The Impact of Deep Learning on Determining the Necessity of Bronchoscopy in Pediatric Foreign Body Aspiration: Can Negative Bronchoscopy Rates Be Reduced?
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This research explores how artificial intelligence and deep learning algorithms can improve diagnostic accuracy for foreign body aspiration in children, potentially reducing unnecessary bronchoscopy procedures. By enhancing pre-procedural assessment, the approach aims to decrease negative bronchoscopy rates and associated procedural risks in pediatric patients.
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How to cite: GlobalCastMD. The Impact of Deep Learning on Determining the Necessity of Bronchoscopy in Pediatric Foreign Body Aspiration: Can Negative Bronchoscopy Rates Be Reduced?. GlobalCastMD Medical Library. 2024-10-18. https://dev.library.globalcastmd.com/article/9320?via_space=staycurrentmd
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