🛠️ Glycoengineering
タンパク質の糖鎖修飾を解析・設計し、N-グリコシル化配列やO-グリコシル化ホットスポットを予測、糖鎖工学ツールにアクセスして、糖タンパク質工学や治療用抗体最適化、ワクチン設計を支援するSkill。
📺 まず動画で見る(YouTube)
▶ 【衝撃】最強のAIエージェント「Claude Code」の最新機能・使い方・プログラミングをAIで効率化する超実践術を解説! ↗
※ jpskill.com 編集部が参考用に選んだ動画です。動画の内容と Skill の挙動は厳密には一致しないことがあります。
📜 元の英語説明(参考)
Analyze and engineer protein glycosylation. Scan sequences for N-glycosylation sequons (N-X-S/T), predict O-glycosylation hotspots, and access curated glycoengineering tools (NetOGlyc, GlycoShield, GlycoWorkbench). For glycoprotein engineering, therapeutic antibody optimization, and vaccine design.
🇯🇵 日本人クリエイター向け解説
タンパク質の糖鎖修飾を解析・設計し、N-グリコシル化配列やO-グリコシル化ホットスポットを予測、糖鎖工学ツールにアクセスして、糖タンパク質工学や治療用抗体最適化、ワクチン設計を支援するSkill。
※ jpskill.com 編集部が日本のビジネス現場向けに補足した解説です。Skill本体の挙動とは独立した参考情報です。
下記のコマンドをコピーしてターミナル(Mac/Linux)または PowerShell(Windows)に貼り付けてください。 ダウンロード → 解凍 → 配置まで全自動。
mkdir -p ~/.claude/skills && cd ~/.claude/skills && curl -L -o glycoengineering.zip https://jpskill.com/download/4166.zip && unzip -o glycoengineering.zip && rm glycoengineering.zip
$d = "$env:USERPROFILE\.claude\skills"; ni -Force -ItemType Directory $d | Out-Null; iwr https://jpskill.com/download/4166.zip -OutFile "$d\glycoengineering.zip"; Expand-Archive "$d\glycoengineering.zip" -DestinationPath $d -Force; ri "$d\glycoengineering.zip"
完了後、Claude Code を再起動 → 普通に「動画プロンプト作って」のように話しかけるだけで自動発動します。
💾 手動でダウンロードしたい(コマンドが難しい人向け)
- 1. 下の青いボタンを押して
glycoengineering.zipをダウンロード - 2. ZIPファイルをダブルクリックで解凍 →
glycoengineeringフォルダができる - 3. そのフォルダを
C:\Users\あなたの名前\.claude\skills\(Win)または~/.claude/skills/(Mac)へ移動 - 4. Claude Code を再起動
⚠️ ダウンロード・利用は自己責任でお願いします。当サイトは内容・動作・安全性について責任を負いません。
🎯 このSkillでできること
下記の説明文を読むと、このSkillがあなたに何をしてくれるかが分かります。Claudeにこの分野の依頼をすると、自動で発動します。
📦 インストール方法 (3ステップ)
- 1. 上の「ダウンロード」ボタンを押して .skill ファイルを取得
- 2. ファイル名の拡張子を .skill から .zip に変えて展開(macは自動展開可)
- 3. 展開してできたフォルダを、ホームフォルダの
.claude/skills/に置く- · macOS / Linux:
~/.claude/skills/ - · Windows:
%USERPROFILE%\.claude\skills\
- · macOS / Linux:
Claude Code を再起動すれば完了。「このSkillを使って…」と話しかけなくても、関連する依頼で自動的に呼び出されます。
詳しい使い方ガイドを見る →- 最終更新
- 2026-05-17
- 取得日時
- 2026-05-18
- 同梱ファイル
- 2
💬 こう話しかけるだけ — サンプルプロンプト
- › Glycoengineering を使って、最小構成のサンプルコードを示して
- › Glycoengineering の主な使い方と注意点を教えて
- › Glycoengineering を既存プロジェクトに組み込む方法を教えて
これをClaude Code に貼るだけで、このSkillが自動発動します。
📖 Skill本文(日本語訳)
