Breast Cancer Detection Using Automated Segmentation and Genetic Algorithms.
María de la Luz EscobarJosé I De la RosaCarlos E Galvan-TejadaJorge I Galvan-TejadaHamurabi GamboaDaniel de la Rosa GomezHuitzilopoztli Luna-GarcíaJose María Celaya-PadillaPublished in: Diagnostics (Basel, Switzerland) (2022)
Breast cancer is the most common cancer among women worldwide, after lung cancer. However, early detection of breast cancer can help to reduce death rates in breast cancer patients and also prevent cancer from spreading to other parts of the body. This work proposes a new method to design a bio-marker integrating Bayesian predictive models, pyRadiomics System and genetic algorithms to classify the benign and malignant lesions. The method allows one to evaluate two types of images: The radiologist-segmented lesion, and a novel automated breast cancer detection by the analysis of the whole breast. The results demonstrate only a difference of 12% of effectiveness for the cases of calcification between the radiologist generated segmentation and the automatic whole breast analysis, and a 25% of difference between the lesion and the breast for the cases of masses. In addition, our approach was compared against other proposed methods in the literature, providing an AUC = 0.86 for the analysis of images with lesions in breast calcification, and AUC = 0.96 for masses.
Keyphrases
- young adults
- deep learning
- childhood cancer
- convolutional neural network
- machine learning
- systematic review
- papillary thyroid
- randomized controlled trial
- breast cancer risk
- chronic kidney disease
- optical coherence tomography
- squamous cell
- polycystic ovary syndrome
- dna methylation
- insulin resistance
- ultrasound guided
- skeletal muscle
- fine needle aspiration
- quantum dots
- loop mediated isothermal amplification