EEG-based Brain Connectivity Analysis for Identifying Neurodevelopmental Disorders
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Saudi Digital Library
Abstract
This dissertation aims to identify the neurological biomarkers that could assist in providing
reliable, automated and objective prediction of neurodevelopmental disorders
(NDDs) in early infancy. Quantitative electroencephalography analysis (qEEG), mainly
phase synchronisation-based functional brain connectivity estimated using phase locking
value (PLV) and weighted phase lag index (WPLI), were investigated to deduce
whether it can be used for the early prediction of such disorders. The resulting connectivity
network was quantitatively characterised using complex graph-theoretical features,
namely transitivity, global efficiency, radius, diameter, and characteristic path
length. These features were then fed into the machine learning algorithms such as
linear discriminant analysis (LDA), support vector machine (SVM), decision tree and
k-nearest neighbour to examine their discriminant capability in classifying /predicting
NDDs. The proposed framework has gained initial validation in classifying autism
spectrum disorders (ASD) from an experimentally obtained EEG data set of 24 children.
Then, the framework was utilised to predict the appearance of cerebral palsy (CP) at
two years of age. The EEG data were recorded within the first week after birth from a
cohort of infants born with hypoxic-ischaemic encephalopathy (HIE). The exploration
results revealed that the proposed analytical methodology successfully predicted the
infants that would develop CP with a performance of 84.6% accuracy, 83% sensitivity,
85% specificity, 84% balanced accuracy and 0.85 area under the curve (AUC) in the
delta band, with a close result also obtained in the theta and alpha bands. The WPLI
and graph parameters were then used to predict the cognitive scores of infants born
with HIE by developing the regression framework correlating these EEG features and
a cognitive profile completed in a follow-up assessment at two years of age. The regression
analysis showed that the radius feature yielded the best performance (root mean
square error (RMSE)= 16.78, mean absolute error (MAE)= 12.07 and R-squared= 0.24).
Although this study has successfully demonstrated that the qEEG features could be
considered potential biomarkers for identifying the brain deficits causing the NDDs, it
has a certain limitation due to the size of the data set. It needs to be validated on large
trials with a statistically significant population.