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Corvinus

Explainable transfer learning ensemble AI model for lung ultrasound pneumothorax detection with expert benchmark

Orosz, Gábor ORCID: https://orcid.org/0000-0002-9254-0623, Szabó, Róbert Zsolt, Szabó, Marcell ORCID: https://orcid.org/0000-0002-5482-6989, Gyombolai, Pál, Tóth, József T, Ruttkay, Tamás ORCID: https://orcid.org/0000-0003-4501-824X, Ferenci, Tamás ORCID: https://orcid.org/0000-0001-6791-3080, Ungi, Tamás ORCID: https://orcid.org/0000-0003-4743-0609, Fichtinger, Gábor and Haidegger, Tamás ORCID: https://orcid.org/0000-0003-1402-1139 (2026) Explainable transfer learning ensemble AI model for lung ultrasound pneumothorax detection with expert benchmark. Scandinavian Journal of Trauma, Resuscitation and Emergency Medicine, 34 (1). DOI https://doi.org/10.1186/s13049-026-01614-4

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Official URL: https://doi.org/10.1186/s13049-026-01614-4


Abstract

Lung ultrasound is essential for rapid, radiation-free bedside pneumothorax diagnosis but limited by variability in human interpretation. Key gaps include insufficiently large and diverse human datasets, inconsistent image acquisition, lack of rigorous expert benchmarking, and inadequate clinical interpretability of existing artificial intelligence models. We aimed to develop and validate a robust, explainable artificial intelligence (AI) ensemble model addressing these critical gaps.With our multidisciplinary team, we developed an explainable soft-voting ensemble model trained on 1,856 diverse ultrasound clips from critically ill patients, healthy volunteers, and tailored cadaver models. Model interpretability was ensured using visualization, with heatmaps validated by expert clinicians. The model's diagnostic performance was rigorously benchmarked against 11 experienced clinicians using an independent, balanced test set. Statistical analyses included sensitivity, specificity and inter-rater reliability.The ensemble model achieved 100% sensitivity (95% CI: 85·8%-100·0%) and 100% specificity (95% CI: 85·8%-100·0%), surpassing expert sensitivity and specificity. Diagnostic performance of experts significantly differed by ultrasound mode, with notably lower specificity in M-mode imaging (p < 0·001). The AI consistently maintained perfect sensitivity and significantly reduced false positives compared to clinicians across all conditions, including challenging diagnostic scenarios (e.g., subtle pleural motions), and showed excellent generalizability to both cadaveric and clinical cases.Our explainable AI ensemble robustly matches the consensus-level performance of an expert "committee," significantly reducing diagnostic variability and false-positive diagnoses. This AI tool can serve as a critical second reader, standardize clinical decisions at the bedside, and substantially improve patient safety.

Item Type:Article
Uncontrolled Keywords:Critical care; Ensemble learning; Transfer learning; lung ultrasound; Explainable artificial intelligence; Pneumothorax Detection; Deployable AI tool; Expert benchmarking; M-mode ultrasound imaging;
Divisions:Institute of Data Analytics and Information Systems
Subjects:Automatizálás, gépesítés
Social welfare, insurance, health care
DOI:https://doi.org/10.1186/s13049-026-01614-4
ID Code:12902
Deposited By: MTMT SWORD
Deposited On:23 Jun 2026 07:57
Last Modified:23 Jun 2026 07:57

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