CT-Less Attenuation Correction Using Multiview Ensemble Conditional Diffusion Model on High-Resolution Uncorrected PET Images
Alexandre St-Georges, Gabriel Richard, Maxime Toussaint, Christian Thibaudeau, Etienne Auger, \'Etienne Croteau, Stephen Cunnane, Roger Lecomte, Jean-Baptiste Michaud

TL;DR
This paper introduces a neural network-based method using multiview ensemble conditional diffusion models to generate pseudo-CT images from non-attenuation-corrected PET scans, improving attenuation correction without additional radiation.
Contribution
It presents a novel application of DDPMs with multiview ensemble voting for high-quality pseudo-CT synthesis directly from PET images, eliminating the need for co-registered CT scans.
Findings
Achieved a mean absolute error of 32 HU in pseudo-CT images.
Reduced artifacts and improved slice-to-slice consistency.
Demonstrated quantitative and qualitative improvements in 159 head scans.
Abstract
Accurate quantification in positron emission tomography (PET) is essential for accurate diagnostic results and effective treatment tracking. A major issue encountered in PET imaging is attenuation. Attenuation refers to the diminution of photon detected as they traverse biological tissues before reaching detectors. When such corrections are absent or inadequate, this signal degradation can introduce inaccurate quantification, making it difficult to differentiate benign from malignant conditions, and can potentially lead to misdiagnosis. Typically, this correction is done with co-computed Computed Tomography (CT) imaging to obtain structural data for calculating photon attenuation across the body. However, this methodology subjects patients to extra ionizing radiation exposure, suffers from potential spatial misregistration between PET/CT imaging sequences, and demands costly equipment…
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