Deep learning-based high-accuracy quantitation for lumbar intervertebral disc degeneration from MRI.
Hua-Dong ZhengYue-Li SunDe-Wei KongMeng-Chen YinJiang ChenYong-Peng LinXue-Feng MaHong-Shen WangGuang-Jie YuanMin YaoXue-Jun CuiYing-Zhong TianYong-Jun WangPublished in: Nature communications (2022)
To help doctors and patients evaluate lumbar intervertebral disc degeneration (IVDD) accurately and efficiently, we propose a segmentation network and a quantitation method for IVDD from T2MRI. A semantic segmentation network (BianqueNet) composed of three innovative modules achieves high-precision segmentation of IVDD-related regions. A quantitative method is used to calculate the signal intensity and geometric features of IVDD. Manual measurements have excellent agreement with automatic calculations, but the latter have better repeatability and efficiency. We investigate the relationship between IVDD parameters and demographic information (age, gender, position and IVDD grade) in a large population. Considering these parameters present strong correlation with IVDD grade, we establish a quantitative criterion for IVDD. This fully automated quantitation system for IVDD may provide more precise information for clinical practice, clinical trials, and mechanism investigation. It also would increase the number of patients that can be monitored.
Keyphrases
- deep learning
- end stage renal disease
- convolutional neural network
- clinical trial
- ms ms
- ejection fraction
- newly diagnosed
- chronic kidney disease
- clinical practice
- mass spectrometry
- prognostic factors
- liquid chromatography tandem mass spectrometry
- artificial intelligence
- peritoneal dialysis
- healthcare
- high resolution
- randomized controlled trial
- contrast enhanced
- magnetic resonance
- tandem mass spectrometry
- study protocol