Application of Artificial Intelligence in Acute Ischemic Stroke: A Scoping Review.

IF 1.2 Q4 CLINICAL NEUROLOGY
Neurointervention Pub Date : 2024-03-01 Epub Date: 2025-02-18 DOI:10.5469/neuroint.2025.00052
JoonNyung Heo
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引用次数: 0

Abstract

Artificial intelligence (AI) is revolutionizing stroke care by enhancing diagnosis, treatment, and outcome prediction. This review examines 505 original studies on AI applications in ischemic stroke, categorized into outcome prediction, stroke risk prediction, diagnosis, etiology prediction, and complication and comorbidity prediction. Outcome prediction, the most explored category, includes studies predicting functional outcomes, mortality, and recurrence, often achieving high accuracy and outperforming traditional methods. Stroke risk prediction models effectively integrate clinical and imaging data, improving assessments of both first-time and recurrent stroke risks. Diagnostic tools, such as automated imaging analysis and lesion segmentation, streamline acute stroke workflows, while AI models for large vessel occlusion detection demonstrate clinical utility. Etiology prediction focuses on identifying causes such as atrial fibrillation or cancer-associated thrombi, using imaging and thrombus analysis. Complication and comorbidity prediction models address stroke-associated pneumonia and acute kidney injury, aiding in risk stratification and resource allocation. While significant advancements have been made, challenges such as limited validation, ethical considerations, and the need for better data collection persist. This review highlights the advancements in AI applications for addressing key challenges in stroke care, demonstrating its potential to enhance precision medicine and improve patient outcomes.

人工智能在急性缺血性脑卒中中的应用综述
人工智能(AI)通过加强诊断、治疗和结果预测,正在彻底改变中风护理。本文回顾了505项人工智能在缺血性卒中中的应用的原始研究,分为预后预测、卒中风险预测、诊断、病因预测、并发症和合并症预测。结果预测是探索最多的类别,包括预测功能结果、死亡率和复发率的研究,通常达到很高的准确性,优于传统方法。脑卒中风险预测模型有效地整合了临床和影像学数据,改善了首次和复发性脑卒中风险的评估。诊断工具,如自动成像分析和病变分割,简化了急性中风的工作流程,而用于大血管闭塞检测的人工智能模型显示了临床实用性。病因学预测的重点是识别原因,如心房颤动或癌症相关的血栓,使用成像和血栓分析。并发症和合并症预测模型解决卒中相关肺炎和急性肾损伤,有助于风险分层和资源分配。虽然取得了重大进展,但诸如有限的验证、伦理考虑以及需要更好的数据收集等挑战仍然存在。这篇综述强调了人工智能应用在解决中风治疗中的关键挑战方面取得的进展,展示了其在加强精准医疗和改善患者预后方面的潜力。
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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来源期刊
CiteScore
1.80
自引率
0.00%
发文量
34
审稿时长
12 weeks
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