Towards the adoption of quantitative computed tomography in the management of interstitial lung disease.

IF 9 1区 医学 Q1 RESPIRATORY SYSTEM European Respiratory Review Pub Date : 2024-03-27 Print Date: 2024-01-31 DOI:10.1183/16000617.0055-2023
Simon L F Walsh, Jan De Backer, Helmut Prosch, Georg Langs, Lucio Calandriello, Vincent Cottin, Kevin K Brown, Yoshikazu Inoue, Vasilios Tzilas, Elizabeth Estes
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Abstract

The shortcomings of qualitative visual assessment have led to the development of computer-based tools to characterise and quantify disease on high-resolution computed tomography (HRCT) in patients with interstitial lung diseases (ILDs). Quantitative CT (QCT) software enables quantification of patterns on HRCT with results that are objective, reproducible, sensitive to change and predictive of disease progression. Applications developed to provide a diagnosis or pattern classification are mainly based on artificial intelligence. Deep learning, which identifies patterns in high-dimensional data and maps them to segmentations or outcomes, can be used to identify the imaging patterns that most accurately predict disease progression. Optimisation of QCT software will require the implementation of protocol standards to generate data of sufficient quality for use in computerised applications and the identification of diagnostic, imaging and physiological features that are robustly associated with mortality for use as anchors in the development of algorithms. Consortia such as the Open Source Imaging Consortium have a key role to play in the collation of imaging and clinical data that can be used to identify digital imaging biomarkers that inform diagnosis, prognosis and response to therapy.

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在间质性肺病的治疗中采用定量计算机断层扫描技术。
由于视觉定性评估存在缺陷,因此开发了基于计算机的工具,用于描述和量化间质性肺病(ILDs)患者高分辨率计算机断层扫描(HRCT)上的疾病。定量 CT(QCT)软件可对 HRCT 上的模式进行量化,其结果客观、可重复、对变化敏感并能预测疾病的进展。为提供诊断或模式分类而开发的应用程序主要基于人工智能。深度学习可识别高维数据中的模式,并将其映射到分割或结果中,可用于识别最准确预测疾病进展的成像模式。要优化 QCT 软件,就必须执行协议标准,以生成计算机化应用所需的高质量数据,并确定与死亡率密切相关的诊断、成像和生理特征,作为算法开发的锚点。开源成像联盟(Open Source Imaging Consortium)等联盟在整理成像和临床数据方面发挥着关键作用,这些数据可用于确定数字成像生物标志物,为诊断、预后和治疗反应提供依据。
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来源期刊
European Respiratory Review
European Respiratory Review Medicine-Pulmonary and Respiratory Medicine
CiteScore
14.40
自引率
1.30%
发文量
91
审稿时长
24 weeks
期刊介绍: The European Respiratory Review (ERR) is an open-access journal published by the European Respiratory Society (ERS), serving as a vital resource for respiratory professionals by delivering updates on medicine, science, and surgery in the field. ERR features state-of-the-art review articles, editorials, correspondence, and summaries of recent research findings and studies covering a wide range of topics including COPD, asthma, pulmonary hypertension, interstitial lung disease, lung cancer, tuberculosis, and pulmonary infections. Articles are published continuously and compiled into quarterly issues within a single annual volume.
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