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An investigation of machine learning methods in delta-radiomics feature analysis

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Listed:
  • Yushi Chang
  • Kyle Lafata
  • Wenzheng Sun
  • Chunhao Wang
  • Zheng Chang
  • John P Kirkpatrick
  • Fang-Fang Yin

Abstract

Purpose: This study aimed to investigate the effectiveness of using delta-radiomics to predict overall survival (OS) for patients with recurrent malignant gliomas treated by concurrent stereotactic radiosurgery and bevacizumab, and to investigate the effectiveness of machine learning methods for delta-radiomics feature selection and building classification models. Methods: The pre-treatment, one-week post-treatment, and two-month post-treatment T1 and T2 fluid-attenuated inversion recovery (FLAIR) MRI were acquired. 61 radiomic features (intensity histogram-based, morphological, and texture features) were extracted from the gross tumor volume in each image. Delta-radiomics were calculated between the pre-treatment and post-treatment features. Univariate Cox regression and 3 multivariate machine learning methods (L1-regularized logistic regression [L1-LR], random forest [RF] or neural networks [NN]) were used to select a reduced number of features, and 7 machine learning methods (L1-LR, L2-LR, RF, NN, kernel support vector machine [KSVM], linear support vector machine [LSVM], or naïve bayes [NB]) was used to build classification models for predicting OS. The performances of the total 21 model combinations built based on single-time-point radiomics (pre-treatment, one-week post-treatment, and two-month post-treatment) and delta-radiomics were evaluated by the area under the receiver operating characteristic curve (AUC). Results: For a small cohort of 12 patients, delta-radiomics resulted in significantly higher AUC than pre-treatment radiomics (p-value

Suggested Citation

  • Yushi Chang & Kyle Lafata & Wenzheng Sun & Chunhao Wang & Zheng Chang & John P Kirkpatrick & Fang-Fang Yin, 2019. "An investigation of machine learning methods in delta-radiomics feature analysis," PLOS ONE, Public Library of Science, vol. 14(12), pages 1-14, December.
  • Handle: RePEc:plo:pone00:0226348
    DOI: 10.1371/journal.pone.0226348
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