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MRI Processing Pipelines for PAN Healthy Minds for Life Study

Project description

PANpipelines


This repository contains all the necessary scripts for reproducing the steps taken to preprocess and analyze MRI data collected during the Precision Aging Network (PAN) project.

The panpipelines package

The PAN Pipelines use a set of python modules packaged under the main panpipelines package to run all the preprocessing and analysis workflows which are based on NiPype.

Installation

It is recommended that a python environment manager like conda or virtualenv is used to install the panpipelines package. Assuming you have created a conda environment called panpython then the package can be installed as follows:

conda activate panpython
pip install panpipelines

Deployment

For an example of using the package to process MRI data please refer to the ./deployment folder. All the necessary parameters for running the pipelines are described in a config file in the ./config subdirectory which is passed as a parameter to the main module pan_processing.py. In the example provided this file is named panpipeconfig_slurm.config.

The scripts used to process data for the 1st 250 participants of the PAN project are available in PAN250_Deployment.

Running pan_processing.py

The pan processing pipelines are run by simply calling the pan_processing.py as described in the script run_pan250.sh in the PAN250_Deployment directory.

The following parameters are available:

config_file : The configuration file

--pipeline_outdir : The ouput directory. This overrides PIPELINE_DIR in configuration file

--participants_file : The list of participants. This overrides PARTICIPANTS_FILE in configuration file.

--sessions_file : The list of sessions. This overrides SESSIONS_FILE in configuration file.

--pipelines : List of pipelines to run. This overrides PIPELINES in configuration file. If let undefined then all pipelines are run.

--pipeline_match : Pattern to use to filter out pipelines that you want from the full list of pipelines.

--projects : List of Projects to use for processing. If this is undefined then the PAN projects "001_HML","002_HML","003_HML",and "004_HML" are used.

--participant_label : Specify participants to process. This overrides PARTICIPANT_LABEL. Pass in ALL_SUBJECTS to process all subjects defined in the parricipants list.

--participant_exclusions : Specify participants to exclude from processing.

--session_label : Specify sessions to process. This overrides SESSION_LABEL. Pass in ALL_SESSIONS to process all sessions availabe to subjects defined in the parricipants list.

Config file structure

The configuration file pan250.config drives how the processing occurs. It uses json format. The first entry is always called "all_pipelines" and this contains configuration details that are common to all pipelines. Individual pipelines can then be configured in the file. Any configuration details specified for an individual pipeline will override the common entry defined in the "all_pipelines" section.

Lookup and direct parameters in the config file

Parameter values that are surrounded opening ad closing arrows e.g. <PROC_DIR> are lookup variables that are populated by the actual direct definitoons of these variables. For example below:

"PROC_DIR" : "/xdisk/nkchen/chidigonna",
"DATA_DIR" : "<PROC_DIR>/data

would mean that DATA_DIR evaluates to /xdisk/nkchen/chidigonna/data. Without the surrounding arrows then it would evaluate to PROC_DIR/data

While there is some logic to sort parameters so that lookup variables are evaluated correctly regardless of order of definiton this has not been completelely tested and may fail in complex scenarios. It is advised that were possible any definitions that are required by downstream lookup variables are defined early and in the all_pipelines section where possible.

Configuration entry examples for "all_pipelines"

Key Description Example Default Value if undefined
IN_XNAT Data is to be downloaded from XNAT HOST or already exists locally "IN_XNAT" : "Y" "Y"
FORCE_BIDS_DOWNLOAD Always download subject data from source even if the data already exists locally "FORCE_BIDS_DOWNLOAD" : "Y" "N"

Configuration entry examples at pipeline level

Key Description Example Default Value if undefined
PIPELINE_CLASS The pipeline type that the defined pipeline belongs to "PIPELINE_CLASS" : "fmriprep_panpipeline" N/A
PIPELINE_DIR The parent directory for pipeline outputs. This is overwritten by the --pipeline_outdir parameter of pan_processing.py "PIPELINE_DIR " : "/path/to/pipeline_output_directory" N/A

Implicit Configuration entries

There are a number of configuration entries that are implicitly set by the software which in general are better left alone though there might be fringe use cases where it is helpful to overwrite.

