2023
DOI: 10.1007/s00330-023-09985-3
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Machine learning slice-wise whole-lung CT emphysema score correlates with airway obstruction

Mats Lidén,
Antoine Spahr,
Ola Hjelmgren
et al.

Abstract: Objectives Quantitative CT imaging is an important emphysema biomarker, especially in smoking cohorts, but does not always correlate to radiologists’ visual CT assessments. The objectives were to develop and validate a neural network-based slice-wise whole-lung emphysema score (SWES) for chest CT, to validate SWES on unseen CT data, and to compare SWES with a conventional quantitative CT method. Materials and methods Separate cohorts were used for algorith… Show more

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