Automated Multiclass Classification of Spontaneous EEG Activity in Alzheimer's Disease and Mild Cognitive Impairment.
Saúl J Ruiz-GómezCarlos Alberto Gómez-MercadoJesús PozaGonzalo C Gutiérrez-TobalMiguel A Tola-ArribasMónica CanoRoberto HorneroPublished in: Entropy (Basel, Switzerland) (2018)
The discrimination of early Alzheimer's disease (AD) and its prodromal form (i.e., mild cognitive impairment, MCI) from cognitively healthy control (HC) subjects is crucial since the treatment is more effective in the first stages of the dementia. The aim of our study is to evaluate the usefulness of a methodology based on electroencephalography (EEG) to detect AD and MCI. EEG rhythms were recorded from 37 AD patients, 37 MCI subjects and 37 HC subjects. Artifact-free trials were analyzed by means of several spectral and nonlinear features: relative power in the conventional frequency bands, median frequency, individual alpha frequency, spectral entropy, Lempel-Ziv complexity, central tendency measure, sample entropy, fuzzy entropy, and auto-mutual information. Relevance and redundancy analyses were also conducted through the fast correlation-based filter (FCBF) to derive an optimal set of them. The selected features were used to train three different models aimed at classifying the trials: linear discriminant analysis (LDA), quadratic discriminant analysis (QDA) and multi-layer perceptron artificial neural network (MLP). Afterwards, each subject was automatically allocated in a particular group by applying a trial-based majority vote procedure. After feature extraction, the FCBF method selected the optimal set of features: individual alpha frequency, relative power at delta frequency band, and sample entropy. Using the aforementioned set of features, MLP showed the highest diagnostic performance in determining whether a subject is not healthy (sensitivity of 82.35% and positive predictive value of 84.85% for HC vs. all classification task) and whether a subject does not suffer from AD (specificity of 79.41% and negative predictive value of 84.38% for AD vs. all comparison). Our findings suggest that our methodology can help physicians to discriminate AD, MCI and HC.
Keyphrases
- mild cognitive impairment
- cognitive decline
- neural network
- machine learning
- deep learning
- functional connectivity
- end stage renal disease
- resting state
- working memory
- chronic kidney disease
- primary care
- ejection fraction
- optical coherence tomography
- newly diagnosed
- magnetic resonance
- minimally invasive
- clinical trial
- randomized controlled trial
- high throughput
- magnetic resonance imaging
- computed tomography
- mass spectrometry
- combination therapy
- health information
- phase ii