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Logan plot
A Logan plot (or Logan graphical analysis) is a graphical analysis technique based on the compartment model that uses linear regression to analyze…
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Related topics
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7 relations
Graph of a function
Iterative method
Medical imaging
Multi-compartment model
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Broader (1)
Systems theory
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2019
2019
CT-guided PET parametric image reconstruction using deep neural network without prior training data
Jianan Cui
,
Kuang Gong
,
Ning Guo
,
Kyungsang Kim
,
Huafeng Liu
,
Quanzheng Li
Medical Imaging
2019
Corpus ID: 86685780
Deep neural networks have attracted growing interests in medical image due to its success in computer vision tasks. One barrier…
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2017
2017
A Study of Dynamic PET Frame-Binning on the Reference Logan Binding Potential
E. Wallstén
,
J. Axelsson
,
M. Karlsson
,
K. Riklund
,
A. Larsson
IEEE Transactions on Radiation and Plasma Medical…
2017
Corpus ID: 27406263
Objective: The reference Logan plot is a tool for determining the non-displaceable binding potential for dynamic PET exams using…
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2016
2016
PS184. Biophysical Alterations of the Brain in First-Episode, Drug-Naïve Patients with Major Depressive Disorder: A Magnetization Transfer Imaging Study
Ziqi Chen
,
W. Peng
,
+4 authors
Q. Gong
International Journal of Neuropsychopharmacology
2016
Corpus ID: 7208270
We investigated the interactive effects of BclI C/G (rs41423247) allelic variants and the diagnosis of major depressive disorder…
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2013
2013
The influence of time sampling on parameters in the Logan plot
E. Wallstén
,
J. Axelsson
,
+4 authors
A. Larsson
Nuclear Science Symposium and Medical Imaging…
2013
Corpus ID: 28575680
The Logan plot is a graphical method for reversible tracer bindings. The bias and uncertainties of this method have previously…
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2013
2013
5118 COMPARISON OF LOGAN PLOT ANALYSIS AND NESTED MODEL SELECTION TECHNIQUE FOR MR ESTIMATION OF DISTRIBUTION VOLUME IN HUMAN BRAIN TUMOR AT 3 TESLA
H. Bagher-Ebadian
,
J. Ewing
,
+7 authors
Soltanian-Zadeh
2013
Corpus ID: 53636703
COMPARISON OF LOGAN PLOT ANALYSIS AND NESTED MODEL SELECTION TECHNIQUE FOR MR ESTIMATION OF DISTRIBUTION VOLUME IN HUMAN BRAIN…
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2012
2012
Logan Plot Estimates of Tracer Distribution Volume from Dynamic Contrast Enhanced MRI Data and Tumor Cellularity in a Rat Model of Cerebral Glioma at 7T
M. Aryal
,
T. Nagaraja
,
+4 authors
J. Ewing
2012
Corpus ID: 51804001
Introduction: Logan plot graphical approach for estimating tracer distribution volume(VD) is widely used in positron emission…
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2010
2010
Studying nociceptive processing in the rat brain by PET imaging and digital atlasing
Trine Hjørnevik
2010
Corpus ID: 148215017
Background and aims. Neuronal events leading to development of long-term potentiation (LTP) in the nociceptive pathways may be a…
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2010
2010
Category: Methodology: Quantification and test–retest study of 11C-(R)-rolipram, a PET tracer of the cAMP cascade, using an arterial input function and an image-derived input function
P. Zanotti-Fregonara
,
S. Zoghbi
,
+5 authors
M. Fujita
NeuroImage
2010
Corpus ID: 207175812
2009
2009
Automation of the Logan plot based PiB-PET quantification over multiple subjects and multiple reference regions
Yi-Wen Sun
,
Xiaofen Liu
,
J. Langbaum
,
J. Venditti
,
E. Reiman
,
Kewei Chen
ICME International Conference on Complex Medical…
2009
Corpus ID: 24925443
Though with known estimation bias concern, Logan plot with the time activity curve from a reference region as the input function…
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2004
2004
Application of various iterative reconstruction for quantitative 3D dynamic brain PET studies
R. Boellaard
,
M. Lubberink
,
Hugo de Jong
,
M. Kropholler
,
A. Lammertsma
IEEE Symposium Conference Record Nuclear Science…
2004
Corpus ID: 28647213
Iterative image reconstruction algorithms may suffer from bias in case of poor statistics. The purpose of this study is: (1) to…
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