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Chapter_5.lyx
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#LyX 2.0 created this file. For more info see http://www.lyx.org/
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\begin_document
\begin_header
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\begin_body
\begin_layout Section
Conclusion
\begin_inset CommandInset label
LatexCommand label
name "sec:ThesisConclusion"
\end_inset
\end_layout
\begin_layout Subsection
Summary
\begin_inset CommandInset label
LatexCommand label
name "sub:Summary"
\end_inset
\end_layout
\begin_layout Standard
Here we present a summary of our main original contributions.
\end_layout
\begin_layout Standard
\series bold
Reconstructing voxels.
\series default
We first proposed a new reconstruction method called Diffusion Nabla Imaging
(DNI) using an algorithm that directly approximates the Orientation Distributio
n Function using the Laplacian of the signal in q-space.
Additionally, we found that a family of transforms exists which is a superset
of DNI.
We call this the Equatorial Inversion Transform (EIT).
We showed that EIT has higher angular accuracy in simulations than the
other methods and that it introduces interesting theoretical foundations
for the interpretation of the dMRI signal.
We compared and evaluated different Cartesian-grid q-space dMRI acquisition
schemes, using methods based on the inverse Fourier transform of the diffusion
signal, with reconstructions by Diffusion Spectrum Imaging (DSI), Generalized
Q-sampling Imaging (GQI) and the EIT.
We also compared EIT against GQI2 which had not been applied to simulated
or real data until now.
We found that GQI2 has similar performance with that of the EIT and it
can generate smooth ODFs.
\end_layout
\begin_layout Standard
\series bold
Integrating to tracks.
\series default
Most previously published reconstruction methods are closely linked to
their own specific tracking method.
We have formulated a minimal tracking algorithm (EuDX) which is based on
Euler integration and trilinear interpolation.
This algorithm integrates voxel level information about fibre orientations
including multiple crossings, and employs a range of stopping criteria.
The purpose of this algorithm is to be faithful to the reconstruction results
rather than try to correct or enhance them by introducing regional or global
considerations which is the topic of other popular approaches.
Interestingly, in the experiments with the software phantoms, EuDX performed
better than a popular probabilistic method.
With the real data sets it generated more uniform bundles.
\end_layout
\begin_layout Standard
\series bold
Segmenting tracks.
\series default
The end goal of clustering is to be able to segment tractography into tracts
that have biological meaning.
This is a difficult problem with no well-defined gold standard.
In order to succeed better, we need to be able to compare the results of
tractographies, and we need to be able to allow experts in anatomy to interact
with the results of the tractography.
Unfortunately, most current methods are so slow to compute that it is not
practical to compare different methods in reasonable time, and they cannot
run fast enough for an expert to interact with them in close to real time.
This thesis provides a complete solution to this problem.
We developed a surprisingly simple, fully automatic, linear time, clustering
method (QuickBundles) which reduces massive tractographies into a few easily
accessible bundles.
These bundles are characterised by representative tracks which are multi-purpos
e and can be used for interaction with the data or as the basis for applying
higher complexity clustering methods which would have been impossible or
too slow with the full data set.
QuickBundles is as far as we know the fastest existing tractography clustering
algorithm; providing the opportunity for clinical real-time applications.
\end_layout
\begin_layout Standard
\series bold
Registering tracks.
\series default
After applying QuickBundles to tractographies from different subjects, we
showed how to use the representative tracks to identify robust landmarks
within each subject which, with similarity metrics which we have introduced,
we can use them to directly register the different tractographies together
in a highly efficient way.
We believe the resulting correspondences provide important evidence for
the anatomical plausibility of the derived bundles.
We demonstrated how these methods can be used for group analysis, as well
as for atlas creation.
\end_layout
\begin_layout Subsection
Software
\end_layout
\begin_layout Standard
In providing this thesis we tried to do our best to follow state-of-the-art
scientific practices.
