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README.md
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### Model Description
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GENIE (Generative Note Information Extraction) is an end-to-end model for structuring EHR data.
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GENIE can process an entire paragraph of clinical notes in a single pass, outputting structured information on named entities, assertion statuses, locations, other relevant modifiers, clinical values, and intended purposes.
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This end-to-end approach simplifies the structuring process, reduces errors, and enables healthcare providers to derive structured data from EHRs more efficiently, without the need for extensive manual adjustments.
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And experiments have shown that GENIE achieves high accuracy in each of the task.
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### Model Description
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GENIE (Generative Note Information Extraction) is an end-to-end model for structuring EHR data, which is completed by cooperation between 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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GENIE can process an entire paragraph of clinical notes in a single pass, outputting structured information on named entities, assertion statuses, locations, other relevant modifiers, clinical values, and intended purposes.
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This end-to-end approach simplifies the structuring process, reduces errors, and enables healthcare providers to derive structured data from EHRs more efficiently, without the need for extensive manual adjustments.
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And experiments have shown that GENIE achieves high accuracy in each of the task.
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