A Modified VGG19-Based Framework for Accurate and Interpretable Real-Time Bone Fracture Detection
Md. Ehsanul Haque, Abrar Fahim, Shamik Dey, Syoda Anamika Jahan, S. M. Jahidul Islam, Sakib Rokoni, Md Sakib Morshed

TL;DR
This paper presents a modified VGG19-based deep learning framework with enhanced preprocessing and explainability techniques for real-time, accurate, and interpretable bone fracture detection from X-ray images, suitable for clinical use.
Contribution
It introduces a novel VGG-19 modification combined with advanced preprocessing and Grad-CAM interpretability, enabling fast and reliable fracture detection in clinical settings.
Findings
Achieves 99.78% classification accuracy
Provides real-time diagnosis within 0.5 seconds
Offers visual interpretability with Grad-CAM heatmaps
Abstract
Early and accurate detection of the bone fracture is paramount to initiating treatment as early as possible and avoiding any delay in patient treatment and outcomes. Interpretation of X-ray image is a time consuming and error prone task, especially when resources for such interpretation are limited by lack of radiology expertise. Additionally, deep learning approaches used currently, typically suffer from misclassifications and lack interpretable explanations to clinical use. In order to overcome these challenges, we propose an automated framework of bone fracture detection using a VGG-19 model modified to our needs. It incorporates sophisticated preprocessing techniques that include Contrast Limited Adaptive Histogram Equalization (CLAHE), Otsu's thresholding, and Canny edge detection, among others, to enhance image clarity as well as to facilitate the feature extraction. Therefore, we…
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