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CT定量在进行性纤维化间质性肺疾病中的价值:一种深度学习方法。

Value of CT quantification in progressive fibrosing interstitial lung disease: a deep learning approach.

作者信息

Koh Seok Young, Lee Jong Hyuk, Park Hyungin, Goo Jin Mo

机构信息

Department of Radiology, Seoul National University Hospital, 101, Daehak-ro, Jongno-gu, Seoul, 03080, South Korea.

Department of Radiology, Seoul National University College of Medicine, 101, Daehak-ro, Jongno-gu, Seoul, 03080, South Korea.

出版信息

Eur Radiol. 2024 Jul;34(7):4195-4205. doi: 10.1007/s00330-023-10483-9. Epub 2023 Dec 12.

Abstract

OBJECTIVES

To evaluate the relationship of changes in the deep learning-based CT quantification of interstitial lung disease (ILD) with changes in forced vital capacity (FVC) and visual assessments of ILD progression, and to investigate their prognostic implications.

METHODS

This study included ILD patients with CT scans at intervals of over 2 years between January 2015 and June 2021. Deep learning-based texture analysis software was used to segment ILD findings on CT images (fibrosis: reticular opacity + honeycombing cysts; total ILD extent: ground-glass opacity + fibrosis). Patients were grouped according to the absolute decline of predicted FVC (< 5%, 5-10%, and ≥ 10%) and ILD progression assessed by thoracic radiologists, and their quantification results were compared among these groups. The associations between quantification results and survival were evaluated using multivariable Cox regression analysis.

RESULTS

In total, 468 patients (239 men; 64 ± 9.5 years) were included. Fibrosis and total ILD extents more increased in patients with larger FVC decline (p < .001 in both). Patients with ILD progression had higher fibrosis and total ILD extent increases than those without ILD progression (p < .001 in both). Increases in fibrosis and total ILD extent were significant prognostic factors when adjusted for absolute FVC declines of ≥ 5% (hazard ratio [HR] 1.844, p = .01 for fibrosis; HR 2.484, p < .001 for total ILD extent) and ≥ 10% (HR 2.918, p < .001 for fibrosis; HR 3.125, p < .001 for total ILD extent).

CONCLUSION

Changes in ILD CT quantification correlated with changes in FVC and visual assessment of ILD progression, and they were independent prognostic factors in ILD patients.

CLINICAL RELEVANCE STATEMENT

Quantifying the CT features of interstitial lung disease using deep learning techniques could play a key role in defining and predicting the prognosis of progressive fibrosing interstitial lung disease.

KEY POINTS

• Radiologic findings on high-resolution CT are important in diagnosing progressive fibrosing interstitial lung disease. • Deep learning-based quantification results for fibrosis and total interstitial lung disease extents correlated with the decline in forced vital capacity and visual assessments of interstitial lung disease progression, and emerged as independent prognostic factors. • Deep learning-based interstitial lung disease CT quantification can play a key role in diagnosing and prognosticating progressive fibrosing interstitial lung disease.

摘要

目的

评估基于深度学习的间质性肺疾病(ILD)CT定量变化与用力肺活量(FVC)变化及ILD进展的视觉评估之间的关系,并研究它们的预后意义。

方法

本研究纳入了2015年1月至2021年6月期间每隔2年以上进行一次CT扫描的ILD患者。使用基于深度学习的纹理分析软件在CT图像上分割ILD表现(纤维化:网状阴影+蜂窝状囊肿;总ILD范围:磨玻璃影+纤维化)。根据预测FVC的绝对下降情况(<5%、5-10%和≥10%)以及胸科放射科医生评估的ILD进展情况对患者进行分组,并比较这些组之间的定量结果。使用多变量Cox回归分析评估定量结果与生存之间的关联。

结果

总共纳入了468例患者(239例男性;64±9.5岁)。FVC下降幅度较大的患者,其纤维化和总ILD范围增加得更多(两者均p<.001)。ILD进展的患者比无ILD进展的患者纤维化和总ILD范围增加更高(两者均p<.001)。当调整FVC绝对下降≥5%(纤维化的风险比[HR]1.844,p=.01;总ILD范围的HR 2.484,p<.001)和≥10%(纤维化的HR 2.918,p<.001;总ILD范围的HR 3.125,p<.001)时,纤维化和总ILD范围的增加是显著的预后因素。

结论

ILD的CT定量变化与FVC变化及ILD进展的视觉评估相关,并且它们是ILD患者的独立预后因素。

临床相关性声明

使用深度学习技术量化间质性肺疾病的CT特征在定义和预测进行性纤维化间质性肺疾病的预后方面可能起关键作用。

关键点

•高分辨率CT上的放射学表现对诊断进行性纤维化间质性肺疾病很重要。•基于深度学习的纤维化和总间质性肺疾病范围的定量结果与用力肺活量的下降以及间质性肺疾病进展的视觉评估相关,并成为独立的预后因素。•基于深度学习的间质性肺疾病CT定量在诊断和预测进行性纤维化间质性肺疾病方面可发挥关键作用。

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