Revolutionizing evidence:

AI-powered systematic
literature review

We design literature reviews across

the range of evidence needs

We are trusted leaders through publishing guidance on how to develop and communicate SLRs and advising on the optimal approach based on the evidence needed, including state-of-the-art AI assistance

Scoping

Understanding the evidence need and standards
Working within your constraints

Designing

Search strategy and methods
JCA- or PRISMA-compliant as needed
Reporting structure

Delivering

Quality-checked results
Reports that meet your needs

Collaborating

Working closely together
Managing time and budget

custom-bullets
Slide - 1
Our industry leading research in
AI in SLR
Artificial Intelligence for Rapid
Data Extraction​​
AI can be used for data extraction, but we need to know how well it performs before we integrate into our workflows​​

We compared how Elicit AI performed against our
human experts when they extracted cost, humanistic
and study design data ​​

With expert prompting, we saw strong performance
(78.0–95.0%) from the AI but a need for robust quality assurance protocols
Slide - 2
Our industry leading research in
AI in SLR
An AI-Enhanced Targeted Literature Review Workflow to Support Inclusive Research Practices and Population Science Research
We evaluated the performance of a GPT-4-assisted title
and abstract screening workflow for supporting TLRs
with high screening burdens

Sensitivity and specificity were improved with systematic prompt refinement, reducing the number of missed relevant articles while enhancing overall accuracy,
but human oversight remained essential
Slide - 3
Our industry leading research in
AI in SLR
Bigger, Better Studies
Our new approach allows us to rapidly find the most relevant studies, based on a reproducible Boolean search

We used AI to extract simple data at title/abstract screening and then ranked the studies​

This allows us to adjust sensitivity and rapidly prioritize the most relevant studies, resulting in reports that include the bigger, better studies to rapidly give answers to questions and inform next steps
Slide - 4
Our industry leading research in
AI in SLR
Testing Automated Prompt Engineering Strategies for Systematic Literature Review Screening​
We tested different techniques for how we can engineer
the best prompts for title/abstract screening​

For each, we calculated how accurately the prompts
identified or excluded studies and found big differences between strategies​

We are using these results to choose the best approach
based on the needs of each review ​
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next arrow
Slide - 1
Our industry leading research in
AI in SLR
Artificial Intelligence for Rapid
Data Extraction​​
AI can be used for data extraction, but we need to know how well it performs before we integrate into our workflows​​

We compared how Elicit AI performed against our human experts when they extracted cost, humanistic and study design data ​​

With expert prompting, we saw strong performance (78.0–95.0%) from the AI but a need for robust quality assurance protocols
Slide - 2
Our industry leading research in
AI in SLR
An AI-Enhanced Targeted Literature Review Workflow to Support Inclusive Research Practices and Population Science Research
We evaluated the performance of a GPT-4-assisted title and abstract screening workflow for supporting TLRs with high screening burdens

Sensitivity and specificity were improved with systematic prompt refinement, reducing the number of missed relevant articles while enhancing overall accuracy, but human oversight remained essential
Slide - 3
Our industry leading research in
AI in SLR
Bigger, Better Studies
relevant studies, based on a reproducible Boolean search

We used AI to extract simple data at title/abstract screening and then ranked the studies​

This allows us to adjust sensitivity and rapidly prioritize the most relevant studies, resulting in reports that include the bigger, better studies to rapidly give answers to questions and inform next steps
Slide - 4
Our industry leading research in
AI in SLR
Testing Automated Prompt Engineering Strategies for Systematic Literature Review Screening​
We tested different techniques for how we can engineer the best prompts for title/abstract screening​

For each, we calculated how accurately the prompts identified or excluded studies and found big differences between strategies​

We are using these results to choose the best approach based on the needs of each review ​
previous arrow
next arrow

Connect with our experts

Get in touch to learn how we combine AI with scientific rigour for impactful results

Gemma Carter

Gemma Carter

Communications Director
gemma.carter@pharmagenesis.com

Polly-Field

Polly Field

Communications Director
polly.field@pharmagenesis.com

Christian

Christian Eichinger

Scientific Director
christian@pharmagenesis.com

General enquiries

Want to find out more about AI-powered systematic literature review? Have questions that you’d like to ask? Or simply want a demo? Fill in your details below and we’ll be in touch to help you out.

General enquiries (AI powered evidence review and synthesis)
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