Installable Streamlit GUI for R-backed Python meta-analysis runners.
Project description
Meta-Analysis Streamlit App
An installable Streamlit GUI for the R-backed Python meta-analysis runners in
/Volumes/Firecuda-4TB/R-code_to-python.
The original source directory is treated as read-only. The runner files were
copied into this package under meta_analysis_streamlit/runners/ so the app can
be installed and launched without editing the source folder.
What It Runs
- Workbook-level auto routing through the original
main.py - Binary pairwise meta-analysis
- Continuous pairwise meta-analysis
- Single-arm proportion and mean meta-analysis
- Diagnostic accuracy meta-analysis
- Frequentist and Bayesian network meta-analysis
- LM Studio model detection, with manual study-characteristic controls when LM Studio is not reachable
Install
From PyPI after the first release:
python3 -m pip install ams-meta_analysis
meta-analysis-install-r --dry-run
meta-analysis-install-r
meta-analysis-doctor
ams-meta_analysis
If R is installed but Rscript is not on PATH, the app and command-line
runner automatically try common R install locations and add the discovered
Rscript folder to the current process and analysis runs. To add it permanently
in your shell too, run the command shown by meta-analysis-doctor, for example:
export PATH="/Library/Frameworks/R.framework/Resources/bin:$PATH"
From this folder:
python3 -m pip install -e ".[dev]"
For a normal local wheel install:
python3 -m pip install .
Launch the GUI:
ams-meta_analysis
Run the original workbook orchestrator from the installed package:
meta-analysis-runner "/path/to/workbook.xlsx" --yes
Check the local environment:
meta-analysis-doctor
Install or repair the external R runtime after pip install:
meta-analysis-install-r --dry-run
meta-analysis-install-r
If R is already installed outside PATH, meta-analysis-install-r uses the
discovered absolute Rscript path automatically when installing R packages.
When R is missing, the Streamlit sidebar also shows an Install R Runtime
button that runs the same setup helper from inside the app.
External Requirements
Python dependencies are installed by pip, but the statistical analyses still
need R and the R packages used by the original generated scripts. The package
does not silently install system software during pip install; instead it
installs a helper command that shows and runs the platform-specific R setup:
meta-analysis-install-r --dry-run
meta-analysis-install-r
If you prefer to manage R yourself, install R, make sure Rscript is on PATH,
then install the common R packages:
install.packages(c(
"meta",
"metafor",
"readxl",
"dplyr",
"ggplot2",
"netmeta",
"gemtc",
"rjags",
"RTSA"
))
Bayesian network meta-analysis also needs JAGS installed on the system.
Trial sequential analysis can use the external TSA engine expected by the original code. If needed, point to it with:
export TSA_ANALYSIS_PY="/path/to/tsa_analysis.py"
LLM Provider Behavior
By default, the app checks http://localhost:1234/v1 for LM Studio. If LM
Studio is not available, it can use OpenAI-compatible hosted APIs instead.
Supported GUI options:
- LM Studio:
http://localhost:1234/v1 - OpenAI:
https://api.openai.com/v1 - Gemini through Google's OpenAI-compatible endpoint:
https://generativelanguage.googleapis.com/v1beta/openai - Custom OpenAI-compatible endpoint
- Manual/no LLM
The app auto-selects the first available option in this order: LM Studio,
OPENAI_API_KEY, GEMINI_API_KEY or GOOGLE_API_KEY,
META_ANALYSIS_LLM_API_KEY, then manual mode.
For command-line runs, hosted APIs can also be used with the original
--lmstudio-url option because the packaged runners now support
OpenAI-compatible authentication headers:
export META_ANALYSIS_LLM_API_KEY="$OPENAI_API_KEY"
meta-analysis-runner "/path/to/workbook.xlsx" \
--lmstudio-url "https://api.openai.com/v1" \
--model "your-model" \
--yes
For Gemini:
export META_ANALYSIS_LLM_API_KEY="$GEMINI_API_KEY"
meta-analysis-runner "/path/to/workbook.xlsx" \
--lmstudio-url "https://generativelanguage.googleapis.com/v1beta/openai" \
--model "your-gemini-model" \
--yes
When no provider is reachable, the GUI still works: it passes --no-lmstudio
and asks you to choose basic study characteristics such as analysis route,
binary effect size, single-arm outcome type, diagnostic mode, and network model
settings.
Output Location
Uploaded workbooks and generated outputs are staged under:
~/.meta_analysis_streamlit/runs/
The app writes a run log and offers a zip download for completed outputs.
Development
Run the tests:
pytest
Build a wheel:
python3 -m build
python3 -m twine check dist/*
See PUBLISHING.md for PyPI release steps, including Trusted Publishing through GitHub Actions.
The project is ready to commit and push from
/Volumes/Firecuda-4TB/meta-streamlit-app.
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