人工智能与产后出血。

IF 1.7
Sam J Mathewlynn, Mohammadreza Soltaninejad, Sally L Collins
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引用次数: 0

摘要

产后出血仍然是全世界孕产妇死亡和发病的一个重要原因,每年约有1 400万妇女受到影响,7万人因此死亡。尽管在卫生保健方面取得了进步,但PPH即使在发达国家也继续构成挑战。除了死亡率外,PPH还会导致各种不良后果和发病率。最近,人们对在医疗保健的许多领域使用人工智能(AI),包括机器学习和深度学习的兴趣激增。本文探讨了人工智能在解决PPH中的应用,包括预测建模和风险分层。一些研究在预测PPH方面显示了令人鼓舞的结果。然而,这些模型的外部验证是至关重要的,而且往往缺乏,障碍包括队列特征的差异和结果测量方法的变化。现有的大多数研究都是在资源充足的卫生保健环境中进行的,缺乏适用于资源有限的环境的模型,而资源有限的环境可以说是最大的需求。将子宫收缩指标和放射组学纳入预测模型为提高预测准确性提供了新的途径。除了风险预测,人工智能还在PPH管理的其他方面进行了探索,包括血液制品管理和使用可穿戴设备的早期检测。总之,尽管人工智能为PPH的预测和管理提供了令人兴奋的机会,但在模型验证、临床翻译和在不同医疗保健环境中的适用性等方面仍然存在挑战。需要进一步开展研究,特别是在低收入和中等收入国家开展研究,以充分发挥人工智能在解决PPH全球负担方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence and Postpartum Hemorrhage.

Postpartum hemorrhage (PPH) remains a significant contributor to maternal mortality and morbidity worldwide, with approximately 14 million women affected annually and 70,000 resulting deaths. Despite advances in health care, PPH continues to pose challenges even in developed settings. Apart from mortality, PPH leads to various adverse outcomes and morbidity. Recently, there has been a surge in interest in using artificial intelligence (AI), including machine learning and deep learning, across many areas of health care. This article explores the application of AI in tackling PPH, including predictive modeling and risk stratification. Some studies have shown promising results in predicting PPH. However, external validation of these models is crucial and frequently lacking, with barriers including differences in cohort characteristics and variations in outcome measurement methods. Most of the existing research has taken place in well-resourced health care settings, and there is a lack of models applicable to resource-limited settings where the need is arguably greatest. Incorporating uterine contractility metrics and radiomics into predictive models offers new avenues for enhancing prediction accuracy. Beyond risk prediction, AI has also been explored in other aspects of PPH management, including blood product management and early detection using wearable devices. In conclusion, while AI presents exciting opportunities for PPH prediction and management, challenges such as model validation, clinical translation, and applicability in diverse health care settings remain. Further research, particularly in low-and middle-income countries, is necessary to realize the full potential of AI for addressing the global burden of PPH.

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