McAdams Ryan M, Kaur Ravneet, Sun Yao, Bindra Harlieen, Cho Su Jin, Singh Harpreet
Department of Pediatrics, University of Wisconsin School of Medicine and Public Health, Madison, WI, USA.
Child Health Imprints (CHIL) USA Inc, Madison, WI, USA.
J Perinatol. 2022 Dec;42(12):1561-1575. doi: 10.1038/s41372-022-01392-8. Epub 2022 May 13.
Advances in technology, data availability, and analytics have helped improve quality of care in the neonatal intensive care unit.
To provide an in-depth review of artificial intelligence (AI) and machine learning techniques being utilized to predict neonatal outcomes.
The PRISMA protocol was followed that considered articles from established digital repositories. Included articles were categorized based on predictions of: (a) major neonatal morbidities such as sepsis, bronchopulmonary dysplasia, intraventricular hemorrhage, necrotizing enterocolitis, and retinopathy of prematurity; (b) mortality; and (c) length of stay.
A total of 366 studies were considered; 68 studies were eligible for inclusion in the review. The current set of predictor models are primarily built on supervised learning and mostly used regression models built on retrospective data.
With the availability of EMR data and data-sharing of NICU outcomes across neonatal research networks, machine learning algorithms have shown breakthrough performance in predicting neonatal disease.
技术、数据可用性和分析方面的进展有助于提高新生儿重症监护病房的护理质量。
深入综述用于预测新生儿结局的人工智能(AI)和机器学习技术。
遵循PRISMA协议,考虑来自既定数字存储库的文章。纳入的文章根据以下预测进行分类:(a)主要的新生儿疾病,如败血症、支气管肺发育不良、脑室内出血、坏死性小肠结肠炎和早产儿视网膜病变;(b)死亡率;以及(c)住院时间。
共考虑了366项研究;68项研究符合纳入综述的条件。当前的预测模型集主要基于监督学习构建,并且大多使用基于回顾性数据构建的回归模型。
随着电子病历数据的可用性以及新生儿研究网络中新生儿重症监护病房结局的数据共享,机器学习算法在预测新生儿疾病方面已显示出突破性表现。