Evaluating the performance of large language models in haematopoietic stem cell transplantation decision-making.
Ivan CivettiniArianna ZappaterraBianca Maria GranelliGiovanni RindoneAndrea AroldiStefano BonfantiFederica ColomboMarilena FedeleGiovanni GrilloMatteo ParmaPaola PerfettiElisabetta TerruzziCarlo Gambacorti-PasseriniDaniele RamazzottiFabrizio CavalcaPublished in: British journal of haematology (2023)
In a first-of-its-kind study, we assessed the capabilities of large language models (LLMs) in making complex decisions in haematopoietic stem cell transplantation. The evaluation was conducted not only for Generative Pre-trained Transformer 4 (GPT-4) but also conducted on other artificial intelligence models: PaLm 2 and Llama-2. Using detailed haematological histories that include both clinical, molecular and donor data, we conducted a triple-blind survey to compare LLMs to haematology residents. We found that residents significantly outperformed LLMs (p = 0.02), particularly in transplant eligibility assessment (p = 0.01). Our triple-blind methodology aimed to mitigate potential biases in evaluating LLMs and revealed both their promise and limitations in deciphering complex haematological clinical scenarios.