Nuclear Medicine and Biology
Volume 34, Issue 5 , Pages 483-492, July 2007

An input function estimation method for FDG-PET human brain studies

  • Hongbin Guo

      Affiliations

    • Department of Mathematics and Statistics, Arizona State University, Tempe, AZ 85287-1804, USA
    • Corresponding Author InformationCorresponding author. Tel.: +1 480 965 8002; fax: +1 480 965 4160.
  • ,
  • Rosemary A. Renaut

      Affiliations

    • Department of Mathematics and Statistics, Arizona State University, Tempe, AZ 85287-1804, USA
  • ,
  • Kewei Chen

      Affiliations

    • Banner Alzheimer's Institute, Phoenix, AZ 85006, USA
    • Banner Good Samaritan Positron Emission Tomography Center, Phoenix, AZ 85006, USA

Received 29 January 2007; received in revised form 2 March 2007; accepted 15 March 2007.

Abstract 

Background

A new model of an input function for human [18F]-2-Deoxy-2-fluoro-d-glucose fluoro (FDG) positron emission tomography (PET) brain studies with bolus injection is presented.

Methods

Input data for early time, roughly up to 0.6 min, were obtained noninvasively from the time–activity curve (TAC) measured from a carotid artery region of interest. Representative tissue TACs were obtained by clustering the output curves to a limited number of dominant clusters. Three venous plasma samples at a later time were used to fit the functional form of the input function in conjunction with obtaining kinetic rate parameters of the dominant clusters, K1, k2 and k3, using the compartmental model for FDG-PET. Experiments to test the approach used data from 18 healthy subjects.

Results

The model provides an effective means to recover the input function in FDG-PET studies. Weighted nonlinear least squares parameter estimation using the recovered input function, as contrasted with use of plasma samples, yielded highly correlated values of K=K1k3/(k2+k3) for simulated data, a correlation coefficient of 0.99780, a slope of 1.019 and an intercept of almost zero. The estimates of K for real data by graphical Patlak analysis using the recovered input function were almost identical to those obtained using arterial plasma samples, with correlation coefficients greater than 0.9976, regression slopes between 0.958 and 1.091 and intercepts that are virtually zero.

Conclusions

A reliable semiautomated alternative for input function estimation that uses image-derived data augmented with three plasma samples is presented and evaluated for FDG-PET human brain studies.

Keywords: Input function estimation, FDG-PET, Quantification

To access this article, please choose from the options below

Login to an existing account or Register a new account.

  • Purchase this article for 31.50 USD (You must login/register to purchase this article)

    Online access for 24 hours. The PDF version can be downloaded as your permanent record.

  • Subscribe to this title

    Get unlimited online access to this article and all other articles in this title 24/7 for one year.

  • Claim access now

    For current subscribers with Society Membership or Account Number.

  • Visit SciVerse ScienceDirect to see if you have access via your institution.
 

 This study was supported by the Arizona Center for Alzheimer's Disease Research and funded by the Arizona Department of Health Services and the National Institutes of Health (Grant No. EB 2553301).

PII: S0969-8051(07)00086-8

doi:10.1016/j.nucmedbio.2007.03.008

Nuclear Medicine and Biology
Volume 34, Issue 5 , Pages 483-492, July 2007