The Classification of Metastatic Spine Cancer and Spinal Compression Fractures by Using CNN and SVM Techniques
Citations

WEB OF SCIENCE

2
Citations

SCOPUS

2

초록

Metastatic spine cancer can cause pain and neurological issues, making it challenging to distinguish from spinal compression fractures using magnetic resonance imaging (MRI). To improve diagnostic accuracy, this study developed artificial intelligence (AI) models to differentiate between metastatic spine cancer and spinal compression fractures in MRI images. MRI data from Gyeongsang National University Hospital, collected from January 2019 to April 2022, were processed using Otsu's binarization and Canny edge detection algorithms. Using these preprocessed datasets, convolutional neural network (CNN) and support vector machine (SVM) models were built. The T1-weighted image-based CNN model demonstrated high sensitivity (1.00) and accuracy (0.98) in identifying metastatic spine cancer, particularly with data processed by Otsu's binarization and Canny edge detection, achieving exceptional performance in detecting cancerous cases. This approach highlights the potential of preprocessed MRI data for AI-assisted diagnosis, supporting clinical applications in distinguishing metastatic spine cancer from spinal compression fractures.

키워드

spinecompression fracturesCNNsSVMOtsu's binarization algorithmCanny edge algorithm
제목
The Classification of Metastatic Spine Cancer and Spinal Compression Fractures by Using CNN and SVM Techniques
저자
Jeong, WoosikBaek, Chang-HeonLee, Dong-YeongSong, Sang-YounNa, Jae-BoemHidayat, Mohamad SolehKim, GeonwooKim, Dong-Hee
DOI
10.3390/bioengineering11121264
발행일
2024-12
유형
Article
저널명
Bioengineering (Basel)
11
12