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A texture-based probability mapping for localisation of clinically important cardiac segments in the myocardium in cardiac magnetic resonance images from myocardial infarction patients

机译:基于纹理的概率映射,用于在心肌梗死患者的心脏磁共振图像中定位临床上重要的心肌节段

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This paper presents a novel method for the identification of myocardial regions associated with increased risk of life threatening arrhythmia in patients with healed myocardial infarction assessed by late enhanced gadolinium magnetic resonance images. A probability mapping technique is used to create images where each pixel value corresponds to the probability of that pixel representing damaged myocardium. Cardiac segments are defined as the set of pixel positions associated with probability values between a lower and an upper threshold. From the corresponding pixels in the original images several features are calculated. The features studied here are the relative size and entropy values based on histograms with varying number of bins. Features calculated for a specific cardiac segment are compared between patients with high and low risk of arrhythmia. The results from comparing a large number of cardiac segments indicate that the entropy measure has a better localisation property compared to the relative size of the myocardial damage, and that the localisation is more focused for fewer number of bins in the entropy calculation.
机译:本文提出了一种新的方法,可通过assessed增强磁共振成像评估,鉴定出心肌梗死后生命危险增加的威胁生命的心律失常相关的心肌区域。概率映射技术用于创建图像,其中每个像素值对应于该像素代表受损心肌的概率。心脏节段定义为与下限阈值和上限阈值之间的概率值相关联的像素位置集合。根据原始图像中的相应像素,可以计算出多个特征。此处研究的特征是基于具有不同数量仓的直方图的相对大小和熵值。在具有高和低心律失常风险的患者之间比较针对特定心脏节段计算出的特征。比较大量心脏节段的结果表明,与心肌损伤的相对大小相比,熵测度具有更好的定位特性,并且在熵计算中,定位更集中于较少的bin数。

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