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Disentangling Prompt Dependence to Evaluate Segmentation Reliability in Gynecological MRI

arXiv cs.CV / 3/17/2026

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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.

Abstract

Promptable segmentation models (e.g., the Segment Anything Models) enable generalizable, zero-shot segmentation across diverse domains. Although predictions are deterministic for a fixed image-prompt pair, the robustness of these models to variations in user prompts, referred to as prompt dependence, remains underexplored. In safety-critical workflows with substantial inter-user variability, interpretable and informative frameworks are needed to evaluate prompt dependence. In this work, we assess the reliability of promptable segmentation by analyzing and measuring its sensitivity to prompt variability. We introduce the first formulation of prompt dependence that explicitly disentangles prompt ambiguity (inter-user variability) from local sensitivity (interaction imprecision), offering an interpretable view of segmentation robustness. Experiments on two female pelvic MRI datasets for uterus and bladder segmentation reveal a strong negative correlation between both metrics and segmentation performance, highlighting the value of our framework for assessing robustness. The two metrics have low mutual correlation, supporting the disentangled design of our formulation, and provide meaningful indicators of prompt-related failure modes.