Title :
Segmentation of intravascular ultrasound images: a knowledge-based approach
Author :
Sonka, Milan ; Zhang, Xiangmin ; Siebes, Maria ; Bissing, Mark S. ; DeJong, Steven C. ; Collins, Steve M. ; McKay, Charles R.
Author_Institution :
Dept. of Electr. & Comput. Eng., Iowa Univ., Iowa City, IA, USA
fDate :
12/1/1995 12:00:00 AM
Abstract :
Intravascular ultrasound imaging of coronary arteries provides important information about coronary lumen, wall, and plaque characteristics. Quantitative studies of coronary atherosclerosis using intravascular ultrasound and manual identification of wall and plaque borders are limited by the need for observers with substantial experience and the tedious nature of manual border detection. We have developed a method for segmentation of intravascular ultrasound images that identifies the internal and external elastic laminae and the plaque-lumen interface. The border detection algorithm was evaluated in a set of 38 intravascular ultrasound images acquired from fresh cadaveric hearts using a 30 MHz imaging catheter. To assess the performance of our border detection method we compared five quantitative measures of arterial anatomy derived from computer-detected borders with measures derived from borders manually defined by expert observers. Computer-detected and observer-defined lumen areas correlated very well (r=0.96, y=1.02x+0.52), as did plaque areas (r=0.95, y=1.07x-0.48), and percent area stenosis (r=0.93, y=0.99x-1.34.) Computer-derived segmental plaque thickness measurements were highly accurate. Our knowledge-based intravascular ultrasound segmentation method shows substantial promise for the quantitative analysis of in vivo intravascular ultrasound image data
Keywords :
angiocardiography; biomedical ultrasonics; image segmentation; knowledge based systems; medical expert systems; medical image processing; 30 MHz; arterial anatomy; border detection algorithm; computer-detected borders; coronary arteries; coronary atherosclerosis; coronary lumen; coronary wall; expert observers; external elastic laminae; fresh cadaveric hearts; internal elastic laminae; intravascular ultrasound images; knowledge-based approach; manual identification; observer-defined lumen areas; percent area stenosis; plaque areas; plaque borders; plaque characteristics; plaque-lumen interface; quantitative analysis; Anatomy; Arteries; Atherosclerosis; Catheters; Detection algorithms; Heart; Image segmentation; Thickness measurement; Ultrasonic imaging; Ultrasonic variables measurement;
Journal_Title :
Medical Imaging, IEEE Transactions on