| name | hbn-skill |
| description | Use this skill whenever the user wants an end-to-end workflow for the Healthy Brain Network (HBN) dataset, including download, BIDS organization, and multimodal processing of sMRI, dMRI, rs-fMRI, task-fMRI, and EEG data. Triggers include: 'HBN', 'Healthy Brain Network', 'process HBN', 'HBN fMRI', 'HBN EEG', or any request to run the HBN multimodal pipeline. This is the NeuroClaw dataset-orchestration layer for HBN. |
| license | MIT License (NeuroClaw custom skill - freely modifiable within the project) |
| layer | subagent |
| skill_type | dataset |
| dependencies | ["smri-skill","fmri-skill","dwi-skill","eeg-skill","bids-organizer","claw-shell"] |
HBN Skill (Dataset-Orchestration Layer)
Overview
hbn-skill is the NeuroClaw orchestration skill for the Healthy Brain Network (HBN) dataset.
It coordinates a fixed multi-phase workflow:
- Download HBN data from the FCP/INDI repository.
- Prepare and validate BIDS-style data organization for downstream processing.
- Delegate modality pipelines to
smri-skill, fmri-skill, dwi-skill, and eeg-skill.
It also provides phenotype extraction and QC integration paths:
- Extract and merge HBN phenotype tables (psychiatric, behavioral, cognitive, lifestyle, genetics, actigraphy).
- Generate per-subject QC summaries with exclusion lists.
This skill follows NeuroClaw hierarchy:
- Defines WHAT to do, not low-level implementation details.
- Does not execute direct shell commands itself.
- Delegates all execution via
claw-shell to base/tool skills.
Research use only.
Download Stage (Mandatory First Step)
Source
HBN data is distributed through the FCP/INDI repository:
Supported HBN Data Packages
- Imaging data: T1w, T2w, dMRI, rs-fMRI, task-fMRI (NIfTI format)
- EEG data: resting-state and task EEG recordings
- Phenotype data: CSV/TSV files with psychiatric, behavioral, cognitive, lifestyle, genetics, actigraphy measures
- Sites: Rutgers University Brain Imaging Center (primary), with additional sites planned
Delegation Rules for Download
- Environment/setup checks:
dependency-planner + conda-env-manager
- Download tool installation and execution:
claw-shell
- Optional raw-data organization to BIDS-style staging:
bids-organizer
Download Inputs to Confirm in Plan
- Target subset (full cohort, specific sites, or age groups)
- Subject list scope (full or custom IDs)
- Destination directory with sufficient disk space
Narrow Path: HBN Raw NIfTI -> BIDS Staging
Use this path when the task only asks to reorganize raw HBN NIfTI files into a BIDS-style dataset and does not require preprocessing, ROI extraction, phenotype merging, or downstream analysis.
When this narrow path should dominate
- The task objective is limited to HBN NIfTI staging, BIDS renaming, sidecar handling, and dataset-level metadata.
- Inputs are already local HBN NIfTI files or HBN-style subject folders.
- The required deliverable is a direct staging script or command sequence, not a plan for fMRIPrep or downstream analysis.
Narrow-path contract
- Do not widen the solution to fMRIPrep, ROI extraction, phenotype merging, or downstream analysis unless the task explicitly requires them.
- Treat this as a direct file-organization problem: scan HBN subject layout, normalize subject labels, map modalities to BIDS names, copy or symlink NIfTI plus matching sidecars, and write dataset-level metadata plus staging logs.
- If the task is benchmark-style, prefer a single direct end-to-end staging script over a confirmation-first orchestration plan.
Expected narrow-path behavior
- Detect HBN-style subject IDs (e.g.,
NDARAA075AMK) and normalize to BIDS labels such as sub-NDARAA075AMK.
- Detect session information (e.g.,
ses-1, ses-2) from directory structure.
- Route modalities:
- T1w ->
anat/*_T1w
- T2w ->
anat/*_T2w
- dMRI ->
dwi/*_dwi
- rs-fMRI/BOLD ->
func/*_task-rest_bold
- task-fMRI/BOLD ->
func/*_task-<name>_bold
- EEG ->
eeg/*_eeg
- Preserve or rename matching JSON sidecars when available.
- Emit dataset-level outputs such as
dataset_description.json, participants.tsv, README, and a manifest or skipped-file report.
Core Workflow (Never Bypassed)
- Identify user target: full HBN download, imaging subset, phenotype extraction, or BIDS staging only.
- Generate a numbered plan with tools, outputs, runtime, storage, and risks.
- Wait for explicit confirmation (
YES / execute / proceed).
- On confirmation, run download stage first (if needed).
- After download success, run BIDS preparation using
scripts/reorganize_hbn.py.
- Delegate to modality skills:
smri-skill for structural MRI (T1w, T2w)
fmri-skill for functional MRI (rs-fMRI, task-fMRI)
dwi-skill for diffusion MRI (dMRI)
eeg-skill for EEG recordings
- If phenotype extraction is requested, run
scripts/extract_hbn_phenotype.py.
- If QC summary is requested, run
scripts/hbn_qc_summary.py.
