Experimental Design Sara Bengtsson With thanks to: Christian Ruff

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Presentation transcript:

Experimental Design Sara Bengtsson With thanks to: Christian Ruff Rik Henson

p <0.05 Statistical parametric map (SPM) Image time-series Kernel Design matrix Realignment Smoothing General linear model Gaussian field theory Statistical inference Normalisation p <0.05 Template Parameter estimates

Overview Categorical designs Parametric designs Subtraction - Pure insertion, evoked / differential responses Conjunction - Testing multiple hypotheses Parametric designs Linear - Adaptation, cognitive dimensions Nonlinear - Polynomial expansions, neurometric functions - Model-based regressors Factorial designs Categorical - Interactions and pure insertion Parametric - Linear and nonlinear interactions - Psychophysiological Interactions (PPI) Task A – Task B a A A A A

Cognitive subtraction Aim Neuronal structures underlying a single process P Procedure Contrast: [Task with P] – [matched task without P ]  P >> The critical assumption of „pure insertion“

Cognitive subtraction: Interpretations Question Which neural structures support face recognition?  Several components differ! Distant stimuli vs.  P implicit in control task? Related stimuli vs. Meryl Streep Mum?!  Interaction of process and task? Same stimulus, different tasks vs. Name the person! Name gender!

Evoked responses Faces vs. baseline ‘rest’ Peri-stimulus time {sec} Null events or long SOAs essential for estimation, which may result in an inefficient design. “Cognitive” interpretation hardly possible, but useful to define regions generally involved in the task. Can be useful as a mask to define regions of interests.

Categorical responses Task 1 Task 2 Session

Categorical response Famous faces: 1st time vs. 2nd time Mask: Peri-stimulus time {sec} Mask: Faces vs. baseline. Henson et al., (2002)

Overview Categorical designs Parametric designs Subtraction - Pure insertion, evoked / differential responses Conjunction - Testing multiple hypotheses Parametric designs Linear - Adaptation, cognitive dimensions Nonlinear - Polynomial expansions, neurometric functions - Model-based regressors Factorial designs Categorical - Interactions and pure insertion Parametric - Linear and nonlinear interactions - Psychophysiological Interactions

Conjunction One way to minimize “the baseline problem” is to isolate the same cognitive process by two or more separate contrasts, and inspect the resulting simple effects for commonalities. Conjunctions can be conducted across different contexts: tasks stimuli senses (vision, audition) etc. Note: The contrasts entering a conjunction have to be truly independent.

Conjunction: Example Question Which neural structures support phonological retrieval, independent of item? Price et al., (1996); Friston et al., (1997)

Conjunction specification 1 task/session

Conjunction: Example Friston et al., (1997)

Conjunction: 2 ways of testing for significance SPM8 offers two general ways to test the significance of conjunctions. Test of global null hypothesis: Significant set of consistent effects “which voxels show effects of similar direction (but not necessarily individual significance) across contrasts?” Test of conjunction null hypothesis: Set of consistently significant effects “which voxels show, for each specified contrast, effects > threshold?” Friston et al., (2005). Neuroimage, 25:661-7. Nichols et al., (2005). Neuroimage, 25:653-60.

Overview Categorical designs Parametric designs Subtraction - Pure insertion, evoked / differential responses Conjunction - Testing multiple hypotheses Parametric designs Linear - Adaptation, cognitive dimensions Nonlinear - Polynomial expansions, neurometric functions - Model-based regressors Factorial designs Categorical - Interactions and pure insertion Parametric - Linear and nonlinear interactions - Psychophysiological Interactions

Varying the stimulus-parameter of interest on a continuum, Parametric Designs Varying the stimulus-parameter of interest on a continuum, in multiple (n>2) steps... ... and relating BOLD to this parameter Possible tests for such relations are manifold: Linear Nonlinear: Quadratic/cubic/etc. „Data-driven“ (e.g., neurometric functions, computational modelling)

A linear parametric contrast Linear effect of time Non-linear effect of time

A non-linear parametric design matrix Polynomial expansion: f(x) ~ b1 x + b2 x2 + ... …up to (N-1)th order for N levels SPM8 GUI offers polynomial expansion as option during creation of parametric modulation regressors. SPM{F} F-contrast [1 0] on linear param F-contrast [0 1] on quadratic param Buchel et al., (1996) Linear Quadratic

Parametric modulation Quadratic param regress Linear param regress Delta function seconds Delta Stick function Parametric regressor

Parametric design: Model-based regressors In model-based fMRI, signals derived from a computational model for a specific cognitive process are correlated against BOLD from participants performing a relevant task, to determine brain regions showing a response profile consistent with that model. The model describes a transformation between a set of stimuli inputs and a set of behavioural responses. See e.g. O’Doherty et al., (2007) for a review.

Model-based regressors: Example Question Is the hippocampus sensitive to the probabilistic context established by event streams? Rather than simply responding to the event itself. The same question can be formulated in a quantitative way by using the information theoretic quantities ‘entropy’ and ‘surprise’. Thus, hippocampus would be expected to process ‘entropy’ and not ‘surprise’. ‘surprise’ is unique to a particular event and measures its improbability. ‘entropy’ is the measure of the expected, or average, surprise over all events, reflecting the probability of an outcome before it occurs. xi is the occurrence of an event. H(X) quantifies the expected info of events sampled from X.

