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fMRI
      Study
      Design
The basic framework


Russell James, J.D., Ph.D.
Texas Tech University
Goals of fMRI Study Design
 1. Create a     2. Detect brain
   desired            signals
  cognitive         associated
    state        with that state
   (standard       (fMRI-specific
 experimental       experimental
 design issues)     design issues)
We want to estimate the likelihood
that a voxel, or group of voxels, is
    responding to the stimulus
But, fMRI data is not like this




Activation
fMRI data is like this




Activation
The signal change is small.
The signal is noisy.


Activation
The
  signal
change is
  small

½% to 3%
change in
intensity with
a 1.5 T scanner
The signal
 is noisy
1. The brain
   is noisy
2. The scanner
   is noisy
The brain is noisy


             The brain is
             constantly active,
             constantly firing,
             constantly receiving
             input, constantly
             sending instructions
The brain is noisy
Even conscious
thought is scattered.
Did you think about
something other
than fMRI in the
last 3 minutes?
How do
   we
 design
for noisy
 brains?



1. Contrasts   2. Repetition
Think in contrasts
A single image      A contrast can
  contains much        subtract out
 unrelated brain         the noise
   activations
                            Task A-
Task A       Task B         Task B
Think of study design in terms of
             contrasts

Image                     Image of
             Image         task A-
of task      of task
   A                      Image of
                B           task B
The comparison task can be “rest”


Image                    Image of
             Image        task A-
of task      of task
   A                     Image of
                B          task B
We can use a
    “cognitive subtraction”
comparison to isolate an activity




            -           =
Cognitive subtraction:
 the comparison task is
identical, except for one
  variation of interest
Cognitive subtraction: View famous
    faces v. non-famous faces
How might you improve cognitive
subtraction in this picture selection?




    Match gender? Color pallet?
   Expressions? Clothing choice?
Levels of cognitive subtraction
                   • Basic cognitive subtraction:
Stronger Results
                     Rational argument of validity
                   • Cognitive conjunction:
                     Two cognitive subtraction
                     designs show same activation
                     difference
                   • Parametric design:
                     Increasing levels of a factor
                     correspond with increasing
                     levels of activation
Cognitive conjunction

       Memorizing
       letters
            v.
       Memorizing v. Reading
       numbers       numbers
Parametric design




                          Increasing activation
Memorize 9 numbers                                ●   ●




Memorize 6 numbers
                                                  ●   ●




Memorize 3 numbers
                                                  ●   ●




Memorize 1 number
Design for   BIG contrasts



fMRI is too
noisy to be
good at
subtle             Contrast extreme
cognitive          differences first
differences
How do
   we
 design
for noisy
 brains?



1. Contrasts   2. Repetition
Design for
repeated
activations
In social sciences we may get
    1,000 people to make one
          decision on a survey




          In fMRI we get 25
 people to do a task 40 times
        for 1,000 activations
Two common design types



                          Event
                         Related
Block                    Design
Design
Block Design




Time
Stacking the HRFs
               Within a certain
               range, repeating
               a stimulus will
               cause the HRF
               to stack linearly.
               This causes
               large total signal
               change in block
               designs.
Event Related Design
Block design advantages

• Easiest way to
  detect differences
  among two
  comparison states
• Largest HRF
  activation
• More robust to
  unexpected HRF
  shapes
BOLD response in
block v. event related (slow)
Event related design advantages
Block designs may not work
• Modeling incorrect
  responses (can’t
  know in advance)
• Habituation may
  prevent activations
Can precisely observe
the actual HRF
Permits self-paced
trials
Barriers to repeating the activation
Barriers to repeating the activation
               • Repetitions can
                 get boring or
                 predictable,
                 reducing activation
               • Emotional states
                 may not be induced
                 or changed quickly
               • Some decisions are
                 difficult to repeat
               • Some biases can
                 be added once, but
                 not removed
Repetitions can get boring or
    predictable, reducing activation

+              +            +




+              +            +




+              +            +
Emotional states may
  not be induced or
   changed quickly

Think of the happiest
moment of your life
for 12 seconds

Think of the most painful
moment for 12 seconds
Think of the 2nd happiest
moment for 12 seconds
Think of the 2nd most
painful moment for 12 seconds
Some decisions are difficult to
              repeat

