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Blockbuster Therapy Predictor

作者 AIpoch · GitHub ↗ · v0.1.0 · MIT-0
cross-platform ✓ 安全检测通过
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在 OpenClaw 中安装
/install blockbuster-therapy-predictor
功能描述
Predict which early-stage biotechnology platforms (PROTAC, mRNA, gene editing, etc.) have the highest potential to become blockbuster therapies. Analyzes cli...
使用说明 (SKILL.md)

Blockbuster Therapy Predictor

Comprehensive analytics tool for forecasting breakthrough therapeutic technologies by integrating multi-dimensional data sources including clinical development pipelines, intellectual property landscapes, and capital market indicators.

Features

  • Multi-Source Data Integration: Aggregates clinical trials, patents, and funding data
  • Predictive Scoring: Calculates Blockbuster Index combining maturity, market potential, and momentum
  • Technology Landscape Mapping: Tracks 10+ emerging therapeutic platforms
  • Investment Intelligence: Provides data-driven R&D and investment recommendations
  • Trend Analysis: Identifies acceleration patterns and inflection points

Usage

Basic Usage

# Run complete analysis with all technologies
python scripts/main.py

# Analyze specific technologies
python scripts/main.py --tech PROTAC,mRNA,CRISPR

# Output in JSON format
python scripts/main.py --output json

Parameters

Parameter Type Default Required Description
--mode str full No Analysis mode: full or quick
--tech str None No Comma-separated list of technologies to analyze
--output str console No Output format: console or json
--threshold float 0 No Minimum blockbuster index threshold (0-100)
--save str None No Save report to file path

Advanced Usage

# Analyze high-potential technologies only (index ≥70)
python scripts/main.py \
  --threshold 70 \
  --output json \
  --save high_potential_report.json

# Quick analysis of specific platforms
python scripts/main.py \
  --mode quick \
  --tech CAR-T,ADC,Bispecific \
  --output console

Output

Console Output

🏆 BLOCKBUSTER THERAPY PREDICTOR Report
Generated: 2026-02-15 10:30:00
Technologies analyzed: 10

📊 Technology Rankings
Rank  Technology       Blockbuster Index    Maturity    Market Potential    Momentum    Recommendation
🥇 1   mRNA             85.2                 78.5        92.1                88.0        Strongly Recommended
🥈 2   CAR-T            82.3                 85.2        78.5                75.0        Strongly Recommended
🥉 3   CRISPR           79.8                 72.3        88.2                68.0        Recommended

JSON Output Structure

{
  "generated_at": "2026-02-15T10:30:00",
  "total_routes": 10,
  "rankings": [
    {
      "rank": 1,
      "tech_name": "mRNA",
      "blockbuster_index": 85.2,
      "maturity_score": 78.5,
      "market_potential_score": 92.1,
      "momentum_score": 88.0,
      "recommendation": "Strongly Recommended",
      "key_drivers": ["Multiple Phase III trials", "Rapid patent growth"],
      "risk_factors": ["Regulatory uncertainties"],
      "timeline_prediction": "First product expected in 2-4 years"
    }
  ]
}

Scoring Methodology

Blockbuster Index Formula

Blockbuster Index = (Market Potential × 0.5) + (Maturity × 0.3) + (Momentum × 0.2)

Component Scores

Component Weight Factors
Market Potential 50% Market size, unmet need, competition
Maturity 30% Clinical stage, patent depth, funding stage
Momentum 20% Patent growth, funding activity, clinical progress

Investment Recommendation Thresholds

Blockbuster Index Recommendation Action
≥ 80 Strongly Recommended Prioritize R&D investment
60-79 Recommended Active monitoring and early partnerships
40-59 Watch Monitor milestones; reassess in 6-12 months
\x3C 40 Cautious Minimal investment; consider divestment

Supported Technologies

Technology Category Description
PROTAC Protein Degradation Proteolysis Targeting Chimera
mRNA Nucleic Acid Drugs Messenger RNA therapy platform
CRISPR Gene Editing CRISPR-Cas gene editing technology
CAR-T Cell Therapy Chimeric Antigen Receptor T-cell therapy
Bispecific Antibody Drugs Bispecific antibody technology
ADC Antibody Drugs Antibody-Drug Conjugate
RNAi Nucleic Acid Drugs RNA interference therapy
Gene Therapy Gene Therapy AAV vector gene therapy
Allogeneic Cell Therapy Universal/Allogeneic cell therapy
Cell Therapy Cell Therapy General cell therapy platform

Technical Difficulty: MEDIUM

⚠️ AI自主验收状态: 需人工检查

This skill requires:

  • Python 3.8+ environment
  • Basic understanding of biotech investment analysis
  • Access to clinical trial, patent, and funding databases (optional)

Dependencies

Required Python Packages

pip install -r requirements.txt

Requirements File

dataclasses
enum

Risk Assessment

Risk Indicator Assessment Level
Code Execution Python scripts executed locally Medium
Network Access No external API calls in mock mode Low
File System Access Read/write report files only Low
Instruction Tampering Standard prompt guidelines Low
Data Exposure Output files saved to workspace Low

Security Checklist

  • No hardcoded credentials or API keys
  • No unauthorized file system access (../)
  • Output does not expose sensitive information
  • Prompt injection protections in place
  • Input file paths validated (no ../ traversal)
  • Output directory restricted to workspace
  • Script execution in sandboxed environment
  • Error messages sanitized (no stack traces exposed)
  • Dependencies audited