※ 原文(英語/中国語)を Gemini で日本語化したものです。Claude 自身は原文を読みます。誤訳がある場合は原文をご確認ください。
[Skill 名] 糖鎖工学 (glycoengineering)
糖鎖工学
概要
グリコシル化は、タンパク質の最も一般的で複雑な翻訳後修飾(PTM)であり、全ヒトタンパク質の50%以上に影響を与えます。糖鎖は、タンパク質のフォールディング、安定性、免疫認識、受容体相互作用、および治療用タンパク質の薬物動態を調節します。糖鎖工学は、治療効果、安定性、または免疫回避を改善するために、グリコシル化パターンを合理的に改変することを含みます。
主要な2つのグリコシル化タイプ:
- N-グリコシル化: N-X-[S/T](X ≠ プロリン)の配列モチーフ中のアスパラギン(N)に結合します。ER/ゴルジ体で発生します。
- O-グリコシル化: セリン(S)またはスレオニン(T)に結合します。厳密なコンセンサスモチーフはありません。主にGalNAcが開始します。
このスキルを使用するタイミング
このスキルは、次のような場合に使用します。
- 抗体工学: Fcグリコシル化を最適化して、ADCC、CDCを強化したり、免疫原性を低減したりします。
- 治療用タンパク質設計: 半減期、安定性、または免疫原性に影響を与えるグリコシル化部位を特定します。
- ワクチン抗原設計: 保存されたエピトープに免疫応答を集中させるために、糖鎖シールドを設計します。
- バイオシミラー特性評価: 参照品とバイオシミラー間の糖鎖パターンを比較します。
- 薬剤標的分析: グリコシル化は受容体の標的結合に影響しますか?
- タンパク質安定性: N-グリカンはしばしばタンパク質を安定化させます。安定化変異のための部位を特定します。
N-グリコシル化配列モチーフ解析
N-グリコシル化部位のスキャン
N-グリコシル化は、X ≠ プロリンである配列モチーフ N-X-[S/T] で発生します。
import re
from typing import List, Tuple
def find_n_glycosylation_sequons(sequence: str) -> List[dict]:
"""
Scan a protein sequence for canonical N-linked glycosylation sequons.
Motif: N-X-[S/T], where X ≠ Proline.
Args:
sequence: Single-letter amino acid sequence
Returns:
List of dicts with position (1-based), motif, and context
"""
seq = sequence.upper()
results = []
i = 0
while i <= len(seq) - 3:
triplet = seq[i:i+3]
if triplet[0] == 'N' and triplet[1] != 'P' and triplet[2] in {'S', 'T'}:
context = seq[max(0, i-3):i+6] # ±3 residue context
results.append({
'position': i + 1, # 1-based
'motif': triplet,
'context': context,
'sequon_type': 'NXS' if triplet[2] == 'S' else 'NXT'
})
i += 3
else:
i += 1
return results
def summarize_glycosylation_sites(sequence: str, protein_name: str = "") -> str:
"""Generate a research log summary of N-glycosylation sites."""
sequons = find_n_glycosylation_sequons(sequence)
lines = [f"# N-Glycosylation Sequon Analysis: {protein_name or 'Protein'}"]
lines.append(f"Sequence length: {len(sequence)}")
lines.append(f"Total N-glycosylation sequons: {len(sequons)}")
if sequons:
lines.append(f"\nN-X-S sites: {sum(1 for s in sequons if s['sequon_type'] == 'NXS')}")
lines.append(f"N-X-T sites: {sum(1 for s in sequons if s['sequon_type'] == 'NXT')}")
lines.append(f"\nSite details:")
for s in sequons:
lines.append(f" Position {s['position']}: {s['motif']} (context: ...{s['context']}...)")
else:
lines.append("No canonical N-glycosylation sequons detected.")
