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Lumbar Disc Herniation Automatic Detection in Magnetic Resonance Imaging Based on Deep Learning.
Tsai, Jen-Yung; Hung, Isabella Yu-Ju; Guo, Yue Leon; Jan, Yih-Kuen; Lin, Chih-Yang; Shih, Tiffany Ting-Fang; Chen, Bang-Bin; Lung, Chi-Wen.
Affiliation
  • Tsai JY; Department of Digital Media Design, Asia University, Taichung, Taiwan.
  • Hung IY; Department of Nursing, Chung Hwa University of Medical Technology, Tainan, Taiwan.
  • Guo YL; Environmental and Occupational Medicine, College of Medicine, National Taiwan University (NTU) and NTU Hospital, Taipei, Taiwan.
  • Jan YK; Graduate Institute of Environmental and Occupational Health Sciences, College of Public Health, National Taiwan University, Taipei, Taiwan.
  • Lin CY; National Institute of Environmental Health Sciences, National Health Research Institutes, Miaoli, Taiwan.
  • Shih TT; Rehabilitation Engineering Lab, Department of Kinesiology and Community Health, University of Illinois at Urbana-Champaign, Champaign, IL, United States.
  • Chen BB; Department of Electrical Engineering, Yuan Ze University, Chung-Li, Taiwan.
  • Lung CW; Department of Medical Imaging and Radiology, National Taiwan University (NTU) Hospital and NTU College of Medicine, Taipei, Taiwan.
Front Bioeng Biotechnol ; 9: 708137, 2021.
Article in En | MEDLINE | ID: mdl-34490222
ABSTRACT

Background:

Lumbar disc herniation (LDH) is among the most common causes of lower back pain and sciatica. The causes of LDH have not been fully elucidated but most likely involve a complex combination of mechanical and biological processes. Magnetic resonance imaging (MRI) is a tool most frequently used for LDH because it can show abnormal soft tissue areas around the spine. Deep learning models may be trained to recognize images with high speed and accuracy to diagnose LDH. Although the deep learning model requires huge numbers of image datasets to train and establish the best model, this study processed enhanced medical image features for training the small-scale deep learning dataset.

Methods:

We propose automatic detection to assist the initial LDH exam for lower back pain. The subjects were between 20 and 65 years old with at least 6 months of work experience. The deep learning method employed the YOLOv3 model to train and detect small object changes such as LDH on MRI. The dataset images were processed and combined with labeling and annotation from the radiologist's diagnosis record.

Results:

Our method proves the possibility of using deep learning with a small-scale dataset with limited medical images. The highest mean average precision (mAP) was 92.4% at 550 images with data augmentation (550-aug), and the YOLOv3 LDH training was 100% with the best average precision at 550-aug among all datasets. This study used data augmentation to prevent under- or overfitting in an object detection model that was trained with the small-scale dataset.

Conclusions:

The data augmentation technique plays a crucial role in YOLOv3 training and detection results. This method displays a high possibility for rapid initial tests and auto-detection for a limited clinical dataset.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Diagnostic_studies Language: En Journal: Front Bioeng Biotechnol Year: 2021 Document type: Article Affiliation country: Taiwan

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Diagnostic_studies Language: En Journal: Front Bioeng Biotechnol Year: 2021 Document type: Article Affiliation country: Taiwan