Awesome-Agent-Skills-for-Empirical-Research latte-review-guide
Automate systematic literature reviews with LatteReview AI agents
install
source · Clone the upstream repo
git clone https://github.com/brycewang-stanford/Awesome-Agent-Skills-for-Empirical-Research
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/brycewang-stanford/Awesome-Agent-Skills-for-Empirical-Research "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/43-wentorai-research-plugins/skills/research/paper-review/latte-review-guide" ~/.claude/skills/brycewang-stanford-awesome-agent-skills-for-empirical-research-latte-review-guid && rm -rf "$T"
manifest:
skills/43-wentorai-research-plugins/skills/research/paper-review/latte-review-guide/SKILL.mdsource content
LatteReview Guide
Overview
LatteReview is a low-code Python package that uses AI agents to automate systematic literature reviews. It handles title/abstract screening, full-text assessment, data extraction, and PRISMA-compliant reporting — tasks that typically consume hundreds of researcher-hours. Supports multiple LLM backends (Anthropic, OpenAI, local models).
Installation
pip install lattereview
Core Workflow
Step 1: Initialize Review
from lattereview import ReviewProject # Create a new review project project = ReviewProject( name="ML in Medical Imaging Review", research_question="What deep learning architectures are used for " "medical image segmentation?", inclusion_criteria=[ "Uses deep learning for medical image segmentation", "Published in peer-reviewed venue", "Reports quantitative evaluation metrics", ], exclusion_criteria=[ "Review/survey articles", "Non-English publications", "Conference abstracts only", ], )
Step 2: Import Papers
# Import from various sources project.import_papers("scopus_export.csv", source="scopus") project.import_papers("pubmed_export.csv", source="pubmed") # Or from a DataFrame import pandas as pd df = pd.read_csv("papers.csv") project.import_from_dataframe(df, title_col="title", abstract_col="abstract", year_col="year", ) print(f"Imported {project.total_papers} papers")
Step 3: AI Screening
from lattereview.agents import ScreeningAgent # Configure screening agent screener = ScreeningAgent( llm_provider="anthropic", model="claude-sonnet-4-20250514", criteria=project.inclusion_criteria, exclusion=project.exclusion_criteria, ) # Title/abstract screening results = screener.screen( project.papers, mode="title_abstract", confidence_threshold=0.7, ) # Results include: decision, confidence, reasoning for paper in results[:3]: print(f"{paper.title}") print(f" Decision: {paper.decision} " f"(confidence: {paper.confidence:.2f})") print(f" Reason: {paper.reasoning}")
Step 4: Data Extraction
from lattereview.agents import ExtractionAgent extractor = ExtractionAgent( llm_provider="anthropic", fields={ "architecture": "Deep learning architecture used", "dataset": "Medical imaging dataset", "modality": "Imaging modality (CT, MRI, X-ray, etc.)", "dice_score": "Best Dice similarity coefficient reported", "sample_size": "Number of images/patients", }, ) extracted = extractor.extract(project.included_papers) # Export structured data extracted.to_csv("extracted_data.csv")
Step 5: Generate Report
# PRISMA flow diagram project.generate_prisma_diagram("prisma.png") # Summary statistics summary = project.summarize() print(f"Screened: {summary['screened']}") print(f"Included: {summary['included']}") print(f"Excluded: {summary['excluded']}")
Configuration
# Use different LLM providers screener = ScreeningAgent( llm_provider="openai", model="gpt-4o", ) # Local models via Ollama screener = ScreeningAgent( llm_provider="ollama", model="llama3", base_url="http://localhost:11434", )
Dual-Reviewer Mode
# Simulate dual-reviewer screening for reliability results = screener.dual_screen( project.papers, models=["claude-sonnet-4-20250514", "gpt-4o"], agreement_threshold=0.8, ) # Papers with disagreement flagged for human review conflicts = [p for p in results if p.agreement < 0.8] print(f"{len(conflicts)} papers need human adjudication")
Use Cases
- Systematic reviews: PRISMA-compliant literature reviews
- Scoping reviews: Rapid evidence mapping
- Meta-analysis preparation: Structured data extraction
- Grant applications: Quick literature landscape assessment
References
- LatteReview GitHub
- LatteReview Documentation
- Rouzrokh, P. et al. (2024). "LatteReview: AI-Assisted Systematic Literature Reviews."