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Assessing Improvement in Detection of Breast Cancer with Three-dimensional Automated Breast US in Women with Dense Breast Tissue: The SomoInsight Study
351
Zitationen
16
Autoren
2014
Jahr
Abstract
Addition of AB US to screening mammography in a generalizable cohort of women with dense breasts increased the cancer detection yield of clinically important cancers, but it also increased the number of false-positive results.
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Autoren
Institutionen
- Washington University in St. Louis(US)
- Uppsala University Hospital(SE)
- Falun Hospital(SE)
- Queen Mary University of London(GB)
- University of Kansas Medical Center(US)
- OSF Saint Francis Medical Center(US)
- Virginia Mason Medical Center(US)
- Desert Regional Medical Center(US)
- Doctors Hospital(US)
- Clinical Physiology Associates(US)
- Washington University Medical Center(US)
- Monterey Peninsula College(US)
- George Washington University(US)
- Boca Raton Regional Hospital(US)
- Community Hospital(US)
- Henry Ford Hospital(US)
- Columbia University Irving Medical Center(US)
- Columbia University(US)
- Pinnacle Clinical Research(US)