highly imbalanced data, multimodal nature, and very subject-specific signatures.

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. Long-term monitoring of people with epilepsy based on electroencephalography (EEG) and intracranial EEG (iEEG) has the potential to deliver key clinical information for personalised epilepsy treatment. More specifically, in outpatient settings, the available solutions are not satisfactory either due to poor classification performance or high complexity to be executed in resource-constrained devices (e.

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Wearable and unobtrusive monitoring and prediction of epileptic seizures has the potential to significantly increase the life quality of patients, but is still an unreached goal due to challenges of real-time detection and wearable devices design. Hyperdimensional (HD) computing has evolved in recent years as a new promising machine learning approach, especially when talking about wearable applications. But in the case of epilepsy detection, standard HD computing is not performing at the level of other state-of-the-art algorithms.

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