Literature DB >> 26305670

Dose-volume histogram prediction using density estimation.

Johanna Skarpman Munter1, Jens Sjölund.   

Abstract

Knowledge of what dose-volume histograms can be expected for a previously unseen patient could increase consistency and quality in radiotherapy treatment planning. We propose a machine learning method that uses previous treatment plans to predict such dose-volume histograms. The key to the approach is the framing of dose-volume histograms in a probabilistic setting.The training consists of estimating, from the patients in the training set, the joint probability distribution of some predictive features and the dose. The joint distribution immediately provides an estimate of the conditional probability of the dose given the values of the predictive features. The prediction consists of estimating, from the new patient, the distribution of the predictive features and marginalizing the conditional probability from the training over this. Integrating the resulting probability distribution for the dose yields an estimate of the dose-volume histogram.To illustrate how the proposed method relates to previously proposed methods, we use the signed distance to the target boundary as a single predictive feature. As a proof-of-concept, we predicted dose-volume histograms for the brainstems of 22 acoustic schwannoma patients treated with stereotactic radiosurgery, and for the lungs of 9 lung cancer patients treated with stereotactic body radiation therapy. Comparing with two previous attempts at dose-volume histogram prediction we find that, given the same input data, the predictions are similar.In summary, we propose a method for dose-volume histogram prediction that exploits the intrinsic probabilistic properties of dose-volume histograms. We argue that the proposed method makes up for some deficiencies in previously proposed methods, thereby potentially increasing ease of use, flexibility and ability to perform well with small amounts of training data.

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Mesh:

Year:  2015        PMID: 26305670     DOI: 10.1088/0031-9155/60/17/6923

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   3.609


  12 in total

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Journal:  Front Artif Intell       Date:  2020-09-08

6.  Deep Learning-Based Fluence Map Prediction for Pancreas Stereotactic Body Radiation Therapy With Simultaneous Integrated Boost.

Authors:  Wentao Wang; Yang Sheng; Manisha Palta; Brian Czito; Christopher Willett; Martin Hito; Fang-Fang Yin; Qiuwen Wu; Yaorong Ge; Q Jackie Wu
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7.  A plan template-based automation solution using a commercial treatment planning system.

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Journal:  J Appl Clin Med Phys       Date:  2020-03-16       Impact factor: 2.102

Review 8.  Artificial Intelligence in Radiotherapy Treatment Planning: Present and Future.

Authors:  Chunhao Wang; Xiaofeng Zhu; Julian C Hong; Dandan Zheng
Journal:  Technol Cancer Res Treat       Date:  2019-01-01

9.  A method of using deep learning to predict three-dimensional dose distributions for intensity-modulated radiotherapy of rectal cancer.

Authors:  Jieping Zhou; Zhao Peng; Yuchen Song; Yankui Chang; Xi Pei; Liusi Sheng; X George Xu
Journal:  J Appl Clin Med Phys       Date:  2020-04-13       Impact factor: 2.102

10.  The benefits evaluation of abdominal deep inspiration breath hold based on knowledge-based radiotherapy treatment planning for left-sided breast cancer.

Authors:  Jiaqi Xu; Jiazhou Wang; Feng Zhao; Weigang Hu; Guorong Yao; Zhongjie Lu; Senxiang Yan
Journal:  J Appl Clin Med Phys       Date:  2020-09-12       Impact factor: 2.102

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