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Improved Technique to Detect the Infarction in Delayed Enhancement Image Using K-Mean Method

机译:利用K均值方法改进的延迟增强图像中梗塞的检测技术

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Cardiac magnetic resonance (CMR) imaging is an important technique for cardiac diagnosis. Measuring the scar in myocardium is important to cardiologists to assess the viability of the heart. Delayed enhancement (DE) images are acquired after about 10 minutes following injecting the patient with contrast agent so the infracted region appears brighter than its surroundings. A common method to segment the infarction from DE images is based on intensity Thresholding. This technique performed poorly for detecting small infarcts in noisy images. In this work we aim to identify the best threshold value to segment the infarction in case of segmentation using simple Threshold and propose a modified technique to improve the segmentation in noisy images. Our proposed technique is based on enhancing Thresholding using k-means clustering. We test our proposed model using computer simulated and real images with different contrast-to-noise ratio (CNR). We used F-score, which is a combined measure of the precision and sensitivity, to determine the performance of the proposed technique versus simple Thresholding. The results show that the proposed technique outperforms existing methods.
机译:心脏磁共振(CMR)成像是心脏诊断的重要技术。测量心肌中的疤痕对于心脏病专家评估心脏的生存能力很重要。在向患者注射造影剂后约10分钟后,获得延迟增强(DE)图像,因此侵入区域显得比周围环境明亮。从DE图像分割梗塞的常用方法是基于强度阈值。该技术在检测噪点图像中的小梗塞方面效果不佳。在这项工作中,我们的目的是在使用简单阈值进行分割的情况下,确定最佳的阈值以对梗塞进行分割,并提出一种改进的技术来改善嘈杂图像中的分割。我们提出的技术基于使用k均值聚类增强阈值。我们使用具有不同对比度噪声比(CNR)的计算机仿真图像和真实图像测试了我们提出的模型。我们使用F分数(它是精度和灵敏度的组合度量)来确定所提出的技术与简单阈值的性能。结果表明,所提出的技术优于现有方法。

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