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home/skills/tag/tooluniverse
skill tag

tooluniverse▌

56 indexed skills · max 10 per page

skills (56)

tooluniverse-gwas-study-explorer

mims-harvard/tooluniverse · Productivity

0

Compare GWAS studies, perform meta-analyses, and assess replication across cohorts

tooluniverse-gwas-trait-to-gene

mims-harvard/tooluniverse · AI/ML

0

Nearest gene is often wrong. Use L2G (locus-to-gene) scores from Open Targets which integrate eQTL, chromatin interaction, and distance data. L2G > 0.5 is a strong prediction; positional mapping alone should not be used to claim a causal gene. A single GWAS study with p < 5e-8 is suggestive — replication across independent cohorts is required for high confidence. GWAS hits are associations in the studied population; effect sizes and even the implicated gene can differ across ancestries due

tooluniverse-adverse-event-detection

mims-harvard/tooluniverse · Productivity

0

When analysis requires computation (statistics, data processing, scoring, enrichment), write and run Python code via Bash. Don't describe what you would do — execute it and report actual results. Use ToolUniverse tools to retrieve data, then Python (pandas, scipy, statsmodels, matplotlib) to analyze it.

tooluniverse-multi-omics-integration

mims-harvard/tooluniverse · Productivity

0

Coordinate and integrate multiple omics datasets for comprehensive systems biology analysis. Orchestrates specialized ToolUniverse skills to perform cross-omics correlation, multi-omics clustering, pathway-level integration, and unified interpretation.

tooluniverse-rnaseq-deseq2

mims-harvard/tooluniverse · Productivity

0

Differential expression analysis of RNA-seq count data using PyDESeq2, with enrichment analysis (gseapy) and gene annotation via ToolUniverse.

tooluniverse-clinical-guidelines

mims-harvard/tooluniverse · Frontend

0

Not all guidelines carry equal weight. Evaluate sources in this order:

tooluniverse-cancer-variant-interpretation

mims-harvard/tooluniverse · Productivity

0

Comprehensive clinical interpretation of somatic mutations in cancer. Transforms a gene + variant input into an actionable precision oncology report covering clinical evidence, therapeutic options, resistance mechanisms, clinical trials, and prognostic implications.

tooluniverse-statistical-modeling

mims-harvard/tooluniverse · Productivity

0

Comprehensive statistical modeling skill for fitting regression models, survival models, and mixed-effects models to biomedical data. Produces publication-quality statistical summaries with odds ratios, hazard ratios, confidence intervals, and p-values.

tooluniverse-drug-target-validation

mims-harvard/tooluniverse · Productivity

0

Validate drug target hypotheses using multi-dimensional computational evidence before committing to wet-lab work. Produces a quantitative Target Validation Score (0-100) with priority tier classification and GO/NO-GO recommendation.

tooluniverse-metabolomics-analysis

mims-harvard/tooluniverse · Productivity

0

Comprehensive analysis of metabolomics data from metabolite identification through quantification, statistical analysis, pathway interpretation, and integration with other omics layers.

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