Abstract
BackgroundDual-source computed tomography (DSCT) is a very effective way for diagnosis and treatment of heart disease. The quantitative information of spatiotemporal DSCT images can be important for the evaluation of cardiac function. To avoid the shortcoming of manual delineation, it is imperative to develop an automatic segmentation technique for 4D cardiac images.MethodsIn this paper, we implement the heart segmentation-propagation framework based on nonrigid registration. The corresponding points of anatomical substructures are extracted by using the extension of n-dimensional scale invariant feature transform method. They are considered as a constraint term of nonrigid registration using the free-form deformation, in order to restrain the large variations and boundary ambiguity between subjects.ResultsWe validate our method on 15 patients at ten time phases. Atlases are constructed by the training dataset from ten patients. On the remaining data the median overlap is shown to improve significantly compared to original mutual information, in particular from 0.4703 to 0.5015 ( p = 5.0 times 10^{ - 4} ) for left ventricle myocardium and from 0.6307 to 0.6519 ( p = 6.0 times 10^{ - 4} ) for right atrium.ConclusionsThe proposed method outperforms standard mutual information of intensity only. The segmentation errors had been significantly reduced at the left ventricle myocardium and the right atrium. The mean surface distance of using our framework is around 1.73 mm for the whole heart.
Highlights
Dual-source computed tomography (DSCT) is a very effective way for diagnosis and treatment of heart disease
Our aim is to improve the segmentation accuracy of DSCT images under the condition of the large variations and boundary ambiguity
Nonrigid registration was achieved by mutual information with corresponding points constraint based on the free-form deformation
Summary
Dual-source computed tomography (DSCT) is a very effective way for diagnosis and treatment of heart disease. The quantitative information of spatiotemporal DSCT images can be important for the evaluation of cardiac function. To avoid the shortcoming of manual delineation, it is imperative to develop an automatic segmentation technique for 4D cardiac images. The morbidity of cardiovascular diseases (CVDs) is rapidly increasing in. An early diagnosis and treatment for this illness is of great use to reduce the death toll. The doctors diagnose it by electrocardiogram or imaging of patient, the shortcoming of these means is absence of quantitative information. Lu et al BioMed Eng OnLine (2017) 16:39 advances in evaluation of cardiac function based on medical images have shown tremendous potential towards achieving quantitative diagnosis [2, 3]. Among the various imaging modalities, cardiac magnetic resonance imaging (MRI) is a mainstream technology because of non-ionizing radiation [4]
Published Version (Free)
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have