Computed tomography in ARDS, from morphological insights to AI-powered multi-modal analysis: a narrative review.

IF 4.7 2区 医学 Q1 CRITICAL CARE MEDICINE
Zirui Xu, Yongran Wu, Azhen Wang, You Shang, Le Yang, Xiaojing Zou
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Abstract

Background: Acute respiratory distress syndrome (ARDS) is a critical clinical condition characterized by acute respiratory failure and high mortality. It poses considerable challenges in both diagnosis and management. Imaging constitutes a central element of the conceptual framework for ARDS, with computed tomography (CT) being an essential technical tool for studying the morphological and pathological mechanisms of lung tissue in ARDS.

Main text: CT imaging has provided profound insights into the respiratory mechanics in ARDS and has informed the optimization of ventilation strategies. It is widely used to characterize the typical pathophysiological manifestations of ARDS in the lungs and can quantify the distribution of ventilation, perfusion, and pulmonary edema. Moreover, CT-based morphological classification of ARDS constitutes a significant component of ARDS subphenotypes research. However, given the heterogeneity in both its diagnosis and response to treatment, a single assessment model is insufficient to meet the management needs of patients with ARDS. The widespread application of artificial intelligence (AI) has greatly facilitated the quantitative analysis of CT imaging, enabling the integration of multidimensional data, such as CT imaging, pulmonary functional data, and laboratory tests.

Conclusion: This narrative review adopts a CT-centric viewpoint, delineating the progressive shift in the diagnosis, phenotyping, and management of ARDS from qualitative to quantitative analysis and from unimodal to multimodal evaluation, propelled by ongoing advances in AI. Looking forward, CT-based multimodal fusion analysis holds promise for identifying more precise therapeutic biomarkers and advancing the development of individualized treatment strategies for ARDS.

ARDS的计算机断层扫描,从形态学观察到人工智能驱动的多模态分析:叙述性回顾。
背景:急性呼吸窘迫综合征(Acute respiratory distress syndrome, ARDS)是一种以急性呼吸衰竭和高死亡率为特征的危重临床疾病。它在诊断和管理方面都提出了相当大的挑战。影像学是ARDS概念框架的核心要素,计算机断层扫描(CT)是研究ARDS肺组织形态和病理机制的重要技术工具。主要内容:CT成像对ARDS的呼吸力学提供了深刻的见解,并为通气策略的优化提供了信息。它被广泛用于表征ARDS在肺部的典型病理生理表现,可以量化通气、灌注和肺水肿的分布。此外,基于ct的ARDS形态学分类是ARDS亚表型研究的重要组成部分。然而,由于其诊断和治疗反应的异质性,单一的评估模型不足以满足ARDS患者的管理需求。人工智能(AI)的广泛应用极大地促进了CT成像的定量分析,使CT成像、肺功能数据、实验室检测等多维数据得以整合。结论:本文采用以ct为中心的观点,描述了在人工智能不断进步的推动下,ARDS的诊断、表型和管理从定性分析到定量分析、从单模态评估到多模态评估的逐步转变。展望未来,基于ct的多模态融合分析有望确定更精确的治疗性生物标志物,并推动ARDS个性化治疗策略的发展。
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
Journal of Intensive Care
Journal of Intensive Care Medicine-Critical Care and Intensive Care Medicine
CiteScore
11.90
自引率
1.40%
发文量
51
审稿时长
15 weeks
期刊介绍: "Journal of Intensive Care" is an open access journal dedicated to the comprehensive coverage of intensive care medicine, providing a platform for the latest research and clinical insights in this critical field. The journal covers a wide range of topics, including intensive and critical care, trauma and surgical intensive care, pediatric intensive care, acute and emergency medicine, perioperative medicine, resuscitation, infection control, and organ dysfunction. Recognizing the importance of cultural diversity in healthcare practices, "Journal of Intensive Care" also encourages submissions that explore and discuss the cultural aspects of intensive care, aiming to promote a more inclusive and culturally sensitive approach to patient care. By fostering a global exchange of knowledge and expertise, the journal contributes to the continuous improvement of intensive care practices worldwide.
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