Nicole

From Psych 221 Image Systems Engineering
Revision as of 05:44, 12 March 2012 by imported>Psych204B (Art Repair)
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Back to Psych 204B Projects 2012


Background

Some text introducing the general big idea of the project and the specific problem of motion correction

The Problem: Subject Motion

You can use subsections if you like. Below is an example of a retinotopic map. Or, to be precise, below will be an example of a retinotopic map once the image is uploaded. To add an image, simply put text like this inside double brackets 'MyFile.jpg | My figure caption'. When you save this text and click on the link, the wiki will ask you for the figure.
Figure 1

Below is another example of a reinotopic map in a different subject.
Figure 2

Once you upload the images, they look like this. Note that you can control many features of the images, like whether to show a thumbnail, and the display resolution.

Figure 3


A Potential Solution: Interpolation Using Motion Correction Algorithms

MNI is an abbreviation for Montreal Neurological Institute.

Methods

Subjects

Seven healthy volunteers participated in this study. Their mean age was 23.8 years old and four participants were male. These data were collected as part of a larger sample of 16 healthy volunteers (mean age 23.2 years old).

MR acquisition

Data were obtained on a GE scanner. Et cetera.

Study Design and Trial Paradigm

MR Analysis

The MR data was analyzed using mrVista software tools.

Pre-processing

All data were slice-time corrected, motion corrected, and repeated scans were averaged together to create a single average scan for each subject. Et cetera.

PRF model fits

PRF models were fit with a 2-gaussian model.

MNI space

After a pRF model was solved for each subject, the model was trasnformed into MNI template space. This was done by first aligning the high resolution t1-weighted anatomical scan from each subject to an MNI template. Since the pRF model was coregistered to the t1-anatomical scan, the same alignment matrix could then be applied to the pRF model.
Once each pRF model was aligned to MNI space, 4 model parameters - x, y, sigma, and r^2 - were averaged across each of the 6 subjects in each voxel.


Results

No Motion Correction

Some text. Some analysis. Some figures.

Using Motion Correction

Some text. Some analysis. Some figures.

Dropping (a) Subject(s) who move too much

Some text. Some analysis. Some figures. Maybe some equations.


Equations

If you want to use equations, you can use the same formats that are use on wikipedia.
See wikimedia help on formulas for help.
This example of equation use is copied and pasted from wikipedia's article on the DFT.

The sequence of N complex numbers x0, ..., xN−1 is transformed into the sequence of N complex numbers X0, ..., XN−1 by the DFT according to the formula:

Xk=n=0N1xne2πiNknk=0,,N1

where i is the imaginary unit and e2πiN is a primitive N'th root of unity. (This expression can also be written in terms of a DFT matrix; when scaled appropriately it becomes a unitary matrix and the Xk can thus be viewed as coefficients of x in an orthonormal basis.)

The transform is sometimes denoted by the symbol , as in 𝐗={𝐱} or (𝐱) or 𝐱.

The inverse discrete Fourier transform (IDFT) is given by

xn=1Nk=0N1Xke2πiNknn=0,,N1.


Conclusions

Here is where you say what your results mean.

References - Resources and related work

References

Software

Appendix I - Code and Data

Art Repair

For more information about the SPM plugin ArtRepair, see: Art Repair]

Data

zip file with my data