posted on 2019-06-06, 10:20authored byS-H Wang, S Xie, X Chen, DS Guttery, C Tang, J Sun, Y-D Zhang
Aim: This paper proposes a novel alcoholism identification approach that can assist radiologists in patient diagnosis.
Method: AlexNet was used as the basic transfer learning model. The global learning rate was small, at 10−4, and the iteration epoch number was at 10. The learning rate factor of replaced layers was 10 times larger than that of the transferred layers. We tested five different replacement configurations of transfer learning.
Results: The experiment shows that the best performance was achieved by replacing the final fully connected layer. Our method yielded a sensitivity of 97.44%± 1.15%, a specificity of 97.41 ± 1.51%, a precision of 97.34 ± 1.49%, an accuracy of 97.42 ± 0.95%, and an F1 score of 97.37 ± 0.97% on the test set.
Conclusion: This method can assist radiologists in their routine alcoholism screening of brain magnetic resonance images.
Funding
The authors are grateful for the financial support of the Zhejiang Provincial Natural Science Foundation of China (LY17F010003, Y18F010018), the National key research and development plan (2017YFB1103202), the Open Fund of Guangxi Key Laboratory of Manufacturing System and Advanced Manufacturing Technology (17-259-05-011K), the Natural Science Foundation of China (61602250, U1711263, U1811264), and the Henan Key Research and Development Project (182102310629).
History
Citation
Frontiers in Psychiatry, 2019, 10:205.
Author affiliation
/Organisation/COLLEGE OF LIFE SCIENCES/School of Medicine/Cancer Research Centre
The datasets for this manuscript are not publicly
available because we need approval from our affiliations.
Requests to access the datasets should be directed
to yudongzhang@ieee.org.