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Correlated Regression Feature Learning for Automated Right Ventricle Segmentation

机译:相关回归特征学习用于自动右心室分割

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摘要

Accurate segmentation of right ventricle (RV) from cardiac magnetic resonance (MR) images can help a doctor to robustly quantify the clinical indices including ejection fraction. In this paper, we develop one regression convolutional neural network (RegressionCNN) which combines a holistic regression model and a convolutional neural network (CNN) together to determine boundary points’ coordinates of RV directly and simultaneously. In our approach, we take the fully connected layers of CNN as the holistic regression model to perform RV segmentation, and the feature maps extracted by convolutional layers of CNN are converted into 1-D vector to connect holistic regression model. Such connection allows us to make full use of the optimization algorithm to constantly optimize the convolutional layers to directly learn the holistic regression model in the training process rather than separate feature extraction and regression model learning. Therefore, RegressionCNN can achieve optimally convolutional feature learning for accurately catching the regression features that are more correlated to RV regression segmentation task in training process, and this can reduce the latent mismatch influence between the feature extraction and the following regression model learning. We evaluate the performance of RegressionCNN on cardiac MR images acquired of 145 human subjects from two clinical centers. The results have shown that RegressionCNN’s results are highly correlated (average boundary correlation coefficient equals 0.9827) and consistent with the manual delineation (average dice metric equals 0.8351). Hence, RegressionCNN could be an effective way to segment RV from cardiac MR images accurately and automatically.
机译:从心脏磁共振(MR)图像正确分割右心室(RV)可以帮助医生可靠地量化包括射血分数的临床指标。本文中,我们开发了一个回归卷积神经网络(RegressionCNN),该模型将整体回归模型和卷积神经网络(CNN)结合在一起,可以直接并同时确定RV的边界点坐标。在我们的方法中,我们以CNN的全连接层作为整体回归模型来执行RV分割,并将CNN的卷积层提取的特征图转换为一维向量以连接整体回归模型。这样的联系使我们能够充分利用优化算法来不断优化卷积层,从而在训练过程中直接学习整体回归模型,而不必分离特征提取和回归模型学习。因此,RegressionCNN可以实现最佳卷积特征学习,以准确地捕获与训练过程中与RV回归分割任务更相关的回归特征,从而可以减少特征提取与后续回归模型学习之间潜在的不匹配影响。我们评估了从两个临床中心的145名人类受试者获得的心脏MR图像上RegressionCNN的性能。结果表明,RegressionCNN的结果具有很高的相关性(平均边界相关系数等于0.9827),并且与手动描述保持一致(平均骰子度量等于0.8351)。因此,RegressionCNN可能是一种准确,自动地从心脏MR图像分割RV的有效方法。

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