Abstract
Since Late-Gadolinium Enhancement (LGE) of cardiac magnetic resonance (CMR) visualizes myocardial infarction, and the balanced-Steady State Free Precession (bSSFP) cine sequence can capture cardiac motions and present clear boundaries; multimodal CMR segmentation has played an important role in the assessment of myocardial viability and clinical diagnosis, while automatic and accurate CMR segmentation still remains challenging due to a very small amount of labeled LGE data and the relatively low contrasts of LGE. The main purpose of our work is to learn the real/fake bSSFP modality with ground truths to indirectly segment the LGE modality of cardiac MR by using a proposed cross-modality multicascade framework: cross-modality translation network and automatic segmentation network, respectively. In the segmentation stage, a novel multicascade pix2pix network is designed to segment the fake bSSFP sequence obtained from a cross-modality translation network. Moreover, we propose perceptual loss measuring features between ground truth and prediction, which are extracted from the pretrained vgg network in the segmentation stage. We evaluate the performance of the proposed method on the multimodal CMR dataset and verify its superiority over other state-of-the-art approaches under different network structures and different types of adversarial losses in terms of dice accuracy in testing. Therefore, the proposed network is promising for Indirect Cardiac LGE Segmentation in clinical applications.
Highlights
Multimodal cardiac magnetic resonance (CMR) imaging is an essential tool in clinics for the screening and diagnosis of cardiac diseases
The main contributions of this work are clarified as follows: (1) We develop a novel indirect Late-Gadolinium Enhancement (LGE) segmentation framework based on multimodal images; one of the primary components is to translate the LGE modality that needs to be segmented but only has very small amount of labeled data, into the balanced-Steady State Free Precession (bSSFP) modality that is easy to be segmented by our proposed method
We proposed a CMMCSegNet framework based on multimodal cardiac MR images for indirect LGE segmentation
Summary
Multimodal CMR imaging is an essential tool in clinics for the screening and diagnosis of cardiac diseases. Different imaging modalities contain different sorts of useful information for cardiac disease screening task; the combination of different imaging modalities can overcome the limitations of an individual modality. Different from LGE images, the bSSFP can highlight the high signal area of the fluid but appear a uniform signal for other tissues; e.g., the large blood vessels and coronary arteries can be observed clearly in bSSFP because of more obvious contrast in the heart muscle and blood pool. Considering different MRI modalities is important for the acquisition of accurate cardiac information [1]
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More From: Computational and mathematical methods in medicine
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