In this paper we present a textural feature analysis applied to a medical image segmentation problem where other methods fail, i.e. the localization of thrombotic tissue in the aorta. This problem is extremely relevant because many clinical applications are being developed for the computer assisted, image driven planning of vascular intervention, but standard segmentation techniques based on edges or gray level thresholding are not able to differentiate thrombus from surrounding tissues like vena, pancreas having similar HU average and noisy patterns [3,4]. Our work consisted in a deep analysis of the texture segmentation approaches used for CT scans, and on experimental tests performed to find out textural features that better discriminate...
The paper develops the automatic methods of segmentation of the blood vessel area in the images of t...
Recent advances in medical imaging technology using multiple detector-row computed tomography (CT) p...
Medical imaging is an important part of the clinical workflow. With the increasing amount and comple...
Computed tomography (CT) images are routinely used to assess ischemic brain stroke in the acute phas...
In this thesis we develop and validate novel image processing techniques for the analysis of vascula...
Analysis of medical images is resource demanding and time-consuming, and automatic procedures are ne...
Medical image segmentation is applied to extract vascular structures from various medical images, su...
In this paper we discuss the problem of discriminating tis sues with similar average Hounsfield value...
Image segmentation is the problem of partitioning an image into meaningful parts, often consisting o...
Computer-aided analysis of venous vasculatures including hepatic veins and portal veins is important...
PurposeThe purpose of this work is to develop a fully automated pipeline to compute aorta morphology...
Computer-assisted detection and segmentation of blood vessels in angiography are crucial for endovas...
Copyright © 2015 Chi-Hsuan Tsou et al.This is an open access article distributed under theCreativeCo...
Recent advances in medical imaging technology using multiple detector-row computed tomography (CT) p...
We analyze localized textural consistencies in high-resolution X-ray (computed tomography) CT scans ...
The paper develops the automatic methods of segmentation of the blood vessel area in the images of t...
Recent advances in medical imaging technology using multiple detector-row computed tomography (CT) p...
Medical imaging is an important part of the clinical workflow. With the increasing amount and comple...
Computed tomography (CT) images are routinely used to assess ischemic brain stroke in the acute phas...
In this thesis we develop and validate novel image processing techniques for the analysis of vascula...
Analysis of medical images is resource demanding and time-consuming, and automatic procedures are ne...
Medical image segmentation is applied to extract vascular structures from various medical images, su...
In this paper we discuss the problem of discriminating tis sues with similar average Hounsfield value...
Image segmentation is the problem of partitioning an image into meaningful parts, often consisting o...
Computer-aided analysis of venous vasculatures including hepatic veins and portal veins is important...
PurposeThe purpose of this work is to develop a fully automated pipeline to compute aorta morphology...
Computer-assisted detection and segmentation of blood vessels in angiography are crucial for endovas...
Copyright © 2015 Chi-Hsuan Tsou et al.This is an open access article distributed under theCreativeCo...
Recent advances in medical imaging technology using multiple detector-row computed tomography (CT) p...
We analyze localized textural consistencies in high-resolution X-ray (computed tomography) CT scans ...
The paper develops the automatic methods of segmentation of the blood vessel area in the images of t...
Recent advances in medical imaging technology using multiple detector-row computed tomography (CT) p...
Medical imaging is an important part of the clinical workflow. With the increasing amount and comple...