Current Applications of Artificial Intelligence in the Neonatal Intensive Care Unit

Dimitrios Rallis, Maria S Baltogianni, K. Kapetaniou, V. Giapros
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Abstract

Artificial intelligence (AI) refers to computer algorithms that replicate the cognitive function of humans. Machine learning is widely applicable using structured and unstructured data, while deep learning is derived from the neural networks of the human brain that process and interpret information. During the last decades, AI has been introduced in several aspects of healthcare. In this review, we aim to present the current application of AI in the neonatal intensive care unit. AI-based models have been applied to neurocritical care, including automated seizure detection algorithms and electroencephalogram-based hypoxic-ischemic encephalopathy severity grading systems. Moreover, AI models evaluating magnetic resonance imaging contributed to the progress of the evaluation of the neonatal developing brain and the understanding of how prenatal events affect both structural and functional network topologies. Furthermore, AI algorithms have been applied to predict the development of bronchopulmonary dysplasia and assess the extubation readiness of preterm neonates. Automated models have been also used for the detection of retinopathy of prematurity and the need for treatment. Among others, AI algorithms have been utilized for the detection of sepsis, the need for patent ductus arteriosus treatment, the evaluation of jaundice, and the detection of gastrointestinal morbidities. Finally, AI prediction models have been constructed for the evaluation of the neurodevelopmental outcome and the overall mortality of neonates. Although the application of AI in neonatology is encouraging, further research in AI models is warranted in the future including retraining clinical trials, validating the outcomes, and addressing serious ethics issues.
人工智能在新生儿重症监护室中的应用现状
人工智能(AI)是指复制人类认知功能的计算机算法。机器学习可广泛应用于结构化和非结构化数据,而深度学习则源自人脑处理和解释信息的神经网络。在过去几十年中,人工智能已被引入医疗保健的多个方面。在这篇综述中,我们旨在介绍目前人工智能在新生儿重症监护病房中的应用。基于人工智能的模型已被应用于神经重症监护,包括癫痫发作自动检测算法和基于脑电图的缺氧缺血性脑病严重程度分级系统。此外,评估磁共振成像的人工智能模型促进了新生儿大脑发育评估的进展,以及对产前事件如何影响结构和功能网络拓扑的理解。此外,人工智能算法还被应用于预测支气管肺发育不良的发展和评估早产新生儿的拔管准备情况。自动模型还被用于检测早产儿视网膜病变和治疗需求。此外,人工智能算法还被用于检测败血症、动脉导管未闭治疗需求、黄疸评估和胃肠道疾病检测。最后,还建立了人工智能预测模型,用于评估新生儿的神经发育结果和总体死亡率。尽管人工智能在新生儿学中的应用令人鼓舞,但未来仍需对人工智能模型进行进一步研究,包括重新训练临床试验、验证结果以及解决严重的伦理问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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