In interstitial lung disease (ILD), the extent of ILD on chest computed tomography (CT) is recognized as an important prognostic factor. Automated tools are now available to quantify ILD, but there is a lack of data on the reproducibility of this measurement and therefore its accuracy. Therefore, the purpose of this study is to evaluate the variability of automated ILD quantification on chest CT. Reproducibility will be assessed by repeating chest CT scans and using different tools to measure the extent of disease.
In interstitial lung disease (ILD), the extent of ILD on chest computed tomography (CT) is recognized as an important prognostic factor. In recent years, several tools based on texture analysis or deep learning methods have been developed to provide rapid and accurate automated quantification of ILD extent. An advantage of automated scoring methods is that they theoretically offer perfect repeatability of measurement. However, this is only true if the measurement is repeated on the same images. Several parameters can alter the appearance of the lungs on scanner images, such as the degree of inspiration or the reconstruction kernel used to reconstruct the images. There is a lack of data on the reproducibility of the whole process of automated ILD quantification and therefore its accuracy. Therefore, the purpose of this study is to evaluate the variability of automated ILD quantification on chest CT. Reproducibility will be assessed by repeating chest CT scans and using different tools to measure the extent of disease in patients with ILD from 2 institutions. Chest CT will be repeated the same day. This will allow assessment of the variability of automated measurement of ILD extent between 2 CT scans performed on the same day and when using different software. It will also allow to assess the variability of lung volume between the 2 CT scans and the effect of disease (idiopathic pulmonary fibrosis or connective tissue disease-related ILD) on the reproducibility of ILD quantification.
Study Type
INTERVENTIONAL
Allocation
NA
Purpose
OTHER
Masking
NONE
Enrollment
150
Repeated chest CT for automated ILD quantification
APHP - Bichat hospital - Radiology
Paris, IDF, France
RECRUITINGAPHP - Bichat hospital - Rheumatology
Paris, IDF, France
RECRUITINGAPHP - Cochin Hospital - Internal medicine
Paris, IDF, France
RECRUITINGAPHP - Cochin Hospital - Pneumology
Paris, IDF, France
RECRUITINGAPHP - Cochin Hospital - Radiology
Paris, IDF, France
RECRUITINGAPHP - Bichat Hospital - Pneumology
Paris, IDF, France
RECRUITINGAutomated Interstitial Lung Disease (ILD) quantification
Reproducibility of ILD quantification on chest CT (as a percentage of lung volume) between two successive scan acquisitions.
Time frame: Day of inclusion
Automated Interstitial Lung Disease (ILD) quantification
Reproducibility of disease extent measured with different software on the same acquisition
Time frame: Day of inclusion
Lung volume
Reproducibility of total lung volume measured on the scanner between two successive acquisitions
Time frame: Day of inclusion
Automated Interstitial Lung Disease (ILD) quantification
Reproducibility of disease extension between the two scan acquisitions depending on the disease (idiopathic pulmonary fibrosis or PID secondary to connective tissue disease).
Time frame: Day of inclusion
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