人工智能在胎儿生长限制管理中的应用综述。

IF 1.4 4区 医学 Q3 ACOUSTICS Journal of Clinical Ultrasound Pub Date : 2025-01-29 DOI:10.1002/jcu.23918
Ugo Maria Pierucci, Gabriele Tonni, Gloria Pelizzo, Irene Paraboschi, Heron Werner, Rodrigo Ruano
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引用次数: 0

摘要

本综述探讨了人工智能(AI)在产前护理中的整合,特别是在管理胎儿生长受限(FGR)并发症的妊娠方面。人工智能利用先进的机器学习算法和广泛的数据分析,为诊断和监测FGR提供了一种变革性的方法。使用人工智能的自动胎儿生物测定技术在识别胎儿结构方面具有显著的准确性,而分析多普勒指数和母体特征的预测模型提高了不良后果预测的可靠性。人工智能使FGR风险的早期发现和分层成为可能,促进了有针对性的监测策略和个性化的分娩计划,有可能改善新生儿结局。例如,研究表明,当人工智能工具与传统超声技术相结合时,检测胎盘功能不全相关异常的能力得到了增强。本综述还探讨了算法偏差、伦理考虑和数据标准化等挑战,强调了全球可及性和监管框架对确保公平实施的重要性。人工智能革新产前护理的潜力凸显了进一步临床验证和跨学科合作的迫切需要。
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Artificial Intelligence in Fetal Growth Restriction Management: A Narrative Review

This narrative review examines the integration of Artificial Intelligence (AI) in prenatal care, particularly in managing pregnancies complicated by Fetal Growth Restriction (FGR). AI provides a transformative approach to diagnosing and monitoring FGR by leveraging advanced machine-learning algorithms and extensive data analysis. Automated fetal biometry using AI has demonstrated significant precision in identifying fetal structures, while predictive models analyzing Doppler indices and maternal characteristics improve the reliability of adverse outcome predictions. AI has enabled early detection and stratification of FGR risk, facilitating targeted monitoring strategies and individualized delivery plans, potentially improving neonatal outcomes. For instance, studies have shown enhancements in detecting placental insufficiency-related abnormalities when AI tools are integrated with traditional ultrasound techniques. This review also explores challenges such as algorithm bias, ethical considerations, and data standardization, underscoring the importance of global accessibility and regulatory frameworks to ensure equitable implementation. The potential of AI to revolutionize prenatal care highlights the urgent need for further clinical validation and interdisciplinary collaboration.

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来源期刊
CiteScore
1.90
自引率
0.00%
发文量
248
审稿时长
6 months
期刊介绍: The Journal of Clinical Ultrasound (JCU) is an international journal dedicated to the worldwide dissemination of scientific information on diagnostic and therapeutic applications of medical sonography. The scope of the journal includes--but is not limited to--the following areas: sonography of the gastrointestinal tract, genitourinary tract, vascular system, nervous system, head and neck, chest, breast, musculoskeletal system, and other superficial structures; Doppler applications; obstetric and pediatric applications; and interventional sonography. Studies comparing sonography with other imaging modalities are encouraged, as are studies evaluating the economic impact of sonography. Also within the journal''s scope are innovations and improvements in instrumentation and examination techniques and the use of contrast agents. JCU publishes original research articles, case reports, pictorial essays, technical notes, and letters to the editor. The journal is also dedicated to being an educational resource for its readers, through the publication of review articles and various scientific contributions from members of the editorial board and other world-renowned experts in sonography.
期刊最新文献
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