Flatiron Health Research on AI-Driven Cancer Progression Extraction Presented at AACR Special Conference in Cancer Research: Artificial Intelligence and Machine Learning 2025
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Flatiron Health presents two new pieces of research demonstrating the potential of AI to advance oncology research across multiple tumor types
The research, led by a multidisciplinary Flatiron team of clinicians, research scientists, and machine learning engineers, demonstrates the power of large language models (LLMs) to accurately and efficiently extract real-world cancer progression events from unstructured electronic health record (EHR) data across 14 cancer types. Study findings concluded that LLMs achieved F1 scores similar to expert human abstractors and produced nearly identical real-world progression-free survival estimates, underscoring the potential of AI to scale high-quality clinical endpoint extraction for oncology research and care. This research utilized on the recently published Validation of Accuracy for LLM/ML-Extracted Information and Data (VALID) Framework to assess the quality of LLM-extracted real-world data, uniquely evaluating both the LLM and an expert human abstractor against a duplicate expert human abstracted reference dataset to directly compare performance.
The LLM that Flatiron scientists optimized for this research was provided by
“AI and machine learning are fundamentally transforming how we generate and use real-world evidence in oncology,” said
“We’re excited to share evidence that large language models can approach, and in some cases, may even exceed expert human performance in extracting critical and clinically nuanced cancer progression endpoints from EHRs,” said
In addition to this work,
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