Disentangling Prompt Dependence to Evaluate Segmentation Reliability in Gynecological MRI
arXiv cs.CV / 3/17/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The authors propose the first formulation of prompt dependence that separates inter-user prompt ambiguity from interaction imprecision, enabling an interpretable assessment of segmentation robustness.
- They evaluate promptable segmentation on two female pelvic MRI datasets for uterus and bladder, highlighting relevance to safety-critical medical imaging.
- The experiments show a strong negative correlation between the proposed prompt-dependence metrics and segmentation performance, indicating prompts significantly affect results.
- The two metrics exhibit low mutual correlation, supporting the value of the disentangled design for identifying prompt-related failure modes.
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