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首页> 外文期刊>Intelligence: A Multidisciplinary Journal >Fast fully automatic heart fat segmentation in computed tomography datasets
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Fast fully automatic heart fat segmentation in computed tomography datasets

机译:计算机断层扫描数据集快速全自动心脏脂肪分段

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摘要

Heart diseases affect a large part of the world's population. Studies have shown that these diseases are related to cardiac fat. Various medical diagnostic aid systems are developed to reduce these diseases. In this context, this paper presents a new approach to the segmentation of cardiac fat from Computed Tomography (CT) images. The study employs a clustering algorithm called Floor of Log (FoL). The advantage of this method is the significant drop in segmentation time. Support Vector Machine was used to learn the best FoL algorithm parameter as well as mathematical morphology techniques for noise removal. The time to segment cardiac fat on a CT is only 2.01 s on average. In contrast, literature works require more than one hour to perform segmentation. Therefore, this job is one of the fastest to segment an exam completely. The value of the Accuracy metric was 93.45% and Specificity of 95.52%. The proposed approach is automatic and requires less computational effort. With these results, the use of this approach for the segmentation of cardiac fat proves to be efficient, besides having good application times. Therefore, it has the potential to be a medical diagnostic aid tool. Consequently, it is possible to help experts achieve faster and more accurate results. (C) 2019 Elsevier Ltd. All rights reserved.
机译:心脏病影响世界的大部分人口。研究表明,这些疾病与心脏脂肪有关。开发了各种医疗诊断系统以减少这些疾病。在这种情况下,本文提出了一种新的计算机脂肪从计算机断层扫描(CT)图像分割的方法。该研究采用了一种称为Log(fol)底层的聚类算法。该方法的优点是分段时间的显着下降。支持向量机用于学习最佳的对算法参数以及用于噪声的数学形态学技术。在CT上分段心脏脂肪的时间平均仅为2.01秒。相比之下,文献作品需要超过一小时进行分割。因此,这项工作是完全分割考试的最快。精度度量的值为93.45%,特异性为95.52%。所提出的方法是自动的,需要更少的计算工作。通过这些结果,除了具有良好应用时间之外,使用这种方法的使用证明是有效的。因此,它有可能成为医疗诊断工具。因此,可以帮助专家实现更快,更准确的结果。 (c)2019年elestvier有限公司保留所有权利。

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