Hassan Moustafa Said Taman Ahmed, Elhotiby Mahmoud Abdrabo Mahmoud, Shah Viraj, Rocha Henry, Rad Arian Arjomandi, Miller George, Malawana Johann
Musgrove Park Hospital, Somerset NHS Foundation Trust, Taunton, UK.
Lincoln County Hospital, United Lincolnshire Hospitals NHS Trust, Lincoln, UK.
Br J Hosp Med (Lond). 2025 Jun 25;86(6):1-21. doi: 10.12968/hmed.2024.0757. Epub 2025 Jun 5.
Pulmonary embolism (PE) is a life-threatening condition with significant diagnostic challenges due to high rates of missed or delayed detection. Computed tomography pulmonary angiography (CTPA) is the current standard for diagnosing PE, however, demand for imaging places strain on healthcare systems and increases error rates. This systematic review aims to assess the diagnostic accuracy and clinical applicability of artificial intelligence (AI)-based models for PE detection on CTPA, exploring their potential to enhance diagnostic reliability and efficiency across clinical settings. A systematic review was conducted in accordance with Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. Excerpta Medica Database (EMBASE), Medical Literature Analysis and Retrieval System Online (MEDLINE), Cochrane, PubMed, and Google Scholar were searched for original articles from inception to September 2024. Articles were included if they reported successful AI integration, whether partial or full, alongside CTPA scans for PE detection in patients. The literature search identified 919 articles, with 745 remaining after duplicate removal. Following rigorous screening and appraisal aligned with inclusion and exclusion criteria, 12 studies were included in the final analysis. A total of three primary AI modalities emerged: convolutional neural networks (CNNs), segmentation models, and natural language processing (NLP), collectively used in the analysis of 341,112 radiographic images. CNNs were the most frequently applied modality in this review. Models such as AdaBoost and EmbNet have demonstrated high sensitivity, with EmbNet achieving 88-90.9% per scan and reducing false positives to 0.45 per scan. AI shows significant promise as a diagnostic tool for identifying PE on CTPA scans, particularly when combined with other forms of clinical data. However, challenges remain, including ensuring generalisability, addressing potential bias, and conducting rigorous external validation. Variability in study methodologies and the lack of standardised reporting of key metrics complicate comparisons. Future research must focus on refining models, improving peripheral emboli detection, and validating performance across diverse settings to realise AI's potential fully.
肺栓塞(PE)是一种危及生命的疾病,由于漏诊或延迟检测率高,存在重大的诊断挑战。计算机断层扫描肺动脉造影(CTPA)是目前诊断PE的标准方法,然而,成像需求给医疗系统带来压力,并增加了错误率。本系统评价旨在评估基于人工智能(AI)的模型在CTPA上检测PE的诊断准确性和临床适用性,探讨其在不同临床环境中提高诊断可靠性和效率的潜力。根据系统评价和Meta分析的首选报告项目(PRISMA)指南进行了一项系统评价。检索了荷兰医学文摘数据库(EMBASE)、医学文献分析和联机检索系统(MEDLINE)、考克兰图书馆、PubMed和谷歌学术搜索,查找从创刊到2024年9月的原始文章。如果文章报告了成功整合AI(部分或全部)以及在患者中进行CTPA扫描检测PE的情况,则纳入研究。文献检索共识别出919篇文章,去除重复后剩余745篇。经过严格筛选和评估,符合纳入和排除标准的12项研究纳入最终分析。总共出现了三种主要的AI模式:卷积神经网络(CNN)、分割模型和自然语言处理(NLP),它们共同用于分析341,112张放射影像。CNN是本评价中最常用的模式。诸如AdaBoost和EmbNet等模型已显示出高灵敏度,EmbNet每次扫描的灵敏度达到88 - 90.9%,且每次扫描的假阳性率降至0.45。AI作为在CTPA扫描上识别PE的诊断工具显示出巨大前景,特别是与其他形式的临床数据相结合时。然而,挑战依然存在,包括确保通用性、解决潜在偏差以及进行严格的外部验证。研究方法的差异以及关键指标缺乏标准化报告使比较变得复杂。未来的研究必须专注于优化模型、改善外周栓子检测以及在不同环境中验证性能,以充分实现AI的潜力。