Hyperpolarized-gas-MRI provides a way to measure lung ventilation in patients with chronic obstructive pulmonary disease (COPD) in whom progressive worsening of expiratory airflow occurs over time. Progression of COPD is believed to stem from airway wall and lumen changes, airway remodeling or obliteration and emphysema. Our objective was to test machine-learning algorithms trained on hyperpolarized 3He MRI for predicting clinically-relevant FEV1 changes. Novel 3-dimensional adaptations of gray-level run-length-matrices, gap-length-matrices, zone-size-matrices and co-occurrence-matrices were used for feature extraction which lead to the identification of features that predicted changes in airflow limitation (∆FEV1%pred>5%) over a 2.5-year time-period in at-risk and COPD ex-smokers.
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