Convolutional neural networks (CNN) have demonstrated their ability to segment 2D cardiac ultrasound images. However, despite recent successes according to which the intra-observer variability on end-diastole and end-systole images has been reached, CNNs still struggle to leverage temporal information to provide accurate and temporally consistent segmentation maps across the whole cycle. Such consistency is required to accurately describe the cardiac function, a necessary step in diagnosing many cardiovascular diseases. In this paper, we propose a framework to learn the 2D+time apical long-axis cardiac shape such that the segmented sequences can benefit from temporal and anatomical consistency constraints. Our method is a post-processing that takes as input segmented echocardiographic sequences produced by any state-of-the-art method and processes it in two steps to (i) identify spatio-temporal inconsistencies according to the overall dynamics of the cardiac sequence and (ii) correct the inconsistencies. The identification and correction of cardiac inconsistencies relies on a constrained autoencoder trained to learn a physiologically interpretable embedding of cardiac shapes, where we can both detect and fix anomalies. We tested our framework on 98 full-cycle sequences from the CAMUS dataset, which are available alongside this paper. Our temporal regularization method not only improves the accuracy of the segmentation across the whole sequences, but also enforces temporal and anatomical consistency.
翻译:然而,尽管最近取得了成功,观测器内部在最终阴极和最终神经元图像上的变异性已经达到,但CNN仍然在努力利用时间信息在整个周期内提供准确和时间一致的分解图。这种一致性对于准确描述心脏功能是必要的,这是诊断许多心血管疾病的必要步骤。在本文件中,我们提出了一个框架,以学习2D+时间的双向长轴心肌形状,使分解序列能够受益于时间和解剖一致性限制。我们的方法是一种后处理,它以输入的分解回声心血管序列为基础,在整个周期内提供准确和时间一致的分解图。需要这种一致性来准确描述心脏功能,这是诊断许多心血管疾病的一个必要步骤。在本文中,我们提议了一个框架来学习2D+时间的直线性长轴心血管形状,以便分解的序列能够受益于时间和解剖的稳定性限制。我们的方法是一种后处理方法,以输入的分路回心心序列,通过任何最先进的方法和过程来提供准确性,以便(一)根据心脏序列的总体动态,查明和(二)纠正不一致之处。我们现有的整个C周期周期内测算的系统只能测量。