Automated Delineation of Lung Tumors in PET Images Based on Monotonicity and a Tumor-Customized Criterion
Main Authors: | Ballangan, Cherry, Wang, Xiuying, Fulham, Michael, Eberl, Stefan, Yin, Yong, Feng, Dagan |
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Format: | Article PeerReviewed application/pdf |
Terbitan: |
IEEE
, 2011
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Subjects: | |
Online Access: |
https://repository.petra.ac.id/15242/1/TITB_TCD_FinalSubmission.pdf http://ieeexplore.ieee.org/xpl/RecentIssue.jsp?punumber=4233 https://repository.petra.ac.id/15242/ |
Daftar Isi:
- Reliable automated or semi-automated lung tumor delineation methods in positron emission tomography (PET) should provide accurate tumor boundary definition and separation of the lung tumor from surrounding tissue or ‘hot spots’ that have similar intensities to the lung tumor. We propose a tumor-customized downhill (TCD) method to achieve these objectives. Our approach includes: (1) automatic formulation of a tumor-customized criterion to improve tumor boundary definition, (2) a monotonic property of the standardized uptake value (SUV) of tumors to separate the tumor from adjacent regions of increased metabolism (‘hot spot’) and (3) accounts for tumor heterogeneity. Three simulated lesions and thirty PET–CT studies, grouped into ‘simple’ and ‘complex’ groups, were used for evaluation. Our main findings are that TCD, when compared to threshold based on 40% and 50% maximum SUV, adaptive threshold, Fuzzy c-means and watershed techniques achieved the highest Dice’s similarity coefficient (DSC) average for simulation data (0.73) and ‘complex’ group ( 0.71); the least volumetric error in the ‘simple’ (1.76 mL) and the ‘complex’ group (14.59 mL); and TCD solves the problem of leakage into adjacent tissues when many other techniques fail.