“If you died today
what percentage of
your estate would you
want to leave to your
children?”
Are you sure?
Any second thoughts?
Want to think about
it some more?
Some biases are not easily removed
1. How much of a $100
    extra payment will you
    give to the United Way?
2. The United Way CEO
    made $1,037,140 last
    year.
3. How much of a $100
    extra payment will you
    give to the United Way?
1st comparison works great,
but can you repeat this?
The signal
 is noisy
1. The brain
   is noisy
2. The scanner
   is noisy
Designing for a noisy scanner


 Physical
  issues

  Timing
  issues
Physical issues of a
              noisy scanner

Machine   Metal      Movement
Machine


    Optimizing
 machine, setting
   parameters,
     region of
interest, speed v.
  resolution, etc.
Metal: Limit any ferrous content to
avoid disturbances in magnetic field
Movement
Keep the subject still during runs
              • Motivated
                subjects
              • Foam packing



             Statistical
             adjustments (but,
             may not help task-
             related movement)
Designing for a noisy scanner


 Physical
  issues

  Timing
  issues
Timing
 issues
  of a
  noisy
scanner
 signal
Scanner Drift
Over longer periods of time (2-10
minutes), the magnetic field of the
scanner can slowly rise and fall.
Scanner Drift
    Comparison across long (>2min)
      periods should be avoided.

   Condition A                 Condition A




                 Condition B                 Condition B

A–B shows magnetic differences but not from HRF
What is wrong with this?
30 sec block of task A (version 1)
30 sec block of task A (version 2)
30 sec block of task A (version 3)
30 sec block of task A (version 4)
30 sec block of task B (version 1)
30 sec block of task B (version 2)
30 sec block of task B (version 3)
30 sec block of task B (version 4)
30 sec block of task C (version 1)
30 sec block of task C (version 2)
30 sec block of task C (version 3)
30 sec block of task C (version 4)
What is wrong with this?
30 sec block of task A (version 1)
30 sec block of task A (version 2)
30 sec block of task A (version 3)   Comparing
30 sec block of task A (version 4)   A to C
                                     spans well
30 sec block of task B (version 1)
                                     over 120
30 sec block of task B (version 2)   seconds so
30 sec block of task B (version 3)   we can’t
30 sec block of task B (version 4)   distinguish
30 sec block of task C (version 1)   from
30 sec block of task C (version 2)   scanner
30 sec block of task C (version 3)   drift
30 sec block of task C (version 4)
Block Design Timing Issues
Ideal timing 15-20 seconds on then
15-20 seconds off (or A then B)
             • Long enough for HRF
               to relax in between
               presentations
             • Short enough for
               many comparison
               blocks within short
               time
Slow Event-Related Timing Issues

            Waiting 12+ seconds in
            between each event to
            allow HRF to calm
            down
            Boring and inefficient
Rapid Event-
  Related
   Design
   Timing
   Issues


Jitter spacing to record different
parts of the HRF and to avoid
correlation with other functions like
heartbeat and breathing
Rapid Event-
  Related
   Design
   Timing
   Issues

Gap spacing >4 seconds, else
  • HRF blurring: Not enough time
    for noticeable HRF changes
  • Non-linearity: HRFs don’t stack
    linearly forever
Optimum jittering estimation
programs (e.g., OptSeq - Doug Greves; Genetic Algorithm - Tor Wager)
Session Timing
      Typically, studies
      include groups of
      tasks of 4-10 min.
      with intervening 2
      min. breaks.
      Also need high
      resolution (T1) scan
      ~5 min.; Locater
      scans (~30 sec.); T2
      axial scan for
      radiologist (~2 min.)
In a 48 minute      10 min. subject in and out
session, you may    Locator – 20 seconds
get about 24-28     Short Break
minutes of actual   T2 axial: 2 min
stimulus            Break
presentation
                    T1 high resolution: 5 min
                    Break - wake up
                    Block 1: 8 minutes
                    Break/Instructions: 2 min
                    Block 2: 8 minutes
                    Break/Instructions: 2 min
                    Block 3: 8 minutes
$650/hour scanner time
  ~$1300/hour stimulus time
  ~$20+ per minute
  ~$1+ every 3 seconds




