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An Automatic Cardiac Segmentation Framework Based on Multi-sequence MR Image

机译:基于多序列MR图像的自动心脏分割框架

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LGE CMR is an efficient technology for detecting infarcted myocardium. An efficient and objective ventricle segmentation method in LGE can benefit the location of the infarcted myocardium. In this paper, we proposed an automatic framework for LGE image segmentation. There are just 5 labeled LGE volumes with about 15 slices of each volume. We adopted histogram match, an invariant of rotation registration method, on the other labeled modalities to achieve effective augmentation of the training data. A CNN segmentation model was trained based on the augmented training data by leave-one-out strategy. The predicted result of the model followed a connected component analysis for each class to remain the largest connected component as the final segmentation result. Our model was evaluated by the 2019 Multi-sequence Cardiac MR Segmentation Challenge. The mean testing result of 40 testing volumes on Dice score. Jaccard score, Surface distance, and Hausdorff distance is 0.8087, 0.6976, 2.8727 mm, and 15.6387 mm, respectively. The experiment result shows a satisfying performance of the proposed framework. Code is available at https://github.com/Suiiyu/MS-CMR2019.
机译:LGE CMR是一种检测梗死心肌的有效技术。 LGE中有效和目标心室分割方法可以使梗死的心肌的位置受益。在本文中,我们提出了一种用于LGE图像分割的自动框架。只有5个标记的LGE卷,每体积的约15片。我们采用直方图匹配,旋转登记方法的不变,在另一个标记的模式上实现了培训数据的有效增强。通过休假策略基于增强培训数据培训CNN分割模型。模型的预测结果遵循每个类的连接分量分析,以保持最大的连接组件作为最终分段结果。我们的模型由2019年的多序心先生分割挑战评估。骰子评分40个测试卷的平均测试结果。 Jaccard得分,表面距离和Hausdorff距离分别为0.8087,0.6976,2.8727 mm和15.6387 mm。实验结果显示了所提出的框架的满意性能。代码可在https://github.com/suiiyu/ms-cmr2019获得。

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