Multimodality-based super-resolution reconstruction for routine brain magnetic resonance images / 南方医科大学学报
Journal of Southern Medical University
; (12): 1019-1025, 2022.
Article
в Zh
| WPRIM
| ID: wpr-941035
Ответственная библиотека:
WPRO
ABSTRACT
OBJECTIVE@#To propose a multi-modality-based super-resolution synthesis model for reconstruction of routine brain magnetic resonance images (MRI) with a low resolution and a high thickness into high-resolution images.@*METHODS@#Based on real paired low-high resolution MRI data (2D T1, 2D T2 FLAIR and 3D T1), a structure-constrained image mapping network was used to extract important features from the images with different modalities including the whole T1 and subcortical regions of T2 FLAIR to reconstruct T1 images with higher resolutions. The gray scale intensity and structural similarities between the super-resolution images and high-resolution images were used to enhance the reconstruction performance. We used the anatomical information acquired from segment maps of the super-resolution T1 image and the ground truth by a segmentation tool as a significant constraint for adaptive learning of the intrinsic tissue structure characteristics of the brain to improve the reconstruction performance of the model.@*RESULTS@#Our method showed the performance on the testing dataset than other methods with an average PSNR of 33.11 and SSIM of 0.996. The anatomical structure of the brain including the sulcus, gyrus, and subcortex were all reconstructed clearly using the proposed method, which also greatly enhanced the precision of MSCSR for brain volume measurement.@*CONCLUSION@#The proposed MSCSR model shows excellent performance for reconstructing super-resolution brain MR images based on the information of brain tissue structure and multimodality MR images.
Key words
Полный текст:
1
База данных:
WPRIM
Основная тема:
Image Processing, Computer-Assisted
/
Brain
/
Magnetic Resonance Imaging
Тип исследования:
Prognostic_studies
Язык:
Zh
Журнал:
Journal of Southern Medical University
Год:
2022
Тип:
Article