4.0 Article Data Paper

King Abdulaziz University Breast Cancer Mammogram Dataset (KAU-BCMD)

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DATA
卷 6, 期 11, 页码 -

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MDPI
DOI: 10.3390/data6110111

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breast cancer mammogram dataset; ultrasound breast cancer scans; BI-RADS; clinical data

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The paper introduces the first dataset in Saudi Arabia for a large number of mammogram scans, called King Abdulaziz University Breast Cancer Mammogram Dataset (KAU-BCMD) version 1. It contains 1416 cases and 5662 images with different cancer grades of breast cancer image modalities.
The current era is characterized by the rapidly increasing use of computer-aided diagnosis (CAD) systems in the medical field. These systems need a variety of datasets to help develop, evaluate, and compare their performances fairly. Physicians indicated that breast anatomy, especially dense ones, and the probability of breast cancer and tumor development, vary highly depending on race. Researchers reported that breast cancer risk factors are related to culture and society. Thus, there is a massive need for a local dataset representing breast cancer in our region to help develop and evaluate automatic breast cancer CAD systems. This paper presents a public mammogram dataset called King Abdulaziz University Breast Cancer Mammogram Dataset (KAU-BCMD) version 1. To our knowledge, KAU-BCMD is the first dataset in Saudi Arabia that deals with a large number of mammogram scans. The dataset was collected from the Sheikh Mohammed Hussein Al-Amoudi Center of Excellence in Breast Cancer at King Abdulaziz University. It contains 1416 cases. Each case has two views for both the right and left breasts, resulting in 5662 images based on the breast imaging reporting and data system. It also contains 205 ultrasound cases corresponding to a part of the mammogram cases, with 405 images as a total. The dataset was annotated and reviewed by three different radiologists. Our dataset is a promising dataset that contains different imaging modalities for breast cancer with different cancer grades for Saudi women.

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