Probabilistic feature extraction, dose statistic prediction and dose mimicking for automated radiation therapy treatment planning

02/24/2021
by   Tianfang Zhang, et al.
0

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 dose mimicking problem based on the produced distributions, creating deliverable treatment plans. Results: The numerical experiments are performed using a dataset of 94 retrospective treatment plans of prostate cancer patients. We show that the features extracted by the variational autoencoder captures geometric information of substantial relevance to the dose statistic prediction problem, that the estimated predictive distributions are reasonable and outperforms a benchmark method, and that the deliverable plans agree well with their clinical counterparts. Conclusions: We demonstrate that prediction of dose-related quantities may be extended to include uncertainty estimation and that such probabilistic information may be leveraged in a dose mimicking problem. The treatment plans produced by the proposed pipeline resemble their original counterparts well, illustrating the merits of a holistic approach to automated planning based on probabilistic modeling.

READ FULL TEXT

page 8

page 15

research
09/26/2017

Dose Prediction with U-net: A Feasibility Study for Predicting Dose Distributions from Contours using Deep Learning on Prostate IMRT Patients

With the advancement of treatment modalities in radiation therapy, outco...
research
06/16/2020

Density of States Estimation for Out-of-Distribution Detection

Perhaps surprisingly, recent studies have shown probabilistic model like...
research
05/14/2021

A feasibility study of a hyperparameter tuning approach to automated inverse planning in radiotherapy

Radiotherapy inverse planning requires treatment planners to modify mult...
research
03/10/2023

A marginal structural model for normal tissue complication probability

The goal of radiation therapy for cancer is to deliver prescribed radiat...
research
12/03/2020

A similarity-based Bayesian mixture-of-experts model

We present a new nonparametric mixture-of-experts model for multivariate...
research
06/06/2022

Learning Treatment Plan Representations for Content Based Image Retrieval

Objective: Knowledge based planning (KBP) typically involves training an...
research
10/31/2019

The importance of evaluating the complete automated knowledge-based planning pipeline

We determine how prediction methods combine with optimization methods in...

Please sign up or login with your details

Forgot password? Click here to reset