Affiliation:
1. School of Medicine University of California San Francisco California U.S.A.
2. Division of Pediatric Radiology, Department of Radiology and Biomedical Imaging University of California San Francisco California U.S.A.
3. Division of Pediatric Otolaryngology, Department of Otolaryngology‐Head and Neck Surgery University of California San Francisco California U.S.A.
Abstract
Objective/HypothesisStandard chest radiographs are a poor diagnostic tool for pediatric foreign body aspiration. Machine learning may improve upon the diagnostic capabilities of chest radiographs. The objective is to develop a machine learning algorithm that improves the diagnostic capabilities of chest radiographs in pediatric foreign body aspiration.MethodThis retrospective, diagnostic study included a retrospective chart review of patients with a potential diagnosis of FBA from 2010 to 2020. Frontal view chest radiographs were extracted, processed, and uploaded to Google AutoML Vision. The developed algorithm was then evaluated against a pediatric radiologist.ResultsThe study selected 566 patients who were presented with a suspected diagnosis of foreign body aspiration. One thousand six hundred and eighty eight chest radiograph images were collected. The sensitivity and specificity of the radiologist interpretation were 50.6% (43.1–58.0) and 88.7% (85.3–91.5), respectively. The sensitivity and specificity of the algorithm were 66.7% (43.0–85.4) and 95.3% (90.6–98.1), respectively. The precision and recall of the algorithm were both 91.8% with an AuPRC of 98.3%.ConclusionChest radiograph analysis augmented with machine learning can diagnose foreign body aspiration in pediatric patients at a level similar to a read performed by a pediatric radiologist despite only using single‐view, fixed images. Overall, this study highlights the potential and capabilities of machine learning in diagnosing conditions with a wide range of clinical presentations.Level of Evidence3 Laryngoscope, 134:3807–3814, 2024