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Computer-Aided Infarction Identification from Cardiac CT Images: A Biomechanical Approach with SVM

机译:从心脏CT图像进行计算机辅助梗死识别:一种支持向量机的生物力学方法

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Compared with global measurements such as ejection fraction, regional myocardial deformation can better aid detection of cardiac dysfunction. Although tagged and strain-encoded MR images can provide such regional information, they are uncommon in clinical routine. In contrast, cardiac CT images are more common with lower cost, but only provide motion of cardiac boundaries and additional constraints are required to obtain the myocardial strains. To verify the potential of contrast-enhanced CT images on computer-aided infarction identification, we propose a biomechanical approach combined with the support vector machine (SVM). A biomechanical model is used with deformable image registration to estimate 3D myocardial strains from CT images, and the regional strains and CT image intensities are input to the SVM classifier for regional infarction identification. Cross-validations on ten canine image sequences with artificially induced infarctions showed that the normalized radial and first principal strains were the most discriminative features, with respective classification accuracies of 87±13% and 84±10% when used with the normalized CT image intensity.
机译:与整体测量(例如射血分数)相比,局部心肌变形可以更好地帮助检测心脏功能障碍。尽管标记和应变编码的MR图像可以提供此类区域信息,但在临床常规中并不常见。相反,心脏CT图像以较低的成本更为常见,但仅提供心脏边界的运动,并且需要其他约束条件才能获得心肌应变。为了验证增强CT图像在计算机辅助梗死识别中的潜力,我们提出了一种与支持向量机(SVM)相结合的生物力学方法。将生物力学模型与可变形图像配准一起使用,以根据CT图像估算3D心肌应变,并将区域应变和CT图像强度输入SVM分类器,以进行区域梗死识别。对十个人工诱发梗死的犬图像序列的交叉验证显示,归一化的径向和第一主应变是最有区别的特征,当与归一化的CT图像强度一起使用时,各自的分类精度为87±13%和84±10%。

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