Journal
MEDICAL IMAGE UNDERSTANDING AND ANALYSIS, MIUA 2022
Volume 13413, Issue -, Pages 767-777Publisher
SPRINGER INTERNATIONAL PUBLISHING AG
DOI: 10.1007/978-3-031-12053-4_56
Keywords
Morphological features; Lung cancer; Pulmonary nodules; Radiomics
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This study evaluated the correlation between morphological features and radiological attributes of lung nodules, finding a moderate correlation between computer-calculated features and manually-assigned visual scores.
Radiological examination of pulmonary nodules on CT involves the assessment of the nodules' size and morphology, a procedure usually performed manually. In recent years computer-assisted analysis of indeterminate lung nodules has been receiving increasing research attention as a potential means to improve the diagnosis, treatment and follow-up of patients with lung cancer. Computerised analysis relies on the extraction of objective, reproducible and standardised imaging features. In this context the aim of this work was to evaluate the correlation between nine IBSI-compliant morphological features and three manuallyassigned radiological attributes - lobulation, sphericity and spiculation. Experimenting on 300 lung nodules from the open-access LIDC-IDRI dataset we found that the correlation between the computer-calculated features and the manually-assigned visual scores was at best moderate (Pearson's r between -0.61 and 0.59; Spearman's rho between -0.59 and 0.56). We conclude that the morphological features investigated here have moderate ability to match/explain manually-annotated lobulation, sphericity and spiculation.
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