sFRC for assessing hallucinations in medical image restoration
Prabhat Kc, Rongping Zeng, Nirmal Soni, and Aldo Badano

TL;DR
This paper introduces sFRC, a Fourier Ring Correlation-based technique to detect hallucinations in deep learning medical image restoration outputs, improving robustness assessment.
Contribution
It proposes a novel sFRC method for identifying hallucinations in DL outputs, applicable across various medical imaging problems and methods.
Findings
sFRC effectively detects hallucinations in CT and MRI reconstructions.
sFRC's results align with imaging theory-based hallucination maps.
The method quantifies hallucination rates across different data distributions.
Abstract
Deep learning (DL) methods are currently being explored to restore images from sparse-view-, limited-data-, and undersampled-based acquisitions in medical applications. Although outputs from DL may appear visually appealing based on likability/subjective criteria (such as less noise, smooth features), they may also suffer from hallucinations. This issue is further exacerbated by a lack of easy-to-use techniques and robust metrics for the identification of hallucinations in DL outputs. In this work, we propose performing Fourier Ring Correlation (FRC) analysis over small patches and concomitantly (s)canning across DL outputs and their reference counterparts to detect hallucinations (termed as sFRC). We describe the rationale behind sFRC and provide its mathematical formulation. The parameters essential to sFRC may be set using predefined hallucinated features annotated by subject matter…
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