One of the important achievements was to create and distribute two different
software libraries DIPY
\begin_inset space ~
\end_inset
\begin_inset CommandInset citation
LatexCommand cite
key "garyfallidis2011dipy"
\end_inset
and FOS
\begin_inset space ~
\end_inset
\begin_inset CommandInset citation
LatexCommand cite
key "garyfallidis2012hbm"
\end_inset
.
DIPY is used for dMRI analysis and FOS concentrates only on the visualization
aspects using OpenGL.
They are both implemented in the Python programming language.
We hope that these projects will add up to the stack of existing OpenSource
projects in the Neuroimaging community like Camino, FSL, DSI Studio and
SPM.
We believe that by providing our code open source and not-for-profit we
allow other researchers to test and extend our findings.
We believe that this is a factor which can increase the quality of scientific
research beyond the standard expectations.
Ioannidis et al.
\begin_inset space ~
\end_inset
\begin_inset CommandInset citation
LatexCommand cite
key "ioannidis2005most"
\end_inset
showed that many scientists are avoiding to publish negative results and
the Neuroimaging community is not an exception.
We believe that perhaps a way out of this problem is publishing and sharing
code.
In that perspective others can confirm, validate and push forward our current
findings with speeds which were impossible in the past.
\end_layout
\begin_layout Standard
We have enjoyed writing thousands of lines of code in order to generate
the dMRI algorithms or even the figures of this dissertation.
Both DIPY and FOS have attracted further developers and scientists from
acknowledged universities around the world who contribute today to these
platforms.
\end_layout
\begin_layout Subsection
Future work
\begin_inset CommandInset label
LatexCommand label
name "sub:Future-work"
\end_inset
\end_layout
\begin_layout Standard
Here we will describe what our future plans are and the research path we
wish to take after the completion of this dissertation.
\end_layout
\begin_layout Standard
\series bold
Extending EIT
\series default
.
\series bold
\series default
Currently the EIT expects Cartesian grid-based q-space data like those used
in DSI reconstructions.
However, it seems that because the EIT integrates directional information
radially on spherical shells it will be straightforward to extend it to
one or more spherical grid q-space data.
Spherical grid data are more commonly available and usually they need less
scanner time.
In order to make this possible we will need to do further research on spherical
interpolations.
Perhaps our spherical smoothing functions described in section
\begin_inset CommandInset ref
LatexCommand ref
reference "sub:Spherical-Angular-Smoothing"
\end_inset
will become handy.
However, this needs further examination.
\end_layout
\begin_layout Standard
\series bold
Non-linear Direct Registration
\series default
.
\series bold
\series default
Our direct registration approach allows only for linear transformations.
It would be very interesting first to validate our method against volume
based registration.
Furthermore, we could investigate a log-Euclidean polyaffine framework
which allows for smooth non-linear transformations.
This will be a beautifully challenging problem as the optimization will
be more difficult.
Powell's method works perfectly well with the few parameters needed in
linear registration for this approach.
However, with the nonlinear difformations many more parameters will need
fitting.
Perhaps with the aid of robust optimizers like the Particle Swarm Optimizer
(PSO)
\begin_inset CommandInset citation
LatexCommand cite
key "kennedy1995particle"
\end_inset
,
\begin_inset CommandInset citation
LatexCommand cite
key "oikonomidis2011full"
\end_inset
we will be able to provide more accurate registration.
\end_layout
\begin_layout Standard
\series bold
Clinical Applications
\series default
.
We propose to extend our preliminary involvement with clinical research
into trichotilomania
\begin_inset CommandInset citation
LatexCommand cite
key "chamberlain2010reduced"
\end_inset
from fractional aniso- tropy to track density calculations.
We would also like to investigate bundle differences with other disorders
such as autism or schizophrenia.
Both autism and schizophrenia are considered to have strong relationship
with defects in white matter architecture caused by disrupted connectivity
\begin_inset CommandInset citation
LatexCommand cite
key "zalesky2011disrupted"
\end_inset
.
\end_layout
\begin_layout Standard
\series bold
Interactive Labeling
\series default
.
