PLOT-CT: Pre-log Voronoi Decomposition Assisted Generation for Low-dose CT Reconstruction
- URL: http://arxiv.org/abs/2602.11625v1
- Date: Thu, 12 Feb 2026 06:20:23 GMT
- Title: PLOT-CT: Pre-log Voronoi Decomposition Assisted Generation for Low-dose CT Reconstruction
- Authors: Bin Huang, Xun Yu, Yikun Zhang, Yi Zhang, Yang Chen, Qiegen Liu,
- Abstract summary: Low-dose computed tomography (LDCT) reconstruction is fundamentally challenged by severe noise and compromised data fidelity under reduced radiation exposure.<n>We propose PLOT-CT, a novel framework for Pre-Log vOronoi decomposiTion-assisted CT generation.<n>Our method begins by applying Voronoi decomposition to pre-log sinograms, disentangling the data into distinct underlying components, which are embedded in separate latent spaces.
- Score: 16.194061272932903
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Low-dose computed tomography (LDCT) reconstruction is fundamentally challenged by severe noise and compromised data fidelity under reduced radiation exposure. Most existing methods operate either in the image or post-log projection domain, which fails to fully exploit the rich structural information in pre-log measurements while being highly susceptible to noise. The requisite logarithmic transformation critically amplifies noise within these data, imposing exceptional demands on reconstruction precision. To overcome these challenges, we propose PLOT-CT, a novel framework for Pre-Log vOronoi decomposiTion-assisted CT generation. Our method begins by applying Voronoi decomposition to pre-log sinograms, disentangling the data into distinct underlying components, which are embedded in separate latent spaces. This explicit decomposition significantly enhances the model's capacity to learn discriminative features, directly improving reconstruction accuracy by mitigating noise and preserving information inherent in the pre-log domain. Extensive experiments demonstrate that PLOT-CT achieves state-of-the-art performance, attaining a 2.36dB PSNR improvement over traditional methods at the 1e4 incident photon level in the pre-log domain.
Related papers
- Tunable-Generalization Diffusion Powered by Self-Supervised Contextual Sub-Data for Low-Dose CT Reconstruction [5.107409624991683]
TUnable-geneRalizatioN Diffusion (TurnDiff) is powered by self-supervised contextual sub-data for low-dose CT reconstruction.<n>TurnDiff consistently outperforms state-of-the-art methods in both reconstruction and generalization.
arXiv Detail & Related papers (2025-09-28T13:50:29Z) - Direct Dual-Energy CT Material Decomposition using Model-based Denoising Diffusion Model [105.95160543743984]
We propose a deep learning procedure called Dual-Energy Decomposition Model-based Diffusion (DEcomp-MoD) for quantitative material decomposition.<n>We show that DEcomp-MoD outperform state-of-the-art unsupervised score-based model and supervised deep learning networks.
arXiv Detail & Related papers (2025-07-24T01:00:06Z) - FD-DiT: Frequency Domain-Directed Diffusion Transformer for Low-Dose CT Reconstruction [3.980622332603746]
Low-dose computed tomography (LDCT) reduces radiation exposure but suffers from image artifacts and loss of detail due to quantum and electronic noise.<n>FD-DiT centers on a diffusion strategy that progressively introduces noise until the distribution statistically aligns with that of LDCT data, followed by denoising processing.<n>A hybrid denoising network is then utilized to optimize the overall data reconstruction process.<n> Experimental results demonstrate that at identical dose levels, LDCT images reconstructed by FD-DiT exhibit superior noise and artifact suppression compared to state-of-the-art methods.
arXiv Detail & Related papers (2025-06-30T02:16:38Z) - Noise-Inspired Diffusion Model for Generalizable Low-Dose CT Reconstruction [37.71732274622662]
We propose a noise-inspired diffusion model for generalizable low-dose CT reconstruction, termed NEED, which tailors diffusion models for noise characteristics of each domain.<n>By cascading these two diffusion models for dual-domain reconstruction, our NEED requires only normal-dose data for training and can be effectively extended to various unseen dose levels during testing.
