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  3. Automated AI-based image analysis for quantification and prediction of interstitial lung disease in systemic sclerosis patients.
 

Automated AI-based image analysis for quantification and prediction of interstitial lung disease in systemic sclerosis patients.

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BORIS DOI
10.48620/85181
Publisher DOI
10.1186/s12931-025-03117-9
PubMed ID
39856708
Description
Background
Systemic sclerosis (SSc) is a rare connective tissue disease associated with rapidly evolving interstitial lung disease (ILD), driving its mortality. Specific imaging-based biomarkers associated with the evolution of lung disease are needed to help predict and quantify ILD.
Methods
We evaluated the potential of an automated ILD quantification system (icolung®) from chest CT scans, to help in quantification and prediction of ILD progression in SSc-ILD. We used a retrospective cohort of 75 SSc-ILD patients to evaluate the potential of the AI-based quantification tool and to correlate image-based quantification with pulmonary function tests and their evolution over time.
Results
We evaluated a group of 75 patients suffering from SSc-ILD, either limited or diffuse, of whom 30 presented progressive pulmonary fibrosis (PPF). The patients presenting PPF exhibited more extensive lesions (in % of total lung volume (TLV)) based on image analysis than those without PPF: 3.93 (0.36-8.12)* vs. 0.59 (0.09-3.53) respectively, whereas pulmonary functional test showed a reduction in Force Vital Capacity (FVC)(pred%) in patients with PPF compared to the others : 77 ± 20% vs. 87 ± 19% (p < 0.05). Modifications of FVC and diffusing capacity of the lungs for carbon monoxide (DLCO) over time were correlated with longitudinal radiological ILD modifications (r=-0.40, p < 0.01; r=-0.40, p < 0.01 respectively).
Conclusion
AI-based automatic quantification of lesions from chest-CT images in SSc-ILD is correlated with physiological parameters and can help in disease evaluation. Further clinical multicentric validation is necessary in order to confirm its potential in the prediction of patient's outcome and in treatment management.
Date of Publication
2025-01-24
Publication Type
Article
Subject(s)
600 - Technology::610 - Medicine & health
Keyword(s)
Artificial intelligence
•
Computed tomography
•
Interstitial lung disease
•
Pulmonary function tests
•
Systemic sclerosis
Language(s)
en
Contributor(s)
Guiot, Julien
Henket, Monique
Gester, Fanny
André, Béatrice
Ernst, Benoit
Frix, Anne-Noelle
Smeets, Dirk
Van Eyndhoven, Simon
Antoniou, Katerina
Conemans, Lennart
Gote-Schniering, Janine
Department for BioMedical Research (DBMR)
Clinic of Rheumatology and Immunology
Slabbynck, Hans
Kreuter, Michael
Sellares, Jacobo
Tomos, Ioannis
Yang, Guang
Ribbens, Clio
Louis, Renaud
Cottin, Vincent
Tomassetti, Sara
Smith, Vanessa
Walsh, Simon L F
Additional Credits
Clinic of Rheumatology and Immunology
Clinic of Pneumology and Allergology
Department for BioMedical Research (DBMR)
Series
Respiratory Research
Publisher
BioMed Central
ISSN
1465-993X
1465-9921
Access(Rights)
open.access
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