We are developing a scientific visualization tool that solves the problem
of interacting with tractographies by creating real-time simplifications
of the underlying anatomical bundle structures.
The process that we propose works recursively: starting from a small number
of clusters of streamlines the user decides which clusters to explore.
Exploring a cluster means that the application re-clusters its content
at a finer grained level in real-time.
Of course these representative tracks are provided by QuickBundles which
can cluster thousands of tracks in milliseconds.
\end_layout
\begin_layout Standard
\begin_inset Float figure
wide false
sideways false
status open
\begin_layout Plain Layout
\align center
\begin_inset Graphics
filename hbm2012/hbm2012_fig1.png
lyxscale 20
scale 40
\end_inset
\end_layout
\begin_layout Plain Layout
\begin_inset Caption
\begin_layout Plain Layout
An example of how a medical practitioner can use our visualization software
to select fibre bundles of their interest.
\end_layout
\end_inset
\end_layout
\begin_layout Plain Layout
\begin_inset CommandInset label
LatexCommand label
name "Flo:SelectionViz"
\end_inset
\end_layout
\end_inset
\end_layout
\begin_layout Standard
Our approach starts by providing a first simplified version (see Fig.
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:SelectionViz"
\end_inset
B) of the initial full tractography (see Fig.
\begin_inset space ~
\end_inset
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:SelectionViz"
\end_inset
A).
After visually inspecting the simplified tractography (see Fig.
\begin_inset space ~
\end_inset
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:SelectionViz"
\end_inset
B) the practitioner can interactively select one or more representative
tracks (see Fig.
\begin_inset space ~
\end_inset
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:SelectionViz"
\end_inset
C, white track).
When one or more representative tracks are selected the practitioner can
see the content of the related clusters (see Fig.
\begin_inset space ~
\end_inset
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:SelectionViz"
\end_inset
D).
In order to explore the detailed structure of the selection the user may
ask to re-cluster the selected BOIs into smaller clusters (see Fig.
\begin_inset space ~
\end_inset
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:SelectionViz"
\end_inset
E).
In that way one can further refine his previous selection.
After selecting one or more of the small clusters through their representatives
(see Fig.
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:SelectionViz"
\end_inset
F, white tracks) the user can repeat the visual inspection step (Fig.
\begin_inset space ~
\end_inset
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:SelectionViz"
\end_inset
G), and the re-clustering step (Fig.
\begin_inset space ~
\end_inset
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:SelectionViz"
\end_inset
H) as required in order to unveil the local structures (Fig.
\begin_inset space ~
\end_inset
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:SelectionViz"
\end_inset
I) which are interesting to their work.
\end_layout
\begin_layout Standard
\begin_inset Float figure
wide false
sideways false
status open
\begin_layout Plain Layout
\align center
\begin_inset Graphics
filename three_brains_golden_new.png
lyxscale 50
scale 80
\end_inset
\end_layout
\begin_layout Plain Layout
\begin_inset Caption
\begin_layout Plain Layout
Direct track correspondence between different subjects.
\end_layout
\end_inset
\end_layout
\begin_layout Plain Layout
\begin_inset CommandInset label
LatexCommand label
name "Flo:Direct_correspondence"
\end_inset
\end_layout
\end_inset
\end_layout
\begin_layout Standard
\series bold
Shape Correspondence
\series default
.
\series bold
\series default
Using multi-brain visualization we were able to have a first investigation
of shape correspondence
\begin_inset space ~
\end_inset
\begin_inset CommandInset citation
LatexCommand cite
key "garyfallidis2010ismrm"
\end_inset
of tracks between different subjects (see Fig.
\begin_inset space ~
\end_inset
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:Direct_correspondence"
\end_inset
).
We would like to augment this first implementation from track to bundle
correspondence.
In other words a medical practitioner could select a representative track
or a bundle in one subject and see in real-time the corresponding bundles
in the other subjects.
We imagine this as an amalgamation of the tools presented in Fig.
