病理学家采用大型语言模型的调查分析。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-07-27 DOI:10.1093/ajcp/aqae093
Thiyaphat Laohawetwanit, Daniel Gomes Pinto, Andrey Bychkov
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引用次数: 0

摘要

目的:我们试图调查病理学家对大型语言模型(LLM)应用的采用和看法:我们试图调查病理学家对大型语言模型(LLM)应用的采用和看法:我们进行了一项横向调查,收集病理学家对 LLM 工具的使用情况和看法的数据。调查通过各种数字平台向全球发布,包括定量和定性问题。调查分析了受访者采用这些人工智能工具的模式以及对这些工具的看法:在 215 位受访者中,有 100 位(46.5%)报告说他们将 LLM(尤其是 ChatGPT(OpenAI))用于专业目的,主要是信息检索、校对、学术写作和起草病理报告,突出了节省时间的显著优势。与同行相比,学术病理学家对 LLM 的理解程度更高。虽然聊天机器人有时会提供不正确的一般领域信息,但他们对病理学特定知识的掌握还算熟练。该技术主要用于起草教学材料和编程任务。LLM 最受欢迎的功能是其图像分析能力。与会者对信息准确性、隐私和监管审批的必要性表示担忧:结论:大型语言模型应用在病理学家中的接受度显著提高,近一半的受访者表示在该工具推出市场不到一年后就已采用。他们看到了这些工具的好处,但也担心其可靠性、道德影响和安全性。
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A survey analysis of the adoption of large language models among pathologists.

Objectives: We sought to investigate the adoption and perception of large language model (LLM) applications among pathologists.

Methods: A cross-sectional survey was conducted, gathering data from pathologists on their usage and views concerning LLM tools. The survey, distributed globally through various digital platforms, included quantitative and qualitative questions. Patterns in the respondents' adoption and perspectives on these artificial intelligence tools were analyzed.

Results: Of 215 respondents, 100 (46.5%) reported using LLMs, particularly ChatGPT (OpenAI), for professional purposes, predominantly for information retrieval, proofreading, academic writing, and drafting pathology reports, highlighting a significant time-saving benefit. Academic pathologists demonstrated a better level of understanding of LLMs than their peers. Although chatbots sometimes provided incorrect general domain information, they were considered moderately proficient concerning pathology-specific knowledge. The technology was mainly used for drafting educational materials and programming tasks. The most sought-after feature in LLMs was their image analysis capabilities. Participants expressed concerns about information accuracy, privacy, and the need for regulatory approval.

Conclusions: Large language model applications are gaining notable acceptance among pathologists, with nearly half of respondents indicating adoption less than a year after the tools' introduction to the market. They see the benefits but are also worried about these tools' reliability, ethical implications, and security.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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