drclaw/agent_hub/templates/pharmacy/skills/disease-reversal-prediction/SKILL.md
Predict a molecule's ability to reverse disease states using DLEPS (Disease-Ligand Embedding Projection Score) for drug repositioning and discovery.
npx skillsauth add qzzqzzb/drclaw disease-reversal-predictionInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Use the same DrugSDAClient class as defined in the drug-screening-docking skill.
This workflow validates SMILES strings and predicts their ability to reverse disease states, useful for drug repositioning and therapeutic discovery.
Workflow Steps:
Implementation:
tool_client = DrugSDAClient("https://scp.intern-ai.org.cn/api/v1/mcp/2/DrugSDA-Tool")
model_client = DrugSDAClient("https://scp.intern-ai.org.cn/api/v1/mcp/3/DrugSDA-Model")
if not await tool_client.connect() or not await model_client.connect():
print("connection failed")
return
## Input: List of candidate SMILES strings
smiles_list = [
'Nc1nnc(S(=O)(=O)NCCc2ccc(O)cc2)s1',
'COc1ccc2c(=O)cc(C(=O)N3CCN(c4ccc(F)cc4)CC3)oc2c1',
'ABCCOOO' # Invalid SMILES for demonstration
]
## Step 1: Validate SMILES strings
result = await tool_client.session.call_tool(
"is_valid_smiles",
arguments={"smiles_list": smiles_list}
)
result_data = tool_client.parse_result(result)
valid_smiles_list = [x['smiles'] for x in result_data['valid_res'] if x['is_valid'] is True]
print(f"Valid SMILES: {len(valid_smiles_list)}/{len(smiles_list)}")
## Step 2: Calculate DLEPS scores for disease state reversal
disease_name = "Aging" # Can be: Aging, Alzheimer's, Parkinson's, etc.
result = await model_client.session.call_tool(
"calculate_dleps_score",
arguments={
"smiles_list": valid_smiles_list,
"disease_name": disease_name
}
)
result_data = model_client.parse_result(result)
## Display results sorted by score
pred_scores = sorted(result_data['pred_scores'], key=lambda x: x['cs_score'], reverse=True)
for item in pred_scores:
print(f"SMILES: {item['smiles']}")
print(f"Disease Reversal Score: {item['cs_score']:.4f}\n")
await tool_client.disconnect()
await model_client.disconnect()
DrugSDA-Tool Server:
is_valid_smiles: Validate SMILES strings for chemical correctness
smiles_list (List[str])valid_res with is_valid boolean for each SMILESDrugSDA-Model Server:
calculate_dleps_score: Predict disease state reversal scores
smiles_list (List[str]), disease_name (str)pred_scores with cs_score (float, 0-1) for each moleculeInput:
smiles_list: List of SMILES strings to evaluatedisease_name: Target disease (e.g., "Aging", "Alzheimer's", "Parkinson's")Output:
pred_scores: List of dictionaries containing:
smiles: Input SMILES stringcs_score: Disease reversal score (0-1, higher is better)Molecules with higher scores are more likely to reverse the disease-associated transcriptional signature.
The model supports various diseases including but not limited to:
Consult the MCP server documentation for the complete list of supported diseases.
content-media
当用户明确要求“写/生成 NSFC 预算说明书”“写预算说明”“生成 budget.tex / budget.pdf”“写国自然预算 justification”时使用。基于用户标书正文或补充材料,输出一份可提交的预算说明书 LaTeX 项目并渲染 `budget.pdf`。若用户未指定工作目录,必须暂停并先要求其指定。⚠️ 不适用:用户只是想了解预算原则;用户仅要预算表数字而不写说明书;或用户是 2026 青年 A/B/C 默认包干制且无需预算说明书的场景。
tools
当用户明确要求"写/润色 NSFC 标书摘要""生成中文摘要和英文摘要""把中文摘要翻译成英文摘要"时使用。输出中文、英文两个版本(英文必须是中文的忠实翻译版),同时输出标题建议(1个推荐标题+5个候选标题及理由)。中文摘要默认≤400字符,英文摘要默认≤4000字符。输出方式:将结果写入工作目录下的 `NSFC-ABSTRACTS.md`。⚠️ 不适用:用户只想翻译一段与标书无关的通用文本(应直接翻译);用户只想写立项依据/研究内容/研究基础正文(应使用对应 nsfc 系列 skill)。
documentation
当用户明确要求"更新项目指南""同步指南""沉淀洞见到指南"时使用。将对话中新产生的可复用写作洞见实时沉淀到项目指南文件,保持术语口径一致、结构稳定、可检验与可复现。调用时必须指定指南文件路径。
content-media
当用户明确要求"从文件/图片/网页/描述中提取综述主题"或"生成主题+关键词+核心问题结构化输出"时使用。支持文件(PDF/Word/Markdown/Tex)、文件夹、图片、自然语言描述、网页 URL 等多种输入源,自动识别输入类型并提取内容,生成可直接用于 systematic-literature-review 及其他文献综述技能的结构化输出。