スキル一覧に戻る

geniml

K-Dense-AI
更新日 Today
26,534
2,743
26,534
GitHubで表示
メタaidesigndata

について

genimlスキルは、BEDファイルからのゲノム領域データに対する機械学習を可能にし、領域埋め込みの学習や単一細胞ATAC-seqデータの解析を含みます。コンセンサスペークの構築、ゲノム特徴表現の学習、類似性検索やクラスタリングの実行などのタスクをサポートします。ゲノム領域、クロマチンアクセシビリティデータセット、またはscATAC-seqデータを含む機械学習ベースの解析にこのスキルをご利用ください。

クイックインストール

Claude Code

推奨
メイン
npx skills add K-Dense-AI/claude-scientific-skills -a claude-code
プラグインコマンド代替
/plugin add https://github.com/K-Dense-AI/claude-scientific-skills
Git クローン代替
git clone https://github.com/K-Dense-AI/claude-scientific-skills.git ~/.claude/skills/geniml

このコマンドをClaude Codeにコピー&ペーストしてスキルをインストールします

ドキュメント

Geniml: Genomic Interval Machine Learning

Overview

Geniml is a Python package for building machine learning models on genomic interval data from BED files. It provides unsupervised methods for learning embeddings of genomic regions, single cells, and metadata labels, enabling similarity searches, clustering, and downstream ML tasks.

Installation

Install geniml using uv:

uv pip install geniml

For ML dependencies (PyTorch, etc.):

uv pip install 'geniml[ml]'

Development version from GitHub:

uv pip install git+https://github.com/databio/geniml.git

Core Capabilities

Geniml provides five primary capabilities, each detailed in dedicated reference files:

1. Region2Vec: Genomic Region Embeddings

Train unsupervised embeddings of genomic regions using word2vec-style learning.

Use for: Dimensionality reduction of BED files, region similarity analysis, feature vectors for downstream ML.

Workflow:

  1. Tokenize BED files using a universe reference
  2. Train Region2Vec model on tokens
  3. Generate embeddings for regions

Reference: See references/region2vec.md for detailed workflow, parameters, and examples.

2. BEDspace: Joint Region and Metadata Embeddings

Train shared embeddings for region sets and metadata labels using StarSpace.

Use for: Metadata-aware searches, cross-modal queries (region→label or label→region), joint analysis of genomic content and experimental conditions.

Workflow:

  1. Preprocess regions and metadata
  2. Train BEDspace model
  3. Compute distances
  4. Query across regions and labels

Reference: See references/bedspace.md for detailed workflow, search types, and examples.

3. scEmbed: Single-Cell Chromatin Accessibility Embeddings

Train Region2Vec models on single-cell ATAC-seq data for cell-level embeddings.

Use for: scATAC-seq clustering, cell-type annotation, dimensionality reduction of single cells, integration with scanpy workflows.

Workflow:

  1. Prepare AnnData with peak coordinates
  2. Pre-tokenize cells
  3. Train scEmbed model
  4. Generate cell embeddings
  5. Cluster and visualize with scanpy

Reference: See references/scembed.md for detailed workflow, parameters, and examples.

4. Consensus Peaks: Universe Building

Build reference peak sets (universes) from BED file collections using multiple statistical methods.

Use for: Creating tokenization references, standardizing regions across datasets, defining consensus features with statistical rigor.

Workflow:

  1. Combine BED files
  2. Generate coverage tracks
  3. Build universe using CC, CCF, ML, or HMM method

Methods:

  • CC (Coverage Cutoff): Simple threshold-based
  • CCF (Coverage Cutoff Flexible): Confidence intervals for boundaries
  • ML (Maximum Likelihood): Probabilistic modeling of positions
  • HMM (Hidden Markov Model): Complex state modeling

Reference: See references/consensus_peaks.md for method comparison, parameters, and examples.

5. Utilities: Supporting Tools

Additional tools for caching, randomization, evaluation, and search.

