VinDr-Mammo: A large-scale benchmark dataset for computer-aided
diagnosis in full-field digital mammography
- URL: http://arxiv.org/abs/2203.11205v1
- Date: Sun, 20 Mar 2022 18:17:42 GMT
- Title: VinDr-Mammo: A large-scale benchmark dataset for computer-aided
diagnosis in full-field digital mammography
- Authors: Hieu T. Nguyen, Ha Q. Nguyen, Hieu H. Pham, Khanh Lam, Linh T. Le,
Minh Dao, and Van Vu
- Abstract summary: VinDr-Mammo is a new benchmark dataset of full-field digital mammography (FFDM)
The dataset consists of 5,000 mammography exams, each of which has four standard views and is double read with disagreement.
It is created for the assessment of Breast Imaging Reporting and Data System (BI-RADS) and density at the breast level.
- Score: 0.5452925161262461
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Mammography, or breast X-ray, is the most widely used imaging modality to
detect cancer and other breast diseases. Recent studies have shown that deep
learning-based computer-assisted detection and diagnosis (CADe or CADx) tools
have been developed to support physicians and improve the accuracy of
interpreting mammography. However, most published datasets of mammography are
either limited on sample size or digitalized from screen-film mammography
(SFM), hindering the development of CADe and CADx tools which are developed
based on full-field digital mammography (FFDM). To overcome this challenge, we
introduce VinDr-Mammo - a new benchmark dataset of FFDM for detecting and
diagnosing breast cancer and other diseases in mammography. The dataset
consists of 5,000 mammography exams, each of which has four standard views and
is double read with disagreement (if any) being resolved by arbitration. It is
created for the assessment of Breast Imaging Reporting and Data System
(BI-RADS) and density at the breast level. In addition, the dataset also
provides the category, location, and BI-RADS assessment of non-benign findings.
We make VinDr-Mammo publicly available on PhysioNet as a new imaging resource
to promote advances in developing CADe and CADx tools for breast cancer
screening.
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