[2603.26324] PRISMA: Toward a Normative Information Infrastructure for Responsible Pharmaceutical Knowledge Management
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[2603.26324] PRISMA: Toward a Normative Information Infrastructure for Responsible Pharmaceutical Knowledge Management

arXiv - AI 4 min read

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Abstract page for arXiv paper 2603.26324: PRISMA: Toward a Normative Information Infrastructure for Responsible Pharmaceutical Knowledge Management

Computer Science > Digital Libraries arXiv:2603.26324 (cs) [Submitted on 27 Mar 2026] Title:PRISMA: Toward a Normative Information Infrastructure for Responsible Pharmaceutical Knowledge Management Authors:Eugenio Rodrigo Zimmer Neves, Amanda Vanon Correa, Camila Campioni, Gabielli Pare Guglielmi, Bruno Morelli View a PDF of the paper titled PRISMA: Toward a Normative Information Infrastructure for Responsible Pharmaceutical Knowledge Management, by Eugenio Rodrigo Zimmer Neves and 4 other authors View PDF HTML (experimental) Abstract:Most existing approaches to AI in pharmacy collapse three epistemologically distinct operations into a single technical layer: document preservation, semantic interpretation, and contextual presentation. This conflation is a root cause of recurring fragilities including loss of provenance, interpretive opacity, alert fatigue, and erosion of accountability. This paper proposes the PATOS--Lector--PRISMA (PLP) infrastructure as a normative information architecture for responsible pharmaceutical knowledge management. PATOS preserves regulatory documents with explicit versioning and provenance; Lector implements machine-assisted reading with human curation, producing typed assertions anchored to primary sources; PRISMA delivers contextual presentation through the RPDA framework (Regulatory, Prescription, Dispensing, Administration), refracting the same informational core into distinct professional views. The architecture introduces the Evidence Pa...

Originally published on March 30, 2026. Curated by AI News.

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