Model-based regressors: Example Participants responded to the sampled item by pressing a key to indicate the position of that item in the row of alternative coloured shapes. The participants will learn the probability with which a cue appears. Strange et al., (2005)

Overview Categorical designs Parametric designs Subtraction - Pure insertion, evoked / differential responses Conjunction - Testing multiple hypotheses Parametric designs Linear - Adaptation, cognitive dimensions Nonlinear - Polynomial expansions, neurometric functions - Model-based regressors Factorial designs Categorical - Interactions and pure insertion Parametric - Linear and nonlinear interactions - Psychophysiological Interactions

Factorial designs: Main effects and Interaction Factor A Factor B b B a A a b a B A B A b

Factorial designs: Main effects and Interaction Question Is the inferiotemporal cortex sensitive to both object recognition and phonological retrieval of object names? say ‘yes’ a. Visual analysis and speech. b. Visual analysis, speech, and object recognition. c. Visual analysis, speech, object recognition, and phonological retrieval. Non-object a b c say ‘yes’ Object name Object Friston et al., (1997)

Factorial designs: Main effects and Interaction name say ‘yes’ Objects Non-objects Main effect of task (naming): (O n + N n) – (O s + N s) Main effect of stimuli (object): (O s + O n) – (N s + N n) Interaction of task and stimuli: (O n + N s) – (O s + N n) Can show a failure of pure insertion Inferotemporal (IT) responses do discriminate between situations where phonological retrieval is present or not. In the absence of object recognition, there is a deactivation in IT cortex, in the presence of phonological retrieval. ‘Say yes’ (Object vs Non-objects) interaction effect (Stimuli x Task) Phonological retrieval (Object vs Non-objects) Friston et al., (1997)

Interaction and pure insertion Interactions: cross-over and simple We can selectively inspect our data for one or the other by masking during inference

Linear Parametric Interaction Question Are there different kinds of adaptation for Word generation and Word repetition as a function of time? A (Linear) Time-by-Condition Interaction (“Generation strategy”?) Contrast: [5 3 1 -1 -3 -5](time)  [-1 1] (categorical) = [-5 5 -3 3 -1 1 1 -1 3 -3 5 -5]

Non-linear Parametric Interaction F-contrast tests for Generation-by-Time interaction (including both linear and Quadratic components) Factorial Design with 2 factors: Gen/Rep (Categorical, 2 levels) Time (Parametric, 6 levels) Time effects modelled with both linear and quadratic components… G-R Time Lin Time Quad G x T Lin G x T Quad

Overview Categorical designs Parametric designs Subtraction - Pure insertion, evoked / differential responses Conjunction - Testing multiple hypotheses Parametric designs Linear - Adaptation, cognitive dimensions Nonlinear - Polynomial expansions, neurometric functions -Model-based regressors Factorial designs Categorical - Interactions and pure insertion Parametric - Linear and nonlinear interactions - Psychophysiological Interactions (PPI)

Psycho-physiological Interaction (PPI) With PPIs we predict physiological responses in one part of the brain in terms of an interaction between task and activity in another part of the brain.

Psycho-physiological Interaction (PPI) Contextual specialization through top-down influences Functional connectivity measure If two areas are interacting they will display synchronous activity.

Psycho-physiological Interaction (PPI) Stephan, 2004 GLM based analysis No empirical evidence in these results of top-down influences.

Psycho-physiological Interaction (PPI) Example: Learning pre post Objects Stimuli Faces Dolan et al., 1997

Psycho-physiological Interaction (PPI) Main effect of learning: Learning pre post Objects Stimuli Faces

Psycho-physiological Interaction (PPI) Question: Does learning involve functional connections between parietal cortex and stimuli specific areas? Learning Stimuli Faces Objects pre post

Psycho-physiological Interaction (PPI) Question: Does learning involve functional connections between parietal cortex and stimuli specific areas? Activity in parietal cortex (main eff Learning) Faces - Objects the product (PPI) X = Seed region One-to-one whole brain

Regressors of no interest The interaction term should account for variance over and above what is accounted for by the main effect of task and physiological correlation 1 0 0 Faces - Objects the product (PPI) Activity in parietal cortex (main eff Learning) Task unspecific neuromodulatory fluctuations PPI activity stimuli Shared task related correlation that we already knew from GLM

Factorial designs in PPI Faces - Objects the product (PPI) PPI activity stimuli 1 0 0 Activity in parietal cortex (main eff Learning) Learning Stimuli Faces Objects pre post Orthogonal contrasts reduce correlation between PPI vector and the regressors of no interest

Psycho-physiological Interaction (PPI) Question: Does learning involve effective connections between parietal cortex and stimuli specific areas? Inferiotemporal cortex discriminates between faces and objects only when parietal activity is high. Right inf temp area Friston et al., 1997; Dolan et al., 1997

Psycho-physiological Interaction (PPI) Interpretations: Stimuli: Faces or objects PPC IT Set Context-sensitive connectivity source target Modulation of stimulus-specific responses

Overview Categorical designs Parametric designs Subtraction - Pure insertion, evoked / differential responses Conjunction - Testing multiple hypotheses Parametric designs Linear - Adaptation, cognitive dimensions Nonlinear - Polynomial expansions, neurometric functions - Model-based regressors Factorial designs Categorical - Interactions and pure insertion Parametric - Linear and nonlinear interactions - Psychophysiological Interactions (PPI)