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PediatricsGPT: Large Language Models as Chinese Medical Assistants for Pediatric Applications
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This method is introduced during the Continuous Pre-training (CPT) phase of PediatricsGPT. It leverages data from PedCorpus (which incorporates knowledge graph resources) by assembling instruction data into completion forms and assimilating them into plain texts. This mechanism explicitly aims to bridge knowledge discrepancies and enhance the LLM's medical domain adaptation during pre-training.
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This method uses specific prompts to transform structured instruction data from the KG-inclusive PedCorpus dataset into comprehensive medical knowledge texts. These texts are integrated into the PedCorpus-CPT dataset. This process directly enriches the continuous pre-training corpus for the LLM, thereby improving its knowledge expression during pre-training.
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This rule describes a method within PedCorpus construction that uses GPT-4 API to generate specialized pediatric instructions. It explicitly extracts knowledge from pediatric textbooks, guidelines, and knowledge graphs to create high-quality, professional, and humanistic instruction data. This KG-enhanced data then feeds into the LLM's pre-training and fine-tuning phases, thereby enhancing the LLM's knowledge.
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