将人工智能集成到全球COPD诊断中:一条前进的道路。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Nicole M Robertson, Connor S Centner, Trishul Siddharthan
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引用次数: 0

摘要

人工智能(AI)能力的进步为医学的新前沿铺平了道路,医学有能力在全球范围内减轻COPD的负担。人工智能可以减少医疗保健相关费用,同时可能提高诊断特异性,改善COPD早期诊断、监测COPD进展和后续管理。我们评估了人工智能如何在全球范围内整合到COPD诊断中,并在资源受限的环境中发挥作用。人工智能已被探索通过听诊、肺功能测试(PFT)和影像学来诊断和分型COPD。临床医生与人工智能的合作提高了COPD诊断的性能,并突出了临床决策在人工智能集成中的重要作用。同样,在基于人群的大型队列中,计算机断层扫描(CT)成像的AI分析提高了COPD的诊断能力、严重程度分类和预后预测。此外,与单独的每种模式相比,CT成像、人口统计数据和肺活量测定的多模式方法在机器学习预测COPD进展方面都有所改进。先前的研究主要在高收入国家进行,这些国家可能缺乏向全球人口转移的能力。人工智能是世界卫生组织的优先事项,有可能减少中低收入国家的医疗保健障碍。我们建议临床医生和人工智能支持的COPD多模式诊断方法之间的临床合作是实现这一目标的一步。我们相信,CT成像、肺活量测定、生物标志物和痰分析的相互作用可能会在不同的环境中提供独特的见解,为临床决策提供基础,包括对诊断为COPD的患者进行早期干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating Artificial Intelligence in the Diagnosis of COPD Globally: A Way Forward.

The advancement of artificial intelligence (AI) capabilities has paved the way for a new frontier in medicine, which has the capability to reduce the burden of COPD globally. AI may reduce health care-associated expenses while potentially increasing diagnostic specificity, improving access to early COPD diagnosis, and monitoring COPD progression and subsequent disease management. We evaluated how AI can be integrated into COPD diagnosing globally and leveraged in resource-constrained settings.AI has been explored in diagnosing and phenotyping COPD through auscultation, pulmonary function testing, and imaging. Clinician collaboration with AI has increased the performance of COPD diagnosing and highlights the important role of clinical decision-making in AI integration. Likewise, AI analysis of computer tomography (CT) imaging in large population-based cohorts has increased diagnostic ability, severity classification, and prediction of outcomes related to COPD. Moreover, a multimodality approach with CT imaging, demographic data, and spirometry has been shown to improve machine learning predictions of the progression to COPD compared to each modality alone. Prior research has primarily been conducted in high-income country settings, which may lack generalization to a global population. AI is a World Health Organization priority with the potential to reduce health care barriers in low- and middle-income countries. We recommend a collaboration between clinicians and an AI-supported multimodal approach to COPD diagnosis as a step towards achieving this goal. We believe the interplay of CT imaging, spirometry, biomarkers, and sputum analysis may provide unique insights across settings that could provide a basis for clinical decision-making that includes early intervention for those diagnosed with COPD.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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