Are Quantitative Features of Lung Nodules Reproducible at Different CT Acquisition and Reconstruction Parameters?
Barbaros S. Erdal, Mutlu Demirer, Chiemezie C. Amadi, Gehan F. M., Ibrahim, Thomas P. O'Donnell, Rainer Grimmer, Andreas Wimmer, Kevin J., Little, Vikash Gupta, Matthew T. Bigelow, Luciano M. Prevedello, Richard D., White

TL;DR
This study evaluates how consistent lung nodule features are across different CT scan settings, highlighting the importance of standardized imaging parameters for reliable quantitative analysis in lung cancer detection.
Contribution
It systematically assesses the reproducibility of volume, density, and texture features of lung nodules across various CT acquisition and reconstruction parameters, providing guidelines for standardization.
Findings
Reproducibility of volumetric features decreases with increased slice thickness.
Histogram and texture features are more consistent across different CT settings.
Standardized imaging parameters are necessary for reliable quantitative lung nodule analysis.
Abstract
Consistency and duplicability in Computed Tomography (CT) output is essential to quantitative imaging for lung cancer detection and monitoring. This study of CT-detected lung nodules investigated the reproducibility of volume-, density-, and texture-based features (outcome variables) over routine ranges of radiation-dose, reconstruction kernel, and slice thickness. CT raw data of 23 nodules were reconstructed using 320 acquisition/reconstruction conditions (combinations of 4 doses, 10 kernels, and 8 thicknesses). Scans at 12.5%, 25%, and 50% of protocol dose were simulated; reduced-dose and full-dose data were reconstructed using conventional filtered back-projection and iterative-reconstruction kernels at a range of thicknesses (0.6-5.0 mm). Full-dose/B50f kernel reconstructions underwent expert segmentation for reference Region-Of-Interest (ROI) and nodule volume per thickness; each…
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