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Cancer risk assessment in modern radiotherapy workflow with medical big data

Authors :
Fu Jin
Ying Wang
Chao Li
Yanan He
Li Yin
Xia Huang
Xiu-Mei Tian
Juan Zhou
Xianfeng Liu
Da Qiu
Guang-Lei He
Mingsong Zhong
Han Yang
Huanli Luo
Qicheng Li
Source :
Cancer Management and Research
Publication Year :
2018

Abstract

Modern radiotherapy (RT) is being enriched by big digital data and intensive technology. Multimodality image registration, intelligence-guided planning, real-time tracking, image-guided RT (IGRT), and automatic follow-up surveys are the products of the digital era. Enormous digital data are created in the process of treatment, including benefits and risks. Generally, decision making in RT tries to balance these two aspects, which is based on the archival and retrieving of data from various platforms. However, modern risk-based analysis shows that many errors that occur in radiation oncology are due to failures in workflow. These errors can lead to imbalance between benefits and risks. In addition, the exact mechanism and dose-response relationship for radiation-induced malignancy are not well understood. The cancer risk in modern RT workflow continues to be a problem. Therefore, in this review, we develop risk assessments based on our current knowledge of IGRT and provide strategies for cancer risk reduction. Artificial intelligence (AI) such as machine learning is also discussed because big data are transforming RT via AI.

Details

ISSN :
11791322
Volume :
10
Database :
OpenAIRE
Journal :
Cancer management and research
Accession number :
edsair.doi.dedup.....37e29cba39cdccbad69c6e2a8784f7cc