Literature DB >> 23851955

Identification of disease-related spatial covariance patterns using neuroimaging data.

Phoebe Spetsieris1, Yilong Ma, Shichun Peng, Ji Hyun Ko, Vijay Dhawan, Chris C Tang, David Eidelberg.   

Abstract

The scaled subprofile model (SSM)(1-4) is a multivariate PCA-based algorithm that identifies major sources of variation in patient and control group brain image data while rejecting lesser components (Figure 1). Applied directly to voxel-by-voxel covariance data of steady-state multimodality images, an entire group image set can be reduced to a few significant linearly independent covariance patterns and corresponding subject scores. Each pattern, termed a group invariant subprofile (GIS), is an orthogonal principal component that represents a spatially distributed network of functionally interrelated brain regions. Large global mean scalar effects that can obscure smaller network-specific contributions are removed by the inherent logarithmic conversion and mean centering of the data(2,5,6). Subjects express each of these patterns to a variable degree represented by a simple scalar score that can correlate with independent clinical or psychometric descriptors(7,8). Using logistic regression analysis of subject scores (i.e. pattern expression values), linear coefficients can be derived to combine multiple principal components into single disease-related spatial covariance patterns, i.e. composite networks with improved discrimination of patients from healthy control subjects(5,6). Cross-validation within the derivation set can be performed using bootstrap resampling techniques(9). Forward validation is easily confirmed by direct score evaluation of the derived patterns in prospective datasets(10). Once validated, disease-related patterns can be used to score individual patients with respect to a fixed reference sample, often the set of healthy subjects that was used (with the disease group) in the original pattern derivation(11). These standardized values can in turn be used to assist in differential diagnosis(12,13) and to assess disease progression and treatment effects at the network level(7,14-16). We present an example of the application of this methodology to FDG PET data of Parkinson's Disease patients and normal controls using our in-house software to derive a characteristic covariance pattern biomarker of disease.

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Year:  2013        PMID: 23851955      PMCID: PMC3728991          DOI: 10.3791/50319

Source DB:  PubMed          Journal:  J Vis Exp        ISSN: 1940-087X            Impact factor:   1.355


  47 in total

Review 1.  Intrinsic functional-connectivity networks for diagnosis: just beautiful pictures?

Authors:  Christian Habeck; James R Moeller
Journal:  Brain Connect       Date:  2011

2.  Cerebral blood flow and gray matter volume covariance patterns of cognition in aging.

Authors:  Jason Steffener; Adam M Brickman; Christian G Habeck; Timothy A Salthouse; Yaakov Stern
Journal:  Hum Brain Mapp       Date:  2012-07-17       Impact factor: 5.038

3.  Basics of multivariate analysis in neuroimaging data.

Authors:  Christian Georg Habeck
Journal:  J Vis Exp       Date:  2010-07-24       Impact factor: 1.355

4.  Commentary and opinion: I. Principal component analysis, variance partitioning, and "functional connectivity".

Authors:  S C Strother; I Kanno; D A Rottenberg
Journal:  J Cereb Blood Flow Metab       Date:  1995-05       Impact factor: 6.200

5.  Network correlates of the cognitive response to levodopa in Parkinson disease.

Authors:  P J Mattis; C C Tang; Y Ma; V Dhawan; D Eidelberg
Journal:  Neurology       Date:  2011-08-17       Impact factor: 9.910

6.  Improved sequence learning with subthalamic nucleus deep brain stimulation: evidence for treatment-specific network modulation.

Authors:  Hideo Mure; Chris C Tang; Miklos Argyelan; Maria-Felice Ghilardi; Michael G Kaplitt; Vijay Dhawan; David Eidelberg
Journal:  J Neurosci       Date:  2012-02-22       Impact factor: 6.167

7.  Scaled subprofile model: a statistical approach to the analysis of functional patterns in positron emission tomographic data.

