INVESTIGADORES
LARRABIDE Ignacio
artículos
Título:
Lumen-intima and media-adventitia segmentation in IVUS images using supervised classifications of arterial layers and morphological structures
Autor/es:
LO VERCIO, LUCAS; DEL FRESNO, MARIANA; LARRABIDE, IGNACIO
Revista:
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE
Editorial:
ELSEVIER IRELAND LTD
Referencias:
Año: 2019 vol. 177 p. 113 - 121
ISSN:
0169-2607
Resumen:
Background: Intravascular ultrasound (IVUS)provides axial grey-scale images of blood vessels. The large number of images require automatic analysis, specifically to identify the lumen and outer vessel wall. However, the high amount of noise, the presence of artifacts and anatomical structures, such as bifurcations, calcifications and fibrotic plaques, usually hinder the proper automatic segmentation of the vessel wall. Methods: Lumen, media, adventitia and surrounding tissues are automatically detected using Support Vector Machines (SVMs). The classification performance of the SVMs vary according to the kind of structure present within each region of the image. Random Forest (RF)is used to detect different morphological structures and to modify the initial layer classification depending on the detected structure. The resulting classification maps are fed into a segmentation method based on deformable contours to detect lumen-intima (LI)and media-adventitia (MA)interfaces. Results: The modifications in the layer classifications according to the presence of structures proved to be effective improving LI and MA segmentations. The proposed method reaches a Jaccard Measure (JM)of 0.88 ± 0.08 for LI segmentation, compared with 0.88 ± 0.05 of a semiautomatic method. When looking at MA, our method reaches a JM of 0.84 ± 0.09, and outperforms previous automatic methods in terms of HD, with 0.51mm ± 0.30. Conclusions: A simple modification to the arterial layer classification produces results that match and improve state-of-the-art fully-automatic segmentation methods for LI and MA in 20MHz IVUS images. For LI segmentation, the proposed automatic method performs accurately as semi-automatic methods. For MA segmentation, our method matched the quality of state-of-the-art automatic methods described in the literature. Furthermore, our implementation is modular and open-source, allowing for future extensions and improvements.