Robust and accurate coronary artery centerline extraction in CTA by combining model-driven and data-driven approaches.
Yefeng Zheng,Huseyin Tek,Gareth Funka-Lea +2 more
- 22 Sep 2013
- Vol. 16, pp 74-81
TL;DR: The automatically segmented chambers are exploited to predict the initial position of the major coronary centerlines and define a vessel-specific region-of-interest (ROI) to constrain the following centerline refinement.
read more
Abstract: Various methods have been proposed to extract coronary artery centerlines from computed tomography angiography (CTA) data. Almost all previous approaches are data-driven, which try to trace a centerline from an automatically detected or manually specified coronary ostium. No or little high level prior information is used; therefore, the centerline tracing procedure may terminate early at a severe occlusion or an anatomically inconsistent centerline course may be generated. Though the connectivity of coronary arteries exhibits large variations, the position of major coronary arteries relative to the heart chambers is quite stable. In this work, we propose to exploit the automatically segmented chambers to 1) predict the initial position of the major coronary centerlines and 2) define a vessel-specific region-of-interest (ROI) to constrain the following centerline refinement. The proposed prior constraints have been integrated into a model-driven algorithm for the extraction of three major coronary centerlines, namely the left anterior descending artery (LAD), left circumflex artery (LCX), and right coronary artery (RCA). After extracting the major coronary arteries, the side branches are traced using a data-driven approach to handle large anatomical variations in side branches. Experiments on the public Rotterdam coronary CTA database demonstrate the robustness and accuracy of the proposed method. We achieve the best average ranking on overlap metrics among automatic methods and our accuracy metric outperforms all other 22 methods (including both automatic and semi-automatic methods).
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Coronary artery centerline extraction in cardiac CT angiography using a CNN-based orientation classifier
TL;DR: The proposed algorithm is able to accurately and efficiently determine the direction and radius of coronary arteries based on information derived directly from the image data, and once trained allows fast automatic or interactive extraction of coronary artery trees from CCTA images.
187
Real-time fusion of coronary CT angiography with x-ray fluoroscopy during chronic total occlusion PCI
Brian B. Ghoshhajra,Richard A.P. Takx,Luke L. Stone,Erin Girard,Emmanouil S. Brilakis,William Lombardi,Robert W. Yeh,Farouc A. Jaffer +7 more
TL;DR: This study demonstrates that real-time automated co-registration of coronary CTA centreline and calcification onto live fluoroscopic images is feasible and provides new insights into CTO PCI, and in particular, antegrade dissection reentry-based CTOPCI.
50
Performance of a Deep Neural Network Algorithm Based on a Small Medical Image Dataset: Incremental Impact of 3D-to-2D Reformation Combined with Novel Data Augmentation, Photometric Conversion, or Transfer Learning.
Vikash Gupta,Mutlu Demirer,Matthew T. Bigelow,Kevin J. Little,Sema Candemir,Luciano M. Prevedello,Richard D. White,Thomas F. O'Donnell,Michael Wels,Barbaros S. Erdal +9 more
TL;DR: TL enhances performance of a DNN algorithm from a small volumetric dataset after proposed 3D-to-2D reformatting, but additive gain is achieved with application of either GCC to APV or the proposed novel MPV technique for DA.
38
A User Interface for Optimizing Radiologist Engagement in Image Data Curation for Artificial Intelligence.
Mutlu Demirer,Sema Candemir,Matthew T. Bigelow,Sarah M. Yu,Vikash Gupta,Luciano M. Prevedello,Richard D. White,Joseph S. Yu,Rainer Grimmer,Michael Wels,Andreas Wimmer,Abdul H. Halabi,Alvin Ihsani,Thomas F. O'Donnell,Barbaros S. Erdal +14 more
- 27 Nov 2019
TL;DR: GUI-component compatibility with common image analysis tools facilitates radiologist engagement in image data curation, including image annotation, supporting AI application development and evolution for medical imaging.
36
DeepCenterline: A Multi-task Fully Convolutional Network for Centerline Extraction
Zhihui Guo,Junjie Bai,Lu Yi,Xin Wang,Kunlin Cao,Qi Song,Milan Sonka,Youbing Yin +7 more
- 02 Jun 2019
TL;DR: This is the first deep-learning based centerline extraction method that guarantees single-pixel-wide centerline for a complex tree-structured object.
References
Principal warps: thin-plate splines and the decomposition of deformations
TL;DR: The decomposition of deformations by principal warps is demonstrated and the method is extended to deal with curving edges between landmarks to aid the extraction of features for analysis, comparison, and diagnosis of biological and medical images.
5.5K
Medical image analysis: progress over two decades and the challenges ahead
James S. Duncan,Nicholas Ayache +1 more
TL;DR: A look at progress in the field over the last 20 years is looked at and some of the challenges that remain for the years to come are suggested.
4.3K
The ball-pivoting algorithm for surface reconstruction
TL;DR: The Ball-Pivoting Algorithm is applied to datasets of millions of points representing actual scans of complex 3D objects and the quality of the results obtained compare favorably with existing techniques.
A review of 3D vessel lumen segmentation techniques: models, features and extraction schemes.
TL;DR: This paper reviews state-of-the-art literature on vascular segmentation with a particular focus on 3D contrast-enhanced imaging modalities (MRA and CTA) and discusses the theoretical and practical properties of recent approaches and highlight the most advanced and promising ones.
1K
Four-Chamber Heart Modeling and Automatic Segmentation for 3-D Cardiac CT Volumes Using Marginal Space Learning and Steerable Features
TL;DR: An automatic four-chamber heart segmentation system for the quantitative functional analysis of the heart from cardiac computed tomography (CT) volumes is proposed and an efficient and robust approach for automatic heart chamber segmentation in 3D CT volumes is developed.
704
Related Papers (5)
Michiel Schaap,Coert Metz,Theo van Walsum,Alina G. van der Giessen,Annick C. Weustink,Nico R. Mollet,Christian Bauer,Hrvoje Bogunovic,Carlos Castro,Xiang Deng,Engin Dikici,Thomas F. O'Donnell,Michel Frenay,Ola Friman,Marcela Hernández Hoyos,Pieter H. Kitslaar,Karl Krissian,Caroline Kühnel,Miguel Luengo-Oroz,Maciej Orkisz,Örjan Smedby,Martin Styner,Andrzej Szymczak,Huseyin Tek,Chunliang Wang,Simon K. Warfield,Sebastian Zambal,Yong Zhang,Gabriel P. Krestin,Wiro J. Niessen,Wiro J. Niessen +30 more