TL;DR
This paper introduces a convex, differentiable moment-based loss function for deep learning dose prediction in radiotherapy, effectively incorporating DVH metrics and improving prediction accuracy without added computational cost.
Contribution
The novel moment-based loss function enables DVH metric integration into deep learning models for 3D dose prediction, enhancing accuracy and clinical relevance.
Findings
The proposed loss improves DVH-score by 11% over MAE alone.
It outperforms MAE+DVH loss in computational cost and DVH-score.
Model with the new loss achieves better dose prediction quality.
Abstract
Dose volume histogram (DVH) metrics are widely accepted evaluation criteria in the clinic. However, incorporating these metrics into deep learning dose prediction models is challenging due to their non-convexity and non-differentiability. We propose a novel moment-based loss function for predicting 3D dose distribution for the challenging conventional lung intensity modulated radiation therapy (IMRT) plans. The moment-based loss function is convex and differentiable and can easily incorporate DVH metrics in any deep learning framework without computational overhead. The moments can also be customized to reflect the clinical priorities in 3D dose prediction. For instance, using high-order moments allows better prediction in high-dose areas for serial structures. We used a large dataset of 360 conventional lung patients with 2Gy 30 fractions to train the deep learning (DL) model…
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Taxonomy
MethodsMasked autoencoder
