Dual virtual non-contrast imaging: a Bayesian quantitative approach to determine radiotherapy quantities from contrast-enhanced DECT images
- PMID: 39577082
- DOI: 10.1088/1361-6560/ad965f
Dual virtual non-contrast imaging: a Bayesian quantitative approach to determine radiotherapy quantities from contrast-enhanced DECT images
Abstract
Objective.Contrast agents in computed tomography (CT) scans can compromise the accuracy of dose calculations in radiation therapy planning, especially for particle therapy. This often requires an additional non-contrast CT scan, increasing radiation exposure and introducing potential registration errors. Our goal is to resolve these issues by accurately estimating radiotherapy parameters from dual virtual non-contrast (dual-VNC) images generated by contrast-enhanced dual-energy CT (DECT) scans, while accounting for noise and variability in tissue composition.Approach.A new Bayesian model is introduced to estimate dual-VNC Hounsfield units from contrast-enhanced DECT data. The model defines a prior distribution that describes tissue variations in terms of elemental compositions and mass densities. Multiple reference tissues are used to estimate variations across human tissues. A likelihood distribution is also defined to model the noise contained in CT data. The model is thoroughly validated in a simulated environment including 12 virtual patients under low and high iodine uptake scenarios, while incorporating noise and beam hardening effects. The eigentissue decomposition technique is used to derive elemental compositions and parameters critical for radiotherapy from the dual-VNC images, such as electron density (ρe), particle stopping power (SPR), and photon energy absorption coefficient (EAC).Main results.The proposed method yields accurate voxelwise estimations forρe, SPR, and EAC, with root mean square errors of 3.09%, 3.14%, and 1.34% for highly-enhanced tissues, compared to 5.93%, 6.39%, and 17.11% when the presence of contrast agent is ignored. It also demonstrates robustness to systematic shifts in tissue composition and bandwidth variations in the prior distribution, resulting in overall uncertainties down to 1.13%, 1.33%, and 0.86% forρe, SPR, and EAC in soft tissues; 1.17%, 1.32%, and 1.34% in enhanced soft tissues; and 4.34%, 4.00%, and 2.50% in bones.Significance.The proposed method accurately derives radiotherapy parameters from contrast-enhanced DECT data and demonstrates robustness against systematic errors in reference data, highlighting its potential for clinical use.
Keywords: Bayes’ theorem; contrast agent; dual-energy CT; eigentissue decomposition; proton therapy; radiotherapy planning; virtual non-contrast.
Creative Commons Attribution license.
Similar articles
-
A Bayesian approach to solve proton stopping powers from noisy multi-energy CT data.Med Phys. 2017 Oct;44(10):5293-5302. doi: 10.1002/mp.12489. Epub 2017 Sep 4. Med Phys. 2017. PMID: 28752662
-
A simple algorithm to derive virtual non-contrast electron density from dual-energy computed tomography data for radiotherapy treatment planning.Med Phys. 2025 May;52(5):3107-3116. doi: 10.1002/mp.17648. Epub 2025 Jan 25. Med Phys. 2025. PMID: 39865311 Free PMC article.
-
The potential of photon-counting CT for quantitative contrast-enhanced imaging in radiotherapy.Phys Med Biol. 2019 May 31;64(11):115020. doi: 10.1088/1361-6560/ab1af1. Phys Med Biol. 2019. PMID: 30999288
-
Towards subpercentage uncertainty proton stopping-power mapping via dual-energy CT: Direct experimental validation and uncertainty analysis of a statistical iterative image reconstruction method.Med Phys. 2022 Mar;49(3):1599-1618. doi: 10.1002/mp.15457. Epub 2022 Jan 27. Med Phys. 2022. PMID: 35029302 Free PMC article.
-
Dual- and multi-energy CT for particle stopping-power estimation: current state, challenges and potential.Phys Med Biol. 2023 Feb 6;68(4). doi: 10.1088/1361-6560/acabfa. Phys Med Biol. 2023. PMID: 36595276 Review.
MeSH terms
Substances
LinkOut - more resources
Full Text Sources
Medical