Qasrawi Radwan, Daraghmeh Omar, Qdaih Ibrahem, Thwib Suliman, Vicuna Polo Stephanny, Owienah Haneen, Abu Al-Halawa Diala, Atari Siham
Department of Computer Science, Al-Quds University, Palestine.
Department of Computer Engineering, Istinye University, Istanbul, Turkey.
Heliyon. 2024 Sep 24;10(19):e38374. doi: 10.1016/j.heliyon.2024.e38374. eCollection 2024 Oct 15.
Being the most common type of cancer worldwide, and affecting over 2.3 million women, breast cancer poses a significant health threat. Although survival rates have improved around the world due to advances in screening, diagnosis, and treatment, early detection remains crucial for effective management. This study seeks to introduce a novel hybrid model that makes use of image-preprocessing techniques and deep-learning algorithms on mammograms to enhance the detection and classification accuracy of breast cancer lesions. The model was tested on a dataset comprising 20,000 mammograms. First, image-processing techniques, such as Contrast-Limited Adaptive Histogram Equalization, Gaussian Blur, and sharpening methods were used to optimize the images for enhanced feature extraction. In addition, the Ensemble Deep Random Vector-Functional Link Neural Network algorithm, YOLOv5, and MedSAM segmentation models were utilized for robust deep learning-based extraction, classification, and visualization of lesions. Finally, the model was clinically validated on 800 patients. The study found a notable enhancement in both accuracy and processing time for benign and malignant diagnoses using the hybrid model. The model achieves an impressive accuracy of 99.7 % and demonstrates a remarkable processing time of 0.75 s. In clinical applications, the hybrid model exhibits high proficiency, reporting 97.2 % accuracy for benign cases and 98.6 % for malignant scenarios. These results highlight the effectiveness of the hybrid model in improving diagnostic accuracy, offering a promising tool for early breast cancer detection.
乳腺癌是全球最常见的癌症类型,影响着超过230万女性,对健康构成重大威胁。尽管由于筛查、诊断和治疗方面的进展,全球生存率有所提高,但早期检测对于有效管理仍然至关重要。本研究旨在引入一种新型混合模型,该模型利用乳房X光照片的图像预处理技术和深度学习算法,以提高乳腺癌病变的检测和分类准确性。该模型在一个包含20000张乳房X光照片的数据集上进行了测试。首先,使用对比度受限自适应直方图均衡化、高斯模糊和锐化方法等图像处理技术对图像进行优化,以增强特征提取。此外,集成深度随机向量-功能链接神经网络算法、YOLOv5和MedSAM分割模型用于基于深度学习的病变稳健提取、分类和可视化。最后,该模型在800名患者身上进行了临床验证。研究发现,使用混合模型进行良性和恶性诊断时,准确性和处理时间都有显著提高。该模型的准确率达到了令人印象深刻的99.7%,处理时间仅为0.75秒。在临床应用中,混合模型表现出很高的熟练度,良性病例的准确率为97.2%,恶性病例的准确率为98.6%。这些结果突出了混合模型在提高诊断准确性方面的有效性,为早期乳腺癌检测提供了一个有前景的工具。