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Screening for Lung Cancer: US Preventive Services Task Force Recommendation Statement.肺癌筛查:美国预防服务工作组推荐声明。
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COVID-19 and early-stage lung cancer both featuring ground-glass opacities: a propensity score-matched study.新型冠状病毒肺炎和早期肺癌均表现为磨玻璃影:一项倾向评分匹配研究
Transl Lung Cancer Res. 2020 Aug;9(4):1516-1527. doi: 10.21037/tlcr-20-892.
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Chest x-ray findings and temporal lung changes in patients with COVID-19 pneumonia.COVID-19 肺炎患者的胸部 X 射线表现和肺部时相变化。
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Follow-up study of the pulmonary function and related physiological characteristics of COVID-19 survivors three months after recovery.新冠康复者康复三个月后肺功能及相关生理特征的随访研究
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COVID-19 pneumonia: Diagnostic and prognostic role of CT based on a retrospective analysis of 214 consecutive patients from Paris, France.COVID-19 肺炎:基于法国巴黎 214 例连续患者的回顾性分析的 CT 诊断和预后作用。
Eur J Radiol. 2020 Oct;131:109209. doi: 10.1016/j.ejrad.2020.109209. Epub 2020 Aug 8.
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Development and clinical application of deep learning model for lung nodules screening on CT images.深度学习模型在 CT 图像肺结节筛查中的开发与临床应用。
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Neoadjuvant atezolizumab and chemotherapy in patients with resectable non-small-cell lung cancer: an open-label, multicentre, single-arm, phase 2 trial.可切除非小细胞肺癌患者新辅助阿替利珠单抗和化疗:一项开放标签、多中心、单臂、2 期临床试验。
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人工智能助力中低收入国家通过偶然发现结节实现肺癌早期诊断——在新冠疫情期间加速发展且将持续存在。

Artificial intelligence for early diagnosis of lung cancer through incidental nodule detection in low- and middle-income countries-acceleration during the COVID-19 pandemic but here to stay.

作者信息

Goncalves Susana, Fong Pei-Chieh, Blokhina Mariya

机构信息

Medical Director, AstraZeneca LatAm Area Nicolás de Vedia 3616, 8° Piso (C1430DAH) CABA, República Argentina.

Head of Oncology, International Medical AstraZeneca 21st Fl., 207, Tun Hwa South Road, Sec. 2, Taipei 10602, Taiwan.

出版信息

Am J Cancer Res. 2022 Jan 15;12(1):1-16. eCollection 2022.

PMID:35141002
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8822269/
Abstract

Although the coronavirus disease of 2019 (COVID-19) pandemic had profound pernicious effects, it revealed deficiencies in health systems, particularly among low- and middle-income countries (LMICs). With increasing uncertainty in healthcare, existing unmet needs such as poor outcomes of lung cancer (LC) patients in LMICs, mainly due to late stages at diagnosis, have been challenging-necessitating a shift in focus for judicious health resource utilization. Leveraging artificial intelligence (AI) for screening large volumes of pulmonary images performed for noncancerous reasons, such as health checks, immigration, tuberculosis screening, or other lung conditions, including but not limited to COVID-19, can facilitate easy and early identification of incidental pulmonary nodules (IPNs), which otherwise could have been missed. AI can review every chest X-ray or computed tomography scan through a trained pair of eyes, thus strengthening the infrastructure and enhancing capabilities of manpower for interpreting images in LMICs for streamlining accurate and early identification of IPNs. AI can be a catalyst for driving LC screening with enhanced efficiency, particularly in primary care settings, for timely referral and adequate management of coincidental IPN. AI can facilitate shift in the stage of LC diagnosis for improving survival, thus fostering optimal health-resource utilization and sustainable healthcare systems resilient to crisis. This article highlights the challenges for organized LC screening in LMICs and describes unique opportunities for leveraging AI. We present pilot initiatives from Asia, Latin America, and Russia illustrating AI-supported IPN identification from routine imaging to facilitate early diagnosis of LC at a potentially curable stage.

摘要

尽管2019年冠状病毒病(COVID-19)大流行产生了深远的有害影响,但它也揭示了卫生系统的不足,尤其是在低收入和中等收入国家(LMICs)。随着医疗保健领域不确定性的增加,LMICs中肺癌(LC)患者的现有未满足需求,主要是由于诊断时处于晚期导致的不良预后,一直具有挑战性,这就需要转变重点以明智地利用卫生资源。利用人工智能(AI)对因非癌症原因进行的大量肺部图像进行筛查,如健康检查、移民、结核病筛查或其他肺部疾病,包括但不限于COVID-19,可以促进偶然肺结节(IPN)的轻松早期识别,否则这些结节可能会被漏诊。AI可以通过经过训练的一双眼睛审查每一张胸部X光片或计算机断层扫描,从而加强基础设施,并提高LMICs中解读图像的人力能力,以简化IPN的准确早期识别。AI可以成为提高效率推动LC筛查的催化剂,特别是在初级保健环境中,以便及时转诊和妥善管理偶然发现的IPN。AI可以促进LC诊断阶段的转变以提高生存率,从而促进最佳卫生资源利用和建立对危机具有韧性的可持续医疗系统。本文强调了LMICs中有组织的LC筛查面临的挑战,并描述了利用AI的独特机会。我们展示了来自亚洲、拉丁美洲和俄罗斯的试点项目,这些项目说明了从常规成像中利用AI支持识别IPN,以便在潜在可治愈阶段早期诊断LC。