Home    中文  
 
  • Search
  • lucene Search
  • Citation
  • Fig/Tab
  • Adv Search
Just Accepted  |  Current Issue  |  Archive  |  Featured Articles  |  Most Read  |  Most Download  |  Most Cited

Chinese Journal of Medical Ultrasound (Electronic Edition) ›› 2021, Vol. 18 ›› Issue (06): 611-615. doi: 10.3877/cma.j.issn.1672-6448.2021.06.012

• Genitourinary Ultrasound • Previous Articles     Next Articles

Deep learning-based model for ultrasound diagnosis of end-stage chronic kidney disease

Guanghan Li1, Jian Liu1, Liyong Ma2, Mengchao Dong2, Jingping Wu1, Bo Zhang1, Wenge Li3, Min Zheng1()   

  1. 1. Department of Ultrasound Medicine, China-Japan Friendship Hospital, Beijing 100029, China
    2. School of Information Science and Engineering, Harbin Institute of Technology, Weihai 264209, China
    3. Department of Nephrology, China-Japan Friendship Hospital, Beijing 100029, China
  • Received:2021-03-15 Online:2021-06-01 Published:2021-07-12
  • Contact: Min Zheng

Abstract:

Objective

To evaluate the diagnostic value of the convolution neural network model DenseNet121 based on deep learning in the diagnosis of end-stage renal disease (ESRD).

Methods

In this retrospective study, 489 kidney ultrasound images of patients diagnosed with end-stage renal disease from January 1, 2019 to September 30, 2019 and 450 kidney ultrasound images of healthy controls were selected at China-Japan Friendship Hospital. The deep learning-based supervised convolutional neural network model DenseNet121 was used for network training and verification. According to whether it was end-stage renal disease or not, the prediction results of the deep learning-based model were compared with the prediction results of professional imaging physicians. Receiver operating characteristic (ROC) curve analysis was used to evaluate the performance of the deep learning-based model, the accuracy, specificity, sensitivity, and area under the curve (AUC) were used as metrics to compare the performance of the deep learning-based model and professional imaging physicians, and Delong was used to compare the difference of AUC.

Results

The prediction accuracy of professional imaging physicians for end-stage renal disease was 89.36%, the sensitivity was 81.63%, the specificity was 97.77%, and the AUC was 0.897. The prediction accuracy of the deep learning-based convolution neural network model DenseNet121 for end-stage renal disease was 93.51%, the sensitivity was 96.12%, the specificity was 90.66%, and the AUC was 0.934. Compared with professional physicians, the DenseNet121 model had higher diagnostic ability (Z=3.034, P=0.002).

Conclusion

The ultrasonic diagnosis method based on deep learning shows high diagnostic performance, and it has the potential to assist professional imaging physicians in the diagnosis of end-stage renal disease.

Key words: Chronic kidney disease, Ultrasound, Deep learning, Diagnosis

Copyright © Chinese Journal of Medical Ultrasound (Electronic Edition), All Rights Reserved.
Tel: 010-51322630、2632、2628 Fax: 010-51322630 E-mail: csbjb@cma.org.cn
Powered by Beijing Magtech Co. Ltd