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Functional Mixed Effect Models Functional Mixed Effect Models Spatial-temporal Process Longitudinal Data Objectives: Dynamic functional effects of covariates of interest on functional response.
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Functional Mixed Effect Models Spatial-temporal Process Longitudinal Data Objectives: Dynamic functional effects of covariates of interest on functional.

Jan 17, 2018

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Samson Hubbard

Functional Analysis of Diffusion Tensor Tract Statistics (FADTTS) pipeline FMPM GUI is a MATLAB graphical user interface
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Page 1: Functional Mixed Effect Models Spatial-temporal Process Longitudinal Data Objectives: Dynamic functional effects of covariates of interest on functional.

Functional Mixed Effect Models

Functional Mixed Effect Models

Spatial-temporal ProcessLongitudinal Data

Objectives:Dynamic functional effects of covariates of interest on functional response.

Page 2: Functional Mixed Effect Models Spatial-temporal Process Longitudinal Data Objectives: Dynamic functional effects of covariates of interest on functional.

FMEM

Global Noise Components Local Correlated Noise

Decomposition:

Ying et al. (2014). NeuroImage.Zhu, Chen, Yuan, and Wang (2014). Arxiv.

Page 3: Functional Mixed Effect Models Spatial-temporal Process Longitudinal Data Objectives: Dynamic functional effects of covariates of interest on functional.

Functional Analysis of Diffusion Tensor Tract Statistics (FADTTS) pipeline

• http://www.nitrc.org/projects/fadtts• FMPM GUI is a MATLAB graphical user interface

Page 4: Functional Mixed Effect Models Spatial-temporal Process Longitudinal Data Objectives: Dynamic functional effects of covariates of interest on functional.

FADTTS

• Specify input-output directory• Prepare input data

Page 5: Functional Mixed Effect Models Spatial-temporal Process Longitudinal Data Objectives: Dynamic functional effects of covariates of interest on functional.

FADTTS• Hypothesis Testing

– Specify the contrast matrix and the corresponding zero vector, say Cdesign=[0,1,0]; and B0vector=zeros(1,L0);

– specify ExpVar. E.g., ExpVar=0.99;

– PvalG.mat and PvalL.mat– HT_FMPM_Example.m (non GUI)

Page 6: Functional Mixed Effect Models Spatial-temporal Process Longitudinal Data Objectives: Dynamic functional effects of covariates of interest on functional.

FADTTS

• Simultaneous Confidence Interval– Same as Hypothesis Testing

– LowerBd.mat and UpperBd.mat (alpha = 0.05, and 0.01)– SB_FMPM_Example.m (non GUI)

Page 7: Functional Mixed Effect Models Spatial-temporal Process Longitudinal Data Objectives: Dynamic functional effects of covariates of interest on functional.

Real Data

DTImaging parameters:

• TR/TE = 5200/73 ms• Slice thickness = 2mm• In-plane resolution = 2x2 mm^2• b = 1000 s/mm^2• One reference scan b = 0 s/mm^2• Repeated 5 times when 6 gradientdirections applied.

genu

Page 8: Functional Mixed Effect Models Spatial-temporal Process Longitudinal Data Objectives: Dynamic functional effects of covariates of interest on functional.

Real Data

Page 9: Functional Mixed Effect Models Spatial-temporal Process Longitudinal Data Objectives: Dynamic functional effects of covariates of interest on functional.

Real Data Analysis Results