skills/research/methodology/slr-automation-guide/SKILL.md
Tools and pipelines for automating systematic literature reviews
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Systematic Literature Reviews (SLRs) are rigorous, reproducible surveys of research evidence following protocols like PRISMA and Cochrane. This guide covers tools that automate the most time-consuming steps — deduplication, title/abstract screening, full-text assessment, and data extraction — using active learning, NLP, and AI agents. Key tools include ASReview, Rayyan, and custom pipelines.
Protocol Definition (PICO, inclusion/exclusion criteria)
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Database Search (PubMed, Scopus, Web of Science)
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Deduplication (ASReview, Rayyan, or custom)
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Title/Abstract Screening (AI-assisted prioritization)
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Full-text Assessment (relevance + quality)
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Data Extraction (structured tables)
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Quality Assessment (risk of bias)
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Synthesis + PRISMA Report
# Install ASReview
pip install asreview
# Launch web interface
asreview lab
# CLI screening
asreview simulate benchmark:van_de_Schoot_2017 \
-m nb -e tfidf \
--n_prior_included 5 --n_prior_excluded 5 \
-o results/simulation.asreview
import asreview
from asreview import ASReviewData, ReviewSimulate
# Load dataset (RIS, CSV, or Excel)
data = ASReviewData.from_file("search_results.ris")
print(f"Records: {len(data)}")
# Active learning simulation
sim = ReviewSimulate(
data,
model="nb", # Naive Bayes classifier
feature_extraction="tfidf",
query_strategy="max", # Show most likely relevant first
n_prior_included=5,
n_prior_excluded=5,
)
sim.review()
# Results: screening order optimized by relevance
print(f"Work saved: {sim.work_saved():.1%}")
# Typically 80-95% of irrelevant papers screened out early
# ASReview deduplication
from asreview.data import ASReviewData
# Merge results from multiple databases
datasets = [
ASReviewData.from_file("pubmed_results.ris"),
ASReviewData.from_file("scopus_results.ris"),
ASReviewData.from_file("wos_results.ris"),
]
merged = ASReviewData.from_dataframe(
pd.concat([d.df for d in datasets])
)
print(f"Before dedup: {len(merged)}")
# Fuzzy matching on title + DOI
deduplicated = merged.deduplicate()
print(f"After dedup: {len(deduplicated)}")
# Custom LLM screening pipeline
from slr_tools import LLMScreener
screener = LLMScreener(
llm_provider="anthropic",
criteria={
"population": "Adults with type 2 diabetes",
"intervention": "SGLT2 inhibitors",
"outcomes": "Cardiovascular events",
"study_types": ["RCT", "cohort", "meta-analysis"],
"exclusions": ["animal studies", "in vitro", "pediatric"],
},
)
# Screen abstracts
results = screener.screen_batch(
records=search_results,
fields=["title", "abstract"],
threshold=0.5, # Include if P(relevant) > 0.5
)
for r in results:
print(f"[{'INCLUDE' if r.include else 'EXCLUDE'}] "
f"(p={r.confidence:.2f}) {r.title[:60]}...")
print(f" Reason: {r.reason}")
# Structured data extraction from full-text papers
from slr_tools import DataExtractor
extractor = DataExtractor(
llm_provider="anthropic",
schema={
"study_design": "str",
"sample_size": "int",
"population_description": "str",
"intervention_details": "str",
"primary_outcome": "str",
"effect_size": "float",
"confidence_interval": "str",
"p_value": "float",
"follow_up_duration": "str",
"risk_of_bias": "str",
},
)
# Extract from PDF
extracted = extractor.extract("paper.pdf")
print(extracted.to_dict())
# Batch extraction
results_df = extractor.extract_batch("fulltext_papers/")
results_df.to_csv("extraction_table.csv")
# Generate PRISMA 2020 flow diagram
from slr_tools import PRISMAFlow
flow = PRISMAFlow(
identification={
"databases": {"PubMed": 1200, "Scopus": 890, "WoS": 650},
"other_sources": {"citation_search": 45},
},
screening={
"after_dedup": 1850,
"excluded_title_abstract": 1620,
"sought_fulltext": 230,
"not_retrieved": 12,
},
included={
"assessed_fulltext": 218,
"excluded_fulltext": {
"wrong_population": 45,
"wrong_intervention": 32,
"wrong_outcome": 28,
"wrong_study_type": 15,
},
"final_included": 98,
},
)
flow.save_svg("prisma_flow.svg")
flow.save_latex("prisma_flow.tex")
# Risk of Bias assessment (Cochrane RoB 2)
from slr_tools import RiskOfBias
rob = RiskOfBias(tool="rob2") # or "robins_i" for non-RCTs
assessment = rob.assess(
paper="paper.pdf",
domains=[
"randomization_process",
"deviations_from_intervention",
"missing_outcome_data",
"outcome_measurement",
"selection_of_reported_result",
],
)
print(f"Overall: {assessment.overall_judgment}")
for domain, judgment in assessment.domain_judgments.items():
print(f" {domain}: {judgment}")
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