Mazen Soufi
生駒 : 奈良先端科学技術大学院大学, 2018.7
授業アーカイブRadiomics is an emerging research field that aims at transforming medical images into mineable data for discovery of image features related to clinical outcomes. In cancer patients, such clinical outcomes include the efficacy of chemotherapy, survival prediction, and furthermore, prognostic predictors for specific genetic mutations and molecular pathways. This is performed by building high-dimensional vectors (radiomic signatures) consisting of image and clinical features and investigating its associations with the clinical outcomes. In this talk, concepts of radiomics in cancer research will be presented, with a focus on the differences between radiomics and machine learning, especially deep learning techniques. Next, applications of radiomics in lung, head and neck and brain cancers will be introduced. Finally, a methodology for characterization of the repeatability and reproducibility of histogram and texture features, which are essential for developing clinically-useful radiomic signatures, will be demonstrated.
2018
電子化映像資料(42 分13 秒)
情報科学領域・コロキアム ; 平成30年度
講演日: 平成30年7月30日
講演場所: 情報科学棟中講義室(L3)
英語 (eng)
英語 (eng)