학술논문

Semi‐automated pulmonary nodule interval segmentation using the NLST data
Document Type
article
Source
Medical Physics. 45(3)
Subject
Medical and Biological Physics
Engineering
Physical Sciences
Biomedical Engineering
Cancer
Biomedical Imaging
Bioengineering
Aged
Automation
Female
Humans
Image Processing
Computer-Assisted
Lung Neoplasms
Male
Mass Screening
Middle Aged
Software
Tomography
X-Ray Computed
change in volume segmentation
CT lung
lung nodule segmentation
volume estimate
Other Physical Sciences
Oncology and Carcinogenesis
Nuclear Medicine & Medical Imaging
Biomedical engineering
Medical and biological physics
Language
Abstract
PurposeTo study the variability in volume change estimates of pulmonary nodules due to segmentation approaches used across several algorithms and to evaluate these effects on the ability to predict nodule malignancy.MethodsWe obtained 100 patient image datasets from the National Lung Screening Trial (NLST) that had a nodule detected on each of two consecutive low dose computed tomography (LDCT) scans, with an equal proportion of malignant and benign cases (50 malignant, 50 benign). Information about the nodule location for the cases was provided by a screen capture with a bounding box and its axial location was indicated. Five participating quantitative imaging network (QIN) institutions performed nodule segmentation using their preferred semi-automated algorithms with no manual correction; teams were allowed to provide additional manually corrected segmentations (analyzed separately). The teams were asked to provide segmentation masks for each nodule at both time points. From these masks, the volume was estimated for the nodule at each time point; the change in volume (absolute and percent change) across time points was estimated as well. We used the concordance correlation coefficient (CCC) to compare the similarity of computed nodule volumes (absolute and percent change) across algorithms. We used Logistic regression model on the change in volume (absolute change and percent change) of the nodules to predict the malignancy status, the area under the receiver operating characteristic curve (AUROC) and confidence intervals were reported. Because the size of nodules was expected to have a substantial effect on segmentation variability, analysis of change in volumes was stratified by lesion size, where lesions were grouped into those with a longest diameter of