Original Article
Journal of Cerebral Blood Flow & Metabolism (2008) 28, 852–865; doi:10.1038/sj.jcbfm.9600584; published online 5 December 2007
Improving PET receptor binding estimates from Logan plots using principal component analysis
This work was supported by the Department of Energy Grant DE-FG02-87ER60561 and National Institutes of Health (NINDS) Grant NS-15655.
Aniket Joshi1,3, Jeffrey A Fessler2,3 and Robert A Koeppe1
- 1Division of Nuclear Medicine, Department of Radiology, University of Michigan, Ann Arbor, Michigan, USA
- 2Department of Electrical Engineering and Computer Science, College of Engineering, University of Michigan, Ann Arbor, Michigan, USA
- 3Department of Biomedical Engineering, College of Engineering, University of Michigan, Ann Arbor, Michigan, USA
Correspondence: Dr RA Koeppe, Division of Nuclear Medicine, Department of Radiology, University of Michigan, 3480 Kresge III 0552, Ann Arbor, MI 48109-0552, USA. E-mail: koeppe@umich.edu
Received 9 May 2007; Accepted 11 October 2007; Published online 5 December 2007.
Abstract
This work reports a principal component analysis (PCA)-based approach for reducing bias in distribution volume ratio (DVR) estimates from Logan plots in positron emission tomography (PET). Comparison has been made of all existing bias-removal methods with the proposed PCA method, for both single-estimate PET studies and intervention studies where pre- and post-intervention estimates are made. Bias in Logan-based DVR estimates is because of the noise in the PET timeactivity curves (TACs) that propagates as correlated errors in dependent and independent variables of the Logan equation. Intervention studies show this same bias but also higher variance in DVR estimates. In this work, noise in the TACs was reduced by fitting the curves to a low-dimension PCA-based linear model, leading to reduced bias and variance in DVR. For validating the approach, TACs with realistic noise were simulated for a 11C-labeled tracer with carfentanil (CFN)-like kinetics for both single-measurement and intervention studies. Principal component analysis and existing methods were applied to the simulated data and their performance was compared by statistical analysis. The results indicated that existing methods either removed only part of the bias or reduced bias at the expense of precision. The proposed method removed
90% of the bias while also improving precision in both single- and dual-measurement simulations. After validation of the proposed method in simulations, PCA, along with the existing methods, was applied to human [11C]CFN data acquired for both single estimation of DVR and dual-estimation intervention studies. Similar results were observed in human scans as were seen in the simulation studies.
Keywords:
parametric PET, PET (positron emission tomography), principal component analysis, receptor density measurements
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