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Erschienen in: Abdominal Radiology 6/2019

20.06.2018

Radiomics and radiogenomics of prostate cancer

verfasst von: Clayton P. Smith, Marcin Czarniecki, Sherif Mehralivand, Radka Stoyanova, Peter L. Choyke, Stephanie Harmon, Baris Turkbey

Erschienen in: Abdominal Radiology | Ausgabe 6/2019

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Abstract

Radiomics and radiogenomics are attractive research topics in prostate cancer. Radiomics mainly focuses on extraction of quantitative information from medical imaging, whereas radiogenomics aims to correlate these imaging features to genomic data. The purpose of this review is to provide a brief overview summarizing recent progress in the application of radiomics-based approaches in prostate cancer and to discuss the potential role of radiogenomics in prostate cancer.
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Metadaten
Titel
Radiomics and radiogenomics of prostate cancer
verfasst von
Clayton P. Smith
Marcin Czarniecki
Sherif Mehralivand
Radka Stoyanova
Peter L. Choyke
Stephanie Harmon
Baris Turkbey
Publikationsdatum
20.06.2018
Verlag
Springer US
Erschienen in
Abdominal Radiology / Ausgabe 6/2019
Print ISSN: 2366-004X
Elektronische ISSN: 2366-0058
DOI
https://doi.org/10.1007/s00261-018-1660-7

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