Prerequisites

# Python dependencies
pip install -r requirements.txt

Evaluation Criteria

Success Metrics

  • Successfully executes main functionality
  • Output meets quality standards
  • Handles edge cases gracefully
  • Performance is acceptable

Test Cases

  1. Basic Functionality: Run without arguments → Expected output with all technologies
  2. Technology Filter: Use --tech flag → Only specified technologies analyzed
  3. JSON Output: Use --output json → Valid JSON format output
  4. Threshold Filter: Use --threshold 70 → Only technologies with index ≥70 shown

Lifecycle Status

  • Current Stage: Draft
  • Next Review Date: 2026-03-15
  • Known Issues: None
  • Planned Improvements:
    • Integration with real-time data APIs
    • Additional technology platforms
    • Enhanced visualization capabilities

References

See references/ for:

  • Historical blockbuster case studies
  • Clinical trial data sources
  • Patent analysis methodologies
  • Investment scoring frameworks

Limitations

  • Data Source: Uses mock data for demonstration; real-time data integration required for production use
  • Prediction Accuracy: Model provides indicative scores; not investment advice
  • Technology Coverage: Limited to pre-configured technology platforms
  • Market Dynamics: Cannot predict black swan events or regulatory changes
  • Regional Bias: Data primarily focused on US/EU markets

⚠️ DISCLAIMER: This tool provides quantitative analysis for decision support only. All investment and R&D decisions should incorporate qualitative domain expertise, regulatory consultation, and comprehensive due diligence. Past performance of historical blockbusters does not guarantee future success of emerging technologies.

安全使用建议
This package appears to be a local Python scoring tool (no credentials requested), but its documentation claims multi-source data aggregation that the included code does not visibly implement. Before installing or running with real data: 1) review the full scripts/main.py (the provided snippet was truncated) to confirm there are no network calls or hidden endpoints; 2) if you plan to connect it to clinical/patent/funding APIs, only supply credentials you control and prefer using a sandbox or limited-permission account; 3) note requirements.txt lists stdlib packages (dataclasses, enum) which is harmless but unnecessary for Python 3.8+; and 4) run the script in an isolated environment first and inspect any output files to ensure no sensitive data is being written or sent externally.
功能分析
Type: OpenClaw Skill Name: blockbuster-therapy-predictor Version: 0.1.0 The skill bundle is a legitimate analytical tool for evaluating biotechnology platforms using a multi-factor scoring model. The core logic in `scripts/main.py` is transparent, uses hardcoded mock data for demonstration, and lacks any network communication, obfuscation, or unauthorized system access. While the script allows saving reports to a user-defined path via the `--save` argument, it does not exhibit malicious intent or instructions to target sensitive files.
能力评估
Purpose & Capability
The name/description promise multi-source aggregation (clinical trials, patents, funding). The included Python code implements scoring and contains built-in market estimates and scoring logic, but I see no declared connectors, required credentials, or network libraries in the visible code. This is a minor mismatch: the tool can perform local analyses but does not appear to automatically fetch external datasets as the documentation suggests.
Instruction Scope
SKILL.md instructs running scripts/main.py with options to output or save reports. It mentions optional access to clinical, patent, and funding databases but provides no concrete steps or env var names for connecting to those services. The runtime instructions do not direct reading unrelated system files or exfiltration; saving reports to disk is expected behavior.
Install Mechanism
No install spec is provided (instruction-only plus included script). requirements.txt only lists 'dataclasses' and 'enum', which are standard in Python 3.8+ (dataclasses is built-in in 3.8), so nothing suspicious is being fetched or installed by default.
Credentials
The skill declares no required environment variables or credentials, which is appropriate for a local scoring tool. However, SKILL.md's mention of optional access to external databases implies users might supply credentials; those are not enumerated here, so if you later configure connectors, expect to provide database/API credentials—verify how/where they are stored.
Persistence & Privilege
always is false and the skill does not request persistent agent privileges. The script only reads inputs and can write report files; there is no evidence it modifies other skills or system-wide agent settings.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install blockbuster-therapy-predictor
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /blockbuster-therapy-predictor 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v0.1.0
Initial release of Blockbuster Therapy Predictor – a tool to forecast the blockbuster potential of early-stage biotechnology platforms. - Predictive scoring system analyzes clinical, patent, and funding data to rank emerging therapeutic technologies. - Offers customizable analysis with technology filtering, thresholding, and console/JSON output options. - Outputs include blockbuster index, technology maturity, market potential, momentum, and investment recommendations. - Comprehensive documentation on methodology, usage, dependencies, evaluation, risks, and limitations. - Uses mock data; real-time data integration planned for future updates.
元数据
Slug blockbuster-therapy-predictor
版本 0.1.0
许可证 MIT-0
累计安装 0
当前安装数 0
历史版本数 1
常见问题

Blockbuster Therapy Predictor 是什么?

Predict which early-stage biotechnology platforms (PROTAC, mRNA, gene editing, etc.) have the highest potential to become blockbuster therapies. Analyzes cli... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 174 次。

如何安装 Blockbuster Therapy Predictor?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install blockbuster-therapy-predictor」即可一键安装,无需额外配置。

Blockbuster Therapy Predictor 是免费的吗?

是的,Blockbuster Therapy Predictor 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Blockbuster Therapy Predictor 支持哪些平台?

Blockbuster Therapy Predictor 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Blockbuster Therapy Predictor?

由 AIpoch(@aipoch-ai)开发并维护,当前版本 v0.1.0。

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