Agreement of Image Quality Metrics with Radiological Evaluation in the Presence of Motion Artifacts
Elisa Marchetto, Hannah Eichhorn, Daniel Gallichan, Julia A. Schnabel, and Melanie Ganz

TL;DR
This study evaluates the effectiveness of various image quality metrics in reflecting radiological assessments of MRI images with motion artifacts, emphasizing the importance of pre-processing techniques.
Contribution
It compares reference-based and reference-free image quality metrics on real motion artifact data, highlighting the impact of pre-processing on metric performance.
Findings
Reference-based metrics strongly correlate with radiologist scores.
Average Edge Strength is the most promising reference-free metric.
Normalization and brain masking improve correlation accuracy.
Abstract
Purpose: Reliable image quality assessment is crucial for evaluating new motion correction methods for magnetic resonance imaging. In this work, we compare the performance of commonly used reference-based and reference-free image quality metrics on a unique dataset with real motion artifacts. We further analyze the image quality metrics' robustness to typical pre-processing techniques. Methods: We compared five reference-based and five reference-free image quality metrics on data acquired with and without intentional motion (2D and 3D sequences). The metrics were recalculated seven times with varying pre-processing steps. The anonymized images were rated by radiologists and radiographers on a 1-5 Likert scale. Spearman correlation coefficients were computed to assess the relationship between image quality metrics and observer scores. Results: All reference-based image quality…
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