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@@ -26,7 +26,7 @@ Base model: Llama 3.1 8B (English) / Qwen 2.5 7B (Chinese)
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  ### Model Description
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  GENIE (Generative Note Information Extraction) is an end-to-end model designed to structure free text from electronic health records (EHRs). It processes EHRs in a single pass, extracting biomedical named entities along with their assertion statuses, body locations, modifiers, values, units, and intended purposes, outputting this information in a structured JSON format. This streamlined approach simplifies traditional natural language processing workflows by replacing all the analysis components with a single model, making the system easier to maintain while leveraging the advanced analytical capabilities of large language models (LLMs). Comparing with general-purpose LLMs, GENIE does not require prompt engineering or few-shot examples. Additionally, it generates all relevant attributes in one pass, significantly reducing both runtime and operational costs.
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- GENIE is codeveloped by Sheng Yu's group (https://www.stat.tsinghua.edu.cn/teachers/shengyu/) and Tianxi Cai's group (https://dbmi.hms.harvard.edu/people/tianxi-cai).
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  ## Usage
 
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  ### Model Description
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  GENIE (Generative Note Information Extraction) is an end-to-end model designed to structure free text from electronic health records (EHRs). It processes EHRs in a single pass, extracting biomedical named entities along with their assertion statuses, body locations, modifiers, values, units, and intended purposes, outputting this information in a structured JSON format. This streamlined approach simplifies traditional natural language processing workflows by replacing all the analysis components with a single model, making the system easier to maintain while leveraging the advanced analytical capabilities of large language models (LLMs). Comparing with general-purpose LLMs, GENIE does not require prompt engineering or few-shot examples. Additionally, it generates all relevant attributes in one pass, significantly reducing both runtime and operational costs.
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+ GENIE is co-developed by the groups of Sheng Yu (https://www.stat.tsinghua.edu.cn/teachers/shengyu/) Tianxi Cai (https://dbmi.hms.harvard.edu/people/tianxi-cai) and Isaac Kohane (https://dbmi.hms.harvard.edu/people/isaac-kohane).
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  ## Usage