Litcius/Paper detail

Implications of integrating large language models into clinical decision making

Michael Christof, Antonis A. Armoundas

2025Communications Medicine11 citationsDOIOpen Access PDF

Abstract

Christof & Armoundas explore how large language models (LLMs) can augment clinician-level clinical reasoning across the three pillars-framing the encounter, diagnostic reasoning, and treatment/management-highlighting gains in information synthesis and pattern recognition while underscoring limits that require continuous human judgment and oversight. They advocate a bias-aware, privacy-preserving, and rigorously validated “human-in-the-loop” deployment that safeguards patient agency and clinical accountability, while integrating LLMs into real-world workflows via clear clinician imperatives.

Topics & Concepts

WorkflowSoftware deploymentComputer scienceAgency (philosophy)Clinical judgmentKnowledge managementClinical decision makingArtificial intelligenceManagement sciencePsychologyNatural language processingKey (lock)Data scienceProcess managementRisk analysis (engineering)Information systemLanguage modelClinical decision support systemDecision support systemHuman–computer interactionClinical PracticeNatural languageWork (physics)Artificial Intelligence in Healthcare and EducationMachine Learning in HealthcareGenomics and Rare Diseases