IVCVMay 14, 2024

Similarity and Quality Metrics for MR Image-To-Image Translation

arXiv:2405.08431v551 citationsh-index: 6Sci Rep
Originality Synthesis-oriented
AI Analysis

This work addresses the need for reproducible and objective assessment in medical imaging to complement human validation, though it is incremental as it focuses on analyzing existing metrics rather than introducing new ones.

The paper analyzed 23 similarity and quality metrics for evaluating synthetic images in MR image-to-image translation, assessing their sensitivity to 11 distortions and artifacts, and provided recommendations for effective usage.

Image-to-image translation can create large impact in medical imaging, as images can be synthetically transformed to other modalities, sequence types, higher resolutions or lower noise levels. To ensure patient safety, these methods should be validated by human readers, which requires a considerable amount of time and costs. Quantitative metrics can effectively complement such studies and provide reproducible and objective assessment of synthetic images. If a reference is available, the similarity of MR images is frequently evaluated by SSIM and PSNR metrics, even though these metrics are not or too sensitive regarding specific distortions. When reference images to compare with are not available, non-reference quality metrics can reliably detect specific distortions, such as blurriness. To provide an overview on distortion sensitivity, we quantitatively analyze 11 similarity (reference) and 12 quality (non-reference) metrics for assessing synthetic images. We additionally include a metric on a downstream segmentation task. We investigate the sensitivity regarding 11 kinds of distortions and typical MR artifacts, and analyze the influence of different normalization methods on each metric and distortion. Finally, we derive recommendations for effective usage of the analyzed similarity and quality metrics for evaluation of image-to-image translation models.

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