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Cardiac MRI Left Ventricular Segmentation and Function Quantification Using Pre-trained Neural Networks

机译:心脏MRI左心室分割和功能量化使用预先培训的神经网络

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Deep learning has demonstrated promise for cardiac magnetic resonance image (MRI) segmentation. However, the performance is degraded when a trained model is applied to previously unseen datasets. In this work, we developed a way to employ a pre-trained model to segment the left ventricle (LV) and quantify LV indices in a new dataset. We trained a U-net with Monte-Carlo dropout on 45 cine MR images and applied the model to 10 subjects from the ACDC dataset. The initial segmentation was refined using a continuous kernel-cut algorithm and the refined segmentation was used to fine-tune the pre-trained U-net for 10min. This process was iterated several times until convergence and the updated model was used to segment the remaining 90 patients in the ACDC dataset. For the test dataset, we achieved Dice-similarity-coefficient of 0.81 ± 0.12 for LV myocardium and 0.90 ± 0.09 for LV cavity. Algorithm LV indices were strongly correlated with manual results (r= 0.86-0.99, p< 0.0001) with marginal biases of -8.8 g for LV myocar-dial mass, -0.9 ml for LV end-diastolic volume, -0.2 ml for LV end-systolic volume, -0.7 ml for LV stroke volume, and -0.6% for LV ejection fraction. The proposed approach required 12min for fine-tuning without requiring manual annotations of the new datasets and 1 s to segment a new image. These results suggest that the developed approach is effective in segmenting a previously unseen cardiac MRI dataset and quantifying LV indices without requiring manual segmentation of the new dataset.
机译:深度学习已经证明了心脏磁共振图像(MRI)分割的承诺。但是,当培训的模型应用于以前看不见的数据集时,性能降低。在这项工作中,我们开发了一种使用预先训练的模型来分割左心室(LV)并在新数据集中量化LV指数的方法。我们在45℃的MR图像上培训了U-Net,Monte-Carlo辍学器,并将模型应用于来自ACDC数据集的10个受试者。使用连续核切割算法改进初始分割,并使用精制的分段来微调预先训练的U-Net 10min。此过程迭代多次,直到收敛和更新的模型用于分割ACDC数据集中剩余的90名患者。对于测试数据集,我们实现了LV心肌0.81±0.12的骰子相似度系数,对于LV腔0.90±0.09。算法LV索引与手动结果(R = 0.86-0.99,P <0.0001)强烈相关,具有-8.8g的LV肌肉拨号质量为-8.8g,用于LV端舒张型体积-0.9ml,LV端的-0.2ml -0.7ml对于LV行程体积的体积,-0.7ml,LV喷射级分的-0.6%。所提出的方法需要12分钟进行微调,而无需手动注释新数据集和1秒以对新图像进行分割。这些结果表明,开发的方法在分割先前看不见的心脏MRI数据集并定量LV指数而无需手动分割新数据集。

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