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- In clinical activities such as ward rounds and consultations, medical staff need to frequently query patients' test results and progress.
- Searching for information from electronic medical records involves reasoning processes such as time conditions, logical conditions, and terminology standardization. Simple structured queries are difficult to meet the requirements.
- Large language models have changed the task logic of natural language processing and can explore application opportunities under new ideas.
- Establish a workflow framework for electronic medical records and large language model inference.
- Implement an interactive question-and-answer interface for electronic medical record information.
- Explore the best practices of using large model inference in different scenarios and domains.
- Load Data:
load_data.py
:
-digest_doc
: Extract essential information such as ID and timestamps from plain text based on the minimal information model.
-load_std_data
: Load data in standard fields. - Retrieve Medical Records:
query_record.py
: Find medical records that meet the requirements. - Answer Questions:
answer_question.py
: Answer query questions based on medical record entries. - Example:
Seeexample.py