Mapping intratumoral heterogeneity through PET-derived washout and deep learning after proton therapy
Pablo Cabrales, David Izquierdo-Garc\'ia, V\'ictor V. Onecha, Mailyn P\'erez-Liva, Luis Mario Fraile, Jos\'e Manuel Ud\'ias, Joaqu\'in L. Herraiz

TL;DR
This paper introduces a deep learning framework that enhances PET imaging after proton therapy to accurately map intratumoral heterogeneity and washout kinetics, aiding in dose verification and personalized treatment planning.
Contribution
It presents a novel uncertainty-aware deep learning method for correcting washout effects in PET, enabling detailed intratumoral heterogeneity mapping post-proton therapy.
Findings
Significantly reduced errors in washout rate estimation.
Generalized model performance across different patients and regions.
Enabled non-invasive tumor heterogeneity assessment.
Abstract
The distribution of produced isotopes during proton therapy can be imaged with Positron Emission Tomography (PET) to verify dose delivery. However, biological washout, driven by tissue-dependent processes such as perfusion and cellular metabolism, reduces PET signal-to-noise ratio (SNR) and limits quantitative analysis. In this work, we propose an uncertainty-aware deep learning framework to improve the estimation of washout parameters in post-proton therapy PET, not only enabling accurate correction for washout effects, but also mapping intratumoral heterogeneity as a surrogate marker of tumor status and treatment response. We trained the models on Monte Carlo-simulated data from eight head-and-neck cancer patients, and tested them on four additional head-and-neck and one liver patient. Each patient was represented by 75 digital twins with distinct tumoral washout dynamics and imaged…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Radiation Therapy and Dosimetry · Nuclear Physics and Applications
