Campbelltown Hospital, South Western Sydney Local Health District, Sydney, Australia; Western Sydney University, Sydney, Australia; University of Sydney, Sydney, Australia.
Campbelltown Hospital, South Western Sydney Local Health District, Sydney, Australia; Ingham Institute for Applied Medical Research, SWERI (South Western Emergency Research Institute), Australia.
Pregnancy Hypertens. 2024 Sep;37:101137. doi: 10.1016/j.preghy.2024.101137. Epub 2024 Jun 13.
The value of machine learning capacity in maternal health, and in particular prediction of preeclampsia will only be realised when there are high quality clinical data provided, representative populations included, different health systems and models of care compared, and a culture of rapid use and application of real-time data and outcomes. This review has been undertaken to provide an overview of the language, and early results of machine learning in a pregnancy and preeclampsia context. Clinicians of all backgrounds are encouraged to learn the language of Machine Learning (ML) and Artificial intelligence (AI) to better understand their potential and utility to improve outcomes for women and their families. This review will outline some definitions and features of ML that will benefit clinician's knowledge in the preeclampsia discipline, and also outline some of the future possibilities for preeclampsia-focussed clinicians via understanding AI. It will further explore the criticality of defining the risk, and outcome being determined.
机器学习在孕产妇健康中的价值,特别是预测子痫前期,只有在提供高质量的临床数据、纳入代表性人群、比较不同的卫生系统和护理模式,并培养快速使用和应用实时数据和结果的文化时,才能实现。本综述旨在概述机器学习在妊娠和子痫前期背景下的语言和早期结果。鼓励所有背景的临床医生学习机器学习 (ML) 和人工智能 (AI) 的语言,以更好地了解它们的潜力和效用,从而改善妇女及其家庭的结局。本综述将概述一些机器学习的定义和特征,这些特征将有助于临床医生在子痫前期领域的知识,还将通过了解人工智能,概述子痫前期临床医生未来的一些可能性。它将进一步探讨定义风险和确定结果的重要性。