Literature DB >> 27053448

Outcome modeling techniques for prostate cancer radiotherapy: Data, models, and validation.

James Coates1, Issam El Naqa2.   

Abstract

Prostate cancer is a frequently diagnosed malignancy worldwide and radiation therapy is a first-line approach in treating localized as well as locally advanced cases. The limiting factor in modern radiotherapy regimens is dose to normal structures, an excess of which can lead to aberrant radiation-induced toxicities. Conversely, dose reduction to spare adjacent normal structures risks underdosing target volumes and compromising local control. As a result, efforts aimed at predicting the effects of radiotherapy could invaluably optimize patient treatments by mitigating such toxicities and simultaneously maximizing biochemical control. In this work, we review the types of data, frameworks and techniques used for prostate radiotherapy outcome modeling. Consideration is given to clinical and dose-volume metrics, such as those amassed by the QUANTEC initiative, and also to newer methods for the integration of biological and genetic factors to improve prediction performance. We furthermore highlight trends in machine learning that may help to elucidate the complex pathophysiological mechanisms of tumor control and radiation-induced normal tissue side effects.
Copyright © 2016 Associazione Italiana di Fisica Medica. Published by Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Machine learning; Outcomes modeling; Prostate cancer; Radiotherapy

Mesh:

Year:  2016        PMID: 27053448     DOI: 10.1016/j.ejmp.2016.02.014

Source DB:  PubMed          Journal:  Phys Med        ISSN: 1120-1797            Impact factor:   2.685


  2 in total

1.  CT imaging markers to improve radiation toxicity prediction in prostate cancer radiotherapy by stacking regression algorithm.

Authors:  Shayan Mostafaei; Hamid Abdollahi; Shiva Kazempour Dehkordi; Isaac Shiri; Abolfazl Razzaghdoust; Seyed Hamid Zoljalali Moghaddam; Afshin Saadipoor; Fereshteh Koosha; Susan Cheraghi; Seied Rabi Mahdavi
Journal:  Radiol Med       Date:  2019-09-24       Impact factor: 3.469

2.  Optimization of treatment strategy by using a machine learning model to predict survival time of patients with malignant glioma after radiotherapy.

Authors:  Takuya Mizutani; Taiki Magome; Hiroshi Igaki; Akihiro Haga; Kanabu Nawa; Noriyasu Sekiya; Keiichi Nakagawa
Journal:  J Radiat Res       Date:  2019-11-22       Impact factor: 2.724

  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.