return "\n".join(lines)
# Example: IgG1 Fc region
fc_sequence = "APELLGGPSVFLFPPKPKDTLMISRTPEVTCVVVDVSHEDPEVKFNWYVDGVEVHNAKTKPREEQYNSTYRVVSVLTVLHQDWLNGKEYKCKVSNKALPAPIEKTISKAKGQPREPQVYTLPPSREEMTKNQVSLTCLVKGFYPSDIAVEWESNGQPENNYKTTPPVLDSDGSFFLYSKLTVDKSRWQQGNVFSCSVMHEALHNHYTQKSLSLSPGK"
print(summarize_glycosylation_sites(fc_sequence, "IgG1 Fc"))
N-グリコシル化部位の変異
def eliminate_glycosite(sequence: str, position: int, replacement: str = "Q") -> str:
"""
Eliminate an N-glycosylation site by substituting Asn → Gln (conservative).
Args:
sequence: Protein sequence
position: 1-based position of the Asn to mutate
replacement: Amino acid to substitute (default Q = Gln; similar size, not glycosylated)
Returns:
Mutated sequence
"""
seq = list(sequence.upper())
idx = position - 1
assert seq[idx] == 'N', f"Position {position} is '{seq[idx]}', not 'N'"
seq[idx] = replacement.upper()
return ''.join(seq)
def add_glycosite(sequence: str, position: int, flanking_context: str = "S") -> str:
"""
Introduce an N-glycosylation site by mutating a residue to Asn,
and ensuring X ≠ Pro and +2 = S/T.
Args:
position: 1-based position to introduce Asn
flanking_context: 'S' or 'T' at position+2 (if modification needed)
"""
seq = list(sequence.upper())
idx = position - 1
# Mutate to Asn
seq[idx] = 'N'
# Ensure X+1 != Pro (mutate to Ala if needed)
if idx + 1 < len(seq) and seq[idx + 1] == 'P':
seq[idx + 1] = 'A'
# Ensure X+2 = S or T
if idx + 2 < len(seq) and seq[idx + 2] not in ('S', 'T'):
seq[idx + 2] = flanking_context
return ''.join(seq)
O-グリコシル化解析
ヒューリスティックなO-グリコシル化ホットスポット予測
def predict_o_glycosylation_hotspots(
sequence: str,
window: int = 7,
min_st_fraction: float = 0.4,
disallow_proline_next: bool = True
) -> List[dict]:
"""
Heuristic O-glycosylation hotspot scoring based on local S/T density.
Not a substitute for NetOGlyc; use as fast baseline.
Rules:
- O-GalNAc glycosylation clusters on Ser/Thr-rich segments
- Flag Ser/Thr residues in windows enriched for S/T
- Avoid S/T immediately followed by Pro (TP/SP motifs inhibit GalNAc-T)
Args:
window: Odd window size for local S/T density
min_st_fraction: Minimum fraction of S/T in window to flag site
"""
if window % 2 == 0:
window = 7
seq = sequence.upper()
half = window // 2
candidates = []
for i, aa in enumerate(seq):
if aa not in ('S', 'T'): 📜 原文 SKILL.md(Claudeが読む英語/中国語)を展開
Glycoengineering
Overview
Glycosylation is the most common and complex post-translational modification (PTM) of proteins, affecting over 50% of all human proteins. Glycans regulate protein folding, stability, immune recognition, receptor interactions, and pharmacokinetics of therapeutic proteins. Glycoengineering involves rational modification of glycosylation patterns for improved therapeutic efficacy, stability, or immune evasion.
Two major glycosylation types:
- N-glycosylation: Attached to asparagine (N) in the sequon N-X-[S/T] where X ≠ Proline; occurs in the ER/Golgi
- O-glycosylation: Attached to serine (S) or threonine (T); no strict consensus motif; primarily GalNAc initiation
When to Use This Skill
Use this skill when:
- Antibody engineering: Optimize Fc glycosylation for enhanced ADCC, CDC, or reduced immunogenicity
- Therapeutic protein design: Identify glycosylation sites that affect half-life, stability, or immunogenicity
- Vaccine antigen design: Engineer glycan shields to focus immune responses on conserved epitopes
- Biosimilar characterization: Compare glycan patterns between reference and biosimilar
- Drug target analysis: Does glycosylation affect target engagement for a receptor?
