Vascular segmentation in X-ray angiograms using frangi filter
Özet
X-ray angiography systems are essential method of diagnosis of coronary arteries from angiography
images. Coronary angiography is known as the gold standard; for the evaluation of coronary artery
disease. Nevertheless, Visual interpretation of angiography images are difficult due to the gradual
crossing and overlap of the vessels on the angiogram. For this reason, many segmentation methods
have been used to obtain blood vessel structures in the human body. These blood vessel segmentation
methods can be classified; model-based tracking, propagation, artificial neural network (ANN), and
fuzzy. Also, accurate segmentation of vascular structures in 2D angiography images is an important
task for clinical practices such as computer-aided diagnosis, surgical planning and treatment. In
general, Hessian-based vessel enhancement filters are known to be achieve in segmenting vessels from
angiography images. In this study, the vascular structures of the coronary arteries were obtained by
image processing including contrast enhancement methods using Frangi filter. We present the most
important skill in coronary vessel segmentation methods by researching coronary vessel extraction and
development method.