Probabilistic feature extraction, dose statistic prediction and dose mimicking for automated radiation therapy treatment planning
Tianfang Zhang, Rasmus Bokrantz, Jimmy Olsson

TL;DR
This paper introduces a probabilistic framework for automated radiation therapy planning that captures uncertainty in dose predictions and improves treatment plan quality by leveraging this information.
Contribution
It presents a novel three-step pipeline combining variational autoencoders and Bayesian methods for dose prediction and mimicking, enhancing plan accuracy and uncertainty quantification.
Findings
Features from the autoencoder capture relevant geometric information.
Predictive distributions outperform non-input-dependent benchmarks.
Generated plans better match clinical counterparts.
Abstract
Purpose: We propose a general framework for quantifying predictive uncertainties of dose-related quantities and leveraging this information in a dose mimicking problem in the context of automated radiation therapy treatment planning. Methods: A three-step pipeline, comprising feature extraction, dose statistic prediction and dose mimicking, is employed. In particular, the features are produced by a convolutional variational autoencoder and used as inputs in a previously developed nonparametric Bayesian statistical method, estimating the multivariate predictive distribution of a collection of predefined dose statistics. Specially developed objective functions are then used to construct a probabilistic dose mimicking problem based on the produced distributions, creating deliverable treatment plans. Results: The numerical experiments are performed using a dataset of 94 retrospective…
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