人工智能在儿童早期健康管理中的应用:从胎儿期到儿科期的系统综述。

IF 2 3区 医学 Q2 PEDIATRICS
Frontiers in Pediatrics Pub Date : 2025-09-16 eCollection Date: 2025-01-01 DOI:10.3389/fped.2025.1613150
Qingsong Wang, Jun Yin, Xiaomeng Zhang, Huimin Ou, Fuyan Li, Yundong Zhang, Weiyi Wan, Caiyu Guo, Yongyu Cao, Tongyong Luo, Xianmin Wang
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引用次数: 0

摘要

背景:人工智能(AI)与儿童早期健康管理的整合已经迅速扩大,其应用跨越胎儿、新生儿和儿科时期。虽然许多研究报告了有希望的结果,但需要全面综合人工智能在儿童健康方面的表现、方法质量和转化准备。目的:本系统综述旨在评估人工智能在胎儿和儿科护理中的应用现状,评估其诊断准确性和临床实用性,并确定现实世界实施的主要障碍。方法:系统检索PubMed、Scopus和Web of Science中发表于2021年1月至2025年3月的研究。符合条件的研究涉及人工智能驱动的模型,用于0-18岁个体的诊断、预测或决策支持。研究选择遵循PRISMA 2020指南。从应用领域、人工智能方法论、性能指标、验证策略和临床整合水平提取数据。结果:从4938份筛选记录中,纳入133项研究。人工智能模型在产前异常检测(平均AUC: 0.91-0.95)、新生儿重症监护(例如,敏感性高达89%的脓毒症预测)和儿科遗传诊断(准确性:85%-93%使用面部分析)方面表现出色。深度学习增强了胎儿超声心动图和超声判读的一致性。然而,76%的研究使用了单中心回顾性数据,只有21%的研究报告了外部验证。在跨机构环境中,绩效下降了15%-20%。只有不到5%的模型被整合到常规临床工作流程中,关于数据隐私、算法偏差和临床医生信任的报告有限。结论:人工智能在从胎儿筛查到慢性疾病管理的儿科连续护理中具有变革潜力。然而,大多数应用仍处于研究阶段,受到数据异质性、缺乏前瞻性验证和缺乏监管一致性的限制。为了促进临床应用,未来的工作应侧重于多中心合作、标准化数据共享框架、可解释的人工智能和儿科特定的监管途径。本综述为临床医生、研究人员和政策制定者提供了路线图,以指导人工智能在儿童健康方面的负责任翻译。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Applications of artificial intelligence in early childhood health management: a systematic review from fetal to pediatric periods.

Applications of artificial intelligence in early childhood health management: a systematic review from fetal to pediatric periods.

Background: The integration of artificial intelligence (AI) into early childhood health management has expanded rapidly, with applications spanning the fetal, neonatal, and pediatric periods. While numerous studies report promising results, a comprehensive synthesis of AI's performance, methodological quality, and translational readiness in child health is needed.

Objectives: This systematic review aims to evaluate the current landscape of AI applications in fetal and pediatric care, assess their diagnostic accuracy and clinical utility, and identify key barriers to real-world implementation.

Methods: A systematic literature search was conducted in PubMed, Scopus, and Web of Science for studies published between January 2021 and March 2025. Eligible studies involved AI-driven models for diagnosis, prediction, or decision support in individuals aged 0-18 years. Study selection followed the PRISMA 2020 guidelines. Data were extracted on application domain, AI methodology, performance metrics, validation strategy, and clinical integration level.

Results: From 4,938 screened records, 133 studies were included. AI models demonstrated high performance in prenatal anomaly detection (mean AUC: 0.91-0.95), neonatal intensive care (e.g., sepsis prediction with sensitivity up to 89%), and pediatric genetic diagnosis (accuracy: 85%-93% using facial analysis). Deep learning enhanced consistency in fetal echocardiography and ultrasound interpretation. However, 76% of studies used single-center retrospective data, and only 21% reported external validation. Performance dropped by 15%-20% in cross-institutional settings. Fewer than 5% of models have been integrated into routine clinical workflows, with limited reporting on data privacy, algorithmic bias, and clinician trust.

Conclusion: AI holds transformative potential across the pediatric continuum of care-from fetal screening to chronic disease management. However, most applications remain in the research phase, constrained by data heterogeneity, lack of prospective validation, and insufficient regulatory alignment. To advance clinical adoption, future efforts should focus on multicenter collaboration, standardized data sharing frameworks, explainable AI, and pediatric-specific regulatory pathways. This review provides a roadmap for clinicians, researchers, and policymakers to guide the responsible translation of AI in child health.

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来源期刊
Frontiers in Pediatrics
Frontiers in Pediatrics Medicine-Pediatrics, Perinatology and Child Health
CiteScore
3.60
自引率
7.70%
发文量
2132
审稿时长
14 weeks
期刊介绍: Frontiers in Pediatrics (Impact Factor 2.33) publishes rigorously peer-reviewed research broadly across the field, from basic to clinical research that meets ongoing challenges in pediatric patient care and child health. Field Chief Editors Arjan Te Pas at Leiden University and Michael L. Moritz at the Children''s Hospital of Pittsburgh are supported by an outstanding Editorial Board of international experts. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics, clinicians and the public worldwide. Frontiers in Pediatrics also features Research Topics, Frontiers special theme-focused issues managed by Guest Associate Editors, addressing important areas in pediatrics. In this fashion, Frontiers serves as an outlet to publish the broadest aspects of pediatrics in both basic and clinical research, including high-quality reviews, case reports, editorials and commentaries related to all aspects of pediatrics.
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