- Protein stability: N-glycans often stabilize proteins; identify sites for stabilizing mutations
N-Glycosylation Sequon Analysis
Scanning for N-Glycosylation Sites
N-glycosylation occurs at the sequon N-X-[S/T] where X ≠ Proline.
import re
from typing import List, Tuple
def find_n_glycosylation_sequons(sequence: str) -> List[dict]:
"""
Scan a protein sequence for canonical N-linked glycosylation sequons.
Motif: N-X-[S/T], where X ≠ Proline.
Args:
sequence: Single-letter amino acid sequence
Returns:
List of dicts with position (1-based), motif, and context
"""
seq = sequence.upper()
results = []
i = 0
while i <= len(seq) - 3:
triplet = seq[i:i+3]
if triplet[0] == 'N' and triplet[1] != 'P' and triplet[2] in {'S', 'T'}:
context = seq[max(0, i-3):i+6] # ±3 residue context
results.append({
'position': i + 1, # 1-based
'motif': triplet,
'context': context,
'sequon_type': 'NXS' if triplet[2] == 'S' else 'NXT'
})
i += 3
else:
i += 1
return results
def summarize_glycosylation_sites(sequence: str, protein_name: str = "") -> str:
"""Generate a research log summary of N-glycosylation sites."""
sequons = find_n_glycosylation_sequons(sequence)
lines = [f"# N-Glycosylation Sequon Analysis: {protein_name or 'Protein'}"]
lines.append(f"Sequence length: {len(sequence)}")
lines.append(f"Total N-glycosylation sequons: {len(sequons)}")
if sequons:
lines.append(f"\nN-X-S sites: {sum(1 for s in sequons if s['sequon_type'] == 'NXS')}")
lines.append(f"N-X-T sites: {sum(1 for s in sequons if s['sequon_type'] == 'NXT')}")
lines.append(f"\nSite details:")
for s in sequons:
lines.append(f" Position {s['position']}: {s['motif']} (context: ...{s['context']}...)")
else:
lines.append("No canonical N-glycosylation sequons detected.")
return "\n".join(lines)
# Example: IgG1 Fc region
fc_sequence = "APELLGGPSVFLFPPKPKDTLMISRTPEVTCVVVDVSHEDPEVKFNWYVDGVEVHNAKTKPREEQYNSTYRVVSVLTVLHQDWLNGKEYKCKVSNKALPAPIEKTISKAKGQPREPQVYTLPPSREEMTKNQVSLTCLVKGFYPSDIAVEWESNGQPENNYKTTPPVLDSDGSFFLYSKLTVDKSRWQQGNVFSCSVMHEALHNHYTQKSLSLSPGK"
print(summarize_glycosylation_sites(fc_sequence, "IgG1 Fc"))
Mutating N-Glycosylation Sites
def eliminate_glycosite(sequence: str, position: int, replacement: str = "Q") -> str:
"""
Eliminate an N-glycosylation site by substituting Asn → Gln (conservative).
Args:
sequence: Protein sequence
position: 1-based position of the Asn to mutate
replacement: Amino acid to substitute (default Q = Gln; similar size, not glycosylated)
Returns:
Mutated sequence
"""
seq = list(sequence.upper())
idx = position - 1
assert seq[idx] == 'N', f"Position {position} is '{seq[idx]}', not 'N'"
seq[idx] = replacement.upper()
return ''.join(seq)
def add_glycosite(sequence: str, position: int, flanking_context: str = "S") -> str:
"""
Introduce an N-glycosylation site by mutating a residue to Asn,
and ensuring X ≠ Pro and +2 = S/T.
