| Literature DB >> 35061602 |
Tianfang Zhang1,2, Rasmus Bokrantz2, Jimmy Olsson1.
Abstract
Objective.We propose a semiautomatic pipeline for radiation therapy treatment planning, combining ideas from machine learning-automated planning and multicriteria optimization (MCO).Approach.Using knowledge extracted from historically delivered plans, prediction models for spatial dose and dose statistics are trained and furthermore systematically modified to simulate changes in tradeoff priorities, creating a set of differently biased predictions. Based on the predictions, an MCO problem is subsequently constructed using previously developed dose mimicking functions, designed in such a way that its Pareto surface spans the range of clinically acceptable yet realistically achievable plans as exactly as possible. The result is an algorithm outputting a set of Pareto optimal plans, either fluence-based or machine parameter-based, which the user can navigate between in real time to make adjustments before a final deliverable plan is created.Main results.Numerical experiments performed on a dataset of prostate cancer patients show that one may often navigate to a better plan than one produced by a single-plan-output algorithm.Significance.We demonstrate the potential of merging MCO and a data-driven workflow to automate labor-intensive parts of the treatment planning process while maintaining a certain extent of manual control for the user. Creative Commons Attribution license.Entities:
Keywords: dose mimicking; dose prediction; dose–volume histogram prediction; knowledge-based planning; multicriteria optimization; uncertainty modeling
Mesh:
Year: 2022 PMID: 35061602 DOI: 10.1088/1361-6560/ac4da5
Source DB: PubMed Journal: Phys Med Biol ISSN: 0031-9155 Impact factor: 3.609