MedIQA: A Scalable Foundation Model for Prompt-Driven Medical Image Quality Assessment
About
Rapid advances in medical imaging technology underscore the critical need for precise and automated image quality assessment (IQA) to ensure diagnostic accuracy. Existing medical IQA methods, however, struggle to generalize across diverse modalities and clinical scenarios. In response, we introduce MedIQA, the first comprehensive foundation model for medical IQA, designed to handle variability in image dimensions, modalities, anatomical regions, and types. We developed a large-scale multi-modality dataset with plentiful manually annotated quality scores to support this. Our model integrates a salient slice assessment module to focus on diagnostically relevant regions feature retrieval and employs an automatic prompt strategy that aligns upstream physical parameter pre-training with downstream expert annotation fine-tuning. Extensive experiments demonstrate that MedIQA significantly outperforms baselines in multiple downstream tasks, establishing a scalable framework for medical IQA and advancing diagnostic workflows and clinical decision-making.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Quality Assessment | LDCTIQAC 2023 (test) | Pearson Correlation (r)0.9764 | 11 | |
| Medical Image Quality Assessment | Pre-training dataset (test) | SRCC0.777 | 8 | |
| Medical Image Quality Assessment | Pre-training dataset (Brain T2) | SRCC0.8861 | 4 | |
| Medical Image Quality Assessment | Chest-CTIQA | SRCC0.707 | 3 | |
| Medical Image Quality Assessment | Pre-training dataset Lung window | SRCC0.7316 | 2 | |
| Medical Image Quality Assessment | Pre-training dataset Soft window | SRCC0.7114 | 2 | |
| Medical Image Quality Assessment | Pre-training dataset Brain T1 | SRCC0.7891 | 2 | |
| Medical Image Quality Assessment | Breast T1 Pre-training | SRCC0.8148 | 2 | |
| Medical Image Quality Assessment | Brain-T1 Downstream | SRCC0.8681 | 2 | |
| Medical Image Quality Assessment | Brain-FLAIR | SRCC0.7654 | 2 |