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Study of the Immediately Detection of Mild Traumatic Brain Injury by Feature Engineering on Electroencephalography.

Lilong ZhouHang HuXu NingZelin BaiJia XuLin XuWei ZhuangJian SunHaisheng ZhangFeng WangWeiheng CuiGui JinYongjian NianKui LiAowen DuanMingsheng Chen
Published in: Advanced biology (2023)
The electroencephalographic (EEG) diagnosis of mild traumatic brain injury (mTBI) is not usually timely, and the detection is often performed several hours or days after the trauma, leading to a decrease in the accuracy of its detection. In this study, EEG signals are recorded immediately after mTBI by connecting a bipolar single lead to injured animals. And three types of EEG features, namely time domain, frequency domain, and nonlinear dynamics, are screened for optimal feature subset in mTBI detection. First, EEG signals of animals are recorded before and after establishing the animal model of mTBI. Second, signal preprocessing, feature extraction, and feature preprocessing are performed to obtain the full-feature dataset, and 1442 feature subsets are obtained by 15 feature reduction algorithms extracted from combinations of 47 features. Ultimately, the support vector machines and K-nearest neighbor algorithms are trained and tested respectively, and their performance is comprehensively compared to determine the optimal feature subset for mTBI detection. In the EEG dataset collected in this study, a total of eight feature subsets extracted from combinations of original 47 features and classification models with 100% accuracy are obtained. This study shows the perspective of immediately detecting mTBI based on a bipolar single-lead EEG.
Keyphrases
  • machine learning
  • deep learning
  • mild traumatic brain injury
  • resting state
  • functional connectivity
  • working memory
  • label free
  • spinal cord injury
  • bipolar disorder
  • multiple sclerosis
  • high density
  • quantum dots