Loftus Tyler J, Balch Jeremy A, Abbott Kenneth L, Hu Die, Ruppert Matthew M, Shickel Benjamin, Ozrazgat-Baslanti Tezcan, Efron Philip A, Tighe Patrick J, Hogan William R, Rashidi Parisa, Cardel Michelle I, Upchurch Gilbert R, Bihorac Azra
University of Florida Intelligent Clinical Care Center, Gainesville, Florida, United States of America.
Department of Surgery, University of Florida Health, Gainesville, Florida, United States of America.
PLOS Digit Health. 2024 Aug 23;3(8):e0000561. doi: 10.1371/journal.pdig.0000561. eCollection 2024 Aug.
The degree to which artificial intelligence healthcare research is informed by data and stakeholders from community settings has not been previously described. As communities are the principal location of healthcare delivery, engaging them could represent an important opportunity to improve scientific quality. This scoping review systematically maps what is known and unknown about community-engaged artificial intelligence research and identifies opportunities to optimize the generalizability of these applications through involvement of community stakeholders and data throughout model development, validation, and implementation. Embase, PubMed, and MEDLINE databases were searched for articles describing artificial intelligence or machine learning healthcare applications with community involvement in model development, validation, or implementation. Model architecture and performance, the nature of community engagement, and barriers or facilitators to community engagement were reported according to PRISMA extension for Scoping Reviews guidelines. Of approximately 10,880 articles describing artificial intelligence healthcare applications, 21 (0.2%) described community involvement. All articles derived data from community settings, most commonly by leveraging existing datasets and sources that included community subjects, and often bolstered by internet-based data acquisition and subject recruitment. Only one article described inclusion of community stakeholders in designing an application-a natural language processing model that detected cases of likely child abuse with 90% accuracy using harmonized electronic health record notes from both hospital and community practice settings. The primary barrier to including community-derived data was small sample sizes, which may have affected 11 of the 21 studies (53%), introducing substantial risk for overfitting that threatens generalizability. Community engagement in artificial intelligence healthcare application development, validation, or implementation is rare. As healthcare delivery occurs primarily in community settings, investigators should consider engaging community stakeholders in user-centered design, usability, and clinical implementation studies to optimize generalizability.
人工智能医疗保健研究受社区环境中的数据和利益相关者影响的程度此前尚未得到描述。由于社区是医疗保健服务的主要场所,让他们参与进来可能是提高科学质量的重要机会。本范围综述系统地梳理了关于社区参与的人工智能研究的已知和未知情况,并确定了通过在模型开发、验证和实施的整个过程中让社区利益相关者和数据参与进来,优化这些应用的可推广性的机会。我们在Embase、PubMed和MEDLINE数据库中搜索了描述人工智能或机器学习医疗保健应用且社区参与模型开发、验证或实施的文章。根据《系统综述和荟萃分析扩展版首选报告项目》(PRISMA)的范围综述指南,报告了模型架构和性能、社区参与的性质以及社区参与的障碍或促进因素。在大约10880篇描述人工智能医疗保健应用的文章中,有21篇(0.2%)描述了社区参与情况。所有文章的数据均来自社区环境,最常见的是通过利用现有数据集和包含社区受试者的来源,并且通常借助基于互联网的数据采集和受试者招募来支持。只有一篇文章描述了在设计应用程序时纳入社区利益相关者,这是一个自然语言处理模型,使用来自医院和社区实践环境的统一电子健康记录笔记,以90%的准确率检测可能的虐待儿童案件。纳入社区衍生数据的主要障碍是样本量小,这可能影响了21项研究中的11项(53%),带来了过度拟合的重大风险,威胁到可推广性。社区参与人工智能医疗保健应用的开发、验证或实施的情况很少见。由于医疗保健服务主要在社区环境中进行,研究人员应考虑让社区利益相关者参与以用户为中心的设计、可用性和临床实施研究,以优化可推广性。