IEEE Trans Med Imaging. 2017 Oct;36(10):2057-2067. doi: 10.1109/TMI.2017.2709251. Epub 2017 May 26.
Cardiac indices estimation is of great importance during identification and diagnosis of cardiac disease in clinical routine. However, estimation of multitype cardiac indices with consistently reliable and high accuracy is still a great challenge due to the high variability of cardiac structures and the complexity of temporal dynamics in cardiac MR sequences. While efforts have been devoted into cardiac volumes estimation through feature engineering followed by a independent regression model, these methods suffer from the vulnerable feature representation and incompatible regression model. In this paper, we propose a semi-automated method for multitype cardiac indices estimation. After the manual labeling of two landmarks for ROI cropping, an integrated deep neural network Indices-Net is designed to jointly learn the representation and regression models. It comprises two tightly-coupled networks, such as a deep convolution autoencoder for cardiac image representation, and a multiple output convolution neural network for indices regression. Joint learning of the two networks effectively enhances the expressiveness of image representation with respect to cardiac indices, and the compatibility between image representation and indices regression, thus leading to accurate and reliable estimations for all the cardiac indices. When applied with five-fold cross validation on MR images of 145 subjects, Indices-Net achieves consistently low estimation error for LV wall thicknesses (1.44 ± 0.71 mm) and areas of cavity and myocardium (204 ± 133 mm). It outperforms, with significant error reductions, segmentation method (55.1% and 17.4%), and two-phase direct volume-only methods (12.7% and 14.6%) for wall thicknesses and areas, respectively. These advantages endow the proposed method a great potential in clinical cardiac function assessment.
在临床常规中,心脏指数的估计对于心脏疾病的识别和诊断非常重要。然而,由于心脏结构的高度可变性和心脏磁共振序列中时间动态的复杂性,用一致可靠且高精度来估计多种心脏指数仍然是一个巨大的挑战。虽然已经通过特征工程和独立回归模型来努力进行心脏容积估计,但这些方法受到脆弱的特征表示和不兼容的回归模型的限制。在本文中,我们提出了一种用于多种心脏指数估计的半自动方法。在手动标记两个用于 ROI 裁剪的地标后,设计了一个集成的深度神经网络 Indices-Net 来共同学习表示和回归模型。它由两个紧密耦合的网络组成,例如用于心脏图像表示的深度卷积自动编码器,以及用于指数回归的多输出卷积神经网络。两个网络的联合学习有效地增强了图像表示对心脏指数的表现力,以及图像表示和指数回归之间的兼容性,从而实现了所有心脏指数的准确可靠估计。在对 145 名受试者的磁共振图像进行五折交叉验证时,Indices-Net 对 LV 壁厚度(1.44 ± 0.71mm)和腔和心肌面积(204 ± 133mm)的估计误差始终较低。与分割方法(55.1%和 17.4%)和两相直接体积仅方法(12.7%和 14.6%)相比,它在壁厚度和面积方面都有显著的误差减少,表现出色。这些优势使该方法在临床心脏功能评估中具有很大的潜力。