| Literature DB >> 32308908 |
Xiaojin Li1,2,3, Yan Huang1,2, Shiqiang Tao1, Licong Cui1, Samden D Lhatoo1, Guo-Qiang Zhang1.
Abstract
Approximately 60 million people worldwide suffer from epileptic seizures. A key challenge in machine learning ap proaches for epilepsy research is the lack of a data resource of analysis-ready (no additional preprocessing is needed when using the data for developing computational methods) seizure signal datasets with associated tools for seizure data management and visualization. We introduce SeizureBank, a web-based data management and visualization system for epileptic seizures. SeizureBank comes with a built-in seizure data preparation pipeline and web-based interfaces for querying, exporting and visualizing seizure-related signal data. In this pilot study, 224 seizures from 115 patients were extracted from over one terabyte of signal data and deposited in SeizureBank. To demonstrate the value of this approach, we develop a feature-based seizure identification approach and evaluate the performance on a variety of data sources. The results can serve as a cross-dataset evaluation benchmark for future seizure identification studies. ©2019 AMIA - All rights reserved.Entities:
Year: 2020 PMID: 32308908 PMCID: PMC7153150
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076