Deep learning automated quantification of lung disease in pulmonary hypertension on CT pulmonary angiography: A preliminary clinical study with external validation
Michael J. Sharkey, Krit Dwivedi, Samer Alabed, Andrew J. Swift

TL;DR
This study develops and validates a deep learning model for lung texture classification in CT pulmonary angiography, showing strong correlation with clinical assessments and potential to assist in managing pulmonary hypertension.
Contribution
Introduces a novel AI-based lung texture classification model with external validation for pulmonary hypertension assessment.
Findings
High AUCs (0.92-0.95) across validation and testing.
Strong correlation with DLCO and radiologist severity reports.
Demonstrates clinical utility as an objective disease measure.
Abstract
Purpose: Lung disease assessment in precapillary pulmonary hypertension (PH) is essential for appropriate patient management. This study aims to develop an artificial intelligence (AI) deep learning model for lung texture classification in CT Pulmonary Angiography (CTPA), and evaluate its correlation with clinical assessment methods. Materials and Methods: In this retrospective study with external validation, 122 patients with pre-capillary PH were used to train (n=83), validate (n=17) and test (n=10 internal test, n=12 external test) a patch based DenseNet-121 classification model. "Normal", "Ground glass", "Ground glass with reticulation", "Honeycombing", and "Emphysema" were classified as per the Fleishner Society glossary of terms. Ground truth classes were segmented by two radiologists with patches extracted from the labelled regions. Proportion of lung volume for each texture…
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Taxonomy
TopicsPulmonary Hypertension Research and Treatments · Radiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment
MethodsTest
