Zhekun Wang
2026
DLNLP at ClinicalSkillQA: EvidenceFlow for Structured Zero-Shot Clinical Keyframe Ordering
Kexin Li | Zhekun Wang | Yiran Wang | Di Zhao
Proceedings of the BioNLP 2026 (Shared Tasks)
Kexin Li | Zhekun Wang | Yiran Wang | Di Zhao
Proceedings of the BioNLP 2026 (Shared Tasks)
The ClinSkill QA shared task requires models to recover the temporal order of scrambled clinical keyframes and generate explanations. We propose EvidenceFlow, a structured zero-shot framework based on Qwen2.5-VL that decomposes the task into global overview, local evidence modeling, and ordering decision, with two variants: model-led EvidenceFlow-M and rule-guided EvidenceFlow-R. On the official test set, EvidenceFlow-R achieves better ordering performance, while EvidenceFlow-M produces better explanation quality, revealing a trade-off between ordering stability and rationale generation. EvidenceFlow provides an interpretable zero-shot baseline for clinical keyframe ordering.