arXiv Detail & Related papers (2025-06-27T08:24:55Z) - Restoration Score Distillation: From Corrupted Diffusion Pretraining to One-Step High-Quality Generation [82.39763984380625]
We propose textitRestoration Score Distillation (RSD), a principled generalization of Denoising Score Distillation (DSD)<n>RSD accommodates a broader range of corruption types, such as blurred, incomplete, or low-resolution images.<n>It consistently surpasses its teacher model across diverse restoration tasks on both natural and scientific datasets.
arXiv Detail & Related papers (2025-05-19T17:21:03Z) - Partitioned Hankel-based Diffusion Models for Few-shot Low-dose CT Reconstruction [10.158713017984345]
We propose a few-shot low-dose CT reconstruction method using Partitioned Hankel-based Diffusion (PHD) models.
In the iterative reconstruction stage, an iterative differential equation solver is employed along with data consistency constraints to update the acquired projection data.
The results approximate those of normaldose counterparts, validating PHD model as an effective and practical model for reducing artifacts and noise while preserving image quality.
arXiv Detail & Related papers (2024-05-27T13:44:53Z) - DPER: Diffusion Prior Driven Neural Representation for Limited Angle and Sparse View CT Reconstruction [45.00528216648563]
Diffusion Prior Driven Neural Representation (DPER) is an unsupervised framework designed to address the exceptionally ill-posed CT reconstruction inverse problems.
DPER adopts the Half Quadratic Splitting (HQS) algorithm to decompose the inverse problem into data fidelity and distribution prior sub-problems.
We conduct comprehensive experiments to evaluate the performance of DPER on LACT and ultra-SVCT reconstruction with two public datasets.
arXiv Detail & Related papers (2024-04-27T12:55:13Z) - 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) - DiffusionAD: Norm-guided One-step Denoising Diffusion for Anomaly Detection [80.20339155618612]
DiffusionAD is a novel anomaly detection pipeline comprising a reconstruction sub-network and a segmentation sub-network.<n>A rapid one-step denoising paradigm achieves hundreds of times acceleration while preserving comparable reconstruction quality.<n>Considering the diversity in the manifestation of anomalies, we propose a norm-guided paradigm to integrate the benefits of multiple noise scales.
arXiv Detail & Related papers (2023-03-15T16:14:06Z) - The role of noise in denoising models for anomaly detection in medical
images [62.0532151156057]
Pathological brain lesions exhibit diverse appearance in brain images.
Unsupervised anomaly detection approaches have been proposed using only normal data for training.
We show that optimization of the spatial resolution and magnitude of the noise improves the performance of different model training regimes.
arXiv Detail & Related papers (2023-01-19T21:39:38Z) - Negligible effect of brain MRI data preprocessing for tumor segmentation [36.89606202543839]
We conduct experiments on three publicly available datasets and evaluate the effect of different preprocessing steps in deep neural networks.
Our results demonstrate that most popular standardization steps add no value to the network performance.
We suggest that image intensity normalization approaches do not contribute to model accuracy because of the reduction of signal variance with image standardization.
arXiv Detail & Related papers (2022-04-11T17:29:36Z) - Reference-based Magnetic Resonance Image Reconstruction Using Texture
Transforme [86.6394254676369]
We propose a novel Texture Transformer Module (TTM) for accelerated MRI reconstruction.
We formulate the under-sampled data and reference data as queries and keys in a transformer.
The proposed TTM can be stacked on prior MRI reconstruction approaches to further improve their performance.
arXiv Detail & Related papers (2021-11-18T03:06:25Z) - Iterative Reconstruction for Low-Dose CT using Deep Gradient Priors of
Generative Model [24.024765099719886]
Iterative reconstruction is one of the most promising ways to compensate for the increased noise due to reduction of photon flux.
In this work we integrate the data-consistency as a conditional term into the iterative generative model for low-dose CT.
The distance between the reconstructed image and the manifold is minimized along with data fidelity during reconstruction.
arXiv Detail & Related papers (2020-09-27T06:36:39Z)
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.