Key Description Example Default Value if undefined
PWD The working directory from which the shell script that invokes the python package is called. This can be overwritten to rerun processing located in another directory different from the startup script. "CWD" : "path/to/new/working/directory" N/A
PKG_DIR The python package directory that is parent directory to the panpipelines source. This can be overwritten to use a different panpipeline package that is installed separate from the panprocessing.py module. It is hard to see a reason for this though. "PKG_DIR" : "/path/to/package" N/A

Unsorted dump of config settings

Following below is a dump of config settings which will be reviewed and described better above:

"SESSION_LABEL": ["ALL_SESSIONS"]
      "PROCESSING_ENVIRONMENT": "slurm", 
      "ARRAY_INDEX": "SLURM_ARRAY_TASK_ID",
      "ENV_PROCS": "SLURM_CPUS_ON_NODE",
      "BIDSAPP_THREADS": "10",
      "BIDSAPP_MEMORY": "50000",
      "ANALYSIS_LEVEL": "participant",
      "ANALYSIS_NODE": "cpu",
      "PROC_DIR": "<PWD>",
      "CREDENTIALS": "<PROC_DIR>/config/credentials/credentials.json",
      "CONFIG": "<PROC_DIR>/config/panpipeconfig.json",
      "PIPELINE_DIR": "<PROC_DIR>/pan_output",
      "FSLICENSE": "<PROC_DIR>/config/license.txt",
      "DATA_DIR": "/xdisk/ryant/chidiugonna/PAN250_Data",
      "PARTICIPANTS_FILE": "<DATA_DIR>/tsv/participants.tsv",
      "BIDS_DIR": "<DATA_DIR>/BIDS",
      "LOCK_DIR": "<DATA_DIR>/datalocks",
      "SESSIONS_FILE": "<DATA_DIR>/tsv/sessions.tsv",
      "PAN_CONTAINER": "/groups/ryant/PANapps/panprocminimal-v0.1.sif",
      "NEURO_CONTAINER": "/groups/ryant/PANapps/panprocminimal-v0.1.sif",
      "CONTAINER": "<PAN_CONTAINER>",
      "CONTAINER_RUN_OPTIONS": "singularity run --cleanenv --no-home",
      "CONTAINER_PRERUN" : "--home", 
      "QSIPREP_CONTAINER": "/groups/ryant/PANapps/qsiprep-0.19.0.sif",
      "QSIPREP_CONTAINER_RUN_OPTIONS": "singularity exec --cleanenv --no-home",
      "QSIPREP_CONTAINER_PRERUN" : "/usr/local/miniconda/bin/qsiprep", 
      "FMRIPREP_CONTAINER": "/groups/ryant/PANapps/fmriprep-23.2.0.sif",
      "FMRIPREP_CONTAINER_RUN_OPTIONS": "singularity run --cleanenv --no-home -B <FMRIWORK>:/work -B <FMRIOUTPUT>:/out",
      "FMRIPREP_CONTAINER_PRERUN" : " ",
      "ASLPREP_CONTAINER": "/groups/ryant/PANapps/aslprep_0.5.1.sif",
      "ASLPREP_CONTAINER_RUN_OPTIONS": "<CONTAINER_RUN_OPTIONS>",
      "ASLPREP_CONTAINER_PRERUN" : " ",
      "LST_CONTAINER": "/groups/ryant/PANapps/nklab-spmjobman.sif",
      "LST_CONTAINER_RUN_OPTIONS": "singularity run --cleanenv",
      "LST_CONTAINER_PRERUN" : "--homedir=<LST_OUTPUT_DIR>",
      "ANTS_CONTAINER": "<PAN_CONTAINER>",
      "BASIL_CONTAINER": "<PAN_CONTAINER>",
      "FREESURFER_CONTAINER": "<PAN_CONTAINER>",
      "FSL_CONTAINER": "<PAN_CONTAINER>",
      "MRTRIX_CONTAINER": "<PAN_CONTAINER>",
      "WB_CONTAINER": "<PAN_CONTAINER>",
      "XNAT_HOST": "https://aacazxnat.arizona.edu",
      "TEMPLATEFLOW_HOME": "<PROC_DIR>/TemplateFlow",
      "SLURM_SCRIPT_DIR": "<PIPELINE_DIR>/<PIPELINE>/0_slurm_submit",
      "SLURM_DEPENDENCY": "afterany",
      "SLURM_HEADER_DIR": "<PROC_DIR>/batch_scripts/headers",
      "SLURM_TEMPLATE_DIR": "<PROC_DIR>/batch_scripts",
      "SLURM_PARTICIPANT_TEMPLATE": "<SLURM_TEMPLATE_DIR>/participant_template.pbs",
      "SLURM_GROUP_TEMPLATE": "<SLURM_TEMPLATE_DIR>/group_template.pbs",
      "SLURM_CPU_HEADER": "<SLURM_HEADER_DIR>/slurm_cpu_highpri.pbs",
      "SLURM_GPU_HEADER": "<SLURM_HEADER_DIR>/slurm_gpu.pbs"


