Self Supervised Low Dose Computed Tomography Image Denoising Using
Invertible Network Exploiting Inter Slice Congruence
- URL: http://arxiv.org/abs/2211.01618v1
- Date: Thu, 3 Nov 2022 07:16:18 GMT
- Title: Self Supervised Low Dose Computed Tomography Image Denoising Using
Invertible Network Exploiting Inter Slice Congruence
- Authors: Sutanu Bera, Prabir Kumar Biswas
- Abstract summary: This study proposes a novel method for self-supervised low-dose CT denoising to alleviate the requirement of paired LDCT and NDCT images.
We have trained an invertible neural network to minimize the pixel-based mean square distance between a noisy slice and the average of its two immediate adjacent noisy slices.
- Score: 20.965610734723636
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The resurgence of deep neural networks has created an alternative pathway for
low-dose computed tomography denoising by learning a nonlinear transformation
function between low-dose CT (LDCT) and normal-dose CT (NDCT) image pairs.
However, those paired LDCT and NDCT images are rarely available in the clinical
environment, making deep neural network deployment infeasible. This study
proposes a novel method for self-supervised low-dose CT denoising to alleviate
the requirement of paired LDCT and NDCT images. Specifically, we have trained
an invertible neural network to minimize the pixel-based mean square distance
between a noisy slice and the average of its two immediate adjacent noisy
slices. We have shown the aforementioned is similar to training a neural
network to minimize the distance between clean NDCT and noisy LDCT image pairs.
Again, during the reverse mapping of the invertible network, the output image
is mapped to the original input image, similar to cycle consistency loss.
Finally, the trained invertible network's forward mapping is used for denoising
LDCT images. Extensive experiments on two publicly available datasets showed
that our method performs favourably against other existing unsupervised
methods.
Related papers
- Intraoperative Registration by Cross-Modal Inverse Neural Rendering [61.687068931599846]
We present a novel approach for 3D/2D intraoperative registration during neurosurgery via cross-modal inverse neural rendering.
Our approach separates implicit neural representation into two components, handling anatomical structure preoperatively and appearance intraoperatively.
We tested our method on retrospective patients' data from clinical cases, showing that our method outperforms state-of-the-art while meeting current clinical standards for registration.
arXiv Detail & Related papers (2024-09-18T13:40:59Z) - WIA-LD2ND: Wavelet-based Image Alignment for Self-supervised Low-Dose CT Denoising [74.14134385961775]
We introduce a novel self-supervised CT image denoising method called WIA-LD2ND, only using NDCT data.
WIA-LD2ND comprises two modules: Wavelet-based Image Alignment (WIA) and Frequency-Aware Multi-scale Loss (FAM)
arXiv Detail & Related papers (2024-03-18T11:20:11Z) - Low-Dose CT Image Reconstruction by Fine-Tuning a UNet Pretrained for
Gaussian Denoising for the Downstream Task of Image Enhancement [3.7960472831772765]
Computed Tomography (CT) is a widely used medical imaging modality, and reconstruction from low-dose CT data is a challenging task.
In this paper, we propose a less complex two-stage method for reconstruction of LDCT images.
The proposed method achieves a shared top ranking in the LoDoPaB-CT challenge and a first position with respect to the SSIM metric.
arXiv Detail & Related papers (2024-03-06T08:51:09Z) - Rotational Augmented Noise2Inverse for Low-dose Computed Tomography
Reconstruction [83.73429628413773]
Supervised deep learning methods have shown the ability to remove noise in images but require accurate ground truth.
We propose a novel self-supervised framework for LDCT, in which ground truth is not required for training the convolutional neural network (CNN)
Numerical and experimental results show that the reconstruction accuracy of N2I with sparse views is degrading while the proposed rotational augmented Noise2Inverse (RAN2I) method keeps better image quality over a different range of sampling angles.
arXiv Detail & Related papers (2023-12-19T22:40:51Z) - Deep learning network to correct axial and coronal eye motion in 3D OCT
retinal imaging [65.47834983591957]
We propose deep learning based neural networks to correct axial and coronal motion artifacts in OCT based on a single scan.
The experimental result shows that the proposed method can effectively correct motion artifacts and achieve smaller error than other methods.
arXiv Detail & Related papers (2023-05-27T03:55:19Z) - QS-ADN: Quasi-Supervised Artifact Disentanglement Network for Low-Dose
CT Image Denoising by Local Similarity Among Unpaired Data [10.745277107045949]
This paper introduces a new learning mode, called quasi-supervised learning, to empower the ADN for LDCT image denoising.
The proposed method is different from (but compatible with) supervised and semi-supervised learning modes and can be easily implemented by modifying existing networks.
The experimental results show that the method is competitive with state-of-the-art methods in terms of noise suppression and contextual fidelity.
arXiv Detail & Related papers (2023-02-08T07:19:13Z) - Patch-wise Deep Metric Learning for Unsupervised Low-Dose CT Denoising [33.706959549595496]
We propose a novel unsupervised learning approach for lowdose CT reconstruction using patch-wise deep metric learning.
The key idea is to learn embedding space by pulling the positive pairs of image patches which shares the same anatomical structure, and pushing the negative pairs which have same noise level each other.
Experimental results confirm that our deep metric learning plays a critical role in producing high quality denoised images without CT number shift.
arXiv Detail & Related papers (2022-07-06T00:58:11Z) - CNN Filter Learning from Drawn Markers for the Detection of Suggestive
Signs of COVID-19 in CT Images [58.720142291102135]
We propose a method that does not require either large annotated datasets or backpropagation to estimate the filters of a convolutional neural network (CNN)
For a few CT images, the user draws markers at representative normal and abnormal regions.
The method generates a feature extractor composed of a sequence of convolutional layers, whose kernels are specialized in enhancing regions similar to the marked ones.
arXiv Detail & Related papers (2021-11-16T15:03:42Z) - Sharp-GAN: Sharpness Loss Regularized GAN for Histopathology Image
Synthesis [65.47507533905188]
Conditional generative adversarial networks have been applied to generate synthetic histopathology images.
We propose a sharpness loss regularized generative adversarial network to synthesize realistic histopathology images.
arXiv Detail & Related papers (2021-10-27T18:54:25Z) - Cascaded Convolutional Neural Networks with Perceptual Loss for Low Dose
CT Denoising [0.0]
Low Dose CT Denoising research aims to reduce the risks of radiation exposure to patients.
Recent approaches that use mean-squared-error (MSE) tend to over smooth the image resulting in loss of fine structural details in low contrast regions of the image.
We show that our method outperforms related works and more effectively reconstructs fine structural details in low contrast regions of the image.
arXiv Detail & Related papers (2020-06-26T00:35:26Z) - Probabilistic self-learning framework for Low-dose CT Denoising [1.8734449181723827]
Decreasing the exposure can reduce the dose and hence the radiation-related risk.
Supervised deep learning can be used to train a neural network to denoise the low-dose CT (LDCT)
arXiv Detail & Related papers (2020-05-30T17:47:10Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.