Focal breast lesion characterization according to the BI-RADS US lexicon: role of a computer-aided decision-making support

  • Tommaso Vincenzo Bartolotta
  • Alessia Orlando
  • Vito Cantisani
  • Domenica Matranga
  • Raffele Ienzi
  • Alessandra Cirino
  • Francesco Amato
  • Maria Laura Di Vittorio
  • Massimo Midiri
  • Roberto Lagalla
BREAST RADIOLOGY
  • 27 Downloads

Keywords

Breast Ultrasonography Neoplasms BI-RADS Diagnosis Computer aided 

Notes

Compliance with ethical standards

Conflict of interest

Prof. Tommaso Vincenzo Bartolotta has lectured for Samsung. Doctor Vito Cantisani has lectured for Samsung.

Ethical approval

The authors have read and complied with the policy of the journal on ethical consent.

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Copyright information

© Italian Society of Medical Radiology 2018

Authors and Affiliations

  • Tommaso Vincenzo Bartolotta
    • 1
  • Alessia Orlando
    • 1
  • Vito Cantisani
    • 2
  • Domenica Matranga
    • 3
  • Raffele Ienzi
    • 1
  • Alessandra Cirino
    • 1
  • Francesco Amato
    • 1
  • Maria Laura Di Vittorio
    • 1
  • Massimo Midiri
    • 1
  • Roberto Lagalla
    • 1
  1. 1.Department of Radiology Di.Bi.MEDPoliclinico P. Giaccone-University of PalermoPalermoItaly
  2. 2.Department of Radiology, Oncology, and Anatomy PathologyPoliclinico Umberto-University SapienzaRomeItaly
  3. 3.Department of Sciences for Health Promotion and Mother, Child CarePoliclinico P. Giaccone-University of PalermoPalermoItaly

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