University of Lincoln
Browse

Shape-based CT lung nodule segmentation using five-dimensional mean shift clustering and MEM with shape information

conference contribution
posted on 2024-02-09, 19:03 authored by Gareth Beddoe, Greg Slabaugh, Musib Siddique, Xujiong Ye
<p>This paper presents a joint spatial-intensity-shape (JSIS) feature-based method for the segmentation of CT lung nodules. First, a volumetric shape index (SI) feature based on the second-order partial derivatives of the CT image is calculated. Next, the SI feature is combined with spatial and intensity features to form a five-dimensional feature vectors, which are then clustered using mean shift to produce intensity and shape mode maps. Finally, a modified expectation-maximization (MEM) algorithm is applied on the mean shift intensity mode map to merge the neighboring modes with spatial and shape mode maps as priors. The proposed method has been evaluated on a clinical dataset of thoracic CT scans that contains 80 nodules. A volume overlap ratio between each segmented nodule and the ground truth annotation is calculated. Using the proposed method, the mean overlap ratio over all the nodules is 0.81 with standard deviation of 0.05. Most of the nodules, including challenging juxta-vascular and juxta-pleural nodules, can be properly separated from adjoining tissues.</p>

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publisher

IEEE

ISSN

1945-7928

ISBN

9781424439317 (print),9781424439324 (online)

Date Submitted

2013-01-23

Date Accepted

2009-06-01

Date of First Publication

2009-06-01

Date of Final Publication

2009-06-01

Event Name

IEEE International Symposium on Biomedical Imaging: From Nano to Macro ISBI'09

Event Dates

June 28 - July 1 2009

Date Document First Uploaded

2013-03-13

ePrints ID

7317

Usage metrics

    University of Lincoln (Research Outputs)

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC