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Automated BIDS standardization tool powered by LLM-first architecture

Project description

autobidsify

Automated Brain Imaging Data Structure (BIDS) standardization tool powered by LLM-first architecture.

Website PyPI version License: MIT

Features

  • General compatibility: Handles diverse dataset structures (flat, hierarchical, multi-site)
  • Multi-modal support: MRI, fNIRS, and mixed modality datasets
  • Intelligent metadata extraction: Automatic participant demographics from DICOM headers, documents, and filenames
  • Format conversion: DICOM→NIfTI, JNIfTI→NIfTI, .mat/.nirs→SNIRF, and more
  • Multi-LLM support: OpenAI (gpt-4o, gpt-5.1) and Qwen (via Ollama locally or with rest-api or DashScope)
  • Evidence-based reasoning: Confidence scoring and provenance tracking for all decisions

Supported Formats

Input formats:

  • MRI: DICOM (.dcm), NIfTI (.nii, .nii.gz), JNIfTI (.jnii, .bnii)
  • fNIRS: SNIRF (.snirf), Homer3 (.nirs), MATLAB (.mat)
  • Documents: PDF, DOCX, TXT, Markdown

Output: Compliant to BIDS specification (v1.10.0)

Installation

pip install autobidsify

Optional dependencies:

# For BIDS validation
npm install -g bids-validator

Set API key:

# OpenAI
export OPENAI_API_KEY="your-key-here"

# Qwen via DashScope (optional cloud alternative to Ollama)
export DASHSCOPE_API_KEY="your-key-here"

Quick Start

# Full pipeline (one command)
# With dataset description (recommended for better metadata extraction)
autobidsify full \
  --input /path/to/your/data \
  --output outputs/my_dataset \
  --model gpt-4o \
  --modality mri \
  --nsubjects 10 \
  --id-strategy auto \
  --describe "Your dataset description here"

# Step-by-step execution
autobidsify ingest  --input data/ --output outputs/run
autobidsify evidence --output outputs/run --modality mri
autobidsify trio   --output outputs/run --model gpt-4o
autobidsify plan   --output outputs/run --model gpt-4o
autobidsify execute  --output outputs/run
autobidsify validate --output outputs/run

Command Options

--input PATH            Input data (archive or directory)
--output PATH           Output directory
--model MODEL           LLM model (default: gpt-4o)
--modality TYPE         Data modality: mri | nirs | mixed
--nsubjects N           Number of subjects (optional, auto-detected if omitted)
--describe "TEXT"       Dataset description (recommended for metadata accuracy)
--id-strategy STRATEGY  Subject ID strategy: auto | numeric | semantic (default: auto)

Supported Models

OpenAI:

--model gpt-4o           # Highly recommended, stable
--model gpt-4o-mini      # Faster, cheaper
--model gpt-5.1          # Not that ecommended, latest

Qwen (via Ollama, local):

--model qwen3-coder-next:latest     # Recommended
--model qwen3-coder-careful:latest  # Recommended
--model qwen2.5-coder:7b            # Not recommended, slow and sometimes inaccurate, 

Qwen (via rest-api):

export OLLAMA_BASE_URL=http://your-server.com:xxxx

Pipeline Stages

Stage Command Input Output Purpose
1 ingest Raw data ingest_info.json Extract/reference data
2 evidence All files evidence_bundle.json Analyze structure, detect subjects
3 classify Mixed data classification_plan.json, nirs_pool/, mri_pool/, unknown/ Separate MRI/fNIRS (optional)
4 trio Evidence BIDS trio files Generate metadata files
5 plan Evidence + trio BIDSPlan.yaml, subject_analysis.json Create conversion strategy
6 execute Plan bids_compatible/, coversion_log.json, BIDSManifest.yaml Execute conversions
7 validate BIDS dataset Validation report Check compliance

Output Structure

outputs/my_dataset/
├── bids_compatible/              # Final BIDS dataset
│   ├── dataset_description.json
│   ├── README.md
│   ├── participants.tsv
│   ├── sub-001/
│   │   ├── anat/
│   │   │   └── sub-001_T1w.nii.gz
│   │   └── func/
│   │       └── sub-001_task-rest_bold.nii.gz
│   └── derivatives/              # Unprocessed files (original structure)
│       └── sub-001/
│           └── ...
└── _staging/                     # Intermediate files
    ├── evidence_bundle.json
    ├── BIDSPlan.yaml
    └── conversion_log.json

Architecture

LLM-First Design:

  • Python: Deterministic operations — file I/O, regex-based subject detection, format conversion, BIDS validation
  • LLM: Semantic understanding — dataset description, metadata extraction, scan type classification, license normalization
  • Hybrid: Python analyzes ALL files for completeness; LLM sees representative samples for semantic decisions

Requirements

  • Python
  • OpenAI API key (or Ollama for local Qwen models)
  • bids-validator for validation

Current Status

Version: 0.9.1

Tested datasets:

  • Visible Human Project (flat structure, DICOM CT)
  • CamCAN (hierarchical, multi-site, 30+ subjects)
  • FRESH-Motor (fNIRS, existing BIDS format)
  • fNIRS tinnitus dataset (flat structure, .nirs files)

Known limitations:

  • Mixed modality classification (Stage 3) is experimental
  • .mat fNIRS conversion assumes Homer3-compatible variable naming

Contributing

We need YOUR datasets to improve robustness. Please test and report issues at: https://github.com/cotilab/autobidsify/issues

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