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Artificial Intelligence in Chest Radiography Reporting Accuracy
40
Zitationen
20
Autoren
2021
Jahr
Abstract
Our AI system matched RRs' performance, meanwhile significantly outperformed NRRs' diagnostic accuracy for most of considered CXR pathologies (pneumothorax, pleural effusion, and lung lesions) and therefore might serve as clinical decision support for NRRs.
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Autoren
- Jan Rudolph
- Christian Huemmer
- Florin‐Cristian Ghesu
- Awais Mansoor
- Alexander Preuhs
- Andreas Fieselmann
- Nicola Fink
- Julien Dinkel
- Vanessa Koliogiannis
- Vincent Schwarze
- Sophia S. Goller
- Maximilian Fischer
- Maximilian Jörgens
- Najib Ben Khaled
- R. S. Vishwanath
- Abishek Balachandran
- Michael Ingrisch
- Jens Ricke
- Bastian O. Sabel
- Johannes Rueckel