College of Nursing, Washington State University, Spokane, Washington, United States.
IREACH: Institute for Research and Education to Advance Community Health, Washington State University, Seattle, Washington, United States.
Am J Physiol Heart Circ Physiol. 2024 Aug 1;327(2):H417-H432. doi: 10.1152/ajpheart.00149.2024. Epub 2024 Jun 7.
The maternal cardiovascular system undergoes functional and structural adaptations during pregnancy and postpartum to support increased metabolic demands of offspring and placental growth, labor, and delivery, as well as recovery from childbirth. Thus, pregnancy imposes physiological stress upon the maternal cardiovascular system, and in the absence of an appropriate response it imparts potential risks for cardiovascular complications and adverse outcomes. The proportion of pregnancy-related maternal deaths from cardiovascular events has been steadily increasing, contributing to high rates of maternal mortality. Despite advances in cardiovascular physiology research, there is still no comprehensive understanding of maternal cardiovascular adaptations in healthy pregnancies. Furthermore, current approaches for the prognosis of cardiovascular complications during pregnancy are limited. Machine learning (ML) offers new and effective tools for investigating mechanisms involved in pregnancy-related cardiovascular complications as well as the development of potential therapies. The main goal of this review is to summarize existing research that uses ML to understand mechanisms of cardiovascular physiology during pregnancy and develop prediction models for clinical application in pregnant patients. We also provide an overview of ML platforms that can be used to comprehensively understand cardiovascular adaptations to pregnancy and discuss the interpretability of ML outcomes, the consequences of model bias, and the importance of ethical consideration in ML use.
母体心血管系统在妊娠和产后会发生功能和结构上的适应性改变,以支持后代和胎盘生长、分娩以及产后恢复所需的代谢需求增加。因此,妊娠会给母体心血管系统带来生理压力,如果没有适当的反应,就会带来心血管并发症和不良后果的潜在风险。因心血管事件导致的与妊娠相关的孕产妇死亡比例一直在稳步上升,导致孕产妇死亡率居高不下。尽管心血管生理学研究取得了进展,但对健康妊娠中母体心血管适应性仍缺乏全面的了解。此外,目前预测妊娠期间心血管并发症的方法也很有限。机器学习 (ML) 为研究与妊娠相关的心血管并发症相关的机制以及开发潜在的治疗方法提供了新的、有效的工具。本综述的主要目的是总结现有的使用 ML 来理解妊娠期间心血管生理学机制并为孕妇临床应用开发预测模型的研究。我们还概述了可用于全面了解妊娠对心血管适应性的 ML 平台,并讨论了 ML 结果的可解释性、模型偏差的后果以及在 ML 使用中考虑伦理的重要性。