Add 12 sec. to 25 subjects = $100+
With so many, many design
issues to think about, what is
                the best way to
                    design your
                    first study?
Stand on some
  shoulders!
Find a good prior study, copy the
technical elements, but change your
item of interest
fMRI
      Study
      Design
The basic framework


Russell James, J.D., Ph.D.
Texas Tech University

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fMRI Study Design

  • 1. fMRI Study Design The basic framework Russell James, J.D., Ph.D. Texas Tech University
  • 2. Goals of fMRI Study Design 1. Create a 2. Detect brain desired signals cognitive associated state with that state (standard (fMRI-specific experimental experimental design issues) design issues)
  • 3. We want to estimate the likelihood that a voxel, or group of voxels, is responding to the stimulus
  • 4. But, fMRI data is not like this Activation
  • 5. fMRI data is like this Activation
  • 6. The signal change is small. The signal is noisy. Activation
  • 7. The signal change is small ½% to 3% change in intensity with a 1.5 T scanner
  • 8. The signal is noisy 1. The brain is noisy 2. The scanner is noisy
  • 9. The brain is noisy The brain is constantly active, constantly firing, constantly receiving input, constantly sending instructions
  • 10. The brain is noisy Even conscious thought is scattered. Did you think about something other than fMRI in the last 3 minutes?
  • 11. How do we design for noisy brains? 1. Contrasts 2. Repetition
  • 13. A single image A contrast can contains much subtract out unrelated brain the noise activations Task A- Task A Task B Task B
  • 14. Think of study design in terms of contrasts Image Image of Image task A- of task of task A Image of B task B
  • 15. The comparison task can be “rest” Image Image of Image task A- of task of task A Image of B task B
  • 16. We can use a “cognitive subtraction” comparison to isolate an activity - =
  • 17. Cognitive subtraction: the comparison task is identical, except for one variation of interest
  • 18. Cognitive subtraction: View famous faces v. non-famous faces
  • 19. How might you improve cognitive subtraction in this picture selection? Match gender? Color pallet? Expressions? Clothing choice?
  • 20. Levels of cognitive subtraction • Basic cognitive subtraction: Stronger Results Rational argument of validity • Cognitive conjunction: Two cognitive subtraction designs show same activation difference • Parametric design: Increasing levels of a factor correspond with increasing levels of activation
  • 21. Cognitive conjunction Memorizing letters v. Memorizing v. Reading numbers numbers
  • 22. Parametric design Increasing activation Memorize 9 numbers ● ● Memorize 6 numbers ● ● Memorize 3 numbers ● ● Memorize 1 number
  • 23. Design for BIG contrasts fMRI is too noisy to be good at subtle Contrast extreme cognitive differences first differences
  • 24. How do we design for noisy brains? 1. Contrasts 2. Repetition
  • 26. In social sciences we may get 1,000 people to make one decision on a survey In fMRI we get 25 people to do a task 40 times for 1,000 activations
  • 27. Two common design types Event Related Block Design Design
  • 29. Stacking the HRFs Within a certain range, repeating a stimulus will cause the HRF to stack linearly. This causes large total signal change in block designs.
  • 31. Block design advantages • Easiest way to detect differences among two comparison states • Largest HRF activation • More robust to unexpected HRF shapes
  • 32. BOLD response in block v. event related (slow)
  • 33. Event related design advantages Block designs may not work • Modeling incorrect responses (can’t know in advance) • Habituation may prevent activations Can precisely observe the actual HRF Permits self-paced trials
  • 34. Barriers to repeating the activation
  • 35. Barriers to repeating the activation • Repetitions can get boring or predictable, reducing activation • Emotional states may not be induced or changed quickly • Some decisions are difficult to repeat • Some biases can be added once, but not removed
  • 36. Repetitions can get boring or predictable, reducing activation + + + + + + + + +
  • 37. Emotional states may not be induced or changed quickly Think of the happiest moment of your life for 12 seconds Think of the most painful moment for 12 seconds Think of the 2nd happiest moment for 12 seconds Think of the 2nd most painful moment for 12 seconds
