DiffusionCT: Latent Diffusion Model for CT Image Standardization
Md Selim, Jie Zhang, Michael A. Brooks, Ge Wang, Jin Chen

TL;DR
DiffusionCT introduces a novel latent diffusion model for CT image standardization, effectively reducing scanner and protocol variations to improve feature consistency for lung cancer analysis.
Contribution
This work presents a diffusion-based CT harmonization model operating in latent space, outperforming existing GAN-based methods in standardizing images from diverse sources.
Findings
Significant improvement in CT image standardization performance
Effective reduction of scanner and protocol variations
Outperforms GAN-based harmonization models
Abstract
Computed tomography (CT) is one of the modalities for effective lung cancer screening, diagnosis, treatment, and prognosis. The features extracted from CT images are now used to quantify spatial and temporal variations in tumors. However, CT images obtained from various scanners with customized acquisition protocols may introduce considerable variations in texture features, even for the same patient. This presents a fundamental challenge to downstream studies that require consistent and reliable feature analysis. Existing CT image harmonization models rely on GAN-based supervised or semi-supervised learning, with limited performance. This work addresses the issue of CT image harmonization using a new diffusion-based model, named DiffusionCT, to standardize CT images acquired from different vendors and protocols. DiffusionCT operates in the latent space by mapping a latent non-standard…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · AI in cancer detection · Colorectal Cancer Screening and Detection
MethodsLatent Diffusion Model · Diffusion
