Feature selection before EEG classification supports the diagnosis of Alzheimer's disease

Clin Neurophysiol. 2017 Oct;128(10):2058-2067. doi: 10.1016/j.clinph.2017.06.251. Epub 2017 Jul 14.

Abstract

Objective: In many decision support systems, some input features can be marginal or irrelevant to the diagnosis, while others can be redundant among each other. Thus, feature selection (FS) algorithms are often considered to find relevant/non-redundant features. This study aimed to evaluate the relevance of FS approaches applied to Alzheimer's Disease (AD) EEG-based diagnosis and compare the selected features with previous clinical findings.

Methods: Eight different FS algorithms were applied to EEG spectral measures from 22 AD patients and 12 healthy age-matched controls. The FS contribution was evaluated by considering the leave-one-subject-out accuracy of Support Vector Machine classifiers built in the datasets described by the selected features.

Results: The Filtered Subset Evaluator technique achieved the best performance improvement both on a per-patient basis (91.18% of accuracy) and on a per-epoch basis (85.29±21.62%), after removing 88.76±1.12% of the original features. All algorithms found out that alpha and beta bands are relevant features, which is in agreement with previous findings from the literature.

Conclusion: Biologically plausible EEG datasets could achieve improved accuracies with pre-processing FS steps.

Significance: The results suggest that the FS and classification techniques are an attractive complementary tool in order to reveal potential biomarkers aiding the AD clinical diagnosis.

Keywords: Alzheimer's disease; Dementia; Electroencephalography; Feature selection; Pattern recognition.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Aged
  • Aged, 80 and over
  • Algorithms*
  • Alzheimer Disease / classification*
  • Alzheimer Disease / diagnosis*
  • Electroencephalography / classification*
  • Electroencephalography / methods
  • Female
  • Humans
  • Machine Learning / classification*
  • Male
  • Middle Aged