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Large language models for extraction of OPS-codes from operative reports in meningioma surgery
1
Zitationen
5
Autoren
2025
Jahr
Abstract
GPT is capable of extracting OPS codes from surgical reports. The most frequent errors made by LLMs can be attributed to a lack of specialized training. Currently, professional coders still significantly outperform LLMs in sufficient and optimal coding. For optimal coding however, GPT shows to perform comparably to surgeon´s coding skills. This indicates, that in near future after further training, LLMs may take over this task from surgeons without loss in quality.
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