Abstract

Lung nodule segmentation in CT images and its subsequent volume analysis can help determine the malignancy status of a lung nodule. While several efficient segmentation schemes have been proposed, only a few studies evaluated the segmentation's performance for large nodules. In this research, we contribute a semi-automatic system which is capable of performing robust 3-D segmentations on both small and large nodules with good accuracy. The target CT volume is de-noised with an anisotropic diffusion filter and a region of interest is selected around the target nodule on a reference slice. The proposed model performs nodule segmentation by incorporating a mean intensity based threshold in Geodesic Active Contour model in level sets. We also devise an adaptive technique using image intensity histogram to estimate the desired mean intensity of the nodule. The proposed system is validated on both lung nodules and phantoms collected from publicly available diverse databases. Quantitative and visual comparative analysis of the proposed work with the Chan-Vese algorithm and statistic active contour model of 3D Slicer platform is also presented. The resulting mean spatial overlap between segmented nodules and reference nodules is 0.855, the mean volume bias is 0.10±0.2 ml and the algorithm repeatability is 0.060 ml. The achieved results suggest that the proposed method can be used for volume estimations of small as well as large-sized nodules.

Highlights

  • Lung cancer is a leading cause of cancer-related deaths among males and females worldwide [1]

  • The problem with the Response Evaluation Criteria In Solid Tumors (RECIST) protocol has been effectively addressed with volume estimation, which takes into account the overall changes in nodules [5]

  • The nodule volume is measured after its segmentation, correct nodule segmentation plays a crucial role in volumetric assessment and diagnostic tests

Read more

Summary

Introduction

Lung cancer is a leading cause of cancer-related deaths among males and females worldwide [1]. It often appears as opaque lesions in the lungs, referred to as lung nodules. Cancer typically manifest at an advanced stage, which makes the treatment least likely to work. Early detection and treatment of lung nodules can help increase the life expectancy of lung cancer patients. Response Evaluation Criteria In Solid Tumors (RECIST) is a vastly adopted protocol which uses the maximum diameter of the tumor as a key parameter to measure the nodule response. The problem with the RECIST protocol has been effectively addressed with volume estimation, which takes into account the overall changes in nodules [5]. The nodule volume is measured after its segmentation, correct nodule segmentation plays a crucial role in volumetric assessment and diagnostic tests

Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call