Many computer aided diagnosis (CAD) schemes have been developed for colon cancer detection using Virtual Colonoscopy (VC). In earlier work, we developed an automatic polyp detection method integrating flow visualization techniques, that forms part of the CAD functionality of an existing Virtual Colonoscopy pipeline. Curvature streamlines were used to characterize polyp surface shape. Features derived from curvature streamlines correlated highly with true polyp detections. During testing with a large number of patient data sets, we found that the correlation between streamline features and true polyps could be affected by noise and our streamline generation technique. The seeding and spacing constraints and CT noise could lead to streamline ...
In this paper we describe a computer aided detection (CAD) algorithm for robust detection of polyps ...
Colorectal Cancer is one of the type of cancer caused in the region of colon. Current polyp detectio...
In this paper we describe the development of a computationally efficient computer-aided detection (C...
In this thesis, we present an automatic polyp detection approach that integrates knowledge from flow...
with computer-aided detection, is a promising emerging tech-nique for colonic polyp analysis. We pre...
In this paper, we first introduce three different geometric features including shape index, curvedne...
In this paper we describe the development of a computationally efficient computer-aided detection (C...
Abstract—Today’s computer aided detection systems for com-puted tomography colonography (CTC) enable...
Today’s computer aided detection systems for computed tomography colonography (CTC) enable automated...
Curvature-based geometric features have been proven to be important for colonic polyp detection. In ...
Osman, Onur (Arel Author)Computer-aided detection (CAD) systems are developed to help radiologists d...
International audiencePurpose: Surface curvatures are important geometric features for the computer-...
The risk of developing colon cancer is strongly correlated with the appearance of polypoid lesions (...
In this paper we describe a computer aided detection (CAD) algorithm for robust detection of polyps ...
Hongbin Zhu1, Chaijie Duan1, Perry Pickhardt2, Su Wang1, Zhengrong Liang1,31Department of Radiology,...
In this paper we describe a computer aided detection (CAD) algorithm for robust detection of polyps ...
Colorectal Cancer is one of the type of cancer caused in the region of colon. Current polyp detectio...
In this paper we describe the development of a computationally efficient computer-aided detection (C...
In this thesis, we present an automatic polyp detection approach that integrates knowledge from flow...
with computer-aided detection, is a promising emerging tech-nique for colonic polyp analysis. We pre...
In this paper, we first introduce three different geometric features including shape index, curvedne...
In this paper we describe the development of a computationally efficient computer-aided detection (C...
Abstract—Today’s computer aided detection systems for com-puted tomography colonography (CTC) enable...
Today’s computer aided detection systems for computed tomography colonography (CTC) enable automated...
Curvature-based geometric features have been proven to be important for colonic polyp detection. In ...
Osman, Onur (Arel Author)Computer-aided detection (CAD) systems are developed to help radiologists d...
International audiencePurpose: Surface curvatures are important geometric features for the computer-...
The risk of developing colon cancer is strongly correlated with the appearance of polypoid lesions (...
In this paper we describe a computer aided detection (CAD) algorithm for robust detection of polyps ...
Hongbin Zhu1, Chaijie Duan1, Perry Pickhardt2, Su Wang1, Zhengrong Liang1,31Department of Radiology,...
In this paper we describe a computer aided detection (CAD) algorithm for robust detection of polyps ...
Colorectal Cancer is one of the type of cancer caused in the region of colon. Current polyp detectio...
In this paper we describe the development of a computationally efficient computer-aided detection (C...