Multi-Level Seg-Unet Model with Global and Patch-Based X-ray Images for Knee Bone Tumor Detection.
Nhu-Tai DoSung-Taek JungHyung Jeong YangSoo-Hyung KimPublished in: Diagnostics (Basel, Switzerland) (2021)
Tumor classification and segmentation problems have attracted interest in recent years. In contrast to the abundance of studies examining brain, lung, and liver cancers, there has been a lack of studies using deep learning to classify and segment knee bone tumors. In this study, our objective is to assist physicians in radiographic interpretation to detect and classify knee bone regions in terms of whether they are normal, begin-tumor, or malignant-tumor regions. We proposed the Seg-Unet model with global and patched-based approaches to deal with challenges involving the small size, appearance variety, and uncommon nature of bone lesions. Our model contains classification, tumor segmentation, and high-risk region segmentation branches to learn mutual benefits among the global context on the whole image and the local texture at every pixel. The patch-based model improves our performance in malignant-tumor detection. We built the knee bone tumor dataset supported by the physicians of Chonnam National University Hospital (CNUH). Experiments on the dataset demonstrate that our method achieves better performance than other methods with an accuracy of 99.05% for the classification and an average Mean IoU of 84.84% for segmentation. Our results showed a significant contribution to help the physicians in knee bone tumor detection.
Keyphrases
- deep learning
- convolutional neural network
- total knee arthroplasty
- bone mineral density
- machine learning
- primary care
- artificial intelligence
- bone loss
- bone regeneration
- knee osteoarthritis
- magnetic resonance
- mental health
- computed tomography
- soft tissue
- magnetic resonance imaging
- young adults
- resting state
- blood brain barrier
- functional connectivity
- contrast enhanced
- mass spectrometry
- high resolution
- multiple sclerosis
- subarachnoid hemorrhage
- brain injury
- cerebral ischemia