Personalized decision-making through AI solutions in pediatric emergency medicine: Focusing on febrile children
Lina Jankauskaite, Urte Oniunaite, Rimantas Kevalas

TL;DR
This paper explores how AI can improve personalized decision-making in pediatric emergency care, especially for febrile children, by enhancing diagnostics and treatment planning.
Contribution
The paper reviews AI's role in pediatric emergency medicine, focusing on its potential to support personalized care through diagnostic and predictive tools.
Findings
AI can enhance diagnostic accuracy and customize treatments using electronic health records and genetic data.
Machine learning algorithms help detect diseases early and predict febrile disease progression.
Challenges include data limitations and the need for transparent AI algorithms in pediatric emergency settings.
Abstract
Pediatric emergency medicine (PEM) presents unique challenges due to the diverse developmental stages and medical conditions of young patients. The increasing patient load and nonurgent referrals to pediatric emergency departments (PEDs) emphasize the need for personalized decision-making approaches. These approaches must accommodate the complexities of pediatric care while fostering collaboration between healthcare providers and families. Integrating artificial intelligence (AI) into healthcare settings can transform PEM by enhancing diagnostic accuracy, customizing treatments, and optimizing resource allocation. AI technologies leverage vast datasets, including electronic health records and genetic profiles, to generate personalized diagnostic and treatment plans. Machine learning algorithms can identify patterns in complex data, facilitating early disease detection and precise…
Genes, proteins, chemicals, diseases, species, mutations and cell lines named across the full text — each resolved to its canonical identifier and authoritative record.
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Clinical Reasoning and Diagnostic Skills · Machine Learning in Healthcare