Available utilities:

  • BBClient: BED file caching for repeated access
  • BEDshift: Randomization preserving genomic context
  • Evaluation: Metrics for embedding quality (silhouette, Davies-Bouldin, etc.)
  • Tokenization: Region tokenization utilities (hard, soft, universe-based)
  • Text2BedNN: Neural search backends for genomic queries

Reference: See references/utilities.md for detailed usage of each utility.

Common Workflows

Basic Region Embedding Pipeline

from geniml.tokenization import hard_tokenization
from geniml.region2vec import region2vec
from geniml.evaluation import evaluate_embeddings

# Step 1: Tokenize BED files
hard_tokenization(
    src_folder='bed_files/',
    dst_folder='tokens/',
    universe_file='universe.bed',
    p_value_threshold=1e-9
)

# Step 2: Train Region2Vec
region2vec(
    token_folder='tokens/',
    save_dir='model/',
    num_shufflings=1000,
    embedding_dim=100
)

# Step 3: Evaluate
metrics = evaluate_embeddings(
    embeddings_file='model/embeddings.npy',
    labels_file='metadata.csv'
)

scATAC-seq Analysis Pipeline

import scanpy as sc
from geniml.scembed import ScEmbed
from geniml.io import tokenize_cells

# Step 1: Load data
adata = sc.read_h5ad('scatac_data.h5ad')

# Step 2: Tokenize cells
tokenize_cells(
    adata='scatac_data.h5ad',
    universe_file='universe.bed',
    output='tokens.parquet'
)

# Step 3: Train scEmbed
model = ScEmbed(embedding_dim=100)
model.train(dataset='tokens.parquet', epochs=100)

# Step 4: Generate embeddings
embeddings = model.encode(adata)
adata.obsm['scembed_X'] = embeddings

# Step 5: Cluster with scanpy
sc.pp.neighbors(adata, use_rep='scembed_X')
sc.tl.leiden(adata)
sc.tl.umap(adata)

Universe Building and Evaluation

# Generate coverage
cat bed_files/*.bed > combined.bed
uniwig -m 25 combined.bed chrom.sizes coverage/

# Build universe with coverage cutoff
geniml universe build cc \
  --coverage-folder coverage/ \
  --output-file universe.bed \
  --cutoff 5 \
  --merge 100 \
  --filter-size 50

# Evaluate universe quality
geniml universe evaluate \
  --universe universe.bed \
  --coverage-folder coverage/ \
  --bed-folder bed_files/

CLI Reference

Geniml provides command-line interfaces for major operations:

# Region2Vec training
geniml region2vec --token-folder tokens/ --save-dir model/ --num-shuffle 1000

# BEDspace preprocessing
geniml bedspace preprocess --input regions/ --metadata labels.csv --universe universe.bed

# BEDspace training
geniml bedspace train --input preprocessed.txt --output model/ --dim 100

# BEDspace search
geniml bedspace search -t r2l -d distances.pkl -q query.bed -n 10

# Universe building
geniml universe build cc --coverage-folder coverage/ --output universe.bed --cutoff 5

# BEDshift randomization
geniml bedshift --input peaks.bed --genome hg38 --preserve-chrom --iterations 100

When to Use Which Tool

Use Region2Vec when:

  • Working with bulk genomic data (ChIP-seq, ATAC-seq, etc.)
  • Need unsupervised embeddings without metadata
  • Comparing region sets across experiments
  • Building features for downstream supervised learning

Use BEDspace when:

  • Metadata labels available (cell types, tissues, conditions)
  • Need to query regions by metadata or vice versa
  • Want joint embedding space for regions and labels
  • Building searchable genomic databases

Use scEmbed when:

  • Analyzing single-cell ATAC-seq data
  • Clustering cells by chromatin accessibility
  • Annotating cell types from scATAC-seq
  • Integration with scanpy is desired

Use Universe Building when:

  • Need reference peak sets for tokenization
  • Combining multiple experiments into consensus
  • Want statistically rigorous region definitions
  • Building standard references for a project

Use Utilities when:

  • Need to cache remote BED files (BBClient)
  • Generating null models for statistics (BEDshift)
  • Evaluating embedding quality (Evaluation)
  • Building search interfaces (Text2BedNN)

