Ensemble Learning-Based Hybrid Segmentation of Mammographic Images for Breast Cancer Risk Prediction Using Fuzzy C-Means and CNN Model.
Sudan JhaSultan AhmadAnoopa AryaBader AlouffiAbdullah AlharbiMeshal AlharbiSurender SinghPublished in: Journal of healthcare engineering (2023)
The research interest in this field is that females are not aware of their health conditions until they develop tumour, especially when breast cancer is concerned. The breast cancer risk factors include genetics, heredity, and sedentary lifestyle. The prime concern for the mortality rate among females is breast cancer, and breast cancer is on the rise, both in rural and urban India. Women aged 45 or above are more vulnerable to this disease. Images are more effective at depicting information as compared to text. With the advancement in technology, several computerized techniques have come up to extract hidden information from the images. The processed images have found their application in several sectors and medical science is one of them. Disease-like breast cancer affects most women universally and it happens due to the existence of breast masses in the breast region for the development of breast cancer in women. Timely breast cancer detection can also increase the rate of effective treatment and the survival of women suffering from breast cancer. This work elaborates the method of performing hybrid segmentation techniques using CLAHE, morphological operations on mammogram images, and classified images using deep learning. Images from the MIAS database have been used to obtain readings for parameters: threshold, accuracy, sensitivity, specificity rate, biopsy rate, or a combination of all the parameters and many others under study.
Keyphrases
- deep learning
- convolutional neural network
- breast cancer risk
- risk factors
- optical coherence tomography
- healthcare
- polycystic ovary syndrome
- artificial intelligence
- mental health
- public health
- physical activity
- machine learning
- oxidative stress
- south africa
- pregnancy outcomes
- magnetic resonance imaging
- emergency department
- magnetic resonance
- health information
- cardiovascular events
- young adults
- pregnant women
- skeletal muscle
- quantum dots
- cervical cancer screening
- free survival