Aorta Segmentation in 3D CT Images by Combining Image Processing and Machine Learning Techniques.

IF 1.6 4区 医学 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS Cardiovascular Engineering and Technology Pub Date : 2024-06-01 Epub Date: 2024-02-22 DOI:10.1007/s13239-024-00720-7
Christos Mavridis, Theodore L Economopoulos, Georgios Benetos, George K Matsopoulos
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Abstract

Purpose: Aorta segmentation is extremely useful in clinical practice, allowing the diagnosis of numerous pathologies, such as dissections, aneurysms and occlusive disease. In such cases, image segmentation is prerequisite for applying diagnostic algorithms, which in turn allow the prediction of possible complications and enable risk assessment, which is crucial in saving lives. The aim of this paper is to present a novel fully automatic 3D segmentation method, which combines basic image processing techniques and more advanced machine learning algorithms, for detecting and modelling the aorta in 3D CT imaging data.

Methods: An initial intensity threshold-based segmentation procedure is followed by a classification-based segmentation approach, based on a Markov Random Field network. The result of the proposed two-stage segmentation process is modelled and visualized.

Results: The proposed methodology was applied to 16 3D CT data sets and the extracted aortic segments were reconstructed as 3D models. The performance of segmentation was evaluated both qualitatively and quantitatively against other commonly used segmentation techniques, in terms of the accuracy achieved, compared to the actual aorta, which was defined manually by experts.

Conclusion: The proposed methodology achieved superior segmentation performance, compared to all compared segmentation techniques, in terms of the accuracy of the extracted 3D aortic model. Therefore, the proposed segmentation scheme could be used in clinical practice, such as in treatment planning and assessment, as it can speed up the evaluation of the medical imaging data, which is commonly a lengthy and tedious process.

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结合图像处理和机器学习技术在三维 CT 图像中分割主动脉
目的:主动脉分割在临床实践中非常有用,可以诊断出许多病症,如血管断裂、动脉瘤和闭塞性疾病。在这种情况下,图像分割是应用诊断算法的先决条件,而应用诊断算法又可以预测可能出现的并发症并进行风险评估,这对挽救生命至关重要。本文旨在介绍一种新型的全自动三维分割方法,该方法结合了基本的图像处理技术和更先进的机器学习算法,可用于三维 CT 成像数据中主动脉的检测和建模:方法:在基于强度阈值的初始分割程序之后,采用基于马尔可夫随机场网络的分类分割方法。方法:在基于强度阈值的初始分割过程之后,再采用基于马尔可夫随机场网络的分类分割方法,对所建议的两阶段分割过程的结果进行建模和可视化:结果:建议的方法被应用于 16 个三维 CT 数据集,提取的主动脉节段被重建为三维模型。与其他常用的分割技术相比,对分割的性能进行了定性和定量评估:结论:就提取的三维主动脉模型的准确性而言,所提出的方法在分割性能方面优于所有其他分割技术。因此,建议的分割方案可用于临床实践,如治疗计划和评估,因为它可以加快医学影像数据的评估,而这通常是一个漫长而乏味的过程。
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来源期刊
Cardiovascular Engineering and Technology
Cardiovascular Engineering and Technology Engineering-Biomedical Engineering
CiteScore
4.00
自引率
0.00%
发文量
51
期刊介绍: Cardiovascular Engineering and Technology is a journal publishing the spectrum of basic to translational research in all aspects of cardiovascular physiology and medical treatment. It is the forum for academic and industrial investigators to disseminate research that utilizes engineering principles and methods to advance fundamental knowledge and technological solutions related to the cardiovascular system. Manuscripts spanning from subcellular to systems level topics are invited, including but not limited to implantable medical devices, hemodynamics and tissue biomechanics, functional imaging, surgical devices, electrophysiology, tissue engineering and regenerative medicine, diagnostic instruments, transport and delivery of biologics, and sensors. In addition to manuscripts describing the original publication of research, manuscripts reviewing developments in these topics or their state-of-art are also invited.
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