超要約:患者の声(Self-Report)で診断AIを強化するよ!
✨ ギャル的キラキラポイント ✨
● 患者の言葉を活かすから、もっとリアルな診断ができるようになるってこと💖 ● AIが診断をサポートしてくれるから、医療がもっと身近になるかも🎵 ● 新しいビジネスチャンスもいっぱい! 夢が広がる~🎉
詳細解説
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Disease diagnosis is a central pillar of modern healthcare, enabling early detection and timely intervention for acute conditions while guiding lifestyle adjustments and medication regimens to prevent or slow chronic disease. Self-reports preserve clinically salient signals that templated electronic health record (EHR) documentation often attenuates or omits, especially subtle but consequential details. To operationalize this shift, we introduce MIMIC-SR-ICD11, a large English diagnostic dataset built from EHR discharge notes and natively aligned to WHO ICD-11 terminology. We further present LL-Rank, a likelihood-based re-ranking framework that computes a length-normalized joint likelihood of each label given the clinical report context and subtracts the corresponding report-free prior likelihood for that label. Across seven model backbones, LL-Rank consistently outperforms a strong generation-plus-mapping baseline (GenMap). Ablation experiments show that LL-Rank's gains primarily stem from its PMI-based scoring, which isolates semantic compatibility from label frequency bias.