Fuzzy hidden Markov chains segmentation for volume determination and quantitation in PET
Open Access
- 18 May 2007
- journal article
- Published by IOP Publishing in Physics in Medicine & Biology
- Vol. 52 (12), 3467-3491
- https://doi.org/10.1088/0031-9155/52/12/010
Abstract
Accurate volume of interest (VOI) estimation in PET is crucial in different oncology applications such as response to therapy evaluation and radiotherapy treatment planning. The objective of our study was to evaluate the performance of the proposed algorithm for automatic lesion volume delineation; namely the fuzzy hidden Markov chains (FHMC), with that of current state of the art in clinical practice threshold based techniques. As the classical hidden Markov chain (HMC) algorithm, FHMC takes into account noise, voxel intensity and spatial correlation, in order to classify a voxel as background or functional VOI. However the novelty of the fuzzy model consists of the inclusion of an estimation of imprecision, which should subsequently lead to a better modelling of the 'fuzzy' nature of the object of interest boundaries in emission tomography data. The performance of the algorithms has been assessed on both simulated and acquired datasets of the IEC phantom, covering a large range of spherical lesion sizes (from 10 to 37 mm), contrast ratios (4:1 and 8:1) and image noise levels. Both lesion activity recovery and VOI determination tasks were assessed in reconstructed images using two different voxel sizes (8 mm3 and 64 mm3). In order to account for both the functional volume location and its size, the concept of % classification errors was introduced in the evaluation of volume segmentation using the simulated datasets. Results reveal that FHMC performs substantially better than the threshold based methodology for functional volume determination or activity concentration recovery considering a contrast ratio of 4:1 and lesion sizes of <28 mm. Furthermore differences between classification and volume estimation errors evaluated were smaller for the segmented volumes provided by the FHMC algorithm. Finally, the performance of the automatic algorithms was less susceptible to image noise levels in comparison to the threshold based techniques. The analysis of both simulated and acquired datasets led to similar results and conclusions as far as the performance of segmentation algorithms under evaluation is concerned.Keywords
This publication has 19 references indexed in Scilit:
- The role of PET/CT scanning in radiotherapy planningThe British Journal of Radiology, 2006
- Validation of a Monte Carlo simulation of the Philips Allegro/GEMINI PET systems using GATEPhysics in Medicine & Biology, 2006
- Signal and Image Segmentation Using Pairwise Markov ChainsIEEE Transactions on Signal Processing, 2004
- One-pass list-mode EM algorithm for high-resolution 3-D PET image reconstruction into large arraysIEEE Transactions on Nuclear Science, 2002
- A new algorithm for N-dimensional Hilbert scanningIEEE Transactions on Image Processing, 1999
- The watershed algorithm: a method to segment noisy PET transmission imagesIEEE Transactions on Nuclear Science, 1999
- Automated 3-D segmentation of respiratory-gated PET transmission imagesIEEE Transactions on Nuclear Science, 1997
- Estimation of generalized mixtures and its application in image segmentationIEEE Transactions on Image Processing, 1997
- Parameter Estimation in Hidden Fuzzy Markov Random Fields and Image SegmentationGraphical Models and Image Processing, 1997
- Probabilistic Solution of Ill-Posed Problems in Computational VisionJournal of the American Statistical Association, 1987