Diagnostic performance of machine learning applied to texture analysis-derived features for breast lesion characterisation at automated breast ultrasound: a pilot study

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作者
Magda Marcon
Alexander Ciritsis
Cristina Rossi
Anton S. Becker
Nicole Berger
Moritz C. Wurnig
Matthias W. Wagner
Thomas Frauenfelder
Andreas Boss
机构
[1] University Hospital Zurich,Institute of Diagnostic and Interventional Radiology
来源
European Radiology Experimental | / 3卷
关键词
Breast neoplasms; Machine learning; Ultrasonography;
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