Left Ventricle Segmentation and Quantification from Cardiac Cine MR Images via Multi-task Learning.

Shusil Dangi, Ziv Yaniv, Cristian A Linte
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Abstract

Segmentation of the left ventricle and quantification of various cardiac contractile functions is crucial for the timely diagnosis and treatment of cardiovascular diseases. Traditionally, the two tasks have been tackled independently. Here we propose a convolutional neural network based multi-task learning approach to perform both tasks simultaneously, such that, the network learns better representation of the data with improved generalization performance. Probabilistic formulation of the problem enables learning the task uncertainties during the training, which are used to automatically compute the weights for the tasks. We performed a five fold cross-validation of the myocardium segmentation obtained from the proposed multi-task network on 97 patient 4-dimensional cardiac cine-MRI datasets available through the STA-COM LV segmentation challenge against the provided gold-standard myocardium segmentation, obtaining a Dice overlap of 0.849 ± 0.036 and mean surface distance of 0.274 ± 0.083 mm, while simultaneously estimating the myocardial area with mean absolute difference error of 205 ± 198 mm2.

Abstract Image

Abstract Image

Abstract Image

通过多任务学习从心脏电影MR图像中进行左心室分割和量化。
左心室的分割和各种心脏收缩功能的量化对于心血管疾病的及时诊断和治疗至关重要。传统上,这两项任务是独立处理的。在这里,我们提出了一种基于卷积神经网络的多任务学习方法来同时执行这两个任务,这样,网络就可以更好地学习数据的表示,并提高泛化性能。该问题的概率公式能够在训练过程中学习任务的不确定性,用于自动计算任务的权重。我们在通过STA-COM LV分割挑战获得的97个患者4维心脏电影MRI数据集上对从所提出的多任务网络获得的心肌分割进行了五倍交叉验证,获得了0.849±0.036的Dice重叠和0.274±0.083 mm的平均表面距离,同时估计心肌面积,平均绝对差误差为205±198 mm2。
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