Conversational Disease Diagnosis via External Planner-Controlled Large Language Models
The development of large language models (LLMs) has brought unprecedented possibilities for artificial intelligence (AI) based medical diagnosis. However, the application perspective of LLMs in real diagnostic scenarios is still unclear because they are not adept at collecting patient data proactive...
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Zusammenfassung: | The development of large language models (LLMs) has brought unprecedented
possibilities for artificial intelligence (AI) based medical diagnosis.
However, the application perspective of LLMs in real diagnostic scenarios is
still unclear because they are not adept at collecting patient data
proactively. This study presents a LLM-based diagnostic system that enhances
planning capabilities by emulating doctors. Our system involves two external
planners to handle planning tasks. The first planner employs a reinforcement
learning approach to formulate disease screening questions and conduct initial
diagnoses. The second planner uses LLMs to parse medical guidelines and conduct
differential diagnoses. By utilizing real patient electronic medical record
data, we constructed simulated dialogues between virtual patients and doctors
and evaluated the diagnostic abilities of our system. We demonstrated that our
system obtained impressive performance in both disease screening and
differential diagnoses tasks. This research represents a step towards more
seamlessly integrating AI into clinical settings, potentially enhancing the
accuracy and accessibility of medical diagnostics. |
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DOI: | 10.48550/arxiv.2404.04292 |