A Narrative Review of Photon-Counting CT and Radiomics in Cardiothoracic Imaging: A Promising Match?
Salvatore Claudio Fanni, Ilaria Ambrosini, Francesca Pia Caputo, Maria Emanuela Cuibari, Domitilla Deri, Alessio Guarracino, Camilla Guidi, Vincenzo Uggenti, Giancarlo Varanini, Emanuele Neri, Dania Cioni, Mariano Scaglione, Salvatore Masala

TL;DR
Photon-counting CT improves imaging quality and could work well with radiomics to better diagnose heart and lung conditions.
Contribution
This paper reviews how photon-counting CT enhances radiomics in cardiothoracic imaging through richer data and improved reproducibility.
Findings
Photon-counting CT provides high-resolution images and spectral data that improve radiomic feature extraction.
Early studies show PCCT-derived features may better characterize lung nodules and coronary plaques.
PCCT radiomics can capture myocardial aging patterns and improve diagnostic insights in cardiac imaging.
Abstract
Photon-counting computed tomography (PCCT) represents a major technological innovation compared to conventional CT, offering improved spatial resolution, reduced electronic noise, and intrinsic spectral capabilities. These advances open new perspectives for synergy with radiomics, a field that extracts quantitative features from medical images. The ability of PCCT to generate multiple types of datasets, including high-resolution conventional images, iodine maps, and virtual monoenergetic reconstructions, increases the richness of extractable features and potentially enhances radiomics performance. This narrative review investigates the current evidence on the interplay between PCCT and radiomics in cardiothoracic imaging. Phantom studies demonstrate reduced reproducibility between PCCT and conventional CT systems, while intra-scanner repeatability remains high. Nonetheless, PCCT…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Radiomics and Machine Learning in Medical Imaging · Radiation Dose and Imaging
