| Home > Publications database > Implementation of ResNet-50 for the Detection of ARDS in Chest X-Rays using transfer-learning |
| Journal Article/Contribution to a conference proceedings | FZJ-2023-01817 |
; ; ;
2023
Infinite Science GmbH
Lübeck
Please use a persistent id in citations: http://hdl.handle.net/2128/34311
Abstract: Acute Respiratory Distress Syndrome is a severe condition with high morbidity and mortality. The current standard for the diagnosis of ARDS was proposed by the Berlin-Definition in 2012. However, studies have shown, that ARDS is often recognized too late or not at all. Smart methods, like machine learning algorithms, may help clinicians to identify ARDS earlier and therefore initiate the appropriate therapy. To address the imaging assessment of the Berlin-Definition, a deep learning model for the detection of ARDS in x-rays is proposed. The model achieved an AUCscore of 92.6%, a sensitivity of 87% and a specificity of 97%.
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