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Abstract #0897

Radiogenomics of 154 WHO grade 2 and 3 gliomas via machine learning and the impact of texture analysis

Manabu Kinoshita1,2, Hideyuki Arita2, Atsushi Kawaguchi3, Masamichi Takahashi4, Yoshitaka Narita4, Yuzo Terakawa2, Naohiro Tsuyuguchi2, Yoshiko Okita2, Masahiro Nonaka2, Shusuke Moriuchi2, Junya Fukai2, Shuichi Izumoto2, Kenichi Ishibashi2, Yoshinori Kodama2, Kanji Mori2, Koichi Ichimura5, and Yonehiro Kanemura2,6

1Osaka International Cancer Institute, Osaka, Japan, 2Kansai Molecular Diagnosis Network for CNS Tumors, Osaka, Japan, 3Saga University, Saga, Japan, 4National Cancer Center Hospital, Tokyo, Japan, 5National Cancer Center Research Institute, Tokyo, Japan, 6Osaka National Hospital, Osaka, Japan

In this research, the authors performed radiomics for 154 LrGG and attempted to build a MRI based predictive model to classify clinically relevant 3 LrGG subgroups using machine learning algorithm. The impact of texture analysis such as GLCM and GLRLM on building the model was also investigated. Accuracy for predicting 3 molecular subgroups were 0.587 without and 0.546 with texture analysis. Although radiomics was shown to be a powerful tool to identify genetic subgroups of LrGG, little improvement is expected from texture analysis.

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