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PathoScribe:統合LLM駆動フレームワークによる病理データの生きたライブラリへの変革と意味的検索および臨床統合

arXiv cs.AI / 2026/3/11

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要点

  • PathoScribeは、静的な病理アーカイブをインタラクティブで検索可能、かつ推論対応の生きたライブラリに変換するために設計された統合大型言語モデル(LLM)フレームワークです。
  • 本システムは、自然言語による症例探索、自動コホート構築、臨床質問応答、免疫組織化学パネルの推奨、レポート変換を単一アーキテクチャ内でサポートします。
  • 7万件の多機関外科病理報告書を対象に評価したところ、PathoScribeは症例検索でRecall@10を完全に達成し、高い査読者スコアとともに検索に基づく優れた推論品質を示しました。
  • PathoScribeは、自由記述の適格基準から自動でコホートを構築することで、コホート組成時間とコストを大幅に削減し、人間の査読者との一致率は91%以上、適格症例の除外は一切ありませんでした。
  • 本フレームワークは、デジタル病理アーカイブを受動的なリポジトリから患者ケアに有意義に寄与できる能動的な臨床インテリジェンスプラットフォームへと変換するための拡張可能な基盤を確立します。

Computer Science > Computer Vision and Pattern Recognition

arXiv:2603.08935 (cs)
[Submitted on 9 Mar 2026]

Title:PathoScribe: Transforming Pathology Data into a Living Library with a Unified LLM-Driven Framework for Semantic Retrieval and Clinical Integration

View a PDF of the paper titled PathoScribe: Transforming Pathology Data into a Living Library with a Unified LLM-Driven Framework for Semantic Retrieval and Clinical Integration, by Abdul Rehman Akbar and 7 other authors
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Abstract:Pathology underpins modern diagnosis and cancer care, yet its most valuable asset, the accumulated experience encoded in millions of narrative reports, remains largely inaccessible. Although institutions are rapidly digitizing pathology workflows, storing data without effective mechanisms for retrieval and reasoning risks transforming archives into a passive data repository, where institutional knowledge exists but cannot meaningfully inform patient care. True progress requires not only digitization, but the ability for pathologists to interrogate prior similar cases in real time while evaluating a new diagnostic dilemma. We present PathoScribe, a unified retrieval-augmented large language model (LLM) framework designed to transform static pathology archives into a searchable, reasoning-enabled living library. PathoScribe enables natural language case exploration, automated cohort construction, clinical question answering, immunohistochemistry (IHC) panel recommendation, and prompt-controlled report transformation within a single architecture. Evaluated on 70,000 multi-institutional surgical pathology reports, PathoScribe achieved perfect Recall@10 for natural language case retrieval and demonstrated high-quality retrieval-grounded reasoning (mean reviewer score 4.56/5). Critically, the system operationalized automated cohort construction from free-text eligibility criteria, assembling research-ready cohorts in minutes (mean 9.2 minutes) with 91.3% agreement to human reviewers and no eligible cases incorrectly excluded, representing orders-of-magnitude reductions in time and cost compared to traditional manual chart review. This work establishes a scalable foundation for converting digital pathology archives from passive storage systems into active clinical intelligence platforms.
Subjects: Computer Vision and Pattern Recognition (cs.CV); Artificial Intelligence (cs.AI); Computation and Language (cs.CL); Digital Libraries (cs.DL); Information Retrieval (cs.IR)
Cite as: arXiv:2603.08935 [cs.CV]
  (or arXiv:2603.08935v1 [cs.CV] for this version)
  https://doi.org/10.48550/arXiv.2603.08935
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arXiv-issued DOI via DataCite

Submission history

From: Abdul Akbar [view email]
[v1] Mon, 9 Mar 2026 21:09:24 UTC (1,577 KB)
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