Authors:  J R Moeller; S C Strother; J J Sidtis; D A Rottenberg
Journal:  J Cereb Blood Flow Metab       Date:  1987-10       Impact factor: 6.200

8.  Age-related networks of regional covariance in MRI gray matter: reproducible multivariate patterns in healthy aging.

Authors:  Kaitlin L Bergfield; Krista D Hanson; Kewei Chen; Stefan J Teipel; Harald Hampel; Stanley I Rapoport; James R Moeller; Gene E Alexander
Journal:  Neuroimage       Date:  2009-09-28       Impact factor: 6.556

9.  Modulation of metabolic brain networks after subthalamic gene therapy for Parkinson's disease.

Authors:  Andrew Feigin; Michael G Kaplitt; Chengke Tang; Tanya Lin; Paul Mattis; Vijay Dhawan; Matthew J During; David Eidelberg
Journal:  Proc Natl Acad Sci U S A       Date:  2007-11-27       Impact factor: 11.205

Review 10.  Independent component analysis of functional MRI: what is signal and what is noise?

Authors:  Martin J McKeown; Lars Kai Hansen; Terrence J Sejnowsk
Journal:  Curr Opin Neurobiol       Date:  2003-10       Impact factor: 6.627

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  27 in total

1.  Network Structure and Function in Parkinson's Disease.

Authors:  Ji Hyun Ko; Phoebe G Spetsieris; David Eidelberg
Journal:  Cereb Cortex       Date:  2018-12-01       Impact factor: 5.357

2.  Abnormal metabolic network activity in REM sleep behavior disorder.

Authors:  Florian Holtbernd; Jean-François Gagnon; Ron B Postuma; Yilong Ma; Chris C Tang; Andrew Feigin; Vijay Dhawan; Mélanie Vendette; Jean-Paul Soucy; David Eidelberg; Jacques Montplaisir
Journal:  Neurology       Date:  2014-01-22       Impact factor: 9.910

3.  Consistent abnormalities in metabolic network activity in idiopathic rapid eye movement sleep behaviour disorder.

Authors:  Ping Wu; Huan Yu; Shichun Peng; Yves Dauvilliers; Jian Wang; Jingjie Ge; Huiwei Zhang; David Eidelberg; Yilong Ma; Chuantao Zuo
Journal:  Brain       Date:  2014-10-22       Impact factor: 13.501

4.  Dopaminergic correlates of metabolic network activity in Parkinson's disease.

Authors:  Florian Holtbernd; Yilong Ma; Shichun Peng; Frank Schwartz; Lars Timmermann; Lutz Kracht; Gereon R Fink; Chris C Tang; David Eidelberg; Carsten Eggers
Journal:  Hum Brain Mapp       Date:  2015-06-03       Impact factor: 5.038

5.  Metabolic network expression in parkinsonism: Clinical and dopaminergic correlations.

Authors:  Ji Hyun Ko; Chong Sik Lee; David Eidelberg
Journal:  J Cereb Blood Flow Metab       Date:  2016-07-21       Impact factor: 6.200

6.  LRRK2 and GBA Variants Exert Distinct Influences on Parkinson's Disease-Specific Metabolic Networks.

Authors:  Katharina A Schindlbeck; An Vo; Nha Nguyen; Chris C Tang; Martin Niethammer; Vijay Dhawan; Vicky Brandt; Rachel Saunders-Pullman; Susan B Bressman; David Eidelberg
Journal:  Cereb Cortex       Date:  2020-05-14       Impact factor: 5.357

7.  Disruption of network for visual perception of natural motion in primary dystonia.

Authors:  Koji Fujita; Wataru Sako; An Vo; Susan B Bressman; David Eidelberg
Journal:  Hum Brain Mapp       Date:  2017-12-06       Impact factor: 5.038

8.  Flow-metabolism dissociation in the pathogenesis of levodopa-induced dyskinesia.

Authors:  Vincent A Jourdain; Chris C Tang; Florian Holtbernd; Christian Dresel; Yoon Young Choi; Yilong Ma; Vijay Dhawan; David Eidelberg
Journal:  JCI Insight       Date:  2016-09-22

9.  Parkinson's disease-related network topographies characterized with resting state functional MRI.

Authors:  An Vo; Wataru Sako; Koji Fujita; Shichun Peng; Paul J Mattis; Frank M Skidmore; Yilong Ma; Aziz M Uluğ; David Eidelberg
Journal:  Hum Brain Mapp       Date:  2016-05-21       Impact factor: 5.038

10.  Network modulation following sham surgery in Parkinson's disease.

Authors:  Ji Hyun Ko; Andrew Feigin; Paul J Mattis; Chris C Tang; Yilong Ma; Vijay Dhawan; Matthew J During; Michael G Kaplitt; David Eidelberg
Journal:  J Clin Invest       Date:  2014-07-18       Impact factor: 14.808

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