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首页> 外文期刊>BioMedical Engineering OnLine >Rapid automatic segmentation of abnormal tissue in late gadolinium enhancement cardiovascular magnetic resonance images for improved management of long-standing persistent atrial fibrillation
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Rapid automatic segmentation of abnormal tissue in late gadolinium enhancement cardiovascular magnetic resonance images for improved management of long-standing persistent atrial fibrillation

机译:晚期钆增强心血管磁共振图像中快速自动分割,以改善长期持久性心房颤动的管理

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Background Atrial fibrillation (AF) is the most common heart rhythm disorder. In order for late Gd enhancement cardiovascular magnetic resonance (LGE CMR) to ameliorate the AF management, the ready availability of the accurate enhancement segmentation is required. However, the computer-aided segmentation of enhancement in LGE CMR of AF is still an open question. Additionally, the number of centres that have reported successful application of LGE CMR to guide clinical AF strategies remains low, while the debate on LGE CMR’s diagnostic ability for AF still holds. The aim of this study is to propose a method that reliably distinguishes enhanced (abnormal) from non-enhanced (healthy) tissue within the left atrial wall of (pre-ablation and 3?months post-ablation) LGE CMR data-sets from long-standing persistent AF patients studied at our centre. Methods Enhancement segmentation was achieved by employing thresholds benchmarked against the statistics of the whole left atrial blood-pool (LABP). The test-set cross-validation mechanism was applied to determine the input feature representation and algorithm that best predict enhancement threshold levels. Results Global normalized intensity threshold levels T PRE =?1 1/4 and T POST =?1 5/8 were found to segment enhancement in data-sets acquired pre-ablation and at 3?months post-ablation, respectively. The segmentation results were corroborated by using visual inspection of LGE CMR brightness levels and one endocardial bipolar voltage map. The measured extent of pre-ablation fibrosis fell within the normal range for the specific arrhythmia phenotype. 3D volume renderings of segmented post-ablation enhancement emulated the expected ablation lesion patterns. By comparing our technique with other related approaches that proposed different threshold levels (although they also relied on reference regions from within the LABP) for segmenting enhancement in LGE CMR data-sets of AF patients, we illustrated that the cut-off levels employed by other centres may not be usable for clinical studies performed in our centre. Conclusions The proposed technique has great potential for successful employment in the AF management within our centre. It provides a highly desirable validation of the LGE CMR technique for AF studies. Inter-centre differences in the CMR acquisition protocol and image analysis strategy inevitably impede the selection of a universally optimal algorithm for segmentation of enhancement in AF studies.
机译:背景心房颤动(AF)是最常见的心脏节律障碍。为了使GD增强心血管磁共振(LGE CMR)改善AF管理,需要准确的增强分割的准备情况。然而,AF的LGE CMR中增强的计算机辅助分段仍然是一个打开的问题。此外,报告了LGE CMR的成功应用的中心数量仍然很低,而关于LGE CMR仍然拥有的诊断能力的辩论。本研究的目的是提出一种方法,可靠地区分左心房壁内(预烧蚀预烧蚀后的3个月)的非增强(健康)组织来区分增强(健康)组织LGE CMR数据集在我们中心学习的持久性AF患者。方法通过采用针对整个左心房血库(LABP)统计的阈值来实现增强分割。应用测试集交叉验证机制来确定最佳预测增强阈值水平的输入特征表示和算法。结果全局归一化强度阈值水平T pre =?1 1/4和t post =?1 5/8在数据集中获取的预冻结中的段增强和3个月分别在烧蚀后。通过使用LGE CMR亮度水平和一个内内容双极电压图来证实分段结果。预热纤维化的测量程度下降在特异性心律失常表型的正常范围内。 3D分段后冻结增强的卷效果仿真预期消融病变模式。通过将我们的技术与其他相关方法进行比较,提出了不同阈值水平的方法(尽管它们也依赖于Labp内的参考区域),用于在LGE CMR数据集中分段增强,我们说明了其他截止的水平中心可能无法用于在我们中心进行的临床研究。结论拟议的技术在我们中心内的AF管理中的成功就业潜力巨大。它提供了对AF研究的LGE CMR技术的非常理想的验证。 CMR采集协议和图像分析策略中的中心间差异不可避免地妨碍了一种普遍最佳算法,以进行AF研究中增强的分割。

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