Uncovering Mechanisms of Structural Airway Damage in Bronchiectasis Disease

Addressing current challenges

Bronchiectasis is defined by irreversible bronchial dilatation and characterized by chronic respiratory symptoms, recurrent infections, and frequent exacerbations. As a structurally driven airway disease arising from diverse underlying conditions, it exhibits pronounced heterogeneity in severity and regional distribution, both between patients and within individual lungs.

White central to disease assessment, routine CT image evaluation relies largely on visual interpretation, which is limited in capturing early inflammatory changes, subtle airway abnormalities and fully characterizing underlying disease heterogeneity. As a result, robust patient phenotyping, monitoring of disease progression, and objective assessment of treatment effects over time remain challenging, particularly for the development of targeted therapeutic strategies and in clinical trials.

680

prevalence as number of cases per 100K

all-cause mortality
per year
0 /100K
aetiological variations
> 0
times higher than asthma-related hospitalizations

Advancing treatment strategies with AI

To address the structural complexity and heterogeneity of bronchiectasis, Thirona applies AI-powered quantitative lung image analysis to transform CT imaging into objective, reproducible biomarkers that support patient stratification, longitudinal assessment of treatment effects at regional level. 

 

This capability is built on disease specific research and validation in large patient cohort including collaboration with the international EMBARC network with analysis of CT data from more than 600 bronchiectasis patients.

Bronchiectasis is more common than often recognized and frequently coexists with other respiratory diseases. Given the complexity of diagnosis — and the overlap of CT features across conditions — we need more precise, data-driven approaches. What if, with the help of AI, we could integrate multiple quantitative data points to detect subtle structural patterns and guide more personalized treatment decisions?

Dr. Eva Polverino, MD Hospital Vall d’Hebron Spain​

Use cases accelerating precision medicine

Explore with us how LungQ is redefining treatment of Bronchiectasis Disease