INbreast: toward a full-field digital mammographic database.

@article{Moreira2012INbreastTA,
  title={INbreast: toward a full-field digital mammographic database.},
  author={In{\^e}s C. Moreira and Igor F. Amaral and In{\^e}s Domingues and Ant{\'o}nio J. Marques Cardoso and Maria Jo{\~a}o Cardoso and Jaime S. Cardoso},
  journal={Academic radiology},
  year={2012},
  volume={19 2},
  pages={
          236-48
        }
}
RATIONALE AND OBJECTIVES Computer-aided detection and diagnosis (CAD) systems have been developed in the past two decades to assist radiologists in the detection and diagnosis of lesions seen on breast imaging exams, thus providing a second opinion. Mammographic databases play an important role in the development of algorithms aiming at the detection and diagnosis of mammary lesions. However, available databases often do not take into consideration all the requirements needed for research and… CONTINUE READING
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