基于人工智能的肺部 HRCT 定量(AIqpHRCT)用于评估炎症性风湿病患者的间质性肺病。

IF 3.2 3区 医学 Q2 RHEUMATOLOGY
Rheumatology International Pub Date : 2024-11-01 Epub Date: 2024-09-09 DOI:10.1007/s00296-024-05715-0
Tobias Hoffmann, Ulf Teichgräber, Bianca Lassen-Schmidt, Diane Renz, Luis Benedict Brüheim, Martin Krämer, Peter Oelzner, Joachim Böttcher, Felix Güttler, Gunter Wolf, Alexander Pfeil
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引用次数: 0

摘要

高分辨率计算机断层扫描(HRCT)对于诊断炎症性风湿病(IRD)患者的间质性肺病(ILD)非常重要。然而,通过 HRCT 对 ILD 进行目测评估时,阅片人员之间的差异往往很大。基于人工智能(AI)的定量图像分析技术有望提供更准确的诊断和预后信息。本研究评估了基于人工智能的肺部 HRCT 定量(AIqpHRCT)在 IRD-ILD 患者中的可靠性,并在临床环境中使用 AIqpHRCT 验证了 IRD-ILD 定量。针对每种典型的 HRCT 模式(磨玻璃不透明 [GGO]、非特异性间质性肺炎 [NSIP]、寻常性间质性肺炎 [UIP]、肉芽肿)验证了 AIqpHRCT 的可重复性。此外,还使用 AIqpHRCT 分析了 50 名 IRD-ILD 患者的 50 个 HRCT 数据集,并将其与临床数据和肺功能参数进行了关联。AIqpHRCT 在检测不同 HRCT 模式方面的一致性达到 100%(变异系数 = 0.00%,类内相关系数 = 1.000)。此外,AIqpHRCT 数据显示,ILD 从 GGO 模式的 10.7 ± 28.3%(中位数 = 1.3%)增加到 UIP 模式的 18.9 ± 12.4%(中位数 = 18.0%)。纤维化程度与 FVC(ρ=-0.501)、TLC(ρ=-0.622)和 DLCO(ρ=-0.693)呈负相关(p
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Artificial intelligence-based quantification of pulmonary HRCT (AIqpHRCT) for the evaluation of interstitial lung disease in patients with inflammatory rheumatic diseases.

Artificial intelligence-based quantification of pulmonary HRCT (AIqpHRCT) for the evaluation of interstitial lung disease in patients with inflammatory rheumatic diseases.

High-resolution computed tomography (HRCT) is important for diagnosing interstitial lung disease (ILD) in inflammatory rheumatic disease (IRD) patients. However, visual ILD assessment via HRCT often has high inter-reader variability. Artificial intelligence (AI)-based techniques for quantitative image analysis promise more accurate diagnostic and prognostic information. This study evaluated the reliability of artificial intelligence-based quantification of pulmonary HRCT (AIqpHRCT) in IRD-ILD patients and verified IRD-ILD quantification using AIqpHRCT in the clinical setting. Reproducibility of AIqpHRCT was verified for each typical HRCT pattern (ground-glass opacity [GGO], non-specific interstitial pneumonia [NSIP], usual interstitial pneumonia [UIP], granuloma). Additional, 50 HRCT datasets from 50 IRD-ILD patients using AIqpHRCT were analysed and correlated with clinical data and pulmonary lung function parameters. AIqpHRCT presented 100% agreement (coefficient of variation = 0.00%, intraclass correlation coefficient = 1.000) regarding the detection of the different HRCT pattern. Furthermore, AIqpHRCT data showed an increase of ILD from 10.7 ± 28.3% (median = 1.3%) in GGO to 18.9 ± 12.4% (median = 18.0%) in UIP pattern. The extent of fibrosis negatively correlated with FVC (ρ=-0.501), TLC (ρ=-0.622), and DLCO (ρ=-0.693) (p < 0.001). GGO measured by AIqpHRCT also significant negatively correlated with DLCO (ρ=-0.699), TLC (ρ=-0.580) and FVC (ρ=-0.423). For the first time, the study demonstrates that AIpqHRCT provides a highly reliable method for quantifying lung parenchymal changes in HRCT images of IRD-ILD patients. Further, the AIqpHRCT method revealed significant correlations between the extent of ILD and lung function parameters. This highlights the potential of AIpqHRCT in enhancing the accuracy of ILD diagnosis and prognosis in clinical settings, ultimately improving patient management and outcomes.

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来源期刊
Rheumatology International
Rheumatology International 医学-风湿病学
CiteScore
7.30
自引率
5.00%
发文量
191
审稿时长
16. months
期刊介绍: RHEUMATOLOGY INTERNATIONAL is an independent journal reflecting world-wide progress in the research, diagnosis and treatment of the various rheumatic diseases. It is designed to serve researchers and clinicians in the field of rheumatology. RHEUMATOLOGY INTERNATIONAL will cover all modern trends in clinical research as well as in the management of rheumatic diseases. Special emphasis will be given to public health issues related to rheumatic diseases, applying rheumatology research to clinical practice, epidemiology of rheumatic diseases, diagnostic tests for rheumatic diseases, patient reported outcomes (PROs) in rheumatology and evidence on education of rheumatology. Contributions to these topics will appear in the form of original publications, short communications, editorials, and reviews. "Letters to the editor" will be welcome as an enhancement to discussion. Basic science research, including in vitro or animal studies, is discouraged to submit, as we will only review studies on humans with an epidemological or clinical perspective. Case reports without a proper review of the literatura (Case-based Reviews) will not be published. Every effort will be made to ensure speed of publication while maintaining a high standard of contents and production. Manuscripts submitted for publication must contain a statement to the effect that all human studies have been reviewed by the appropriate ethics committee and have therefore been performed in accordance with the ethical standards laid down in an appropriate version of the 1964 Declaration of Helsinki. It should also be stated clearly in the text that all persons gave their informed consent prior to their inclusion in the study. Details that might disclose the identity of the subjects under study should be omitted.
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