Abd El-Ghany Sameh, Mahmood Mahmood A, Abd El-Aziz A A
Department of Information Systems, College of Computer and Information Sciences, Jouf University, Sakakah 72388, Saudi Arabia.
Diagnostics (Basel). 2025 Aug 31;15(17):2212. doi: 10.3390/diagnostics15172212.
Bones are essential components of the human body, providing structural support, enabling mobility, storing minerals, and protecting internal organs. Bone fractures (BFs) are common injuries that result from excessive physical force and can lead to serious complications, including bleeding, infection, impaired oxygenation, and long-term disability. Early and accurate identification of fractures through radiographic imaging is critical for effective treatment and improved patient outcomes. However, manual evaluation of X-rays is often time-consuming and prone to diagnostic errors due to human limitations. To address this, artificial intelligence (AI), particularly deep learning (DL), has emerged as a powerful tool for enhancing diagnostic precision in medical imaging. : This research introduces a novel convolutional neural network (CNN) model, the Multi-Level Feature Fusion Network (MLFNet), designed to capture and integrate both low-level and high-level image features. The model was evaluated using the Bone Fracture Multi-Region X-ray (BFMRX) dataset. Preprocessing steps included image normalization, resizing, and contrast enhancement to ensure stable convergence, reduce sensitivity to lighting variations in radiographic images, and maintain consistency. Ablation studies were conducted to assess architectural variations, confirming the model's robustness and generalizability across data distributions. MLFNet's high accuracy, interpretability, and efficiency make it a promising solution for clinical deployment. : MLFNet achieved an impressive accuracy of 99.60% as a standalone model and 98.81% when integrated into hybrid ensemble architectures with five leading pre-trained DL models. : The proposed approach supports timely and precise fracture detection, optimizing the diagnostic process and reducing healthcare costs. This approach offers significant potential to aid clinicians in fields such as orthopedics and radiology, contributing to more equitable and effective patient care.
骨骼是人体的重要组成部分,提供结构支撑、实现运动、储存矿物质并保护内部器官。骨折是由过度外力导致的常见损伤,可能引发严重并发症,包括出血、感染、氧合受损和长期残疾。通过放射成像早期准确识别骨折对于有效治疗和改善患者预后至关重要。然而,由于人为局限性,手动评估X射线通常耗时且容易出现诊断错误。为了解决这一问题,人工智能(AI),尤其是深度学习(DL),已成为提高医学成像诊断精度的强大工具。:本研究引入了一种新型卷积神经网络(CNN)模型,即多级特征融合网络(MLFNet),旨在捕捉和整合低级和高级图像特征。该模型使用骨折多区域X射线(BFMRX)数据集进行评估。预处理步骤包括图像归一化、调整大小和对比度增强,以确保稳定收敛、降低对放射图像中光照变化的敏感度并保持一致性。进行了消融研究以评估架构变化,证实了该模型在不同数据分布上的稳健性和通用性。MLFNet的高准确性、可解释性和效率使其成为临床部署的有前景的解决方案。:作为独立模型,MLFNet实现了令人印象深刻的99.60%的准确率,当与五个领先的预训练DL模型集成到混合集成架构中时,准确率为98.81%。:所提出的方法支持及时、精确的骨折检测,优化诊断过程并降低医疗成本。这种方法在骨科和放射学等领域为临床医生提供了巨大潜力,有助于提供更公平、有效的患者护理。