Hi Mike,
What I currently recommend for fMRI at 3T for new projects (and in progress clinically) is a little different from what the HCP acquired in the past:
*2.4mm isotropic
*TR=1s
*60 angled slices
A Prisma can achieve the above with MB=4. A high-end XT Vida can achieve it with MB=5. A low-end XQ Vida/Skyra requires MB=6. All of these are producing very nice images (better than 3T HCP).
For 7T fMRI, I would stick with what we did with HCP-YA (1.6mm isotropic, TR=1s, 85 angled slices, MB=5, IPAT=2).
The gains of going substantially faster than 1s are not that high in simulations and so in so far as simulations don’t adequately account for all the losses, one might not be gaining any more. Up to 1s is a lot steeper gain. The HCP-Style approach recommends voxel size less than mean cortical thickness, which is 2.6mm, so stepping back from 2mm is also reasonable. 7T has much more CNR available, so pushing to minimum cortical thickness at 1.6mm makes sense there.
Temporal ICA is for removing global respiratory artifact. It is available in the HCP Pipelines GitHub, and we have been working on getting the automated classifier hosted as well.
Wishart Filtering is a better approach to reduce random thermal noise (which is what it sounds like you are talking about). How to use it best is a little complicated, though, and we plan to put a paper out on that. That paper is pending having some NHP connectivity data comparisons that will produce strong evidence for the benefits though.
Overall, the main potentially available technical advances would be a head only scanner capable of much shorter echo spacing (makes multi-echo viable) and some of the TIDY fMRI stuff where k-space info is shared across timepoints (amongst other benefits). I don’t have any TIDY fMRI data yet myself though, so I cannot comment on any limitations that technology might have.
Matt.
--
You received this message because you are subscribed to the Google Groups "HCP-Users" group.
To unsubscribe from this group and stop receiving emails from it, send an email to
hcp-users+...@humanconnectome.org.
To view this discussion visit
https://groups.google.com/a/humanconnectome.org/d/msgid/hcp-users/c1863699-2003-40f3-9283-9fbe614c4f05n%40humanconnectome.org.
The materials in this message are private and may contain Protected Healthcare Information or other information of a sensitive nature. If you are not the intended recipient, be advised that any unauthorized use, disclosure, copying or the taking of any action in reliance on the contents of this information is strictly prohibited. If you have received this email in error, please immediately notify the sender via telephone or return mail.
Thanks, Matt — incredibly helpful as always.
A quick follow‑up: Do you have guidance (here or offline) on the best way to implement Wishart filtering for HCP time series? I dug into it today, and I think I’ve pieced together the typical workflow:
Even if that general flow is correct, having the steps isn’t the same as knowing I’m doing it right — e.g., selecting thresholds, handling surface vs. more problematic subcortical/cerebellar/brainstem voxelwise data, etc. And since I’m not using any HCP code for this yet (I assembled Matlab code from scratch for everything), there’s plenty of room for error. Could you offer some technical guidance on how you recommend implementing this? And the challenges you alluded to in your prior post?
We’re trying to see how much thermal noise-related problem we can mitigate across several datasets collected over the past 5+ years. We’re also choosing a sequence for new projects, including one starting in two weeks. So implementing Wishart filtering soon could help inform that decision.
Thanks again for your help,
Mike
Hi Mike,
It is a bit complex because some analyses benefit and others don’t and when you apply it also matters. I would prefer not to unleash the technique onto the world without the detailed guidance. Sorry for the delay on that. We have a mostly drafted manuscript, but I think it really needs the comparison to gold-standard connectivity to convince the skeptical reviewer (we have done it we preliminary data before, but we were hoping to get a final dataset together for this).
I would recommend the sequences below regardless of Wishart Filtering. They represent our best current approach. If you need it, I could provide a .exar1 (assuming you are on XA60 that is).
Also, Wishart Filtering is mainly important for dense analyses. Parcellation remains the best approach for reducing unstructured noise if you care about the effects at the level of brain areas (and Wishart Filtering doesn’t actually make much of a difference in the context of parcellated analyses because the parcellation effectively kills the unstructured noise already).
I can’t build things for old software, just what I have on our MRPM server. I could send you a PDF if you want.
If you want, we have an E11C protocol for a Skyra for the AMP SCZ program that you could import as a starting point:
https://zenodo.org/records/14530974
cheers,
-MH
--
Michael Harms, Ph.D.
-----------------------------------------------------------
Professor of Psychiatry
Washington University School of Medicine
Department of Psychiatry, Box 8134
660 South Euclid Ave.
St. Louis, MO 63110
To view this discussion visit
https://groups.google.com/a/humanconnectome.org/d/msgid/hcp-users/7591EF2B-0D78-439E-A024-FE3A5138F906%40wustl.edu.
Is that what I suggested below or a different protocol?
Matt.
To view this discussion visit
https://groups.google.com/a/humanconnectome.org/d/msgid/hcp-users/2D2E3241-AC9C-433D-9CE5-774F7144E727%40wustl.edu.
It's 2.4 mm isotropic for the BOLD, with 60 slices, and TR=900 ms. Easy from there to modify the TR and MB factor (if allowed, for the chosen TR), if Michael wants to make changes
To view this discussion visit
https://groups.google.com/a/humanconnectome.org/d/msgid/hcp-users/D2F5BDE8-9411-48C3-831F-AC339EC3D505%40wustl.edu.
Skyra will require some fiddling to get that down. I can send a PDF later with all that already done.
To view this discussion visit
https://groups.google.com/a/humanconnectome.org/d/msgid/hcp-users/47350E15-4DCB-4D51-8FF3-4EDE2C636604%40wustl.edu.
The link I sent already contains a working Skyra protocol on E11C. The only question in my mind is whether one could lower MB to 5 at TR = 1000 ms.
To view this discussion visit
https://groups.google.com/a/humanconnectome.org/d/msgid/hcp-users/6A1DFA90-A243-494E-BA69-5E2F0E295F1A%40wustl.edu.
Sounds good. XA may well have broken Skyras anyway for fast EPI…
To view this discussion visit
https://groups.google.com/a/humanconnectome.org/d/msgid/hcp-users/AE1A4A97-D840-4886-86E9-AA94BF982919%40wustl.edu.