Graduate Research Associate
Neuroscience Graduate Program (NGP)
There are unprocessed data, but it will be difficult to achieve a similar level of preprocessing quality as the recommended data. That would take many years of software development with contributions from a consortium of world experts in neuroimaging methods. Additionally, your results will be out of step with everyone else’s who use the data. Looking briefly at the Halfpipe paper, it is clear that the methods used are inferior to those from the HCP Pipelines that were used to process the released AABC data and will in fact damage HCP-Style data acquisitions such that they do not maintain the fidelity of spatial localization and the quality of temporal signals that they originally had. Perhaps it would be good to understand why you want to process the data a different way. In general, while we welcome improvements to HCP-Style data processing, we are less enthusiastic about regressions in data quality.
Matt.
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Regarding the availability of the "unprocessed" data, make sure that you have set "Recommended = All" in the Selected Imaging Packages section on BALSA if you want to see all available packages.
Cheers,
-MH
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Michael Harms, Ph.D.
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Professor of Psychiatry
Washington University School of Medicine
Department of Psychiatry, Box 8134
660 South Euclid Ave.
St. Louis, MO 63110
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Graduate Research Associate
Neuroscience Graduate Program (NGP)
I wouldn’t recommend approaching things that way. The data are carefully processed in the way that preserves their spatial resolution and avoids modifying the neural signal temporally, and we even provide for AABC data functional connectomes that you can explore. All of what you propose below would represent regressions in quality.
Matt.
Thanks, Tim, for explaining all that.
I would add that parcellation is preferred over smoothing if what you are actually after is areal level effects (because you are looking for “blobs on the brain”).
Instead of VBM, we parameterize grey matter morphometrics into cortical thickness, cortical surface area, and cortical volume, which are real physical things, whereas “grey matter density” is not.
Matt.
From: Tim Coalson <tim.c...@gmail.com>
Reply-To: "hcp-...@humanconnectome.org" <hcp-...@humanconnectome.org>
Date: Thursday, January 29, 2026 at 5:25 PM
To: "hcp-...@humanconnectome.org" <hcp-...@humanconnectome.org>
Cc: "Harms, Michael" <mha...@wustl.edu>
Subject: Re: [hcp-users] AABC Unprocessed Imaging Files Inquiry
Smoothing is generally not a good processing strategy when there are other options such as group analysis or dimensionality reduction, because smoothing damages spatial specificity (additionally, group analysis of human cortical data should be done on the surface, because volume registration doesn't know how to handle the substantial individual variability in cortical folding of large portions of human cortex). Typical volume-based smoothing in particular doesn't respect the fact that opposing sulcal banks are not directly connected, and also "wastes" some of your signal into white matter and CSF. Our paper critiquing volume-based group cortical analysis touches on these topics: https://www.pnas.org/doi/10.1073/pnas.1801582115 . We recommend the cifti-format versions of our cleaned data if you want to do correlation analyses that include cortex, as it naturally allows highly specific comparison or combination across subjects.
sICA and tICA have already removed artifacts from ("denoised") the data, and we determined that motion regression was not beneficial when using these (motion regression removed some neural signal without appreciable benefit to artifact removal). WM and CSF signal, when using standard masks, are often contaminated with enough gray matter signal that it dominates any other effect (via partial voluming, pointspread function, and simple mask errors), resulting in accidental regression of neural gray matter signal out of the data. tICA is a more selective method to remove global artifacts, such as respiration effects, without removing neural signal.
Our ICA cleanup steps are also effective at removing what motion scrubbing would remove, but more selectively (and helps "fix" artifacts that motion scrubbing would leave in as below-threshold). We have not found bandpass filtering to be helpful, linear detrending is generally enough to deal with scanner drift in typical scan lengths. I'm not sure what an 11-second-per-cycle high frequency cutoff would do to the expected HRF, and there are other ways to remove unstructured noise.
As for VBM, we generally prefer to use accurate surface representations to measure the cortical anatomy directly, rather than blurring the structural image.
Tim
On Thu, Jan 29, 2026 at 11:25 AM Zach Brodnick <zbro...@gmail.com> wrote:
Hello again,
Thank you both for answering my question. In regard to using the recommended data from the AABC Release 1 Data (and eventually AABC Release 2) I had a few questions about the files types.
I am planning on using the "minimally preprocessed" and wanted to make sure I am using the correct files when uploading those into software like CONN Toolbox to run analyses like Seed Based Correlations + Functional Connectivity Analyses (since you can use preprocessed data in that program). Additionally, I am doing volumetric structural analyses with the T1w data.
Resting Data:
For the structural data I am under the assumption that data like {StudyFolder}/${Subject}/MNINonLinear/T1w_restore_brain.nii.gz file are the correct MNI space T1w images (also since it is skull stripped).
For the resting data I am under the assumption that data like {StudyFolder}/${Subject}/MNINonLinear/Results/rfMRI_REST1_AP/rfMRI_REST1_AP_hp0_clean_rclean_tclean.nii.gz are the cleaned data (477 volumes) can be used.
Uploading the Movement_Regressors.txt (Friston-12 Format) for the subject's 12 motion regressors
What I aim to do in CONN:
Apply 4 mm FWHM spatial smoothing and, structural segmentations of the T1ws to obtain GM/WM/CSF estimates. Then for denoising, include aCompCor (5 WM + 5 CSF PCs), motion regression (12 params: 6 motion + derivatives), ART scrubbing using a 95th-percentile threshold, linear detrending, and band-pass filtering at 0.008–0.09 Hz.
Volumetric Structural Data:
For the structural data I believe the {StudyFolder}/${Subject}/T1w/T1w_acpc_dc_restore.nii.gz files are the appropriate files since VBM related toolboxes (Ex: CAT12) need native space, non-segmented and non-skull stripped images.
Based on reading and my understanding of the Glass et al. 2013 Minimal Preprocessing HCP Pipeline Paper, I believe these analyses can work with your data. Please correct me if I am wrong.
Again, many thanks for always being so helpful!
-Zach
Zach Brodnick
Graduate Research Associate
Neuroscience Graduate Program (NGP)
The Ohio State University
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Hi,
We have applied correction for gradient nonlinearity distortion, using the appropriate coefficient file for the acquisition scanner, for the pre-processing that we have applied to all HCP-related projects, include HCP-YA, HCP-A, and now AABC. This step was not ever "skipped".
Cheers,
-MH
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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
Zach Brodnick
Graduate Research Associate
Neuroscience Graduate Program (NGP)
The Ohio State University
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Here are the key differences between the HCP Pipelines and traditional analyses out there:
The data on ConnectomeDB powered by BALSA are all processed using the above recommended approaches. Thus, there are major differences in both spatial localization quality and denoising quality between HCP Pipeline processed data and data processed using other approaches that don’t consider the important lessons learned from the HCP. It continues to be remarkable how some investigators will take HCP data and ruin its advantages in spatial localization and temporal resolution by applying non-HCP methods to it. As I said before, we remain interested in new methods that do better than what we have already done (and spend a lot of effort trying to improve upon existing HCP processing methods), but are not interested methods that reduce data quality because they get #1-4 above wrong.
Matt.