An Interpretable Approach to Automated Severity Scoring in Pelvic Trauma
Anna Zapaishchykova, David Dreizin, Zhaoshuo Li, Jie Ying Wu, Shahrooz, Faghih Roohi, Mathias Unberath

TL;DR
This paper presents an interpretable automated system for pelvic trauma severity scoring using CT scans, combining object detection and causal modeling to assist radiologists with transparent, high-performance fracture classification.
Contribution
It introduces a novel interpretable decision support system that combines a Faster-RCNN detector with a causal model for Tile grade classification, enhancing transparency and interaction.
Findings
Achieved 83.3%/85.1% AUC for instability detection.
Provided interpretable fracture detection and Tile grading.
Maintained performance comparable to black-box methods.
Abstract
Pelvic ring disruptions result from blunt injury mechanisms and are often found in patients with multi-system trauma. To grade pelvic fracture severity in trauma victims based on whole-body CT, the Tile AO/OTA classification is frequently used. Due to the high volume of whole-body trauma CTs generated in busy trauma centers, an automated approach to Tile classification would provide substantial value, e.,g., to prioritize the reading queue of the attending trauma radiologist. In such scenario, an automated method should perform grading based on a transparent process and based on interpretable features to enable interaction with human readers and lower their workload by offering insights from a first automated read of the scan. This paper introduces an automated yet interpretable pelvic trauma decision support system to assist radiologists in fracture detection and Tile grade…
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