Best Practices

General Guidelines

  • Universe quality is critical: Invest time in building comprehensive, well-constructed universes
  • Tokenization validation: Check coverage (>80% ideal) before training
  • Parameter tuning: Experiment with embedding dimensions, learning rates, and training epochs
  • Evaluation: Always validate embeddings with multiple metrics and visualizations
  • Documentation: Record parameters and random seeds for reproducibility

Performance Considerations

  • Pre-tokenization: For scEmbed, always pre-tokenize cells for faster training
  • Memory management: Large datasets may require batch processing or downsampling
  • Computational resources: ML/HMM universe methods are computationally intensive
  • Model caching: Use BBClient to avoid repeated downloads

Integration Patterns

  • With scanpy: scEmbed embeddings integrate seamlessly as adata.obsm entries
  • With BEDbase: Use BBClient for accessing remote BED repositories
  • With Hugging Face: Export trained models for sharing and reproducibility
  • With R: Use reticulate for R integration (see utilities reference)

Related Projects

Geniml is part of the BEDbase ecosystem:

  • BEDbase: Unified platform for genomic regions
  • BEDboss: Processing pipeline for BED files
  • Gtars: Genomic tools and utilities
  • BBClient: Client for BEDbase repositories

Additional Resources

Troubleshooting

"Tokenization coverage too low":

  • Check universe quality and completeness
  • Adjust p-value threshold (try 1e-6 instead of 1e-9)
  • Ensure universe matches genome assembly

"Training not converging":

  • Adjust learning rate (try 0.01-0.05 range)
  • Increase training epochs
  • Check data quality and preprocessing

"Out of memory errors":

  • Reduce batch size for scEmbed
  • Process data in chunks
  • Use pre-tokenization for single-cell data

"StarSpace not found" (BEDspace):

For detailed troubleshooting and method-specific issues, consult the appropriate reference file.

GitHub リポジトリ

K-Dense-AI/claude-scientific-skills
パス: skills/geniml
0
agent-skillsai-scientistbioinformaticschemoinformaticsclaudeclaude-skills

関連スキル

content-collections

メタ

このスキルは、Content Collections(Markdown/MDXファイルを型安全なデータコレクションに変換するTypeScriptファーストのツール)の本番環境でテストされた設定を提供します。Zodバリデーションによる型安全性を実現し、ブログ、ドキュメントサイト、コンテンツ重視のVite + Reactアプリケーション構築時にご利用ください。Viteプラグインの設定、MDXコンパイルから、デプロイ最適化、スキーマバリデーションまで、すべてを網羅しています。

スキルを見る

polymarket

メタ

このスキルは、開発者がPolymarket予測市場プラットフォームを活用したアプリケーション構築を可能にします。API統合による取引や市場データの取得に加え、WebSocketを介したリアルタイムデータストリーミングにより、ライブ取引や市場活動を監視できます。取引戦略の実装や、ライブ市場更新を処理するツールの作成にご利用ください。

スキルを見る

creating-opencode-plugins

メタ

このスキルは、開発者がコマンド、ファイル、LSP操作など25種類以上のイベントタイプにフックするOpenCodeプラグインを作成することを支援します。JavaScript/TypeScriptモジュール向けに、プラグイン構造、イベントAPI仕様、および実装パターンを提供します。カスタムイベント駆動ロジックでOpenCode AIアシスタントのライフサイクルをインターセプト、監視、または拡張する必要がある場合にご利用ください。

スキルを見る

sglang

メタ

SGLangは、高性能なLLMサービングフレームワークであり、RadixAttentionプレフィックスキャッシュを活用したJSON、正規表現、エージェントワークフロー向けの高速で構造化された生成を特長とします。特にプレフィックスが繰り返されるタスクにおいて、大幅に高速な推論を実現し、複雑な構造化出力やマルチターン対話に最適です。制約付きデコードが必要な場合や、広範なプレフィックス共有を伴うアプリケーションを構築する場合は、vLLMなどの代替案ではなくSGLangを選択してください。

スキルを見る