4.6 Article

Automatic lung segmentation from thoracic computed tomography scans using a hybrid approach with error detection

Journal

MEDICAL PHYSICS
Volume 36, Issue 7, Pages 2934-2947

Publisher

WILEY
DOI: 10.1118/1.3147146

Keywords

cancer; computerised tomography; diagnostic radiography; image segmentation; lung; medical image processing; tumours

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Lung segmentation is a prerequisite for automated analysis of chest CT scans. Conventional lung segmentation methods rely on large attenuation differences between lung parenchyma and surrounding tissue. These methods fail in scans where dense abnormalities are present, which often occurs in clinical data. Some methods to handle these situations have been proposed, but they are too time consuming or too specialized to be used in clinical practice. In this article, a new hybrid lung segmentation method is presented that automatically detects failures of a conventional algorithm and, when needed, resorts to a more complex algorithm, which is expected to produce better results in abnormal cases. In a large quantitative evaluation on a database of 150 scans from different sources, the hybrid method is shown to perform substantially better than a conventional approach at a relatively low increase in computational cost.

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