Quan Dou, Zhixing Wang, Xue Feng, Adrienne E Campbell-Washburn, John P Mugler, Craig H Meyer
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Its denoising performance was quantitively and qualitatively evaluated, and it was compared with the real-valued CNN and several other algorithms. For the simulated noise-corrupted testing dataset, the complex-valued models had superior normalized root-mean-square error, peak SNR, structural similarity index, and phase ABSD. By incorporating the noise level map, the non-blind <math> <semantics><mrow><mi>ℂ</mi></mrow> <annotation>$$ \\mathbb{C} $$</annotation></semantics> </math> DnCNN showed better performance in dealing with spatially varying parallel imaging noise. For in vivo low-field data, the non-blind <math> <semantics><mrow><mi>ℂ</mi></mrow> <annotation>$$ \\mathbb{C} $$</annotation></semantics> </math> DnCNN significantly improved the SNR and visual quality of the image. The proposed non-blind <math> <semantics><mrow><mi>ℂ</mi></mrow> <annotation>$$ \\mathbb{C} $$</annotation></semantics> </math> DnCNN provides an efficient and effective approach for MRI denoising. This is the first application of non-blind <math> <semantics><mrow><mi>ℂ</mi></mrow> <annotation>$$ \\mathbb{C} $$</annotation></semantics> </math> DnCNN to medical imaging. The method holds the potential to enable improved low-field MRI, facilitating enhanced diagnostic imaging in under-resourced areas.</p>","PeriodicalId":19309,"journal":{"name":"NMR in Biomedicine","volume":" ","pages":"e5291"},"PeriodicalIF":2.7000,"publicationDate":"2024-11-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"MRI denoising with a non-blind deep complex-valued convolutional neural network.\",\"authors\":\"Quan Dou, Zhixing Wang, Xue Feng, Adrienne E Campbell-Washburn, John P Mugler, Craig H Meyer\",\"doi\":\"10.1002/nbm.5291\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>MR images with high signal-to-noise ratio (SNR) provide more diagnostic information. Various methods for MRI denoising have been developed, but the majority of them operate on the magnitude image and neglect the phase information. Therefore, the goal of this work is to design and implement a complex-valued convolutional neural network (CNN) for MRI denoising. A complex-valued CNN incorporating the noise level map (non-blind <math> <semantics><mrow><mi>ℂ</mi></mrow> <annotation>$$ \\\\mathbb{C} $$</annotation></semantics> </math> DnCNN) was trained with ground truth and simulated noise-corrupted image pairs. The proposed method was validated using both simulated and in vivo data collected from low-field scanners. Its denoising performance was quantitively and qualitatively evaluated, and it was compared with the real-valued CNN and several other algorithms. For the simulated noise-corrupted testing dataset, the complex-valued models had superior normalized root-mean-square error, peak SNR, structural similarity index, and phase ABSD. By incorporating the noise level map, the non-blind <math> <semantics><mrow><mi>ℂ</mi></mrow> <annotation>$$ \\\\mathbb{C} $$</annotation></semantics> </math> DnCNN showed better performance in dealing with spatially varying parallel imaging noise. For in vivo low-field data, the non-blind <math> <semantics><mrow><mi>ℂ</mi></mrow> <annotation>$$ \\\\mathbb{C} $$</annotation></semantics> </math> DnCNN significantly improved the SNR and visual quality of the image. The proposed non-blind <math> <semantics><mrow><mi>ℂ</mi></mrow> <annotation>$$ \\\\mathbb{C} $$</annotation></semantics> </math> DnCNN provides an efficient and effective approach for MRI denoising. This is the first application of non-blind <math> <semantics><mrow><mi>ℂ</mi></mrow> <annotation>$$ \\\\mathbb{C} $$</annotation></semantics> </math> DnCNN to medical imaging. 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MRI denoising with a non-blind deep complex-valued convolutional neural network.
MR images with high signal-to-noise ratio (SNR) provide more diagnostic information. Various methods for MRI denoising have been developed, but the majority of them operate on the magnitude image and neglect the phase information. Therefore, the goal of this work is to design and implement a complex-valued convolutional neural network (CNN) for MRI denoising. A complex-valued CNN incorporating the noise level map (non-blind DnCNN) was trained with ground truth and simulated noise-corrupted image pairs. The proposed method was validated using both simulated and in vivo data collected from low-field scanners. Its denoising performance was quantitively and qualitatively evaluated, and it was compared with the real-valued CNN and several other algorithms. For the simulated noise-corrupted testing dataset, the complex-valued models had superior normalized root-mean-square error, peak SNR, structural similarity index, and phase ABSD. By incorporating the noise level map, the non-blind DnCNN showed better performance in dealing with spatially varying parallel imaging noise. For in vivo low-field data, the non-blind DnCNN significantly improved the SNR and visual quality of the image. The proposed non-blind DnCNN provides an efficient and effective approach for MRI denoising. This is the first application of non-blind DnCNN to medical imaging. The method holds the potential to enable improved low-field MRI, facilitating enhanced diagnostic imaging in under-resourced areas.
期刊介绍:
NMR in Biomedicine is a journal devoted to the publication of original full-length papers, rapid communications and review articles describing the development of magnetic resonance spectroscopy or imaging methods or their use to investigate physiological, biochemical, biophysical or medical problems. Topics for submitted papers should be in one of the following general categories: (a) development of methods and instrumentation for MR of biological systems; (b) studies of normal or diseased organs, tissues or cells; (c) diagnosis or treatment of disease. Reports may cover work on patients or healthy human subjects, in vivo animal experiments, studies of isolated organs or cultured cells, analysis of tissue extracts, NMR theory, experimental techniques, or instrumentation.