Deep Learning-based Segmentation of Computed Tomography Scans Predicts Disease Progression and Mortality in Idiopathic Pulmonary Fibrosis.
Muhunthan ThillaiJustin M OldhamAlessandro RuggieroFahdi KanavatiTom McLellanGauri SainiSimon R JohnsonFrancois-Xavier BleAdnan AzimKristoffer OstridgeAdam PlattMaria BelvisiToby M MaherPhilip L MolyneauxPublished in: American journal of respiratory and critical care medicine (2024)
Rationale: Despite evidence demonstrating a prognostic role for computed tomography (CT) scans in idiopathic pulmonary fibrosis (IPF), image-based biomarkers are not routinely used in clinical practice or trials. Objectives: To develop automated imaging biomarkers using deep learning-based segmentation of CT scans. Methods: We developed segmentation processes for four anatomical biomarkers, which were applied to a unique cohort of treatment-naive patients with IPF enrolled in the PROFILE (Prospective Observation of Fibrosis in the Lung Clinical Endpoints) study and tested against a further United Kingdom cohort. The relationships among CT biomarkers, lung function, disease progression, and mortality were assessed. Measurements and Main Results: Data from 446 PROFILE patients were analyzed. Median follow-up duration was 39.1 months (interquartile range, 18.1-66.4 mo), with a cumulative incidence of death of 277 (62.1%) over 5 years. Segmentation was successful on 97.8% of all scans, across multiple imaging vendors, at slice thicknesses of 0.5-5 mm. Of four segmentations, lung volume showed the strongest correlation with FVC ( r = 0.82; P < 0.001). Lung, vascular, and fibrosis volumes were consistently associated across cohorts with differential 5-year survival, which persisted after adjustment for baseline gender, age, and physiology score. Lower lung volume (hazard ratio [HR], 0.98 [95% confidence interval (CI), 0.96-0.99]; P = 0.001), increased vascular volume (HR, 1.30 [95% CI, 1.12-1.51]; P = 0.001), and increased fibrosis volume (HR, 1.17 [95% CI, 1.12-1.22]; P < 0.001) were associated with reduced 2-year progression-free survival in the pooled PROFILE cohort. Longitudinally, decreasing lung volume (HR, 3.41 [95% CI, 1.36-8.54]; P = 0.009) and increasing fibrosis volume (HR, 2.23 [95% CI, 1.22-4.08]; P = 0.009) were associated with differential survival. Conclusions: Automated models can rapidly segment IPF CT scans, providing prognostic near and long-term information, which could be used in routine clinical practice or as key trial endpoints.
Keyphrases
- computed tomography
- deep learning
- idiopathic pulmonary fibrosis
- dual energy
- contrast enhanced
- image quality
- positron emission tomography
- clinical practice
- convolutional neural network
- free survival
- artificial intelligence
- interstitial lung disease
- machine learning
- magnetic resonance imaging
- lung function
- end stage renal disease
- high resolution
- risk factors
- clinical trial
- air pollution
- cystic fibrosis
- magnetic resonance
- rheumatoid arthritis
- chronic kidney disease
- randomized controlled trial
- chronic obstructive pulmonary disease
- peritoneal dialysis
- photodynamic therapy
- hiv infected
- single cell
- healthcare
- data analysis
- liver fibrosis