Complex & Intelligent Systems (Mar 2023)

An MRI image automatic diagnosis model for lumbar disc herniation using semi-supervised learning

  • Chao Hou,
  • Xiaogang Li,
  • Hongbo Wang,
  • Weiqi Zhang,
  • Fei Liu,
  • Defeng Liu,
  • Yuzhen Pan

DOI
https://doi.org/10.1007/s40747-023-00981-0
Journal volume & issue
Vol. 9, no. 5
pp. 5567 – 5584

Abstract

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Abstract Lumbar disc herniation is a common disease that causes low back pain. Due to the high cost of medical diagnosis, as well as a shortage and uneven distribution of medical resources, a system that can automatically analyze and diagnose lumbar spine Magnetic Resonance Imaging (MRI) is becoming an urgent need. This study uses deep learning methods to establish a classifier to diagnose lumbar disc herniation. An MRI classification dataset of lumbar disc herniation consisting of public MRI images is presented and is used to train the proposed classifier. Because a common difficulty in applying computer vision technology to medical images is labeling training data, we use a semi-supervised model training method, while multilayer transverse axial MRI images are used as the model input. In this method, we first use unlabelled MRI images for random self-supervised pre-training and the pre-trained model as a feature extractor for MRI images. Then, all marked cross-sections of each intervertebral disc are used to calculate the feature vector through the feature extractor. The information of all feature vectors is integrated, while a multilayer perceptron is used for classification training. After training, the model achieved 87.11 $$\%$$ % accuracy, 87.50 $$\%$$ % sensitivity, 86.72 $$\%$$ % specificity and 0.9487 AUC (Area Under the ROC Curve) index on the test set. To analyze the rationality of the diagnostic results more quickly, we output the severity of degenerative changes in each region using a heatmap.

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