Automatic epileptic seizure detection using scalp EEG and advanced artificial intelligence techniques.

Journal: BioMed research international
PMID:

Abstract

The epilepsies are a heterogeneous group of neurological disorders and syndromes characterised by recurrent, involuntary, paroxysmal seizure activity, which is often associated with a clinicoelectrical correlate on the electroencephalogram. The diagnosis of epilepsy is usually made by a neurologist but can be difficult to be made in the early stages. Supporting paraclinical evidence obtained from magnetic resonance imaging and electroencephalography may enable clinicians to make a diagnosis of epilepsy and investigate treatment earlier. However, electroencephalogram capture and interpretation are time consuming and can be expensive due to the need for trained specialists to perform the interpretation. Automated detection of correlates of seizure activity may be a solution. In this paper, we present a supervised machine learning approach that classifies seizure and nonseizure records using an open dataset containing 342 records. Our results show an improvement on existing studies by as much as 10% in most cases with a sensitivity of 93%, specificity of 94%, and area under the curve of 98% with a 6% global error using a k-class nearest neighbour classifier. We propose that such an approach could have clinical applications in the investigation of patients with suspected seizure disorders.

Authors

  • Paul Fergus
    Applied Computing Research Group, Liverpool John Moores University, Byrom Street, Liverpool L3 3AF, UK.
  • David Hignett
    Applied Computing Research Group, Liverpool John Moores University, Byrom Street, Liverpool L3 3AF, UK.
  • Abir Hussain
    Applied Computing Research Group, Liverpool John Moores University, Byrom Street, Liverpool L3 3AF, UK.
  • Dhiya Al-Jumeily
    Applied Computing Research Group, Liverpool John Moores University, Byrom Street, Liverpool L3 3AF, UK.
  • Khaled Abdel-Aziz
    The Walton Centre NHS Foundation Trust, Lower Lane, Fazakerley, Liverpool L9 7LJ, UK.