Args:
position: 1-based position to introduce Asn
flanking_context: 'S' or 'T' at position+2 (if modification needed)
"""
seq = list(sequence.upper())
idx = position - 1
# Mutate to Asn
seq[idx] = 'N'
# Ensure X+1 != Pro (mutate to Ala if needed)
if idx + 1 < len(seq) and seq[idx + 1] == 'P':
seq[idx + 1] = 'A'
# Ensure X+2 = S or T
if idx + 2 < len(seq) and seq[idx + 2] not in ('S', 'T'):
seq[idx + 2] = flanking_context
return ''.join(seq)
O-Glycosylation Analysis
Heuristic O-Glycosylation Hotspot Prediction
def predict_o_glycosylation_hotspots(
sequence: str,
window: int = 7,
min_st_fraction: float = 0.4,
disallow_proline_next: bool = True
) -> List[dict]:
"""
Heuristic O-glycosylation hotspot scoring based on local S/T density.
Not a substitute for NetOGlyc; use as fast baseline.
Rules:
- O-GalNAc glycosylation clusters on Ser/Thr-rich segments
- Flag Ser/Thr residues in windows enriched for S/T
- Avoid S/T immediately followed by Pro (TP/SP motifs inhibit GalNAc-T)
Args:
window: Odd window size for local S/T density
min_st_fraction: Minimum fraction of S/T in window to flag site
"""
if window % 2 == 0:
window = 7
seq = sequence.upper()
half = window // 2
candidates = []
for i, aa in enumerate(seq):
if aa not in ('S', 'T'):
continue
if disallow_proline_next and i + 1 < len(seq) and seq[i+1] == 'P':
continue
start = max(0, i - half)
end = min(len(seq), i + half + 1)
segment = seq[start:end]
st_count = sum(1 for c in segment if c in ('S', 'T'))
frac = st_count / len(segment)
if frac >= min_st_fraction:
candidates.append({
'position': i + 1,
'residue': aa,
'st_fraction': round(frac, 3),
'window': f"{start+1}-{end}",
'segment': segment
})
return candidates
External Glycoengineering Tools
1. NetOGlyc 4.0 (O-glycosylation prediction)
Web service for high-accuracy O-GalNAc site prediction:
- URL: https://services.healthtech.dtu.dk/services/NetOGlyc-4.0/
- Input: FASTA protein sequence
- Output: Per-residue O-glycosylation probability scores
- Method: Neural network trained on experimentally verified O-GalNAc sites
import requests
def submit_netoglycv4(fasta_sequence: str) -> str:
"""
Submit sequence to NetOGlyc 4.0 web service.
Returns the job URL for result retrieval.
Note: This uses the DTU Health Tech web service. Results take ~1-5 min.
"""
url = "https://services.healthtech.dtu.dk/cgi-bin/webface2.cgi"
# NetOGlyc submission (parameters may vary with web service version)
# Recommend using the web interface directly for most use cases
print("Submit sequence at: https://services.healthtech.dtu.dk/services/NetOGlyc-4.0/")
return url
# Also: NetNGlyc for N-glycosylation prediction
# URL: https://services.healthtech.dtu.dk/services/NetNGlyc-1.0/
2. GlycoShield-MD (Glycan Shielding Analysis)
GlycoShield-MD analyzes how glycans shield protein surfaces during MD simulations:
- URL: https://gitlab.mpcdf.mpg.de/dioscuri-biophysics/glycoshield-md/
- Use: Map glycan shielding on protein surface over MD trajectory
- Output: Per-residue shielding fraction, visualization
# Installation
pip install glycoshield
# Basic usage: analyze glycan shielding from glycosylated protein MD trajectory
glycoshield \
--topology glycoprotein.pdb \
--trajectory glycoprotein.xtc \
--glycan_resnames BGLCNA FUC \
--output shielding_analysis/
3. GlycoWorkbench (Glycan Structure Drawing/Analysis)
- URL: https://www.eurocarbdb.org/project/glycoworkbench
- Use: Draw glycan structures, calculate masses, annotate MS spectra
- Format: GlycoCT, IUPAC condensed glycan notation
4. GlyConnect (Glycan-Protein Database)
- URL: https://glyconnect.expasy.org/
- Use: Find experimentally verified glycoproteins and glycosylation sites
- Query: By protein (UniProt ID), glycan structure, or tissue
import requests
def query_glyconnect(uniprot_id: str) -> dict:
"""Query GlyConnect for glycosylation data for a protein."""
