Fine-grained calibrated double-attention convolutional network for left ventricular segmentation

Phys Med Biol. 2022 Mar 3;67(5). doi: 10.1088/1361-6560/ac5570.

Abstract

Objective.Left ventricular (LV) segmentation of cardiac magnetic resonance imaging (MRI) is essential for diagnosing and treating the early stage of heart diseases. In convolutional neural networks, the target information of the LV in feature maps may be lost with convolution and max-pooling, particularly at the end of systolic. Fine segmentation of ventricular contour is still a challenge, and it may cause problems with inaccurate calculation of clinical parameters (e.g. ventricular volume). In order to improve the similarity of the neural network output and the target segmentation region, in this paper, a fine-grained calibrated double-attention convolutional network (FCDA-Net) is proposed to finely segment the endocardium and epicardium from ventricular MRI.Approach.FCDA-Nettakes the U-net as the backbone network, and the encoder-decoder structure incorporates a double grouped-attention module that is constructed by a fine calibration spatial attention module (fcSAM) and a fine calibration channel attention module (fcCAM). The double grouped-attention mechanism enhances the expression of information in both spatial and channelwise feature maps to achieve fine calibration.Main Results.The proposed approach is evaluated on the public MICCAI 2009 challenge dataset, and ablation experiments are conducted to demonstrate the effect of each grouped-attention module. Compared with other advanced segmentation methods,FCDA-Netcan obtain better LV segmentation performance.Significance.The LV segmentation results of MRI can be used to perform more accurate quantitative analysis of many essential clinical parameters and it can play an important role in image-guided clinical surgery.

Keywords: attention modules; convolutional neural network; left ventricle (LV); magnetic resonance imaging (MRI).

MeSH terms

  • Endocardium
  • Heart
  • Heart Diseases*
  • Heart Ventricles* / diagnostic imaging
  • Humans
  • Neural Networks, Computer