Title: Prediction of Epileptic Seizures PhD Conversion Seminar
1Prediction of Epileptic Seizures PhD Conversion
Seminar
Elma OSullivan-Greene Life Sciences, NICTA
VRL Dept. Electrical Electronic Engineering,
The University of Melbourne elmao_at_ee.unimelb.edu.a
u
Supervisors Prof. Iven Mareels Dr.
Levin Kuhlmann A/Prof. Anthony Burkitt
Dr. Chung-Yao Kao
2Talk Outline
- Epilepsy a disorder of the brain
- Data available for engineering analysis
- Current approaches to epileptic seizure
prediction, and their limitations - Work completed and in progress
- Proposed avenues for project
3Talk Outline
- Epilepsy a disorder of the brain
- Data available for engineering analysis
- Current approaches to epileptic seizure
prediction, and their limitations - Work completed and in progress
- Proposed avenues for project
4Epilepsy a disorder of the brain
- Epilepsy is a neurological disorder
- Characterised by recurrent seizures
- Associated with abnormally excessive or
synchronous neuronal activity in the brain - Most common serious neurological condition
- Prevalence of epilepsy varies across geographical
regions within the range of 0.5 to 4 of the
total population (WHO) - Current Treatment
- AED (Antiepileptic Drugs) - undesirable
side-effects - Surgical removal of the epileptic brain tissue
5Motivation For Seizure Prediction
- The ability to predict seizures would have a
profound impact on the quality of life of
epilepsy suffers. - Our proposed solution
- An Implantable device incorporating
- seizure prediction
- short-term electric stimulation treatment for
seizure prevention - Continuous electric stimulation is in use,
and shows good results in
many patients (unknown side
effects for long term use) - No robust seizure prediction algorithm has been
published to date
6Talk Outline
- Epilepsy a disorder of the brain
- Data available for engineering analysis
- Current approaches to epileptic seizure
prediction, and their limitations - Work completed and in progress
- Proposed avenues for project
7Data Source Electroencephalography (EEG)
- Recordings of the fluctuating electric fields of
the brain - Electric fields due to ionic currents in the
extra cellular fluid - Neurons (nerve cells) choose when to fire
impulses based on this ionic current information
8Data Source Electroencephalography (EEG)
- Recordings of the fluctuating electric fields of
the brain
9Talk Outline
- Epilepsy a disorder of the brain
- Data available for engineering analysis
- Current approaches to epileptic seizure
prediction, and their limitations - Work completed and in progress
- Proposed avenues for project
10Can Seizures Be Predicted?
- Evidence for a definable pre-ictal (pre-seizure)
period - Clinically undisputed indicative systematic
changes are present in some patients prior to
seizure onset - Mood changes, nausea, headache
- Several signal processing studies argue that a
pre-ictal state can be defined based on - Measures of synchronisation between EEG channels
- Non-linear dynamics measures
11Current Prediction Approaches
- Linear Approaches
- Spectral analysis
- Linear Modelling
- Energy measures
- Minimal success brain function nonlinear?
- Nonlinear Approaches
- Based on state space reconstruction
- Dimension
- Lyapunov Exponents
- Entropy
- Minimal success initial promising results failed
to be reproduced with other data sets
12State Space Reconstruction/ Delay Embedding
N at least O(1015)
13State Space Reconstruction/ Delay Embedding
Combine to reconstruct an N-dimensional system
14Limitations of Delay Reconstruction
- The original framework (Takens/ Aeyels) for
delay reconstruction requires - Stationarity of the dataset
- Noise free data set
- A time series from an autonomous dynamical system
- Low dimensionality of underlying dynamical system
- However the EEG is ultimately an unsuitable
signal for this framework - Highly non-stationary data set
- High levels of measurement noise in EEG
recordings (artefact) - The brain is not an autonomous system (brain
processes external inputs) - No conclusive evidence that the brain/ epileptic
events are low dimensional
15Talk Outline
- Epilepsy a disorder of the brain
- Data available for engineering analysis
- Current approaches to epileptic seizure
prediction, and their limitations - Work completed and in progress
- Proposed avenues for project
16Work Completed and in Progress
- Modification of the EEG signal for delay
reconstruction - Addressing the noise limitation
- Taking the difference between 2 closely spaced
intracranial electrodes
- Cancel common mode input from far away dynamical
subsystems (Stark) - Representation of local dynamics
- Significant reduction in common mode artefact (50
Hz mains pick-up)
- Consider the Brain as
- spatially distributed system
- interacting distinct
local
subsystems
17Work Completed and in Progress
- Modification of the EEG signal for delay
reconstruction - Addressing the low dimensionality limitation
- Hypothesis The brain is lower-dimensional during
a seizure - Perhaps there is enough stationary data in the
period just prior to a seizure to warrant a
reconstruction -
18An existing seizure prediction algorithm
- Dynamical Similarity Index (DSI)
- Le Van Quyen (1999)
- Creates templates of brain dynamics from delay
reconstruction of EEG data - Seizure anticipation state declared for large
sustained deviations of dynamic template from
reference (far from seizure)
19Work Completed and in Progress
- Application of modified EEG signal to DSI
algorithm - Reference template from pre-ictal data
- (low-dimensional/stationarity considerations)
- EEG signal used difference between 2 closely
spaced intracranial electrodes - (noise consideration)
- Preliminary results
- Sensitivity 25-100 across 3 patients
- False Positive rate 1-6.6 FP/hr across 3 patients
20Work Completed and in Progress
- No major improvement seen with preliminary
results over original DSI algorithm - Why?
