Learnable PM diffusion coefficients and reformative coordinate attention network for low dose CT denoising

Author:

Zhang Haowen,Zhang PengchengORCID,Cheng Weiting,Li Shu,Yan Rongbiao,Hou Ruifeng,Gui ZhiguoORCID,Liu Yi,Chen YangORCID

Abstract

Abstract Objective. Various deep learning methods have recently been used for low dose CT (LDCT) denoising. Aggressive denoising may destroy the edge and fine anatomical structures of CT images. Therefore a key issue in LDCT denoising tasks is the difficulty of balancing noise/artifact suppression and edge/structure preservation. Approach. We proposed an LDCT denoising network based on the encoder-decoder structure, namely the Learnable PM diffusion coefficient and efficient attention network (PMA-Net). First, using the powerful feature modeling capability of partial differential equations, we constructed a multiple learnable edge module to generate precise edge information, incorporating the anisotropic image processing idea of Perona–Malik (PM) model into the neural network. Second, a multiscale reformative coordinate attention module was designed to extract multiscale information. Non-overlapping dilated convolution capturing abundant contextual content was combined with coordinate attention which could embed the spatial location information of important features into the channel attention map. Finally, we imposed additional constraints on the edge information using edge-enhanced multiscale perceptual loss to avoid structure loss and over-smoothing. Main results. Experiments are conducted on simulated and real datasets. The quantitative and qualitative results show that the proposed method has better performance in suppressing noise/artifacts and preserving edges/structures. Significance. This work proposes a novel edge feature extraction method that unfolds partial differential equation into neural networks, which contributes to the interpretability and clinical application value of neural network.

Funder

Key Laboratory of Computer Network and Information Integration ( Southeast University ), Ministry of Education

Key Research and development Programs in Jiangsu Province of China

Natural Science Foundation of Shanxi Province

Research Project Supported by Shanxi Scholarship Council of China

State Key Project of Research and Development Plan

National Natural Science Foundation of 450 China

Publisher

IOP Publishing

Subject

Radiology, Nuclear Medicine and imaging,Radiological and Ultrasound Technology

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