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Inter-fractional Portability of Deep Learning Models for Lung Target Tracking on Cine Imaging Acquired in MRI-guided Radiotherapy

PHYSICAL AND ENGINEERING SCIENCES IN MEDICINE(2024)

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Abstract
MRI-guided radiotherapy systems enable beam gating by tracking the target on planar, two-dimensional cine images acquired during treatment. This study aims to evaluate how deep-learning (DL) models for target tracking that are trained on data from one fraction can be translated to subsequent fractions. Cine images were acquired for six patients treated on an MRI-guided radiotherapy platform (MRIdian, Viewray Inc.) with an onboard 0.35 T MRI scanner. Three DL models (U-net, attention U-net and nested U-net) for target tracking were trained using two training strategies: (1) uniform training using data obtained only from the first fraction with testing performed on data from subsequent fractions and (2) adaptive training in which training was updated each fraction by adding 20 samples from the current fraction with testing performed on the remaining images from that fraction. Tracking performance was compared between algorithms, models and training strategies by evaluating the Dice similarity coefficient (DSC) and 95
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Key words
MRI-guided radiotherapy,MRgRT,Tumor tracking,Artificial intelligence,Adaptive training
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