Frontiers in Neuroscience (Jun 2021)

Characterizing Brain Tumor Regions Using Texture Analysis in Magnetic Resonance Imaging

  • Yun Yu,
  • Yun Yu,
  • Xi Wu,
  • Jiu Chen,
  • Gong Cheng,
  • Xin Zhang,
  • Xin Zhang,
  • Cheng Wan,
  • Jie Hu,
  • Shumei Miao,
  • Shumei Miao,
  • Yuechuchu Yin,
  • Yuechuchu Yin,
  • Zhongmin Wang,
  • Zhongmin Wang,
  • Tao Shan,
  • Tao Shan,
  • Shenqi Jing,
  • Shenqi Jing,
  • Wenming Wang,
  • Wenming Wang,
  • Jianjun Guo,
  • Jianjun Guo,
  • Xinhua Hu,
  • Yun Liu,
  • Yun Liu

DOI
https://doi.org/10.3389/fnins.2021.634926
Journal volume & issue
Vol. 15

Abstract

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PurposeTo extract texture features from magnetic resonance imaging (MRI) scans of patients with brain tumors and use them to train a classification model for supporting an early diagnosis.MethodsTwo groups of regions (control and tumor) were selected from MRI scans of 40 patients with meningioma or glioma. These regions were analyzed to obtain texture features. Statistical analysis was conducted using SPSS (version 20.0), including the Shapiro–Wilk test and Wilcoxon signed-rank test, which were used to test significant differences in each feature between the tumor and healthy regions. T-distributed stochastic neighbor embedding (t-SNE) was used to visualize the data distribution so as to avoid tumor selection bias. The Gini impurity index in random forests (RFs) was used to select the top five out of all features. Based on the five features, three classification models were built respectively with three machine learning classifiers: RF, support vector machine (SVM), and back propagation (BP) neural network.ResultsSixteen of the 25 features were significantly different between the tumor and healthy areas. Through the Gini impurity index in RFs, standard deviation, first-order moment, variance, third-order absolute moment, and third-order central moment were selected to build the classification model. The classification model trained using the SVM classifier achieved the best performance, with sensitivity, specificity, and area under the curve of 94.04%, 92.3%, and 0.932, respectively.ConclusionTexture analysis with an SVM classifier can help differentiate between brain tumor and healthy areas with high speed and accuracy, which would facilitate its clinical application.

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