Hybrid EfficientNet B4 and SVM framework for rapid and accurate bone cancer diagnosis from X-rays
Nashaat M. Hussain Hassan, Ahmed S. Bayoumy, Mohamed Hassan M. Mahmoud

TL;DR
This paper introduces a new model for diagnosing bone cancer from X-rays that combines deep learning and machine learning to achieve high accuracy and fast results.
Contribution
The novel contribution is a hybrid model combining EfficientNetB4 and SVM for efficient and accurate bone cancer diagnosis from X-ray images.
Findings
OsteoCancerNet achieves 98% precision, 97.47% recall, and 98% accuracy in bone cancer diagnosis.
The model processes images in 41 milliseconds, making it suitable for real-time clinical use.
It outperforms traditional and transfer learning methods in both accuracy and efficiency.
Abstract
The early and correct diagnosis of bone cancer is important for treating both primary and metastatic conditions effectively. Traditional imaging techniques, like CT, MRI, and X-ray scans, depend exclusively on manual review, which is time-consuming and prone to human errors. Recently, ML and DL have enabled automated diagnostic systems that are more accurate, reliable, and efficient. Still, many of the existing approaches using DL suffer from high computational complexity, overfitting, and limited availability of robust datasets. This work proposes a novel diagnostic model for bone cancer, called OsteoCancerNet, which combines EfficientNetB4 for feature extraction with a support vector machine using the RBF kernel for classification. EfficientNetB4 captures efficiently both quantitative and qualitative features from X-ray images, and the SVM ensures robust binary classification.…
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Taxonomy
TopicsMedical Imaging and Analysis · Radiomics and Machine Learning in Medical Imaging · Artificial Intelligence in Healthcare and Education
