Quantitative radiomic profiling of glioblastoma represents transcriptomic expression

نویسندگان

  • Doo-Sik Kong
  • Junhyung Kim
  • Gyuha Ryu
  • Hye-Jin You
  • Joon Kyung Sung
  • Yong Hee Han
  • Hye-Mi Shin
  • In-Hee Lee
  • Sung-Tae Kim
  • Chul-Kee Park
  • Seung Hong Choi
  • Jeong Won Choi
  • Ho Jun Seol
  • Jung-Il Lee
  • Do-Hyun Nam
چکیده

Quantitative imaging biomarkers have increasingly emerged in the field of research utilizing available imaging modalities. We aimed to identify good surrogate radiomic features that can represent genetic changes of tumors, thereby establishing noninvasive means for predicting treatment outcome. From May 2012 to June 2014, we retrospectively identified 65 patients with treatment-naïve glioblastoma with available clinical information from the Samsung Medical Center data registry. Preoperative MR imaging data were obtained for all 65 patients with primary glioblastoma. A total of 82 imaging features including first-order statistics, volume, and size features, were semi-automatically extracted from structural and physiologic images such as apparent diffusion coefficient and perfusion images. Using commercially available software, NordicICE, we performed quantitative imaging analysis and collected the dataset composed of radiophenotypic parameters. Unsupervised clustering methods revealed that the radiophenotypic dataset was composed of three clusters. Each cluster represented a distinct molecular classification of glioblastoma; classical type, proneural and neural types, and mesenchymal type. These clusters also reflected differential clinical outcomes. We found that extracted imaging signatures does not represent copy number variation and somatic mutation. Quantitative radiomic features provide a potential evidence to predict molecular phenotype and treatment outcome. Radiomic profiles represents transcriptomic phenotypes more well.

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عنوان ژورنال:

دوره 9  شماره 

صفحات  -

تاریخ انتشار 2018