人工智能在磁共振成像诊断脑血管疾病中的应用综述

iRadiology Pub Date : 2024-11-11 DOI:10.1002/ird3.105
Yituo Wang, Zeru Zhang, Ying Peng, Silu Chen, Shuai Zhou, Jiqiang Liu, Song Gao, Guangming Zhu, Cong Han, Bing Wu
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引用次数: 0

摘要

由于人工智能(AI)的应用日益广泛,放射学领域正在发生革命性的变化。本文综述了人工智能在脑血管疾病(cvd)磁共振成像中的技术方法和临床应用。采用了系统评价和meta分析扩展范围评价的首选报告项目,并评估了2018年1月1日至2023年12月31日在PubMed和Cochrane数据库中列出的文章。总共有67篇文章符合资格标准。我们获得了该领域的总体概况,包括病变类型、样本量、数据来源和数据库,并发现近一半的研究使用多序列磁共振作为输入。经典机器学习和深度学习都得到了广泛的应用。评估指标根据分类、检测、分割、估计和生成五个主要算法任务而变化。交叉验证主要用于只有三分之一的纳入研究使用外部验证。我们还说明了心血管疾病研究的关键问题,并对其人工智能解决方案的临床应用进行了评分。尽管大多数注意力都集中在提高人工智能模型的性能上,但这一范围审查提供了关于算法的可用性、外部验证的可靠性和评估指标的一致性的信息,并可能促进提高临床适用性和接受度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Artificial intelligence in the diagnosis of cerebrovascular diseases using magnetic resonance imaging: A scoping review

Artificial intelligence in the diagnosis of cerebrovascular diseases using magnetic resonance imaging: A scoping review

The field of radiology is currently undergoing revolutionary changes owing to the increasing application of artificial intelligence (AI). This scoping review identifies and summarizes the technical methods and clinical applications of AI applied to magnetic resonance imaging of cerebrovascular diseases (CVDs). Preferred Reporting Items for Systematic reviews and Meta-Analyses extension for Scoping Reviews was adopted and articles listed in PubMed and Cochrane databases from January 1, 2018 to December 31, 2023, were assessed. In total, 67 articles met the eligibility criteria. We obtained a general overview of the field, including lesion types, sample sizes, data sources, and databases and found that nearly half of the studies used multisequence magnetic resonance as the input. Both classical machine learning and deep learning were widely used. The evaluation metrics varied according to the five main algorithm tasks of classification, detection, segmentation, estimation, and generation. Cross-validation was primarily used with only one third of the included studies using external validation. We also illustrate the key questions of the CVD research studies and grade the clinical utility of their AI solutions. Although most attention is devoted to improving the performance of AI models, this scoping review provides information on the availability of algorithms, reliability of external validations, and consistency of evaluation metrics and may facilitate improved clinical applicability and acceptance.

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