Deep Learning Detection and Segmentation of Facet Joints in Ultrasound Images Based on Convolutional Neural Networks and Enhanced Data Annotation.
Lingeer WuDi XiaJin WangSi ChenXulei CuiLe ShenYuguang HuangPublished in: Diagnostics (Basel, Switzerland) (2024)
The facet joint injection is the most common procedure used to release lower back pain. In this paper, we proposed a deep learning method for detecting and segmenting facet joints in ultrasound images based on convolutional neural networks (CNNs) and enhanced data annotation. In the enhanced data annotation, a facet joint was considered as the first target and the ventral complex as the second target to improve the capability of CNNs in recognizing the facet joint. A total of 300 cases of patients undergoing pain treatment were included. The ultrasound images were captured and labeled by two professional anesthesiologists, and then augmented to train a deep learning model based on the Mask Region-based CNN (Mask R-CNN). The performance of the deep learning model was evaluated using the average precision (AP) on the testing sets. The data augmentation and data annotation methods were found to improve the AP. The AP50 for facet joint detection and segmentation was 90.4% and 85.0%, respectively, demonstrating the satisfying performance of the deep learning model. We presented a deep learning method for facet joint detection and segmentation in ultrasound images based on enhanced data annotation and the Mask R-CNN. The feasibility and potential of deep learning techniques in facet joint ultrasound image analysis have been demonstrated.
Keyphrases
- deep learning
- convolutional neural network
- artificial intelligence
- big data
- electronic health record
- machine learning
- magnetic resonance imaging
- patients undergoing
- rna seq
- chronic pain
- ultrasound guided
- transcription factor
- minimally invasive
- obstructive sleep apnea
- computed tomography
- spinal cord injury
- risk assessment
- contrast enhanced ultrasound
- real time pcr
- single cell
- high speed
- pet imaging
- deep brain stimulation
- sensitive detection
- climate change
- optical coherence tomography
- pet ct
- human health