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license: apache-2.0
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# PROSPERO Inclusion/Exclusion Criteria Dataset
This dataset is a curated and preprocessed collection of clinical research objectives and their corresponding inclusion and exclusion criteria, extracted from the [PROSPERO](https://www.crd.york.ac.uk/prospero/) international prospective register of systematic reviews.
## Description
The dataset was constructed to support fine-tuning of large language models (LLMs) for tasks involving the automated generation of eligibility criteria based on research objectives. It contains English-language research objectives from systematic review protocols across three domains:
- Mental health
- Diagnostics
- Therapeutics
## Dataset Structure
Each row in the dataset corresponds to one study protocol and contains:
- `Study_ID`: The unique identifier from PROSPERO (e.g., CRD420250616527)
- `Objectives`: The research objective(s) of the systematic review
- `Included`: The criteria defining which participants/studies are eligible for inclusion
- `Excluded`: The criteria used to disqualify participants/studies from inclusion
## Use Case
This dataset is ideal for training or fine-tuning LLMs (like T5, Mistral, LLaMA) on:
- Generating inclusion/exclusion criteria from research objectives
- Biomedical text-to-text reasoning tasks
- Automating systematic review assistance and meta-research workflows
## Format
- File type: CSV (`utf-8`)
- Fields: `Study_ID`, `Objectives`, `Included`, `Excluded`
- Suggested fields for fine-tuning:
- `input_text`: Prompt generated from `Objectives`
- `output_text`: "Inclusion: ... Exclusion: ..." combined string
## License & Attribution
Data is sourced from PROSPERO, a publicly accessible database, and is intended for educational and research purposes only. Please cite the original PROSPERO records when using this dataset in any published work.
## 🙌 Created By
Sanaa as part of her mission to automate and enhance systematic literature reviews using AI.
email: sanaa.abril@gmail.com |