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Segmentation and Visualization of the Cerebellum
The Task
One possible way to study the functions of the human brain is to study
patients with particular lesions. The value of such studies improves
greatly, if good quantitative data about the degree of the lesions is
available.
The functions of the cerebellum are often examined by evaluating data from
patients that suffer from degenerative processes which yield a reduced volume
of large areas of the cerebellum. Processing of MRT datasets allow to
quantify the degree of the reduction. This is done using a semi-automatic
segmentation of the cerebellum followed by volumetry. To calibrate for
intra-individual differences in brain size, the deducted volume is set
into relation with the total intra cranial volume and the total brain
volume.
The results of the volumetry of the cerebellum are correlated with various
neurophysiological and neuropsychological findings.
This project is doen in cooperation with
Klinik für Neurologie
Universität Duisburg-Essen
Prof. Dr. D. Timmann-Braun
Dr. A. Dimitrova
The MRI datasets were acquired at the Abteilung für Neuroradiologie des Instituts
für Diagnostische und Interventionelle Radiologie der Universität
Duisburg-Essen (Dr. E. Gizewski, Prof. Dr. M. Forsting).
The volumetry is done using an ECCET-based application on ordinary PCs.
Challenges of Segmentation
It is often very difficult to separate the cerebellum from neighbouring
structures using only the grey values in the MRI datasets.
There are many places where the grey values of brain and cerebellum
touch without any visible grey value difference or separation.
Simple thresholding is thus out of question to separate cerebrum from
cerebellum. However we have developed sophisticated fill algorithms
that often yield good results.

A human expert uses high level knowledge about the shape of the brain to
correctly separate cerebrum from cerebellum. However it is not obvious
how to transfer such intuitive knowledge into algorithms.
An even tougher problem is separating the cerebellum from the brain stem.
There are large connections between them and it is a bit arbitrary where
to draw the line.
The image on the right shows all pixels that are within a given value
range as green. The range is specified so that the brain stem is
just included. Obviously, this also marks parts of the cerebellum.
Even dividing lines drawn by human experts vary with large inter- and
intra-observer differences, so that it seems impossible to obtain a
reliable way to quantify the cerebellar volume. It is thus important
to find a method that derives such a dividing line in a reproducible
way. Our method satisfies this criterion.

Untere Hüllenbegrenzung

Obere Hüllenbegrenzung
Some slices of the MRI data show no clear boundary between the cerebellum
and the brain stem. The slices below and above however have such clear
boundaries, which allows to manually or semi-automatically mark the
brain stem cross section there.

Interpolierte Schicht
Using an interpolation technique, the missing part is estimated from
the shape of the marked cross sections. The result shows very few
inter- and intra-observer differences.

Hirnstamm

Hirnstamm
The brain stem is shown in yellow on the pictures on the right. The blue
lines mark the segmented slices between wchich the interpolation took place.
The cerebellum is shown in white.
The whole procedure
has been integrated into an application that provides the user with
useful support for the tedious task of segmenting the cerebellum at any time.