Information-Adaptive Denoising for Iterative PET Reconstruction
Andre Salomon, Andriy Andreyev, Andreas Goedicke

TL;DR
This paper introduces iRDF, an adaptive denoising method for PET reconstruction that automatically adjusts regularization parameters based on local noise, improving image quality and lesion detectability without manual tuning.
Contribution
The paper presents iRDF, a novel automatic parameter adaptation technique for PET image denoising that maintains image quality across varying data statistics and reduces manual tuning.
Findings
iRDF reduces local image variance by ~33%.
Contrast of small spheres preserved compared to nonregularized OSEM.
Noise decreased to ~22% with quarter data, SUV-max reduced to ~75%.
Abstract
Quantitative accuracy and thus diagnostic precision in Emission Tomography is impaired by the inherent random characteristics of the data acquisition leading to statistical image noise. Edge preserving spatial variation regularized iterative image reconstruction approaches require case-specific control parameter adaptation for optimized contrast-vs-noise tradeoff. For MLEM reconstruction, we propose and evaluate iRDF which automatically adapts RDP edge preservation parameters according to local image noise and PET data characteristics. In order to distinguish between clustered noise spots and small tumors, we introduce hot-spot artifact correction. The proposed method was evaluated using NEMA IQ phantom data as well as clinical patient data. After initial iRDF base parameter tuning, results showed that iRDF maintained similar image quality regardless of statistics without requiring…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced MRI Techniques and Applications · Radiomics and Machine Learning in Medical Imaging
