Breast cancer is a leading cause of mortality among women, both in India and globally. The prevalence
of breast masses is notably common in women aged 20 to 60. These breast masses are classified, according to the breast
imaging-reporting and data systems (BI-RADS) standard, into categories such as fibroadenoma, breast cysts, benign,
and malignant masses. To aid in the diagnosis of breast disorders, imaging plays a vital role, with mammography being
the most widely used modality for detecting breast abnormalities over the years. However, the process of identifying
breast diseases through mammograms can be time-consuming, requiring experienced radiologists to review a significant
volume of images. Early detection of breast masses is crucial for effective disease management, ultimately reducing mortality rates. To address this challenge, advancements in image processing techniques, specifically utilizing artificial intelligence (AI) and machine learning (ML), have tiled the way for the development of decision support systems. These systems assist radiologists in the accurate identification and classification of breast disorders. This paper presents a review of various studies where diverse machine learning approaches have been applied to digital mammograms. These
approaches aim to identify breast masses and classify them into distinct subclasses such as normal, benign and malignant. Additionally, the paper highlights both the advantages and limitations of existing techniques, offering valuable insights for the benefit of future research endeavors in this critical area of medical imaging and breast health.