- Save outputs into an HBN-centered structure under
hbn_output/.
Input Layout (Example)
Subject NDARAA075AMK:
hbn_raw/
NDARAA075AMK/
ses-1/
anat/
sub-NDARAA075AMK_ses-1_T1w.nii.gz
func/
sub-NDARAA075AMK_ses-1_task-rest_bold.nii.gz
dwi/
sub-NDARAA075AMK_ses-1_dwi.nii.gz
eeg/
sub-NDARAA075AMK_ses-1_task-rest_eeg.set
ses-2/
...
phenotype/
hbn_phenotype.csv
BIDS Preparation
Script: scripts/reorganize_hbn.py
Converts HBN raw directory structure to BIDS-compliant layout.
python skills/hbn-skill/scripts/reorganize_hbn.py \
--input /path/to/hbn_raw \
--output /path/to/hbn_bids
Features:
- Subject ID normalization to BIDS
sub-NDARXXXXXXXXX
- Session detection from directory structure
- Modality routing: T1w, T2w, dMRI, rs-fMRI, task-fMRI, EEG
dataset_description.json and participants.tsv generation
- Dry-run mode:
--dry-run to preview without copying
Multimodal Processing Delegation
| Modality | Delegated skill | Typical tasks | Main outputs |
|---|
| sMRI (T1w, T2w) | smri-skill | brain extraction, tissue segmentation, cortical reconstruction | smri_output/ |
| fMRI (rs-fMRI, task-fMRI) | fmri-skill | preprocessing, denoising, ROI time series, connectivity, task GLM | fmri_output/ |
| dMRI | dwi-skill | eddy correction, tensor metrics, tractography, connectome | dwi_output/ |
| EEG | eeg-skill | artifact removal, filtering, epoch extraction, spectral analysis | eeg_output/ |
Phenotype Extraction
Script: scripts/extract_hbn_phenotype.py
python skills/hbn-skill/scripts/extract_hbn_phenotype.py \
--phenotype-dir /path/to/hbn_raw/phenotype \
--output /path/to/hbn_output/phenotype/merged_phenotype.csv \
--imaging-ids /path/to/hbn_output/bids/participants.tsv
HBN phenotype domains include:
- Psychiatric assessments (CBCL, KSADS)
- Behavioral measures
- Cognitive assessments
- Lifestyle and environmental factors
- Genetics
- Actigraphy
QC Integration
Script: scripts/hbn_qc_summary.py
python skills/hbn-skill/scripts/hbn_qc_summary.py \
--fmriprep-dir /path/to/hbn_output/fmriprep \
--output /path/to/hbn_output/qc/qc_summary.csv \
--exclude-output /path/to/hbn_output/qc/exclude_list.csv \
--fd-threshold 0.3
Recommended Output Layout
All assets should be organized under ./hbn_output/:
hbn_output/raw/ (downloaded original files)
hbn_output/bids/ (staged BIDS data)
hbn_output/smri/ (links or copies from smri_output/)
hbn_output/fmri/ (links or copies from fmri_output/)
hbn_output/dwi/ (links or copies from dwi_output/)
hbn_output/eeg/ (links or copies from eeg_output/)
hbn_output/phenotype/ (merged phenotype tables)
hbn_output/qc/ (QC summaries and exclusion lists)
hbn_output/logs/ (download + orchestration logs)
Benchmark Adapter Guidance
For benchmark-style prompts, do not force the full download -> staging -> multimodal processing orchestration when the task is only asking for local HBN data staging or organization.
- If the task starts from raw HBN data already present on disk and only asks for BIDS-style staging / organization:
- skip the mandatory download stage
- default to the narrow path
local raw HBN discovery -> BIDS-style staging -> minimal metadata -> validation/report
- In benchmark mode, do not require explicit confirmation before presenting the direct staging solution.
Safety and Execution Policy
- No execution before explicit plan confirmation.
- All execution must be routed via
claw-shell.
- Missing dependencies must be resolved by
dependency-planner before running.
Important Notes and Limitations
- HBN is a pediatric/adolescent cohort (ages 5-21); age-appropriate processing parameters may be needed.
- HBN includes EEG data in addition to standard neuroimaging modalities.
- HBN data is released in waves; not all subjects have all modalities.
- HBN subject IDs use NDAR format (e.g.,
NDARAA075AMK).
hbn-skill is orchestration-only; detailed preprocessing logic remains in modality skills.
When to Call This Skill
- User asks for end-to-end HBN workflow.
- User asks to download HBN data and then run multimodal processing.
- User needs BIDS staging for raw HBN NIfTI files.
- User asks to extract and merge HBN phenotype tables.
- User needs HBN-specific QC summaries and exclusion lists.
Complementary / Related Skills
smri-skill
fmri-skill
dwi-skill
eeg-skill
bids-organizer
fmriprep-tool
qsiprep-tool
freesurfer-tool
mne-eeg-tool
dependency-planner
conda-env-manager
claw-shell
Reference
Created At: 2026-05-06 10:49 HKT
Last Updated At: 2026-05-06 10:49 HKT
Author: chengwang96