AI Article Synopsis

  • The reconstruction kernel in CT images affects their texture, which is crucial for accurate quantitative analysis.
  • Harmonization techniques are used to create consistency between different reconstruction kernels, but existing methods often require aligned paired scans from the same manufacturer.
  • This study introduces an unpaired image translation approach using a multipath cycle GAN to harmonize images from different manufacturers and demonstrates its impact on emphysema measurement, factoring in variables like age and smoking status.

Article Abstract

The reconstruction kernel in computed tomography (CT) generation determines the texture of the image. Consistency in reconstruction kernels is important as the underlying CT texture can impact measurements during quantitative image analysis. Harmonization (i.e., kernel conversion) minimizes differences in measurements due to inconsistent reconstruction kernels. Existing methods investigate harmonization of CT scans in single or multiple manufacturers. However, these methods require paired scans of hard and soft reconstruction kernels that are spatially and anatomically aligned. Additionally, a large number of models need to be trained across different kernel pairs within manufacturers. In this study, we adopt an unpaired image translation approach to investigate harmonization between and across reconstruction kernels from different manufacturers by constructing a multipath cycle generative adversarial network (GAN). We use hard and soft reconstruction kernels from the Siemens and GE vendors from the National Lung Screening Trial dataset. We use 50 scans from each reconstruction kernel and train a multipath cycle GAN. To evaluate the effect of harmonization on the reconstruction kernels, we harmonize 50 scans each from Siemens hard kernel, GE soft kernel and GE hard kernel to a reference Siemens soft kernel (B30f) and evaluate percent emphysema. We fit a linear model by considering the age, smoking status, sex and vendor and perform an analysis of variance (ANOVA) on the emphysema scores. Our approach minimizes differences in emphysema measurement and highlights the impact of age, sex, smoking status and vendor on emphysema quantification.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11392419PMC
http://dx.doi.org/10.1117/12.3006608DOI Listing

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