Automated Estimation of Total Lung Volume using Chest Radiographs and Deep Learning
Ecem Sogancioglu, Keelin Murphy, Ernst Th. Scholten, Luuk H. Boulogne,, Mathias Prokop, and Bram van Ginneken

TL;DR
This study develops a deep learning model that accurately estimates total lung volume from routine chest radiographs, potentially aiding in the assessment of lung diseases without additional imaging costs.
Contribution
The paper introduces the first deep learning approach capable of accurately measuring lung volume from standard chest X-rays, combining CT and PFT data for training and validation.
Findings
Achieved an MAE of 408 ml and 8.1% MAPE in lung volume estimation.
Fine-tuning with PFT labels improved model performance.
Demonstrated high correlation (r=0.92) between predicted and reference lung volumes.
Abstract
Total lung volume is an important quantitative biomarker and is used for the assessment of restrictive lung diseases. In this study, we investigate the performance of several deep-learning approaches for automated measurement of total lung volume from chest radiographs. 7621 posteroanterior and lateral view chest radiographs (CXR) were collected from patients with chest CT available. Similarly, 928 CXR studies were chosen from patients with pulmonary function test (PFT) results. The reference total lung volume was calculated from lung segmentation on CT or PFT data, respectively. This dataset was used to train deep-learning architectures to predict total lung volume from chest radiographs. The experiments were constructed in a step-wise fashion with increasing complexity to demonstrate the effect of training with CT-derived labels only and the sources of error. The optimal models were…
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Taxonomy
TopicsChronic Obstructive Pulmonary Disease (COPD) Research · Lung Cancer Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging
