Frontiers in Neuroscience (May 2022)

Image-Based Differentiation of Intracranial Metastasis From Glioblastoma Using Automated Machine Learning

  • Yukun Liu,
  • Tianshi Li,
  • Ziwen Fan,
  • Yiming Li,
  • Zhiyan Sun,
  • Shaowu Li,
  • Yuchao Liang,
  • Chunyao Zhou,
  • Qiang Zhu,
  • Hong Zhang,
  • Xing Liu,
  • Lei Wang,
  • Yinyan Wang,
  • Yinyan Wang,
  • Yinyan Wang

DOI
https://doi.org/10.3389/fnins.2022.855990
Journal volume & issue
Vol. 16

Abstract

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PurposeThe majority of solitary brain metastases appear similar to glioblastomas (GBMs) on magnetic resonance imaging (MRI). This study aimed to develop and validate an MRI-based model to differentiate intracranial metastases from GBMs using automated machine learning.Materials and MethodsRadiomics features from 354 patients with brain metastases and 354 with GBMs were used to build prediction algorithms based on T2-weighted images, contrast-enhanced (CE) T1-weighted images, or both. The data of these subjects were subjected to a nested 10-fold split in the training and testing groups to build the best algorithms using the tree-based pipeline optimization tool (TPOT). The algorithms were independently validated using data from 124 institutional patients with solitary brain metastases and 103 patients with GBMs from the cancer genome atlas.ResultsThree groups of models were developed. The average areas under the receiver operating characteristic curve (AUCs) were 0.856 for CE T1-weighted images, 0.976 for T2-weighted images, and 0.988 for a combination in the testing groups, and the AUCs of the groups of models in the independent validation were 0.687, 0.831, and 0.867, respectively. A total of 149 radiomics features were considered as the most valuable features for the differential diagnosis of GBMs and metastases.ConclusionThe models established by TPOT can distinguish glioblastoma from solitary brain metastases well, and its non-invasiveness, convenience, and robustness make it potentially useful for clinical applications.

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