Detection of developmental deficits in epileptic children using multimodal tensor decomposition techniques
dc.contributor.advisor
Escudero Rodriguez, Javier
dc.contributor.advisor
Chin, Richard
dc.contributor.advisor
Jia, Jiabin
dc.contributor.author
Dron, Noramon
dc.date.accessioned
2024-01-22T13:35:56Z
dc.date.available
2024-01-22T13:35:56Z
dc.date.issued
2024-01-22
dc.description.abstract
Early childhood epilepsy can affect the child’s development and lead to developmental deficits.
Early detection and intervention are key to enabling the child to develop normally. Resting
state electroencephalogram (EEG) and Magnetic resonance imaging (MRI) are the main tools
clinicians use to diagnose children with epilepsy. This motivates us to take advantage of
these available data and jointly analyse them to explore the features related to developmental
deficits and predict the developmental scores of newly-onset patients. In particular, our work
considers EEG information, sMRI volumetric data, and psychometric evaluation scores. We
use matrix-tensor decompositions to analyse the shared features between each modality all
at once. This allows us to investigate the occurrence of shared profiles in EEG and sMRI
related to developmental impairment. Hence, this thesis develops data fusion methods based
on well-established tensor decomposition methods (canonical polyadic decomposition, CPD;
block term decomposition, BTD; and Tucker decomposition, TD). The methods are validated
in a publicly available dataset with healthy children (Child Mind Institute: CMI) and, more
importantly, in a local dataset of preschool children with epilepsy (NEUROPROFILE: Neu).
First, the thesis focuses on a CPD data fusion model, which decomposes the multi-way data
into a sum of rank-one factor matrices with the subject factor shared across three modalities.
The model is optimised via grid search. The CPD model reveals distinct features associated
with developmental deficits that agree with prior clinical knowledge. Then, we expand the
model through direct projection to predict the developmental scores from EEG and sMRI
data. A support vector machine (SVM) is used as a benchmark to compare the predicted score
performance. The result reveals CPD model is better at estimating the developmental scores
than the SVM. The CPD shows the feasibility of score prediction but still lacks the ability to
correctly identify the deficits, which highlights the need for a more flexible data fusion model.
Next, the thesis adopts block term decomposition (BTD) to bring in additional flexibility in the
modelling of the EEG tensor data. In BTD (Lᵣ,Lᵣ, 1), one mode of interest is fixed to rank
one while the others vary together to rank L. Subjects with missing scores and more sMRI
regions and sub-scores are included in this analysis. Bayesian optimisation is applied to reduce
the hyperparameter optimisation time. The results show that BTD (Lᵣ,Lᵣ, 1) can extract
additional features related to the deficits that the CPD model does not pick up. Then, we built
a model to predict the developmental scores. Overall, the prediction from BTD is generally
better than the CPD. However, the result shows both models may not be fully compatible with
EEG tensors and suggests the need for a better-fit model.
Therefore, we adopt TD as a flexible model for the EEG data. TD can decompose tensors into
factor matrices with different ranks interacting through a core tensor. However, TD without
constraints is not unique. Thus, we promote the sparseness in the TD core tensor in our
joint decomposition. In addition, we use structural connectivity information in the form of
diffusion tensor imaging (DTI) as a graph regularisation to the data fusion model to promote
interpretability. The effects of each constraint are investigated, and the most stable result is
extended to predict the scores. Since not all the patients have DTI data, the score prediction is
executed for both patients with and without DTI. Implementing the DTI graph regularisation
is found to result in predicted scores in a more plausible range. The sparse core TD with graph
regularisation performs best with the Neu dataset. However, some deficit patients are estimated
to score within the normal range, which does not fulfil the aim of identifying deficits accurately.
In addition, and given that the BTD (Lᵣ,Lᵣ, 1) tensor decomposition is closely related to
CPD, we investigate and expand the existing principle of CPD core consistency diagnosis
(CORCONDIA) to BTD (Lᵣ,Lᵣ, 1). BTDCORCONDIA is built to assist in determining
the number of components and the data compatibility to the model. The model is tested
with simulated and real EEG tensor data. We show that data generated with a unique core
compatible with BTD (Lᵣ,Lᵣ, 1) results in BTDCORCONDIA values of ∼ 100%. In contrast,
incompatible data will lead to low values. The result confirms that it is possible to perform a
core consistency diagnosis to check the compatibility between the model and data in BTD.
In summary, multimodal data fusion of paediatric brain data through matrix-tensor
decomposition offers a new approach to studying the shared underlying profiles and
developmental status of children with neurological diseases such as epilepsy. This could be
a stepping stone for future research seeking to integrate and adopt data fusion approaches
as additional tools for clinicians to prioritise children for an exhaustive assessment of their development.
en
dc.identifier.uri
https://hdl.handle.net/1842/41365
dc.identifier.uri
http://dx.doi.org/10.7488/era/4099
dc.language.iso
en
en
dc.publisher
The University of Edinburgh
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dc.relation.hasversion
Dron, N., Kinney-Lang, E., Chin, R. and Escudero, J., 2019, July. Preliminary fusion of eeg and mri with phenotypic scores in children with epilepsy based on the canonical polyadic decomposition. In 2019 41st Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC) (pp. 3884-3887). IEEE.
en
dc.relation.hasversion
Dron, N., Navarro-Caceres, M., Chin, R.F. and Escudero, J., 2021. Functional, structural, and phenotypic data fusion to predict developmental scores of pre-school children based on Canonical Polyadic Decomposition. Biomedical Signal Processing and Control, 70, p.102889.
en
dc.relation.hasversion
Dron, N., Chin, R.F. and Escudero, J., 2021, January. Canonical polyadic and block term decompositions to fuse EEG, phenotypic scores, and structural MRI of children with early-onset epilepsy. In 2020 28th European Signal Processing Conference (EUSIPCO) (pp. 1145-1149). IEEE.
en
dc.relation.hasversion
Dron, N., Chin, R.F. and Escudero, J., 2021, November. A computational approach to using routine MRI and EEG to identify developmental impairment in pre-school children with epilepsy. In EPILEPSIA (Vol. 62, pp. 272-272). 111 RIVER ST, HOBOKEN 07030-5774, NJ USA: WILEY.
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dc.rights.embargodate
2025-01-22
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dc.subject
epileptic children
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dc.subject
multimodal tensor decomposition techniques
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dc.subject
Detection of developmental deficits in epileptic children
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dc.subject
epilepsy
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dc.subject
Early childhood epilepsy
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dc.subject
Resting state electroencephalogram (EEG)
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dc.subject
Magnetic resonance imaging (MRI)
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dc.subject
diagnosis tools
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dc.subject
EEG information
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dc.subject
sMRI volumetric data
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dc.subject
psychometric evaluation scores
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dc.subject
matrix-tensor decompositions
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dc.subject
canonical polyadic decomposition (CPD)
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dc.subject
block term decomposition (BTD)
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dc.subject
Tucker decomposition (TD)
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dc.subject
Child Mind Institute (CMI)
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dc.subject
NEUROPROFILE: Neu
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dc.subject
diffusion tensor imaging (DTI)
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dc.title
Detection of developmental deficits in epileptic children using multimodal tensor decomposition techniques
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dc.type
Thesis or Dissertation
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dc.type.qualificationlevel
Doctoral
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dc.type.qualificationname
PhD Doctor of Philosophy
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dcterms.accessRights
Restricted Access
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