4.6 Article

StruNet: Perceptual and low-rank regularized transformer for medical image denoising

期刊

MEDICAL PHYSICS
卷 -, 期 -, 页码 -

出版社

WILEY
DOI: 10.1002/mp.16550

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low-rank regularization; medical image denoising; perceptual loss; Swin transformer

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In this paper, a novel encoder-decoder architecture called Swin Transformer-based residual u-shape Network (StruNet) is proposed for medical image denoising. The architecture effectively learns hierarchical representations of noise artifacts and compensates for the loss of detailed information. Experimental results demonstrate promising performance in suppressing multiform noise artifacts in different imaging modalities.
BackgroundVarious types of noise artifacts inevitably exist in some medical imaging modalities due to limitations of imaging techniques, which impair either clinical diagnosis or subsequent analysis. Recently, deep learning approaches have been rapidly developed and applied on medical images for noise removal or image quality enhancement. Nevertheless, due to complexity and diversity of noise distribution representations in different medical imaging modalities, most of the existing deep learning frameworks are incapable to flexibly remove noise artifacts while retaining detailed information. As a result, it remains challenging to design an effective and unified medical image denoising method that will work across a variety of noise artifacts for different imaging modalities without requiring specialized knowledge in performing the task. PurposeIn this paper, we propose a novel encoder-decoder architecture called Swin transformer-based residual u-shape Network (StruNet), for medical image denoising. MethodsOur StruNet adopts a well-designed block as the backbone of the encoder-decoder architecture, which integrates Swin Transformer modules with residual block in parallel connection. Swin Transformer modules could effectively learn hierarchical representations of noise artifacts via self-attention mechanism in non-overlapping shifted windows and cross-window connection, while residual block is advantageous to compensate loss of detailed information via shortcut connection. Furthermore, perceptual loss and low-rank regularization are incorporated into loss function respectively in order to constrain the denoising results on feature-level consistency and low-rank characteristics. ResultsTo evaluate the performance of the proposed method, we have conducted experiments on three medical imaging modalities including computed tomography (CT), optical coherence tomography (OCT) and optical coherence tomography angiography (OCTA). ConclusionsThe results demonstrate that the proposed architecture yields a promising performance of suppressing multiform noise artifacts existing in different imaging modalities.

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