Optimizing a machine learning based glioma grading system using multi-parametric MRI histogram and texture features.

Journal: Oncotarget
Published Date:

Abstract

Current machine learning techniques provide the opportunity to develop noninvasive and automated glioma grading tools, by utilizing quantitative parameters derived from multi-modal magnetic resonance imaging (MRI) data. However, the efficacies of different machine learning methods in glioma grading have not been investigated.A comprehensive comparison of varied machine learning methods in differentiating low-grade gliomas (LGGs) and high-grade gliomas (HGGs) as well as WHO grade II, III and IV gliomas based on multi-parametric MRI images was proposed in the current study. The parametric histogram and image texture attributes of 120 glioma patients were extracted from the perfusion, diffusion and permeability parametric maps of preoperative MRI. Then, 25 commonly used machine learning classifiers combined with 8 independent attribute selection methods were applied and evaluated using leave-one-out cross validation (LOOCV) strategy. Besides, the influences of parameter selection on the classifying performances were investigated. We found that support vector machine (SVM) exhibited superior performance to other classifiers. By combining all tumor attributes with synthetic minority over-sampling technique (SMOTE), the highest classifying accuracy of 0.945 or 0.961 for LGG and HGG or grade II, III and IV gliomas was achieved. Application of Recursive Feature Elimination (RFE) attribute selection strategy further improved the classifying accuracies. Besides, the performances of LibSVM, SMO, IBk classifiers were influenced by some key parameters such as kernel type, c, gama, K, etc. SVM is a promising tool in developing automated preoperative glioma grading system, especially when being combined with RFE strategy. Model parameters should be considered in glioma grading model optimization.

Authors

  • Xin Zhang
    First Department of Infectious Diseases, The First Affiliated Hospital of China Medical University, Shenyang, China.
  • Lin-Feng Yan
    Department of Radiology, Tangdu Hospital, The Fourth Military Medical University, Xi'an 710038, Shaanxi, P.R. China.
  • Yu-Chuan Hu
    Department of Radiology, Tangdu Hospital, The Fourth Military Medical University, Xi'an 710038, Shaanxi, P.R. China.
  • Gang Li
    The Centre for Cyber Resilience and Trust, Deakin University, Australia.
  • Yang Yang
    Department of Gastrointestinal Surgery, The Third Hospital of Hebei Medical University, Shijiazhuang, China.
  • Yu Han
    Department of Neurology, The First Affiliated Hospital, Dalian Medical University, Dalian, China.
  • Ying-Zhi Sun
    Department of Radiology, Tangdu Hospital, The Fourth Military Medical University, Xi'an 710038, Shaanxi, P.R. China.
  • Zhi-Cheng Liu
    Department of Radiology, Tangdu Hospital, The Fourth Military Medical University, Xi'an 710038, Shaanxi, P.R. China.
  • Qiang Tian
    Department of Radiology, Tangdu Hospital, The Fourth Military Medical University, Xi'an 710038, Shaanxi, P.R. China.
  • Zi-Yang Han
    Student Brigade, The Fourth Military Medical University, Xi'an 710032, Shaanxi, P.R. China.
  • Le-De Liu
    Student Brigade, The Fourth Military Medical University, Xi'an 710032, Shaanxi, P.R. China.
  • Bin-Quan Hu
    Student Brigade, The Fourth Military Medical University, Xi'an 710032, Shaanxi, P.R. China.
  • Zi-Yu Qiu
    Student Brigade, The Fourth Military Medical University, Xi'an 710032, Shaanxi, P.R. China.
  • Wen Wang
    Clinical and Research Center for Infectious Diseases, Beijing Youan Hospital, Capital Medical University, Beijing, China.
  • Guang-Bin Cui
    Department of Radiology, Tangdu Hospital, The Fourth Military Medical University, Xi'an 710038, Shaanxi, P.R. China.