论文标题
使用深度学习对MRI的主动脉直径的无分段估计
Segmentation-free Estimation of Aortic Diameters from MRI Using Deep Learning
论文作者
论文摘要
主动脉直径的准确测量值对于诊断心血管疾病和治疗决策至关重要。目前,这些测量是由医疗保健专业人员手动执行的,耗时,高度可变,并且缺乏可重复性。在这项工作中,我们提出了一种监督的深度学习方法,以直接估计主动脉直径。该方法是在没有对比剂的情况下设计并测试了100多次磁共振血管造影扫描。所有数据均在通常用于临床实践中通常使用的六个主动脉位置。我们的方法利用3D+2D卷积神经网络(CNN)作为输入3D扫描,并在给定位置输出主动脉直径。在与完全3D CNN的5倍交叉验证比较和3D多分辨率CNN中,我们的方法在预测主动脉直径方面始终如一。总体而言,根据所考虑的主动脉位置,3D+2D CNN在2.2-2.4 mm之间达到了平均绝对误差。这些误差比观察者间的变异性高1 mm。因此,提出我们的方法几乎可以达到专家的表现。我们得出的结论是,这项工作允许进一步探索自动算法,以直接估算解剖结构,而无需进行分割步骤。它还为临床环境中心血管测量的自动化开辟了可能性。
Accurate and reproducible measurements of the aortic diameters are crucial for the diagnosis of cardiovascular diseases and for therapeutic decision making. Currently, these measurements are manually performed by healthcare professionals, being time consuming, highly variable, and suffering from lack of reproducibility. In this work we propose a supervised deep learning method for the direct estimation of aortic diameters. The approach is devised and tested over 100 magnetic resonance angiography scans without contrast agent. All data was expert-annotated at six aortic locations typically used in clinical practice. Our approach makes use of a 3D+2D convolutional neural network (CNN) that takes as input a 3D scan and outputs the aortic diameter at a given location. In a 5-fold cross-validation comparison against a fully 3D CNN and against a 3D multiresolution CNN, our approach was consistently superior in predicting the aortic diameters. Overall, the 3D+2D CNN achieved a mean absolute error between 2.2-2.4 mm depending on the considered aortic location. These errors are less than 1 mm higher than the inter-observer variability. Thus, suggesting that our method makes predictions almost reaching the expert's performance. We conclude that the work allows to further explore automatic algorithms for direct estimation of anatomical structures without the necessity of a segmentation step. It also opens possibilities for the automation of cardiovascular measurements in clinical settings.