Journal of Forensic Medicine ›› 2022, Vol. 38 ›› Issue (2): 223-230.DOI: 10.12116/j.issn.1004-5619.2021.410923

• Original Article • Previous Articles     Next Articles

Automatic Identification of Brain Injury Mechanism Based on Deep Learning

Qi-fan YANG1,2(), Xue-yang SUN1,2, Yan-bin WANG3, Zhi-ling TIAN2, He-wen DONG2, Lei WAN2, Dong-hua ZOU2, Xiao-tian YU2, Guang-zheng ZHANG1(), Ning-guo LIU2()   

  1. 1.Department of Forensic Medicine, School of Basic Medical Sciences, Zhengzhou University, Zhengzhou 450000, China
    2.Shanghai Key Laboratory of Forensic Medicine, Key Laboratory of Forensic Science, Ministry of Justice, Shanghai Forensic Service Platform, Academy of Forensic Science, Shanghai 200063, China
    3.China National Accreditation Service for Conformity Assessment, Beijing 100062, China
  • Received:2021-09-26 Online:2022-04-25 Published:2022-04-28
  • Contact: Guang-zheng ZHANG,Ning-guo LIU

Abstract: Objective

To apply the convolutional neural network (CNN) Inception_v3 model in automatic identification of acceleration and deceleration injury based on CT images of brain, and to explore the application prospect of deep learning technology in forensic brain injury mechanism inference.

Methods

CT images from 190 cases with acceleration and deceleration brain injury were selected as the experimental group, and CT images from 130 normal brain cases were used as the control group. The above-mentioned 320 imaging data were divided into training validation dataset and testing dataset according to random sampling method. The model classification performance was evaluated by the accuracy rate, precision rate, recall rate, F1-value and AUC value.

Results

In the training process and validation process, the accuracy rate of the model to classify acceleration injury, deceleration injury and normal brain was 99.00% and 87.21%, which met the requirements. The optimized model was used to test the data of the testing dataset, the result showed that the accuracy rate of the model in the test set was 87.18%, and the precision rate, recall rate, F1-score and AUC of the model to recognize acceleration injury were 84.38%, 90.00%, 87.10% and 0.98, respectively, to recognize deceleration injury were 86.67%, 72.22%, 78.79% and 0.92, respectively, to recognize normal brain were 88.57%, 89.86%, 89.21% and 0.93, respectively.

Conclusion

Inception_v3 model has potential application value in distinguishing acceleration and deceleration injury based on brain CT images, and is expected to become an auxiliary tool to infer the mechanism of head injury.

Key words: forensic medicine, acceleration brain injury, deceleration brain injury, image classification, deep learning, convolutional neural network, receiver operating characteristic (ROC) curve, Inception_v3 model

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