Impact of Image Enhancement Module for Analysis of Mammogram Images for Diagnostics of Breast Cancer.
Yassir Edrees AlmalkiToufique Ahmed SoomroMuhammad IrfanSharifa Khalid AlduraibiAhmed AliPublished in: Sensors (Basel, Switzerland) (2022)
Breast cancer is widespread around the world and can be cured if diagnosed at an early stage. Digital mammograms are used as the most effective imaging modalities for the diagnosis of breast cancer. However, mammography images suffer from low contrast, background noise as well as contrast as non-coherency among the regions, and these factors makes breast cancer diagnosis challenging. These problems can be overcome by using a new image enhancement technique. The objective of this research work is to enhance mammography images to improve the overall process of segmentation and classification of breast cancer diagnosis. We proposed the image enhancement for mammogram images, as well as the ablation of the pectoral muscle. The image enhancement technique involves several steps. In the first step, we process the mammography images in three channels (red, green and blue), the second step is based on the uniformity of the background on morphological operations, and the third step is to obtain a well-contrasted image using principal component analysis (PCA). The fourth step is based on the removal of the pectoral muscle using a seed-based region growth technique, and the last step contains the coherence of the different regions of the image using a second order Gaussian Laplacian (LoG) and an oriented diffusion filter to obtain a much-improved contrast image. The proposed image enhancement technique is tested with our data collected from different hospitals in Qassim health cluster Qassim province Saudi Arabia, and it contains the five Breast Imaging and Reporting System (BI-RADS) categories and this database contained 11,194 images (the images contain carnio-caudal (CC) view and mediolateral oblique(MLO) view of mammography images), and we used approximately 700 images to validate our database. We have achieved improved performance in terms of peak signal-to-noise ratio, contrast, and effective measurement of enhancement (EME) as well as our proposed image enhancement technique outperforms existing image enhancement methods. This performance of our proposed method demonstrates the ability to improve the diagnostic performance of the computerized breast cancer detection method.
Keyphrases
- deep learning
- convolutional neural network
- artificial intelligence
- saudi arabia
- machine learning
- contrast enhanced
- magnetic resonance
- early stage
- healthcare
- optical coherence tomography
- public health
- emergency department
- skeletal muscle
- mental health
- air pollution
- radiation therapy
- big data
- risk assessment
- young adults
- adverse drug
- lymph node
- sensitive detection
- image quality
- locally advanced
- loop mediated isothermal amplification