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Deep-learning-assisted diagnosis for knee magnetic resonance imaging: Development and retrospective validation of MRNet
705
Zitationen
23
Autoren
2018
Jahr
Abstract
Our deep learning model can rapidly generate accurate clinical pathology classifications of knee MRI exams from both internal and external datasets. Moreover, our results support the assertion that deep learning models can improve the performance of clinical experts during medical imaging interpretation. Further research is needed to validate the model prospectively and to determine its utility in the clinical setting.
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Autoren
- Nicholas Bien
- Pranav Rajpurkar
- Robyn L. Ball
- Jeremy Irvin
- Allison Park
- Erik Jones
- Michael Bereket
- Bhavik N. Patel
- Kristen W. Yeom
- Katie Shpanskaya
- Safwan S. Halabi
- Evan J. Zucker
- Gary S. Fanton
- Derek F. Amanatullah
- Christopher F. Beaulieu
- Geoffrey M. Riley
- Russell J. Stewart
- Francis G. Blankenberg
- David B. Larson
- Richard H. Jones
- Curtis P. Langlotz
- Andrew Y. Ng
- Matthew P. Lungren