Aleksandra Szymczyk, Robert Krion, Klaudia Krzyzaniak, Dawid Lubian, Mariusz Sieminski
Department of Emergency Medicine, Medical University of Gdansk, Smoluchowskiego 17, 80-214 Gdansk, Poland.
Arch Acad Emerg Med. 2024 Jan 27;12(1):e22. doi: 10.22037/aaem.v12i1.2110. eCollection 2024.
The burgeoning burden on emergency departments is a global challenge that we have been confronting for many years. Emerging artificial intelligence (AI)-based solutions may constitute a critical component in the optimization of these units. This systematic review was conducted to thoroughly examine and summarize the currently available AI solutions, assess potential benefits from their implementation, and identify anticipated directions of further development in this fascinating and rapidly evolving field.
This systematic review utilized data compiled from three key scientific databases: PubMed (2045 publications), Scopus (877 publications), and Web of Science (2495 publications). After meticulous removal of duplicates, we conducted a detailed analysis of 2052 articles, including 147 full-text papers. From these, we selected 51 of the most pertinent and representative publications for the review.
Overall the present research indicates that due to high accuracy and sensitivity of machine learning (ML) models it's reasonable to use AI in support of doctors as it can show them the potential diagnosis, which could save time and resources. However, AI-generated diagnoses should be verified by a doctor as AI is not infallible.
Currently available AI algorithms are capable of analysing complex medical data with unprecedented precision and speed. Despite AI's vast potential, it is still a nascent technology that is often perceived as complicated and challenging to implement. We propose that a pivotal point in effectively harnessing this technology is the close collaboration between medical professionals and AI experts. Future research should focus on further refining AI algorithms, performing comprehensive validation, and introducing suitable legal regulations and standard procedures, thereby fully leveraging the potential of AI to enhance the quality and efficiency of healthcare delivery.
急诊科日益增加的负担是我们多年来一直面临的全球性挑战。新兴的基于人工智能(AI)的解决方案可能是优化这些科室的关键组成部分。本系统评价旨在全面审视和总结当前可用的人工智能解决方案,评估其实施可能带来的益处,并确定这一引人入胜且快速发展领域的未来发展方向。
本系统评价利用了从三个关键科学数据库收集的数据:PubMed(2045篇出版物)、Scopus(877篇出版物)和Web of Science(2495篇出版物)。在仔细去除重复项后,我们对2052篇文章进行了详细分析,其中包括147篇全文论文。从中,我们选择了51篇最相关且最具代表性的出版物进行综述。
总体而言,目前的研究表明,由于机器学习(ML)模型具有较高的准确性和敏感性,使用人工智能支持医生是合理的,因为它可以向医生展示潜在的诊断结果,从而节省时间和资源。然而,人工智能生成的诊断结果应由医生进行核实,因为人工智能并非绝对可靠。
目前可用的人工智能算法能够以前所未有的精度和速度分析复杂的医疗数据。尽管人工智能具有巨大潜力,但它仍然是一项新兴技术,通常被认为实施起来复杂且具有挑战性。我们建议,有效利用这项技术的关键在于医学专业人员与人工智能专家之间的密切合作。未来的研究应专注于进一步优化人工智能算法、进行全面验证以及引入合适的法律法规和标准程序,从而充分发挥人工智能的潜力,提高医疗服务的质量和效率。