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Accurate Segmentation of the Left Ventricle in Computed Tomography Images for Local Wall Thickness Assessment

机译:在局部断层厚度评估的计算机断层扫描图像中准确分割左心室

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In recent years, the fully automatic segmentation of the whole heart from three-dimensional (3D) CT or MR images has become feasible with mean surface accuracies in the order of lmm. The assessment of local myocardial motion and wall thickness for different heart phases requires highly consistent delineation of the involved surfaces. Papillary muscles and misleading pericardial structures lead to challenges that are not easily resolved. This paper presents a framework to train boundary detection functions to explicitly avoid unwanted structures. A two-pass deformable adaptation process allows to reduce false boundary detections in the first pass while detecting most wanted boundaries in a second pass refinement. Cross-validation tests were performed for 67 cardiac datasets from 33 patients. Mean surface accuracies for the left ventricular endo-and epicardium are 0.76mm and 0.68mm, respectively. The percentage of local outliers with segmentation errors > 2mm is reduced by a factor of 3 as compared to a previously published approach. Wall thickness measurements in full 3D demonstrate that artifacts due to irregular endo-and epicardial contours are drastically reduced.
机译:近年来,从三维(3D)CT或MR图像对整个心脏进行全自动分割已变得可行,其平均表面精度约为1mm。对不同心脏阶段的局部心肌运动和壁厚的评估需要高度一致地描绘受累表面。乳头肌和误导的心包结构导致挑战不易解决。本文提出了一个训练边界检测功能的框架,以明确避免出现不需要的结构。两遍可变形适应过程允许减少第一遍中的错误边界检测,同时在第二遍精炼中检测到最需要的边界。对来自33位患者的67个心脏数据集进行了交叉验证测试。左心室内膜和心外膜的平均表面准确度分别为0.76mm和0.68mm。与先前发布的方法相比,分割误差大于2mm的局部离群值的百分比减少了3倍。全3D壁厚测量表明,由于不规则的心内膜和心外膜轮廓而引起的伪影已大大减少。

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