Quirk Joseph, Mac Donnchadha Conor, Vaantaja Jonathan, Mitchell Cameron, Marchi Nicolas, AlSaleh Jasmine, Dalton Bryan
Trinity College Dublin School of Medicine, Trinity Biomedical Sciences Institute, 152-160 Pearse Street, Dublin 2, D02R590, Ireland.
St James's Hospital, James's Street, Dublin 8, Dublin, D08 NHY1, Ireland.
BJR Open. 2024 Oct 15;6(1):tzae035. doi: 10.1093/bjro/tzae035. eCollection 2024 Jan.
The aim of this study was to systematically review the literature to assess the application of AI-based interventions in lung cancer screening, and its future implications.
Relevant published literature was screened using PRISMA guidelines across three databases: PubMed, Scopus, and Web of Science. Search terms for article selection included "artificial intelligence," "radiology," "lung cancer," "screening," and "diagnostic." Included studies evaluated the use of AI in lung cancer screening and diagnosis.
Twelve studies met the inclusion criteria. All studies concerned the role of AI in lung cancer screening and diagnosis. The AIs demonstrated promising ability across four domains: (1) detection, (2) characterization and differentiation, (3) augmentation of the work of human radiologists, (4) AI implementation of the LUNG-RADS framework and its ability to augment this framework. All studies reported positive results, demonstrating in some cases AI's ability to perform these tasks to a level close to that of human radiologists.
The AI systems included in this review were found to be effective screening tools for lung cancer. These findings hold important implications for the future use of AI in lung cancer screening programmes as they may see use as an adjunctive tool for lung cancer screening that would aid in making early and accurate diagnosis.
AI-based systems appear to be powerful tools that can assist radiologists with lung cancer screening and diagnosis.
本研究旨在系统回顾文献,以评估基于人工智能的干预措施在肺癌筛查中的应用及其未来影响。
根据PRISMA指南,在三个数据库(PubMed、Scopus和Web of Science)中筛选相关的已发表文献。文章选择的检索词包括“人工智能”“放射学”“肺癌”“筛查”和“诊断”。纳入的研究评估了人工智能在肺癌筛查和诊断中的应用。
12项研究符合纳入标准。所有研究均涉及人工智能在肺癌筛查和诊断中的作用。人工智能在四个领域展现出了良好的能力:(1)检测;(2)特征描述与鉴别;(3)辅助放射科医生的工作;(4)人工智能对LUNG-RADS框架的实施及其增强该框架的能力。所有研究均报告了积极结果,在某些情况下证明了人工智能执行这些任务的能力接近放射科医生。
本综述中纳入的人工智能系统被发现是有效的肺癌筛查工具。这些发现对人工智能未来在肺癌筛查项目中的应用具有重要意义,因为它们可能会被用作肺癌筛查的辅助工具,有助于进行早期准确诊断。
基于人工智能的系统似乎是能够协助放射科医生进行肺癌筛查和诊断的强大工具。