External validation of an artificial intelligence solution for the detection of elbow fractures and joint effusions in children - 07/03/24
, Raphaël Veil b, 1Highlights |
• | An external validation of an artificial intelligence solution was performed in a real-life context to estimate its performances in the diagnosis of elbow fracture and/or joint effusion. |
• | The senior radiologist's conclusion, blinded to the artificial intelligence solution conclusion, was used as the standard of reference. |
• | The artificial intelligence solution demonstrates a negative predictive value of 92% in the diagnosis of elbow fracture and/or joint effusion in children. |
Abstract |
Purpose |
The purpose of this study was to conduct an external validation of an artificial intelligence (AI) solution for the detection of elbow fractures and joint effusions using radiographs from a real-life cohort of children.
Materials and methods |
This single-center retrospective study was conducted on 758 radiographic sets (1637 images) obtained from consecutive emergency room visits of 712 children (mean age, 7.27 ± 3.97 [standard deviation] years; age range, 7 months and 10 days to 15 years and 10 months), referred for a trauma of the elbow. For each set, fracture and/or effusion detection by eleven senior radiologists (reference standard) and AI solution was recorded. Diagnostic performance of the AI solution was measured via four different approaches: fracture detection (presence/absence of fracture as binary variable), fracture enumeration, fracture localization and lesion detection (fracture and/or a joint effusion used as constructed binary variable).
Results |
The sensitivity of the AI solution for each of the four approaches was >89%. Greatest sensitivity of the AI solution was obtained for lesion detection (95.0%; 95% confidence interval: 92.1–96.9). The specificity of the AI solution ranged between 63% (for lesion detection) and 77% (for fracture detection). For all four approaches, the negative predictive values were >92% and the positive predictive values ranged between 54% (for fracture enumeration and localization) and 73% (for lesion detection). Specificity was lower for plastered children for all approaches (P < 0.001).
Conclusion |
The AI solution demonstrates high performances for detecting elbow's fracture and/or joint effusion in children. However, in our context of use, 8% of the radiographic sets ruled-out by the algorithm concerned children with a genuine traumatic elbow lesion.
Le texte complet de cet article est disponible en PDF.Keywords : Artificial intelligence, Elbow, Emergency, Pediatric fracture, Radiography
List of abbreviations : CI, FN, FP, PLR, NLR, NPV, PACS, PPV, ROI, TN, TP
Plan
Vol 105 - N° 3
P. 104-109 - mars 2024 Retour au numéroBienvenue sur EM-consulte, la référence des professionnels de santé.
