Mehrabi Mohsen, Salek Nafise
Radiation Application Research School, Nuclear Science and Technology Research Institute, Tehran, Iran.
Nuclear Fuel Research School, Nuclear Science and Technology Research Institute, Tehran, Iran.
Pol J Radiol. 2024 Dec 22;89:e573-e583. doi: 10.5114/pjr/195523. eCollection 2024.
This study explored the use of computer-aided diagnosis (CAD) systems to enhance mammography image quality and identify potentially suspicious areas, because mammography is the primary method for breast cancer screening. The primary aim was to find the best combination of preprocessing algorithms to enable more precise classification and interpretation of mammography images because the selected preprocessing algorithms significantly impact the effectiveness of later classification and segmentation processes.
The study utilised the mini-MIAS database of mammography images and examined the impact of applying various preprocessing method combinations to differentiate between malignant and benign breast lesions. The preprocessing steps included removing label information and pectoral muscle, followed by applying algorithms such as contrast-limited adaptive histogram equalisation (CLAHE), unsharp masking (USM), and median filtering (MF) to enhance image resolution and visibility. After preprocessing, a -means clustering technique was used to extract potentially suspicious regions, and features were then extracted from these regions of interest (ROIs). The extracted feature datasets were classified using various machine learning algorithms, including artificial neural networks, random forest, and support vector machines.
The findings showed that the combination of CLAHE, USM, and MF preprocessing algorithms resulted in the highest classification performance, outperforming the use of CLAHE alone.
The integration of advanced preprocessing techniques with machine learning significantly enhances the accuracy of mammography analysis, facilitating more precise differentiation between malignant and benign breast lesions.
本研究探讨了使用计算机辅助诊断(CAD)系统来提高乳腺钼靶图像质量并识别潜在可疑区域,因为乳腺钼靶是乳腺癌筛查的主要方法。主要目的是找到预处理算法的最佳组合,以实现对乳腺钼靶图像更精确的分类和解读,因为所选的预处理算法会显著影响后续分类和分割过程的有效性。
本研究利用了乳腺钼靶图像的mini-MIAS数据库,并研究了应用各种预处理方法组合对区分乳腺恶性和良性病变的影响。预处理步骤包括去除标签信息和胸肌,然后应用诸如对比度受限自适应直方图均衡化(CLAHE)、非锐化掩掩(USM锐化(USM)和中值滤波(MF)等算法来提高图像分辨率和可视性。预处理后,使用k均值聚类技术提取潜在可疑区域,然后从这些感兴趣区域(ROI)中提取特征。使用包括人工神经网络、随机森林和支持向量机在内的各种机器学习算法对提取的特征数据集进行分类。
研究结果表明,CLAHE、USM和MF预处理算法的组合产生了最高的分类性能,优于单独使用CLAHE。
先进的预处理技术与机器学习的整合显著提高了乳腺钼靶分析的准确性,有助于更精确地区分乳腺恶性和良性病变。