  • 38. Some decisions are difficult to repeat “If you died today what percentage of your estate would you want to leave to your children?” Are you sure? Any second thoughts? Want to think about it some more?
  • 39. Some biases are not easily removed 1. How much of a $100 extra payment will you give to the United Way? 2. The United Way CEO made $1,037,140 last year. 3. How much of a $100 extra payment will you give to the United Way? 1st comparison works great, but can you repeat this?
  • 40. The signal is noisy 1. The brain is noisy 2. The scanner is noisy
  • 41. Designing for a noisy scanner Physical issues Timing issues
  • 42. Physical issues of a noisy scanner Machine Metal Movement
  • 43. Machine Optimizing machine, setting parameters, region of interest, speed v. resolution, etc.
  • 44. Metal: Limit any ferrous content to avoid disturbances in magnetic field
  • 45. Movement Keep the subject still during runs • Motivated subjects • Foam packing Statistical adjustments (but, may not help task- related movement)
  • 46. Designing for a noisy scanner Physical issues Timing issues
  • 47. Timing issues of a noisy scanner signal
  • 48. Scanner Drift Over longer periods of time (2-10 minutes), the magnetic field of the scanner can slowly rise and fall.
  • 49. Scanner Drift Comparison across long (>2min) periods should be avoided. Condition A Condition A Condition B Condition B A–B shows magnetic differences but not from HRF
  • 50. What is wrong with this? 30 sec block of task A (version 1) 30 sec block of task A (version 2) 30 sec block of task A (version 3) 30 sec block of task A (version 4) 30 sec block of task B (version 1) 30 sec block of task B (version 2) 30 sec block of task B (version 3) 30 sec block of task B (version 4) 30 sec block of task C (version 1) 30 sec block of task C (version 2) 30 sec block of task C (version 3) 30 sec block of task C (version 4)
  • 51. What is wrong with this? 30 sec block of task A (version 1) 30 sec block of task A (version 2) 30 sec block of task A (version 3) Comparing 30 sec block of task A (version 4) A to C spans well 30 sec block of task B (version 1) over 120 30 sec block of task B (version 2) seconds so 30 sec block of task B (version 3) we can’t 30 sec block of task B (version 4) distinguish 30 sec block of task C (version 1) from 30 sec block of task C (version 2) scanner 30 sec block of task C (version 3) drift 30 sec block of task C (version 4)
  • 52. Block Design Timing Issues Ideal timing 15-20 seconds on then 15-20 seconds off (or A then B) • Long enough for HRF to relax in between presentations • Short enough for many comparison blocks within short time
  • 53. Slow Event-Related Timing Issues Waiting 12+ seconds in between each event to allow HRF to calm down Boring and inefficient
  • 54. Rapid Event- Related Design Timing Issues Jitter spacing to record different parts of the HRF and to avoid correlation with other functions like heartbeat and breathing
  • 55. Rapid Event- Related Design Timing Issues Gap spacing >4 seconds, else • HRF blurring: Not enough time for noticeable HRF changes • Non-linearity: HRFs don’t stack linearly forever Optimum jittering estimation programs (e.g., OptSeq - Doug Greves; Genetic Algorithm - Tor Wager)
  • 56. Session Timing Typically, studies include groups of tasks of 4-10 min. with intervening 2 min. breaks. Also need high resolution (T1) scan ~5 min.; Locater scans (~30 sec.); T2 axial scan for radiologist (~2 min.)
  • 57. In a 48 minute 10 min. subject in and out session, you may Locator – 20 seconds get about 24-28 Short Break minutes of actual T2 axial: 2 min stimulus Break presentation T1 high resolution: 5 min Break - wake up Block 1: 8 minutes Break/Instructions: 2 min Block 2: 8 minutes Break/Instructions: 2 min Block 3: 8 minutes
  • 58. $650/hour scanner time ~$1300/hour stimulus time ~$20+ per minute ~$1+ every 3 seconds Add 12 sec. to 25 subjects = $100+
  • 59. With so many, many design issues to think about, what is the best way to design your first study?
  • 60. Stand on some shoulders!
  • 61. Find a good prior study, copy the technical elements, but change your item of interest
  • 62. fMRI Study Design The basic framework Russell James, J.D., Ph.D. Texas Tech University