    "fmriprep_panpipeline":
    {
      "USE_MEGRE_FMAP": ["HML0096_SESSION002","HML0097"]
    },

    "qsiprep_panpipeline":
    {
      "EDDY_CONFIG": "<PROC_DIR>/config/pan250_eddyparams.json",
      "OUTPUT_RES": "2.0"
    },

    "noddi_panpipeline":
    {
      "DEPENDENCY": "qsiprep_panpipeline",
      "RECON_TYPE": "amico_noddi",
      "QSIPREP_OUTPUT_DIR" : "<DEPENDENCY_DIR>/qsiprep_node/qsiprep",
      "OUTPUT_RES": "2.0"
    },

```    "noddimeasures_xtract_2mm":
    {
      "PIPELINE_CLASS": "roiextract_panpipeline",
      "DEPENDENCY": ["noddi_panpipeline","qsiprep_panpipeline"],
      "SLURM_CPU_HEADER": "<SLURM_HEADER_DIR>/slurm_cpu_highpri_tiny.pbs",
      "ATLAS_NAME": "xtract",
      "ATLAS_FILE": "<PROC_DIR>/atlas/XTRACT/MNI152NLin6Asym/tpl-MNI152NLin6Asym_res-02_atlas-XTRACT_dseg.nii.gz",
      "ATLAS_INDEX": "<PROC_DIR>/atlas/XTRACT/res-02_atlas-XTRACT_dseg.tsv",
      "ATLAS_TRANSFORM_MAT": ["from-MNI152NLin6Asym_to-MNI152NLin2009cAsym_res-2"],
      "MEASURES_TEMPLATE": "<DEPENDENCY1_DIR>/noddi_node/qsirecon/sub-<PARTICIPANT_LABEL>/ses-*/dwi/*_desc-preproc_desc-*.nii.gz",
      "MEASURES_TRANSFORM_MAT": ["<DEPENDENCY2_DIR>/qsiprep_node/qsiprep/sub-<PARTICIPANT_LABEL>/anat/sub-<PARTICIPANT_LABEL>_from-T1w_to-MNI152NLin2009cAsym_mode-image_xfm.h5"],
      "MEASURES_TRANSFORM_REF": "MNI152NLin2009cAsym_res-2",
      "ATLAS_TRANSFORM_REF": "MNI152NLin2009cAsym_res-2"
    },
   
       "basil_voxel_sdcflow":
    {
      "PIPELINE_CLASS": "basil_panpipeline",
      "SDCFLOWS_CONTAINER_TO_USE": "SDCFLOWS_CONTAINER",
      "SLURM_CPU_HEADER": "<SLURM_HEADER_DIR>/slurm_cpu_highpri_long.pbs",
      "SDCFLOWS_CONTAINER": "/groups/ryant/PANapps/fmriprep-23.2.0.sif",
      "SDCFLOWS_CONTAINER_RUN_OPTIONS": "singularity exec ",
      "SDCFLOWS_CONTAINER_PRERUN" : " ",
      "ANALYSIS_NODE": "cpu",
      "FIELDMAP_TYPE" : {
          "acq-prod" : "sdcflows_preproc",
          "acq-pcasl" : "sdcflows_preproc",
          "acq-plusM0" : "sdcflows_preproc"
      },
      "SDCFLOWS_FIELDMAP_DIR" : {
           "acq-prod" : "<WORKFLOW_DIR>/sdcflows/fmap",
           "acq-pcasl" : "<WORKFLOW_DIR>/sdcflows/fmap",
