Harib, Wissam, Fouad, Shereen and F. Mahmoud, Taha (2026). A Dirichlet Distribution-Based Trust-Adaptive Ensemble Approach for Pneumonia Classification from Chest X-Ray Images. IN: International Symposium on Biomedical Imaging 2026. GBR: IEEE. (In Press)
Abstract
Pneumonia diagnosis from chest radiographs is hindered by AI model variability and limited decision transparency.We present a deployment-ready, abstaining Dirichlet-evidence ensemble for paediatric CXR triage that elevates “Indeterminate”to a first-class outcome and implements dynamic, trust-adaptive weighting. Eight diverse pre-trained models each provide binary predictions, which are converted to three-way CXR supports,scaled by ongoing trust scores, and fused using a Dirichlet-evidence mechanism. Selective gates on class separation and pooled evidence allow the ensemble to defer, with auditable reasoning, when the decision is uncertain. On a 200-image paediatric hold-out, simple majority voting achieved 94.5% accuracy but dropped to 83.0%when two training models were intentionally inverted. At a fixed operating point, the proposed ensemble maintained zero errors(100% accuracy) on decided cases in both settings, abstaining on only 1–2% of studies instead of issuing incorrect labels. Unlike prior work, our system tightly integrates uncertainty, selective prediction, and per-case logging for clinical governance. This framework advances safe, interpretable automation for paediatric pneumonia assessment.
| Divisions: | College of Engineering & Physical Sciences > School of Computer Science and Digital Technologies College of Engineering & Physical Sciences > Aston Centre for Artifical Intelligence Research and Application College of Engineering & Physical Sciences |
|---|---|
| Event Title: | The IEEE International Symposium on Biomedical Imaging (ISBI) |
| Event Type: | Other |
| Event Location: | London |
| Event Dates: | 2026-04-08 - 2026-04-11 |
| Uncontrolled Keywords: | Dirichlet-evidence ensemble; pneumonia; en- semble learning; uncertainty; abstention; selective prediction; evidential machine learning. |
| Last Modified: | 20 Jan 2026 13:29 |
| Date Deposited: | 20 Jan 2026 13:29 | PURE Output Type: | Conference contribution |
| Published Date: | 2026-01-13 |
| Accepted Date: | 2026-01-13 |
| Authors: |
Harib, Wissam
Fouad, Shereen (
0000-0002-4965-7017)
F. Mahmoud, Taha |
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Version: Accepted Version
Access Restriction: Restricted to Repository staff only until 1 January 2050.
License: Creative Commons Attribution
0000-0002-4965-7017