Conservative AI for Safety-Sensitive Medical Image Restoration: Residual-Bounded CT-CTA Enhancement for Intracranial Aneurysm-Relevant Signal Recovery
Weijun Ma

TL;DR
This paper introduces a conservative AI framework for medical image restoration that enhances intracranial CT and CTA scans while limiting modifications to critical regions, ensuring safety and accuracy.
Contribution
It presents a residual-bounded 2.5D restoration model trained on synthetic data, with an edit-control map to restrict modifications, improving safety in sensitive medical imaging tasks.
Findings
Achieved a mean target gain of 0.0635 on out-of-distribution cases.
Maintained net positive results in 85.4% of Monte Carlo simulations.
Produced smaller, more localized modifications than baseline models.
Abstract
Image restoration models are increasingly applied to degraded medical scans, but in safety-sensitive settings they must improve image quality without uncontrolled modification of clinically important regions. This is especially relevant for intracranial CT and CT angiography (CTA), where small vessels and aneurysm-relevant cues lie near high-contrast anatomical boundaries. We frame medical image restoration as a conservative AI problem and present a residual-bounded 2.5D restoration framework trained on synthetically degraded CT/CTA inputs. The model adds a learned residual to the original center slice through an edit-control map that limits the magnitude and spatial extent of modification. We evaluate the framework using an aneurysm-relevant image-recovery matrix, paired comparison against a Gaussian baseline, Monte Carlo stability testing, anatomical localization of meaningful edits,…
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