           "acq-plusM0" : "<WORKFLOW_DIR>/sdcflows/fmap"
      },
      "ASL_ECHOSPACING" : {
           "acq-prod" : "0.0005",
           "acq-pcasl" : "0.0002371",
           "acq-plusM0" : "0.0005"
      },
      "ASLCONTEXT" : {
        "acq-prod" : "control:label",
        "acq-pcasl" : "control:label",
        "acq-plusM0" : "m0scan:control:label"
      },
      "CMETHOD_OPTS" : {
        "acq-prod" : "voxel",
        "acq-pcasl" : "voxel",
        "acq-plusM0" : "voxel"
      }
    }

         "basilmeasures_tissue":
    {
      "PIPELINE_CLASS": "roiextract_panpipeline",
      "DEPENDENCY": "basil_voxel_sdcflow",
      "SLURM_CPU_HEADER": "<SLURM_HEADER_DIR>/slurm_cpu_highpri_small.pbs",
      "ATLAS_NAME": "brainseg_t1",
      "NEWATLAS_TEMPLATE": ["<DEPENDENCY1_DIR>/fslanat_node/<PARTICIPANT_LABEL>_struct.anat/T1_fast_pve_0.nii.gz","<DEPENDENCY1_DIR>/fslanat_node/<PARTICIPANT_LABEL>_struct.anat/T1_fast_pve_1.nii.gz","<DEPENDENCY1_DIR>/fslanat_node/<PARTICIPANT_LABEL>_struct.anat/T1_fast_pve_2.nii.gz"],
      "NEWATLAS_INDEX": [ "csf", "gm", "wm"],
      "NEWATLAS_TRANSFORM_REF": "MNI152NLin2009cAsym_res-2",
      "NEWATLAS_TRANSFORM_MAT": [["<DEPENDENCY1_DIR>/fslanat_node/<PARTICIPANT_LABEL>_struct.anat/T1_to_MNI_nonlin_field.nii.gz:FSL:<DEPENDENCY1_DIR>/fslanat_node/<PARTICIPANT_LABEL>_struct.anat/T1.nii.gz","from-MNI152NLin6Asym_to-MNI152NLin2009cAsym"],
      ["<DEPENDENCY1_DIR>/fslanat_node/<PARTICIPANT_LABEL>_struct.anat/T1_to_MNI_nonlin_field.nii.gz:FSL:<DEPENDENCY1_DIR>/fslanat_node/<PARTICIPANT_LABEL>_struct.anat/T1.nii.gz","from-MNI152NLin6Asym_to-MNI152NLin2009cAsym"],
      ["<DEPENDENCY1_DIR>/fslanat_node/<PARTICIPANT_LABEL>_struct.anat/T1_to_MNI_nonlin_field.nii.gz:FSL:<DEPENDENCY1_DIR>/fslanat_node/<PARTICIPANT_LABEL>_struct.anat/T1.nii.gz","from-MNI152NLin6Asym_to-MNI152NLin2009cAsym"]],
      "MEASURES_TEMPLATE": "<DEPENDENCY1_DIR>/basil_node/basiloutput/std_space/*calib*.nii.gz",
      "MEASURES_TRANSFORM_MAT": ["from-MNI152NLin6Asym_to-MNI152NLin2009cAsym_res-2"],
      "MEASURES_TRANSFORM_REF": "MNI152NLin2009cAsym_res-2"
    },

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