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Beyond the Leaderboard: Design Lessons for Trustworthy Multimodal VQA

Healthcare multimodal AI must combine visual and textual evidence while remaining reliable and interpretable. Using MediaEval Medico 2025 as a retrospective GI endoscopy case study, we analyze design choices across nine documented systems for question answering and explanation quality. Parameter-efficient adaptation of pretrained backbones provides strong challenge performance, but answer-level gains do not consistently translate into faithful and complete clinical reasoning. Methods enforcing structured reasoning and explicit grounding show more reliable behavior across heterogeneous question types, although the evidence is correlational rather than ablation-based. These results motivate evaluation beyond lexical overlap, standardized evidence-linked explanations, leakage-aware data governance, and lightweight robustness and calibration checks. The findings support trustworthy multimodal healthcare AI based on data fusion, explainability, and resilient evaluation.

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Healthcare multimodal AI must combine visual and textual evidence while remaining reliable and interpretable. Using MediaEval Medico 2025 as a retrospective GI endoscopy case study, we analyze design choices across nine documented systems for question answering and explanation quality. Parameter-efficient adaptation of pretrained backbones provides strong challenge performance, but answer-level gains do not consistently translate into faithful and complete clinical reasoning. Methods enforcing structured reasoning and explicit grounding show more reliable behavior across heterogeneous question types, although the evidence is correlational rather than ablation-based. These results motivate evaluation beyond lexical overlap, standardized evidence-linked explanations, leakage-aware data governance, and lightweight robustness and calibration checks. The findings support trustworthy multimodal healthcare AI based on data fusion, explainability, and resilient evaluation.

ประโยคและวลีที่ใช้ได้จริงจากเรื่องนี้

Useful phrases from this story

must combine visual and textualCollocation

ต้องรวมภาพและข้อความ.

From the storyHealthcare multimodal AI must combine visual and textual evidence while remaining reliable and interpretable.

remaining reliable and interpretableCollocation

ยังคงน่าเชื่อถือและสามารถตีความได้.

From the storyHealthcare multimodal AI must combine visual and textual evidence while remaining reliable and interpretable.

Using MediaEval MedicoCollocation

การ ใช้ MediaEval Medico.

From the storyUsing MediaEval Medico 2025 as a retrospective GI endoscopy case study, we analyze design choices across nine documented systems for question answering and explanation quality.

documented systems for question answeringCollocation

ระบบที่บันทึกไว้สําหรับการตอบคําถาม.

From the storyUsing MediaEval Medico 2025 as a retrospective GI endoscopy case study, we analyze design choices across nine documented systems for question answering and explanation quality.

pretrained backbones provides strong challengeCollocation

กระดูกสันหลังที่ได้รับการฝึกอบรมก่อน จะเป็นการท้าทายที่แข็งแกร่ง.

From the storyParameter-efficient adaptation of pretrained backbones provides strong challenge performance, but answer-level gains do not consistently translate into faithful and complete clinical reasoning.

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