| Literature DB >> 35013383 |
Liyao Song1, Quan Wang2, Ting Liu3, Haiwei Li2, Jiancun Fan4, Jian Yang5, Bingliang Hu6.
Abstract
Spatial resolution is a key factor of quantitatively evaluating the quality of magnetic resonance imagery (MRI). Super-resolution (SR) approaches can improve its spatial resolution by reconstructing high-resolution (HR) images from low-resolution (LR) ones to meet clinical and scientific requirements. To increase the quality of brain MRI, we study a robust residual-learning SR network (RRLSRN) to generate a sharp HR brain image from an LR input. Due to the Charbonnier loss can handle outliers well, and Gradient Difference Loss (GDL) can sharpen an image, we combined the Charbonnier loss and GDL to improve the robustness of the model and enhance the texture information of SR results. Two MRI datasets of adult brain, Kirby 21 and NAMIC, were used to train and verify the effectiveness of our model. To further verify the generalizability and robustness of the proposed model, we collected eight clinical fetal brain MRI 2D data for evaluation. The experimental results have shown that the proposed deep residual-learning network achieved superior performance and high efficiency over other compared methods.Entities:
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Year: 2022 PMID: 35013383 PMCID: PMC8748749 DOI: 10.1038/s41598-021-03979-1
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 2Illustration of SR results with upsampling (scale factor is 2): (a) Kirby 21; (b) NAMIC; (c) clinical fetal brain MR images.
Figure 3The error maps of SR results: (a) Kirby 21; (b) NAMIC; (c) clinical fetal brain MR images.
The mean, standard deviation (SD) and confidence interval (CI) of PSNR/SSIM for scale factor between our method and compared methods on Kirby 21 dataset.
| Kirby 21 | Metric | Cubic spline | NMU | LRTV | SRCNN | Ours |
|---|---|---|---|---|---|---|
| Mean | PSNR | 34.16 | 34.40 | 35.26 | 36.56 | 37.16 |
| SD | PSNR | 1.90 | 2.00 | 1.90 | 1.02 | 1.05 |
| CI (95%) | PSNR | [31.80,36.51] | [31.87,36.87] | [32.90,37.62] | [35.29,37.83] | [35.90,38.43] |
| Mean | SSIM | 0.9402 | 0.9464 | 0.9589 | 0.9496 | 0.9902 |
| SD | SSIM | 0.1109 | 0.1056 | 0.0083 | 0.0088 | 0.0013 |
| CI (95%) | SSIM | [0.9264,0.9540] | [0.9333,0.9595] | [0.9485,0.9692] | [0.9388,0.9605] | [0.9886,0.9919] |
The mean, standard deviation (SD) and confidence interval (CI) of PSNR/SSIM for scale factor between our method and compared methods on NAMIC dataset.
| NAMIC | Metric | Cubic spline | NMU | LRTV | SRCNN | Ours |
|---|---|---|---|---|---|---|
| Mean | PSNR | 33.78 | 28.68 | 34.34 | 33.26 | 35.56 |
| SD | PSNR | 1.83 | 0.64 | 1.79 | 0.78 | 0.34 |
| CI (95%) | PSNR | [31.51,36.05] | [27.88,29.48] | [32.12,36.56] | [32.29,34.24] | [35.14,35.99] |
| Mean | SSIM | 0.9388 | 0.5590 | 0.9549 | 0.9447 | 0.9821 |
| SD | SSIM | 0.0069 | 0.0134 | 0.0044 | 0.0049 | 0.0040 |
| CI (95%) | SSIM | [0.9303,0.9473] | [0.5430,0.5762] | [0.9488,0.9595] | [0.9388,0.9598] | [0.9765,0.9896] |
The mean, standard deviation (SD) and confidence interval (CI) of PSNR/SSIM for scale factor between our method and compared methods on clinical fetal brain MRI dataset.
| Fetal brain MRI | Metric | Cubic spline | NMU | LRTV | SRCNN | Ours |
|---|---|---|---|---|---|---|
| Mean | PSNR | 33.61 | 32.63 | 34.78 | 35.91 | 39.40 |
| SD | PSNR | 2.08 | 2.44 | 2.10 | 2.84 | 0.33 |
| CI (95%) | PSNR | [31.03,36.19] | [29.61,35.67] | [32.17,37.39] | [32.38,39.44] | [38.99,39.81] |
| Mean | SSIM | 0.9983 | 0.9546 | 0.9913 | 0.9564 | 0.9897 |
| SD | SSIM | 0.0009 | 0.0336 | 0.0019 | 0.0045 | 0.0001 |
| CI (95%) | SSIM | [0.9972,0.9994] | [0.9505,0.9588] | [0.9897,0.9942] | [0.9507,0.9620] | [0.9896,0.9898] |
The PSNR results compared with/without GDL.
| ID | 01 | 02 | 03 | 04 | 05 | 06 | 07 | 08 |
|---|---|---|---|---|---|---|---|---|
| Without GDL | 39.03 | 38.66 | 40.24 | 39.83 | 39.54 | 39.39 | 38.79 | 38.71 |
| With GDL | 39.18 | 38.68 | 40.36 | 39.95 | 39.64 | 39.54 | 38.96 | 38.90 |
Figure 4Visual difference between our model with GDL and without GDL on the clinical fetal brain MRI dataset.
The PSNR results compared with/without transpose convolution of bottom.
| ID | 01 | 02 | 03 | 04 | 05 | 06 | 07 | 08 |
|---|---|---|---|---|---|---|---|---|
| Without transpose convolution of bottom | 36.78 | 35.89 | 38.11 | 37.89 | 36.58 | 37.77 | 36.24 | 35.92 |
| With transpose convolution of bottom | 39.18 | 38.68 | 40.36 | 39.95 | 39.64 | 39.54 | 38.96 | 38.90 |
Comparison of computational speed (second) with different methods.
| Dataset | Cubic Spline | NMU | LRTV | SRCNN (faster version) | Ours |
|---|---|---|---|---|---|
| Kirby 21 | 0.0104 | 6.5719 | 11.7059 | 1.7473 | 0.8244 |
| NAMIC | 0.0128 | 10.3675 | 6.9668 | 1.5395 | 0.8020 |
| Fetal MRI | 0.0125 | 8.5935 | 9.7356 | 1.7254 | 0.8173 |
Figure 1(a) When we use fetal data, we label and segment fetal brains under professional guidance. (b) The proposed RRLSRN architecture for brain MRI SR.