Editorial – "Lung ultrasound and community-acquired pneumonia: from complementary tool to clinical game-changer"

IF 1.8 4区 医学 Q3 RESPIRATORY SYSTEM
Luigi Vetrugno , Damiano D’Ardes , Cristian Deana , Daniele Guerino Biasucci , Andrea Boccatonda
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引用次数: 0

Abstract

Community-acquired pneumonia (CAP) remains a major global health concern, traditionally diagnosed through chest X-ray (CXR). However, lung ultrasound (LUS) is increasingly emerging as a transformative tool in both diagnosis and management. Evidence from recent meta-analyses reveals that LUS outperforms CXR in sensitivity and rivals it in specificity, with pooled diagnostic accuracies exceeding 90 %. Unlike CXR, LUS is radiation-free, cost-effective, and ideal for bedside use, making it particularly valuable in emergency departments, intensive care units, pediatric and geriatric populations, and resource-limited settings. In children, LUS spares radiation exposure, while in elderly patients, contrast-enhanced ultrasound improves diagnostic specificity. Beyond diagnosis, LUS enables dynamic monitoring, prognostic scoring (e.g., LUS score, CPIS-PLUS), and supports treatment decisions such as ventilator weaning and antibiotic stewardship. Recent applications during the COVID-19 pandemic have demonstrated its effectiveness in triage and outcome prediction. Despite challenges such as operator dependency and reduced penetration for deep lesions, technological advances—particularly artificial intelligence and handheld devices—are mitigating these limitations. Deep learning models now interpret LUS images with high accuracy, enhancing reproducibility and accessibility for general practitioners. In low- and middle-income countries, LUS serves as a crucial diagnostic bridge, improving access and reducing reliance on costly imaging modalities. As training programs and standardized scoring systems evolve, LUS is becoming a frontline tool rather than a supplementary option. Its integration into clinical practice promises to reshape pneumonia care through rapid, accurate, and scalable diagnostics. In light of these advancements, LUS is not just complementary to radiography—it is redefining the diagnostic landscape of pneumonia.
社论-《肺部超声和社区获得性肺炎:从辅助工具到临床游戏规则改变者》
社区获得性肺炎(CAP)仍然是一个主要的全球卫生问题,传统上是通过胸部x射线(CXR)诊断的。然而,肺超声(LUS)越来越多地成为诊断和管理的变革性工具。来自最近荟萃分析的证据显示,LUS在敏感性上优于CXR,在特异性上优于CXR,合并诊断准确率超过90% %。与CXR不同,LUS无辐射,具有成本效益,是床边使用的理想选择,因此在急诊科、重症监护病房、儿科和老年人群以及资源有限的环境中特别有价值。在儿童中,LUS可以避免辐射暴露,而在老年患者中,造影增强超声可以提高诊断特异性。除了诊断之外,LUS还支持动态监测、预后评分(例如,LUS评分、CPIS-PLUS),并支持治疗决策,如呼吸机脱机和抗生素管理。最近在COVID-19大流行期间的应用已经证明了它在分类和结果预测方面的有效性。尽管存在操作员依赖性和深度病变穿透减少等挑战,但技术进步(尤其是人工智能和手持设备)正在缓解这些限制。深度学习模型现在以高精度解释LUS图像,增强了全科医生的再现性和可访问性。在低收入和中等收入国家,LUS是一个重要的诊断桥梁,改善了获取途径并减少了对昂贵成像方式的依赖。随着培训项目和标准化评分系统的发展,LUS正在成为一线工具,而不是补充选项。将其整合到临床实践中,有望通过快速、准确和可扩展的诊断重塑肺炎护理。鉴于这些进步,LUS不仅仅是对x线摄影的补充,它正在重新定义肺炎的诊断前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Respiratory Medicine and Research
Respiratory Medicine and Research RESPIRATORY SYSTEM-
CiteScore
2.70
自引率
0.00%
发文量
82
审稿时长
50 days
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