Synthesis of gadolinium‐enhanced glioma images on multisequence magnetic resonance images using contrastive learning

Author:

Xie Qian12,Lin Yusong234,Wang Meiyun256,Wu Yaping56

Affiliation:

1. School of Computer and Artificial Intelligence Zhengzhou University Zhengzhou Henan China

2. Collaborative Innovation Center for Internet Healthcare Zhengzhou University Zhengzhou Henan China

3. School of Cyber Science and Engineering Zhengzhou University Zhengzhou Henan China

4. Hanwei IoT Institute Zhengzhou University Zhengzhou Henan China

5. Department of Medical Imaging Henan Provincial People's Hospital Zhengzhou Henan China

6. Laboratory of Brain Science and Brain‐Like Intelligence Technology Biomedical Research Institute Henan Academy of Science Zhengzhou Henan China

Abstract

AbstractBackgroundGadolinium‐based contrast agents are commonly used in brain magnetic resonance imaging (MRI), however, they cannot be used by patients with allergic reactions or poor renal function. For long‐term follow‐up patients, gadolinium deposition in the body can cause nephrogenic systemic fibrosis and other potential risks.PurposeDeveloping a new method of enhanced image synthesis based on the advantages of multisequence MRI has important clinical value for these patients. In this paper, an end‐to‐end synthesis model structure similarity index measure (SSIM)‐based Dual Constrastive Learning with Attention (SDACL) based on contrastive learning is proposed to synthesize contrast‐enhanced T1 (T1ce) using three unenhanced MRI images of T1, T2, and Flair in patients with glioma.MethodsThe model uses the attention–dilation generator to enlarge the receptive field by expanding the residual blocks and to strengthen the feature representation and context learning of multisequence MRI. To enhance the detail and texture performance of the imaged tumor area, a comprehensive loss function combining patch‐level contrast loss and structural similarity loss is created, which can effectively suppress noise and ensure the consistency of synthesized images and real images.ResultsThe normalized root‐mean‐square error (NRMSE), peak signal‐to‐noise ratio (PSNR), and SSIM of the model on the independent test set are 0.307  0.12, 23.337  3.21, and 0.881  0.05, respectively.ConclusionsResults show this method can be used for the multisequence synthesis of T1ce images, which can provide valuable information for clinical diagnosis. 

Funder

National Natural Science Foundation of China

Henan Provincial Science and Technology Research Project

Publisher

Wiley

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