Abstract:
Breast cancer stands as a prevalent concern for women worldwide. Mammography serves as the frontline defense for
early detection, yet its low X-ray dosage often leads to suboptimal image quality. This study proposes a multi-step solution:
(i) Image enhancement employs a two-step approach: denoising using bivariate shrinkage and a hybrid median filter based on
stationary wavelet transform (SWT) to avoid shift variants, and it is combined with modified morphology operations including
the background, a vignette image with the weighting function 1/R2. (ii) Segmentation utilizes the fast K-means algorithm with
a straightforward technique to automatically determine the number of clusters and tumors within the segment containing the
largest centroid. (iii) Classification employs an artificial neural network (ANN) model, based on statistical features extracted from
SWT coefficients at different levels, for tumor classification to achieve reliable results. Utilizing data from the Mammographic
Image Analysis Society (MIAS) database, the proposed method was tested on Gaussian noisy images, demonstrating superior
performance compared to existing algorithms in detecting lesions. The segmentation achieves a high accuracy, 98.15% on average
and a specificity of 99.56%. However, the ground truth occasionally extends beyond the tumor mass, resulting in a low sensitivity
of 62.81%. Finally, classification is also performed using the ANN model giving an overall data accuracy of 96%.