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Data-Driven Feature Learning for Myocardial Segmentation of CP-BOLD MRI

机译:数据驱动的特征学习用于CP-BOLD MRI的心肌分割

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Cardiac Phase-resolved Blood Oxygen-Level-Dependent (CP-BOLD) MR is capable of diagnosing an ongoing ischemia by detecting changes in myocardial intensity patterns at rest without any contrast and stress agents. Visualizing and detecting these changes require significant post-processing, including myocardial segmentation for isolating the myocardium. But, changes in myocardial intensity pattern and myocardial shape due to the heart's motion challenge automated standard CINE MR myocardial segmentation techniques resulting in a significant drop of segmentation accuracy. We hypothesize that the main reason behind this phenomenon is the lack of discernible features. In this paper, a multi scale discriminative dictionary learning approach is proposed for supervised learning and sparse representation of the myocardium, to improve the myocardial feature selection. The technique is validated on a challenging dataset of CP-BOLD MR and standard CINE MR acquired in baseline and ischemic condition across 10 canine subjects. The proposed method significantly outperforms standard cardiac segmentation techniques, including segmentation via registration, level sets and supervised methods for myocardial segmentation.
机译:心脏相位分辨血氧水平依赖性(CP-BOLD)MR能够通过检测静止状态下心肌强度模式的变化来诊断正在进行的局部缺血,而无需任何对比剂和压力制剂。可视化和检测这些变化需要大量的后处理,包括心肌分割以分离心肌。但是,由于心脏运动而导致的心肌强度模式和心肌形状的变化挑战了自动标准CINE MR心肌分割技术,导致分割精度显着下降。我们假设这种现象背后的主要原因是缺乏明显的特征。本文提出了一种用于心肌的监督学习和稀疏表示的多尺度判别词典学习方法,以改善心肌特征的选择。该技术已在10位犬科动物的基线和局部缺血情况下,在具有挑战性的CP-BOLD MR和标准CINE MR数据集上得到验证。拟议的方法明显优于标准的心脏分割技术,包括通过配准分割,水平集和有监督的心肌分割方法。

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