- Pre-ictal low dimensionality of underlying system
is an unproven hypothesis - Other noise muscle artefact, cardiac artefact
- Conclusion
- Future prediction methods should concentrate on
non-delay-reconstruction based methods
21Talk Outline
- Epilepsy a disorder of the brain
- Data available for engineering analysis
- Current approaches to epileptic seizure
prediction, and their limitations - Work completed and in progress
- Proposed avenues for project
22Project Proposal
- Nonlinear System analysis without reconstruction
- Data-driven pathway
Brain System Unknown state space system,
F xk1F (xk , ?k)
Measured EEG Data Represented by the function,
H zkH (xk , ?k)
Epilepsy Prediction Represented by the function,
G yk1G (xk , ?k)
?
23Project Proposal - Entropy via Data Compression
- An entropy measure as a prediction candidate
- Low-dimensional object indicative of underlying
brain state - Entropy, as measured in the brain, can be viewed
as - a measure of how chaotic the brain system is
- a measure of information transfer in the brain
24Entropy via Data Compression Techniques
- Instead of computing entropy via delay
reconstruction. - Estimating entropy via Data-Compression
Techniques - Markov Model
- Context-Tree Model
- Model based on Independent Component Analysis
(ICA) - Let observed time-series data (EEG) be an element
of a finite alphabet of symbols - Advantages of this approach
- More robust in the presence of noise
- Does not require stationarity of the data set
- Can be applied to High Dimensional Systems
25Entropy Estimation from a Markov Model
- Markov model
- Estimates future symbols based on k-past past
symbols - Symbolic time series analysis
26Entropy Estimation from a Weighted Context Tree
- Weighted Context tree
- Estimates future symbols based on k-past past
symbols - Each node or context contains information of
symbol history - Automated recursive weight probability associated
with each context - Contexts automatically discarded on basis of
improved performance - Entropy h L / N LSource Code
length NTime
27Entropy Estimation from an ICA based model
- Measured EEG Channels x A s
- Find the transformation of the data W A-1 such
that the coding lengths of the components are
minimised - Non-linear independent component methods
- Using several EEG channels spatial information
Statistically Independent components
x f( s ) y h( x )
28Seizure Prediction Proposal
- Have discussed Entropy as a seizure prediction
candidate as estimated from data compression
techniques. - Next An alternative probabilistic approach to
data-based seizure prediction
29Seizure Prediction Decision Markov Process
- Motivation for a statistical decision model
- Dynamical systems representations of the
epileptic brain
- Bifurcation Phenomenon prediction by tracking
the trajectory of bifurcation parameter, ยต, over
time - Bifurcation part of thalmo-cortical brain
model, Robinson (2003)
- Probabilistic Transitions between two chaotic
attractors - Normal Epileptic
- Phase portrait of computer model of brains
thalmo-cortical network, Lopes Da Silva (2003)
30Seizure Prediction Decision Markov Process
- 3 state model
- Transition probabilities tij assigned through
analysis of EEG data - Potential for intervention applications control
input to minimise the transition to seizure state
31Conclusion Research Proposal
- Proposed Avenues for Seizure Prediction
- Entropy as estimated from data compression
techniques - Markov Process
- Context Tree
- Independent Component Analysis
- Decision Markov Process
- Potential for the theoretical expansion of
dynamical system time-series analysis - for the application of real world biological
data
32- Thank you for your attention
- Questions?
- elmao_at_ee.unimelb.edu.au