Mahmood Tariq, Li Jianqiang, Pei Yan, Akhtar Faheem, Imran Azhar, Yaqub Muhammad
The School of Software Engineering, Beijing University of Technology, Beijing 100024, China.
Division of Science and Technology, University of Education, Lahore 54000, Pakistan.
Cancers (Basel). 2021 Nov 24;13(23):5916. doi: 10.3390/cancers13235916.
Microcalcifications in breast tissue can be an early sign of breast cancer, and play a crucial role in breast cancer screening. This study proposes a radiomics approach based on advanced machine learning algorithms for diagnosing pathological microcalcifications in mammogram images and provides radiologists with a valuable decision support system (in regard to diagnosing patients). An adaptive enhancement method based on the contourlet transform is proposed to enhance microcalcifications and effectively suppress background and noise. Textural and statistical features are extracted from each wavelet layer's high-frequency coefficients to detect microcalcification regions. The top-hat morphological operator and wavelet transform segment microcalcifications, implying their exact locations. Finally, the proposed radiomic fusion algorithm is employed to classify the selected features into benign and malignant. The proposed model's diagnostic performance was evaluated on the MIAS dataset and compared with traditional machine learning models, such as the support vector machine, K-nearest neighbor, and random forest, using different evaluation parameters. Our proposed approach outperformed existing models in diagnosing microcalcification by achieving an 0.90 area under the curve, 0.98 sensitivity, and 0.98 accuracy. The experimental findings concur with expert observations, indicating that the proposed approach is most effective and practical for early diagnosing breast microcalcifications, substantially improving the work efficiency of physicians.
乳腺组织中的微钙化可能是乳腺癌的早期迹象,在乳腺癌筛查中起着关键作用。本研究提出了一种基于先进机器学习算法的放射组学方法,用于诊断乳腺X线图像中的病理性微钙化,并为放射科医生提供一个有价值的决策支持系统(用于诊断患者)。提出了一种基于轮廓波变换的自适应增强方法来增强微钙化,并有效抑制背景和噪声。从每个小波层的高频系数中提取纹理和统计特征,以检测微钙化区域。顶帽形态学算子和小波变换对微钙化进行分割,从而确定其确切位置。最后,采用所提出的放射组学融合算法将所选特征分类为良性和恶性。在MIAS数据集上评估了所提出模型的诊断性能,并使用不同的评估参数与传统机器学习模型(如支持向量机、K近邻和随机森林)进行了比较。我们提出的方法在诊断微钙化方面优于现有模型,曲线下面积达到0.90,灵敏度达到0.98,准确率达到0.98。实验结果与专家观察结果一致,表明所提出的方法在早期诊断乳腺微钙化方面最有效、最实用,大大提高了医生的工作效率。