Information obtained from ultrasound images of fetal heads is often used to screen for
various types of physical abnormality. In particular, at around 16 to 23 weeks' gestation
two-dimensional cross-sections are examined to assess whether a fetus is affected by Neural
Tube Defects, a class of disorders that includes Spina Bifida. Unfortunately, ultrasound
images are of relatively poor quality and considerable expertise is required to extract
meaningful information from them. Developing an ultrasound image recognition method
that does not rely upon an experienced sonographer is of interest. In the course of this
work we review standard statistical image analysis techniques, and explain why they are not
appropriate for the ultrasound image data that we have. A new iterative method for edge
detection based on a kernel function is developed and discussed. We then consider ways of
improving existing techniques that have been applied to ultrasound Images.
Storvik (1994)'s algorithm is based on the minimisation of a certain energy function by
simulated annealing. We apply a cascade type blocking method to speed up this
minimisation and to improve the performance of the algorithm when the noise level is high.
Kass, Witkin and Terzopoulos (1988)'s method is based on an active contour or 'snake'
which is deformed in such a way as to minimise a certain energy function. We suggest
modifications to this energy function and use simulated annealing plus iterated conditional
modes to perform the associated minimisation. We demonstrate the effectiveness of the
new edge detection method, and of the improvements to the existing techniques by means
of simulation studies.
Date of Award | 1998 |
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Original language | English |
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Awarding Institution | |
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IMAGE ANALYSIS AND PRENATAL SCREENING
LUAN, J. (Author). 1998
Student thesis: PhD