Artificial Intelligence for Pediatric Emergency Medicine

Mohammed Alsabri , Nicholas Aderinto , Marina Ramzy Mourid , Fatima Laique , Salina Zhang , Noha S. Shaban , Abdalhakim Shubietah , Luis L. Gamboa
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Abstract

Pediatric Emergency Medicine (PEM) addresses the unique needs of children in emergencies. This subspecialty faces significant challenges, including the need for specialized training, patient crowding, and the demand for timely and accurate management. Artificial Intelligence (AI) presents promising solutions by enhancing diagnostic precision and operational efficiency. This review examines current trends and prospects of AI in PEM, focusing on its applications, benefits, challenges, and transformative potential. The review highlights AI’s role in overcoming PEM challenges and its future opportunities. Key AI applications in PEM include early sepsis detection, improving triage accuracy, predicting injuries, and supporting diagnostics. AI models show significant potential in forecasting clinical outcomes, optimizing resource management, and improving patient care. Despite these benefits, challenges remain, including the need for specialized training for physicians and the integration of AI systems into clinical practice. Yet, AI holds considerable promise for advancing PEM through enhanced diagnostic tools, more efficient patient management, and improved clinical decision support. Continued advancements and collaborations between AI researchers and pediatric emergency practitioners are essential to fully realize AI’s potential in this field.

人工智能在儿科急诊医学中的应用
儿科急诊医学(PEM)满足儿童在紧急情况下的独特需求。这个亚专科面临着巨大的挑战,包括对专业培训的需求、病人拥挤以及对及时准确管理的要求。人工智能(AI)通过提高诊断精确度和操作效率,提供了前景广阔的解决方案。本综述探讨了人工智能在 PEM 领域的当前趋势和前景,重点关注其应用、优势、挑战和变革潜力。综述强调了人工智能在克服 PEM 挑战方面的作用及其未来机遇。人工智能在急诊急救中的主要应用包括早期败血症检测、提高分流准确性、预测伤害和支持诊断。人工智能模型在预测临床结果、优化资源管理和改善患者护理方面显示出巨大潜力。尽管有这些优势,但挑战依然存在,包括需要对医生进行专门培训以及将人工智能系统融入临床实践。然而,通过增强诊断工具、提高患者管理效率和改善临床决策支持,人工智能在推进 PEM 方面大有可为。要充分发挥人工智能在这一领域的潜力,人工智能研究人员和儿科急诊医师之间的持续进步与合作至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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