\begin_inset space ~
\end_inset
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:Direct_correspondence"
\end_inset
and
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:SelectionViz"
\end_inset
which are developed in DIPY and FOS.
\end_layout
\begin_layout Standard
\series bold
Microstructure
\series default
.
Our work up till now has focused on estimating the structure of white matter
in the brain from standard diffusion MRI acquisitions.
However, these acquisitions provide voxel sizes of about
\begin_inset Formula $2$
\end_inset
\begin_inset space ~
\end_inset
mm.
Axon fibres, which are about one micron in diameter, are much smaller than
single voxels.
Nevertheless, diffusion MRI can provide information on the distribution
of microstructural features, such as the fibre orientation, fibre diameter
or density, within each voxel.
We would also like to extend our work in that area of microanatomy tracking
which has recently shown very interesting results
\begin_inset CommandInset citation
LatexCommand cite
key "panagiotaki2011compartment"
\end_inset
,
\begin_inset CommandInset citation
LatexCommand cite
key "alexander2008general"
\end_inset
.
This high resolution domain require model-fitting of many parameters.
It would be interesting to investigate if EIT or other non-parametric ideas
could help alleviate this problem.
\end_layout
\begin_layout Standard
\begin_inset Float figure
wide false
sideways false
status open
\begin_layout Plain Layout
\align center
\begin_inset Graphics
filename art_figures/su01final.png
lyxscale 10
scale 20
\end_inset
\end_layout
\begin_layout Plain Layout
\begin_inset Caption
\begin_layout Plain Layout
Every participant received a picture of his tractography as a gift for their
help to our experiments.
\end_layout
\end_inset
\end_layout
\begin_layout Plain Layout
\begin_inset CommandInset label
LatexCommand label
name "Flo:Subj_1_orange"
\end_inset
\end_layout
\end_inset
\end_layout
\begin_layout Subsection
New frontiers
\end_layout
\begin_layout Standard
White matter fibre crossings
\begin_inset ERT
status open
\begin_layout Plain Layout
--
\end_layout
\end_inset
from the voxel level to the tractography and bundle level
\begin_inset ERT
status open
\begin_layout Plain Layout
--
\end_layout
\end_inset
have been a major motivation for this thesis.
In March
\begin_inset Formula $2012$
\end_inset
, Wedeen et al.
\begin_inset space ~
\end_inset
\begin_inset CommandInset citation
LatexCommand cite
key "wedeen2012geometric"
\end_inset
published in Science Magazine a fascinating work that reinforces the importance
of these topics.
They showed that they can identify in the tractographies of the brains
of humans and other animals (in vivo and in vitro) fibre bundles which
are in agreement with confocal microscopy and other staining techniques.
The authors clarified that a grid-like structure is prevalent in the brain
i.e.
fibre bundles crossing in more areas than would previously have been expected.
Furthermore, they also showed that the bundles curve more vigorously than
previously understood.
We believe that in this thesis we have significantly enhanced and extended
the techniques that were used to establish these ground-breaking results,
and have created a framework for them to be applied by the neuroscience
community.
\end_layout
\begin_layout Standard
In bringing this thesis to a close we would like to thank the participants
who took part in our imaging studies.
To honour them we created special pictures of their tractographies like
the one shown in Fig.
\begin_inset space ~
\end_inset
\begin_inset CommandInset ref
LatexCommand ref
reference "Flo:Subj_1_orange"
\end_inset
which were subsequently presented to them.
\end_layout
\begin_layout Standard
\begin_inset Note Note
status collapsed
\begin_layout Plain Layout
We are very glad to see that the pictures we generate are both beautiful
and useful pushing our knowledge and inspiration for the advancement of
brain mapping.
To honour our participants who took part in our experiments we gave them
a picture of their tractography like the one shown in Fig.
\backslash
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.
Albert Einstein suggested that imagination is even more important than
knowledge.
Perhaps one day of our near future we will be able to reconstruct single
axons in vivo and in great precision.
I hope I will be around to see it happening and help accomplish this achievemen
t.
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