url = f"https://glyconnect.expasy.org/api/proteins/uniprot/{uniprot_id}"
response = requests.get(url, headers={"Accept": "application/json"})
if response.status_code == 200:
return response.json()
return {}
# Example: query EGFR glycosylation
egfr_glyco = query_glyconnect("P00533")
5. UniCarbKB (Glycan Structure Database)
- URL: https://unicarbkb.org/
- Use: Browse glycan structures, search by mass or composition
- Format: GlycoCT or IUPAC notation
Key Glycoengineering Strategies
For Therapeutic Antibodies
| Goal | Strategy | Notes |
|---|---|---|
| Enhance ADCC | Defucosylation at Fc Asn297 | Afucosylated IgG1 has ~50× better FcγRIIIa binding |
| Reduce immunogenicity | Remove non-human glycans | Eliminate α-Gal, NGNA epitopes |
| Improve PK half-life | Sialylation | Sialylated glycans extend half-life |
| Reduce inflammation | Hypersialylation | IVIG anti-inflammatory mechanism |
| Create glycan shield | Add N-glycosites to surface | Masks vulnerable epitopes (vaccine design) |
Common Mutations Used
| Mutation | Effect |
|---|---|
| N297A/Q (IgG1) | Removes Fc glycosylation (aglycosyl) |
| N297D (IgG1) | Removes Fc glycosylation |
| S298A/E333A/K334A | Increases FcγRIIIa binding |
| F243L (IgG1) | Increases defucosylation |
| T299A | Removes Fc glycosylation |
Glycan Notation
IUPAC Condensed Notation (Monosaccharide abbreviations)
| Symbol | Full Name | Type |
|---|---|---|
| Glc | Glucose | Hexose |
| GlcNAc | N-Acetylglucosamine | HexNAc |
| Man | Mannose | Hexose |
| Gal | Galactose | Hexose |
| Fuc | Fucose | Deoxyhexose |
| Neu5Ac | N-Acetylneuraminic acid (Sialic acid) | Sialic acid |
| GalNAc | N-Acetylgalactosamine | HexNAc |
Complex N-Glycan Structure
Typical complex biantennary N-glycan:
Neu5Ac-Gal-GlcNAc-Man\
Man-GlcNAc-GlcNAc-[Asn]
Neu5Ac-Gal-GlcNAc-Man/
(±Core Fuc at innermost GlcNAc)
Best Practices
- Start with NetNGlyc/NetOGlyc for computational prediction before experimental validation
- Verify with mass spectrometry: Glycoproteomics (Byonic, Mascot) for site-specific glycan profiling
- Consider site context: Not all predicted sequons are actually glycosylated (accessibility, cell type, protein conformation)
- For antibodies: Fc N297 glycan is critical — always characterize this site first
- Use GlyConnect to check if your protein of interest has experimentally verified glycosylation data
Additional Resources
- GlyTouCan (glycan structure repository): https://glytoucan.org/
- GlyConnect: https://glyconnect.expasy.org/
- CFG Functional Glycomics: http://www.functionalglycomics.org/
- DTU Health Tech servers (NetNGlyc, NetOGlyc): https://services.healthtech.dtu.dk/
- GlycoWorkbench: https://glycoworkbench.software.informer.com/
- Review: Apweiler R et al. (1999) Biochim Biophys Acta. PMID: 10564035
- Therapeutic glycoengineering review: Jefferis R (2009) Nature Reviews Drug Discovery. PMID: 19448661
同梱ファイル
※ ZIPに含まれるファイル一覧。`SKILL.md` 本体に加え、参考資料・サンプル・スクリプトが入っている場合があります。
- 📄 SKILL.md (12,462 bytes)
- 📎 references/glycan_databases.md (5,758 bytes)