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Eric Earl
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the standard defines file/folder structure, data, and metadata
for every data file there is a metadata file
{
"Modality": "MR",
"MagneticFieldStrength": 3,
"Manufacturer": "Siemens",
"ManufacturersModelName": "Prisma",
"DeviceSerialNumber": "anon8928",
"BodyPartExamined": "BRAIN",
"PatientPosition": "HFS",
"SoftwareVersions": "syngo_MR_E11",
"MRAcquisitionType": "3D",
"SeriesDescription": "ABCD-T1-NORM_SIEMENS_original_(baseline_year_1_arm_1)",
"ProtocolName": "ABCD_T1w_MPR_vNav",
"ScanningSequence": "GR_IR",
"SequenceVariant": "SK_SP_MP",
"ScanOptions": "IR_WE",
"SequenceName": "tfl3d1_16ns",
"ImageType": [
"ORIGINAL",
"PRIMARY",
"M",
"ND",
"NORM"
],
"SeriesNumber": 5,
go from raw MRI data directly to BIDS
get all the BIDS MRI inputs with less hassle
# FIRST STEPS DIRECTLY FROM DCM2BIDS REPOSITORY
# 1. cd <YOUR_FUTURE_BIDS_FOLDER>
# 2. dcm2bids_scaffold
# 3. dcm2bids_helper -d <FOLDER_WITH_DICOMS_OF_A_TYPICAL_SESSION>
# 4. Build your configuration file with the help of the content
# of tmp_dcm2bids/helper
# For the dcm2bids command itself:
# DICOM_DIR is a directory of DICOMs
# PARTICIPANT_ID and SESSION_ID are IDs picked by you
# These IDs MUST be only alphanumeric with no symbols
# CONFIG_FILE is a Dcm2Bids configuration JSON file
# Read here for more on CONFIG_FILE:
# https://cbedetti.github.io/Dcm2Bids/config/
dcm2bids -d DICOM_DIR -p PARTICIPANT_ID -s SESSION_ID -c CONFIG_FILE
docker run [DOCKER_OPTIONS] IMAGE[:TAG] [CMD] [CMD_ARG(S)...]
### COMMON OPTIONS AND THEIR MEANINGS ###
# -it Get an interactive terminal #
# --rm Clean up container on exit #
# -v /A:/B Mount /A inside image as /B #
#########################################
# Open an Ubuntu 18.04 Docker image with a BASH terminal
# and have your home folder available inside as /myhome
docker run -it --rm \
-v ${HOME}:/myhome \
ubuntu:18.04 /bin/bash
usage: run.py [-h]
[--participant_label PARTICIPANT_LABEL [PARTICIPANT_LABEL ...]]
bids_dir output_dir {participant,group}
Example BIDS App entry point script.
positional arguments:
bids_dir The directory with the input dataset formatted
according to the BIDS standard.
output_dir The directory where the output files should be stored.
If you are running a group level analysis, this folder
should be prepopulated with the results of
the participant level analysis.
{participant,group} Level of the analysis that will be performed. Multiple
participant level analyses can be run independently
(in parallel).
optional arguments:
-h, --help show this help message and exit
--participant_label PARTICIPANT_LABEL [PARTICIPANT_LABEL ...]
The label(s) of the participant(s) that should be
analyzed. The label corresponds to
sub-<participant_label> from the BIDS spec (so it does
not include "sub-"). If this parameter is not provided
all subjects will be analyzed. Multiple participants
can be specified with a space separated list.
the pipeline used by the next big ABCD NDA data share
# Run the abcd-hcp-pipeline on all subjects
# within the local /path/to/bids_dataset
# mounted "read-only" (ro) as /input
# and /path/to/outputs as /output
# and /path/to/freesurfer/license
# as /license
docker run -it --rm \
-v /path/to/bids_dataset:/input:ro \
-v /path/to/outputs:/output \
-v /path/to/freesurfer/license:/license \
dcanlabs/abcd-hcp-pipeline /input /output \
--freesurfer-license=/license [OPTIONS]
Collection #3165
DCAN Labs ABCD-BIDS MRI pipeline inputs and derivatives
estimated NDA release: September-November 2019
All ABCD Study participants' baseline imaging data that passed QC from the DAIC were processed by OHSU DCAN Labs
BIDS inputs and abcd-hcp-pipeline processed BIDS derivatives