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Automated left atrial time-resolved segmentation in MRI long-axis cine images using active contours

机译:使用Active Contours自动在MRI长轴调整图像中自动左心房分辨分段分割

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Segmentation of the left atrium (LA) is required to evaluate atrial size and function, which are important imaging biomarkers for a wide range of cardiovascular conditions, such as atrial fibrillation, stroke, and diastolic dysfunction. LA segmentations are currently being performed manually, which is time-consuming and observer-dependent. This study presents an automated image processing algorithm for time-resolved LA segmentation in cardiac magnetic resonance imaging (MRI) long-axis cine images of the 2-chamber (2ch) and 4-chamber (4ch)?views using active contours. The proposed algorithm combines mitral valve tracking, automated threshold calculation, edge detection on a radially resampled image, edge tracking based on Dijkstra’s algorithm, and post-processing involving smoothing and interpolation. The algorithm was evaluated in 37 patients diagnosed mainly with paroxysmal atrial fibrillation. Segmentation accuracy was assessed using the Dice similarity coefficient (DSC) and Hausdorff distance (HD), with manual segmentations in all time frames as the reference standard. For inter-observer variability analysis, a second observer performed manual segmentations at end-diastole and end-systole on all subjects. The proposed automated method achieved high performance in segmenting the LA in long-axis cine sequences, with a DSC of 0.96 for 2ch and 0.95 for 4ch, and an HD of 5.5?mm for 2ch and 6.4?mm for 4ch. The manual inter-observer variability analysis had an average DSC of 0.95 and an average HD of 4.9?mm. The proposed automated method achieved performance on par with human experts analyzing MRI images for evaluation of atrial size and function.
机译:需要左心房(LA)的分割来评估心房尺寸和功能,这是用于广泛的心血管条件的重要成像生物标志物,例如心房颤动,中风和舒张功能障碍。目前正在手动执行LA分段,这是耗时和观察者依赖的。该研究提出了一种自动图像处理算法,用于在2室(2CH)和4室(4CH)的心脏磁共振成像(MRI)长轴调速图像中的时间分辨LA分段的自动图像处理算法和4室(4CH)?使用主动轮廓的视图。所提出的算法结合了二尖瓣跟踪,自动阈值计算,基于Dijkstra算法的径向重采采样图像的边缘跟踪,以及涉及平滑和插值的后处理。该算法在37名患者中评估,主要诊断出阵发性心房颤动。使用骰子相似度系数(DSC)和Hausdorff距离(HD)评估分段精度,其中包含所有时间帧的手动分段作为参考标准。对于观察者间变异性分析,第二个观察者在所有受试者上进行了端舒张末端和末端收缩的手动分段。所提出的自动化方法在长轴调整序列中分割La的高性能,DSC为0.96,2CH和4CH的0.95,HD为5.5Ωmm,2ch×4ch。手动观察者间变异性分析的平均DSC为0.95,平均高清为4.9Ωmm。建议的自动化方法实现了与人类专家的表现,分析了MRI图像以评估心房尺寸和功能。

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