Department of Neurological Surgery, Northwestern University Feinberg School of Medicine, Chicago, Illinois, USA.
Department of Neurosurgery, Jacobs School of Medicine and Biomedical Sciences, University at Buffalo, Buffalo, New York, USA; Department of Neurosurgery, Gates Vascular Institute at Kaleida Health, Buffalo, New York, USA.
World Neurosurg. 2022 Mar;159:207-220.e1. doi: 10.1016/j.wneu.2021.12.004. Epub 2021 Dec 8.
Optimal outcomes after large-vessel occlusion (LVO) stroke are highly dependent on prompt diagnosis, effective communication, and treatment, making LVO an attractive avenue for the application of artificial intelligence (AI), specifically machine learning (ML). Our objective is to conduct a systematic review to describe existing AI applications for LVO strokes, delineate its effectiveness, and identify areas for future AI applications in stroke treatment and prognostication.
A systematic review was conducted by searching the PubMed, Embase, and Scopus databases. After deduplication, studies were screened by title and abstract. Full-text studies were screened for final inclusion based on prespecified inclusion and exclusion criteria. Relevant data were extracted from each study.
Of 11,512 resultant articles, 40 were included. Of 30 studies with reported ML algorithms, the most commonly used ML algorithms were convolutional neural networks in 10 (33.3%), support vector machines in 10 (33.0%), and random forests in 9 (30.0%). Studies examining triage favored direct transport to a stroke center and predicted improved outcomes. ML techniques proved vastly accurate in identifying LVO on computed tomography. Applications of AI to patient selection for thrombectomy are lacking, although some studies determine individual patient eligibility for endovascular treatment with high accuracy. ML algorithms have reasonable accuracy in predicting clinical and angiographic outcomes and associated factors.
AI has shown promise in the diagnosis and triage of patients with acute stroke. However, the role of AI in the management and prognostication remains limited and warrants further research to help in decision support.
大血管闭塞(LVO)卒中后的最佳结果高度依赖于及时诊断、有效沟通和治疗,这使得 LVO 成为人工智能(AI),特别是机器学习(ML)应用的一个有吸引力的途径。我们的目标是进行系统评价,描述现有的用于 LVO 卒中的 AI 应用,阐明其有效性,并确定未来在卒中治疗和预后方面 AI 应用的领域。
通过搜索 PubMed、Embase 和 Scopus 数据库进行系统评价。去重后,通过标题和摘要筛选研究。根据预设的纳入和排除标准,对全文研究进行筛选,以确定最终纳入的研究。从每项研究中提取相关数据。
在 11512 篇结果文章中,有 40 篇被纳入。在 30 项报告了 ML 算法的研究中,最常用的 ML 算法是卷积神经网络(10 项,33.3%)、支持向量机(10 项,33.0%)和随机森林(9 项,30.0%)。研究表明,分诊中优先直接转运至卒中中心可预测更好的结局。ML 技术在识别 CT 上的 LVO 方面表现出极高的准确性。AI 在选择接受取栓治疗的患者方面的应用尚缺乏,但一些研究可以高度准确地确定患者是否有资格进行血管内治疗。ML 算法在预测临床和血管造影结局及相关因素方面具有合理的准确性。
AI 在急性卒中患者的诊断和分诊方面显示出了一定的前景。然而,AI 在管理和预后方面的作用仍然有限,需要进一步研究以帮助提供决策支持。