Machine Learning With Radiation Oncology Big Data

Radiation oncology is uniquely positioned to harness the power of big data as vast amounts of data are generated at an unprecedented pace for individual patients in imaging studies and radiation treatments worldwide. The big data encountered in the radiotherapy clinic may include patient demographic...

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Superior document:Frontiers Research Topics
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Year of Publication:2019
Language:English
Series:Frontiers Research Topics
Physical Description:1 electronic resource (146 p.)
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spelling Lei Xing auth
Machine Learning With Radiation Oncology Big Data
Frontiers Media SA 2019
1 electronic resource (146 p.)
text txt rdacontent
computer c rdamedia
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Frontiers Research Topics
Radiation oncology is uniquely positioned to harness the power of big data as vast amounts of data are generated at an unprecedented pace for individual patients in imaging studies and radiation treatments worldwide. The big data encountered in the radiotherapy clinic may include patient demographics stored in the electronic medical record (EMR) systems, plan settings and dose volumetric information of the tumors and normal tissues generated by treatment planning systems (TPS), anatomical and functional information from diagnostic and therapeutic imaging modalities (e.g., CT, PET, MRI and kVCBCT) stored in picture archiving and communication systems (PACS), as well as the genomics, proteomics and metabolomics information derived from blood and tissue specimens. Yet, the great potential of big data in radiation oncology has not been fully exploited for the benefits of cancer patients due to a variety of technical hurdles and hardware limitations. With recent development in computer technology, there have been increasing and promising applications of machine learning algorithms involving the big data in radiation oncology. This research topic is intended to present novel technological breakthroughs and state-of-the-art developments in machine learning and data mining in radiation oncology in recent years.
English
deep learning
precision medicine
Radiation Oncology
big data
machine learning
artificial intelligence
personalized medicine
2-88945-730-3
Issam El Naqa auth
Jun Deng auth
language English
format eBook
author Lei Xing
spellingShingle Lei Xing
Machine Learning With Radiation Oncology Big Data
Frontiers Research Topics
author_facet Lei Xing
Issam El Naqa
Jun Deng
author_variant l x lx
author2 Issam El Naqa
Jun Deng
author2_variant i e n ien
j d jd
author_sort Lei Xing
title Machine Learning With Radiation Oncology Big Data
title_full Machine Learning With Radiation Oncology Big Data
title_fullStr Machine Learning With Radiation Oncology Big Data
title_full_unstemmed Machine Learning With Radiation Oncology Big Data
title_auth Machine Learning With Radiation Oncology Big Data
title_new Machine Learning With Radiation Oncology Big Data
title_sort machine learning with radiation oncology big data
series Frontiers Research Topics
series2 Frontiers Research Topics
publisher Frontiers Media SA
publishDate 2019
physical 1 electronic resource (146 p.)
isbn 2-88945-730-3
illustrated Not Illustrated
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