Agent skill
bio-research-tools-biomarker-signature-studio
Install this agent skill to your Project
npx add-skill https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills/tree/main/skills/bio-research-tools-biomarker-signature-studio
SKILL.md
name: bio-research-tools-biomarker-signature-studio description: Multi-omic biomarker discovery studio that ingests expression + metadata, performs QC, multi-strategy feature selection, nested CV model training, survival analysis hooks, and SHAP-based interpretation. Use to design translational biomarker panels with documented evidence. tool_type: python primary_tool: scikit-learn depends_on:
- machine-learning/biomarker-discovery
- machine-learning/model-validation
- machine-learning/omics-classifiers
- differential-expression/de-results
- workflow-management/biomarker-pipeline measurable_outcome: Run biomarker_signature_studio.py end-to-end on provided data within 20 minutes and produce metrics + feature rankings JSON artifacts. allowed-tools:
- read_file
- run_shell_command
Biomarker Signature Studio
Design validated biomarker panels that are explainable, stable, and ready for translational follow-up. This skill stitches together the existing biomarker pipeline tooling, adds configurable feature-selection ensembles, a small survival-analysis hook, and artifact export so downstream lab teams can review QC outputs.
What This Skill Does
- QC + Harmonization: Align expression matrices (samples x features) with metadata, check label balance, and compute summary stats.
- Feature Selection Ensemble: Supports Boruta, elastic-net stability, mutual-information top-K, and mRMR with optional intersection voting.
- Model Factory: Trains multiple estimators (Logistic L1, RandomForest, XGBoost if present) under nested CV, picks champion by AUC.
- Explainability + Export: Produces SHAP tables/plots when packages are available, exports feature rankings and model weights.
- Survival Hook: If metadata contains
time_to_eventandeventthe skill computes concordance for selected features via Cox model.
All logic lives in scripts/biomarker_signature_studio.py.
Inputs
- Expression matrix (
--expression): CSV/TSV genes x samples or samples x genes (auto-detected by metadata match). - Metadata (
--metadata): Must contain--label-column. Optional--id-column(defaultsample_id),time_to_event,event. - Optional gene list for filtering (
--feature-list). - Output directory (
--output-dir), created if missing.
Quick CLI Usage
python Skills/Research_Tools/Biomarker_Signature_Studio/scripts/biomarker_signature_studio.py \
--expression data/expression.csv \
--metadata data/metadata.csv \
--label-column phenotype \
--selectors boruta,lasso,mrmr \
--models rf,logit \
--output-dir outputs/biomarkers_run1
Key flags:
| Flag | Description |
|---|---|
--selectors |
Comma list of selection strategies (boruta, lasso, mrmr, mi_topk). |
--models |
Models to evaluate (logit, rf, xgb). |
--k-features |
Target number of features for mrmr/mi_topk. |
--survival |
Enable Cox evaluation when survival columns exist. |
--random-state |
Reproducibility. |
--nested-folds |
Outer CV folds (default 5). |
Workflow
- Load + align inputs, infer orientation, impute missing values.
- Standardize features (fit on train set only).
- Run requested selectors; create intersection + union candidate lists.
- For each selector output run nested CV training across requested models.
- Export champion metrics (
metrics.json), feature table (selected_features.csv), SHAP summary (shap_summary.csvwhen available), and survival stats (survival.json).
QC Expectations
- Class count ratio ≤3:1; warnings logged otherwise.
- Selected features between 5 and 250 unless user overrides.
- Nested CV AUC ≥0.70 or flagged in report.
- SHAP overlap with selected features ≥60% (reported).
Related Assets
examples/configs/biomarker_studio_template.yaml(scaffold for teams)scripts/biomarker_signature_studio.py(entry point)- Existing biomarker workflow skill for orchestrated runs.
Use this skill whenever you need a ready-to-review biomarker dossier (data QC, model metrics, explainability artifacts) before moving to validation cohorts or lab assays.
Recommended Agent Skills
Expand your agent's capabilities with these related and highly-rated skills.
vcf-annotator
Annotate VCF variants with VEP, ClinVar, gnomAD frequencies, and ancestry-aware context. Generates prioritised variant reports.
chemist-analyst
Analyzes events through chemistry lens using molecular structure, reaction mechanisms, thermodynamics, kinetics, and analytical techniques (spectroscopy, chromatography, mass spectrometry). Provides insights on chemical processes, material properties, reaction pathways, synthesis, and analytical methods. Use when: Chemical reactions, material analysis, synthesis planning, process optimization, environmental chemistry. Evaluates: Molecular structure, reaction mechanisms, yield, selectivity, safety, environmental impact.
bio-alignment-io
Read, write, and convert multiple sequence alignment files using Biopython Bio.AlignIO. Supports Clustal, PHYLIP, Stockholm, FASTA, Nexus, and other alignment formats for phylogenetics and conservation analysis. Use when reading, writing, or converting alignment file formats.
sleep-analyzer
分析睡眠数据、识别睡眠模式、评估睡眠质量,并提供个性化睡眠改善建议。支持与其他健康数据的关联分析。
metabolomics-workbench-database
Access NIH Metabolomics Workbench via REST API (4,200+ studies). Query metabolites, RefMet nomenclature, MS/NMR data, m/z searches, study metadata, for metabolomics and biomarker discovery.
bio-hi-c-analysis-matrix-operations
Balance, normalize, and transform Hi-C contact matrices using cooler and cooltools. Apply iterative correction (ICE), compute expected values, and generate observed/expected matrices. Use when normalizing or transforming Hi-C matrices.
Didn't find tool you were looking for?