--- license: apache-2.0 language: - en tags: - medical - biomedicine - clinical-trials - large-language-models - supervised-finetuning - evidence-based-medicine - trial-design - systematic-review config_names: - study_search - study_screening - evidence_summarization - trial_design - sample_size_estimation - trial_completion_assessment configs: - config_name: study_search data_files: - split: train path: sft_study_search_data_cleaned.parquet - config_name: study_screening data_files: - split: train path: sft_study_screening_data.parquet - config_name: evidence_summarization data_files: - split: train path: sft_evidence_summarization_data.parquet - config_name: trial_design data_files: - split: train path: sft_design_data.parquet - config_name: sample_size_estimation data_files: - split: train path: sft_sample_size_data.parquet - config_name: trial_completion_assessment data_files: - split: train path: sft_trial_completion_assessment_data.parquet --- # TrialPanorama: Supervised Fine-Tuning Data for Clinical Research LLMs ## Dataset Summary **TrialPanorama SFT** is a large-scale, task-oriented **supervised fine-tuning (SFT) dataset** designed to train large language models for **end-to-end clinical research and trial development workflows**. The dataset is derived from **TrialPanorama**, a structured clinical research resource aggregating **1.6M+ clinical trial records** across global registries and linking them with biomedical ontologies and supporting literature. It focuses on transforming raw clinical trial data and curated evidence into **instruction–response pairs** that reflect realistic, expert-level research tasks. The dataset supports training LLMs to operate as **clinical research assistants** capable of systematic literature review, trial design reasoning, and evidence-based decision making. --- ## Supported Training Tasks Each task is released as a separate dataset configuration. | Task (config) | Description | |---|---| | `study_search` | Given a clinical research question, retrieve and justify relevant studies from large trial and literature corpora. | | `study_screening` | Perform inclusion/exclusion decisions for candidate studies based on eligibility criteria and study metadata. | | `evidence_summarization` | Synthesize structured and unstructured trial evidence into concise, faithful summaries. | | `trial_design` | Generate or refine clinical trial designs, including arms, interventions, and eligibility criteria. | | `sample_size_estimation` | Estimate appropriate sample sizes under specified statistical and design assumptions. | | `trial_completion_assessment` | Assess trial completion likelihood and rationalize risks using trial design and historical evidence. | --- ## Data Characteristics - **Instruction-following format** suitable for SFT - Grounded in **real clinical trial records** - Emphasizes **clinical reasoning**, not surface text generation - Covers both **systematic review** and **trial design & optimization** tasks - Designed to support **generalist and agentic LLM training** All files are provided in **Apache Parquet** format. --- ## Typical Fields Each record may include: - Task-specific **instruction or prompt** - Structured **context** (trial metadata, eligibility criteria, outcomes, phase) - **Model response targets** written or validated by domain experts - Task and difficulty metadata Exact schemas vary by task. --- ## Intended Use This dataset is intended for: - **Supervised fine-tuning of LLMs** for clinical research tasks - Training **research-oriented AI agents** for trial planning and evidence synthesis - Building domain-adapted models for **systematic review automation** - Academic benchmarking of clinical reasoning capabilities ### Not Intended For - Model evaluation (see TrialPanorama benchmarks for evaluation) - Clinical decision making - Direct medical or regulatory use --- ## How to Load Load a specific training task via its configuration name: ```python from datasets import load_dataset ds = load_dataset("TrialPanorama/dataset", "study_screening") ds["train"]