Kyung Ah Kim, Hakseung Kim, Eun Jin Ha, Byung C Yoon, Dong-Joo Kim
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引用次数: 0
Abstract
In neurointensive care units (NICUs), particularly in cases involving traumatic brain injury (TBI), swift and accurate decision-making is critical because of rapidly changing patient conditions and the risk of secondary brain injury. The use of artificial intelligence (AI) in NICU can enhance clinical decision support and provide valuable assistance in these complex scenarios. This article aims to provide a comprehensive review of the current status and future prospects of AI utilization in the NICU, along with the challenges that must be overcome to realize this. Presently, the primary application of AI in NICU is outcome prediction through the analysis of preadmission and high-resolution data during admission. Recent applications include augmented neuromonitoring via signal quality control and real-time event prediction. In addition, AI can integrate data gathered from various measures and support minimally invasive neuromonitoring to increase patient safety. However, despite the recent surge in AI adoption within the NICU, the majority of AI applications have been limited to simple classification tasks, thus leaving the true potential of AI largely untapped. Emerging AI technologies, such as generalist medical AI and digital twins, harbor immense potential for enhancing advanced neurocritical care through broader AI applications. If challenges such as acquiring high-quality data and ethical issues are overcome, these new AI technologies can be clinically utilized in the actual NICU environment. Emphasizing the need for continuous research and development to maximize the potential of AI in the NICU, we anticipate that this will further enhance the efficiency and accuracy of TBI treatment within the NICU.
在神经重症监护病房(NICU),尤其是在涉及创伤性脑损伤(TBI)的病例中,由于患者病情瞬息万变,且存在继发性脑损伤的风险,因此迅速而准确的决策至关重要。在 NICU 中使用人工智能 (AI) 可以增强临床决策支持,并在这些复杂的情况下提供有价值的帮助。本文旨在全面回顾人工智能在新生儿重症监护室的应用现状和未来前景,以及实现这一目标必须克服的挑战。目前,人工智能在新生儿重症监护室的主要应用是通过分析入院前和入院期间的高分辨率数据进行结果预测。最近的应用包括通过信号质量控制和实时事件预测增强神经监测。此外,人工智能还能整合从各种措施中收集的数据,支持微创神经监测,以提高患者的安全性。然而,尽管最近人工智能在新生儿重症监护室的应用激增,但大多数人工智能应用仅限于简单的分类任务,因此人工智能的真正潜力在很大程度上尚未得到开发。新兴的人工智能技术,如通用医疗人工智能和数字双胞胎,蕴藏着通过更广泛的人工智能应用来提高高级神经重症护理的巨大潜力。如果能克服获取高质量数据和伦理问题等挑战,这些新的人工智能技术就能在重症监护室的实际环境中得到临床应用。我们强调需要不断研究和开发,以最大限度地发挥人工智能在新生儿重症监护室的潜力,我们预计这将进一步提高新生儿重症监护室内创伤性脑损伤治疗的效率和准确性。
期刊介绍:
The Journal of Korean Neurosurgical Society (J Korean Neurosurg Soc) is the official journal of the Korean Neurosurgical Society, and published bimonthly (1st day of January, March, May, July, September, and November). It launched in October 31, 1972 with Volume 1 and Number 1. J Korean Neurosurg Soc aims to allow neurosurgeons from around the world to enrich their knowledge of patient management, education, and clinical or experimental research, and hence their professionalism. This journal publishes Laboratory Investigations, Clinical Articles, Review Articles, Case Reports, Technical Notes, and Letters to the Editor. Our field of interest involves clinical neurosurgery (cerebrovascular disease, neuro-oncology, skull base neurosurgery, spine, pediatric neurosurgery, functional neurosurgery, epilepsy, neuro-trauma, and peripheral nerve disease) and laboratory work in neuroscience.