Text summarization with ChatGPT for drug labeling documents

Drug Discovery Today(2024)

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摘要
Text summarization is crucial in scientific research, drug discovery and development, regulatory review, and more. This task demands domain expertise, language proficiency, semantic prowess, and conceptual skill. The recent advent of large language models (LLMs), such as ChatGPT, offers unprecedented opportunities to automate this process. We compared ChatGPT-generated summaries with those produced by human experts using FDA drug labeling documents. The labeling contains summaries of key labeling sections, making them an ideal human benchmark to evaluate ChatGPT’s summarization capabilities. Analyzing >14000 summaries, we observed that ChatGPT-generated summaries closely resembled those generated by human experts. Importantly, ChatGPT exhibited even greater similarity when summarizing drug safety information. These findings highlight ChatGPT’s potential to accelerate work in critical areas, including drug safety.TeaserChatGPT reliably generates summaries closely resembling those of human experts, particularly in the context of summarizing drug safety information using FDA labeling as a benchmark.
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关键词
ChatGPT,text summarization,document summarization,natural language processing (NLP),artificial intelligence (AI),large language models (LLMs),drug information,drug safety
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