Methods for Dummies Overview and Introduction

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Presentation transcript:

Methods for Dummies Overview and Introduction 4th November 2015 Isobel Weinberg and Taposhri Ganguly

PROS CONS Relaxed environment Presentation skills Networking/knowing who to ask No assessment involved Fun at the FIL Know-how/practical guide Presenting with partner Learning Specific/deep understanding Overall view

Overview What is MfD? Programme How to prepare your presentation Where to find information and help Experts SPM

Welcome Aim of MfD: to provide a basic introduction to human brain imaging analysis methods, focusing on fMRI and M/EEG Wednesdays 1200-1300 hrs in 4th floor seminar room Each talk will be given by two presenters and last about 30 min + 15 minutes for questions. Generally it should introduce the relevant theory and be followed by a demo using SPM12 interface. Term 1: fMRI Term 2: MEG and EEG

Schedule – 1 Introduction to MfD 4/11/2015 Basis of the BOLD signal 11/11/2015 Samira Kazan Preprocessing: realigning and unwarping 18/11/2015 Ged Ridgway Preprocessing: coregistration and spatial normalization 25/11/2015 T-tests, Anovas and Regression 2/12/2015 TBC 1st level analysis: design matrix, contrasts and inference, GLM 9/12/2015 Guillaume Flandin 1st level analysis: basis functions, parametric modulation and correlated regressors 16/12/2015 2nd level analysis: between-subject analysis 13/01/2015

Term 2 topics 2nd level analysis: between-subject analysis Bayes for Beginners Random Field Theory Study design and efficiency Issues with analysis and interpretation (e.g. double dipping, Type I/Type II errors) Basis of the M/EEG signal Preprocessing and experimental design Contrasts, inference and source localisation Introduction to connectivity (PPI, resting state) DCM for fMRI: theory and practice DCM for ERP/ERF: theory and practice Model comparison Voxel-based morphometry Diffusion tensor imaging

How to prepare Read the Presenter’s Guide http://www.fil.ion.ucl.ac.uk/mfd/page1/guide2014.pdf Remember your audience are not experts… Don’t just copy last year’s slides isobel.weinberg.13@ucl.ac.uk t.ganguly@ucl.ac.uk

Where to find information MfD homepage: http://www.fil.ion.ucl.ac.uk/mfd/ Programme Resources: Presenter’s guide, previous slides, links, SPM manual etc Name of expert (email in UCL Outlook or from typing name + “FIL” or “UCL” into Google)

Where to find information Go to the MfD homepage  Resources Online Key papers Previous years’ slides Human Brain Function Textbook (online) SPM course slides Cambridge CBU homepage (Rik Henson’s slides) Local Methods Group Experts Monday Methods Meetings (4th floor FIL, 12.30) SPM email list

Where to find help: Experts Samira Kazan Gabriel Ziegler Will Penny John Ashburner Gareth Barnes Mohamed Seghier Tom FitzGerald Guillaume Flandin Sarah Gregory Vladimir Litvak Bernadette van Wijk Dimitris Pinotsis Peter Smittenaar Email the expert: discuss presentation and other issues (1 week before talk) Expert will be present in the session

SPM Statistical Parametric Mapping Invented at the FIL A software package designed for the analysis of brain imaging data in fMRI, PET, SPECT, EEG & MEG It runs in Matlab… just type SPM at the prompt and all will be revealed The SPM website has a manual and datasets available for playing around with

What does SPM and MfD do? Using neuroimaging, the idea behind SPM is to identify and make inferences about regionally specific brain activity. This gives way for analysing the integration and interactions among the engaged and identified regions. MfD helps to provide the background to understand the principles of experimental design and data analysis implemented in SPM

What does SPM do? Allows you to do: preprocessing data analysis: connectivity general linear model parameter estimation dynamic causal modeling

SPM overview GLM describes the data at each voxel: mass univariate approach Takes into account Experimental and confounding effects… and residual variability GLM used in combination with a temporal convolution model Once you have carried out your pre-processing you can specify your design and data The design matrix is simply a mathematical description of your experiment E.g. ‘visual stimulus on = 1’ ‘visual stimulus off = 0’

Preprocessing is the preparation of your imaging data to start your analysis Do motion correction (realignment of the data), normalise so that it’s all in the same space, smooth the data so that you can compare between subjects.

Once you have carried out your pre-processing you can specify your design and data The design matrix is simply a mathematical description of your experiment E.g. ‘visual stimulus on = 1’ ‘visual stimulus off = 0’

GLM describes the data at each voxel: mass univariate approach It takes into account experimental and confounding effects and residual variability

Then you estimate how much your parameters of interest explain the BOLD response for each voxel, and threshold the resulting estimates to find out where your parameters explain significant amounts of variance.

X y + = Mass-univariate analysis: voxel-wise GLM Model is specified by Design matrix X Assumptions about e N: number of scans p: number of regressors The design matrix embodies all available knowledge about experimentally controlled factors and potential confounds.

Thank you Please don’t leave without having cake 